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Author SHA1 Message Date
Georgi Gerganov
b98f80a6b4 server : test alternative LRU logic 2025-07-29 21:19:21 +03:00
276 changed files with 5263 additions and 39061 deletions

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@@ -1,130 +0,0 @@
# ==============================================================================
# ARGUMENTS
# ==============================================================================
# Define the CANN base image for easier version updates later
ARG CANN_BASE_IMAGE=quay.io/ascend/cann:8.1.rc1-910b-openeuler22.03-py3.10
# ==============================================================================
# BUILD STAGE
# Compile all binary files and libraries
# ==============================================================================
FROM ${CANN_BASE_IMAGE} AS build
# Define the Ascend chip model for compilation. Default is Ascend910B3
ARG ASCEND_SOC_TYPE=Ascend910B3
# -- Install build dependencies --
RUN yum install -y gcc g++ cmake make git libcurl-devel python3 python3-pip && \
yum clean all && \
rm -rf /var/cache/yum
# -- Set the working directory --
WORKDIR /app
# -- Copy project files --
COPY . .
# -- Set CANN environment variables (required for compilation) --
# Using ENV instead of `source` allows environment variables to persist across the entire image layer
ENV ASCEND_TOOLKIT_HOME=/usr/local/Ascend/ascend-toolkit/latest
ENV LD_LIBRARY_PATH=${ASCEND_TOOLKIT_HOME}/lib64:${LD_LIBRARY_PATH}
ENV PATH=${ASCEND_TOOLKIT_HOME}/bin:${PATH}
ENV ASCEND_OPP_PATH=${ASCEND_TOOLKIT_HOME}/opp
ENV LD_LIBRARY_PATH=${ASCEND_TOOLKIT_HOME}/runtime/lib64/stub:$LD_LIBRARY_PATH
# ... You can add other environment variables from the original file as needed ...
# For brevity, only core variables are listed here. You can paste the original ENV list here.
# -- Build llama.cpp --
# Use the passed ASCEND_SOC_TYPE argument and add general build options
RUN source /usr/local/Ascend/ascend-toolkit/set_env.sh --force \
&& \
cmake -B build \
-DGGML_CANN=ON \
-DCMAKE_BUILD_TYPE=Release \
-DSOC_TYPE=${ASCEND_SOC_TYPE} \
. && \
cmake --build build --config Release -j$(nproc)
# -- Organize build artifacts for copying in later stages --
# Create a lib directory to store all .so files
RUN mkdir -p /app/lib && \
find build -name "*.so" -exec cp {} /app/lib \;
# Create a full directory to store all executables and Python scripts
RUN mkdir -p /app/full && \
cp build/bin/* /app/full/ && \
cp *.py /app/full/ && \
cp -r gguf-py /app/full/ && \
cp -r requirements /app/full/ && \
cp requirements.txt /app/full/
# If you have a tools.sh script, make sure it is copied here
# cp .devops/tools.sh /app/full/tools.sh
# ==============================================================================
# BASE STAGE
# Create a minimal base image with CANN runtime and common libraries
# ==============================================================================
FROM ${CANN_BASE_IMAGE} AS base
# -- Install runtime dependencies --
RUN yum install -y libgomp curl && \
yum clean all && \
rm -rf /var/cache/yum
# -- Set CANN environment variables (required for runtime) --
ENV ASCEND_TOOLKIT_HOME=/usr/local/Ascend/ascend-toolkit/latest
ENV LD_LIBRARY_PATH=/app:${ASCEND_TOOLKIT_HOME}/lib64:${LD_LIBRARY_PATH}
ENV PATH=${ASCEND_TOOLKIT_HOME}/bin:${PATH}
ENV ASCEND_OPP_PATH=${ASCEND_TOOLKIT_HOME}/opp
# ... You can add other environment variables from the original file as needed ...
WORKDIR /app
# Copy compiled .so files from the build stage
COPY --from=build /app/lib/ /app
# ==============================================================================
# FINAL STAGES (TARGETS)
# ==============================================================================
### Target: full
# Complete image with all tools, Python bindings, and dependencies
# ==============================================================================
FROM base AS full
COPY --from=build /app/full /app
# Install Python dependencies
RUN yum install -y git python3 python3-pip && \
pip3 install --no-cache-dir --upgrade pip setuptools wheel && \
pip3 install --no-cache-dir -r requirements.txt && \
yum clean all && \
rm -rf /var/cache/yum
# You need to provide a tools.sh script as the entrypoint
ENTRYPOINT ["/app/tools.sh"]
# If there is no tools.sh, you can set the default to start the server
# ENTRYPOINT ["/app/llama-server"]
### Target: light
# Lightweight image containing only llama-cli
# ==============================================================================
FROM base AS light
COPY --from=build /app/full/llama-cli /app
ENTRYPOINT [ "/app/llama-cli" ]
### Target: server
# Dedicated server image containing only llama-server
# ==============================================================================
FROM base AS server
ENV LLAMA_ARG_HOST=0.0.0.0
COPY --from=build /app/full/llama-server /app
HEALTHCHECK --interval=5m CMD [ "curl", "-f", "http://localhost:8080/health" ]
ENTRYPOINT [ "/app/llama-server" ]

22
.devops/cloud-v-pipeline Normal file
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@@ -0,0 +1,22 @@
node('x86_runner1'){ // Running on x86 runner containing latest vector qemu, latest vector gcc and all the necessary libraries
stage('Cleanup'){
cleanWs() // Cleaning previous CI build in workspace
}
stage('checkout repo'){
retry(5){ // Retry if the cloning fails due to some reason
checkout scm // Clone the repo on Runner
}
}
stage('Compiling llama.cpp'){
sh'''#!/bin/bash
make RISCV=1 RISCV_CROSS_COMPILE=1 # Compiling llama for RISC-V
'''
}
stage('Running llama.cpp'){
sh'''#!/bin/bash
module load gnu-bin2/0.1 # loading latest versions of vector qemu and vector gcc
qemu-riscv64 -L /softwares/gnu-bin2/sysroot -cpu rv64,v=true,vlen=256,elen=64,vext_spec=v1.0 ./llama-cli -m /home/alitariq/codellama-7b.Q4_K_M.gguf -p "Anything" -n 9 > llama_log.txt # Running llama.cpp on vector qemu-riscv64
cat llama_log.txt # Printing results
'''
}
}

View File

@@ -4,6 +4,8 @@ FROM ubuntu:$UBUNTU_VERSION AS build
ARG TARGETARCH
ARG GGML_CPU_ARM_ARCH=armv8-a
RUN apt-get update && \
apt-get install -y build-essential git cmake libcurl4-openssl-dev
@@ -11,8 +13,10 @@ WORKDIR /app
COPY . .
RUN if [ "$TARGETARCH" = "amd64" ] || [ "$TARGETARCH" = "arm64" ]; then \
RUN if [ "$TARGETARCH" = "amd64" ]; then \
cmake -S . -B build -DCMAKE_BUILD_TYPE=Release -DGGML_NATIVE=OFF -DLLAMA_BUILD_TESTS=OFF -DGGML_BACKEND_DL=ON -DGGML_CPU_ALL_VARIANTS=ON; \
elif [ "$TARGETARCH" = "arm64" ]; then \
cmake -S . -B build -DCMAKE_BUILD_TYPE=Release -DGGML_NATIVE=OFF -DLLAMA_BUILD_TESTS=OFF -DGGML_CPU_ARM_ARCH=${GGML_CPU_ARM_ARCH}; \
else \
echo "Unsupported architecture"; \
exit 1; \

View File

@@ -61,7 +61,7 @@ RUN apt-get update \
python3 \
python3-pip \
&& pip install --upgrade pip setuptools wheel \
&& pip install --break-system-packages -r requirements.txt \
&& pip install -r requirements.txt \
&& apt autoremove -y \
&& apt clean -y \
&& rm -rf /tmp/* /var/tmp/* \

View File

@@ -40,7 +40,7 @@ body:
attributes:
label: GGML backends
description: Which GGML backends do you know to be affected?
options: [AMX, BLAS, CPU, CUDA, HIP, Metal, Musa, RPC, SYCL, Vulkan, OpenCL, zDNN]
options: [AMX, BLAS, CPU, CUDA, HIP, Metal, Musa, RPC, SYCL, Vulkan, OpenCL]
multiple: true
validations:
required: true

View File

@@ -42,7 +42,7 @@ body:
attributes:
label: GGML backends
description: Which GGML backends do you know to be affected?
options: [AMX, BLAS, CPU, CUDA, HIP, Metal, Musa, RPC, SYCL, Vulkan, OpenCL, zDNN]
options: [AMX, BLAS, CPU, CUDA, HIP, Metal, Musa, RPC, SYCL, Vulkan, OpenCL]
multiple: true
validations:
required: true

5
.github/labeler.yml vendored
View File

@@ -22,11 +22,6 @@ Vulkan:
- any-glob-to-any-file:
- ggml/include/ggml-vulkan.h
- ggml/src/ggml-vulkan/**
IBM zDNN:
- changed-files:
- any-glob-to-any-file:
- ggml/include/ggml-zdnn.h
- ggml/src/ggml-zdnn/**
documentation:
- changed-files:
- any-glob-to-any-file:

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@@ -1,43 +0,0 @@
name: Build on RISCV Linux Machine by Cloud-V
on:
workflow_dispatch:
workflow_call:
jobs:
bianbu-riscv64-native: # Bianbu 2.2
runs-on: self-hosted
steps:
- name: Install prerequisites
run: |
sudo apt-get update || true
sudo apt-get install -y libatomic1
- uses: actions/checkout@v4
- name: Setup Riscv
run: |
sudo apt-get update || true
sudo apt-get install -y --no-install-recommends \
build-essential \
gcc-14-riscv64-linux-gnu \
g++-14-riscv64-linux-gnu \
cmake
- name: Build
run: |
cmake -B build -DLLAMA_CURL=OFF \
-DCMAKE_BUILD_TYPE=Release \
-DGGML_OPENMP=OFF \
-DLLAMA_BUILD_EXAMPLES=ON \
-DLLAMA_BUILD_TOOLS=ON \
-DLLAMA_BUILD_TESTS=OFF \
-DCMAKE_SYSTEM_NAME=Linux \
-DCMAKE_SYSTEM_PROCESSOR=riscv64 \
-DCMAKE_C_COMPILER=riscv64-linux-gnu-gcc-14 \
-DCMAKE_CXX_COMPILER=riscv64-linux-gnu-g++-14 \
-DCMAKE_POSITION_INDEPENDENT_CODE=ON \
-DCMAKE_FIND_ROOT_PATH=/usr/lib/riscv64-linux-gnu \
-DCMAKE_FIND_ROOT_PATH_MODE_PROGRAM=NEVER \
-DCMAKE_FIND_ROOT_PATH_MODE_LIBRARY=ONLY \
-DCMAKE_FIND_ROOT_PATH_MODE_INCLUDE=BOTH
cmake --build build --config Release -j $(nproc)

View File

@@ -64,7 +64,7 @@ jobs:
uses: actions/checkout@v4
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: macOS-latest-cmake-arm64
evict-old-files: 1d
@@ -104,7 +104,7 @@ jobs:
uses: actions/checkout@v4
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: macOS-latest-cmake-x64
evict-old-files: 1d
@@ -144,7 +144,7 @@ jobs:
uses: actions/checkout@v4
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: macOS-latest-cmake-arm64-webgpu
evict-old-files: 1d
@@ -159,15 +159,31 @@ jobs:
- name: Dawn Dependency
id: dawn-depends
run: |
DAWN_VERSION="v1.0.0"
DAWN_OWNER="reeselevine"
DAWN_REPO="dawn"
DAWN_ASSET_NAME="Dawn-a1a6b45cced25a3b7f4fb491e0ae70796cc7f22b-macos-latest-Release.tar.gz"
echo "Fetching release asset from https://github.com/${DAWN_OWNER}/${DAWN_REPO}/releases/download/${DAWN_VERSION}/${DAWN_ASSET_NAME}"
curl -L -o artifact.tar.gz \
"https://github.com/${DAWN_OWNER}/${DAWN_REPO}/releases/download/${DAWN_VERSION}/${DAWN_ASSET_NAME}"
ARTIFACTS_JSON=$(curl -s -L \
-H "Accept: application/vnd.github+json" \
-H "Authorization: Bearer ${{ secrets.GITHUB_TOKEN }}" \
-H "X-GitHub-Api-Version: 2022-11-28" \
"https://api.github.com/repos/google/dawn/actions/artifacts")
echo "Finding latest macos-latest-Release artifact..."
DOWNLOAD_URL=$(echo "$ARTIFACTS_JSON" | jq -r '.artifacts
| sort_by(.created_at)
| reverse
| map(select(.name | test("macos-latest-Release$")))
| .[0].archive_download_url')
if [ "$DOWNLOAD_URL" = "null" ] || [ -z "$DOWNLOAD_URL" ]; then
echo "No suitable Dawn artifact found!"
exit 1
fi
echo "Downloading from: $DOWNLOAD_URL"
curl -L \
-H "Accept: application/vnd.github+json" \
-H "Authorization: Bearer ${{ secrets.GITHUB_TOKEN }}" \
-o artifact.zip "$DOWNLOAD_URL"
unzip artifact.zip
mkdir dawn
tar -xvf artifact.tar.gz -C dawn --strip-components=1
tar_file=$(find . -name '*.tar.gz' | head -n 1)
echo "Extracting: $tar_file"
tar -xvf "$tar_file" -C dawn --strip-components=1
- name: Build
id: cmake_build
@@ -199,7 +215,7 @@ jobs:
uses: actions/checkout@v4
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: ubuntu-cpu-cmake
evict-old-files: 1d
@@ -251,7 +267,7 @@ jobs:
uses: actions/checkout@v4
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: ubuntu-latest-cmake-sanitizer-${{ matrix.sanitizer }}
evict-old-files: 1d
@@ -330,7 +346,7 @@ jobs:
uses: actions/checkout@v4
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: ubuntu-latest-cmake-rpc
evict-old-files: 1d
@@ -363,7 +379,7 @@ jobs:
uses: actions/checkout@v4
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: ubuntu-22-cmake-vulkan
evict-old-files: 1d
@@ -400,7 +416,7 @@ jobs:
uses: actions/checkout@v4
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: ubuntu-22-cmake-webgpu
evict-old-files: 1d
@@ -417,15 +433,31 @@ jobs:
id: dawn-depends
run: |
sudo apt-get install -y libxrandr-dev libxinerama-dev libxcursor-dev mesa-common-dev libx11-xcb-dev libxi-dev
DAWN_VERSION="v1.0.0"
DAWN_OWNER="reeselevine"
DAWN_REPO="dawn"
DAWN_ASSET_NAME="Dawn-a1a6b45cced25a3b7f4fb491e0ae70796cc7f22b-ubuntu-latest-Release.tar.gz"
echo "Fetching release asset from https://github.com/${DAWN_OWNER}/${DAWN_REPO}/releases/download/${DAWN_VERSION}/${DAWN_ASSET_NAME}"
curl -L -o artifact.tar.gz \
"https://github.com/${DAWN_OWNER}/${DAWN_REPO}/releases/download/${DAWN_VERSION}/${DAWN_ASSET_NAME}"
ARTIFACTS_JSON=$(curl -s -L \
-H "Accept: application/vnd.github+json" \
-H "Authorization: Bearer ${{ secrets.GITHUB_TOKEN }}" \
-H "X-GitHub-Api-Version: 2022-11-28" \
"https://api.github.com/repos/google/dawn/actions/artifacts")
echo "Finding latest ubuntu-latest-Release artifact..."
DOWNLOAD_URL=$(echo "$ARTIFACTS_JSON" | jq -r '.artifacts
| sort_by(.created_at)
| reverse
| map(select(.name | test("ubuntu-latest-Release$")))
| .[0].archive_download_url')
if [ "$DOWNLOAD_URL" = "null" ] || [ -z "$DOWNLOAD_URL" ]; then
echo "No suitable Dawn artifact found!"
exit 1
fi
echo "Downloading from: $DOWNLOAD_URL"
curl -L \
-H "Accept: application/vnd.github+json" \
-H "Authorization: Bearer ${{ secrets.GITHUB_TOKEN }}" \
-o artifact.zip "$DOWNLOAD_URL"
unzip artifact.zip
mkdir dawn
tar -xvf artifact.tar.gz -C dawn --strip-components=1
tar_file=$(find . -name '*.tar.gz' | head -n 1)
echo "Extracting: $tar_file"
tar -xvf "$tar_file" -C dawn --strip-components=1
- name: Build
id: cmake_build
@@ -443,7 +475,7 @@ jobs:
ubuntu-22-cmake-hip:
runs-on: ubuntu-22.04
container: rocm/dev-ubuntu-22.04:6.1.2
container: rocm/dev-ubuntu-22.04:6.0.2
steps:
- name: Clone
@@ -457,7 +489,7 @@ jobs:
sudo apt-get install -y build-essential git cmake rocblas-dev hipblas-dev libcurl4-openssl-dev
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: ubuntu-22-cmake-hip
evict-old-files: 1d
@@ -471,6 +503,16 @@ jobs:
-DGGML_HIP=ON
cmake --build build --config Release -j $(nproc)
- name: Build with legacy HIP support
id: cmake_build_legacy_hip
run: |
cmake -B build2 -S . \
-DCMAKE_C_COMPILER=hipcc \
-DCMAKE_CXX_COMPILER=hipcc \
-DGGML_HIP_ROCWMMA_FATTN=ON \
-DGGML_HIP=ON
cmake --build build2 --config Release -j $(nproc)
ubuntu-22-cmake-musa:
runs-on: ubuntu-22.04
container: mthreads/musa:rc4.2.0-devel-ubuntu22.04-amd64
@@ -487,7 +529,7 @@ jobs:
apt-get install -y build-essential git cmake libcurl4-openssl-dev
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: ubuntu-22-cmake-musa
evict-old-files: 1d
@@ -532,7 +574,7 @@ jobs:
uses: actions/checkout@v4
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: ubuntu-22-cmake-sycl
evict-old-files: 1d
@@ -580,7 +622,7 @@ jobs:
uses: actions/checkout@v4
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: ubuntu-22-cmake-sycl-fp16
evict-old-files: 1d
@@ -611,7 +653,7 @@ jobs:
uses: actions/checkout@v4
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: macOS-latest-cmake-ios
evict-old-files: 1d
@@ -648,7 +690,7 @@ jobs:
uses: actions/checkout@v4
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: macOS-latest-cmake-tvos
evict-old-files: 1d
@@ -720,7 +762,7 @@ jobs:
uses: actions/checkout@v4
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: macOS-latest-swift
evict-old-files: 1d
@@ -766,7 +808,7 @@ jobs:
uses: actions/checkout@v4
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: windows-msys2
variant: ccache
@@ -834,7 +876,7 @@ jobs:
uses: actions/checkout@v4
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: windows-latest-cmake-${{ matrix.build }}
variant: ccache
@@ -948,7 +990,7 @@ jobs:
apt install -y cmake build-essential ninja-build libgomp1 git libcurl4-openssl-dev
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: ubuntu-latest-cmake-cuda
evict-old-files: 1d
@@ -977,7 +1019,7 @@ jobs:
uses: actions/checkout@v4
- name: Install ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: windows-cuda-${{ matrix.cuda }}
variant: ccache
@@ -1033,7 +1075,7 @@ jobs:
uses: actions/checkout@v4
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: windows-latest-cmake-sycl
variant: ccache
@@ -1070,8 +1112,7 @@ jobs:
write-host "Downloading AMD HIP SDK Installer"
Invoke-WebRequest -Uri "https://download.amd.com/developer/eula/rocm-hub/AMD-Software-PRO-Edition-24.Q3-WinSvr2022-For-HIP.exe" -OutFile "${env:RUNNER_TEMP}\rocm-install.exe"
write-host "Installing AMD HIP SDK"
$proc = Start-Process "${env:RUNNER_TEMP}\rocm-install.exe" -ArgumentList '-install' -NoNewWindow -PassThru
$proc.WaitForExit(600000)
Start-Process "${env:RUNNER_TEMP}\rocm-install.exe" -ArgumentList '-install' -NoNewWindow -Wait
write-host "Completed AMD HIP SDK installation"
- name: Verify ROCm
@@ -1080,7 +1121,7 @@ jobs:
& 'C:\Program Files\AMD\ROCm\*\bin\clang.exe' --version
- name: Install ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: ${{ github.job }}
evict-old-files: 1d
@@ -1114,11 +1155,6 @@ jobs:
- name: Checkout code
uses: actions/checkout@v4
- name: Setup Xcode
uses: maxim-lobanov/setup-xcode@v1
with:
xcode-version: latest-stable
- name: Build
id: cmake_build
run: |
@@ -1152,7 +1188,7 @@ jobs:
uses: actions/checkout@v4
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: android-build
evict-old-files: 1d

View File

@@ -1,53 +0,0 @@
name: "Copilot Setup Steps"
# Automatically run the setup steps when they are changed to allow for easy validation, and
# allow manual testing through the repository's "Actions" tab
on:
workflow_dispatch:
push:
paths:
- .github/workflows/copilot-setup-steps.yml
pull_request:
paths:
- .github/workflows/copilot-setup-steps.yml
jobs:
# The job MUST be called `copilot-setup-steps` or it will not be picked up by Copilot.
copilot-setup-steps:
runs-on: ubuntu-latest
# Set the permissions to the lowest permissions possible needed for your steps.
# Copilot will be given its own token for its operations.
permissions:
# If you want to clone the repository as part of your setup steps, for example to install dependencies, you'll need the `contents: read` permission. If you don't clone the repository in your setup steps, Copilot will do this for you automatically after the steps complete.
contents: read
# You can define any steps you want, and they will run before the agent starts.
# If you do not check out your code, Copilot will do this for you.
steps:
- name: Checkout code
uses: actions/checkout@v4
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
with:
key: copilot-setup-steps
evict-old-files: 1d
- name: Dependencies
id: depends
run: |
sudo apt-get update
sudo apt-get install build-essential libcurl4-openssl-dev
- name: Set up Python
uses: actions/setup-python@v5
with:
python-version: '3.11'
- name: Install Python dependencies
run: |
python3 -m venv .venv
.venv/bin/activate
pip install -r requirements/requirements-all.txt -r tools/server/tests/requirements.txt
pip install flake8 pyright

View File

@@ -1,45 +0,0 @@
name: Check Pre-Tokenizer Hashes
on:
push:
paths:
- 'convert_hf_to_gguf.py'
- 'convert_hf_to_gguf_update.py'
pull_request:
paths:
- 'convert_hf_to_gguf.py'
- 'convert_hf_to_gguf_update.py'
jobs:
pre-tokenizer-hashes:
runs-on: ubuntu-latest
steps:
- name: Checkout repository
uses: actions/checkout@v4
- name: Set up Python
uses: actions/setup-python@v5
with:
python-version: '3.11'
- name: Install Python dependencies
run: |
python3 -m venv .venv
.venv/bin/pip install -r requirements/requirements-convert_hf_to_gguf_update.txt
- name: Update pre-tokenizer hashes
run: |
cp convert_hf_to_gguf.py /tmp
.venv/bin/python convert_hf_to_gguf_update.py --check-missing
- name: Check if committed pre-tokenizer hashes matches generated version
run: |
if ! diff -q convert_hf_to_gguf.py /tmp/convert_hf_to_gguf.py; then
echo "Model pre-tokenizer hashes (in convert_hf_to_gguf.py) do not match generated hashes (from convert_hf_to_gguf_update.py)."
echo "To fix: run ./convert_hf_to_gguf_update.py and commit the updated convert_hf_to_gguf.py along with your changes"
echo "Differences found:"
diff convert_hf_to_gguf.py /tmp/convert_hf_to_gguf.py || true
exit 1
fi
echo "Model pre-tokenizer hashes are up to date."

View File

@@ -32,7 +32,7 @@ jobs:
fetch-depth: 0
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: macOS-latest-cmake-arm64
evict-old-files: 1d
@@ -85,7 +85,7 @@ jobs:
fetch-depth: 0
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: macOS-latest-cmake-x64
evict-old-files: 1d
@@ -147,7 +147,7 @@ jobs:
fetch-depth: 0
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: ubuntu-cpu-cmake
evict-old-files: 1d
@@ -198,7 +198,7 @@ jobs:
fetch-depth: 0
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: ubuntu-22-cmake-vulkan
evict-old-files: 1d
@@ -256,7 +256,7 @@ jobs:
fetch-depth: 0
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: windows-latest-cmake-cpu-${{ matrix.arch }}
variant: ccache
@@ -328,7 +328,7 @@ jobs:
uses: actions/checkout@v4
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: windows-latest-cmake-${{ matrix.backend }}-${{ matrix.arch }}
variant: ccache
@@ -398,7 +398,7 @@ jobs:
uses: actions/checkout@v4
- name: Install ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: windows-cuda-${{ matrix.cuda }}
variant: ccache
@@ -471,7 +471,7 @@ jobs:
uses: actions/checkout@v4
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: windows-latest-cmake-sycl
variant: ccache
@@ -545,7 +545,7 @@ jobs:
git clone https://github.com/rocm/rocwmma --branch rocm-6.2.4 --depth 1
- name: ccache
uses: ggml-org/ccache-action@v1.2.16
uses: hendrikmuhs/ccache-action@v1.2.16
with:
key: windows-latest-cmake-hip-${{ matrix.name }}-x64
evict-old-files: 1d
@@ -557,8 +557,7 @@ jobs:
write-host "Downloading AMD HIP SDK Installer"
Invoke-WebRequest -Uri "https://download.amd.com/developer/eula/rocm-hub/AMD-Software-PRO-Edition-24.Q3-WinSvr2022-For-HIP.exe" -OutFile "${env:RUNNER_TEMP}\rocm-install.exe"
write-host "Installing AMD HIP SDK"
$proc = Start-Process "${env:RUNNER_TEMP}\rocm-install.exe" -ArgumentList '-install' -NoNewWindow -PassThru
$proc.WaitForExit(600000)
Start-Process "${env:RUNNER_TEMP}\rocm-install.exe" -ArgumentList '-install' -NoNewWindow -Wait
write-host "Completed AMD HIP SDK installation"
- name: Verify ROCm
@@ -601,7 +600,7 @@ jobs:
name: llama-bin-win-hip-${{ matrix.name }}-x64.zip
ios-xcode-build:
runs-on: macos-15
runs-on: macos-latest
steps:
- name: Checkout code
@@ -609,10 +608,6 @@ jobs:
with:
fetch-depth: 0
- name: Setup Xcode
run: |
sudo xcode-select -s /Applications/Xcode_16.4.app
- name: Build
id: cmake_build
run: |

View File

@@ -12,8 +12,6 @@ if (NOT XCODE AND NOT MSVC AND NOT CMAKE_BUILD_TYPE)
set_property(CACHE CMAKE_BUILD_TYPE PROPERTY STRINGS "Debug" "Release" "MinSizeRel" "RelWithDebInfo")
endif()
message("CMAKE_BUILD_TYPE=${CMAKE_BUILD_TYPE}")
# Add path to modules
list(APPEND CMAKE_MODULE_PATH "${CMAKE_CURRENT_SOURCE_DIR}/cmake/")

View File

@@ -5,8 +5,8 @@
/tools/server/ @ngxson
/ggml/src/ggml-cuda/fattn* @JohannesGaessler
/ggml/src/ggml-cuda/mmq.* @JohannesGaessler
/ggml/src/ggml-cuda/mmv.* @JohannesGaessler
/ggml/src/ggml-cuda/mmvq.* @JohannesGaessler
/ggml/src/ggml-opt.cpp @JohannesGaessler
/ggml/src/gguf.cpp @JohannesGaessler
/ggml/src/ggml-vulkan/ @0cc4m
/ggml/src/ggml-zdnn/ @taronaeo

View File

@@ -17,9 +17,6 @@ LLM inference in C/C++
## Hot topics
- **[guide : running gpt-oss with llama.cpp](https://github.com/ggml-org/llama.cpp/discussions/15396)**
- **[[FEEDBACK] Better packaging for llama.cpp to support downstream consumers 🤗](https://github.com/ggml-org/llama.cpp/discussions/15313)**
- Support for the `gpt-oss` model with native MXFP4 format has been added | [PR](https://github.com/ggml-org/llama.cpp/pull/15091) | [Collaboration with NVIDIA](https://blogs.nvidia.com/blog/rtx-ai-garage-openai-oss) | [Comment](https://github.com/ggml-org/llama.cpp/discussions/15095)
- Hot PRs: [All](https://github.com/ggml-org/llama.cpp/pulls?q=is%3Apr+label%3Ahot+) | [Open](https://github.com/ggml-org/llama.cpp/pulls?q=is%3Apr+label%3Ahot+is%3Aopen)
- Multimodal support arrived in `llama-server`: [#12898](https://github.com/ggml-org/llama.cpp/pull/12898) | [documentation](./docs/multimodal.md)
- VS Code extension for FIM completions: https://github.com/ggml-org/llama.vscode
@@ -242,7 +239,7 @@ Instructions for adding support for new models: [HOWTO-add-model.md](docs/develo
<details>
<summary>Infrastructure</summary>
- [Paddler](https://github.com/intentee/paddler) - Open-source LLMOps platform for hosting and scaling AI in your own infrastructure
- [Paddler](https://github.com/distantmagic/paddler) - Stateful load balancer custom-tailored for llama.cpp
- [GPUStack](https://github.com/gpustack/gpustack) - Manage GPU clusters for running LLMs
- [llama_cpp_canister](https://github.com/onicai/llama_cpp_canister) - llama.cpp as a smart contract on the Internet Computer, using WebAssembly
- [llama-swap](https://github.com/mostlygeek/llama-swap) - transparent proxy that adds automatic model switching with llama-server

View File

@@ -24,7 +24,6 @@
#include <cstdarg>
#include <filesystem>
#include <fstream>
#include <list>
#include <regex>
#include <set>
#include <string>
@@ -749,39 +748,6 @@ std::pair<long, std::vector<char>> common_remote_get_content(const std::string &
// utils
//
// Helper function to parse tensor buffer override strings
static void parse_tensor_buffer_overrides(const std::string & value, std::vector<llama_model_tensor_buft_override> & overrides) {
std::map<std::string, ggml_backend_buffer_type_t> buft_list;
for (size_t i = 0; i < ggml_backend_dev_count(); ++i) {
auto * dev = ggml_backend_dev_get(i);
auto * buft = ggml_backend_dev_buffer_type(dev);
if (buft) {
buft_list[ggml_backend_buft_name(buft)] = buft;
}
}
for (const auto & override : string_split<std::string>(value, ',')) {
std::string::size_type pos = override.find('=');
if (pos == std::string::npos) {
throw std::invalid_argument("invalid value");
}
std::string tensor_name = override.substr(0, pos);
std::string buffer_type = override.substr(pos + 1);
if (buft_list.find(buffer_type) == buft_list.end()) {
printf("Available buffer types:\n");
for (const auto & it : buft_list) {
printf(" %s\n", ggml_backend_buft_name(it.second));
}
throw std::invalid_argument("unknown buffer type");
}
// keep strings alive and avoid leaking memory by storing them in a static vector
static std::list<std::string> buft_overrides;
buft_overrides.push_back(tensor_name);
overrides.push_back({buft_overrides.back().c_str(), buft_list.at(buffer_type)});
}
}
struct handle_model_result {
bool found_mmproj = false;
common_params_model mmproj;
@@ -1011,10 +977,6 @@ static bool common_params_parse_ex(int argc, char ** argv, common_params_context
for (auto & seq_breaker : params.sampling.dry_sequence_breakers) {
string_process_escapes(seq_breaker);
}
for (auto & pair : params.speculative.replacements) {
string_process_escapes(pair.first);
string_process_escapes(pair.second);
}
}
if (!params.kv_overrides.empty()) {
@@ -1026,10 +988,6 @@ static bool common_params_parse_ex(int argc, char ** argv, common_params_context
params.tensor_buft_overrides.push_back({nullptr, nullptr});
}
if (!params.speculative.tensor_buft_overrides.empty()) {
params.speculative.tensor_buft_overrides.push_back({nullptr, nullptr});
}
if (!params.chat_template.empty() && !common_chat_verify_template(params.chat_template, params.use_jinja)) {
throw std::runtime_error(string_format(
"error: the supplied chat template is not supported: %s%s\n",
@@ -1238,7 +1196,6 @@ bool common_params_parse(int argc, char ** argv, common_params & params, llama_e
common_params_print_completion(ctx_arg);
exit(0);
}
params.lr.init();
} catch (const std::invalid_argument & ex) {
fprintf(stderr, "%s\n", ex.what());
ctx_arg.params = params_org;
@@ -1507,14 +1464,6 @@ common_params_context common_params_parser_init(common_params & params, llama_ex
params.swa_full = true;
}
).set_env("LLAMA_ARG_SWA_FULL"));
add_opt(common_arg(
{"--swa-checkpoints"}, "N",
string_format("max number of SWA checkpoints per slot to create (default: %d)\n"
"[(more info)](https://github.com/ggml-org/llama.cpp/pull/15293)", params.n_swa_checkpoints),
[](common_params & params, int value) {
params.n_swa_checkpoints = value;
}
).set_env("LLAMA_ARG_SWA_CHECKPOINTS").set_examples({LLAMA_EXAMPLE_SERVER}));
add_opt(common_arg(
{"--kv-unified", "-kvu"},
string_format("use single unified KV buffer for the KV cache of all sequences (default: %s)\n"
@@ -1530,13 +1479,6 @@ common_params_context common_params_parser_init(common_params & params, llama_ex
params.ctx_shift = false;
}
).set_examples({LLAMA_EXAMPLE_MAIN, LLAMA_EXAMPLE_SERVER, LLAMA_EXAMPLE_IMATRIX, LLAMA_EXAMPLE_PERPLEXITY}).set_env("LLAMA_ARG_NO_CONTEXT_SHIFT"));
add_opt(common_arg(
{"--context-shift"},
string_format("enables context shift on infinite text generation (default: %s)", params.ctx_shift ? "disabled" : "enabled"),
[](common_params & params) {
params.ctx_shift = true;
}
).set_examples({LLAMA_EXAMPLE_MAIN, LLAMA_EXAMPLE_SERVER, LLAMA_EXAMPLE_IMATRIX, LLAMA_EXAMPLE_PERPLEXITY}).set_env("LLAMA_ARG_CONTEXT_SHIFT"));
add_opt(common_arg(
{"--chunks"}, "N",
string_format("max number of chunks to process (default: %d, -1 = all)", params.n_chunks),
@@ -1830,7 +1772,7 @@ common_params_context common_params_parser_init(common_params & params, llama_ex
[](common_params & params, const std::string & value) {
params.sampling.top_n_sigma = std::stof(value);
}
).set_sparam());
).set_examples({LLAMA_EXAMPLE_MAIN}).set_sparam());
add_opt(common_arg(
{"--xtc-probability"}, "N",
string_format("xtc probability (default: %.1f, 0.0 = disabled)", (double)params.sampling.xtc_probability),
@@ -2149,13 +2091,6 @@ common_params_context common_params_parser_init(common_params & params, llama_ex
params.no_kv_offload = true;
}
).set_env("LLAMA_ARG_NO_KV_OFFLOAD"));
add_opt(common_arg(
{"-nr", "--no-repack"},
"disable weight repacking",
[](common_params & params) {
params.no_extra_bufts = true;
}
).set_env("LLAMA_ARG_NO_REPACK"));
add_opt(common_arg(
{"-ctk", "--cache-type-k"}, "TYPE",
string_format(
@@ -2402,58 +2337,38 @@ common_params_context common_params_parser_init(common_params & params, llama_ex
add_opt(common_arg(
{"--override-tensor", "-ot"}, "<tensor name pattern>=<buffer type>,...",
"override tensor buffer type", [](common_params & params, const std::string & value) {
parse_tensor_buffer_overrides(value, params.tensor_buft_overrides);
/* static */ std::map<std::string, ggml_backend_buffer_type_t> buft_list;
if (buft_list.empty()) {
// enumerate all the devices and add their buffer types to the list
for (size_t i = 0; i < ggml_backend_dev_count(); ++i) {
auto * dev = ggml_backend_dev_get(i);
auto * buft = ggml_backend_dev_buffer_type(dev);
if (buft) {
buft_list[ggml_backend_buft_name(buft)] = buft;
}
}
}
for (const auto & override : string_split<std::string>(value, ',')) {
std::string::size_type pos = override.find('=');
if (pos == std::string::npos) {
throw std::invalid_argument("invalid value");
}
std::string tensor_name = override.substr(0, pos);
std::string buffer_type = override.substr(pos + 1);
if (buft_list.find(buffer_type) == buft_list.end()) {
printf("Available buffer types:\n");
for (const auto & it : buft_list) {
printf(" %s\n", ggml_backend_buft_name(it.second));
}
throw std::invalid_argument("unknown buffer type");
}
// FIXME: this leaks memory
params.tensor_buft_overrides.push_back({strdup(tensor_name.c_str()), buft_list.at(buffer_type)});
}
}
));
add_opt(common_arg(
{"--override-tensor-draft", "-otd"}, "<tensor name pattern>=<buffer type>,...",
"override tensor buffer type for draft model", [](common_params & params, const std::string & value) {
parse_tensor_buffer_overrides(value, params.speculative.tensor_buft_overrides);
}
).set_examples({LLAMA_EXAMPLE_SPECULATIVE, LLAMA_EXAMPLE_SERVER}));
add_opt(common_arg(
{"--cpu-moe", "-cmoe"},
"keep all Mixture of Experts (MoE) weights in the CPU",
[](common_params & params) {
params.tensor_buft_overrides.push_back({"\\.ffn_(up|down|gate)_exps", ggml_backend_cpu_buffer_type()});
}
).set_env("LLAMA_ARG_CPU_MOE"));
add_opt(common_arg(
{"--n-cpu-moe", "-ncmoe"}, "N",
"keep the Mixture of Experts (MoE) weights of the first N layers in the CPU",
[](common_params & params, int value) {
if (value < 0) {
throw std::invalid_argument("invalid value");
}
for (int i = 0; i < value; ++i) {
// keep strings alive and avoid leaking memory by storing them in a static vector
static std::list<std::string> buft_overrides;
buft_overrides.push_back(string_format("blk\\.%d\\.ffn_(up|down|gate)_exps", i));
params.tensor_buft_overrides.push_back({buft_overrides.back().c_str(), ggml_backend_cpu_buffer_type()});
}
}
).set_env("LLAMA_ARG_N_CPU_MOE"));
add_opt(common_arg(
{"--cpu-moe-draft", "-cmoed"},
"keep all Mixture of Experts (MoE) weights in the CPU for the draft model",
[](common_params & params) {
params.speculative.tensor_buft_overrides.push_back({"\\.ffn_(up|down|gate)_exps", ggml_backend_cpu_buffer_type()});
}
).set_examples({LLAMA_EXAMPLE_SPECULATIVE, LLAMA_EXAMPLE_SERVER}).set_env("LLAMA_ARG_CPU_MOE_DRAFT"));
add_opt(common_arg(
{"--n-cpu-moe-draft", "-ncmoed"}, "N",
"keep the Mixture of Experts (MoE) weights of the first N layers in the CPU for the draft model",
[](common_params & params, int value) {
if (value < 0) {
throw std::invalid_argument("invalid value");
}
for (int i = 0; i < value; ++i) {
static std::list<std::string> buft_overrides_draft;
buft_overrides_draft.push_back(string_format("blk\\.%d\\.ffn_(up|down|gate)_exps", i));
params.speculative.tensor_buft_overrides.push_back({buft_overrides_draft.back().c_str(), ggml_backend_cpu_buffer_type()});
}
}
).set_examples({LLAMA_EXAMPLE_SPECULATIVE, LLAMA_EXAMPLE_SERVER}).set_env("LLAMA_ARG_N_CPU_MOE_DRAFT"));
add_opt(common_arg(
{"-ngl", "--gpu-layers", "--n-gpu-layers"}, "N",
"number of layers to store in VRAM",
@@ -2704,7 +2619,7 @@ common_params_context common_params_parser_init(common_params & params, llama_ex
[](common_params & params, const std::string & value) {
params.out_file = value;
}
).set_examples({LLAMA_EXAMPLE_IMATRIX, LLAMA_EXAMPLE_CVECTOR_GENERATOR, LLAMA_EXAMPLE_EXPORT_LORA, LLAMA_EXAMPLE_TTS, LLAMA_EXAMPLE_FINETUNE}));
).set_examples({LLAMA_EXAMPLE_IMATRIX, LLAMA_EXAMPLE_CVECTOR_GENERATOR, LLAMA_EXAMPLE_EXPORT_LORA, LLAMA_EXAMPLE_TTS}));
add_opt(common_arg(
{"-ofreq", "--output-frequency"}, "N",
string_format("output the imatrix every N iterations (default: %d)", params.n_out_freq),
@@ -2712,15 +2627,6 @@ common_params_context common_params_parser_init(common_params & params, llama_ex
params.n_out_freq = value;
}
).set_examples({LLAMA_EXAMPLE_IMATRIX}));
add_opt(common_arg(
{"--output-format"}, "{gguf,dat}",
string_format("output format for imatrix file (default: %s)", params.imat_dat > 0 ? "dat" : "gguf"),
[](common_params & params, const std::string & value) {
/**/ if (value == "gguf") { params.imat_dat = -1; }
else if (value == "dat") { params.imat_dat = 1; }
else { throw std::invalid_argument("invalid output format"); }
}
).set_examples({LLAMA_EXAMPLE_IMATRIX}));
add_opt(common_arg(
{"--save-frequency"}, "N",
string_format("save an imatrix copy every N iterations (default: %d)", params.n_save_freq),
@@ -2996,9 +2902,12 @@ common_params_context common_params_parser_init(common_params & params, llama_ex
"controls whether thought tags are allowed and/or extracted from the response, and in which format they're returned; one of:\n"
"- none: leaves thoughts unparsed in `message.content`\n"
"- deepseek: puts thoughts in `message.reasoning_content` (except in streaming mode, which behaves as `none`)\n"
"(default: auto)",
"(default: deepseek)",
[](common_params & params, const std::string & value) {
params.reasoning_format = common_reasoning_format_from_name(value);
/**/ if (value == "deepseek") { params.reasoning_format = COMMON_REASONING_FORMAT_DEEPSEEK; }
else if (value == "deepseek-legacy") { params.reasoning_format = COMMON_REASONING_FORMAT_DEEPSEEK_LEGACY; }
else if (value == "none") { params.reasoning_format = COMMON_REASONING_FORMAT_NONE; }
else { throw std::invalid_argument("invalid value"); }
}
).set_examples({LLAMA_EXAMPLE_SERVER, LLAMA_EXAMPLE_MAIN}).set_env("LLAMA_ARG_THINK"));
add_opt(common_arg(
@@ -3179,7 +3088,7 @@ common_params_context common_params_parser_init(common_params & params, llama_ex
params.speculative.cpuparams.n_threads = std::thread::hardware_concurrency();
}
}
).set_examples({LLAMA_EXAMPLE_SPECULATIVE, LLAMA_EXAMPLE_SERVER}));
).set_examples({LLAMA_EXAMPLE_SPECULATIVE}));
add_opt(common_arg(
{"-tbd", "--threads-batch-draft"}, "N",
"number of threads to use during batch and prompt processing (default: same as --threads-draft)",
@@ -3189,7 +3098,7 @@ common_params_context common_params_parser_init(common_params & params, llama_ex
params.speculative.cpuparams_batch.n_threads = std::thread::hardware_concurrency();
}
}
).set_examples({LLAMA_EXAMPLE_SPECULATIVE, LLAMA_EXAMPLE_SERVER}));
).set_examples({LLAMA_EXAMPLE_SPECULATIVE}));
add_opt(common_arg(
{"-Cd", "--cpu-mask-draft"}, "M",
"Draft model CPU affinity mask. Complements cpu-range-draft (default: same as --cpu-mask)",
@@ -3340,13 +3249,6 @@ common_params_context common_params_parser_init(common_params & params, llama_ex
params.speculative.model.path = value;
}
).set_examples({LLAMA_EXAMPLE_SPECULATIVE, LLAMA_EXAMPLE_SERVER}).set_env("LLAMA_ARG_MODEL_DRAFT"));
add_opt(common_arg(
{"--spec-replace"}, "TARGET", "DRAFT",
"translate the string in TARGET into DRAFT if the draft model and main model are not compatible",
[](common_params & params, const std::string & tgt, const std::string & dft) {
params.speculative.replacements.push_back({ tgt, dft });
}
).set_examples({LLAMA_EXAMPLE_SPECULATIVE, LLAMA_EXAMPLE_SERVER}));
add_opt(common_arg(
{"-ctkd", "--cache-type-k-draft"}, "TYPE",
string_format(
@@ -3536,11 +3438,28 @@ common_params_context common_params_parser_init(common_params & params, llama_ex
}
).set_examples({LLAMA_EXAMPLE_SERVER}));
// diffusion parameters
add_opt(common_arg(
{ "--diffusion-steps" }, "N",
string_format("number of diffusion steps (default: %d)", params.diffusion.steps),
[](common_params & params, int value) { params.diffusion.steps = value; }
).set_examples({ LLAMA_EXAMPLE_DIFFUSION }));
add_opt(common_arg(
{ "--diffusion-eps" }, "F",
string_format("epsilon for timesteps (default: %.6f)", (double) params.diffusion.eps),
[](common_params & params, const std::string & value) { params.diffusion.eps = std::stof(value); }
).set_examples({ LLAMA_EXAMPLE_DIFFUSION }));
add_opt(common_arg(
{ "--diffusion-algorithm" }, "N",
string_format("diffusion algorithm: 0=ORIGIN, 1=MASKGIT_PLUS, 2=TOPK_MARGIN, 3=ENTROPY (default: %d)",
params.diffusion.algorithm),
[](common_params & params, int value) { params.diffusion.algorithm = value; }
).set_examples({ LLAMA_EXAMPLE_DIFFUSION }));
add_opt(common_arg(
{ "--diffusion-alg-temp" }, "F",
string_format("algorithm temperature (default: %.3f)", (double) params.diffusion.alg_temp),
[](common_params & params, const std::string & value) { params.diffusion.alg_temp = std::stof(value); }
).set_examples({ LLAMA_EXAMPLE_DIFFUSION }));
add_opt(common_arg(
{ "--diffusion-visual" },
string_format("enable visual diffusion mode (show progressive generation) (default: %s)",
@@ -3548,85 +3467,5 @@ common_params_context common_params_parser_init(common_params & params, llama_ex
[](common_params & params) { params.diffusion.visual_mode = true; }
).set_examples({ LLAMA_EXAMPLE_DIFFUSION }));
add_opt(common_arg(
{ "--diffusion-eps" }, "F",
string_format("epsilon for timesteps (default: %.6f)", (double) params.diffusion.eps),
[](common_params & params, const std::string & value) { params.diffusion.eps = std::stof(value); }
).set_examples({ LLAMA_EXAMPLE_DIFFUSION }));
add_opt(common_arg(
{ "--diffusion-algorithm" }, "N",
string_format("diffusion algorithm: 0=ORIGIN, 1=ENTROPY_BASED, 2=MARGIN_BASED, 3=RANDOM, 4=LOW_CONFIDENCE (default: %d)",
params.diffusion.algorithm),
[](common_params & params, int value) { params.diffusion.algorithm = value; }
).set_examples({ LLAMA_EXAMPLE_DIFFUSION }));
add_opt(common_arg(
{ "--diffusion-alg-temp" }, "F",
string_format("dream algorithm temperature (default: %.3f)", (double) params.diffusion.alg_temp),
[](common_params & params, const std::string & value) { params.diffusion.alg_temp = std::stof(value); }
).set_examples({ LLAMA_EXAMPLE_DIFFUSION }));
add_opt(common_arg(
{ "--diffusion-block-length" }, "N",
string_format("llada block length for generation (default: %d)", params.diffusion.block_length),
[](common_params & params, int value) { params.diffusion.block_length = value; }
).set_examples({ LLAMA_EXAMPLE_DIFFUSION }));
add_opt(common_arg(
{ "--diffusion-cfg-scale" }, "F",
string_format("llada classifier-free guidance scale (default: %.3f)", (double) params.diffusion.cfg_scale),
[](common_params & params, const std::string & value) { params.diffusion.cfg_scale = std::stof(value); }
).set_examples({ LLAMA_EXAMPLE_DIFFUSION }));
add_opt(common_arg(
{ "--diffusion-add-gumbel-noise" }, "F",
string_format("add gumbel noise to the logits if temp > 0.0 (default: %s)", params.diffusion.add_gumbel_noise ? "true" : "false"),
[](common_params & params, const std::string & value) { params.diffusion.add_gumbel_noise = std::stof(value); }
).set_examples({ LLAMA_EXAMPLE_DIFFUSION }));
add_opt(
common_arg({ "-lr", "--learning-rate" }, "ALPHA",
string_format(
"adamw or sgd optimizer alpha (default: %.2g); note: sgd alpha recommended ~10x (no momentum)",
(double) params.lr.lr0),
[](common_params & params, const std::string & value) { params.lr.lr0 = std::stof(value); })
.set_examples({ LLAMA_EXAMPLE_FINETUNE }));
add_opt(
common_arg({ "-lr-min", "--learning-rate-min" }, "ALPHA",
string_format(
"(if >0) final learning rate after decay (if -decay-epochs is set, default=%.2g)",
(double) params.lr.lr_min),
[](common_params & params, const std::string & value) { params.lr.lr_min = std::stof(value); })
.set_examples({ LLAMA_EXAMPLE_FINETUNE }));
add_opt(
common_arg({ "-decay-epochs", "--learning-rate-decay-epochs" }, "ALPHA",
string_format(
"(if >0) decay learning rate to -lr-min after this many epochs (exponential decay, default=%.2g)",
(double) params.lr.decay_epochs),
[](common_params & params, const std::string & value) { params.lr.decay_epochs = std::stof(value); })
.set_examples({ LLAMA_EXAMPLE_FINETUNE }));
add_opt(common_arg(
{ "-wd", "--weight-decay" }, "WD",
string_format(
"adamw or sgd optimizer weight decay (0 is off; recommend very small e.g. 1e-9) (default: %.2g).",
(double) params.lr.wd),
[](common_params & params, const std::string & value) { params.lr.wd = std::stof(value); })
.set_examples({ LLAMA_EXAMPLE_FINETUNE }));
add_opt(common_arg({ "-val-split", "--val-split" }, "FRACTION",
string_format("fraction of data to use as validation set for training (default: %.2g).",
(double) params.val_split),
[](common_params & params, const std::string & value) { params.val_split = std::stof(value); })
.set_examples({ LLAMA_EXAMPLE_FINETUNE }));
add_opt(common_arg({ "-epochs", "--epochs" }, "N",
string_format("optimizer max # of epochs (default: %d)", params.lr.epochs),
[](common_params & params, int epochs) { params.lr.epochs = epochs; })
.set_examples({ LLAMA_EXAMPLE_FINETUNE }));
add_opt(common_arg({ "-opt", "--optimizer" }, "sgd|adamw", "adamw or sgd",
[](common_params & params, const std::string & name) {
params.optimizer = common_opt_get_optimizer(name.c_str());
if (params.optimizer == GGML_OPT_OPTIMIZER_TYPE_COUNT) {
throw std::invalid_argument("invalid --optimizer, valid options: adamw, sgd");
}
})
.set_examples({ LLAMA_EXAMPLE_FINETUNE }));
return ctx_arg;
}

View File

@@ -55,15 +55,7 @@ bool common_chat_msg_parser::add_tool_call(const std::string & name, const std::
bool common_chat_msg_parser::add_tool_call(const json & tool_call) {
std::string name = tool_call.contains("name") ? tool_call.at("name") : "";
std::string id = tool_call.contains("id") ? tool_call.at("id") : "";
std::string arguments = "";
if (tool_call.contains("arguments")) {
if (tool_call.at("arguments").is_object()) {
arguments = tool_call.at("arguments").dump();
} else {
arguments = tool_call.at("arguments");
}
}
std::string arguments = tool_call.contains("arguments") ? tool_call.at("arguments") : "";
return add_tool_call(name, id, arguments);
}

View File

@@ -126,8 +126,6 @@ std::vector<common_chat_msg_diff> common_chat_msg_diff::compute_diffs(const comm
typedef minja::chat_template common_chat_template;
struct common_chat_templates {
bool add_bos;
bool add_eos;
bool has_explicit_template; // Model had builtin template or template overridde was specified.
std::unique_ptr<common_chat_template> template_default; // always set (defaults to chatml)
std::unique_ptr<common_chat_template> template_tool_use;
@@ -145,8 +143,6 @@ struct templates_params {
bool enable_thinking = true;
std::chrono::system_clock::time_point now = std::chrono::system_clock::now();
json extra_context;
bool add_bos;
bool add_eos;
};
common_chat_tool_choice common_chat_tool_choice_parse_oaicompat(const std::string & tool_choice) {
@@ -296,7 +292,6 @@ json common_chat_msgs_to_json_oaicompat(const std::vector<common_chat_msg> & msg
}
if (!msg.reasoning_content.empty()) {
jmsg["reasoning_content"] = msg.reasoning_content;
jmsg["thinking"] = msg.reasoning_content; // gpt-oss
}
if (!msg.tool_name.empty()) {
jmsg["name"] = msg.tool_name;
@@ -450,8 +445,6 @@ std::string common_chat_format_single(
common_chat_templates_inputs inputs;
inputs.use_jinja = use_jinja;
inputs.add_bos = tmpls->add_bos;
inputs.add_eos = tmpls->add_eos;
std::string fmt_past_msg;
if (!past_msg.empty()) {
@@ -473,12 +466,9 @@ std::string common_chat_format_single(
return ss.str();
}
std::string common_chat_format_example(const struct common_chat_templates * tmpls, bool use_jinja, const std::map<std::string, std::string> & chat_template_kwargs) {
std::string common_chat_format_example(const struct common_chat_templates * tmpls, bool use_jinja) {
common_chat_templates_inputs inputs;
inputs.use_jinja = use_jinja;
inputs.add_bos = tmpls->add_bos;
inputs.add_eos = tmpls->add_eos;
inputs.chat_template_kwargs = chat_template_kwargs;
auto add_simple_msg = [&](auto role, auto content) {
common_chat_msg msg;
msg.role = role;
@@ -554,21 +544,8 @@ common_chat_templates_ptr common_chat_templates_init(
default_template_src = CHATML_TEMPLATE_SRC;
}
}
// TODO @ngxson : this is a temporary hack to prevent chat template from throwing an error
// Ref: https://github.com/ggml-org/llama.cpp/pull/15230#issuecomment-3173959633
if (default_template_src.find("<|channel|>") != std::string::npos
// search for the error message and patch it
&& default_template_src.find("in message.content or") != std::string::npos) {
string_replace_all(default_template_src,
"{%- if \"<|channel|>analysis<|message|>\" in message.content or \"<|channel|>final<|message|>\" in message.content %}",
"{%- if false %}");
}
std::string token_bos = bos_token_override;
std::string token_eos = eos_token_override;
bool add_bos = false;
bool add_eos = false;
if (model) {
const auto * vocab = llama_model_get_vocab(model);
const auto get_token = [&](llama_token token, const char * name, const char * jinja_variable_name) {
@@ -583,13 +560,9 @@ common_chat_templates_ptr common_chat_templates_init(
};
token_bos = get_token(llama_vocab_bos(vocab), "BOS", "bos_token");
token_eos = get_token(llama_vocab_eos(vocab), "EOS", "eos_token");
add_bos = llama_vocab_get_add_bos(vocab);
add_eos = llama_vocab_get_add_eos(vocab);
}
common_chat_templates_ptr tmpls(new common_chat_templates());
tmpls->has_explicit_template = has_explicit_template;
tmpls->add_bos = add_bos;
tmpls->add_eos = add_eos;
try {
tmpls->template_default = std::make_unique<minja::chat_template>(default_template_src, token_bos, token_eos);
} catch (const std::exception & e) {
@@ -619,8 +592,6 @@ const char * common_chat_format_name(common_chat_format format) {
case COMMON_CHAT_FORMAT_FUNCTIONARY_V3_1_LLAMA_3_1: return "Functionary v3.1 Llama 3.1";
case COMMON_CHAT_FORMAT_HERMES_2_PRO: return "Hermes 2 Pro";
case COMMON_CHAT_FORMAT_COMMAND_R7B: return "Command R7B";
case COMMON_CHAT_FORMAT_GRANITE: return "Granite";
case COMMON_CHAT_FORMAT_GPT_OSS: return "GPT-OSS";
default:
throw std::runtime_error("Unknown chat format");
}
@@ -629,7 +600,6 @@ const char * common_chat_format_name(common_chat_format format) {
const char * common_reasoning_format_name(common_reasoning_format format) {
switch (format) {
case COMMON_REASONING_FORMAT_NONE: return "none";
case COMMON_REASONING_FORMAT_AUTO: return "auto";
case COMMON_REASONING_FORMAT_DEEPSEEK: return "deepseek";
case COMMON_REASONING_FORMAT_DEEPSEEK_LEGACY: return "deepseek-legacy";
default:
@@ -637,19 +607,6 @@ const char * common_reasoning_format_name(common_reasoning_format format) {
}
}
common_reasoning_format common_reasoning_format_from_name(const std::string & format) {
if (format == "none") {
return COMMON_REASONING_FORMAT_NONE;
} else if (format == "auto") {
return COMMON_REASONING_FORMAT_AUTO;
} else if (format == "deepseek") {
return COMMON_REASONING_FORMAT_DEEPSEEK;
} else if (format == "deepseek-legacy") {
return COMMON_REASONING_FORMAT_DEEPSEEK_LEGACY;
}
throw std::runtime_error("Unknown reasoning format: " + format);
}
static std::string wrap_code_as_arguments(common_chat_msg_parser & builder, const std::string & code) {
std::string arguments;
if (builder.is_partial()) {
@@ -791,10 +748,10 @@ static std::string apply(
// instead of using `chat_template_options.use_bos_token = false`, since these tokens
// may be needed inside the template / between messages too.
auto result = tmpl.apply(tmpl_inputs, tmpl_opts);
if (inputs.add_bos && string_starts_with(result, tmpl.bos_token())) {
if (string_starts_with(result, tmpl.bos_token())) {
result = result.substr(tmpl.bos_token().size());
}
if (inputs.add_eos && string_ends_with(result, tmpl.eos_token())) {
if (string_ends_with(result, tmpl.eos_token())) {
result = result.substr(0, result.size() - tmpl.eos_token().size());
}
return result;
@@ -1332,174 +1289,6 @@ static void common_chat_parse_deepseek_r1(common_chat_msg_parser & builder) {
tool_calls_end);
}
static common_chat_params common_chat_params_init_gpt_oss(const common_chat_template & tmpl, const struct templates_params & inputs) {
common_chat_params data;
auto prompt = apply(tmpl, inputs);
data.prompt = prompt;
data.format = COMMON_CHAT_FORMAT_GPT_OSS;
// These special tokens are required to parse properly, so we include them
// even if parse_tool_calls is false.
data.preserved_tokens = {
"<|channel|>",
"<|constrain|>",
"<|message|>",
"<|start|>",
"<|end|>",
};
if (inputs.tools.is_array() && !inputs.tools.empty()) {
data.grammar_lazy = inputs.tool_choice != COMMON_CHAT_TOOL_CHOICE_REQUIRED;
data.grammar = build_grammar([&](const common_grammar_builder & builder) {
// tool calls can appear in commentary or analysis channels
auto channel = builder.add_rule("channel", "\"<|channel|>\" ( \"commentary\" | \"analysis\" )");
std::vector<std::string> tool_rules_recipient_in_role;
std::vector<std::string> tool_rules_recipient_in_channel;
foreach_function(inputs.tools, [&](const json & tool) {
const auto & function = tool.at("function");
std::string name = function.at("name");
auto parameters = function.at("parameters");
builder.resolve_refs(parameters);
tool_rules_recipient_in_role.push_back(
builder.add_rule(name + "-call",
"\"" + name + "\"" + channel + " \" <|constrain|>json\"? \"<|message|>\" " +
builder.add_schema(name + "-args", parameters)
)
);
tool_rules_recipient_in_channel.push_back(
builder.add_rule(name + "-call",
"\"" + name + "\"" + " \" <|constrain|>json\"? \"<|message|>\" " +
builder.add_schema(name + "-args", parameters)
)
);
});
auto recipient_in_role = builder.add_rule("recipient_in_role",
"\"<|start|>assistant\"? \" to=functions.\" ( " +
string_join(tool_rules_recipient_in_role, " | ") + " )"
);
auto recipient_in_channel = builder.add_rule("recipient_in_channel",
channel + " \" to=functions.\" ( " +
string_join(tool_rules_recipient_in_channel, " | ") + " )"
);
builder.add_rule("root", recipient_in_role + " | " + recipient_in_channel);
// Trigger on tool calls that appear in the commentary channel
data.grammar_triggers.push_back({
COMMON_GRAMMAR_TRIGGER_TYPE_PATTERN,
"<\\|channel\\|>(commentary|analysis) to"
});
// Trigger tool calls that appear in the role section, either at the
// start or in the middle.
data.grammar_triggers.push_back({
COMMON_GRAMMAR_TRIGGER_TYPE_PATTERN_FULL,
"^ to"
});
data.grammar_triggers.push_back({
COMMON_GRAMMAR_TRIGGER_TYPE_PATTERN,
"<\\|start\\|>assistant to"
});
});
}
return data;
}
static void common_chat_parse_gpt_oss(common_chat_msg_parser & builder) {
static const std::string constraint = "(?: (<\\|constrain\\|>)?([a-zA-Z0-9_-]+))";
static const std::string recipient("(?: to=functions\\.([^<\\s]+))");
static const common_regex start_regex("<\\|start\\|>assistant");
static const common_regex analysis_regex("<\\|channel\\|>analysis");
static const common_regex final_regex("<\\|channel\\|>final" + constraint + "?");
static const common_regex preamble_regex("<\\|channel\\|>commentary");
static const common_regex tool_call1_regex(recipient + "<\\|channel\\|>(analysis|commentary)" + constraint + "?");
static const common_regex tool_call2_regex("<\\|channel\\|>(analysis|commentary)" + recipient + constraint + "?");
auto consume_end = [&](bool include_end = false) {
if (auto res = builder.try_find_literal("<|end|>")) {
return res->prelude + (include_end ? builder.str(res->groups[0]) : "");
}
return builder.consume_rest();
};
auto handle_tool_call = [&](const std::string & name) {
if (auto args = builder.try_consume_json_with_dumped_args({{}})) {
if (builder.syntax().parse_tool_calls) {
if (!builder.add_tool_call(name, "", args->value) || args->is_partial) {
throw common_chat_msg_partial_exception("incomplete tool call");
}
} else if (args->is_partial) {
throw common_chat_msg_partial_exception("incomplete tool call");
}
}
};
auto regex_match = [](const common_regex & regex, const std::string & input) -> std::optional<common_regex_match> {
auto match = regex.search(input, 0, true);
if (match.type == COMMON_REGEX_MATCH_TYPE_FULL) {
return match;
}
return std::nullopt;
};
do {
auto header_start_pos = builder.pos();
auto content_start = builder.try_find_literal("<|message|>");
if (!content_start) {
throw common_chat_msg_partial_exception("incomplete header");
}
auto header = content_start->prelude;
if (auto match = regex_match(tool_call1_regex, header)) {
auto group = match->groups[1];
auto name = header.substr(group.begin, group.end - group.begin);
handle_tool_call(name);
continue;
}
if (auto match = regex_match(tool_call2_regex, header)) {
auto group = match->groups[2];
auto name = header.substr(group.begin, group.end - group.begin);
handle_tool_call(name);
continue;
}
if (regex_match(analysis_regex, header)) {
builder.move_to(header_start_pos);
if (builder.syntax().reasoning_format == COMMON_REASONING_FORMAT_NONE || builder.syntax().reasoning_in_content) {
builder.add_content(consume_end(true));
} else {
builder.try_parse_reasoning("<|channel|>analysis<|message|>", "<|end|>");
}
continue;
}
if(regex_match(final_regex, header) || regex_match(preamble_regex, header)) {
builder.add_content(consume_end());
continue;
}
// Possibly a malformed message, attempt to recover by rolling
// back to pick up the next <|start|>
LOG_DBG("%s: unknown header from message: %s\n", __func__, header.c_str());
builder.move_to(header_start_pos);
} while (builder.try_find_regex(start_regex, std::string::npos, false));
auto remaining = builder.consume_rest();
if (!remaining.empty()) {
LOG_DBG("%s: content after last message: %s\n", __func__, remaining.c_str());
}
}
static common_chat_params common_chat_params_init_firefunction_v2(const common_chat_template & tmpl, const struct templates_params & inputs) {
LOG_DBG("%s\n", __func__);
common_chat_params data;
@@ -1857,7 +1646,7 @@ static void common_chat_parse_hermes_2_pro(common_chat_msg_parser & builder) {
"|<function name=\"([^\"]+)\">" // match 5 (function name again)
);
while (auto res = builder.try_find_regex(open_regex)) {
if (auto res = builder.try_find_regex(open_regex)) {
const auto & block_start = res->groups[1];
std::string block_end = block_start.empty() ? "" : "```";
@@ -1879,6 +1668,7 @@ static void common_chat_parse_hermes_2_pro(common_chat_msg_parser & builder) {
builder.consume_literal(block_end);
builder.consume_spaces();
}
builder.add_content(builder.consume_rest());
} else {
throw common_chat_msg_partial_exception("failed to parse tool call");
}
@@ -1903,124 +1693,7 @@ static void common_chat_parse_hermes_2_pro(common_chat_msg_parser & builder) {
builder.consume_spaces();
}
}
}
}
builder.add_content(builder.consume_rest());
}
static common_chat_params common_chat_params_init_granite(const common_chat_template & tmpl, const struct templates_params & inputs) {
common_chat_params data;
// Pass thinking context for Granite template
json additional_context = {
{"thinking", inputs.enable_thinking},
};
data.prompt = apply(tmpl, inputs, /* messages_override= */ std::nullopt, /* tools_override= */ std::nullopt, additional_context);
data.format = COMMON_CHAT_FORMAT_GRANITE;
if (string_ends_with(data.prompt, "<think>\n") || string_ends_with(data.prompt, "<think>")) {
if (!inputs.enable_thinking) {
data.prompt += "</think>";
} else {
data.thinking_forced_open = true;
}
}
if (!inputs.tools.is_null()) {
// Granite uses <|tool_call|> followed by JSON list
data.grammar_lazy = inputs.tool_choice != COMMON_CHAT_TOOL_CHOICE_REQUIRED;
data.grammar = build_grammar([&](const common_grammar_builder & builder) {
std::vector<std::string> tool_rules;
foreach_function(inputs.tools, [&](const json & tool) {
const auto & function = tool.at("function");
std::string name = function.at("name");
auto parameters = function.at("parameters");
builder.resolve_refs(parameters);
tool_rules.push_back(builder.add_rule(name + "-call", builder.add_schema(name +
"-args", {
{"type", "object"},
{"properties", {
{"name", {{"const", name}}},
{"arguments", parameters},
}},
{"required", json::array({"name", "arguments"})},
})));
});
auto tool_call = builder.add_rule("tool_call", string_join(tool_rules, " | "));
auto tool_list = builder.add_rule("tool_list", "\"[\" space " + tool_call + " (\",\" space " + tool_call + ")* space \"]\"");
if (data.thinking_forced_open) {
builder.add_rule("root", "\"</think>\" space \"<response>\" space [^<]* \"</response>\" space \"<|tool_call|>\" space " + tool_list);
} else {
builder.add_rule("root", "\"<|tool_call|>\" space " + tool_list);
}
data.grammar_triggers.push_back({
COMMON_GRAMMAR_TRIGGER_TYPE_WORD,
"<|tool_call|>"
});
data.preserved_tokens = {
"<think>",
"</think>",
"<response>",
"</response>",
"<|tool_call|>",
};
});
} else {
// Handle thinking tags for non-tool responses
if (data.thinking_forced_open && inputs.enable_thinking) {
data.grammar_lazy = false;
data.grammar = build_grammar([&](const common_grammar_builder & builder) {
builder.add_rule("root", "\"</think>\" space \"<response>\" space .* \"</response>\" space");
});
data.preserved_tokens = {
"<think>",
"</think>",
"<response>",
"</response>",
};
}
}
return data;
}
static void common_chat_parse_granite(common_chat_msg_parser & builder) {
// Parse thinking tags
builder.try_parse_reasoning("<think>", "</think>");
// Parse response tags using regex
static const common_regex response_regex("<response>([\\s\\S]*?)</response>");
if (auto res = builder.try_find_regex(response_regex)) {
// Extract the content between the tags (capture group 1)
auto content = builder.str(res->groups[1]);
builder.add_content(content);
builder.move_to(res->groups[0].end);
}
if (!builder.syntax().parse_tool_calls) {
builder.add_content(builder.consume_rest());
return;
}
// Look for tool calls
static const common_regex tool_call_regex(regex_escape("<|tool_call|>"));
if (auto res = builder.try_find_regex(tool_call_regex)) {
builder.move_to(res->groups[0].end);
// Expect JSON array of tool calls
auto tool_calls_data = builder.consume_json();
if (tool_calls_data.json.is_array()) {
if (!builder.add_tool_calls(tool_calls_data.json)) {
builder.add_content("<|tool_call|>" + tool_calls_data.json.dump());
}
} else {
builder.add_content("<|tool_call|>" + tool_calls_data.json.dump());
builder.add_content(builder.consume_rest());
}
} else {
builder.add_content(builder.consume_rest());
@@ -2060,8 +1733,6 @@ static common_chat_params common_chat_templates_apply_jinja(
params.enable_thinking = inputs.enable_thinking;
params.grammar = inputs.grammar;
params.now = inputs.now;
params.add_bos = tmpls->add_bos;
params.add_eos = tmpls->add_eos;
params.extra_context = json::object();
for (auto el : inputs.chat_template_kwargs) {
@@ -2098,21 +1769,11 @@ static common_chat_params common_chat_templates_apply_jinja(
return common_chat_params_init_command_r7b(tmpl, params);
}
// Granite (IBM) - detects thinking / tools support
if (src.find("elif thinking") != std::string::npos && src.find("<|tool_call|>") != std::string::npos) {
return common_chat_params_init_granite(tmpl, params);
}
// Hermes 2/3 Pro, Qwen 2.5 Instruct (w/ tools)
if (src.find("<tool_call>") != std::string::npos && params.json_schema.is_null()) {
return common_chat_params_init_hermes_2_pro(tmpl, params);
}
// GPT-OSS
if (src.find("<|channel|>") != std::string::npos && params.json_schema.is_null()) {
return common_chat_params_init_gpt_oss(tmpl, params);
}
// Use generic handler when mixing tools + JSON schema.
// TODO: support that mix in handlers below.
if ((params.tools.is_array() && params.json_schema.is_object())) {
@@ -2163,7 +1824,6 @@ static common_chat_params common_chat_templates_apply_legacy(
int alloc_size = 0;
std::vector<llama_chat_message> chat;
std::vector<std::string> contents;
for (const auto & msg : inputs.messages) {
auto content = msg.content;
for (const auto & part : msg.content_parts) {
@@ -2265,12 +1925,6 @@ static void common_chat_parse(common_chat_msg_parser & builder) {
case COMMON_CHAT_FORMAT_COMMAND_R7B:
common_chat_parse_command_r7b(builder);
break;
case COMMON_CHAT_FORMAT_GRANITE:
common_chat_parse_granite(builder);
break;
case COMMON_CHAT_FORMAT_GPT_OSS:
common_chat_parse_gpt_oss(builder);
break;
default:
throw std::runtime_error(std::string("Unsupported format: ") + common_chat_format_name(builder.syntax().format));
}

View File

@@ -109,8 +109,6 @@ enum common_chat_format {
COMMON_CHAT_FORMAT_FUNCTIONARY_V3_1_LLAMA_3_1,
COMMON_CHAT_FORMAT_HERMES_2_PRO,
COMMON_CHAT_FORMAT_COMMAND_R7B,
COMMON_CHAT_FORMAT_GRANITE,
COMMON_CHAT_FORMAT_GPT_OSS,
COMMON_CHAT_FORMAT_COUNT, // Not a format, just the # formats
};
@@ -129,8 +127,6 @@ struct common_chat_templates_inputs {
bool enable_thinking = true;
std::chrono::system_clock::time_point now = std::chrono::system_clock::now();
std::map<std::string, std::string> chat_template_kwargs;
bool add_bos = false;
bool add_eos = false;
};
struct common_chat_params {
@@ -187,12 +183,10 @@ std::string common_chat_format_single(
// Returns an example of formatted chat
std::string common_chat_format_example(
const struct common_chat_templates * tmpls,
bool use_jinja,
const std::map<std::string, std::string> & chat_template_kwargs);
bool use_jinja);
const char* common_chat_format_name(common_chat_format format);
const char* common_reasoning_format_name(common_reasoning_format format);
common_reasoning_format common_reasoning_format_from_name(const std::string & format);
common_chat_msg common_chat_parse(const std::string & input, bool is_partial, const common_chat_syntax & syntax);
common_chat_tool_choice common_chat_tool_choice_parse_oaicompat(const std::string & tool_choice);

View File

@@ -41,7 +41,6 @@
#endif
#include <locale>
#include <windows.h>
#include <string.h>
#include <fcntl.h>
#include <io.h>
#else
@@ -1123,7 +1122,6 @@ struct llama_model_params common_model_params_to_llama(common_params & params) {
mparams.use_mmap = params.use_mmap;
mparams.use_mlock = params.use_mlock;
mparams.check_tensors = params.check_tensors;
mparams.use_extra_bufts = !params.no_extra_bufts;
if (params.kv_overrides.empty()) {
mparams.kv_overrides = NULL;
@@ -1566,56 +1564,3 @@ ggml_opt_dataset_t common_opt_dataset_init(struct llama_context * ctx, const std
return result;
}
ggml_opt_optimizer_params common_opt_lr_pars(void * userdata) {
ggml_opt_optimizer_params result = ggml_opt_get_default_optimizer_params(nullptr);
const lr_opt & d = *(lr_opt *) userdata;
result.adamw.alpha = result.sgd.alpha = d.get_lr(d.epoch);
result.sgd.wd = result.adamw.wd = d.wd;
return result;
}
// TODO make all command line args case-insensitive
static inline bool eq_case_insensitive(char const* a, char const* b) {
return !
#if defined(_MSC_VER)
_stricmp
#else
strcasecmp
#endif // defined(_MSC_VER)
(a, b);
}
enum ggml_opt_optimizer_type common_opt_get_optimizer(const char * n) {
if (eq_case_insensitive("adamw", n)) {
return GGML_OPT_OPTIMIZER_TYPE_ADAMW;
}
if (eq_case_insensitive("sgd", n)) {
return GGML_OPT_OPTIMIZER_TYPE_SGD;
}
return GGML_OPT_OPTIMIZER_TYPE_COUNT;
}
// TODO simplify to use just log and exp
static float const k_log_2 = std::log(2.f);
void lr_opt::init() {
if (lr_min > 0 && lr_min < lr0) {
float nhalf = std::log(lr0 / lr_min) / k_log_2;
float e = epochs;
if (decay_epochs > 0 && decay_epochs < e) {
e = decay_epochs;
} else {
decay_epochs = e;
}
scale_epoch = nhalf / e;
}
}
float lr_opt::get_lr(float epoch) const {
float r = lr_min <= 0 ? lr0 :
epoch >= decay_epochs ? lr_min :
lr0 * std::pow(0.5f, epoch * scale_epoch);
LOG_INF("epoch %.2g lr=%.2g\n", epoch, r);
return r;
}

View File

@@ -2,17 +2,14 @@
#pragma once
#include "llama-cpp.h"
#include <set>
#include <sstream>
#include <string>
#include <string_view>
#include <vector>
#include <map>
#include <sstream>
#include <cmath>
#include "ggml-opt.h"
#include "llama-cpp.h"
#ifdef _WIN32
#define DIRECTORY_SEPARATOR '\\'
@@ -85,7 +82,6 @@ enum llama_example {
LLAMA_EXAMPLE_PARALLEL,
LLAMA_EXAMPLE_TTS,
LLAMA_EXAMPLE_DIFFUSION,
LLAMA_EXAMPLE_FINETUNE,
LLAMA_EXAMPLE_COUNT,
};
@@ -205,8 +201,6 @@ struct common_params_speculative {
int32_t n_gpu_layers = -1; // number of layers to store in VRAM for the draft model (-1 - use default)
float p_split = 0.1f; // speculative decoding split probability
float p_min = 0.75f; // minimum speculative decoding probability (greedy)
std::vector<std::pair<std::string, std::string>> replacements; // main to speculative model replacements
std::vector<llama_model_tensor_buft_override> tensor_buft_overrides;
ggml_type cache_type_k = GGML_TYPE_F16; // KV cache data type for the K
ggml_type cache_type_v = GGML_TYPE_F16; // KV cache data type for the V
@@ -226,49 +220,19 @@ struct common_params_vocoder {
};
struct common_params_diffusion {
int32_t steps = 128;
bool visual_mode = false;
float eps = 0; // epsilon for timesteps
int32_t block_length = 0; // block length for generation
int32_t algorithm = 4; // default algorithm: low-confidence
float alg_temp = 0.0f; // algorithm temperature
float cfg_scale = 0; // classifier-free guidance scale
bool add_gumbel_noise = false; // add gumbel noise to the logits if temp > 0.0
int32_t steps = 64; // number of diffusion steps
float eps = 1e-3f; // epsilon for timesteps
int32_t algorithm = 0; // diffusion algorithm (0=ORIGIN, 1=MASKGIT_PLUS, 2=TOPK_MARGIN, 3=ENTROPY)
float alg_temp = 0.0f; // algorithm temperature
bool visual_mode = false; // show progressive diffusion on screen
};
// reasoning API response format (not to be confused as chat template's reasoning format)
enum common_reasoning_format {
COMMON_REASONING_FORMAT_NONE,
COMMON_REASONING_FORMAT_AUTO, // Same as deepseek, using `message.reasoning_content`
COMMON_REASONING_FORMAT_DEEPSEEK_LEGACY, // Extract thinking tag contents and return as `message.reasoning_content`, or leave inline in <think> tags in stream mode
COMMON_REASONING_FORMAT_DEEPSEEK, // Extract thinking tag contents and return as `message.reasoning_content`, including in streaming deltas.
// do not extend this enum unless you absolutely have to
// in most cases, use COMMON_REASONING_FORMAT_AUTO
// see: https://github.com/ggml-org/llama.cpp/pull/15408
};
struct lr_opt {
float lr0 = 1e-5; // learning rate at first epoch
float lr_min = -1;
float decay_epochs = -1; // if >0, the learning rate starts at lr0 and decays to lr_min after this many epochs
float scale_epoch = 0;
float wd = 0;
unsigned epochs = 2;
unsigned epoch; // set by optimizer outer (epochs) loop
// learning rate decay - constant LR per epoch only for now
float get_lr(float e) const;
float get_lr() const { return get_lr(epoch); }
// must call after arg parse, before get_lr
void init();
};
struct ggml_opt_optimizer_params common_opt_lr_pars(void * userdata);
struct common_params {
int32_t n_predict = -1; // new tokens to predict
int32_t n_ctx = 4096; // context size
@@ -375,7 +339,7 @@ struct common_params {
bool cont_batching = true; // insert new sequences for decoding on-the-fly
bool flash_attn = false; // flash attention
bool no_perf = false; // disable performance metrics
bool ctx_shift = false; // context shift on inifinite text generation
bool ctx_shift = true; // context shift on inifinite text generation
bool swa_full = false; // use full-size SWA cache (https://github.com/ggml-org/llama.cpp/pull/13194#issuecomment-2868343055)
bool kv_unified = false; // enable unified KV cache
@@ -388,7 +352,6 @@ struct common_params {
bool warmup = true; // warmup run
bool check_tensors = false; // validate tensor data
bool no_op_offload = false; // globally disable offload host tensor operations to device
bool no_extra_bufts = false; // disable extra buffer types (used for weight repacking)
bool single_turn = false; // single turn chat conversation
@@ -403,11 +366,6 @@ struct common_params {
bool no_mmproj = false; // explicitly disable multimodal model
std::vector<std::string> image; // path to image file(s)
// finetune
struct lr_opt lr;
enum ggml_opt_optimizer_type optimizer = GGML_OPT_OPTIMIZER_TYPE_ADAMW;
float val_split = 0.05f; // fraction of the data used for the validation set
// embedding
bool embedding = false; // get only sentence embedding
int32_t embd_normalize = 2; // normalisation for embeddings (-1=none, 0=max absolute int16, 1=taxicab, 2=euclidean, >2=p-norm)
@@ -416,12 +374,11 @@ struct common_params {
std::string cls_sep = "\t"; // separator of classification sequences
// server params
int32_t port = 8080; // server listens on this network port
int32_t timeout_read = 600; // http read timeout in seconds
int32_t timeout_write = timeout_read; // http write timeout in seconds
int32_t n_threads_http = -1; // number of threads to process HTTP requests (TODO: support threadpool)
int32_t n_cache_reuse = 0; // min chunk size to reuse from the cache via KV shifting
int32_t n_swa_checkpoints = 3; // max number of SWA checkpoints per slot
int32_t port = 8080; // server listens on this network port
int32_t timeout_read = 600; // http read timeout in seconds
int32_t timeout_write = timeout_read; // http write timeout in seconds
int32_t n_threads_http = -1; // number of threads to process HTTP requests (TODO: support threadpool)
int32_t n_cache_reuse = 0; // min chunk size to reuse from the cache via KV shifting
std::string hostname = "127.0.0.1";
std::string public_path = ""; // NOLINT
@@ -429,7 +386,7 @@ struct common_params {
std::string chat_template = ""; // NOLINT
bool use_jinja = false; // NOLINT
bool enable_chat_template = true;
common_reasoning_format reasoning_format = COMMON_REASONING_FORMAT_AUTO;
common_reasoning_format reasoning_format = COMMON_REASONING_FORMAT_DEEPSEEK;
int reasoning_budget = -1;
bool prefill_assistant = true; // if true, any trailing assistant message will be prefilled into the response
@@ -474,7 +431,6 @@ struct common_params {
int32_t n_out_freq = 10; // output the imatrix every n_out_freq iterations
int32_t n_save_freq = 0; // save the imatrix every n_save_freq iterations
int32_t i_chunk = 0; // start processing from this chunk
int8_t imat_dat = 0; // whether the legacy imatrix.dat format should be output (gguf <= 0 < dat)
bool process_output = false; // collect data for the output tensor
bool compute_ppl = true; // whether to compute perplexity
@@ -736,6 +692,3 @@ const char * const LLM_KV_SPLIT_TENSORS_COUNT = "split.tensors.count";
//
ggml_opt_dataset_t common_opt_dataset_init(struct llama_context * ctx, const std::vector<llama_token> & tokens, int64_t stride);
// "adamw" or "sgd" (case insensitive)
enum ggml_opt_optimizer_type common_opt_get_optimizer(const char *);

View File

@@ -1,39 +1,30 @@
#include "speculative.h"
#include "ggml.h"
#include "llama.h"
#include "log.h"
#include "common.h"
#include "sampling.h"
#include <cstring>
#include <algorithm>
#include <map>
#define SPEC_VOCAB_MAX_SIZE_DIFFERENCE 128
#define SPEC_VOCAB_CHECK_START_TOKEN_ID 5
struct common_speculative {
struct llama_context * ctx_tgt; // only used for retokenizing from ctx_dft
struct llama_context * ctx_dft;
struct llama_context * ctx;
struct common_sampler * smpl;
llama_batch batch;
llama_tokens prompt_dft;
bool vocab_dft_compatible = true; // whether retokenization is needed
std::map<std::string, std::string> tgt_dft_replacements = {};
llama_tokens prompt;
};
struct common_speculative * common_speculative_init(
struct llama_context * ctx_tgt,
struct llama_context * ctx_dft) {
auto * result = new common_speculative {
/* .ctx_tgt = */ ctx_tgt,
/* .ctx_dft = */ ctx_dft,
/* .smpl = */ nullptr,
/* .batch = */ llama_batch_init(llama_n_batch(ctx_dft), 0, 1),
/* .prompt_dft = */ {},
/* .vocab_dft_compatible = */ false,
/* .ctx = */ ctx_dft,
/* .smpl = */ nullptr,
/* .batch = */ llama_batch_init(llama_n_batch(ctx_dft), 0, 1),
/* .prompt = */ {},
};
// TODO: optimize or pass from outside?
@@ -68,9 +59,6 @@ struct common_speculative * common_speculative_init(
}
#endif
result->vocab_dft_compatible = common_speculative_are_compatible(ctx_tgt, ctx_dft);
LOG_DBG("vocab_dft_compatible = %d\n", result->vocab_dft_compatible);
return result;
}
@@ -87,8 +75,8 @@ void common_speculative_free(struct common_speculative * spec) {
}
bool common_speculative_are_compatible(
const struct llama_context * ctx_tgt,
const struct llama_context * ctx_dft) {
const struct llama_context * ctx_tgt,
const struct llama_context * ctx_dft) {
const struct llama_model * model_tgt = llama_get_model(ctx_tgt);
const struct llama_model * model_dft = llama_get_model(ctx_dft);
@@ -102,32 +90,31 @@ bool common_speculative_are_compatible(
LOG_DBG("%s: vocab_type dft: %d\n", __func__, vocab_type_dft);
if (vocab_type_tgt != vocab_type_dft) {
LOG_DBG("%s: draft model vocab type must match target model to use speculation but ", __func__);
LOG_DBG("vocab_type_dft = %d while vocab_type_tgt = %d\n", vocab_type_dft, vocab_type_tgt);
LOG_ERR("%s: draft model vocab type must match target model to use speculation but "
"vocab_type_dft = %d while vocab_type_tgt = %d\n", __func__, vocab_type_dft, vocab_type_tgt);
return false;
}
if (
llama_vocab_get_add_bos(vocab_tgt) != llama_vocab_get_add_bos(vocab_dft) ||
if (llama_vocab_get_add_bos(vocab_tgt) != llama_vocab_get_add_bos(vocab_dft) ||
llama_vocab_get_add_eos(vocab_tgt) != llama_vocab_get_add_eos(vocab_dft) ||
llama_vocab_bos(vocab_tgt) != llama_vocab_bos(vocab_dft) ||
llama_vocab_eos(vocab_tgt) != llama_vocab_eos(vocab_dft)
) {
LOG_DBG("%s: draft model special tokens must match target model to use speculation\n", __func__);
llama_vocab_eos(vocab_tgt) != llama_vocab_eos(vocab_dft)) {
LOG_ERR("%s: draft vocab special tokens must match target vocab to use speculation\n", __func__);
LOG_ERR("%s: tgt: bos = %d (%d), eos = %d (%d)\n", __func__, llama_vocab_bos(vocab_tgt), llama_vocab_get_add_bos(vocab_tgt), llama_vocab_eos(vocab_tgt), llama_vocab_get_add_eos(vocab_tgt));
LOG_ERR("%s: dft: bos = %d (%d), eos = %d (%d)\n", __func__, llama_vocab_bos(vocab_dft), llama_vocab_get_add_bos(vocab_dft), llama_vocab_eos(vocab_dft), llama_vocab_get_add_eos(vocab_dft));
return false;
}
{
const int n_vocab_tgt = llama_vocab_n_tokens(vocab_tgt);
const int n_vocab_dft = llama_vocab_n_tokens(vocab_dft);
const int vocab_diff = n_vocab_tgt > n_vocab_dft
? n_vocab_tgt - n_vocab_dft
: n_vocab_dft - n_vocab_tgt;
const int vocab_diff = std::abs(n_vocab_tgt - n_vocab_dft);
if (vocab_diff > SPEC_VOCAB_MAX_SIZE_DIFFERENCE) {
LOG_DBG("%s: draft model vocab must closely match target model to use speculation but ", __func__);
LOG_DBG("target vocab size %d does not match draft vocab size %d - difference %d, max allowed %d\n",
n_vocab_tgt, llama_vocab_n_tokens(vocab_dft), vocab_diff, SPEC_VOCAB_MAX_SIZE_DIFFERENCE);
LOG_ERR("%s: draft model vocab must closely match target model to use speculation but "
"target vocab size %d does not match draft vocab size %d - difference %d, max allowed %d\n",
__func__, n_vocab_tgt, llama_vocab_n_tokens(vocab_dft), vocab_diff, SPEC_VOCAB_MAX_SIZE_DIFFERENCE);
return false;
}
@@ -135,8 +122,8 @@ bool common_speculative_are_compatible(
const char * token_text_tgt = llama_vocab_get_text(vocab_tgt, i);
const char * token_text_dft = llama_vocab_get_text(vocab_dft, i);
if (std::strcmp(token_text_tgt, token_text_dft) != 0) {
LOG_DBG("%s: draft model vocab must match target model to use speculation but ", __func__);
LOG_DBG("token %d content differs - target '%s', draft '%s'\n", i,
LOG_ERR("%s: draft vocab vocab must match target vocab to use speculation but "
"token %d content differs - target '%s', draft '%s'\n", __func__, i,
common_token_to_piece(ctx_tgt, i).c_str(),
common_token_to_piece(ctx_dft, i).c_str());
return false;
@@ -147,93 +134,32 @@ bool common_speculative_are_compatible(
return true;
}
void common_speculative_add_replacement_tgt_dft(
struct common_speculative * spec,
const char *source, const char *dest) {
spec->tgt_dft_replacements[source] = dest;
}
static std::string replace_to_dft(
struct common_speculative * spec,
const std::string& input) {
std::string result = input;
for (const auto & pair : spec->tgt_dft_replacements) {
size_t pos = result.find(pair.first);
while (pos != std::string::npos) {
result.replace(pos, pair.first.length(), pair.second);
pos = result.find(pair.first, pos + pair.second.length());
}
}
return result;
}
static std::string replace_to_tgt(
struct common_speculative * spec,
const std::string& input) {
std::string result = input;
for (const auto& pair : spec->tgt_dft_replacements) {
size_t pos = result.find(pair.second);
while (pos != std::string::npos) {
result.replace(pos, pair.second.length(), pair.first);
pos = result.find(pair.second, pos + pair.first.length());
}
}
return result;
}
llama_tokens common_speculative_gen_draft(
struct common_speculative * spec,
struct common_speculative_params params,
const llama_tokens & prompt_tgt_main_model, // specified in target model vocab
const llama_tokens & prompt_tgt,
llama_token id_last) {
auto & batch = spec->batch;
auto & ctx_tgt = spec->ctx_tgt;
auto & ctx_dft = spec->ctx_dft;
auto & ctx = spec->ctx;
auto & smpl = spec->smpl;
auto & prompt_dft = spec->prompt_dft;
auto & prompt = spec->prompt;
auto * mem_dft = llama_get_memory(ctx_dft);
auto * mem = llama_get_memory(ctx);
int reuse_i = 0;
int reuse_n = 0;
const int n_ctx = llama_n_ctx(ctx_dft) - params.n_draft;
llama_tokens prompt_tgt_draft_model;
if (!spec->vocab_dft_compatible) {
std::string text;
text = common_detokenize(ctx_tgt, prompt_tgt_main_model, true);
text = replace_to_dft(spec, text);
LOG_DBG("%s: main->draft detokenized string: '%s'\n", __func__, text.c_str());
prompt_tgt_draft_model = common_tokenize(ctx_dft, text, false, true);
// convert id_last to draft vocab. llama_detokenize is called directly to avoid an allocation
const auto * model_tgt = llama_get_model(ctx_tgt);
const auto * vocab_tgt = llama_model_get_vocab(model_tgt);
int32_t n_chars = llama_detokenize(vocab_tgt, &id_last, 1, nullptr, 0, false, false);
GGML_ASSERT(n_chars < 0 && "failed to detokenize id_last");
text.resize(-n_chars);
llama_detokenize(vocab_tgt, &id_last, 1, text.data(), text.size(), false, false);
text = replace_to_dft(spec, text);
LOG_DBG("main->draft detokenized id_last(%d): '%s'\n", id_last, text.c_str());
id_last = common_tokenize(ctx_dft, text, false, true)[0];
}
// prompt_tgt's tokens will always be compatible with ctx_dft
const llama_tokens &prompt_tgt =
spec->vocab_dft_compatible ? prompt_tgt_main_model : prompt_tgt_draft_model;
const int n_ctx = llama_n_ctx(ctx) - params.n_draft;
const int i_start = std::max<int>(0, (int) prompt_tgt.size() - n_ctx);
// reuse as much as possible from the old draft context
// ideally, the draft context should be as big as the target context and we will always reuse the entire prompt
for (int i = 0; i < (int) prompt_dft.size(); ++i) {
for (int i = 0; i < (int) prompt.size(); ++i) {
int cur = 0;
while (i_start + cur < (int) prompt_tgt.size() &&
i + cur < (int) prompt_dft.size() &&
prompt_tgt[i_start + cur] == prompt_dft[i + cur]) {
i + cur < (int) prompt.size() &&
prompt_tgt[i_start + cur] == prompt[i + cur]) {
cur++;
}
@@ -243,20 +169,21 @@ llama_tokens common_speculative_gen_draft(
}
}
LOG_DBG("%s: reuse_i = %d, reuse_n = %d, prompt = %d\n", __func__, reuse_i, reuse_n, (int) prompt_dft.size());
LOG_DBG("%s: reuse_i = %d, reuse_n = %d, prompt = %d\n", __func__, reuse_i, reuse_n, (int) prompt.size());
llama_tokens result;
result.reserve(params.n_draft);
if (reuse_n == 0) {
llama_memory_clear(mem_dft, false);
prompt_dft.clear();
llama_memory_clear(mem, false);
prompt.clear();
} else {
// this happens when a previous draft has been discarded (for example, due to being too small), but the
// target model agreed with it. in this case, we simply pass back the previous results to save compute
if (reuse_i + reuse_n < (int) prompt_dft.size() && prompt_dft[reuse_i + reuse_n] == id_last) {
for (int i = reuse_i + reuse_n + 1; i < (int) prompt_dft.size(); ++i) {
result.push_back(prompt_dft[i]);
if (reuse_i + reuse_n < (int) prompt.size() && prompt[reuse_i + reuse_n] == id_last) {
for (int i = reuse_i + reuse_n + 1; i < (int) prompt.size(); ++i) {
result.push_back(prompt[i]);
if (params.n_draft <= (int) result.size()) {
break;
@@ -267,15 +194,16 @@ llama_tokens common_speculative_gen_draft(
}
if (reuse_i > 0) {
llama_memory_seq_rm (mem_dft, 0, 0, reuse_i);
llama_memory_seq_add(mem_dft, 0, reuse_i, -1, -reuse_i);
llama_memory_seq_rm (mem, 0, 0, reuse_i);
llama_memory_seq_add(mem, 0, reuse_i, -1, -reuse_i);
prompt_dft.erase(prompt_dft.begin(), prompt_dft.begin() + reuse_i);
prompt.erase(prompt.begin(), prompt.begin() + reuse_i);
}
if (reuse_n < (int) prompt_dft.size()) {
llama_memory_seq_rm (mem_dft, 0, reuse_n, -1);
prompt_dft.erase(prompt_dft.begin() + reuse_n, prompt_dft.end());
if (reuse_n < (int) prompt.size()) {
llama_memory_seq_rm (mem, 0, reuse_n, -1);
prompt.erase(prompt.begin() + reuse_n, prompt.end());
}
}
@@ -286,28 +214,28 @@ llama_tokens common_speculative_gen_draft(
//LOG_DBG("i = %d, i_start = %d, reuse_n = %d, i - i_start = %d, id = %6d\n", i, i_start, reuse_n, i - i_start, prompt_tgt[i]);
common_batch_add(batch, prompt_tgt[i], i - i_start, { 0 }, false);
prompt_dft.push_back(prompt_tgt[i]);
prompt.push_back(prompt_tgt[i]);
}
// we should rarely end-up here during normal decoding
if (batch.n_tokens > 0) {
//LOG_DBG("%s: draft prompt batch: %s\n", __func__, string_from(ctx, batch).c_str());
llama_decode(ctx_dft, batch);
llama_decode(ctx, batch);
}
const llama_pos n_past = prompt_dft.size();
const llama_pos n_past = prompt.size();
LOG_DBG("%s: n_past = %d\n", __func__, n_past);
common_batch_clear(batch);
common_batch_add (batch, id_last, n_past, { 0 }, true);
prompt_dft.push_back(id_last);
prompt.push_back(id_last);
LOG_DBG("%s: draft prompt: %s\n", __func__, string_from(ctx_dft, prompt_dft).c_str());
//LOG_DBG("%s: draft prompt: %s\n", __func__, string_from(ctx, prompt).c_str());
llama_decode(ctx_dft, batch);
llama_decode(ctx, batch);
common_sampler_reset(smpl);
@@ -315,13 +243,13 @@ llama_tokens common_speculative_gen_draft(
for (int i = 0; i < params.n_draft; ++i) {
common_batch_clear(batch);
common_sampler_sample(smpl, ctx_dft, 0, true);
common_sampler_sample(smpl, ctx, 0, true);
const auto * cur_p = common_sampler_get_candidates(smpl);
for (int k = 0; k < std::min(3, (int) cur_p->size); ++k) {
LOG_DBG(" - draft candidate %3d, pos %3d: %6d (%8.3f) '%s'\n",
k, i, cur_p->data[k].id, cur_p->data[k].p, common_token_to_piece(ctx_dft, cur_p->data[k].id).c_str());
k, i, cur_p->data[k].id, cur_p->data[k].p, common_token_to_piece(ctx, cur_p->data[k].id).c_str());
}
// add drafted token for each sequence
@@ -343,19 +271,10 @@ llama_tokens common_speculative_gen_draft(
common_batch_add(batch, id, n_past + i + 1, { 0 }, true);
// evaluate the drafted tokens on the draft model
llama_decode(ctx_dft, batch);
llama_decode(ctx, batch);
prompt_dft.push_back(id);
prompt.push_back(id);
}
if (!spec->vocab_dft_compatible) {
std::string detokenized = common_detokenize(ctx_dft, result, true);
detokenized = replace_to_tgt(spec, detokenized);
LOG_DBG("draft->main detokenized string: '%s'\n", detokenized.c_str());
result = common_tokenize(ctx_tgt, detokenized, false, true);
if (result.size() > (size_t)params.n_draft) {
result.resize(params.n_draft);
}
}
return result;
}

View File

@@ -12,10 +12,7 @@ struct common_speculative_params {
float p_min = 0.75f; // min probability required to accept a token in the draft
};
struct common_speculative * common_speculative_init(
struct llama_context * ctx_tgt,
struct llama_context * ctx_dft
);
struct common_speculative * common_speculative_init(struct llama_context * ctx_dft);
void common_speculative_free(struct common_speculative * spec);
@@ -23,10 +20,6 @@ bool common_speculative_are_compatible(
const struct llama_context * ctx_tgt,
const struct llama_context * ctx_dft);
void common_speculative_add_replacement_tgt_dft(
struct common_speculative * spec,
const char *source, const char *dest);
// sample up to n_draft tokens and add them to the batch using the draft model
llama_tokens common_speculative_gen_draft(
struct common_speculative * spec,

File diff suppressed because it is too large Load Diff

View File

@@ -59,10 +59,6 @@ parser.add_argument(
"--full", action="store_true",
help="download full list of models - make sure you have access to all of them",
)
parser.add_argument(
"--check-missing", action="store_true",
help="only check for missing pre-tokenizer hashes",
)
parser.add_argument(
"hf_token",
help="optional HF token",
@@ -74,10 +70,6 @@ hf_token = args.hf_token if args.hf_token is not None else hf_token
if hf_token is None:
logger.warning("HF token not found. You can provide it as an argument or set it in ~/.cache/huggingface/token")
if args.check_missing and args.full:
logger.warning("Downloading full list of models requested, ignoring --check-missing!")
args.check_missing = False
# TODO: this string has to exercise as much pre-tokenizer functionality as possible
# will be updated with time - contributions welcome
CHK_TXT = '\n \n\n \n\n\n \t \t\t \t\n \n \n \n \n🚀 (normal) 😶‍🌫️ (multiple emojis concatenated) ✅ 🦙🦙 3 33 333 3333 33333 333333 3333333 33333333 3.3 3..3 3...3 កាន់តែពិសេសអាច😁 ?我想在apple工作1314151天 ------======= нещо на Български \'\'\'\'\'\'```````\"\"\"\"......!!!!!!?????? I\'ve been \'told he\'s there, \'RE you sure? \'M not sure I\'ll make it, \'D you like some tea? We\'Ve a\'lL'
@@ -138,7 +130,6 @@ models = [
{"name": "midm-2.0", "tokt": TOKENIZER_TYPE.BPE, "repo": "https://huggingface.co/K-intelligence/Midm-2.0-Base-Instruct", },
{"name": "lfm2", "tokt": TOKENIZER_TYPE.BPE, "repo": "https://huggingface.co/LiquidAI/LFM2-Tokenizer"},
{"name": "exaone4", "tokt": TOKENIZER_TYPE.BPE, "repo": "https://huggingface.co/LGAI-EXAONE/EXAONE-4.0-32B", },
{"name": "mellum", "tokt": TOKENIZER_TYPE.BPE, "repo": "https://huggingface.co/JetBrains/Mellum-4b-base", },
]
# some models are known to be broken upstream, so we will skip them as exceptions
@@ -147,17 +138,14 @@ pre_computed_hashes = [
{"name": "chatglm-bpe", "tokt": TOKENIZER_TYPE.BPE, "repo": "https://huggingface.co/THUDM/glm-4-9b-chat", "chkhsh": "b6e8e1518dc4305be2fe39c313ed643381c4da5db34a98f6a04c093f8afbe99b"},
{"name": "chatglm-bpe", "tokt": TOKENIZER_TYPE.BPE, "repo": "https://huggingface.co/THUDM/glm-4-9b-chat", "chkhsh": "81d72c7348a9f0ebe86f23298d37debe0a5e71149e29bd283904c02262b27516"},
{"name": "glm4", "tokt": TOKENIZER_TYPE.BPE, "repo": "https://huggingface.co/THUDM/glm-4-9b-hf", "chkhsh": "a1336059768a55c99a734006ffb02203cd450fed003e9a71886c88acf24fdbc2"},
{"name": "glm4", "tokt": TOKENIZER_TYPE.BPE, "repo": "https://huggingface.co/zai-org/GLM-4.5-Air", "chkhsh": "9ca2dd618e8afaf09731a7cf6e2105b373ba6a1821559f258b272fe83e6eb902"},
{"name": "minerva-7b", "tokt": TOKENIZER_TYPE.BPE, "repo": "https://huggingface.co/sapienzanlp/Minerva-7B-base-v1.0", "chkhsh": "1431a23e583c97432bc230bff598d103ddb5a1f89960c8f1d1051aaa944d0b35"},
{"name": "hunyuan", "tokt": TOKENIZER_TYPE.BPE, "repo": "https://huggingface.co/tencent/Hunyuan-A13B-Instruct", "chkhsh": "7e57df22b1fe23a7b1e1c7f3dc4e3f96d43a4eb0836d0c6bdc3436d7b2f1c664"},
{"name": "hunyuan-dense", "tokt": TOKENIZER_TYPE.BPE, "repo": "https://huggingface.co/tencent/Hunyuan-4B-Instruct", "chkhsh": "bba3b3366b646dbdded5dbc42d59598b849371afc42f7beafa914afaa5b70aa6"},
# falcon-h1 series uses 4 different tokenizers across model sizes (0.5b - 34b), hence we need to define 4 different hashes
{"name": "falcon-h1", "tokt": TOKENIZER_TYPE.BPE, "repo": "https://huggingface.co/tiiuae/Falcon-H1-0.5B-Base", "chkhsh": "a6b57017d60e6edb4d88ecc2845188e0eb333a70357e45dcc9b53964a73bbae6"},
{"name": "falcon-h1", "tokt": TOKENIZER_TYPE.BPE, "repo": "https://huggingface.co/tiiuae/Falcon-H1-1B-Base", "chkhsh": "60476e1243776c4fb1b993dbd7a5f15ac22f83c80afdf425fa5ae01c8d44ef86"},
{"name": "falcon-h1", "tokt": TOKENIZER_TYPE.BPE, "repo": "https://huggingface.co/tiiuae/Falcon-H1-7B-Base", "chkhsh": "3eda48b4c4dc7de733d1a8b3e3b4a85243dbbf704da2ee9d42c6beced8897896"},
{"name": "falcon-h1", "tokt": TOKENIZER_TYPE.BPE, "repo": "https://huggingface.co/tiiuae/Falcon-H1-34B-Base", "chkhsh": "48f8e02c0359c0bbdd82f26909171fac1c18a457bb47573ed1fe3bbb2c1cfd4b"},
{"name": "kimi-k2", "tokt": TOKENIZER_TYPE.BPE, "repo": "https://huggingface.co/moonshotai/Kimi-K2-Base", "chkhsh": "81212dc7cdb7e0c1074ca62c5aeab0d43c9f52b8a737be7b12a777c953027890"},
{"name": "qwen2", "tokt": TOKENIZER_TYPE.BPE, "repo": "https://huggingface.co/Qwen/Qwen3-Embedding-0.6B", "chkhsh": "d4540891389ea895b53b399da6ac824becc30f2fba0e9ddbb98f92e55ca0e97c"},
]
@@ -232,13 +220,12 @@ if not args.full:
all_models = models.copy()
models = [model for model in all_models if model["name"] not in existing_models]
if not args.check_missing:
logging.info(f"Downloading {len(models)} models...")
for model in models:
try:
download_model(model)
except Exception as e:
logger.error(f"Failed to download model {model['name']}. Error: {e}")
logging.info(f"Downloading {len(models)} models...")
for model in models:
try:
download_model(model)
except Exception as e:
logger.error(f"Failed to download model {model['name']}. Error: {e}")
# generate the source code for the convert_hf_to_gguf.py:get_vocab_base_pre() function:

View File

@@ -340,7 +340,7 @@ if __name__ == '__main__':
sys.exit(1)
else:
logger.info(f"Loading base model: {dir_base_model.name}")
hparams = ModelBase.load_hparams(dir_base_model, False)
hparams = ModelBase.load_hparams(dir_base_model)
with torch.inference_mode():
try:

View File

@@ -310,7 +310,5 @@ Specifies the memory pool management strategy:
Controls automatic cleanup of the memory pool. This option is only effective when using the prio or leg memory pool strategies.
### GGML_CANN_WEIGHT_NZ
Converting the matmul weight format from ND to NZ can significantly improve performance on the 310I DUO NPU.
## TODO
- Support more models and data types.

View File

@@ -76,23 +76,6 @@ cmake --build build --config Release -j $(nproc)
cmake --build build --config Release -j $(nproc)
```
## IBM zDNN Accelerator
This provides acceleration using the IBM zAIU co-processor located in the Telum I and Telum II processors. Make sure to have the [IBM zDNN library](https://github.com/IBM/zDNN) installed.
#### Compile from source from IBM
You may find the official build instructions here: [Building and Installing zDNN](https://github.com/IBM/zDNN?tab=readme-ov-file#building-and-installing-zdnn)
### Compilation
```bash
cmake -S . -B build \
-DCMAKE_BUILD_TYPE=Release \
-DGGML_ZDNN=ON
cmake --build build --config Release -j$(nproc)
```
## Getting GGUF Models
All models need to be converted to Big-Endian. You can achieve this in three cases:
@@ -162,15 +145,15 @@ All models need to be converted to Big-Endian. You can achieve this in three cas
### 1. SIMD Acceleration
Only available in IBM z15/LinuxONE 3 or later system with the `-DGGML_VXE=ON` (turned on by default) compile flag. No hardware acceleration is possible with llama.cpp with older systems, such as IBM z14/arch12. In such systems, the APIs can still run but will use a scalar implementation.
Only available in IBM z15 or later system with the `-DGGML_VXE=ON` (turned on by default) compile flag. No hardware acceleration is possible with llama.cpp with older systems, such as IBM z14/arch12. In such systems, the APIs can still run but will use a scalar implementation.
### 2. NNPA Vector Intrinsics Acceleration
Only available in IBM z16/LinuxONE 4 or later system with the `-DGGML_NNPA=ON` (turned off by default) compile flag. No hardware acceleration is possible with llama.cpp with older systems, such as IBM z15/arch13. In such systems, the APIs can still run but will use a scalar implementation.
Only available in IBM z16 or later system with the `-DGGML_NNPA=ON` (turned off by default) compile flag. No hardware acceleration is possible with llama.cpp with older systems, such as IBM z15/arch13. In such systems, the APIs can still run but will use a scalar implementation.
### 3. zDNN Accelerator (WIP)
### 3. zDNN Accelerator
Only available in IBM z17/LinuxONE 5 or later system with the `-DGGML_ZDNN=ON` compile flag. No hardware acceleration is possible with llama.cpp with older systems, such as IBM z15/arch13. In such systems, the APIs will default back to CPU routines.
_Only available in IBM z16 / LinuxONE 4 or later system. No support currently available._
### 4. Spyre Accelerator
@@ -246,12 +229,11 @@ IBM VXE/VXE2 SIMD acceleration depends on the BLAS implementation. It is strongl
## Appendix A: Hardware Support Matrix
| | Support | Minimum Compiler Version |
| -------- | ------- | ------------------------ |
| IBM z15 | ✅ | |
| IBM z16 | ✅ | |
| IBM z17 | ✅ | GCC 15.1.0 |
| IBM zDNN | ✅ | |
| | Support | Minimum Compiler Version |
| ------- | ------- | ------------------------ |
| IBM z15 | ✅ | |
| IBM z16 | ✅ | |
| IBM z17 | ✅ | GCC 15.1.0 |
- ✅ - supported and verified to run as intended
- 🚫 - unsupported, we are unlikely able to provide support
@@ -260,7 +242,7 @@ IBM VXE/VXE2 SIMD acceleration depends on the BLAS implementation. It is strongl
| | VX/VXE/VXE2 | NNPA | zDNN | Spyre |
| ---------- | ----------- | ---- | ---- | ----- |
| FP32 | ✅ | ✅ | | ❓ |
| FP32 | ✅ | ✅ | | ❓ |
| FP16 | ✅ | ✅ | ❓ | ❓ |
| BF16 | 🚫 | 🚫 | ❓ | ❓ |
| Q4_0 | ✅ | ✅ | ❓ | ❓ |
@@ -291,4 +273,4 @@ IBM VXE/VXE2 SIMD acceleration depends on the BLAS implementation. It is strongl
- 🚫 - acceleration unavailable, will still run using scalar implementation
- ❓ - acceleration unknown, please contribute if you can test it yourself
Last Updated by **Aaron Teo (aaron.teo1@ibm.com)** on July 31, 2025.
Last Updated by **Aaron Teo (aaron.teo1@ibm.com)** on July 25, 2025.

View File

@@ -13,7 +13,7 @@ If there are differences in usage, please refer to the official build [documenta
Clone llama.cpp:
```bash
git clone https://github.com/ggml-org/llama.cpp
git clone https://github.com/ggerganov/llama.cpp
cd llama.cpp
```
@@ -29,8 +29,8 @@ cmake --build build --config Release
Convert PyTorch model to gguf files (You can also download the converted [gguf](https://huggingface.co/openbmb/MiniCPM-o-2_6-gguf) by us)
```bash
python ./tools/mtmd/legacy-models/minicpmv-surgery.py -m ../MiniCPM-o-2_6
python ./tools/mtmd/legacy-models/minicpmv-convert-image-encoder-to-gguf.py -m ../MiniCPM-o-2_6 --minicpmv-projector ../MiniCPM-o-2_6/minicpmv.projector --output-dir ../MiniCPM-o-2_6/ --minicpmv_version 4
python ./tools/mtmd/minicpmv-surgery.py -m ../MiniCPM-o-2_6
python ./tools/mtmd/minicpmv-convert-image-encoder-to-gguf.py -m ../MiniCPM-o-2_6 --minicpmv-projector ../MiniCPM-o-2_6/minicpmv.projector --output-dir ../MiniCPM-o-2_6/ --image-mean 0.5 0.5 0.5 --image-std 0.5 0.5 0.5 --minicpmv_version 4
python ./convert_hf_to_gguf.py ../MiniCPM-o-2_6/model
# quantize int4 version

View File

@@ -1,47 +0,0 @@
## MiniCPM-o 4
### Prepare models and code
Download [MiniCPM-o-4](https://huggingface.co/openbmb/MiniCPM-o-4) PyTorch model from huggingface to "MiniCPM-o-4" folder.
### Build llama.cpp
Readme modification time: 20250206
If there are differences in usage, please refer to the official build [documentation](https://github.com/ggerganov/llama.cpp/blob/master/docs/build.md)
Clone llama.cpp:
```bash
git clone https://github.com/ggerganov/llama.cpp
cd llama.cpp
```
Build llama.cpp using `CMake`:
```bash
cmake -B build
cmake --build build --config Release
```
### Usage of MiniCPM-o 4
Convert PyTorch model to gguf files (You can also download the converted [gguf](https://huggingface.co/openbmb/MiniCPM-o-4-gguf) by us)
```bash
python ./tools/mtmd/legacy-models/minicpmv-surgery.py -m ../MiniCPM-o-4
python ./tools/mtmd/legacy-models/minicpmv-convert-image-encoder-to-gguf.py -m ../MiniCPM-o-4 --minicpmv-projector ../MiniCPM-o-4/minicpmv.projector --output-dir ../MiniCPM-o-4/ --minicpmv_version 6
python ./convert_hf_to_gguf.py ../MiniCPM-o-4/model
# quantize int4 version
./build/bin/llama-quantize ../MiniCPM-o-4/model/ggml-model-f16.gguf ../MiniCPM-o-4/model/ggml-model-Q4_K_M.gguf Q4_K_M
```
Inference on Linux or Mac
```bash
# run in single-turn mode
./build/bin/llama-mtmd-cli -m ../MiniCPM-o-4/model/ggml-model-f16.gguf --mmproj ../MiniCPM-o-4/mmproj-model-f16.gguf -c 4096 --temp 0.7 --top-p 0.8 --top-k 100 --repeat-penalty 1.05 --image xx.jpg -p "What is in the image?"
# run in conversation mode
./build/bin/llama-mtmd-cli -m ../MiniCPM-o-4/model/ggml-model-Q4_K_M.gguf --mmproj ../MiniCPM-o-4/mmproj-model-f16.gguf
```

View File

@@ -28,8 +28,8 @@ cmake --build build --config Release
Convert PyTorch model to gguf files (You can also download the converted [gguf](https://huggingface.co/openbmb/MiniCPM-Llama3-V-2_5-gguf) by us)
```bash
python ./tools/mtmd/legacy-models/minicpmv-surgery.py -m ../MiniCPM-Llama3-V-2_5
python ./tools/mtmd/legacy-models/minicpmv-convert-image-encoder-to-gguf.py -m ../MiniCPM-Llama3-V-2_5 --minicpmv-projector ../MiniCPM-Llama3-V-2_5/minicpmv.projector --output-dir ../MiniCPM-Llama3-V-2_5/ --minicpmv_version 2
python ./tools/mtmd/minicpmv-surgery.py -m ../MiniCPM-Llama3-V-2_5
python ./tools/mtmd/minicpmv-convert-image-encoder-to-gguf.py -m ../MiniCPM-Llama3-V-2_5 --minicpmv-projector ../MiniCPM-Llama3-V-2_5/minicpmv.projector --output-dir ../MiniCPM-Llama3-V-2_5/ --image-mean 0.5 0.5 0.5 --image-std 0.5 0.5 0.5 --minicpmv_version 2
python ./convert_hf_to_gguf.py ../MiniCPM-Llama3-V-2_5/model
# quantize int4 version

View File

@@ -12,7 +12,7 @@ If there are differences in usage, please refer to the official build [documenta
Clone llama.cpp:
```bash
git clone https://github.com/ggml-org/llama.cpp
git clone https://github.com/ggerganov/llama.cpp
cd llama.cpp
```
@@ -28,8 +28,8 @@ cmake --build build --config Release
Convert PyTorch model to gguf files (You can also download the converted [gguf](https://huggingface.co/openbmb/MiniCPM-V-2_6-gguf) by us)
```bash
python ./tools/mtmd/legacy-models/minicpmv-surgery.py -m ../MiniCPM-V-2_6
python ./tools/mtmd/legacy-models/minicpmv-convert-image-encoder-to-gguf.py -m ../MiniCPM-V-2_6 --minicpmv-projector ../MiniCPM-V-2_6/minicpmv.projector --output-dir ../MiniCPM-V-2_6/ --minicpmv_version 3
python ./tools/mtmd/minicpmv-surgery.py -m ../MiniCPM-V-2_6
python ./tools/mtmd/minicpmv-convert-image-encoder-to-gguf.py -m ../MiniCPM-V-2_6 --minicpmv-projector ../MiniCPM-V-2_6/minicpmv.projector --output-dir ../MiniCPM-V-2_6/ --image-mean 0.5 0.5 0.5 --image-std 0.5 0.5 0.5 --minicpmv_version 3
python ./convert_hf_to_gguf.py ../MiniCPM-V-2_6/model
# quantize int4 version

View File

@@ -1,47 +0,0 @@
## MiniCPM-V 4
### Prepare models and code
Download [MiniCPM-V-4](https://huggingface.co/openbmb/MiniCPM-V-4) PyTorch model from huggingface to "MiniCPM-V-4" folder.
### Build llama.cpp
Readme modification time: 20250206
If there are differences in usage, please refer to the official build [documentation](https://github.com/ggerganov/llama.cpp/blob/master/docs/build.md)
Clone llama.cpp:
```bash
git clone https://github.com/ggerganov/llama.cpp
cd llama.cpp
```
Build llama.cpp using `CMake`:
```bash
cmake -B build
cmake --build build --config Release
```
### Usage of MiniCPM-V 4
Convert PyTorch model to gguf files (You can also download the converted [gguf](https://huggingface.co/openbmb/MiniCPM-V-4-gguf) by us)
```bash
python ./tools/mtmd/legacy-models/minicpmv-surgery.py -m ../MiniCPM-V-4
python ./tools/mtmd/legacy-models/minicpmv-convert-image-encoder-to-gguf.py -m ../MiniCPM-V-4 --minicpmv-projector ../MiniCPM-V-4/minicpmv.projector --output-dir ../MiniCPM-V-4/ --minicpmv_version 5
python ./convert_hf_to_gguf.py ../MiniCPM-V-4/model
# quantize int4 version
./build/bin/llama-quantize ../MiniCPM-V-4/model/ggml-model-f16.gguf ../MiniCPM-V-4/model/ggml-model-Q4_K_M.gguf Q4_K_M
```
Inference on Linux or Mac
```bash
# run in single-turn mode
./build/bin/llama-mtmd-cli -m ../MiniCPM-V-4/model/ggml-model-f16.gguf --mmproj ../MiniCPM-V-4/mmproj-model-f16.gguf -c 4096 --temp 0.7 --top-p 0.8 --top-k 100 --repeat-penalty 1.05 --image xx.jpg -p "What is in the image?"
# run in conversation mode
./build/bin/llama-mtmd-cli -m ../MiniCPM-V-4/model/ggml-model-Q4_K_M.gguf --mmproj ../MiniCPM-V-4/mmproj-model-f16.gguf
```

View File

@@ -12,92 +12,91 @@ Legend:
- 🟡 Partially supported by this backend
- ❌ Not supported by this backend
| Operation | BLAS | CANN | CPU | CUDA | Metal | OpenCL | SYCL | Vulkan | zDNN |
|-----------|------|------|------|------|------|------|------|------|------|
| ABS | ❌ | ✅ | ✅ | 🟡 | 🟡 | ❌ | 🟡 | ❌ | ❌ |
| ACC | ❌ | ✅ | ✅ | ✅ | ✅ | ❌ | ✅ | ✅ | ❌ |
| ADD | ❌ | ✅ | ✅ | ✅ | 🟡 | 🟡 | ✅ | ✅ | ❌ |
| ADD1 | ❌ | ✅ | ✅ | ✅ | ❌ | ❌ | ✅ | ❌ | ❌ |
| ARANGE | ❌ | ✅ | ✅ | ✅ | ✅ | ❌ | ❌ | ❌ | ❌ |
| ARGMAX | ❌ | ✅ | ✅ | ✅ | ✅ | ❌ | ✅ | ✅ | ❌ |
| ARGSORT | ❌ | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | ❌ |
| CLAMP | ❌ | ✅ | ✅ | ✅ | 🟡 | 🟡 | ✅ | 🟡 | ❌ |
| CONCAT | ❌ | ✅ | ✅ | 🟡 | ✅ | 🟡 | 🟡 | ✅ | ❌ |
| CONT | ❌ | 🟡 | ✅ | ✅ | ✅ | 🟡 | 🟡 | 🟡 | ❌ |
| CONV_2D | ❌ | ❌ | ✅ | ❌ | ❌ | ✅ | ❌ | ✅ | ❌ |
| CONV_2D_DW | ❌ | ❌ | ✅ | ✅ | ❌ | ❌ | ❌ | ✅ | ❌ |
| CONV_TRANSPOSE_1D | ❌ | ✅ | ✅ | ✅ | ✅ | ❌ | ✅ | ✅ | ❌ |
| CONV_TRANSPOSE_2D | ❌ | ❌ | ✅ | ✅ | ❌ | ❌ | ❌ | ❌ | ❌ |
| COS | ❌ | ✅ | ✅ | ✅ | 🟡 | ❌ | ✅ | 🟡 | ❌ |
| COUNT_EQUAL | ❌ | ✅ | ✅ | ✅ | ❌ | ❌ | ❌ | ✅ | ❌ |
| CPY | ❌ | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 | ❌ |
| CROSS_ENTROPY_LOSS | ❌ | ❌ | ✅ | ✅ | ❌ | ❌ | ❌ | ❌ | ❌ |
| CROSS_ENTROPY_LOSS_BACK | ❌ | ❌ | ✅ | ✅ | ❌ | ❌ | ❌ | ❌ | ❌ |
| DIAG_MASK_INF | ❌ | ✅ | ✅ | ✅ | 🟡 | 🟡 | ✅ | ✅ | ❌ |
| DIV | ❌ | ✅ | ✅ | ✅ | 🟡 | 🟡 | ✅ | ✅ | ❌ |
| DUP | ❌ | ✅ | ✅ | 🟡 | 🟡 | 🟡 | ✅ | 🟡 | ❌ |
| ELU | ❌ | ✅ | ✅ | 🟡 | 🟡 | ❌ | 🟡 | ❌ | ❌ |
| EXP | ❌ | ✅ | ✅ | 🟡 | 🟡 | ❌ | 🟡 | ❌ | ❌ |
| FLASH_ATTN_EXT | ❌ | 🟡 | ✅ | 🟡 | 🟡 | ❌ | ❌ | 🟡 | ❌ |
| GATED_LINEAR_ATTN | ❌ | ❌ | ✅ | ✅ | ❌ | ❌ | ✅ | ❌ | ❌ |
| GEGLU | ❌ | ✅ | ✅ | ✅ | 🟡 | ✅ | ✅ | 🟡 | ❌ |
| GEGLU_ERF | ❌ | ✅ | ✅ | ✅ | 🟡 | ✅ | ✅ | 🟡 | ❌ |
| GEGLU_QUICK | ❌ | ✅ | ✅ | ✅ | 🟡 | ✅ | ✅ | 🟡 | ❌ |
| GELU | ❌ | ✅ | ✅ | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 | ❌ |
| GELU_ERF | ❌ | ✅ | ✅ | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 | ❌ |
| GELU_QUICK | ❌ | ✅ | ✅ | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 | ❌ |
| GET_ROWS | ❌ | 🟡 | ✅ | 🟡 | ✅ | 🟡 | 🟡 | 🟡 | ❌ |
| GET_ROWS_BACK | ❌ | ❌ | 🟡 | 🟡 | ❌ | ❌ | ❌ | ❌ | ❌ |
| GROUP_NORM | ❌ | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | ❌ |
| HARDSIGMOID | ❌ | ✅ | ✅ | 🟡 | 🟡 | ❌ | 🟡 | ❌ | ❌ |
| HARDSWISH | ❌ | ✅ | ✅ | 🟡 | 🟡 | ❌ | 🟡 | ❌ | ❌ |
| IM2COL | ❌ | ✅ | ✅ | ✅ | 🟡 | ✅ | ✅ | ✅ | ❌ |
| L2_NORM | ❌ | ❌ | ✅ | ✅ | ✅ | ❌ | ✅ | ✅ | ❌ |
| LEAKY_RELU | ❌ | ✅ | ✅ | ✅ | ✅ | ❌ | ✅ | ✅ | ❌ |
| LOG | ❌ | ✅ | ✅ | ✅ | ❌ | ❌ | ✅ | ❌ | ❌ |
| MEAN | ❌ | ✅ | ✅ | ✅ | ✅ | ❌ | ❌ | ❌ | ❌ |
| MUL | ❌ | ✅ | ✅ | ✅ | 🟡 | 🟡 | ✅ | ✅ | ❌ |
| MUL_MAT | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 |
| MUL_MAT_ID | ❌ | 🟡 | ✅ | ✅ | ✅ | 🟡 | 🟡 | ✅ | ❌ |
| NEG | ❌ | ✅ | ✅ | 🟡 | 🟡 | ❌ | 🟡 | ❌ | ❌ |
| NORM | ❌ | ✅ | ✅ | ✅ | 🟡 | ✅ | ✅ | 🟡 | ❌ |
| OPT_STEP_ADAMW | ❌ | ❌ | ✅ | ✅ | ❌ | ❌ | ❌ | ✅ | ❌ |
| OUT_PROD | 🟡 | ❌ | 🟡 | 🟡 | ❌ | ❌ | 🟡 | ❌ | ❌ |
| PAD | ❌ | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | ❌ |
| PAD_REFLECT_1D | ❌ | ✅ | ✅ | ❌ | ✅ | ❌ | ❌ | ❌ | ❌ |
| POOL_2D | ❌ | 🟡 | ✅ | ✅ | ✅ | ❌ | ✅ | ✅ | ❌ |
| REGLU | ❌ | ✅ | ✅ | ✅ | 🟡 | ✅ | ✅ | 🟡 | ❌ |
| RELU | ❌ | ✅ | ✅ | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 | ❌ |
| REPEAT | ❌ | ✅ | ✅ | 🟡 | ✅ | 🟡 | ✅ | 🟡 | ❌ |
| REPEAT_BACK | ❌ | ❌ | ✅ | ✅ | ❌ | ❌ | ❌ | ✅ | ❌ |
| RMS_NORM | ❌ | ✅ | ✅ | ✅ | 🟡 | ✅ | ✅ | ✅ | ❌ |
| RMS_NORM_BACK | ❌ | ❌ | ✅ | ✅ | ❌ | ❌ | ❌ | ✅ | ❌ |
| RMS_NORM_MUL_ADD | ❌ | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | ❌ |
| ROLL | ❌ | ❌ | ✅ | ❌ | ❌ | ❌ | ❌ | ✅ | ❌ |
| ROPE | ❌ | 🟡 | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | ❌ |
| ROPE_BACK | ❌ | ❌ | ✅ | ✅ | ❌ | ❌ | ❌ | ✅ | ❌ |
| RWKV_WKV6 | ❌ | ❌ | ✅ | ✅ | ✅ | ❌ | ✅ | ✅ | ❌ |
| RWKV_WKV7 | ❌ | ❌ | ✅ | ✅ | ✅ | ❌ | ✅ | ✅ | ❌ |
| SCALE | ❌ | 🟡 | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | ❌ |
| SET | ❌ | ❌ | ✅ | ❌ | ✅ | ❌ | ❌ | ❌ | ❌ |
| SET_ROWS | ❌ | ❌ | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 | ❌ |
| SGN | ❌ | ✅ | ✅ | 🟡 | 🟡 | ❌ | 🟡 | ❌ | ❌ |
| SIGMOID | ❌ | ✅ | ✅ | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 | ❌ |
| SILU | ❌ | ✅ | ✅ | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 | ❌ |
| SILU_BACK | ❌ | ❌ | ✅ | ✅ | ❌ | ❌ | ❌ | ✅ | ❌ |
| SIN | ❌ | ✅ | ✅ | ✅ | 🟡 | ❌ | ✅ | 🟡 | ❌ |
| SOFTCAP | ❌ | ❌ | ❌ | | | | | | |
| SOFT_MAX | ❌ | 🟡 | ✅ | ✅ | | | 🟡 | ✅ | ❌ |
| SOFT_MAX_BACK | ❌ | ❌ | 🟡 | 🟡 | | | ❌ | ✅ | |
| SQR | ❌ | ✅ | ✅ | ✅ | 🟡 | ❌ | ✅ | 🟡 | ❌ |
| SQRT | ❌ | ✅ | ✅ | ✅ | 🟡 | ❌ | ✅ | ❌ | ❌ |
| SSM_CONV | ❌ | ❌ | ✅ | ✅ | ✅ | ❌ | ❌ | ❌ | ❌ |
| SSM_SCAN | ❌ | ❌ | | ✅ | | ❌ | ❌ | ❌ | ❌ |
| STEP | ❌ | ✅ | ✅ | 🟡 | 🟡 | ❌ | 🟡 | ❌ | |
| SUB | ❌ | ✅ | ✅ | ✅ | 🟡 | 🟡 | ✅ | ✅ | ❌ |
| SUM | ❌ | ✅ | ✅ | ✅ | ❌ | ❌ | ✅ | ✅ | |
| SUM_ROWS | ❌ | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | |
| SWIGLU | ❌ | ✅ | | ✅ | 🟡 | | ✅ | 🟡 | |
| TANH | ❌ | ✅ | ✅ | 🟡 | 🟡 | ✅ | 🟡 | 🟡 | ❌ |
| TIMESTEP_EMBEDDING | ❌ | ✅ | ✅ | ✅ | ✅ | ✅ | | ✅ | ❌ |
| UPSCALE | ❌ | 🟡 | ✅ | ✅ | 🟡 | ✅ | 🟡 | ✅ | ❌ |
| Operation | BLAS | CPU | CUDA | Metal | OpenCL | SYCL | Vulkan |
|-----------|------|------|------|------|------|------|------|
| ABS | ❌ | ✅ | 🟡 | 🟡 | ❌ | 🟡 | ❌ |
| ACC | ❌ | ✅ | ✅ | ✅ | ❌ | ✅ | ✅ |
| ADD | ❌ | ✅ | ✅ | 🟡 | 🟡 | ✅ | ✅ |
| ADD1 | ❌ | ✅ | ✅ | ❌ | ❌ | ✅ | ❌ |
| ARANGE | ❌ | ✅ | ✅ | ✅ | ❌ | ❌ | ❌ |
| ARGMAX | ❌ | ✅ | ✅ | ✅ | ❌ | ✅ | ✅ |
| ARGSORT | ❌ | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ |
| CLAMP | ❌ | ✅ | ✅ | 🟡 | 🟡 | ✅ | 🟡 |
| CONCAT | ❌ | ✅ | 🟡 | ✅ | 🟡 | 🟡 | ✅ |
| CONT | ❌ | ✅ | ✅ | ✅ | 🟡 | 🟡 | 🟡 |
| CONV_2D | ❌ | ✅ | ❌ | ❌ | ✅ | ❌ | ✅ |
| CONV_2D_DW | ❌ | ✅ | ✅ | ❌ | ❌ | ❌ | ✅ |
| CONV_TRANSPOSE_1D | ❌ | ✅ | ✅ | ✅ | ❌ | ✅ | ✅ |
| CONV_TRANSPOSE_2D | ❌ | ✅ | ✅ | ❌ | ❌ | ❌ | ❌ |
| COS | ❌ | ✅ | ✅ | 🟡 | ❌ | ✅ | 🟡 |
| COUNT_EQUAL | ❌ | ✅ | ✅ | ❌ | ❌ | ❌ | ✅ |
| CPY | ❌ | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 |
| CROSS_ENTROPY_LOSS | ❌ | ✅ | ✅ | ❌ | ❌ | ❌ | ❌ |
| CROSS_ENTROPY_LOSS_BACK | ❌ | ✅ | ✅ | ❌ | ❌ | ❌ | ❌ |
| DIAG_MASK_INF | ❌ | ✅ | ✅ | 🟡 | 🟡 | ✅ | ✅ |
| DIV | ❌ | ✅ | ✅ | 🟡 | 🟡 | ✅ | ✅ |
| DUP | ❌ | ✅ | 🟡 | 🟡 | 🟡 | ✅ | 🟡 |
| ELU | ❌ | ✅ | 🟡 | 🟡 | ❌ | 🟡 | ❌ |
| EXP | ❌ | ✅ | 🟡 | 🟡 | ❌ | 🟡 | ❌ |
| FLASH_ATTN_EXT | ❌ | ✅ | 🟡 | 🟡 | ❌ | ❌ | 🟡 |
| GATED_LINEAR_ATTN | ❌ | ✅ | ✅ | ❌ | ❌ | ✅ | ❌ |
| GEGLU | ❌ | ✅ | ✅ | 🟡 | ✅ | ✅ | 🟡 |
| GEGLU_ERF | ❌ | ✅ | ✅ | 🟡 | ✅ | ✅ | 🟡 |
| GEGLU_QUICK | ❌ | ✅ | ✅ | 🟡 | ✅ | ✅ | 🟡 |
| GELU | ❌ | ✅ | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 |
| GELU_ERF | ❌ | ✅ | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 |
| GELU_QUICK | ❌ | ✅ | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 |
| GET_ROWS | ❌ | ✅ | 🟡 | ✅ | 🟡 | 🟡 | 🟡 |
| GET_ROWS_BACK | ❌ | 🟡 | 🟡 | ❌ | ❌ | ❌ | ❌ |
| GROUP_NORM | ❌ | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ |
| HARDSIGMOID | ❌ | ✅ | 🟡 | 🟡 | ❌ | 🟡 | ❌ |
| HARDSWISH | ❌ | ✅ | 🟡 | 🟡 | ❌ | 🟡 | ❌ |
| IM2COL | ❌ | ✅ | ✅ | 🟡 | ✅ | ✅ | ✅ |
| L2_NORM | ❌ | ✅ | ✅ | ✅ | ❌ | ✅ | ✅ |
| LEAKY_RELU | ❌ | ✅ | ✅ | ✅ | ❌ | ✅ | ✅ |
| LOG | ❌ | ✅ | ✅ | ❌ | ❌ | ✅ | ❌ |
| MEAN | ❌ | ✅ | ✅ | ✅ | ❌ | ❌ | ❌ |
| MUL | ❌ | ✅ | ✅ | 🟡 | 🟡 | ✅ | ✅ |
| MUL_MAT | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 |
| MUL_MAT_ID | ❌ | ✅ | ✅ | ✅ | 🟡 | 🟡 | ✅ |
| NEG | ❌ | ✅ | 🟡 | 🟡 | ❌ | 🟡 | ❌ |
| NORM | ❌ | ✅ | ✅ | 🟡 | ✅ | ✅ | 🟡 |
| OPT_STEP_ADAMW | ❌ | ✅ | ✅ | ❌ | ❌ | ❌ | ✅ |
| OUT_PROD | 🟡 | 🟡 | 🟡 | ❌ | ❌ | 🟡 | ❌ |
| PAD | ❌ | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ |
| PAD_REFLECT_1D | ❌ | ✅ | ❌ | ✅ | ❌ | ❌ | ❌ |
| POOL_2D | ❌ | ✅ | ✅ | ✅ | ❌ | ✅ | ✅ |
| REGLU | ❌ | ✅ | ✅ | 🟡 | ✅ | ✅ | 🟡 |
| RELU | ❌ | ✅ | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 |
| REPEAT | ❌ | ✅ | 🟡 | ✅ | 🟡 | ✅ | 🟡 |
| REPEAT_BACK | ❌ | ✅ | ✅ | ❌ | ❌ | ❌ | ✅ |
| RMS_NORM | ❌ | ✅ | ✅ | 🟡 | ✅ | ✅ | ✅ |
| RMS_NORM_BACK | ❌ | ✅ | ✅ | ❌ | ❌ | ❌ | ✅ |
| RMS_NORM_MUL_ADD | ❌ | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ |
| ROLL | ❌ | ✅ | ❌ | ❌ | ❌ | ❌ | ✅ |
| ROPE | ❌ | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ |
| ROPE_BACK | ❌ | ✅ | ✅ | ❌ | ❌ | ❌ | ✅ |
| RWKV_WKV6 | ❌ | ✅ | ✅ | ✅ | ❌ | ✅ | ✅ |
| RWKV_WKV7 | ❌ | ✅ | ✅ | ✅ | ❌ | ✅ | ✅ |
| SCALE | ❌ | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ |
| SET | ❌ | ✅ | ❌ | ✅ | ❌ | ❌ | ❌ |
| SET_ROWS | ❌ | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 |
| SGN | ❌ | ✅ | 🟡 | 🟡 | ❌ | 🟡 | ❌ |
| SIGMOID | ❌ | ✅ | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 |
| SILU | ❌ | ✅ | 🟡 | 🟡 | 🟡 | 🟡 | 🟡 |
| SILU_BACK | ❌ | ✅ | ✅ | ❌ | ❌ | ❌ | ✅ |
| SIN | ❌ | ✅ | ✅ | 🟡 | ❌ | ✅ | 🟡 |
| SOFT_MAX | ❌ | | | | | 🟡 | |
| SOFT_MAX_BACK | ❌ | 🟡 | 🟡 | | | | ✅ |
| SQR | | | | 🟡 | ❌ | ✅ | 🟡 |
| SQRT | ❌ | ✅ | ✅ | 🟡 | ❌ | ✅ | ❌ |
| SSM_CONV | ❌ | ✅ | ✅ | ✅ | | ❌ | ❌ |
| SSM_SCAN | ❌ | ✅ | ✅ | ✅ | ❌ | ❌ | ❌ |
| STEP | | ✅ | 🟡 | 🟡 | ❌ | 🟡 | ❌ |
| SUB | ❌ | ✅ | ✅ | 🟡 | 🟡 | | |
| SUM | ❌ | ✅ | ✅ | | | ✅ | ✅ |
| SUM_ROWS | ❌ | ✅ | ✅ | ✅ | ✅ | ✅ | |
| SWIGLU | ❌ | ✅ | ✅ | 🟡 | ✅ | ✅ | 🟡 |
| TANH | | ✅ | 🟡 | 🟡 | ✅ | 🟡 | 🟡 |
| TIMESTEP_EMBEDDING | ❌ | ✅ | ✅ | | | ✅ | |
| UPSCALE | ❌ | ✅ | ✅ | 🟡 | ✅ | 🟡 | ✅ |

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@@ -1,13 +0,0 @@
# Diffusion Text Generation
This directory contains implementations for Diffusion LLMs (DLLMs)
More Info:
- https://github.com/ggml-org/llama.cpp/pull/14644
- https://github.com/ggml-org/llama.cpp/pull/14771
Example of using Dream architechture: `llama-diffusion-cli -m dream7b.gguf -p "write code to train MNIST in pytorch" -ub 512 --diffusion-eps 0.001 --diffusion-algorithm 3 --diffusion-steps 256 --diffusion-visual`
Example of using LLaDA architechture: `llama-diffusion-cli -m llada-8b.gguf -p "write code to train MNIST in pytorch" -ub 512 --diffusion-block-length 32 --diffusion-steps 256 --diffusion-visual`

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@@ -5,128 +5,344 @@
#include "log.h"
#include <limits.h>
#include <algorithm>
#include <cmath>
#include <cstring>
#include <limits>
#include <random>
#include <string>
#include <vector>
#include <algorithm>
#include <cmath>
#include <limits>
#include <random>
enum diffusion_algorithm { ORIGIN = 0, ENTROPY_BASED = 1, MARGIN_BASED = 2, RANDOM = 3, CONFIDENCE_BASED = 4 };
// Unified transfer scheduling methods
enum transfer_schedule {
TIMESTEP_BASED = 0, // Dream-style: (1.0 - s/t) * remaining
BLOCK_BASED = 1, // LLaDA-style: process in blocks with get_num_transfer_tokens
};
typedef bool (*diffusion_step_callback_t)(int32_t step,
int32_t total_steps,
typedef bool (*diffusion_step_callback_t)(int32_t step,
int32_t total_steps,
const llama_token * tokens,
int32_t n_tokens,
void * user_data);
int32_t n_tokens,
void * user_data);
enum diffusion_alg {
DIFFUSION_ALG_ORIGIN = 0,
DIFFUSION_ALG_MASKGIT_PLUS = 1,
DIFFUSION_ALG_TOPK_MARGIN = 2,
DIFFUSION_ALG_ENTROPY = 3,
};
struct diffusion_params {
int32_t steps = 0;
float temperature = 0;
llama_token mask_token_id = LLAMA_TOKEN_NULL;
diffusion_step_callback_t step_callback = nullptr;
void * step_callback_user_data = nullptr;
int32_t seed = 0;
bool visual_mode = false;
bool shift_logits = false; // Shift logits by -1 after decode
float top_p = 0.;
int32_t top_k = 0.;
diffusion_algorithm algorithm = CONFIDENCE_BASED;
transfer_schedule schedule = TIMESTEP_BASED;
float cfg_scale = 0.; // Config scale for classifier-free guidance
float eps = 0.; // Timestep scheduling
int32_t block_length = 0; // Block size (for block scheduling)
float alg_temp = 0; // algorithm temperature (0.0 = deterministic)
bool add_gumbel_noise = false; // Add gumbel noise to the logits if temp > 0.0
int32_t max_length = 0; // Maximum sequence length
int32_t steps;
float eps;
float temperature;
float top_p;
int32_t top_k;
llama_token mask_token_id;
enum diffusion_alg algorithm;
float alg_temp;
diffusion_step_callback_t step_callback;
void * step_callback_user_data;
int32_t seed;
};
static diffusion_params diffusion_default_params() {
diffusion_params params = {};
params.steps = 64;
params.eps = 1e-3f;
params.temperature = 0.2f;
params.top_p = 0.95f;
params.top_k = 0;
params.mask_token_id = LLAMA_TOKEN_NULL;
params.algorithm = DIFFUSION_ALG_ORIGIN;
params.alg_temp = 0.0f;
params.step_callback = nullptr;
params.step_callback_user_data = nullptr;
params.seed = 0;
return params;
}
static void diffusion_generate(llama_context * ctx,
const llama_token * input_tokens,
llama_token * output_tokens,
int32_t n_input,
int32_t max_length,
struct diffusion_params params,
int32_t & n_generated) {
n_generated = 0;
if (!ctx || !input_tokens || !output_tokens || n_input <= 0 || max_length <= n_input) {
return;
}
const llama_model * model = llama_get_model(ctx);
// Initialize with input and pad with mask tokens
std::copy(input_tokens, input_tokens + n_input, output_tokens);
std::fill(output_tokens + n_input, output_tokens + max_length, params.mask_token_id);
std::mt19937 rng(params.seed);
std::vector<float> timesteps(params.steps + 1);
for (int32_t i = 0; i <= params.steps; i++) {
timesteps[i] = 1.0f - (float) i / params.steps * (1.0f - params.eps);
}
llama_set_causal_attn(ctx, false);
int32_t n_vocab = llama_vocab_n_tokens(llama_model_get_vocab(model));
std::vector<llama_token_data> candidates(n_vocab);
std::vector<llama_token_data> conf_candidates;
conf_candidates.reserve(max_length);
std::vector<int32_t> mask_positions;
mask_positions.reserve(max_length);
struct llama_sampler * sampler = llama_sampler_chain_init(llama_sampler_chain_default_params());
if (params.top_k > 0) {
llama_sampler_chain_add(sampler, llama_sampler_init_top_k(params.top_k));
}
if (params.top_p < 1.0f) {
llama_sampler_chain_add(sampler, llama_sampler_init_top_p(params.top_p, 1));
}
if (params.temperature > 0.0f) {
llama_sampler_chain_add(sampler, llama_sampler_init_temp(params.temperature));
}
llama_sampler_chain_add(sampler, llama_sampler_init_dist(params.seed));
struct llama_sampler * dist_sampler = llama_sampler_init_dist(params.seed);
llama_batch batch = llama_batch_init(max_length, 0, 1);
batch.n_tokens = max_length;
int64_t total_sampling_time = 0;
int64_t total_time = 0;
int64_t time_start = ggml_time_us();
for (int32_t step = 0; step < params.steps; step++) {
if (params.step_callback) {
if (!params.step_callback(step, params.steps, output_tokens, max_length, params.step_callback_user_data)) {
break;
}
}
for (int32_t i = 0; i < max_length; i++) {
batch.token[i] = output_tokens[i];
batch.pos[i] = i;
batch.n_seq_id[i] = 1;
batch.seq_id[i][0] = 0;
batch.logits[i] = 1;
}
int ret = llama_decode(ctx, batch);
if (ret != 0) {
LOG_ERR("%s: failed to decode at step %d, ret = %d\n", __func__, step, ret);
break;
}
float * raw_logits = llama_get_logits(ctx);
if (!raw_logits) {
LOG_ERR("%s: failed to get logits at step %d\n", __func__, step);
break;
}
auto get_logits_for_pos = [&](int32_t pos) -> const float * {
return pos == 0 ? raw_logits : raw_logits + (pos - 1) * n_vocab;
};
int64_t time_start_sampling = ggml_time_us();
mask_positions.clear();
for (int32_t i = 0; i < max_length; i++) {
if (output_tokens[i] == params.mask_token_id) {
mask_positions.push_back(i);
}
}
if (mask_positions.empty()) {
break;
}
float t = timesteps[step];
float s = timesteps[step + 1];
if (params.algorithm == DIFFUSION_ALG_ORIGIN) {
float p_transfer = (step < params.steps - 1) ? (1.0f - s / t) : 1.0f;
for (int32_t pos : mask_positions) {
if (std::uniform_real_distribution<float>(0.0f, 1.0f)(rng) < p_transfer) {
const float * pos_logits = get_logits_for_pos(pos);
for (int32_t token_id = 0; token_id < n_vocab; token_id++) {
candidates[token_id].id = token_id;
candidates[token_id].logit = pos_logits[token_id];
candidates[token_id].p = 0.0f;
}
llama_token_data_array cur_p = {
/* .data = */ candidates.data(),
/* .size = */ (size_t) n_vocab, // Reset size to full vocab
/* .selected = */ -1,
/* .sorted = */ false,
};
llama_sampler_apply(sampler, &cur_p);
output_tokens[pos] = cur_p.data[cur_p.selected].id;
}
}
} else {
std::vector<std::pair<float, int32_t>> confidences;
std::vector<llama_token> sampled_tokens(mask_positions.size());
for (size_t i = 0; i < mask_positions.size(); i++) {
int32_t pos = mask_positions[i];
const float * pos_logits = get_logits_for_pos(pos);
for (int32_t token_id = 0; token_id < n_vocab; token_id++) {
candidates[token_id].logit = pos_logits[token_id];
candidates[token_id].p = 0.0f;
candidates[token_id].id = token_id;
}
llama_token_data_array cur_p = {
/* .data = */ candidates.data(),
/* .size = */ candidates.size(),
/* .selected = */ -1,
/* .sorted = */ false,
};
llama_sampler_apply(sampler, &cur_p);
llama_token sampled_token = cur_p.data[cur_p.selected].id;
float confidence = 0.0f;
if (params.algorithm == DIFFUSION_ALG_ENTROPY) {
const float epsilon = 1e-10f;
for (size_t j = 0; j < cur_p.size; j++) {
float prob = cur_p.data[j].p;
confidence += prob * logf(prob + epsilon);
}
} else if (params.algorithm == DIFFUSION_ALG_TOPK_MARGIN) {
confidence = cur_p.data[0].p - cur_p.data[1].p;
} else {
confidence = cur_p.data[cur_p.selected].p;
}
sampled_tokens[i] = sampled_token;
confidences.emplace_back(confidence, i);
}
int32_t num_transfer =
(step < params.steps - 1) ? (int32_t) (mask_positions.size() * (1.0f - s / t)) : mask_positions.size();
if (num_transfer > 0) {
if (params.alg_temp == 0.0f) {
std::partial_sort(confidences.begin(), confidences.begin() + num_transfer, confidences.end(),
[](const std::pair<float, int32_t> & a, const std::pair<float, int32_t> & b) {
if (a.first != b.first) {
return a.first > b.first;
}
return a.second < b.second;
});
} else {
conf_candidates.clear();
for (int32_t pos = 0; pos < max_length; pos++) {
float conf_logit = -std::numeric_limits<float>::infinity();
auto it = std::find(mask_positions.begin(), mask_positions.end(), pos);
if (it != mask_positions.end()) {
size_t mask_idx = std::distance(mask_positions.begin(), it);
conf_logit = confidences[mask_idx].first / params.alg_temp; // Apply temperature scaling
}
conf_candidates.emplace_back(llama_token_data{ pos, conf_logit, 0.0f });
}
llama_token_data_array conf_array = {
/* .data = */ conf_candidates.data(),
/* .size = */ conf_candidates.size(),
/* .selected = */ -1,
/* .sorted = */ false,
};
for (int32_t i = 0; i < num_transfer; i++) {
// Apply distribution sampler to get selected index
llama_sampler_apply(dist_sampler, &conf_array);
int selected_idx = conf_array.selected;
confidences[i].second = conf_candidates[selected_idx].id;
conf_candidates[selected_idx].p = 0.0f;
conf_array.selected = -1;
}
}
if (params.alg_temp == 0.0f) {
// Deterministic - use confidence order
for (int32_t i = 0; i < num_transfer; i++) {
int32_t mask_idx = confidences[i].second;
int32_t pos = mask_positions[mask_idx];
llama_token token = sampled_tokens[mask_idx];
output_tokens[pos] = token;
}
} else {
for (int32_t i = 0; i < num_transfer; i++) {
int32_t pos = confidences[i].second;
auto it = std::find(mask_positions.begin(), mask_positions.end(), pos);
if (it != mask_positions.end()) {
int32_t mask_idx = std::distance(mask_positions.begin(), it);
output_tokens[pos] = sampled_tokens[mask_idx];
}
}
}
}
}
int64_t time_end_sampling = ggml_time_us();
total_sampling_time += time_end_sampling - time_start_sampling;
}
int64_t time_end = ggml_time_us();
total_time += time_end - time_start;
LOG_INF("\ntotal time: %0.2fms, time per step: %0.2fms, sampling time per step: %0.2fms\n",
total_time / 1000.0, total_time / 1000.0 / params.steps, total_sampling_time / 1000.0 / params.steps);
llama_batch_free(batch);
llama_sampler_free(sampler);
llama_sampler_free(dist_sampler);
n_generated = max_length;
}
static std::string format_input_text(const std::string & prompt, bool use_chat_template, llama_model * model) {
if (!use_chat_template) {
return prompt;
}
auto chat_templates = common_chat_templates_init(model, "");
common_chat_templates_inputs inputs;
common_chat_msg user_msg;
user_msg.role = "user";
user_msg.content = prompt;
inputs.add_generation_prompt = true;
inputs.messages.push_back(user_msg);
auto result = common_chat_templates_apply(chat_templates.get(), inputs);
return result.prompt;
}
struct callback_data {
diffusion_params * diff_params;
const llama_vocab * vocab;
int32_t n_input;
const common_params_diffusion * diff_params;
const llama_vocab * vocab;
int32_t n_input;
};
static float calculate_confidence(const llama_token_data_array & cur_p,
diffusion_algorithm algorithm,
std::mt19937 & rng) {
switch (algorithm) {
case CONFIDENCE_BASED:
return cur_p.data[cur_p.selected].p; // Selected token probability
case ENTROPY_BASED:
{
float entropy = 0.0f;
const float epsilon = 1e-10f;
for (size_t i = 0; i < cur_p.size; i++) {
float prob = cur_p.data[i].p;
entropy += prob * logf(prob + epsilon);
}
return -entropy; // Higher entropy = lower confidence
}
case MARGIN_BASED:
return (cur_p.size > 1) ? cur_p.data[0].p - cur_p.data[1].p : cur_p.data[0].p;
case RANDOM:
{
std::uniform_real_distribution<float> uniform(0.0f, 1.0f);
return uniform(rng); // Random confidence
}
case ORIGIN:
return cur_p.data[cur_p.selected].p;
default:
return 0.0f;
}
}
// Unified transfer count calculation function
static int32_t calculate_transfer_count(int32_t step,
int32_t total_steps,
int32_t remaining_masked,
transfer_schedule schedule,
float eps,
const std::vector<int32_t> & num_transfer_tokens = {}) {
switch (schedule) {
case TIMESTEP_BASED:
{
float t = 1.0f - (float) step / total_steps * (1.0f - eps);
float s = 1.0f - (float) (step + 1) / total_steps * (1.0f - eps);
float p_transfer = (step < total_steps - 1) ? (1.0f - s / t) : 1.0f;
return (int32_t) (remaining_masked * p_transfer);
}
case BLOCK_BASED:
if (!num_transfer_tokens.empty() && step < (int32_t) num_transfer_tokens.size()) {
return num_transfer_tokens[step];
}
return remaining_masked / (total_steps - step); // Fallback
default:
return remaining_masked / (total_steps - step);
}
}
static bool diffusion_step_callback(int32_t step,
int32_t total_steps,
static bool diffusion_step_callback(int32_t step,
int32_t total_steps,
const llama_token * tokens,
int32_t n_tokens,
void * user_data) {
(void) user_data;
int32_t n_tokens,
void * user_data) {
(void)user_data;
callback_data * data = static_cast<callback_data *>(user_data);
@@ -134,11 +350,11 @@ static bool diffusion_step_callback(int32_t step,
int progress_percent = (step * 100) / total_steps;
int progress_bars = (step * 50) / total_steps;
LOG_INF("\rdiffusion step: %d/%d [%s%s] %d%%",
step,
total_steps,
std::string(progress_bars, '=').c_str(),
std::string(50 - progress_bars, ' ').c_str(),
progress_percent);
step,
total_steps,
std::string(progress_bars, '=').c_str(),
std::string(50 - progress_bars, ' ').c_str(),
progress_percent);
};
if (data->diff_params->visual_mode) {
@@ -175,360 +391,6 @@ static bool diffusion_step_callback(int32_t step,
return true;
}
static void add_gumbel_noise(float * logits, int32_t n_vocab, float temperature, std::mt19937 & rng) {
if (temperature == 0.0f) {
return;
}
std::uniform_real_distribution<double> uniform(0.0, 1.0);
for (int32_t i = 0; i < n_vocab; i++) {
double noise = uniform(rng);
// Prevent log(0)
noise = std::max(noise, 1e-20);
double gumbel_noise = std::pow(-std::log(noise), temperature);
logits[i] = std::exp(logits[i]) / gumbel_noise;
}
}
static std::vector<int32_t> get_num_transfer_tokens(int32_t mask_count, int32_t steps) {
std::vector<int32_t> num_transfer_tokens(steps);
int32_t base = mask_count / steps;
int32_t remainder = mask_count % steps;
for (int32_t i = 0; i < steps; i++) {
num_transfer_tokens[i] = base + (i < remainder ? 1 : 0);
}
return num_transfer_tokens;
}
static void diffusion_generate(llama_context * ctx,
const llama_token * input_tokens,
llama_token * output_tokens,
int32_t n_input,
const diffusion_params & params,
int32_t & n_generated) {
n_generated = 0;
if (!ctx || !input_tokens || !output_tokens || n_input <= 0 || params.max_length <= n_input) {
return;
}
const llama_model * model = llama_get_model(ctx);
// Initialize with input and pad with mask tokens
std::copy(input_tokens, input_tokens + n_input, output_tokens);
std::fill(output_tokens + n_input, output_tokens + params.max_length, params.mask_token_id);
std::mt19937 rng(params.seed);
llama_set_causal_attn(ctx, false);
int32_t n_vocab = llama_vocab_n_tokens(llama_model_get_vocab(model));
std::vector<llama_token_data> candidates(n_vocab);
std::vector<llama_token_data> conf_candidates;
conf_candidates.reserve(params.max_length);
std::vector<int32_t> mask_positions;
mask_positions.reserve(params.max_length);
// Setup sampler chain
struct llama_sampler * sampler = llama_sampler_chain_init(llama_sampler_chain_default_params());
if (params.top_k > 0) {
llama_sampler_chain_add(sampler, llama_sampler_init_top_k(params.top_k));
}
if (params.top_p < 1.0f) {
llama_sampler_chain_add(sampler, llama_sampler_init_top_p(params.top_p, 1));
}
if (params.temperature > 0.0f) {
llama_sampler_chain_add(sampler, llama_sampler_init_temp(params.temperature));
}
llama_sampler_chain_add(sampler, llama_sampler_init_dist(params.seed));
struct llama_sampler * dist_sampler = llama_sampler_init_dist(params.seed);
llama_batch batch = llama_batch_init(params.max_length, 0, 1);
batch.n_tokens = params.max_length;
// Pre-allocate buffers for CFG if needed
int32_t logits_size = n_vocab * params.max_length;
std::vector<float> cond_logits_buffer;
std::vector<llama_token> un_x_buffer;
if (params.cfg_scale > 0.0f) {
cond_logits_buffer.resize(logits_size);
un_x_buffer.resize(params.max_length);
}
// For block-based processing
std::vector<int32_t> num_transfer_tokens;
int32_t num_blocks = 1;
int32_t steps_per_block = params.steps;
if (params.schedule == BLOCK_BASED) {
GGML_ASSERT(params.max_length % params.block_length == 0);
num_blocks = params.max_length / params.block_length;
GGML_ASSERT(params.steps % num_blocks == 0);
steps_per_block = params.steps / num_blocks;
}
std::vector<float> confidence(params.max_length);
int64_t total_sampling_time = 0;
int64_t total_time = 0;
int64_t time_start = ggml_time_us();
for (int block_num = 0; block_num < num_blocks; block_num++) {
int32_t block_start = (params.schedule == BLOCK_BASED) ? n_input + block_num * params.block_length : 0;
int32_t block_end = (params.schedule == BLOCK_BASED) ?
std::min(n_input + (block_num + 1) * params.block_length, params.max_length) :
params.max_length;
// Count masked tokens in current block for block-based processing
if (params.schedule == BLOCK_BASED) {
int32_t block_mask_count = 0;
for (int i = block_start; i < block_end; i++) {
if (output_tokens[i] == params.mask_token_id) {
block_mask_count++;
}
}
num_transfer_tokens = get_num_transfer_tokens(block_mask_count, steps_per_block);
}
for (int32_t step = 0; step < steps_per_block; step++) {
int32_t global_step = block_num * steps_per_block + step;
if (params.step_callback) {
if (!params.step_callback(
global_step, params.steps, output_tokens, params.max_length, params.step_callback_user_data)) {
break;
}
}
// Setup batch
for (int32_t i = 0; i < params.max_length; i++) {
batch.token[i] = output_tokens[i];
batch.pos[i] = i;
batch.n_seq_id[i] = 1;
batch.seq_id[i][0] = 0;
batch.logits[i] = 1;
}
float * logits = nullptr;
if (params.cfg_scale > 0.0f) {
int ret = llama_decode(ctx, batch);
if (ret != 0) {
LOG_ERR("Failed to generate conditional");
break;
}
float * cond_logits_ptr = llama_get_logits(ctx);
std::memcpy(cond_logits_buffer.data(), cond_logits_ptr, logits_size * sizeof(float));
// Unconditional generation (mask input)
std::copy(output_tokens, output_tokens + params.max_length, un_x_buffer.begin());
for (int32_t i = 0; i < n_input; i++) {
un_x_buffer[i] = params.mask_token_id;
}
for (int32_t i = 0; i < params.max_length; i++) {
batch.token[i] = un_x_buffer[i];
}
ret = llama_decode(ctx, batch);
if (ret != 0) {
LOG_ERR("Failed to generate unconditional");
break;
}
float * uncond_logits = llama_get_logits(ctx);
// Apply CFG
for (int32_t i = 0; i < logits_size; i++) {
cond_logits_buffer[i] =
uncond_logits[i] + (params.cfg_scale + 1.0f) * (cond_logits_buffer[i] - uncond_logits[i]);
}
logits = cond_logits_buffer.data();
} else {
int ret = llama_decode(ctx, batch);
if (ret != 0) {
LOG_ERR("%s: failed to decode at step %d, ret = %d\n", __func__, global_step, ret);
break;
}
logits = llama_get_logits(ctx);
}
if (!logits) {
LOG_ERR("%s: failed to get logits at step %d\n", __func__, global_step);
break;
}
auto get_logits_for_pos = [&](int32_t pos) -> const float * {
if (params.shift_logits) {
return pos == 0 ? logits : logits + (pos - 1) * n_vocab;
}
return logits + (pos) *n_vocab;
};
int64_t time_start_sampling = ggml_time_us();
mask_positions.clear();
for (int32_t i = 0; i < params.max_length; i++) {
if (output_tokens[i] == params.mask_token_id) {
// For block-based, only consider current block
if (params.schedule != BLOCK_BASED || (i >= block_start && i < block_end)) {
mask_positions.push_back(i);
}
}
}
if (mask_positions.empty()) {
break;
}
if (params.add_gumbel_noise && params.temperature > 0.0f) {
add_gumbel_noise(logits, n_vocab, params.temperature, rng);
}
if (params.algorithm == ORIGIN) {
int32_t transfer_count = calculate_transfer_count(
step, steps_per_block, mask_positions.size(), params.schedule, params.eps, num_transfer_tokens);
float p_transfer = (float) transfer_count / mask_positions.size();
for (int32_t pos : mask_positions) {
if (std::uniform_real_distribution<float>(0.0f, 1.0f)(rng) < p_transfer) {
const float * pos_logits = get_logits_for_pos(pos);
for (int32_t token_id = 0; token_id < n_vocab; token_id++) {
candidates[token_id].id = token_id;
candidates[token_id].logit = pos_logits[token_id];
candidates[token_id].p = 0.0f;
}
llama_token_data_array cur_p = {
candidates.data(),
(size_t) n_vocab,
-1,
false,
};
llama_sampler_apply(sampler, &cur_p);
output_tokens[pos] = cur_p.data[cur_p.selected].id;
}
}
} else {
std::vector<std::pair<float, int32_t>> confidences;
std::vector<llama_token> sampled_tokens(mask_positions.size());
for (size_t i = 0; i < mask_positions.size(); i++) {
int32_t pos = mask_positions[i];
const float * pos_logits = get_logits_for_pos(pos);
for (int32_t token_id = 0; token_id < n_vocab; token_id++) {
candidates[token_id].logit = pos_logits[token_id];
candidates[token_id].p = 0.0f;
candidates[token_id].id = token_id;
}
llama_token_data_array cur_p = {
candidates.data(),
candidates.size(),
-1,
false,
};
llama_sampler_apply(sampler, &cur_p);
llama_token sampled_token = cur_p.data[cur_p.selected].id;
float conf = calculate_confidence(cur_p, params.algorithm, rng);
sampled_tokens[i] = sampled_token;
confidences.emplace_back(conf, i);
}
int32_t transfer_count = calculate_transfer_count(
step, steps_per_block, mask_positions.size(), params.schedule, params.eps, num_transfer_tokens);
if (transfer_count > 0) {
if (params.alg_temp == 0.0f) {
std::partial_sort(confidences.begin(),
confidences.begin() + std::min(transfer_count, (int32_t) confidences.size()),
confidences.end(),
[](const std::pair<float, int32_t> & a, const std::pair<float, int32_t> & b) {
if (a.first != b.first) {
return a.first > b.first;
}
return a.second < b.second;
});
for (int32_t i = 0; i < std::min(transfer_count, (int32_t) confidences.size()); i++) {
int32_t mask_idx = confidences[i].second;
int32_t pos = mask_positions[mask_idx];
output_tokens[pos] = sampled_tokens[mask_idx];
}
} else {
conf_candidates.clear();
for (size_t i = 0; i < confidences.size(); i++) {
float conf_logit = confidences[i].first / params.alg_temp;
conf_candidates.emplace_back(llama_token_data{ (int32_t) i, conf_logit, 0.0f });
}
llama_token_data_array conf_array = {
conf_candidates.data(),
conf_candidates.size(),
-1,
false,
};
for (int32_t i = 0; i < std::min(transfer_count, (int32_t) confidences.size()); i++) {
llama_sampler_apply(dist_sampler, &conf_array);
int32_t selected_idx = conf_array.selected;
int32_t mask_idx = selected_idx;
int32_t pos = mask_positions[mask_idx];
output_tokens[pos] = sampled_tokens[mask_idx];
conf_candidates[selected_idx].p = 0.0f;
conf_array.selected = -1;
}
}
}
}
int64_t time_end_sampling = ggml_time_us();
total_sampling_time += time_end_sampling - time_start_sampling;
}
}
int64_t time_end = ggml_time_us();
total_time += time_end - time_start;
LOG_INF("\ntotal time: %0.2fms, time per step: %0.2fms, sampling time per step: %0.2fms\n",
total_time / 1000.0,
total_time / 1000.0 / params.steps,
total_sampling_time / 1000.0 / params.steps);
llama_batch_free(batch);
llama_sampler_free(sampler);
llama_sampler_free(dist_sampler);
n_generated = params.max_length;
}
static std::string format_input_text(const std::string & prompt, bool use_chat_template, llama_model * model) {
if (!use_chat_template) {
return prompt;
}
auto chat_templates = common_chat_templates_init(model, "");
common_chat_templates_inputs inputs;
common_chat_msg user_msg;
user_msg.role = "user";
user_msg.content = prompt;
inputs.add_generation_prompt = true;
inputs.messages.push_back(user_msg);
auto result = common_chat_templates_apply(chat_templates.get(), inputs);
return result.prompt;
}
int main(int argc, char ** argv) {
ggml_time_init();
@@ -538,6 +400,11 @@ int main(int argc, char ** argv) {
return 1;
}
const char * alg_names[] = { "ORIGIN", "MASKGIT_PLUS", "TOPK_MARGIN", "ENTROPY" };
const char * alg_name = (params.diffusion.algorithm >= 0 && params.diffusion.algorithm <= 3) ?
alg_names[params.diffusion.algorithm] :
"UNKNOWN";
common_init();
llama_backend_init();
@@ -554,12 +421,6 @@ int main(int argc, char ** argv) {
return 1;
}
if (!llama_model_is_diffusion(model)) {
LOG_ERR("error: unsupported model for diffusion");
llama_model_free(model);
return 1;
}
llama_context_params ctx_params = llama_context_default_params();
ctx_params.n_ctx = params.n_ctx;
ctx_params.n_batch = params.n_batch;
@@ -581,12 +442,10 @@ int main(int argc, char ** argv) {
const llama_vocab * vocab = llama_model_get_vocab(model);
std::string formatted_prompt = format_input_text(params.prompt, params.enable_chat_template, model);
std::vector<llama_token> input_tokens = common_tokenize(vocab,
formatted_prompt,
std::vector<llama_token> input_tokens = common_tokenize(vocab, formatted_prompt,
/*add special tokens*/ true,
/*parse special*/ true);
int n_input = input_tokens.size();
int n_input = input_tokens.size();
if (n_input >= params.n_ctx) {
LOG_ERR("error: input too long (%d tokens), max context is %d\n", n_input, params.n_ctx);
@@ -595,79 +454,44 @@ int main(int argc, char ** argv) {
return 1;
}
struct diffusion_params ldiff_params = diffusion_default_params();
ldiff_params.steps = params.diffusion.steps;
ldiff_params.eps = params.diffusion.eps;
ldiff_params.temperature = params.sampling.temp;
ldiff_params.top_p = params.sampling.top_p;
ldiff_params.top_k = params.sampling.top_k;
ldiff_params.algorithm = static_cast<enum diffusion_alg>(params.diffusion.algorithm);
ldiff_params.alg_temp = params.diffusion.alg_temp;
ldiff_params.seed = params.sampling.seed;
llama_token mask_token_id = llama_vocab_mask(vocab);
GGML_ASSERT(mask_token_id != LLAMA_TOKEN_NULL);
bool visual_mode = params.diffusion.visual_mode;
int32_t n_generated = 0;
std::vector<llama_token> output_tokens(params.n_ubatch);
struct diffusion_params diff_params;
char shift_logits_str[8];
if (llama_model_meta_val_str(model, "diffusion.shift_logits", shift_logits_str, sizeof(shift_logits_str)) >= 0) {
diff_params.shift_logits = (strcmp(shift_logits_str, "true") == 0);
} else {
diff_params.shift_logits = true;
}
//Use either eps or block length, but not both
GGML_ASSERT((params.diffusion.eps == 0) ^ (params.diffusion.block_length == 0));
if (params.diffusion.eps) {
diff_params.schedule = TIMESTEP_BASED;
diff_params.eps = params.diffusion.eps;
} else if (params.diffusion.block_length) {
diff_params.schedule = BLOCK_BASED;
diff_params.block_length = params.diffusion.block_length;
}
diff_params.mask_token_id = mask_token_id;
diff_params.seed = params.sampling.seed;
diff_params.temperature = params.sampling.temp;
diff_params.steps = params.diffusion.steps;
diff_params.algorithm = static_cast<diffusion_algorithm>(params.diffusion.algorithm);
diff_params.max_length = params.n_ubatch;
diff_params.top_p = params.sampling.top_p;
diff_params.top_k = params.sampling.top_k;
diff_params.visual_mode = params.diffusion.visual_mode;
diff_params.add_gumbel_noise = params.diffusion.add_gumbel_noise;
diff_params.step_callback = diffusion_step_callback;
callback_data cb_data = { &diff_params, vocab, n_input };
diff_params.step_callback_user_data = &cb_data;
const char * alg_names[] = { "ORIGIN", "ENTROPY_BASED", "MARGIN_BASED", "RANDOM", "CONFIDENCE_BASED" };
const char * sched_names[] = { "TIMESTEP_BASED", "BLOCK_BASED" };
const char * alg_name =
(diff_params.algorithm >= 0 && diff_params.algorithm <= 4) ? alg_names[diff_params.algorithm] : "UNKNOWN";
const char * sched_name =
(diff_params.schedule >= 0 && diff_params.schedule <= 1) ? sched_names[diff_params.schedule] : "UNKNOWN";
LOG_INF("diffusion_params: - %-25s llama_token = %d\n", "mask_token_id", mask_token_id);
LOG_INF("diffusion_params: - %-25s u32 = %d\n", "steps", diff_params.steps);
LOG_INF("diffusion_params: - %-25s u32 = %d\n", "max_length", diff_params.max_length);
LOG_INF("diffusion_params: - %-25s enum = %d (%s)\n", "algorithm", diff_params.algorithm, alg_name);
LOG_INF("diffusion_params: - %-25s enum = %d (%s)\n", "schedule", diff_params.schedule, sched_name);
LOG_INF("diffusion_params: - %-25s f32 = %.3f\n", "temperature", diff_params.temperature);
if (diff_params.schedule == TIMESTEP_BASED) {
LOG_INF("diffusion_params: - %-25s f32 = %.6f\n", "eps", diff_params.eps);
LOG_INF("diffusion_params: - %-25s f32 = %.3f\n", "alg_temp", diff_params.alg_temp);
}
if (diff_params.schedule == BLOCK_BASED) {
LOG_INF("diffusion_params: - %-25s u32 = %d\n", "block_length", diff_params.block_length);
LOG_INF("diffusion_params: - %-25s f32 = %.3f\n", "cfg_scale", diff_params.cfg_scale);
}
LOG_INF("diffusion_params: - %-25s u32 = %d\n", "steps", params.diffusion.steps);
LOG_INF("diffusion_params: - %-25s f32 = %.6f\n", "eps", params.diffusion.eps);
LOG_INF("diffusion_params: - %-25s u32 = %d (%s)\n", "algorithm", params.diffusion.algorithm,
alg_name);
LOG_INF("diffusion_params: - %-25s f32 = %.3f\n", "alg_temp", params.diffusion.alg_temp);
diffusion_generate(ctx, input_tokens.data(), output_tokens.data(), n_input, diff_params, n_generated);
ldiff_params.mask_token_id = mask_token_id;
callback_data cb_data = { &params.diffusion, vocab, n_input };
ldiff_params.step_callback = diffusion_step_callback;
ldiff_params.step_callback_user_data = &cb_data;
int32_t n_generated = 0;
std::vector<llama_token> output_tokens(params.n_ubatch);
diffusion_generate(ctx, input_tokens.data(), output_tokens.data(), n_input, params.n_ubatch,
ldiff_params, n_generated);
if (n_generated > 0) {
if (visual_mode) {
if (params.diffusion.visual_mode) {
//clear screen and move cursor to top-left
LOG_INF("\033[2J\033[H");
}
output_tokens.erase(output_tokens.begin(), output_tokens.begin() + n_input);
std::string output_data = common_detokenize(vocab, output_tokens, false);
LOG_INF("\n%s\n", output_data.c_str());

View File

@@ -81,14 +81,6 @@ int main(int argc, char ** argv) {
params.embedding = true;
// if the number of prompts that would be encoded is known in advance, it's more efficient to specify the
// --parallel argument accordingly. for convenience, if not specified, we fallback to unified KV cache
// in order to support any number of prompts
if (params.n_parallel == 1) {
LOG_INF("%s: n_parallel == 1 -> unified KV cache is enabled\n", __func__);
params.kv_unified = true;
}
// utilize the full context
if (params.n_batch < params.n_ctx) {
LOG_WRN("%s: setting batch size to %d\n", __func__, params.n_ctx);

View File

@@ -7,7 +7,6 @@
#include <cstdio>
#include <string>
#include <vector>
#include <numeric>
/**
* This the arbitrary data which will be passed to each callback.
@@ -78,12 +77,6 @@ static void ggml_print_tensor(uint8_t * data, ggml_type type, const int64_t * ne
LOG(" ]\n");
LOG(" sum = %f\n", sum);
}
// TODO: make this abort configurable/optional?
if (std::isnan(sum)) {
LOG_ERR("encountered NaN - aborting\n");
exit(0);
}
}
/**

View File

@@ -15,12 +15,6 @@ int main(int argc, char ** argv) {
return 1;
}
if (params.n_parallel == 1) {
// the example uses 2 sequences, so when n_parallel == 1, we need to enable unified kv cache
printf("%s: n_parallel == 1, enabling unified kv cache\n", __func__);
params.kv_unified = true;
}
common_init();
if (params.n_predict < 0) {

View File

@@ -59,15 +59,13 @@ int main(int argc, char ** argv) {
}
params.cpuparams_batch.n_threads = params.speculative.cpuparams_batch.n_threads;
params.tensor_buft_overrides = params.speculative.tensor_buft_overrides;
common_init_result llama_init_dft = common_init_from_params(params);
//model_dft = llama_init_dft.model.get();
ctx_dft = llama_init_dft.context.get();
if (!common_speculative_are_compatible(ctx_tgt, ctx_dft)) {
LOG_INF("the draft model '%s' is not compatible with the target model '%s'. tokens will be translated between the draft and target models.\n", params.speculative.model.path.c_str(), params.model.path.c_str());
return 1;
}
// Tokenize the prompt
@@ -132,10 +130,7 @@ int main(int argc, char ** argv) {
params_spec.n_reuse = llama_n_ctx(ctx_dft) - n_draft;
params_spec.p_min = p_min;
struct common_speculative * spec = common_speculative_init(ctx_tgt, ctx_dft);
for (auto &pair : params.speculative.replacements) {
common_speculative_add_replacement_tgt_dft(spec, pair.first.c_str(), pair.second.c_str());
}
struct common_speculative * spec = common_speculative_init(ctx_dft);
llama_batch batch_tgt = llama_batch_init(llama_n_batch(ctx_tgt), 0, 1);

View File

@@ -85,8 +85,6 @@ int main(int argc, char ** argv) {
}
params.cpuparams_batch.n_threads = params.speculative.cpuparams_batch.n_threads;
params.tensor_buft_overrides = params.speculative.tensor_buft_overrides;
common_init_result llama_init_dft = common_init_from_params(params);
model_dft = llama_init_dft.model.get();

View File

@@ -10,20 +10,20 @@
#include <vector>
#if defined(_MSC_VER)
#pragma warning(disable: 4244 4267) // possible loss of data
#pragma warning(disable: 4244 4267) // possible loss of data
#endif
int main(int argc, char ** argv) {
common_params params;
params.escape = false;
if (!common_params_parse(argc, argv, params, LLAMA_EXAMPLE_FINETUNE)) {
if (!common_params_parse(argc, argv, params, LLAMA_EXAMPLE_PERPLEXITY)) {
return 1;
}
if (params.use_mmap) {
LOG_INF("%s: force disabling memory mapping because it would result in-read-only pointers to the weights\n",
__func__);
LOG_INF("%s: force disabling memory mapping because it would result in-read-only pointers to the weights\n", __func__);
params.use_mmap = false;
}
if (params.cache_type_k != GGML_TYPE_F32) {
@@ -38,10 +38,11 @@ int main(int argc, char ** argv) {
common_init();
llama_backend_init();
llama_numa_init(params.numa);
// load the model and apply lora adapter, if any
common_init_result llama_init = common_init_from_params(params);
llama_model_ptr & model = llama_init.model;
llama_context_ptr & ctx = llama_init.context;
common_init_result llama_init = common_init_from_params(params);
llama_model_ptr & model = llama_init.model;
llama_context_ptr & ctx = llama_init.context;
if (model == NULL) {
LOG_ERR("%s: unable to load model\n", __func__);
@@ -54,32 +55,31 @@ int main(int argc, char ** argv) {
LOG_INF("%s\n", common_params_get_system_info(params).c_str());
}
std::vector<llama_token> tokens = common_tokenize(ctx.get(), params.prompt, true);
ggml_opt_dataset_t dataset = common_opt_dataset_init(ctx.get(), tokens, llama_n_ctx(ctx.get()) / 2);
constexpr float val_split = 0.05f;
struct lr_opt & lr = params.lr;
LOG_INF("-optimizer %s -lr0 %.2g -wd %.2g -lr-min %.2g -min-epochs %.2g -epochs %d -period %.2g -val %.2g\n",
ggml_opt_optimizer_name(params.optimizer), (double) lr.lr0, (double) lr.wd, (double) lr.lr_min, (double) lr.decay_epochs,
(unsigned) lr.epochs, (double) params.n_batch / params.n_ubatch, (double) params.val_split);
std::vector<llama_token> tokens = common_tokenize(ctx.get(), params.prompt, true);
ggml_opt_dataset_t dataset = common_opt_dataset_init(ctx.get(), tokens, llama_n_ctx(ctx.get())/2);
struct llama_opt_params lopt_params{
/*n_ctx_train =*/0,
/*param_filter =*/llama_opt_param_filter_all,
/*param_filter_ud =*/nullptr,
/*get_opt_pars =*/common_opt_lr_pars,
/*get_opt_pars_ud =*/&params.lr,
/*optimizer_type =*/params.optimizer,
struct ggml_opt_optimizer_params optimizer_params = ggml_opt_get_default_optimizer_params(nullptr);
optimizer_params.adamw.alpha = 1e-7f; // learning rate
struct llama_opt_params lopt_params {
/*n_ctx_train =*/ 0,
/*param_filter =*/ llama_opt_param_filter_all,
/*param_filter_ud =*/ nullptr,
/*get_opt_pars =*/ ggml_opt_get_constant_optimizer_params,
/*get_opt_pars_ud =*/ &optimizer_params,
};
llama_opt_init(ctx.get(), model.get(), lopt_params);
const int64_t idata_split = ggml_opt_dataset_ndata(dataset) * (1.0f - params.val_split);
const int64_t idata_split = ggml_opt_dataset_ndata(dataset) * (1.0f - val_split);
ggml_opt_result_t result_train = ggml_opt_result_init();
ggml_opt_result_t result_eval = ggml_opt_result_init();
for (lr.epoch = 0; lr.epoch < lr.epochs; ++lr.epoch) {
for (int epoch = 0; epoch < 2; ++epoch) {
llama_opt_epoch(ctx.get(), dataset, result_train, result_eval, idata_split,
ggml_opt_epoch_callback_progress_bar, ggml_opt_epoch_callback_progress_bar);
ggml_opt_epoch_callback_progress_bar, ggml_opt_epoch_callback_progress_bar);
fprintf(stderr, "\n");
ggml_opt_result_reset(result_train);
@@ -88,7 +88,7 @@ int main(int argc, char ** argv) {
ggml_opt_result_free(result_train);
ggml_opt_result_free(result_eval);
llama_model_save_to_file(model.get(), params.out_file.c_str());
llama_model_save_to_file(model.get(), "finetuned-model.gguf");
llama_backend_free();

View File

@@ -36,6 +36,9 @@
# ```
# nixConfig = {
# extra-substituters = [
# # Populated by the CI in ggml-org/llama.cpp
# "https://llama-cpp.cachix.org"
#
# # A development cache for nixpkgs imported with `config.cudaSupport = true`.
# # Populated by https://hercules-ci.com/github/SomeoneSerge/nixpkgs-cuda-ci.
# # This lets one skip building e.g. the CUDA-enabled openmpi.
@@ -44,8 +47,10 @@
# ];
#
# # Verify these are the same keys as published on
# # - https://app.cachix.org/cache/llama-cpp
# # - https://app.cachix.org/cache/cuda-maintainers
# extra-trusted-public-keys = [
# "llama-cpp.cachix.org-1:H75X+w83wUKTIPSO1KWy9ADUrzThyGs8P5tmAbkWhQc="
# "cuda-maintainers.cachix.org-1:0dq3bujKpuEPMCX6U4WylrUDZ9JyUG0VpVZa7CNfq5E="
# ];
# };

View File

@@ -39,9 +39,8 @@ if (WIN32)
set(CMAKE_SHARED_MODULE_PREFIX "")
endif()
option(BUILD_SHARED_LIBS "ggml: build shared libraries" ${BUILD_SHARED_LIBS_DEFAULT})
option(GGML_BACKEND_DL "ggml: build backends as dynamic libraries (requires BUILD_SHARED_LIBS)" OFF)
set(GGML_BACKEND_DIR "" CACHE PATH "ggml: directory to load dynamic backends from (requires GGML_BACKEND_DL")
option(BUILD_SHARED_LIBS "ggml: build shared libraries" ${BUILD_SHARED_LIBS_DEFAULT})
option(GGML_BACKEND_DL "ggml: build backends as dynamic libraries (requires BUILD_SHARED_LIBS)" OFF)
#
# option list
@@ -176,7 +175,6 @@ option(GGML_HIP_NO_VMM "ggml: do not try to use HIP VMM"
option(GGML_HIP_ROCWMMA_FATTN "ggml: enable rocWMMA for FlashAttention" OFF)
option(GGML_HIP_FORCE_ROCWMMA_FATTN_GFX12 "ggml: enable rocWMMA FlashAttention on GFX12" OFF)
option(GGML_HIP_MMQ_MFMA "ggml: enable MFMA MMA for CDNA in MMQ" ON)
option(GGML_HIP_EXPORT_METRICS "ggml: enable kernel perf metrics output" OFF)
option(GGML_MUSA_GRAPHS "ggml: use MUSA graph, experimental, unstable" OFF)
option(GGML_MUSA_MUDNN_COPY "ggml: enable muDNN for accelerated copy" OFF)
option(GGML_VULKAN "ggml: use Vulkan" OFF)
@@ -188,7 +186,6 @@ option(GGML_VULKAN_VALIDATE "ggml: enable Vulkan validation"
option(GGML_VULKAN_RUN_TESTS "ggml: run Vulkan tests" OFF)
option(GGML_WEBGPU "ggml: use WebGPU" OFF)
option(GGML_WEBGPU_DEBUG "ggml: enable WebGPU debug output" OFF)
option(GGML_ZDNN "ggml: use zDNN" OFF)
option(GGML_METAL "ggml: use Metal" ${GGML_METAL_DEFAULT})
option(GGML_METAL_USE_BF16 "ggml: use bfloat if available" OFF)
option(GGML_METAL_NDEBUG "ggml: disable Metal debugging" OFF)

View File

@@ -34,8 +34,8 @@ if (NOT GGML_SHARED_LIB)
if (GGML_BLAS)
find_dependency(BLAS)
list(APPEND GGML_BLAS_INTERFACE_LINK_LIBRARIES ${BLAS_LIBRARIES})
list(APPEND GGML_BLAS_INTERFACE_LINK_OPTIONS ${BLAS_LINKER_FLAGS})
list(APPEND GGML_CPU_INTERFACE_LINK_LIBRARIES ${BLAS_LIBRARIES})
list(APPEND GGML_CPU_INTERFACE_LINK_OPTIONS ${BLAS_LINKER_FLAGS})
endif()
if (GGML_CUDA)
@@ -125,56 +125,54 @@ if(NOT TARGET ggml::ggml)
IMPORTED_LOCATION "${GGML_BASE_LIBRARY}")
set(_ggml_all_targets "")
if (NOT GGML_BACKEND_DL)
foreach(_ggml_backend ${GGML_AVAILABLE_BACKENDS})
string(REPLACE "-" "_" _ggml_backend_pfx "${_ggml_backend}")
string(TOUPPER "${_ggml_backend_pfx}" _ggml_backend_pfx)
foreach(_ggml_backend ${GGML_AVAILABLE_BACKENDS})
string(REPLACE "-" "_" _ggml_backend_pfx "${_ggml_backend}")
string(TOUPPER "${_ggml_backend_pfx}" _ggml_backend_pfx)
find_library(${_ggml_backend_pfx}_LIBRARY ${_ggml_backend}
REQUIRED
HINTS ${GGML_LIB_DIR}
NO_CMAKE_FIND_ROOT_PATH)
find_library(${_ggml_backend_pfx}_LIBRARY ${_ggml_backend}
REQUIRED
HINTS ${GGML_LIB_DIR}
NO_CMAKE_FIND_ROOT_PATH)
message(STATUS "Found ${${_ggml_backend_pfx}_LIBRARY}")
message(STATUS "Found ${${_ggml_backend_pfx}_LIBRARY}")
add_library(ggml::${_ggml_backend} UNKNOWN IMPORTED)
add_library(ggml::${_ggml_backend} UNKNOWN IMPORTED)
set_target_properties(ggml::${_ggml_backend}
PROPERTIES
INTERFACE_INCLUDE_DIRECTORIES "${GGML_INCLUDE_DIR}"
IMPORTED_LINK_INTERFACE_LANGUAGES "CXX"
IMPORTED_LOCATION "${${_ggml_backend_pfx}_LIBRARY}"
INTERFACE_COMPILE_FEATURES c_std_90
POSITION_INDEPENDENT_CODE ON)
string(REGEX MATCH "^ggml-cpu" is_cpu_variant "${_ggml_backend}")
if(is_cpu_variant)
list(APPEND GGML_CPU_INTERFACE_LINK_LIBRARIES "ggml::ggml-base")
set_target_properties(ggml::${_ggml_backend}
PROPERTIES
INTERFACE_INCLUDE_DIRECTORIES "${GGML_INCLUDE_DIR}"
IMPORTED_LINK_INTERFACE_LANGUAGES "CXX"
IMPORTED_LOCATION "${${_ggml_backend_pfx}_LIBRARY}"
INTERFACE_COMPILE_FEATURES c_std_90
POSITION_INDEPENDENT_CODE ON)
PROPERTIES
INTERFACE_LINK_LIBRARIES "${GGML_CPU_INTERFACE_LINK_LIBRARIES}")
string(REGEX MATCH "^ggml-cpu" is_cpu_variant "${_ggml_backend}")
if(is_cpu_variant)
list(APPEND GGML_CPU_INTERFACE_LINK_LIBRARIES "ggml::ggml-base")
set_target_properties(ggml::${_ggml_backend}
PROPERTIES
INTERFACE_LINK_LIBRARIES "${GGML_CPU_INTERFACE_LINK_LIBRARIES}")
if(GGML_CPU_INTERFACE_LINK_OPTIONS)
set_target_properties(ggml::${_ggml_backend}
PROPERTIES
INTERFACE_LINK_OPTIONS "${GGML_CPU_INTERFACE_LINK_OPTIONS}")
endif()
else()
list(APPEND ${_ggml_backend_pfx}_INTERFACE_LINK_LIBRARIES "ggml::ggml-base")
if(GGML_CPU_INTERFACE_LINK_OPTIONS)
set_target_properties(ggml::${_ggml_backend}
PROPERTIES
INTERFACE_LINK_LIBRARIES "${${_ggml_backend_pfx}_INTERFACE_LINK_LIBRARIES}")
if(${_ggml_backend_pfx}_INTERFACE_LINK_OPTIONS)
set_target_properties(ggml::${_ggml_backend}
PROPERTIES
INTERFACE_LINK_OPTIONS "${${_ggml_backend_pfx}_INTERFACE_LINK_OPTIONS}")
endif()
INTERFACE_LINK_OPTIONS "${GGML_CPU_INTERFACE_LINK_OPTIONS}")
endif()
list(APPEND _ggml_all_targets ggml::${_ggml_backend})
endforeach()
endif()
else()
list(APPEND ${_ggml_backend_pfx}_INTERFACE_LINK_LIBRARIES "ggml::ggml-base")
set_target_properties(ggml::${_ggml_backend}
PROPERTIES
INTERFACE_LINK_LIBRARIES "${${_ggml_backend_pfx}_INTERFACE_LINK_LIBRARIES}")
if(${_ggml_backend_pfx}_INTERFACE_LINK_OPTIONS)
set_target_properties(ggml::${_ggml_backend}
PROPERTIES
INTERFACE_LINK_OPTIONS "${${_ggml_backend_pfx}_INTERFACE_LINK_OPTIONS}")
endif()
endif()
list(APPEND _ggml_all_targets ggml::${_ggml_backend})
endforeach()
list(APPEND GGML_INTERFACE_LINK_LIBRARIES ggml::ggml-base "${_ggml_all_targets}")
set_target_properties(ggml::ggml

View File

@@ -74,26 +74,16 @@ extern "C" {
GGML_OPT_BUILD_TYPE_OPT = 30,
};
enum ggml_opt_optimizer_type {
GGML_OPT_OPTIMIZER_TYPE_ADAMW,
GGML_OPT_OPTIMIZER_TYPE_SGD,
GGML_OPT_OPTIMIZER_TYPE_COUNT
};
// parameters that control which optimizer is used and how said optimizer tries to find the minimal loss
struct ggml_opt_optimizer_params {
// AdamW optimizer parameters
struct {
float alpha; // learning rate
float beta1; // first AdamW momentum
float beta2; // second AdamW momentum
float beta1;
float beta2;
float eps; // epsilon for numerical stability
float wd; // weight decay - 0.0f to disable
float wd; // weight decay for AdamW, use 0.0f to disable
} adamw;
struct {
float alpha; // learning rate
float wd; // weight decay
} sgd;
};
// callback to calculate optimizer parameters prior to a backward pass
@@ -122,11 +112,8 @@ extern "C" {
int32_t opt_period; // after how many gradient accumulation steps an optimizer step should be done
ggml_opt_get_optimizer_params get_opt_pars; // callback for calculating optimizer parameters
void * get_opt_pars_ud; // userdata for calculating optimizer parameters
// only GGML_OPT_OPTIMIZER_TYPE_ADAMW needs m, v momenta per parameter tensor
enum ggml_opt_optimizer_type optimizer;
ggml_opt_get_optimizer_params get_opt_pars; // callback for calculating optimizer parameters
void * get_opt_pars_ud; // userdata for calculating optimizer parameters
};
// get parameters for an optimization context with defaults set where possible
@@ -155,10 +142,6 @@ extern "C" {
// get the gradient accumulator for a node from the forward graph
GGML_API struct ggml_tensor * ggml_opt_grad_acc(ggml_opt_context_t opt_ctx, struct ggml_tensor * node);
GGML_API enum ggml_opt_optimizer_type ggml_opt_context_optimizer_type(ggml_opt_context_t); //TODO consistent naming scheme
GGML_API const char * ggml_opt_optimizer_name(enum ggml_opt_optimizer_type);
// ====== Optimization Result ======
GGML_API ggml_opt_result_t ggml_opt_result_init(void);
@@ -243,14 +226,12 @@ extern "C" {
struct ggml_tensor * outputs, // output tensor, must have shape [ne_label, ndata_batch] if labels are used
ggml_opt_dataset_t dataset, // dataset with data and optionally also labels
enum ggml_opt_loss_type loss_type, // loss to minimize
enum ggml_opt_optimizer_type optimizer, // sgd or adamw
ggml_opt_get_optimizer_params get_opt_pars, // callback to get optimizer params, userdata is pointer to epoch (of type int64_t)
int64_t nepoch, // how many times the dataset should be iterated over
int64_t nbatch_logical, // datapoints optimizer step, must be a multiple of ndata_batch in inputs/outputs
float val_split, // fraction of the dataset to use for validation, must be in [0.0f, 1.0f)
bool silent); // whether or not info prints to stderr should be suppressed
#ifdef __cplusplus
}
#endif

View File

@@ -1,16 +0,0 @@
#pragma once
#include "ggml.h"
#include "ggml-backend.h"
#ifdef __cplusplus
extern "C" {
#endif
GGML_BACKEND_API ggml_backend_t ggml_backend_zdnn_init(void);
GGML_BACKEND_API ggml_backend_reg_t ggml_backend_zdnn_reg(void);
#ifdef __cplusplus
}
#endif

View File

@@ -241,8 +241,6 @@
#define GGML_ROPE_TYPE_MROPE 8
#define GGML_ROPE_TYPE_VISION 24
#define GGML_MROPE_SECTIONS 4
#define GGML_UNUSED(x) (void)(x)
#define GGML_PAD(x, n) (((x) + (n) - 1) & ~((n) - 1))
@@ -306,16 +304,6 @@
GGML_TENSOR_LOCALS(int64_t, ne, dst, ne) \
GGML_TENSOR_LOCALS(size_t, nb, dst, nb)
#define GGML_TENSOR_TERNARY_OP_LOCALS \
GGML_TENSOR_LOCALS(int64_t, ne0, src0, ne) \
GGML_TENSOR_LOCALS(size_t, nb0, src0, nb) \
GGML_TENSOR_LOCALS(int64_t, ne1, src1, ne) \
GGML_TENSOR_LOCALS(size_t, nb1, src1, nb) \
GGML_TENSOR_LOCALS(int64_t, ne2, src2, ne) \
GGML_TENSOR_LOCALS(size_t, nb2, src2, nb) \
GGML_TENSOR_LOCALS(int64_t, ne, dst, ne) \
GGML_TENSOR_LOCALS(size_t, nb, dst, nb)
#define GGML_TENSOR_BINARY_OP_LOCALS01 \
GGML_TENSOR_LOCALS(int64_t, ne0, src0, ne) \
GGML_TENSOR_LOCALS(size_t, nb0, src0, nb) \
@@ -407,8 +395,7 @@ extern "C" {
// GGML_TYPE_IQ4_NL_4_4 = 36,
// GGML_TYPE_IQ4_NL_4_8 = 37,
// GGML_TYPE_IQ4_NL_8_8 = 38,
GGML_TYPE_MXFP4 = 39, // MXFP4 (1 block)
GGML_TYPE_COUNT = 40,
GGML_TYPE_COUNT = 39,
};
// precision
@@ -443,7 +430,6 @@ extern "C" {
GGML_FTYPE_MOSTLY_IQ4_XS = 22, // except 1d tensors
GGML_FTYPE_MOSTLY_IQ1_M = 23, // except 1d tensors
GGML_FTYPE_MOSTLY_BF16 = 24, // except 1d tensors
GGML_FTYPE_MOSTLY_MXFP4 = 25, // except 1d tensors
};
// available tensor operations:
@@ -452,7 +438,6 @@ extern "C" {
GGML_OP_DUP,
GGML_OP_ADD,
GGML_OP_ADD_ID,
GGML_OP_ADD1,
GGML_OP_ACC,
GGML_OP_SUB,
@@ -542,7 +527,6 @@ extern "C" {
GGML_OP_CROSS_ENTROPY_LOSS,
GGML_OP_CROSS_ENTROPY_LOSS_BACK,
GGML_OP_OPT_STEP_ADAMW,
GGML_OP_OPT_STEP_SGD,
GGML_OP_GLU,
@@ -573,7 +557,6 @@ extern "C" {
GGML_GLU_OP_REGLU,
GGML_GLU_OP_GEGLU,
GGML_GLU_OP_SWIGLU,
GGML_GLU_OP_SWIGLU_OAI,
GGML_GLU_OP_GEGLU_ERF,
GGML_GLU_OP_GEGLU_QUICK,
@@ -848,13 +831,6 @@ extern "C" {
struct ggml_tensor * b,
enum ggml_type type);
// dst[i0, i1, i2] = a[i0, i1, i2] + b[i0, ids[i1, i2]]
GGML_API struct ggml_tensor * ggml_add_id(
struct ggml_context * ctx,
struct ggml_tensor * a,
struct ggml_tensor * b,
struct ggml_tensor * ids);
GGML_API struct ggml_tensor * ggml_add1(
struct ggml_context * ctx,
struct ggml_tensor * a,
@@ -1222,13 +1198,6 @@ extern "C" {
struct ggml_tensor * a,
struct ggml_tensor * b);
GGML_API struct ggml_tensor * ggml_swiglu_oai(
struct ggml_context * ctx,
struct ggml_tensor * a,
struct ggml_tensor * b,
float alpha,
float limit);
// normalize along rows
GGML_API struct ggml_tensor * ggml_norm(
struct ggml_context * ctx,
@@ -1601,10 +1570,6 @@ extern "C" {
float scale,
float max_bias);
GGML_API void ggml_soft_max_add_sinks(
struct ggml_tensor * a,
struct ggml_tensor * sinks);
GGML_API struct ggml_tensor * ggml_soft_max_ext_back(
struct ggml_context * ctx,
struct ggml_tensor * a,
@@ -1663,7 +1628,7 @@ extern "C" {
struct ggml_tensor * b,
struct ggml_tensor * c,
int n_dims,
int sections[GGML_MROPE_SECTIONS],
int sections[4],
int mode,
int n_ctx_orig,
float freq_base,
@@ -1689,22 +1654,6 @@ extern "C" {
float beta_fast,
float beta_slow);
GGML_API struct ggml_tensor * ggml_rope_multi_inplace(
struct ggml_context * ctx,
struct ggml_tensor * a,
struct ggml_tensor * b,
struct ggml_tensor * c,
int n_dims,
int sections[GGML_MROPE_SECTIONS],
int mode,
int n_ctx_orig,
float freq_base,
float freq_scale,
float ext_factor,
float attn_factor,
float beta_fast,
float beta_slow);
GGML_DEPRECATED(GGML_API struct ggml_tensor * ggml_rope_custom(
struct ggml_context * ctx,
struct ggml_tensor * a,
@@ -2103,10 +2052,6 @@ extern "C" {
GGML_API enum ggml_prec ggml_flash_attn_ext_get_prec(
const struct ggml_tensor * a);
GGML_API void ggml_flash_attn_ext_add_sinks(
struct ggml_tensor * a,
struct ggml_tensor * sinks);
// TODO: needs to be adapted to ggml_flash_attn_ext
GGML_API struct ggml_tensor * ggml_flash_attn_back(
struct ggml_context * ctx,
@@ -2312,14 +2257,7 @@ extern "C" {
struct ggml_tensor * grad,
struct ggml_tensor * m,
struct ggml_tensor * v,
struct ggml_tensor * adamw_params); // parameters such as the learning rate
// stochastic gradient descent step (with weight decay)
GGML_API struct ggml_tensor * ggml_opt_step_sgd(
struct ggml_context * ctx,
struct ggml_tensor * a,
struct ggml_tensor * grad,
struct ggml_tensor * sgd_params); // alpha, weight decay
struct ggml_tensor * adamw_params); // parameters such a the learning rate
//
// automatic differentiation

View File

@@ -214,13 +214,6 @@ add_library(ggml
ggml-backend-reg.cpp)
add_library(ggml::ggml ALIAS ggml)
if (GGML_BACKEND_DIR)
if (NOT GGML_BACKEND_DL)
message(FATAL_ERROR "GGML_BACKEND_DIR requires GGML_BACKEND_DL")
endif()
target_compile_definitions(ggml PUBLIC GGML_BACKEND_DIR="${GGML_BACKEND_DIR}")
endif()
target_link_libraries(ggml PUBLIC ggml-base)
if (CMAKE_SYSTEM_NAME MATCHES "Linux")
@@ -234,11 +227,7 @@ function(ggml_add_backend_library backend)
set_target_properties(${backend} PROPERTIES LIBRARY_OUTPUT_DIRECTORY ${CMAKE_RUNTIME_OUTPUT_DIRECTORY})
target_compile_definitions(${backend} PRIVATE GGML_BACKEND_DL)
add_dependencies(ggml ${backend})
if (GGML_BACKEND_DIR)
install(TARGETS ${backend} LIBRARY DESTINATION ${GGML_BACKEND_DIR})
else()
install(TARGETS ${backend} LIBRARY DESTINATION ${CMAKE_INSTALL_BINDIR})
endif()
install(TARGETS ${backend} LIBRARY DESTINATION ${CMAKE_INSTALL_BINDIR})
else()
add_library(${backend} ${ARGN})
target_link_libraries(ggml PUBLIC ${backend})
@@ -382,7 +371,6 @@ ggml_add_backend(RPC)
ggml_add_backend(SYCL)
ggml_add_backend(Vulkan)
ggml_add_backend(WebGPU)
ggml_add_backend(zDNN)
ggml_add_backend(OpenCL)
foreach (target ggml-base ggml)

View File

@@ -29,7 +29,6 @@ static bool ggml_op_can_inplace(enum ggml_op op) {
case GGML_OP_DIAG_MASK_ZERO:
case GGML_OP_DIAG_MASK_INF:
case GGML_OP_ADD:
case GGML_OP_ADD_ID:
case GGML_OP_ADD1:
case GGML_OP_SUB:
case GGML_OP_MUL:

View File

@@ -49,10 +49,6 @@
#include "ggml-webgpu.h"
#endif
#ifdef GGML_USE_ZDNN
#include "ggml-zdnn.h"
#endif
#ifdef GGML_USE_OPENCL
#include "ggml-opencl.h"
#endif
@@ -184,9 +180,6 @@ struct ggml_backend_registry {
#ifdef GGML_USE_WEBGPU
register_backend(ggml_backend_webgpu_reg());
#endif
#ifdef GGML_USE_ZDNN
register_backend(ggml_backend_zdnn_reg());
#endif
#ifdef GGML_USE_OPENCL
register_backend(ggml_backend_opencl_reg());
#endif
@@ -505,9 +498,6 @@ static ggml_backend_reg_t ggml_backend_load_best(const char * name, bool silent,
std::vector<fs::path> search_paths;
if (user_search_path == nullptr) {
#ifdef GGML_BACKEND_DIR
search_paths.push_back(fs::u8path(GGML_BACKEND_DIR));
#endif
// default search paths: executable directory, current directory
search_paths.push_back(get_executable_path());
search_paths.push_back(fs::current_path());

View File

@@ -1071,11 +1071,6 @@ static void ggml_backend_sched_split_graph(ggml_backend_sched_t sched, struct gg
}
}
}
// if the node is still unassigned, assign it to the first backend that supports it
for (int b = 0; b < sched->n_backends && *cur_backend_id == -1; b++) {
ggml_backend_sched_set_if_supported(sched, node, b, cur_backend_id);
}
GGML_ASSERT(*cur_backend_id != -1);
}
// pass 5: split graph, find tensors that need to be copied
@@ -1103,7 +1098,7 @@ static void ggml_backend_sched_split_graph(ggml_backend_sched_t sched, struct gg
const int node_backend_id = tensor_backend_id(node);
GGML_ASSERT(node_backend_id != -1); // all nodes should be assigned by now, this can happen if there is no CPU fallback
assert(node_backend_id != -1); // all nodes should be assigned by now, this can happen if there is no CPU fallback
// check if we should start a new split based on the sources of the current node
bool need_new_split = false;
@@ -1161,7 +1156,7 @@ static void ggml_backend_sched_split_graph(ggml_backend_sched_t sched, struct gg
size_t src_id = hash_id(src);
const int src_backend_id = sched->hv_tensor_backend_ids[src_id];
GGML_ASSERT(src_backend_id != -1); // all inputs should be assigned by now
assert(src_backend_id != -1); // all inputs should be assigned by now
if (src->flags & GGML_TENSOR_FLAG_INPUT && sched->n_copies > 1) {
if (tensor_id_copy(src_id, src_backend_id, 0) == NULL) {

View File

@@ -281,10 +281,10 @@ ggml_backend_t ggml_backend_blas_init(void) {
ggml_backend_blas_context * ctx = new ggml_backend_blas_context;
ggml_backend_t backend = new ggml_backend {
/* .guid = */ ggml_backend_blas_guid(),
/* .iface = */ blas_backend_i,
/* .device = */ ggml_backend_reg_dev_get(ggml_backend_blas_reg(), 0),
/* .context = */ ctx,
/* .guid = */ ggml_backend_blas_guid(),
/* .interface = */ blas_backend_i,
/* .device = */ ggml_backend_reg_dev_get(ggml_backend_blas_reg(), 0),
/* .context = */ ctx,
};
#if defined(OPENBLAS_VERSION) && defined(GGML_USE_OPENMP)

View File

@@ -31,13 +31,6 @@ string(REGEX MATCH "[0-9]+[a-zA-Z]" SOC_TYPE_MAJOR_SN "${SOC_VERSION}")
set(SOC_TYPE_COMPILE_OPTION "ASCEND_${SOC_TYPE_MAJOR_SN}")
string(TOUPPER ${SOC_TYPE_COMPILE_OPTION} SOC_TYPE_COMPILE_OPTION)
message(STATUS "CANN: SOC_VERSION = ${SOC_VERSION}")
option(USE_ACL_GRAPH "Enable CANN graph execution (ACL graph mode)" OFF)
if(USE_ACL_GRAPH AND (SOC_TYPE_MAJOR_SN STREQUAL "310P" OR SOC_TYPE_COMPILE_OPTION STREQUAL "ASCEND_310P"))
message(FATAL_ERROR
"CANN Graph (ACL graph mode) is not supported on 310P devices. "
"Please build with -DUSE_ACL_GRAPH=OFF or use a supported SOC.")
endif()
if (CANN_INSTALL_DIR)
# Only Support Linux.
@@ -75,13 +68,6 @@ if (CANN_INSTALL_DIR)
target_compile_definitions(ggml-cann PRIVATE "-D${SOC_TYPE_COMPILE_OPTION}")
if (USE_ACL_GRAPH)
target_compile_definitions(ggml-cann PRIVATE USE_ACL_GRAPH)
message(STATUS "CANN: USE_ACL_GRAPH is enabled.")
else()
message(STATUS "CANN: USE_ACL_GRAPH is disabled.")
endif()
message(STATUS "CANN: CANN_INCLUDE_DIRS = ${CANN_INCLUDE_DIRS}")
message(STATUS "CANN: CANN_LIBRARIES = ${CANN_LIBRARIES}")
else()

View File

@@ -753,55 +753,69 @@ static void cann_copy(ggml_backend_cann_context& ctx, aclTensor* acl_src,
void ggml_cann_dup(ggml_backend_cann_context& ctx, ggml_tensor* dst) {
ggml_tensor* src0 = dst->src[0];
aclTensor* acl_src = ggml_cann_create_tensor(src0);
aclTensor* acl_dst = ggml_cann_create_tensor(dst);
if (ggml_are_same_shape(src0, dst)) {
aclTensor* acl_src = ggml_cann_create_tensor(src0);
aclTensor* acl_dst = ggml_cann_create_tensor(dst);
if (dst->type == src0->type) {
cann_copy(ctx, acl_src, acl_dst);
} else {
aclnn_cast(ctx, acl_src, acl_dst, ggml_cann_type_mapping(dst->type));
}
ggml_cann_release_resources(ctx, acl_src, acl_dst);
} else {
void* src_trans_buffer = src0->data;
ggml_cann_pool_alloc src_buffer_allocator;
if (!ggml_is_contiguous(src0)) {
aclTensor* acl_src = ggml_cann_create_tensor(src0);
src_buffer_allocator.alloc(ctx.pool(),
ggml_nelements(src0) * ggml_type_size(src0->type));
src_trans_buffer = src_buffer_allocator.get();
if (ggml_is_contiguous(src0) && ggml_is_contiguous(dst)) {
if (dst->type == src0->type) {
size_t cpy_size = ggml_nbytes(dst);
ggml_cann_async_memcpy(ctx, dst->data, src0->data, cpy_size,
ACL_MEMCPY_DEVICE_TO_DEVICE);
return;
} else {
ggml_cann_pool_alloc src_buffer_allocator(
ctx.pool(),
ggml_nelements(dst) * ggml_type_size(dst->type));
void* src_trans_buffer = src_buffer_allocator.get();
size_t src_trans_nb[GGML_MAX_DIMS];
src_trans_nb[0] = ggml_type_size(dst->type);
for (int i = 1; i < GGML_MAX_DIMS; i++) {
src_trans_nb[i] = src_trans_nb[i - 1] * src0->ne[i - 1];
}
aclTensor* src_trans_tensor = ggml_cann_create_tensor(
src_trans_buffer, ggml_cann_type_mapping(dst->type),
ggml_type_size(dst->type), src0->ne, src_trans_nb,
GGML_MAX_DIMS);
aclnn_cast(ctx, acl_src, src_trans_tensor, ggml_cann_type_mapping(dst->type));
size_t cpy_size = ggml_nbytes(dst);
ggml_cann_async_memcpy(ctx, dst->data, src_trans_buffer, cpy_size,
ACL_MEMCPY_DEVICE_TO_DEVICE);
ggml_cann_release_resources(ctx, src_trans_tensor);
return;
}
} else if (ggml_is_contiguous(dst)) {
ggml_cann_pool_alloc src_buffer_allocator(
ctx.pool(), ggml_nelements(dst) * ggml_type_size(dst->type));
void* src_trans_buffer = src_buffer_allocator.get();
size_t src_trans_nb[GGML_MAX_DIMS];
src_trans_nb[0] = ggml_type_size(src0->type);
src_trans_nb[0] = ggml_type_size(dst->type);
for (int i = 1; i < GGML_MAX_DIMS; i++) {
src_trans_nb[i] = src_trans_nb[i - 1] * src0->ne[i - 1];
}
aclTensor* src_trans_tensor = ggml_cann_create_tensor(
src_trans_buffer, ggml_cann_type_mapping(src0->type),
ggml_type_size(src0->type), src0->ne, src_trans_nb,
src_trans_buffer, ggml_cann_type_mapping(dst->type),
ggml_type_size(dst->type), src0->ne, src_trans_nb,
GGML_MAX_DIMS);
cann_copy(ctx, acl_src, src_trans_tensor);
ggml_cann_release_resources(ctx, acl_src, src_trans_tensor);
}
size_t src_reshape_nb[GGML_MAX_DIMS];
src_reshape_nb[0] = ggml_type_size(src0->type);
for (int i = 1; i < GGML_MAX_DIMS; i++) {
src_reshape_nb[i] = src_reshape_nb[i - 1] * dst->ne[i - 1];
}
aclnn_cast(ctx, acl_src, src_trans_tensor, ggml_cann_type_mapping(dst->type));
aclTensor* trans_acl_src = ggml_cann_create_tensor(src_trans_buffer,
ggml_cann_type_mapping(src0->type),ggml_type_size(src0->type),
dst->ne, src_reshape_nb, GGML_MAX_DIMS, ACL_FORMAT_ND);
aclTensor* acl_dst = ggml_cann_create_tensor(dst);
if (dst->type == src0->type) {
cann_copy(ctx, trans_acl_src, acl_dst);
size_t cpy_size = ggml_nbytes(dst);
ggml_cann_async_memcpy(ctx, dst->data, src_trans_buffer, cpy_size,
ACL_MEMCPY_DEVICE_TO_DEVICE);
ggml_cann_release_resources(ctx, src_trans_tensor);
return;
} else {
aclnn_cast(ctx, trans_acl_src, acl_dst, ggml_cann_type_mapping(dst->type));
GGML_ABORT("Unsupport dst is not tontiguous.");
}
ggml_cann_release_resources(ctx, trans_acl_src, acl_dst);
}
return;
ggml_cann_release_resources(ctx, acl_src, acl_dst);
}
/**
@@ -1316,196 +1330,160 @@ static void aclnn_pow_tensor_tensor(ggml_backend_cann_context& ctx,
}
/**
* @brief Generate a range of values and apply a scalar base exponentiation.
* @brief Applies the Alibi (Attention with Linear Biases) mechanism to the
* @details This function implements the Alibi mechanism, which introduces
* learnable biases into the attention scores to simulate relative
* position encoding without the need for explicit positional
* embeddings.
*
* This function creates an evenly spaced sequence from `start` to `stop` (exclusive),
* with step size `step`, stores it in a temporary buffer, and then computes:
* @param ctx The backend CANN context for executing operations.
* @param acl_src The source tensor representing the query or key.
* @param acl_position The position tensor containing relative positions.
* @param acl_dst The destination tensor where the result will be stored.
* @param n_head The number of attention heads.
* @param src_ne The dimensions of the source tensor.
* @param src_nb0 The byte size of the first dimension of the source
tensor.
* @param max_bias The maximum bias value used in the Alibi mechanism.
* @param dst The destination tensor object for additional metadata.
*
* @f[
* slope[i] = m^{\left( start + i \cdot step \right)}, \quad 0 \le i < size
* @f]
*
* The results are written to the provided @p slope_buffer.
*
* @param ctx CANN backend context for memory allocation and operator execution.
* @param slope_buffer Pointer to the output buffer (float array) for the computed slope values.
* @param m Scalar base for the exponentiation.
* @param size Number of elements in the generated sequence.
* @param start Starting exponent offset.
* @param stop Stopping exponent offset (exclusive).
* @param step Step size for the exponent increment.
* The function performs the following steps:
* 1. Calculates the logarithm floor of the number of heads to determine the
base for bias calculation.
* 2. Initializes arrays with arithmetic sequences and fills them with bias
values.
* 3. Computes the bias tensor based on the calculated biases and arithmetic
sequences.
* 4. Reshapes the bias tensor to match the dimensions of the input tensors.
* 5. Multiplies the position tensor by the bias tensor.
* 6. Adds the result of the multiplication to the source tensor to produce the
final output.
*/
static void aclnn_get_slope_inner(ggml_backend_cann_context& ctx, void* slope_buffer,
float m, int64_t size, float start, float stop, float step){
int64_t ne[] = {size};
size_t nb[] = {sizeof(float)};
static void aclnn_alibi(ggml_backend_cann_context& ctx, aclTensor* acl_src,
aclTensor* acl_position, aclTensor* acl_dst,
const int n_head, int64_t* src_ne, const size_t src_nb0,
float max_bias, ggml_tensor* dst) {
const int64_t ne2_ne3 = src_ne[2] * src_ne[3];
GGML_ASSERT(src_nb0 == sizeof(float));
GGML_ASSERT(n_head == src_ne[2]);
ggml_cann_pool_alloc arange_allocator(ctx.pool(), size * sizeof(float));
void* arange_buffer = arange_allocator.get();
const int n_heads_log2_floor = 1u << (uint32_t)floor(log2(n_head));
aclTensor* arange_tensor = ggml_cann_create_tensor(
arange_buffer, ACL_FLOAT, sizeof(float), ne, nb, 1);
aclnn_arange(ctx, arange_tensor, start, stop, step, size);
float m0 = powf(2.0f, -(max_bias) / n_heads_log2_floor);
float m1 = powf(2.0f, -(max_bias / 2.0f) / n_heads_log2_floor);
aclTensor* slope_tensor = ggml_cann_create_tensor(
slope_buffer, ACL_FLOAT, sizeof(float), ne, nb, 1);
// init arange
ggml_cann_pool_alloc arange_allocator(ctx.pool(),
ne2_ne3 * ggml_type_size(dst->type));
void* tmp_arange_buffer = arange_allocator.get();
aclScalar* sc = aclCreateScalar(&m, aclDataType::ACL_FLOAT);
// arange1: [1, ..., n_heads_log2_floor+1)
float start = 1;
float stop = n_heads_log2_floor + 1;
float step = 1;
int64_t n_elements_arange = n_heads_log2_floor;
GGML_CANN_CALL_ACLNN_OP(ctx, PowScalarTensor, sc, arange_tensor, slope_tensor);
ggml_cann_release_resources(ctx, sc, arange_tensor, slope_tensor);
int64_t tmp_arange1_ne[] = {n_heads_log2_floor};
size_t tmp_arange1_nb[] = {sizeof(dst->type)};
aclTensor* tmp_arange1_tensor = ggml_cann_create_tensor(
tmp_arange_buffer, ggml_cann_type_mapping(dst->type),
ggml_type_size(dst->type), tmp_arange1_ne, tmp_arange1_nb,
GGML_MAX_DIMS - 3, ACL_FORMAT_ND);
aclnn_arange(ctx, tmp_arange1_tensor, start, stop, step, n_elements_arange);
aclTensor* tmp_arange2_tensor = nullptr;
if (n_heads_log2_floor < ne2_ne3) {
// arange2: [1, ..., 2 * (k - n_heads_log2_floor) + 1)
start = 1;
stop = 2 * (ne2_ne3 - n_heads_log2_floor) + 1;
step = 2;
n_elements_arange = ne2_ne3 - n_heads_log2_floor;
int64_t tmp_arange2_ne[] = {ne2_ne3 - n_heads_log2_floor};
size_t tmp_arange2_nb[] = {sizeof(dst->type)};
aclTensor* tmp_arange2_tensor = ggml_cann_create_tensor(
(char*)tmp_arange_buffer +
n_heads_log2_floor * ggml_type_size(dst->type),
ggml_cann_type_mapping(dst->type), ggml_type_size(dst->type),
tmp_arange2_ne, tmp_arange2_nb, GGML_MAX_DIMS - 3, ACL_FORMAT_ND);
aclnn_arange(ctx, tmp_arange2_tensor, start, stop, step,
n_elements_arange);
}
// init mk_base
ggml_cann_pool_alloc mk_base_allocator(ctx.pool(),
ne2_ne3 * ggml_type_size(dst->type));
void* tmp_mk_base_buffer = mk_base_allocator.get();
int64_t tmp_mk_base1_ne[] = {n_heads_log2_floor};
size_t tmp_mk_base1_nb[] = {sizeof(dst->type)};
aclTensor* tmp_mk_base1_tensor = ggml_cann_create_tensor(
tmp_mk_base_buffer, ggml_cann_type_mapping(dst->type),
ggml_type_size(dst->type), tmp_mk_base1_ne, tmp_mk_base1_nb,
GGML_MAX_DIMS - 3, ACL_FORMAT_ND);
aclnn_fill_scalar(ctx, m0, tmp_mk_base1_tensor);
aclTensor* tmp_mk_base2_tensor = nullptr;
if (n_heads_log2_floor < ne2_ne3) {
int64_t tmp_mk_base2_ne[] = {ne2_ne3 - n_heads_log2_floor};
size_t tmp_mk_base2_nb[] = {sizeof(dst->type)};
aclTensor* tmp_mk_base2_tensor = ggml_cann_create_tensor(
(char*)tmp_mk_base_buffer +
n_heads_log2_floor * ggml_type_size(dst->type),
ggml_cann_type_mapping(dst->type), ggml_type_size(dst->type),
tmp_mk_base2_ne, tmp_mk_base2_nb, GGML_MAX_DIMS - 3, ACL_FORMAT_ND);
aclnn_fill_scalar(ctx, m1, tmp_mk_base2_tensor);
}
// init mk
int64_t tmp_mk_base_ne[] = {ne2_ne3};
size_t tmp_mk_base_nb[] = {sizeof(dst->type)};
aclTensor* tmp_mk_base_tensor = ggml_cann_create_tensor(
tmp_mk_base_buffer, ggml_cann_type_mapping(dst->type),
ggml_type_size(dst->type), tmp_mk_base_ne, tmp_mk_base_nb,
GGML_MAX_DIMS - 3, ACL_FORMAT_ND);
aclTensor* tmp_arange_tensor = ggml_cann_create_tensor(
tmp_arange_buffer, ggml_cann_type_mapping(dst->type),
ggml_type_size(dst->type), tmp_mk_base_ne, tmp_mk_base_nb,
GGML_MAX_DIMS - 3, ACL_FORMAT_ND);
aclnn_pow_tensor_tensor(ctx, tmp_mk_base_tensor, tmp_arange_tensor);
// reshape mk
int64_t tmp_mk_ne[] = {1, 1, src_ne[2], src_ne[3]};
size_t tmp_mk_nb[GGML_MAX_DIMS];
tmp_mk_nb[0] = ggml_type_size(dst->type);
for (int i = 1; i < GGML_MAX_DIMS; i++) {
tmp_mk_nb[i] = tmp_mk_nb[i - 1] * tmp_mk_ne[i - 1];
}
aclTensor* tmp_mk_tensor = ggml_cann_create_tensor(
tmp_mk_base_buffer, ggml_cann_type_mapping(dst->type),
ggml_type_size(dst->type), tmp_mk_ne, tmp_mk_nb, GGML_MAX_DIMS,
ACL_FORMAT_ND);
// acl_position * mk
int64_t tmp_output_ne[] = {src_ne[0], src_ne[1], src_ne[2], src_ne[3]};
size_t tmp_output_nb[GGML_MAX_DIMS];
tmp_output_nb[0] = ggml_type_size(dst->type);
for (int i = 1; i < GGML_MAX_DIMS; i++) {
tmp_output_nb[i] = tmp_output_nb[i - 1] * tmp_output_ne[i - 1];
}
ggml_cann_pool_alloc output_allocator(ctx.pool(), ggml_nbytes(dst));
void* tmp_output_buffer = output_allocator.get();
aclTensor* tmp_output_tensor = ggml_cann_create_tensor(
tmp_output_buffer, ggml_cann_type_mapping(dst->type),
ggml_type_size(dst->type), tmp_output_ne, tmp_output_nb, GGML_MAX_DIMS,
ACL_FORMAT_ND);
aclnn_mul(ctx, acl_position, tmp_mk_tensor, tmp_output_tensor);
// add
aclnn_add(ctx, tmp_output_tensor, acl_src, acl_dst);
ggml_cann_release_resources(ctx, tmp_arange1_tensor, tmp_arange2_tensor,
tmp_mk_base1_tensor, tmp_mk_base2_tensor, tmp_mk_base_tensor,
tmp_arange_tensor, tmp_mk_tensor, tmp_output_tensor);
}
/**
* @brief Compute slope values for multiple attention heads based on ALiBi bias parameters.
*
* This function generates slope values for each attention head according to the ALiBi
* (Attention with Linear Biases) method. It splits the computation into two ranges depending
* on whether the head index is less than @p n_head_log2 or not, and uses different base values
* (`m0` and `m1`) for the exponentiation.
*
* @f[
* slope[h] =
* \begin{cases}
* m_0^{(h + 1)}, & h < n\_head\_log2 \\
* m_1^{\left( 2 \cdot (h - n\_head\_log2) + 1 \right)}, & h \geq n\_head\_log2
* \end{cases}
* \quad , \quad \text{if } max\_bias > 0
* @f]
*
* If @p max_bias <= 0, all slope values are set to 1.0.
*
* @param ctx CANN backend context for memory allocation and operator execution.
* @param n_head Total number of attention heads.
* @param slope_buffer Pointer to the output buffer (float array) for storing slopes.
* @param max_bias Maximum bias value for slope computation.
*
*/
static void aclnn_get_slope(ggml_backend_cann_context & ctx, int64_t n_head,
void* slope_buffer, float max_bias) {
const int n_head_log2 = 1u << (uint32_t) floor(log2(n_head));
float m0 = powf(2.0f, -(max_bias) / n_head_log2);
float m1 = powf(2.0f, -(max_bias / 2.0f) / n_head_log2);
// const float slope = (max_bias > 0.0f) ?
// h < n_head_log2 ?
// powf(m0, h + 1) :
// powf(m1, 2*(h - n_head_log2) + 1) :
// 1.0f;
// arange1
float start = 0 + 1;
float end = (n_head_log2 - 1) + 1;
float step = 1;
float count = n_head_log2;
// end needs to be +1 because aclnn uses a left-closed, right-open interval.
aclnn_get_slope_inner(ctx, slope_buffer, m0, count, start, end + 1, step);
if (n_head_log2 < n_head) {
// arange2
start = 2 * (n_head_log2 - n_head_log2) + 1;
end = 2 * ((n_head - 1) - n_head_log2) + 1;
step = 2;
count = n_head - n_head_log2;
aclnn_get_slope_inner(
ctx, (char *) slope_buffer + n_head_log2 * sizeof(float),
m1, count, start, end + 1, step);
}
}
/**
* @brief Add ALiBi (Attention with Linear Biases) positional biases to the attention mask.
*
* This function computes the ALiBi slopes for each attention head (if max_bias > 0),
* multiplies them with the attention mask to produce bias tensors, and adds these biases
* to the destination tensor (@p dst).
*
* The function performs necessary broadcasting of the mask and slope tensors to match
* the shape of the destination tensor, then applies element-wise multiplication and addition
* using CANN operators.
*
* @param ctx CANN backend context for memory management and operator execution.
* @param mask Input attention mask tensor, assumed to be contiguous.
* @param dst Destination tensor to which ALiBi biases will be added.
* @param dst_ptr Pointer to the memory of the destination tensor.
* @param max_bias Maximum bias value controlling the slope scaling.
*
* @note
* - Write data into dst_ptr using only the shape information of the dst tensor.
* - `GGML_MAX_DIMS + 2` is used to extend tensor dimensions for broadcasting.
*/
static void aclnn_add_alibi(ggml_backend_cann_context& ctx, ggml_tensor* mask,
ggml_tensor* dst, void* dst_ptr, float max_bias) {
void* slope_buffer = nullptr;
void* bias_buffer = nullptr;
if (max_bias > 0.0f) {
int64_t n_heads = dst->ne[2];
ggml_cann_pool_alloc slope_allocator(ctx.pool(), n_heads * sizeof(float));
slope_buffer = slope_allocator.get();
ggml_cann_pool_alloc bias_allocator(
ctx.pool(), ggml_nelements(dst) * ggml_element_size(dst));
bias_buffer = bias_allocator.get();
aclnn_get_slope(ctx, n_heads, slope_buffer, max_bias);
}
// broadcast for mask, slop and dst;
int64_t nr2 = dst->ne[2] / mask->ne[2];
int64_t nr3 = dst->ne[3] / mask->ne[3];
// broadcast the mask across rows
int64_t mask_ne[] = { mask->ne[0], dst->ne[1], mask->ne[2], 1, mask->ne[3], 1 };
size_t mask_nb[] = {
mask_nb[0] = mask->nb[0], mask_nb[1] = mask->nb[1], mask_nb[2] = mask->nb[2],
mask_nb[3] = mask->nb[2], mask_nb[4] = mask->nb[3], mask_nb[5] = mask->nb[3]
};
int64_t dst_ne[] = { dst->ne[0], dst->ne[1], mask->ne[2], nr2, mask->ne[3], nr3 };
size_t dst_nb[] = {
dst_nb[0] = dst->nb[0], dst_nb[1] = dst->nb[1], dst_nb[2] = dst->nb[2],
dst_nb[3] = dst->nb[2], dst_nb[4] = dst->nb[3], dst_nb[5] = dst->nb[3]
};
// slope is a 1 dim tensor, slope.ne2 == dst.ne2
int64_t slope_ne[] = { 1, 1, mask->ne[2], nr2, 1, 1 };
size_t slope_nb[GGML_MAX_DIMS + 2];
slope_nb[0] = sizeof(float);
for (int i = 1; i < GGML_MAX_DIMS + 2; i++) {
slope_nb[i] = slope_nb[i - 1] * slope_ne[i - 1];
}
aclTensor* acl_slope = ggml_cann_create_tensor(
slope_buffer, ACL_FLOAT, sizeof(float),
slope_ne, slope_nb, GGML_MAX_DIMS + 2);
aclTensor* acl_mask = ggml_cann_create_tensor(
mask, mask_ne, mask_nb, GGML_MAX_DIMS + 2);
// write data into dst_ptr using only the shape information of the dst tensor.
aclTensor* acl_dst = ggml_cann_create_tensor(
dst_ptr, ggml_cann_type_mapping(dst->type),
ggml_type_size(dst->type), dst_ne, dst_nb,
GGML_MAX_DIMS + 2);
if (max_bias > 0.0f) {
int64_t bias_ne[] = { mask->ne[0], dst->ne[1], mask->ne[2], nr2, mask->ne[3], 1 };
size_t bias_nb[GGML_MAX_DIMS + 2];
bias_nb[0] = sizeof(float);
for (int i = 1; i < GGML_MAX_DIMS + 2; i++) {
bias_nb[i] = bias_nb[i - 1] * bias_ne[i - 1];
}
aclTensor* bias_tensor = ggml_cann_create_tensor(
bias_buffer, ACL_FLOAT, sizeof(float),
bias_ne, bias_nb, GGML_MAX_DIMS + 2);
aclnn_mul(ctx, acl_slope, acl_mask, bias_tensor);
aclnn_add(ctx, acl_dst, bias_tensor);
ggml_cann_release_resources(ctx, bias_tensor);
} else {
aclnn_add(ctx, acl_dst, acl_mask);
}
ggml_cann_release_resources(ctx, acl_slope, acl_mask, acl_dst);
}
void ggml_cann_cpy(ggml_backend_cann_context & ctx, ggml_tensor * dst) {
void ggml_cann_cpy(ggml_backend_cann_context& ctx, ggml_tensor* dst) {
ggml_cann_dup(ctx, dst);
}
@@ -1523,41 +1501,118 @@ void ggml_cann_cpy(ggml_backend_cann_context & ctx, ggml_tensor * dst) {
* @param acl_dst The destination tensor where the softmax results will be
* stored.
*/
static void aclnn_softmax(ggml_backend_cann_context & ctx,
aclTensor* acl_src, int64_t dim, aclTensor * acl_dst) {
static void aclnn_softmax(ggml_backend_cann_context& ctx, aclTensor* acl_src,
int64_t dim, aclTensor* acl_dst) {
GGML_CANN_CALL_ACLNN_OP(ctx, Softmax, acl_src, dim, acl_dst);
}
void ggml_cann_softmax(ggml_backend_cann_context & ctx, ggml_tensor * dst) {
void ggml_cann_softmax(ggml_backend_cann_context& ctx, ggml_tensor* dst) {
ggml_tensor* src0 = dst->src[0];
ggml_tensor* src1 = dst->src[1]; // mask
aclTensor* acl_src0 = ggml_cann_create_tensor(src0);
aclTensor* acl_dst = ggml_cann_create_tensor(dst);
aclTensor* acl_dst = ggml_cann_create_tensor(dst);
float scale = 1.0f;
float scale = 1.0f;
float max_bias = 0.0f;
memcpy(&scale, (float *) dst->op_params + 0, sizeof(float));
memcpy(&max_bias, (float *) dst->op_params + 1, sizeof(float));
memcpy(&scale, (float*)dst->op_params + 0, sizeof(float));
memcpy(&max_bias, (float*)dst->op_params + 1, sizeof(float));
// input mul scale
aclScalar* acl_scale = aclCreateScalar(&scale, aclDataType::ACL_FLOAT);
ggml_cann_pool_alloc src_tensor_allocator(ctx.pool(), ggml_nbytes(src0));
void* src_tensor_buffer = src_tensor_allocator.get();
aclTensor* softmax_tensor = ggml_cann_create_tensor(
src_tensor_buffer, ggml_cann_type_mapping(src0->type),
ggml_element_size(src0), src0->ne, src0->nb,GGML_MAX_DIMS);
aclnn_muls(ctx, acl_src0, scale, softmax_tensor, false);
size_t n_bytes = ggml_nbytes(src0);
ggml_cann_pool_alloc mul_scale_allocator(ctx.pool(), n_bytes);
void* input_mul_scale_buffer = mul_scale_allocator.get();
aclTensor* acl_input_mul_scale_tensor = ggml_cann_create_tensor(
input_mul_scale_buffer, ACL_FLOAT, ggml_type_size(src0->type), src0->ne,
src0->nb, GGML_MAX_DIMS);
bool inplace = false;
aclnn_muls(ctx, acl_src0, scale, acl_input_mul_scale_tensor, inplace);
// mask
aclTensor* acl_src1_fp32_tensor = nullptr;
aclTensor* tmp_mask_tensor = nullptr;
ggml_cann_pool_alloc src1_fp32_allocator(ctx.pool());
if (src1) {
aclnn_add_alibi(ctx, src1, src0, src_tensor_buffer, max_bias);
const bool use_f16 = src1->type == GGML_TYPE_F16;
if (use_f16) {
// cast to fp32
size_t n_bytes = ggml_nelements(src1) * sizeof(float_t);
size_t src1_fp32_nb[GGML_MAX_DIMS];
src1_fp32_nb[0] = sizeof(float_t);
for (int i = 1; i < GGML_MAX_DIMS; i++) {
src1_fp32_nb[i] = src1_fp32_nb[i - 1] * src1->ne[i - 1];
}
src1_fp32_allocator.alloc(n_bytes);
void* src1_fp32_buffer = src1_fp32_allocator.get();
acl_src1_fp32_tensor = ggml_cann_create_tensor(
src1_fp32_buffer, ACL_FLOAT, sizeof(float), src1->ne,
src1_fp32_nb, GGML_MAX_DIMS);
aclTensor* acl_src1 = ggml_cann_create_tensor(src1);
aclnn_cast(ctx, acl_src1, acl_src1_fp32_tensor, ACL_FLOAT);
ggml_cann_release_resources(ctx, acl_src1);
} else {
acl_src1_fp32_tensor = ggml_cann_create_tensor(src1);
}
// broadcast the mask across rows, only use ne11 of ne01 in mask
if (src1->ne[1] != src0->ne[1]) {
// mask shape: [1,1,ne11,ne10]
int64_t tmp_mask_ne[] = {src0->ne[0], src0->ne[1], 1, 1};
size_t tmp_mask_nb[GGML_MAX_DIMS];
tmp_mask_nb[0] = sizeof(float_t);
for (int i = 1; i < GGML_MAX_DIMS; i++) {
tmp_mask_nb[i] = tmp_mask_nb[i - 1] * tmp_mask_ne[i - 1];
}
tmp_mask_tensor = ggml_cann_create_tensor(
src1->data, ACL_FLOAT, sizeof(float), tmp_mask_ne, tmp_mask_nb,
GGML_MAX_DIMS, ACL_FORMAT_ND);
}
// alibi
const int n_head = src0->ne[2];
const size_t src_nb0 = src0->nb[0];
n_bytes = ggml_nbytes(dst);
ggml_cann_pool_alloc output_allocator(ctx.pool(), n_bytes);
void* output_buffer = output_allocator.get();
aclTensor* alibi_output_tensor = ggml_cann_create_tensor(
output_buffer, ACL_FLOAT, ggml_type_size(dst->type), dst->ne,
dst->nb, GGML_MAX_DIMS);
if (max_bias <= 0.0f) {
// slope = 1.0
if (tmp_mask_tensor) {
aclnn_add(ctx, tmp_mask_tensor, acl_input_mul_scale_tensor,
alibi_output_tensor);
} else {
aclnn_add(ctx, acl_src1_fp32_tensor, acl_input_mul_scale_tensor,
alibi_output_tensor);
}
} else {
// slope != 1.0
if (tmp_mask_tensor) {
aclnn_alibi(ctx, acl_input_mul_scale_tensor, tmp_mask_tensor,
alibi_output_tensor, n_head, src0->ne, src_nb0,
max_bias, dst);
} else {
aclnn_alibi(ctx, acl_input_mul_scale_tensor,
acl_src1_fp32_tensor, alibi_output_tensor, n_head,
src0->ne, src_nb0, max_bias, dst);
}
}
// softmax
aclnn_softmax(ctx, alibi_output_tensor, 3, acl_dst);
ggml_cann_release_resources(ctx, alibi_output_tensor);
} else {
aclnn_softmax(ctx, acl_input_mul_scale_tensor, 3, acl_dst);
}
// softmax
aclnn_softmax(ctx, softmax_tensor, 3, acl_dst);
ggml_cann_release_resources(ctx, acl_src0, acl_dst, acl_scale, softmax_tensor);
ggml_cann_release_resources(ctx, acl_src0, acl_src1_fp32_tensor, acl_dst,
acl_scale, acl_input_mul_scale_tensor, tmp_mask_tensor);
}
/**
@@ -1858,9 +1913,11 @@ static void ggml_cann_mat_mul_fp(ggml_backend_cann_context& ctx,
bcast_weight_nb[4], bcast_weight_nb[5]};
aclTensor* acl_weight_tensor;
// Only check env once.
static bool weight_to_nz = parse_bool(get_env("GGML_CANN_WEIGHT_NZ").value_or(""));
if (weight_to_nz && is_matmul_weight(weight)) {
bool weightToNZ = false;
#ifdef ASCEND_310P
weightToNZ = (getenv("GGML_CANN_WEIGHT_NZ") != nullptr);
#endif
if (weightToNZ && is_matmul_weight(weight)) {
int64_t acl_stride[2] = {1, transpose_ne[1]};
// Reverse ne.
@@ -2154,129 +2211,86 @@ static void aclnn_cache_init(ggml_backend_cann_context& ctx, ggml_tensor* dst,
GGML_TENSOR_BINARY_OP_LOCALS
// theta_scale arange, [0,1,...,ne00/2 - 1]
int64_t theta_scale_length = ne00 / 2;
ggml_cann_pool_alloc theta_scale_allocator(ctx.pool(),
theta_scale_length * sizeof(float_t));
void* theta_scale_buffer = theta_scale_allocator.get();
int64_t theta_scale_ne[] = {theta_scale_length, 1, 1, 1};
size_t theta_scale_nb[] = {sizeof(float_t), sizeof(float_t), sizeof(float_t),
theta_scale_length * sizeof(float_t)};
aclTensor* acl_theta_scale_tensor =
ggml_cann_create_tensor(theta_scale_buffer, ACL_FLOAT, sizeof(float_t),
theta_scale_ne, theta_scale_nb, GGML_MAX_DIMS);
float start = 0;
float step = 1;
float stop = ne00 / 2;
float n_elements = ne00 / 2;
aclnn_arange(ctx, acl_theta_scale_tensor, start, stop, step, n_elements);
// power
aclScalar* acl_theta_scale = aclCreateScalar(&theta_scale, aclDataType::ACL_FLOAT);
GGML_CANN_CALL_ACLNN_OP(ctx, PowScalarTensor, acl_theta_scale, acl_theta_scale_tensor,
acl_theta_scale_tensor);
// freq_scale
if (freq_scale != 1) {
aclnn_muls(ctx, acl_theta_scale_tensor, freq_scale, nullptr, true);
}
// freq_factors
if (src2) {
aclTensor* acl_freq_factors_tensor = ggml_cann_create_tensor(
src2->data, ggml_cann_type_mapping(src2->type),
ggml_type_size(src2->type), theta_scale_ne, theta_scale_nb, GGML_MAX_DIMS);
aclnn_div(ctx, acl_theta_scale_tensor, acl_freq_factors_tensor);
ggml_cann_release_resources(ctx, acl_freq_factors_tensor);
}
// position
GGML_ASSERT(src1->type == GGML_TYPE_I32);
int64_t position_length = src1->ne[0];
int64_t position_ne[] = {1, 1, position_length, 1};
size_t position_nb[] = {sizeof(int32_t), sizeof(int32_t), sizeof(int32_t),
sizeof(int32_t) * position_length};
aclTensor* acl_position_tensor = ggml_cann_create_tensor(
src1->data, ggml_cann_type_mapping(src1->type),
ggml_type_size(src1->type), position_ne, position_nb, GGML_MAX_DIMS);
// power * position
int64_t theta_length = theta_scale_length * position_length;
ggml_cann_pool_alloc theta_allocator(ctx.pool(),
theta_length * sizeof(float_t));
void* theta_buffer = theta_allocator.get();
int64_t theta_ne[] = {theta_scale_length, 1, position_length, 1};
size_t theta_nb[GGML_MAX_DIMS];
theta_nb[0] = sizeof(float_t);
for (int i = 1; i < GGML_MAX_DIMS; i++) {
theta_nb[i] = theta_nb[i - 1] * theta_ne[i - 1];
}
aclTensor* acl_theta_tensor =
ggml_cann_create_tensor(theta_buffer, ACL_FLOAT, sizeof(float_t),
theta_ne, theta_nb, GGML_MAX_DIMS);
aclnn_mul(ctx, acl_position_tensor, acl_theta_scale_tensor,
acl_theta_tensor);
bool is_q = (std::strncmp(dst->name, "Qcur-", 5) == 0);
bool is_k = (std::strncmp(dst->name, "Kcur-", 5) == 0);
// used for accuracy testing
bool is_attention = is_q || is_k;
if(ctx.init_ptr == nullptr || !is_attention) {
// theta_scale arange, [0,1,...,ne00/2 - 1]
if(ctx.init_ptr != nullptr){
ACL_CHECK(aclrtFree(ctx.init_ptr));
}
ACL_CHECK(aclrtMalloc(&ctx.init_ptr, theta_scale_length * sizeof(float_t), ACL_MEM_MALLOC_HUGE_FIRST));
aclTensor* acl_theta_scale_tensor =
ggml_cann_create_tensor(ctx.init_ptr, ACL_FLOAT, sizeof(float_t),
theta_scale_ne, theta_scale_nb, GGML_MAX_DIMS);
float start = 0;
float step = 1;
float stop = ne00 / 2;
float n_elements = ne00 / 2;
aclnn_arange(ctx, acl_theta_scale_tensor, start, stop, step, n_elements);
// power
aclScalar* acl_theta_scale = aclCreateScalar(&theta_scale, aclDataType::ACL_FLOAT);
GGML_CANN_CALL_ACLNN_OP(ctx, PowScalarTensor, acl_theta_scale, acl_theta_scale_tensor,
acl_theta_scale_tensor);
// freq_scale
if (freq_scale != 1) {
aclnn_muls(ctx, acl_theta_scale_tensor, freq_scale, nullptr, true);
}
// freq_factors
if (src2) {
aclTensor* acl_freq_factors_tensor = ggml_cann_create_tensor(
src2->data, ggml_cann_type_mapping(src2->type),
ggml_type_size(src2->type), theta_scale_ne, theta_scale_nb, GGML_MAX_DIMS);
aclnn_div(ctx, acl_theta_scale_tensor, acl_freq_factors_tensor);
ggml_cann_release_resources(ctx, acl_freq_factors_tensor);
}
// release
ggml_cann_release_resources(ctx, acl_theta_scale_tensor,acl_theta_scale);
}
if(ctx.sin_ptr == nullptr) {
int64_t theta_length = theta_scale_length * ctx.max_prompt_length;
ACL_CHECK(aclrtMalloc(&ctx.sin_ptr, theta_length * sizeof(float_t), ACL_MEM_MALLOC_HUGE_FIRST));
ACL_CHECK(aclrtMalloc(&ctx.cos_ptr, theta_length * sizeof(float_t), ACL_MEM_MALLOC_HUGE_FIRST));
}
if(position_length > ctx.max_prompt_length) {
ctx.max_prompt_length = position_length;
int64_t theta_length = theta_scale_length * ctx.max_prompt_length;
ACL_CHECK(aclrtFree(ctx.sin_ptr));
ACL_CHECK(aclrtFree(ctx.cos_ptr));
ACL_CHECK(aclrtMalloc(&ctx.sin_ptr, theta_length * sizeof(float_t), ACL_MEM_MALLOC_HUGE_FIRST));
ACL_CHECK(aclrtMalloc(&ctx.cos_ptr, theta_length * sizeof(float_t), ACL_MEM_MALLOC_HUGE_FIRST));
}
bool is_fisrt_layer = (std::strncmp(dst->name, "Qcur-0", GGML_MAX_NAME) == 0);
if(is_fisrt_layer || !is_attention) {
aclTensor* acl_theta_scale_tensor =
ggml_cann_create_tensor(ctx.init_ptr, ACL_FLOAT, sizeof(float_t),
theta_scale_ne, theta_scale_nb, GGML_MAX_DIMS);
// position
aclTensor* acl_position_tensor = ggml_cann_create_tensor(
src1->data, ggml_cann_type_mapping(src1->type),
ggml_type_size(src1->type), position_ne, position_nb, GGML_MAX_DIMS);
// power * position
int64_t theta_length = theta_scale_length * position_length;
ggml_cann_pool_alloc theta_allocator(ctx.pool(),
theta_length * sizeof(float_t));
void* theta_buffer = theta_allocator.get();
aclTensor* acl_theta_tensor =
ggml_cann_create_tensor(theta_buffer, ACL_FLOAT, sizeof(float_t),
theta_ne, theta_nb, GGML_MAX_DIMS);
aclnn_mul(ctx, acl_position_tensor, acl_theta_scale_tensor,
acl_theta_tensor);
// sin/cos
aclTensor* acl_sin_tensor = ggml_cann_create_tensor(
ctx.sin_ptr, ACL_FLOAT, sizeof(float_t), theta_ne, theta_nb,
GGML_MAX_DIMS, ACL_FORMAT_ND);
aclnn_sin(ctx, acl_theta_tensor, acl_sin_tensor);
aclTensor* acl_cos_tensor = ggml_cann_create_tensor(
ctx.cos_ptr, ACL_FLOAT, sizeof(float_t), theta_ne, theta_nb,
GGML_MAX_DIMS, ACL_FORMAT_ND);
aclnn_cos(ctx, acl_theta_tensor, acl_cos_tensor);
// release
ggml_cann_release_resources(ctx, acl_theta_scale_tensor, acl_position_tensor,
acl_theta_tensor, acl_sin_tensor, acl_cos_tensor);
}
// sin/cos
ggml_cann_pool_alloc sin_allocator(ctx.pool(),
theta_length * sizeof(float_t));
void* sin_buffer = sin_allocator.get();
aclTensor* acl_sin_tensor = ggml_cann_create_tensor(
ctx.sin_ptr, ACL_FLOAT, sizeof(float_t), theta_ne, theta_nb,
GGML_MAX_DIMS, ACL_FORMAT_ND);
sin_buffer, ACL_FLOAT, sizeof(float_t), theta_ne, theta_nb,
GGML_MAX_DIMS, ACL_FORMAT_ND);
aclnn_sin(ctx, acl_theta_tensor, acl_sin_tensor);
ggml_cann_pool_alloc cos_allocator(ctx.pool(),
theta_length * sizeof(float_t));
void* cos_buffer = cos_allocator.get();
aclTensor* acl_cos_tensor = ggml_cann_create_tensor(
ctx.cos_ptr, ACL_FLOAT, sizeof(float_t), theta_ne, theta_nb,
GGML_MAX_DIMS, ACL_FORMAT_ND);
cos_buffer, ACL_FLOAT, sizeof(float_t), theta_ne, theta_nb,
GGML_MAX_DIMS, ACL_FORMAT_ND);
aclnn_cos(ctx, acl_theta_tensor, acl_cos_tensor);
// attn_factor
if (attn_factor != 1) {
@@ -2300,7 +2314,8 @@ static void aclnn_cache_init(ggml_backend_cann_context& ctx, ggml_tensor* dst,
}
// release
ggml_cann_release_resources(ctx, acl_sin_tensor, acl_cos_tensor);
ggml_cann_release_resources(ctx, acl_theta_scale_tensor, acl_position_tensor,
acl_theta_tensor, acl_sin_tensor, acl_cos_tensor, acl_theta_scale);
}
#ifdef __cplusplus
@@ -3195,24 +3210,104 @@ void ggml_cann_flash_attn_ext(ggml_backend_cann_context& ctx, ggml_tensor* dst){
// Compute the slope if needed. Derived from ggml_cann_softmax().
if(maxBias != 0.0f){
// alibi
const int64_t n_heads = src0->ne[2];
ggml_cann_pool_alloc slope_allocator(ctx.pool(), n_heads * sizeof(float));
void* slope_buffer = slope_allocator.get();
aclnn_get_slope(ctx, n_heads, slope_buffer, maxBias);
const int64_t ne2_ne3 = src0->ne[2] * src0->ne[3];
const int64_t n_head = src0->ne[2];
const int n_heads_log2_floor = 1u << (uint32_t)floor(log2(n_head));
float m0 = powf(2.0f, -(maxBias) / n_heads_log2_floor);
float m1 = powf(2.0f, -(maxBias / 2.0f) / n_heads_log2_floor);
// init arange
ggml_cann_pool_alloc arange_allocator(ctx.pool(),
ne2_ne3 * faElemSize);
void* tmp_arange_buffer = arange_allocator.get();
int64_t slope_ne[] = {1, 1, n_heads, 1};
size_t slope_nb[GGML_MAX_DIMS];
slope_nb[0] = sizeof(float);
for(int i = 1;i<GGML_MAX_DIMS;i++) {
slope_nb[i] = slope_nb[i-1] * slope_ne[0];
// arange1: [1, ..., n_heads_log2_floor+1)
float start = 1;
float stop = n_heads_log2_floor + 1;
float step = 1;
int64_t n_elements_arange = n_heads_log2_floor;
int64_t tmp_arange1_ne[] = {n_heads_log2_floor};
size_t tmp_arange1_nb[] = {faElemSize};
aclTensor* tmp_arange1_tensor = ggml_cann_create_tensor(
tmp_arange_buffer, faDataType, faElemSize,
tmp_arange1_ne, tmp_arange1_nb,
GGML_MAX_DIMS - 3, ACL_FORMAT_ND);
aclnn_arange(ctx, tmp_arange1_tensor, start, stop, step, n_elements_arange);
aclTensor* tmp_arange2_tensor = nullptr;
if (n_heads_log2_floor < ne2_ne3) {
// arange2: [1, ..., 2 * (k - n_heads_log2_floor) + 1)
start = 1;
stop = 2 * (ne2_ne3 - n_heads_log2_floor) + 1;
step = 2;
n_elements_arange = ne2_ne3 - n_heads_log2_floor;
int64_t tmp_arange2_ne[] = {ne2_ne3 - n_heads_log2_floor};
size_t tmp_arange2_nb[] = {faElemSize};
aclTensor* tmp_arange2_tensor = ggml_cann_create_tensor(
(char*)tmp_arange_buffer +
n_heads_log2_floor * faElemSize,
faDataType, faElemSize,
tmp_arange2_ne, tmp_arange2_nb, GGML_MAX_DIMS - 3, ACL_FORMAT_ND);
aclnn_arange(ctx, tmp_arange2_tensor, start, stop, step,
n_elements_arange);
}
aclTensor* slope_tensor = ggml_cann_create_tensor(
slope_buffer, ACL_FLOAT, sizeof(float),
slope_ne, slope_nb, GGML_MAX_DIMS);
GGML_CANN_CALL_ACLNN_OP(ctx, InplaceMul, bcast_pse_tensor, slope_tensor);
// init mk_base
ggml_cann_pool_alloc mk_base_allocator(ctx.pool(),
ne2_ne3 * faElemSize);
void* tmp_mk_base_buffer = mk_base_allocator.get();
int64_t tmp_mk_base1_ne[] = {n_heads_log2_floor};
size_t tmp_mk_base1_nb[] = {faElemSize};
aclTensor* tmp_mk_base1_tensor = ggml_cann_create_tensor(
tmp_mk_base_buffer, faDataType, faElemSize,
tmp_mk_base1_ne, tmp_mk_base1_nb,
GGML_MAX_DIMS - 3, ACL_FORMAT_ND);
ggml_cann_release_resources(ctx, slope_tensor);
aclnn_fill_scalar(ctx, m0, tmp_mk_base1_tensor);
aclTensor* tmp_mk_base2_tensor = nullptr;
if (n_heads_log2_floor < ne2_ne3) {
int64_t tmp_mk_base2_ne[] = {ne2_ne3 - n_heads_log2_floor};
size_t tmp_mk_base2_nb[] = {faElemSize};
aclTensor* tmp_mk_base2_tensor = ggml_cann_create_tensor(
(char*)tmp_mk_base_buffer +
n_heads_log2_floor * faElemSize,
faDataType, faElemSize,
tmp_mk_base2_ne, tmp_mk_base2_nb, GGML_MAX_DIMS - 3, ACL_FORMAT_ND);
aclnn_fill_scalar(ctx, m1, tmp_mk_base2_tensor);
}
// init mk
int64_t tmp_mk_base_ne[] = {ne2_ne3};
size_t tmp_mk_base_nb[] = {faElemSize};
aclTensor* tmp_mk_base_tensor = ggml_cann_create_tensor(
tmp_mk_base_buffer, faDataType, faElemSize,
tmp_mk_base_ne, tmp_mk_base_nb,
GGML_MAX_DIMS - 3, ACL_FORMAT_ND);
aclTensor* tmp_arange_tensor = ggml_cann_create_tensor(
tmp_arange_buffer, faDataType, faElemSize,
tmp_mk_base_ne, tmp_mk_base_nb,
GGML_MAX_DIMS - 3, ACL_FORMAT_ND);
aclnn_pow_tensor_tensor(ctx, tmp_mk_base_tensor, tmp_arange_tensor);
// reshape mk
int64_t tmp_mk_ne[] = {1, 1, src0->ne[2], src0->ne[3]};
size_t tmp_mk_nb[GGML_MAX_DIMS];
tmp_mk_nb[0] = faElemSize;
for (int i = 1; i < GGML_MAX_DIMS; i++) {
tmp_mk_nb[i] = tmp_mk_nb[i - 1] * tmp_mk_ne[i - 1];
}
aclTensor* tmp_mk_tensor = ggml_cann_create_tensor(
tmp_mk_base_buffer, faDataType, faElemSize,
tmp_mk_ne, tmp_mk_nb, GGML_MAX_DIMS,
ACL_FORMAT_ND);
GGML_CANN_CALL_ACLNN_OP(ctx, InplaceMul, bcast_pse_tensor, tmp_mk_tensor);
ggml_cann_release_resources(ctx, tmp_arange1_tensor, tmp_arange2_tensor,
tmp_mk_base1_tensor, tmp_mk_base2_tensor, tmp_mk_base_tensor,
tmp_arange_tensor, tmp_mk_tensor);
}
}

View File

@@ -337,29 +337,6 @@ private:
int32_t device_;
};
#ifdef USE_ACL_GRAPH
struct ggml_graph_node_properties {
void * node_address;
ggml_op node_op;
int64_t ne[GGML_MAX_DIMS];
size_t nb[GGML_MAX_DIMS];
void * src_address[GGML_MAX_SRC];
int32_t op_params[GGML_MAX_OP_PARAMS / sizeof(int32_t)];
};
struct ggml_cann_graph {
~ggml_cann_graph() {
if (graph != nullptr) {
aclmdlRIDestroy(graph);
}
}
aclmdlRI graph = nullptr;
std::vector<ggml_graph_node_properties> ggml_graph_properties;
};
#endif // USE_ACL_GRAPH
/**
* @brief Context for managing CANN backend operations.
*/
@@ -368,17 +345,8 @@ struct ggml_backend_cann_context {
std::string name; /**< Name of the device. */
std::string description; /**< Description of the device. */
aclrtEvent copy_event = nullptr; /**< Event for managing copy operations. */
void* init_ptr = nullptr;
void* sin_ptr = nullptr;
void* cos_ptr = nullptr;
int64_t max_prompt_length = 65536;
#ifdef USE_ACL_GRAPH
/// Cached CANN ACL graph used for executing the current ggml computation graph.
std::unique_ptr<ggml_cann_graph> cann_graph;
#endif
cann_task_queue task_queue;
bool async_mode;
bool support_set_rows;
aclrtStream streams[GGML_CANN_MAX_STREAMS] = {nullptr}; /**< Array of streams for the device. */
@@ -394,14 +362,6 @@ struct ggml_backend_cann_context {
async_mode = parse_bool(get_env("GGML_CANN_ASYNC_MODE").value_or(""));
GGML_LOG_INFO("%s: device %d async operator submission is %s\n", __func__,
device, async_mode ? "ON" : "OFF");
support_set_rows = parse_bool(get_env("LLAMA_SET_ROWS").value_or(""));
GGML_LOG_INFO("%s: LLAMA_SET_ROWS is %s\n", __func__, support_set_rows ? "ON" : "OFF");
if (!support_set_rows) {
GGML_LOG_INFO("%s: CANN Graph currently only supports execution when LLAMA_SET_ROWS is ON. "
"Falling back to eager mode.\n", __func__);
}
}
/**
@@ -418,15 +378,6 @@ struct ggml_backend_cann_context {
ACL_CHECK(aclrtDestroyStream(streams[i]));
}
}
if(init_ptr != nullptr) {
ACL_CHECK(aclrtFree(init_ptr));
}
if(sin_ptr != nullptr) {
ACL_CHECK(aclrtFree(sin_ptr));
}
if(cos_ptr != nullptr) {
ACL_CHECK(aclrtFree(cos_ptr));
}
}
/**

View File

@@ -1116,59 +1116,61 @@ static enum ggml_status ggml_backend_cann_buffer_init_tensor(
return GGML_STATUS_SUCCESS;
}
// ND to NZ Workspace Cache Management. Thread-safety: Not guaranteed
namespace {
void* g_nz_workspace = nullptr;
size_t g_nz_workspace_allocated = 0;
void release_nz_workspace() {
if (g_nz_workspace) {
aclrtFree(g_nz_workspace);
g_nz_workspace = nullptr;
g_nz_workspace_allocated = 0;
}
static int CreateAclTensorWeight(const void *hostData, const std::vector<int64_t> &shape, void **deviceAddr,
aclDataType dataType, aclTensor **tensor)
{
uint64_t size = 1;
for (auto i : shape) {
size *= i;
}
void relloc_nz_workspace(size_t new_size) {
if (new_size > g_nz_workspace_allocated) {
if (g_nz_workspace) {
aclrtFree(g_nz_workspace);
g_nz_workspace = nullptr;
}
ACL_CHECK(aclrtMalloc(&g_nz_workspace, new_size, ACL_MEM_MALLOC_HUGE_FIRST));
g_nz_workspace_allocated = new_size;
}
const aclIntArray *mat2Size = aclCreateIntArray(shape.data(), shape.size());
ACL_CHECK(aclnnCalculateMatmulWeightSizeV2(mat2Size, dataType, &size));
size *= sizeof(int16_t);
ACL_CHECK(aclrtMalloc(deviceAddr, size, ACL_MEM_MALLOC_HUGE_FIRST));
aclrtMemcpy(*deviceAddr, size, hostData, size, ACL_MEMCPY_HOST_TO_DEVICE);
std::vector<int64_t> strides(shape.size(), 1);
for (int64_t i = shape.size() - 2; i >= 0; i--) {
strides[i] = shape[i + 1] * strides[i + 1];
}
*tensor = aclCreateTensor(shape.data(), shape.size(), dataType, strides.data(), 0, aclFormat::ACL_FORMAT_ND,
shape.data(), shape.size(), *deviceAddr);
return 0;
}
/**
* @brief Convert tensor weights to NZ format using Ascend CANN API.
*
* This function creates a transposed tensor descriptor and performs the
* TransMatmulWeight operation. Converting tensor formats can significantly
* improve performance on certain hardware.
*
* @param tensor Pointer to the input ggml_tensor containing the weights.
* @param data Pointer to the raw data buffer for the tensor weights.
* @param offset Byte offset within the tensor data buffer where weights start.
*
* @note The workspace buffer used in this function is managed globally and reused
* across calls. This reduces overhead from repeated memory allocation and deallocation.
*/
static void weight_format_to_nz(ggml_tensor *tensor, const void *data, size_t offset) {
aclTensor* weightTransposed = ggml_cann_create_tensor(tensor, tensor->ne,
tensor->nb, 2, ACL_FORMAT_ND, offset);
aclrtStream stream;
ACL_CHECK(aclrtCreateStream(&stream));
std::vector<int64_t> weightTransposedShape = {tensor->ne[1], tensor->ne[0]};
void *weightTransposedDeviceAddr = nullptr;
aclTensor *weightTransposed = nullptr;
CreateAclTensorWeight(data, weightTransposedShape, &weightTransposedDeviceAddr,
ggml_cann_type_mapping(tensor->type), &weightTransposed);
uint64_t workspaceSize = 0;
aclOpExecutor *executor;
void *workspaceAddr = nullptr;
// TransMatmulWeight
ACL_CHECK(aclnnTransMatmulWeightGetWorkspaceSize(weightTransposed,
&workspaceSize, &executor));
// Avoid frequent malloc/free of the workspace.
relloc_nz_workspace(workspaceSize);
ACL_CHECK(aclnnTransMatmulWeightGetWorkspaceSize(weightTransposed, &workspaceSize, &executor));
std::unique_ptr<void, aclError (*)(void *)> workspaceAddrPtrTrans(nullptr, aclrtFree);
if (workspaceSize > 0) {
ACL_CHECK(aclrtMalloc(&workspaceAddr, workspaceSize, ACL_MEM_MALLOC_HUGE_FIRST));
workspaceAddrPtrTrans.reset(workspaceAddr);
}
ACL_CHECK(aclnnTransMatmulWeight(workspaceAddr, workspaceSize, executor, stream));
ACL_CHECK(aclnnTransMatmulWeight(g_nz_workspace, workspaceSize, executor, nullptr));
size_t size = ggml_nelements(tensor) * ggml_element_size(tensor);
aclrtMemcpy((char *)tensor->data + offset, size,
weightTransposedDeviceAddr, size, ACL_MEMCPY_HOST_TO_DEVICE);
ACL_CHECK(aclDestroyTensor(weightTransposed));
aclrtFree(weightTransposedDeviceAddr);
}
// TODO: need handle tensor which has paddings.
@@ -1195,14 +1197,14 @@ static void ggml_backend_cann_buffer_set_tensor(
// For acl, synchronous functions use this default stream.
// Why aclrtSynchronizeDevice?
// Only check env once.
static bool weight_to_nz = parse_bool(get_env("GGML_CANN_WEIGHT_NZ").value_or(""));
bool weightToNZ = false;
#ifdef ASCEND_310P
weightToNZ = (getenv("GGML_CANN_WEIGHT_NZ") != nullptr);
#endif
if (!need_transform(tensor->type)) {
ACL_CHECK(aclrtMemcpy((char *)tensor->data + offset, size, data, size,
ACL_MEMCPY_HOST_TO_DEVICE));
if (weight_to_nz && is_matmul_weight((const ggml_tensor*)tensor)) {
GGML_ASSERT(tensor->ne[2] == 1);
GGML_ASSERT(tensor->ne[3] == 1);
if (weightToNZ && is_matmul_weight((const ggml_tensor*)tensor)) {
weight_format_to_nz(tensor, data, offset);
}
} else {
@@ -1438,32 +1440,20 @@ static size_t ggml_backend_cann_buffer_type_get_alloc_size(
size_t size = ggml_nbytes(tensor);
int64_t ne0 = tensor->ne[0];
// Only check env once.
static bool weight_to_nz = parse_bool(get_env("GGML_CANN_WEIGHT_NZ").value_or(""));
// last line must bigger than 32, because every single op deal at
// least 32 bytes.
// TODO: quantized type?
// int64_t line_size = ne0 * ggml_element_size(tensor);
// int64_t line_size_align_32 = (line_size + 31) & ~31;
// size += (line_size_align_32 - line_size);
// TODO: not support quantized yet.
// TODO: consider un-continue tensor.
if (ggml_is_quantized(tensor->type)) {
if (ne0 % MATRIX_ROW_PADDING != 0) {
size += ggml_row_size(
tensor->type, MATRIX_ROW_PADDING - ne0 % MATRIX_ROW_PADDING);
}
} else if (weight_to_nz && is_matmul_weight((const ggml_tensor*)tensor)) {
// NZ format weight are not support quantized yet.
// If ND tensor transform to NZ, size may changed.
int64_t shape[] = {tensor->ne[1], tensor->ne[0]};
GGML_ASSERT(tensor->ne[2] == 1);
GGML_ASSERT(tensor->ne[3] == 1);
const aclIntArray *acl_shape = aclCreateIntArray(shape, 2);
size_t new_size;
ACL_CHECK(aclnnCalculateMatmulWeightSizeV2(acl_shape,
ggml_cann_type_mapping(tensor->type), &new_size));
ACL_CHECK(aclDestroyIntArray(acl_shape));
size = std::max(size, new_size);
}
return size;
@@ -2016,9 +2006,6 @@ static bool ggml_backend_cann_cpy_tensor_async(
(ggml_backend_cann_context*)backend_dst->context;
size_t copy_size = ggml_nbytes(dst);
if (copy_size == 0) {
return true;
}
if (backend_src != backend_dst) {
ggml_backend_cann_buffer_context* buf_ctx_src =
(ggml_backend_cann_buffer_context*)buf_src->context;
@@ -2075,160 +2062,6 @@ static void ggml_backend_cann_synchronize(ggml_backend_t backend) {
ACL_CHECK(aclrtSynchronizeStream(cann_ctx->stream()));
}
#ifdef USE_ACL_GRAPH
/**
* @brief Populate the internal CANN graph node properties from the ggml computation graph.
*
* This function copies all node attributes (operation type, dimensions, strides, input sources,
* and operation parameters) into the cached CANN graph structure for later reuse or comparison.
*
* @param cann_ctx The CANN backend context.
* @param cgraph The ggml computational graph.
*/
static void set_ggml_graph_node_properties(ggml_backend_cann_context * cann_ctx, ggml_cgraph * cgraph) {
for (int node_idx = 0; node_idx < cgraph->n_nodes; node_idx++) {
ggml_tensor * node = cgraph->nodes[node_idx];
cann_ctx->cann_graph->ggml_graph_properties[node_idx].node_address = node->data;
cann_ctx->cann_graph->ggml_graph_properties[node_idx].node_op = node->op;
for (int dim = 0; dim < GGML_MAX_DIMS; dim++) {
cann_ctx->cann_graph->ggml_graph_properties[node_idx].ne[dim] = node->ne[dim];
cann_ctx->cann_graph->ggml_graph_properties[node_idx].nb[dim] = node->nb[dim];
}
for (int src = 0; src < GGML_MAX_SRC; src++) {
cann_ctx->cann_graph->ggml_graph_properties[node_idx].src_address[src] =
node->src[src] ? node->src[src]->data : nullptr;
}
memcpy(cann_ctx->cann_graph->ggml_graph_properties[node_idx].op_params, node->op_params, GGML_MAX_OP_PARAMS);
}
}
/**
* @brief Check if a ggml tensor node matches a previously captured CANN graph node.
*
* This function compares all relevant fields (address, op type, shape, source inputs, op params)
* to determine whether the current node matches a previously recorded version.
*
* @param node The current ggml tensor node.
* @param graph_node_properties The stored properties of a CANN graph node.
* @return true if all fields match (excluding GGML_OP_VIEW); false otherwise.
*/
static bool ggml_graph_node_has_matching_properties(ggml_tensor * node, ggml_graph_node_properties * graph_node_properties) {
if (node->data != graph_node_properties->node_address &&
node->op != GGML_OP_VIEW) {
return false;
}
if (node->op != graph_node_properties->node_op) {
return false;
}
for (int i = 0; i < GGML_MAX_DIMS; i++) {
if (node->ne[i] != graph_node_properties->ne[i]) {
return false;
}
if (node->nb[i] != graph_node_properties->nb[i]) {
return false;
}
}
for (int i = 0; i < GGML_MAX_SRC; i++) {
if (node->src[i] &&
node->src[i]->data != graph_node_properties->src_address[i] &&
node->op != GGML_OP_VIEW
) {
return false;
}
}
if (node->op == GGML_OP_SCALE &&
memcmp(graph_node_properties->op_params, node->op_params, GGML_MAX_OP_PARAMS) != 0) {
return false;
}
return true;
}
/**
* @brief Determine if the CANN graph needs to be rebuilt due to graph changes.
*
* This checks whether the number or properties of ggml graph nodes have changed
* compared to the last captured CANN graph. If so, the CANN graph must be re-captured.
*
* @param cann_ctx The CANN backend context.
* @param cgraph The current ggml computation graph.
* @return true if an update is required; false otherwise.
*/
static bool is_cann_graph_update_required(ggml_backend_cann_context * cann_ctx, ggml_cgraph * cgraph) {
// The number of nodes is different, so the graph needs to be reconstructed.
if (cann_ctx->cann_graph->ggml_graph_properties.size() != (size_t)cgraph->n_nodes) {
cann_ctx->cann_graph->ggml_graph_properties.resize(cgraph->n_nodes);
return true;
}
// The number of nodes is the same; iterate over each node to check whether they match.
for (int i = 0; i < cgraph->n_nodes; i++) {
bool has_matching_properties = ggml_graph_node_has_matching_properties(
cgraph->nodes[i], &cann_ctx->cann_graph->ggml_graph_properties[i]);
if(!has_matching_properties) {
return true;
}
}
return false;
}
#endif // USE_ACL_GRAPH
/**
* @brief Evaluate the computation graph and optionally capture or execute it using CANN graph API.
*
* If CANN graph execution is enabled and graph capture is required, this function begins
* graph capture, runs the graph, ends capture, and stores the captured graph.
*
* Otherwise, it falls back to op-by-op execution using the CANN compute kernel dispatcher.
*
* @param cann_ctx The CANN backend context.
* @param cgraph The ggml computation graph.
* @param use_cann_graph Whether to use CANN graph execution.
* @param cann_graph_update_required Whether graph capture is needed due to graph changes.
*/
static void evaluate_and_capture_cann_graph(ggml_backend_cann_context * cann_ctx, ggml_cgraph * cgraph,
bool & use_cann_graph, bool & cann_graph_update_required) {
#ifdef USE_ACL_GRAPH
if (use_cann_graph && cann_graph_update_required) {
if (cann_ctx->cann_graph->graph != nullptr) {
ACL_CHECK(aclmdlRIDestroy(cann_ctx->cann_graph->graph));
cann_ctx->cann_graph->graph = nullptr;
}
ACL_CHECK(aclmdlRICaptureBegin(cann_ctx->stream(), ACL_MODEL_RI_CAPTURE_MODE_GLOBAL));
}
#endif // USE_ACL_GRAPH
// Only perform the graph execution if CANN graphs are not enabled, or we are capturing the graph.
// With the use of CANN graphs, the execution will be performed by the graph launch.
if (!use_cann_graph || cann_graph_update_required) {
for (int i = 0; i < cgraph->n_nodes; i++) {
ggml_tensor * node = cgraph->nodes[i];
if (ggml_is_empty(node) || node->op == GGML_OP_RESHAPE || node->op == GGML_OP_TRANSPOSE || node->op == GGML_OP_VIEW || node->op == GGML_OP_PERMUTE || node->op == GGML_OP_NONE) {
continue;
}
bool ok = ggml_cann_compute_forward(*cann_ctx, node);
if (!ok) {
GGML_LOG_ERROR("%s: op not supported %s (%s)\n", __func__, node->name, ggml_op_name(node->op));
}
GGML_ASSERT(ok);
}
}
#ifdef USE_ACL_GRAPH
if (use_cann_graph && cann_graph_update_required) { // End CANN graph capture
ACL_CHECK(aclmdlRICaptureEnd(cann_ctx->stream(), &cann_ctx->cann_graph->graph));
}
if (use_cann_graph) {
// Execute graph
ACL_CHECK(aclmdlRIExecuteAsync(cann_ctx->cann_graph->graph, cann_ctx->stream()));
}
#endif // USE_ACL_GRAPH
}
/**
* @brief Computes a computational graph using a CANN backend.
*
@@ -2245,37 +2078,24 @@ static enum ggml_status ggml_backend_cann_graph_compute(
ggml_backend_t backend, ggml_cgraph* cgraph) {
ggml_backend_cann_context* cann_ctx =
(ggml_backend_cann_context*)backend->context;
ggml_cann_set_device(cann_ctx->device);
release_nz_workspace();
#ifdef USE_ACL_GRAPH
bool use_cann_graph = true;
bool cann_graph_update_required = false;
// check environment LLAMA_SET_ROWS
if (!cann_ctx->support_set_rows) {
use_cann_graph = false;
}
for (int i = 0; i < cgraph->n_nodes; i++) {
ggml_tensor* node = cgraph->nodes[i];
if (use_cann_graph) {
if (cann_ctx->cann_graph == nullptr) {
cann_ctx->cann_graph.reset(new ggml_cann_graph());
cann_graph_update_required = true;
if (ggml_is_empty(node) || node->op == GGML_OP_NONE) {
continue;
}
cann_graph_update_required = is_cann_graph_update_required(cann_ctx, cgraph);
set_ggml_graph_node_properties(cann_ctx, cgraph);
}
#else
bool use_cann_graph = false;
bool cann_graph_update_required = false;
#endif // USE_ACL_GRAPH
bool ok = ggml_cann_compute_forward(*cann_ctx, node);
evaluate_and_capture_cann_graph(
cann_ctx,
cgraph,
use_cann_graph,
cann_graph_update_required
);
if (!ok) {
GGML_LOG_ERROR("%s: error: op not supported %s (%s)\n", __func__,
node->name, ggml_op_name(node->op));
}
GGML_ASSERT(ok);
}
return GGML_STATUS_SUCCESS;
}
@@ -2391,6 +2211,12 @@ static bool ggml_backend_cann_supports_op(ggml_backend_dev_t dev,
// only support F32 and F16.
return false;
}
if (!ggml_are_same_shape(op, src) && !ggml_is_contiguous(op)) {
// unsupport dst is not contiguous.
return false;
}
return true;
} break;
case GGML_OP_CONT: {
@@ -2456,8 +2282,8 @@ static bool ggml_backend_cann_supports_op(ggml_backend_dev_t dev,
// value of paddingW should be at most half of kernelW
return (p0 <= (k0 / 2)) && (p1 <= (k1 / 2));
}
case GGML_OP_DUP:
case GGML_OP_SUM:
case GGML_OP_DUP:
case GGML_OP_IM2COL:
case GGML_OP_CONCAT:
case GGML_OP_REPEAT:
@@ -2499,11 +2325,9 @@ static bool ggml_backend_cann_supports_op(ggml_backend_dev_t dev,
memcpy(&bias, (float*)op->op_params + 1, sizeof(float));
return bias == 0.0f; // TODO: support bias != 0.0f
case GGML_OP_SOFT_MAX:
// TODO: support attention sinks [TAG_ATTN_SINKS]
if (op->src[2]) {
return false;
}
return true;
// TODO: support broadcast
// ref: https://github.com/ggml-org/llama.cpp/pull/14435
return !op->src[1] || (op->src[1]->ne[2] == 1 && op->src[1]->ne[3] == 1);
case GGML_OP_FLASH_ATTN_EXT:{
// derived from [ggml-cuda.cu]
if(op->src[1]->type != GGML_TYPE_F16 || op->src[2]->type != GGML_TYPE_F16){
@@ -2515,10 +2339,6 @@ static bool ggml_backend_cann_supports_op(ggml_backend_dev_t dev,
if(op->type != GGML_TYPE_F16 && op->type != GGML_TYPE_F32 && op->type != GGML_TYPE_BF16){
return false;
}
// TODO: support attention sinks [TAG_ATTN_SINKS]
if (op->src[4]) {
return false;
}
if (op->src[1]->ne[0] != op->src[2]->ne[0]) {
// different head sizes of K and V are not supported yet
return false;
@@ -2530,6 +2350,11 @@ static bool ggml_backend_cann_supports_op(ggml_backend_dev_t dev,
// DeepSeek MLA
return false;
}
// TODO: support broadcast
// ref: https://github.com/ggml-org/llama.cpp/pull/14435
if (op->src[0]->ne[3] != 1) {
return false;
}
float logitSoftcap = 0.0f;
memcpy(&logitSoftcap, (float*)op->op_params + 2, sizeof(float));
if(logitSoftcap != 0.0f) {

View File

@@ -99,9 +99,6 @@ typedef sycl::half2 ggml_half2;
#define QI4_1 (QK4_1 / (4 * QR4_1))
#define QR4_1 2
#define QI_MXFP4 (QK_MXFP4 / (4 * QR_MXFP4))
#define QR_MXFP4 2
#define QI5_0 (QK5_0 / (4 * QR5_0))
#define QR5_0 2
@@ -187,13 +184,6 @@ typedef struct {
} block_q4_1;
static_assert(sizeof(block_q4_1) == 2 * sizeof(ggml_half) + QK4_1 / 2, "wrong q4_1 block size/padding");
#define QK_MXFP4 32
typedef struct {
uint8_t e; // E8M0
uint8_t qs[QK_MXFP4/2];
} block_mxfp4;
static_assert(sizeof(block_mxfp4) == sizeof(uint8_t) + QK_MXFP4/2, "wrong mxfp4 block size/padding");
#define QK5_0 32
typedef struct {
ggml_half d; // delta
@@ -1084,17 +1074,10 @@ GGML_TABLE_BEGIN(uint32_t, iq3s_grid, 512)
0x0f090307, 0x0f090501, 0x0f090b01, 0x0f0b0505, 0x0f0b0905, 0x0f0d0105, 0x0f0d0703, 0x0f0f0101,
GGML_TABLE_END()
// TODO: fix name to kvalues_iq4_nl
GGML_TABLE_BEGIN(int8_t, kvalues_iq4nl, 16)
-127, -104, -83, -65, -49, -35, -22, -10, 1, 13, 25, 38, 53, 69, 89, 113,
GGML_TABLE_END()
// e2m1 values (doubled)
// ref: https://www.opencompute.org/documents/ocp-microscaling-formats-mx-v1-0-spec-final-pdf
GGML_TABLE_BEGIN(int8_t, kvalues_mxfp4, 16)
0, 1, 2, 3, 4, 6, 8, 12, 0, -1, -2, -3, -4, -6, -8, -12,
GGML_TABLE_END()
#define NGRID_IQ1S 2048
#define IQ1S_DELTA 0.125f
#define IQ1M_DELTA 0.125f

View File

@@ -460,7 +460,7 @@ function(ggml_add_cpu_backend_variant_impl tag_name)
# NOTE: Only available from GCC 15.1.0 onwards. Any z17 machine with compile issues must first verify their GCC version.
# binutils must also be updated to the latest for the -march=z17 flag to work. Otherwise, use -march=arch15.
message(STATUS "z17 target")
list(APPEND ARCH_FLAGS -march=arch15)
list(APPEND ARCH_FLAGS -march=z17)
else()
message(STATUS "Unknown target")
message(WARNING "Unknown target. If you are compiling for z14 and earlier, you might have to add -DGGML_VXE=OFF.")

View File

@@ -13,7 +13,6 @@
#define ggml_vec_dot_q5_0_q8_0_generic ggml_vec_dot_q5_0_q8_0
#define ggml_vec_dot_q5_1_q8_1_generic ggml_vec_dot_q5_1_q8_1
#define ggml_vec_dot_q8_0_q8_0_generic ggml_vec_dot_q8_0_q8_0
#define ggml_vec_dot_mxfp4_q8_0_generic ggml_vec_dot_mxfp4_q8_0
#define ggml_vec_dot_tq1_0_q8_K_generic ggml_vec_dot_tq1_0_q8_K
#define ggml_vec_dot_tq2_0_q8_K_generic ggml_vec_dot_tq2_0_q8_K
#define ggml_vec_dot_q2_K_q8_K_generic ggml_vec_dot_q2_K_q8_K
@@ -38,25 +37,17 @@
#define ggml_gemv_q4_0_4x8_q8_0_generic ggml_gemv_q4_0_4x8_q8_0
#define ggml_gemv_q4_0_8x8_q8_0_generic ggml_gemv_q4_0_8x8_q8_0
#define ggml_gemv_q4_K_8x8_q8_K_generic ggml_gemv_q4_K_8x8_q8_K
#define ggml_gemv_q2_K_8x8_q8_K_generic ggml_gemv_q2_K_8x8_q8_K
#define ggml_gemv_iq4_nl_4x4_q8_0_generic ggml_gemv_iq4_nl_4x4_q8_0
#define ggml_gemv_iq4_nl_8x8_q8_0_generic ggml_gemv_iq4_nl_8x8_q8_0
#define ggml_gemm_q4_0_4x4_q8_0_generic ggml_gemm_q4_0_4x4_q8_0
#define ggml_gemm_q4_0_4x8_q8_0_generic ggml_gemm_q4_0_4x8_q8_0
#define ggml_gemm_q4_0_8x8_q8_0_generic ggml_gemm_q4_0_8x8_q8_0
#define ggml_gemm_q4_K_8x8_q8_K_generic ggml_gemm_q4_K_8x8_q8_K
#define ggml_gemm_q2_K_8x8_q8_K_generic ggml_gemm_q2_K_8x8_q8_K
#define ggml_gemm_iq4_nl_4x4_q8_0_generic ggml_gemm_iq4_nl_4x4_q8_0
#define ggml_gemm_iq4_nl_8x8_q8_0_generic ggml_gemm_iq4_nl_8x8_q8_0
#elif defined(__aarch64__) || defined(__arm__) || defined(_M_ARM) || defined(_M_ARM64)
// repack.cpp
#define ggml_quantize_mat_q8_K_4x8_generic ggml_quantize_mat_q8_K_4x8
#define ggml_gemv_q4_K_8x8_q8_K_generic ggml_gemv_q4_K_8x8_q8_K
#define ggml_gemv_iq4_nl_8x8_q8_0_generic ggml_gemv_iq4_nl_8x8_q8_0
#define ggml_gemv_q2_K_8x8_q8_K_generic ggml_gemv_q2_K_8x8_q8_K
#define ggml_gemm_q4_K_8x8_q8_K_generic ggml_gemm_q4_K_8x8_q8_K
#define ggml_gemm_iq4_nl_8x8_q8_0_generic ggml_gemm_iq4_nl_8x8_q8_0
#define ggml_gemm_q2_K_8x8_q8_K_generic ggml_gemm_q2_K_8x8_q8_K
#elif defined(__x86_64__) || defined(__i386__) || defined(_M_IX86) || defined(_M_X64)
// repack.cpp
#define ggml_quantize_mat_q8_0_4x4_generic ggml_quantize_mat_q8_0_4x4
@@ -81,23 +72,18 @@
#define ggml_gemv_q4_0_4x8_q8_0_generic ggml_gemv_q4_0_4x8_q8_0
#define ggml_gemv_q4_0_8x8_q8_0_generic ggml_gemv_q4_0_8x8_q8_0
#define ggml_gemv_q4_K_8x8_q8_K_generic ggml_gemv_q4_K_8x8_q8_K
#define ggml_gemv_q2_K_8x8_q8_K_generic ggml_gemv_q2_K_8x8_q8_K
#define ggml_gemv_iq4_nl_4x4_q8_0_generic ggml_gemv_iq4_nl_4x4_q8_0
#define ggml_gemv_iq4_nl_8x8_q8_0_generic ggml_gemv_iq4_nl_8x8_q8_0
#define ggml_gemm_q4_0_4x4_q8_0_generic ggml_gemm_q4_0_4x4_q8_0
#define ggml_gemm_q4_0_4x8_q8_0_generic ggml_gemm_q4_0_4x8_q8_0
#define ggml_gemm_q4_0_8x8_q8_0_generic ggml_gemm_q4_0_8x8_q8_0
#define ggml_gemm_q4_K_8x8_q8_K_generic ggml_gemm_q4_K_8x8_q8_K
#define ggml_gemm_q2_K_8x8_q8_K_generic ggml_gemm_q2_K_8x8_q8_K
#define ggml_gemm_iq4_nl_4x4_q8_0_generic ggml_gemm_iq4_nl_4x4_q8_0
#define ggml_gemm_iq4_nl_8x8_q8_0_generic ggml_gemm_iq4_nl_8x8_q8_0
#elif defined(__loongarch64)
// quants.c
#define quantize_row_q8_K_generic quantize_row_q8_K
#define ggml_vec_dot_tq1_0_q8_K_generic ggml_vec_dot_tq1_0_q8_K
#define ggml_vec_dot_tq2_0_q8_K_generic ggml_vec_dot_tq2_0_q8_K
#define ggml_vec_dot_iq1_m_q8_K_generic ggml_vec_dot_iq1_m_q8_K
#define ggml_vec_dot_mxfp4_q8_0_generic ggml_vec_dot_mxfp4_q8_0
// repack.cpp
#define ggml_quantize_mat_q8_0_4x4_generic ggml_quantize_mat_q8_0_4x4
#define ggml_quantize_mat_q8_0_4x8_generic ggml_quantize_mat_q8_0_4x8
@@ -106,16 +92,12 @@
#define ggml_gemv_q4_0_4x8_q8_0_generic ggml_gemv_q4_0_4x8_q8_0
#define ggml_gemv_q4_0_8x8_q8_0_generic ggml_gemv_q4_0_8x8_q8_0
#define ggml_gemv_q4_K_8x8_q8_K_generic ggml_gemv_q4_K_8x8_q8_K
#define ggml_gemv_q2_K_8x8_q8_K_generic ggml_gemv_q2_K_8x8_q8_K
#define ggml_gemv_iq4_nl_4x4_q8_0_generic ggml_gemv_iq4_nl_4x4_q8_0
#define ggml_gemv_iq4_nl_8x8_q8_0_generic ggml_gemv_iq4_nl_8x8_q8_0
#define ggml_gemm_q4_0_4x4_q8_0_generic ggml_gemm_q4_0_4x4_q8_0
#define ggml_gemm_q4_0_4x8_q8_0_generic ggml_gemm_q4_0_4x8_q8_0
#define ggml_gemm_q4_0_8x8_q8_0_generic ggml_gemm_q4_0_8x8_q8_0
#define ggml_gemm_q4_K_8x8_q8_K_generic ggml_gemm_q4_K_8x8_q8_K
#define ggml_gemm_q2_K_8x8_q8_K_generic ggml_gemm_q2_K_8x8_q8_K
#define ggml_gemm_iq4_nl_4x4_q8_0_generic ggml_gemm_iq4_nl_4x4_q8_0
#define ggml_gemm_iq4_nl_8x8_q8_0_generic ggml_gemm_iq4_nl_8x8_q8_0
#elif defined(__riscv)
// quants.c
#define quantize_row_q8_K_generic quantize_row_q8_K
@@ -130,7 +112,6 @@
#define ggml_vec_dot_iq1_m_q8_K_generic ggml_vec_dot_iq1_m_q8_K
#define ggml_vec_dot_iq4_nl_q8_0_generic ggml_vec_dot_iq4_nl_q8_0
#define ggml_vec_dot_iq4_xs_q8_K_generic ggml_vec_dot_iq4_xs_q8_K
#define ggml_vec_dot_mxfp4_q8_0_generic ggml_vec_dot_mxfp4_q8_0
// repack.cpp
#define ggml_quantize_mat_q8_0_4x4_generic ggml_quantize_mat_q8_0_4x4
#define ggml_quantize_mat_q8_0_4x8_generic ggml_quantize_mat_q8_0_4x8
@@ -138,15 +119,11 @@
#define ggml_gemv_q4_0_4x4_q8_0_generic ggml_gemv_q4_0_4x4_q8_0
#define ggml_gemv_q4_0_4x8_q8_0_generic ggml_gemv_q4_0_4x8_q8_0
#define ggml_gemv_q4_K_8x8_q8_K_generic ggml_gemv_q4_K_8x8_q8_K
#define ggml_gemv_q2_K_8x8_q8_K_generic ggml_gemv_q2_K_8x8_q8_K
#define ggml_gemv_iq4_nl_4x4_q8_0_generic ggml_gemv_iq4_nl_4x4_q8_0
#define ggml_gemv_iq4_nl_8x8_q8_0_generic ggml_gemv_iq4_nl_8x8_q8_0
#define ggml_gemm_q4_0_4x4_q8_0_generic ggml_gemm_q4_0_4x4_q8_0
#define ggml_gemm_q4_0_4x8_q8_0_generic ggml_gemm_q4_0_4x8_q8_0
#define ggml_gemm_q4_K_8x8_q8_K_generic ggml_gemm_q4_K_8x8_q8_K
#define ggml_gemm_q2_K_8x8_q8_K_generic ggml_gemm_q2_K_8x8_q8_K
#define ggml_gemm_iq4_nl_4x4_q8_0_generic ggml_gemm_iq4_nl_4x4_q8_0
#define ggml_gemm_iq4_nl_8x8_q8_0_generic ggml_gemm_iq4_nl_8x8_q8_0
#elif defined(__s390x__)
// quants.c
#define quantize_row_q8_K_generic quantize_row_q8_K
@@ -162,7 +139,6 @@
#define ggml_vec_dot_iq3_s_q8_K_generic ggml_vec_dot_iq3_s_q8_K
#define ggml_vec_dot_iq1_s_q8_K_generic ggml_vec_dot_iq1_s_q8_K
#define ggml_vec_dot_iq1_m_q8_K_generic ggml_vec_dot_iq1_m_q8_K
#define ggml_vec_dot_mxfp4_q8_0_generic ggml_vec_dot_mxfp4_q8_0
// repack.cpp
#define ggml_quantize_mat_q8_0_4x4_generic ggml_quantize_mat_q8_0_4x4
#define ggml_quantize_mat_q8_0_4x8_generic ggml_quantize_mat_q8_0_4x8
@@ -171,16 +147,12 @@
#define ggml_gemv_q4_0_4x8_q8_0_generic ggml_gemv_q4_0_4x8_q8_0
#define ggml_gemv_q4_0_8x8_q8_0_generic ggml_gemv_q4_0_8x8_q8_0
#define ggml_gemv_q4_K_8x8_q8_K_generic ggml_gemv_q4_K_8x8_q8_K
#define ggml_gemv_q2_K_8x8_q8_K_generic ggml_gemv_q2_K_8x8_q8_K
#define ggml_gemv_iq4_nl_4x4_q8_0_generic ggml_gemv_iq4_nl_4x4_q8_0
#define ggml_gemv_iq4_nl_8x8_q8_0_generic ggml_gemv_iq4_nl_8x8_q8_0
#define ggml_gemm_q4_0_4x4_q8_0_generic ggml_gemm_q4_0_4x4_q8_0
#define ggml_gemm_q4_0_4x8_q8_0_generic ggml_gemm_q4_0_4x8_q8_0
#define ggml_gemm_q4_0_8x8_q8_0_generic ggml_gemm_q4_0_8x8_q8_0
#define ggml_gemm_q4_K_8x8_q8_K_generic ggml_gemm_q4_K_8x8_q8_K
#define ggml_gemm_q2_K_8x8_q8_K_generic ggml_gemm_q2_K_8x8_q8_K
#define ggml_gemm_iq4_nl_4x4_q8_0_generic ggml_gemm_iq4_nl_4x4_q8_0
#define ggml_gemm_iq4_nl_8x8_q8_0_generic ggml_gemm_iq4_nl_8x8_q8_0
#elif defined(__wasm__)
// quants.c
#define ggml_vec_dot_q4_1_q8_1_generic ggml_vec_dot_q4_1_q8_1
@@ -195,7 +167,6 @@
#define ggml_vec_dot_iq1_m_q8_K_generic ggml_vec_dot_iq1_m_q8_K
#define ggml_vec_dot_iq4_nl_q8_0_generic ggml_vec_dot_iq4_nl_q8_0
#define ggml_vec_dot_iq4_xs_q8_K_generic ggml_vec_dot_iq4_xs_q8_K
#define ggml_vec_dot_mxfp4_q8_0_generic ggml_vec_dot_mxfp4_q8_0
// repack.cpp
#define ggml_quantize_mat_q8_0_4x4_generic ggml_quantize_mat_q8_0_4x4
#define ggml_quantize_mat_q8_0_4x8_generic ggml_quantize_mat_q8_0_4x8
@@ -204,14 +175,10 @@
#define ggml_gemv_q4_0_4x8_q8_0_generic ggml_gemv_q4_0_4x8_q8_0
#define ggml_gemv_q4_0_8x8_q8_0_generic ggml_gemv_q4_0_8x8_q8_0
#define ggml_gemv_q4_K_8x8_q8_K_generic ggml_gemv_q4_K_8x8_q8_K
#define ggml_gemv_q2_K_8x8_q8_K_generic ggml_gemv_q2_K_8x8_q8_K
#define ggml_gemv_iq4_nl_4x4_q8_0_generic ggml_gemv_iq4_nl_4x4_q8_0
#define ggml_gemv_iq4_nl_8x8_q8_0_generic ggml_gemv_iq4_nl_8x8_q8_0
#define ggml_gemm_q4_0_4x4_q8_0_generic ggml_gemm_q4_0_4x4_q8_0
#define ggml_gemm_q4_0_4x8_q8_0_generic ggml_gemm_q4_0_4x8_q8_0
#define ggml_gemm_q4_0_8x8_q8_0_generic ggml_gemm_q4_0_8x8_q8_0
#define ggml_gemm_q4_K_8x8_q8_K_generic ggml_gemm_q4_K_8x8_q8_K
#define ggml_gemm_q2_K_8x8_q8_K_generic ggml_gemm_q2_K_8x8_q8_K
#define ggml_gemm_iq4_nl_4x4_q8_0_generic ggml_gemm_iq4_nl_4x4_q8_0
#define ggml_gemm_iq4_nl_8x8_q8_0_generic ggml_gemm_iq4_nl_8x8_q8_0
#endif

View File

@@ -589,67 +589,6 @@ void ggml_vec_dot_q4_1_q8_1(int n, float * GGML_RESTRICT s, size_t bs, const voi
*s = sumf;
}
void ggml_vec_dot_mxfp4_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc) {
assert(nrc == 1);
UNUSED(nrc);
UNUSED(bx);
UNUSED(by);
UNUSED(bs);
assert(n % QK_MXFP4 == 0);
static_assert(QK_MXFP4 == QK8_0, "QK_MXFP4 and QK8_0 must be the same");
const block_mxfp4 * GGML_RESTRICT x = vx;
const block_q8_0 * GGML_RESTRICT y = vy;
const int nb = n / QK_MXFP4;
int ib = 0;
float sumf = 0;
#if defined __ARM_NEON
const int8x16_t values = vld1q_s8(kvalues_mxfp4);
const uint8x16_t m4b = vdupq_n_u8(0x0f);
uint8x16x2_t q4bits;
int8x16x4_t q4b;
int8x16x4_t q8b;
int32x4_t prod_1;
int32x4_t prod_2;
for (; ib + 1 < nb; ib += 2) {
q4bits.val[0] = vld1q_u8(x[ib + 0].qs);
q4bits.val[1] = vld1q_u8(x[ib + 1].qs);
q8b.val[0] = vld1q_s8(y[ib + 0].qs);
q8b.val[1] = vld1q_s8(y[ib + 0].qs + 16);
q8b.val[2] = vld1q_s8(y[ib + 1].qs);
q8b.val[3] = vld1q_s8(y[ib + 1].qs + 16);
q4b.val[0] = ggml_vqtbl1q_s8(values, vandq_u8 (q4bits.val[0], m4b));
q4b.val[1] = ggml_vqtbl1q_s8(values, vshrq_n_u8(q4bits.val[0], 4));
q4b.val[2] = ggml_vqtbl1q_s8(values, vandq_u8 (q4bits.val[1], m4b));
q4b.val[3] = ggml_vqtbl1q_s8(values, vshrq_n_u8(q4bits.val[1], 4));
prod_1 = ggml_vdotq_s32(ggml_vdotq_s32(vdupq_n_s32(0), q4b.val[0], q8b.val[0]), q4b.val[1], q8b.val[1]);
prod_2 = ggml_vdotq_s32(ggml_vdotq_s32(vdupq_n_s32(0), q4b.val[2], q8b.val[2]), q4b.val[3], q8b.val[3]);
sumf +=
GGML_E8M0_TO_FP32_HALF(x[ib + 0].e) * GGML_CPU_FP16_TO_FP32(y[ib + 0].d) * vaddvq_s32(prod_1) +
GGML_E8M0_TO_FP32_HALF(x[ib + 1].e) * GGML_CPU_FP16_TO_FP32(y[ib + 1].d) * vaddvq_s32(prod_2);
}
#endif
for (; ib < nb; ++ib) {
const float d = GGML_CPU_FP16_TO_FP32(y[ib].d)*GGML_E8M0_TO_FP32_HALF(x[ib].e);
int sumi1 = 0;
int sumi2 = 0;
for (int j = 0; j < QK_MXFP4/2; ++j) {
sumi1 += y[ib].qs[j + 0] * kvalues_mxfp4[x[ib].qs[j] & 0xf];
sumi2 += y[ib].qs[j + QK_MXFP4/2] * kvalues_mxfp4[x[ib].qs[j] >> 4];
}
sumf += d * (sumi1 + sumi2);
}
*s = sumf;
}
void ggml_vec_dot_q5_0_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc) {
const int qk = QK8_0;
const int nb = n / qk;

View File

@@ -278,72 +278,6 @@ void ggml_vec_dot_q4_1_q8_1(int n, float * GGML_RESTRICT s, size_t bs, const voi
#endif
}
void ggml_vec_dot_mxfp4_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc) {
assert(nrc == 1);
UNUSED(nrc);
UNUSED(bx);
UNUSED(by);
UNUSED(bs);
assert(n % QK_MXFP4 == 0);
static_assert(QK_MXFP4 == QK8_0, "QK_MXFP4 and QK8_0 must be the same");
const block_mxfp4 * GGML_RESTRICT x = vx;
const block_q8_0 * GGML_RESTRICT y = vy;
const int nb = n / QK_MXFP4;
int ib = 0;
float sumf = 0;
#if defined(__POWER9_VECTOR__)
const vector signed char lowMask = vec_splats((signed char)0xF);
const vector unsigned char vshift4 = vec_splats((unsigned char)4);
vector float vsumf0 = vec_splats(0.0f);
vector signed char kv = vec_xl(0, (const signed char *)kvalues_mxfp4);
#pragma GCC unroll 8
for (; ib < nb; ++ib) {
__builtin_prefetch(x[ib].qs, 0, 1);
__builtin_prefetch(y[ib].qs, 0, 1);
vector float vyd = vec_splats(GGML_CPU_FP16_TO_FP32(y[ib].d) *
GGML_E8M0_TO_FP32_HALF(x[ib].e));
vector signed char q8y0 = vec_xl( 0, y[ib].qs);
vector signed char q8y1 = vec_xl(16, y[ib].qs);
vector signed char qxs = (vector signed char)vec_xl(0, x[ib].qs);
vector unsigned char lo_nibbles = (vector unsigned char)vec_and(qxs, lowMask);
vector unsigned char hi_nibbles = (vector unsigned char)vec_sr(qxs, vshift4);
vector signed char q4x0 = vec_perm(kv, kv, lo_nibbles);
vector signed char q4x1 = vec_perm(kv, kv, hi_nibbles);
vector signed short qv0 = vec_add(vec_mule(q4x0, q8y0), vec_mulo(q4x0, q8y0));
vector signed short qv1 = vec_add(vec_mule(q4x1, q8y1), vec_mulo(q4x1, q8y1));
vector signed int vsumi0 = vec_splats((int32_t)0);
vsumi0 = vec_sum4s(qv0, vsumi0);
vsumi0 = vec_sum4s(qv1, vsumi0);
vsumf0 = vec_madd(vec_ctf(vsumi0, 0), vyd, vsumf0);
}
vsumf0 = vec_add(vsumf0, vec_sld(vsumf0, vsumf0, 4));
vsumf0 = vec_add(vsumf0, vec_sld(vsumf0, vsumf0, 8));
sumf = vec_extract(vsumf0, 0);
*s = sumf;
#else
UNUSED(x);
UNUSED(y);
UNUSED(ib);
UNUSED(sumf);
ggml_vec_dot_mxfp4_q8_0_generic(n, s, bs, vx, bx, vy, by, nrc);
#endif
}
void ggml_vec_dot_q5_0_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc) {
const int qk = QK8_0;
const int nb = n / qk;

View File

@@ -66,12 +66,6 @@ static inline int hsum_i32_4(const __m128i a) {
}
#if defined(__AVX2__) || defined(__AVX512F__)
static inline __m256i mul_add_epi8(const __m256i x, const __m256i y) {
const __m256i ax = _mm256_sign_epi8(x, x);
const __m256i sy = _mm256_sign_epi8(y, x);
return _mm256_maddubs_epi16(ax, sy);
}
// spread 32 bits to 32 bytes { 0x00, 0xFF }
static inline __m256i bytes_from_bits_32(const uint8_t * x) {
uint32_t x32;
@@ -267,11 +261,6 @@ static inline __m256 quad_fp16_delta_float(const float x0, const float y0, const
return _mm256_set_m128(_mm_set1_ps(GGML_CPU_FP16_TO_FP32(x1) * GGML_CPU_FP16_TO_FP32(y1)),
_mm_set1_ps(GGML_CPU_FP16_TO_FP32(x0) * GGML_CPU_FP16_TO_FP32(y0)));
}
static inline __m256 quad_mx_delta_float(const int8_t x0, const float y0, const int8_t x1, const float y1) {
return _mm256_set_m128(_mm_set1_ps(GGML_E8M0_TO_FP32_HALF(x1) * GGML_CPU_FP16_TO_FP32(y1)),
_mm_set1_ps(GGML_E8M0_TO_FP32_HALF(x0) * GGML_CPU_FP16_TO_FP32(y0)));
}
#endif
#elif defined(__SSSE3__)
// horizontally add 4x4 floats
@@ -757,91 +746,6 @@ void ggml_vec_dot_q4_1_q8_1(int n, float * GGML_RESTRICT s, size_t bs, const voi
#endif
}
void ggml_vec_dot_mxfp4_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc) {
assert(nrc == 1);
UNUSED(nrc);
UNUSED(bx);
UNUSED(by);
UNUSED(bs);
assert(n % QK_MXFP4 == 0);
static_assert(QK_MXFP4 == QK8_0, "QK_MXFP4 and QK8_0 must be the same");
const block_mxfp4 * GGML_RESTRICT x = vx;
const block_q8_0 * GGML_RESTRICT y = vy;
const int nb = n / QK_MXFP4;
int ib = 0;
float sumf = 0;
#if defined __AVX2__
const __m128i values128 = _mm_loadu_si128((const __m128i*)kvalues_mxfp4);
const __m128i m4b = _mm_set1_epi8(0x0f);
const __m256i mone = _mm256_set1_epi16(1);
__m256 accum1 = _mm256_setzero_ps();
__m256 accum2 = _mm256_setzero_ps();
for (; ib + 1 < nb; ib += 2) {
const __m128i q4bits_1 = _mm_loadu_si128((const __m128i*)x[ib + 0].qs);
const __m128i q4bits_2 = _mm_loadu_si128((const __m128i*)x[ib + 1].qs);
const __m256i q8b_1 = _mm256_loadu_si256((const __m256i *)y[ib + 0].qs);
const __m256i q8b_2 = _mm256_loadu_si256((const __m256i *)y[ib + 1].qs);
const __m256i q4b_1 = MM256_SET_M128I(_mm_shuffle_epi8(values128, _mm_and_si128(_mm_srli_epi16(q4bits_1, 4), m4b)),
_mm_shuffle_epi8(values128, _mm_and_si128(q4bits_1, m4b)));
const __m256i q4b_2 = MM256_SET_M128I(_mm_shuffle_epi8(values128, _mm_and_si128(_mm_srli_epi16(q4bits_2, 4), m4b)),
_mm_shuffle_epi8(values128, _mm_and_si128(q4bits_2, m4b)));
const __m256i p16_1 = mul_add_epi8(q4b_1, q8b_1);
const __m256i p16_2 = mul_add_epi8(q4b_2, q8b_2);
const __m256i p_1 = _mm256_madd_epi16(p16_1, mone);
const __m256i p_2 = _mm256_madd_epi16(p16_2, mone);
accum1 = _mm256_fmadd_ps(_mm256_set1_ps(GGML_CPU_FP16_TO_FP32(y[ib + 0].d)*GGML_E8M0_TO_FP32_HALF(x[ib + 0].e)),
_mm256_cvtepi32_ps(p_1), accum1);
accum2 = _mm256_fmadd_ps(_mm256_set1_ps(GGML_CPU_FP16_TO_FP32(y[ib + 1].d)*GGML_E8M0_TO_FP32_HALF(x[ib + 1].e)),
_mm256_cvtepi32_ps(p_2), accum2);
}
sumf = hsum_float_8(_mm256_add_ps(accum1, accum2));
#elif defined __AVX__
const __m128i values128 = _mm_loadu_si128((const __m128i*)kvalues_mxfp4);
const __m128i m4b = _mm_set1_epi8(0x0f);
__m256 accum = _mm256_setzero_ps();
for (; ib + 1 < nb; ib += 2) {
const __m128i q4bits_1 = _mm_loadu_si128((const __m128i *)x[ib + 0].qs);
const __m128i q4bits_2 = _mm_loadu_si128((const __m128i *)x[ib + 1].qs);
const __m128i q8b_1_0 = _mm_loadu_si128((const __m128i *)y[ib + 0].qs);
const __m128i q8b_1_1 = _mm_loadu_si128((const __m128i *)y[ib + 0].qs + 1);
const __m128i q8b_2_0 = _mm_loadu_si128((const __m128i *)y[ib + 1].qs);
const __m128i q8b_2_1 = _mm_loadu_si128((const __m128i *)y[ib + 1].qs + 1);
const __m128i q4b_1_0 = _mm_shuffle_epi8(values128, _mm_and_si128(q4bits_1, m4b));
const __m128i q4b_1_1 = _mm_shuffle_epi8(values128, _mm_and_si128(_mm_srli_epi16(q4bits_1, 4), m4b));
const __m128i q4b_2_0 = _mm_shuffle_epi8(values128, _mm_and_si128(q4bits_2, m4b));
const __m128i q4b_2_1 = _mm_shuffle_epi8(values128, _mm_and_si128(_mm_srli_epi16(q4bits_2, 4), m4b));
const __m256 p = mul_sum_i8_quad_float(q4b_1_0, q4b_1_1, q4b_2_0, q4b_2_1, q8b_1_0, q8b_1_1, q8b_2_0, q8b_2_1);
const __m256 deltas = quad_mx_delta_float(x[ib].e, y[ib].d, x[ib + 1].e, y[ib + 1].d);
accum = _mm256_add_ps(_mm256_mul_ps(deltas, p), accum);
}
sumf = hsum_float_8(accum);
#endif
for (; ib < nb; ++ib) {
const float d = GGML_CPU_FP16_TO_FP32(y[ib].d)*GGML_E8M0_TO_FP32_HALF(x[ib].e);
int sumi1 = 0;
int sumi2 = 0;
for (int j = 0; j < QK_MXFP4/2; ++j) {
sumi1 += y[ib].qs[j + 0] * kvalues_mxfp4[x[ib].qs[j] & 0xf];
sumi2 += y[ib].qs[j + QK_MXFP4/2] * kvalues_mxfp4[x[ib].qs[j] >> 4];
}
sumf += d * (sumi1 + sumi2);
}
*s = sumf;
}
void ggml_vec_dot_q5_0_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc) {
const int qk = QK8_0;
const int nb = n / qk;
@@ -3302,6 +3206,14 @@ void ggml_vec_dot_iq3_s_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const vo
#endif
}
#if defined(__AVX2__)
static inline __m256i mul_add_epi8(const __m256i x, const __m256i y) {
const __m256i ax = _mm256_sign_epi8(x, x);
const __m256i sy = _mm256_sign_epi8(y, x);
return _mm256_maddubs_epi16(ax, sy);
}
#endif
void ggml_vec_dot_iq1_s_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc) {
assert(n % QK_K == 0);
assert(nrc == 1);

File diff suppressed because it is too large Load Diff

View File

@@ -253,12 +253,6 @@ static const struct ggml_type_traits_cpu type_traits_cpu[GGML_TYPE_COUNT] = {
.vec_dot_type = GGML_TYPE_Q8_1,
.nrows = 1,
},
[GGML_TYPE_MXFP4] = {
.from_float = quantize_row_mxfp4,
.vec_dot = ggml_vec_dot_mxfp4_q8_0,
.vec_dot_type = GGML_TYPE_Q8_0,
.nrows = 1,
},
[GGML_TYPE_Q2_K] = {
.from_float = quantize_row_q2_K,
.vec_dot = ggml_vec_dot_q2_K_q8_K,
@@ -1676,10 +1670,6 @@ static void ggml_compute_forward(struct ggml_compute_params * params, struct ggm
{
ggml_compute_forward_add(params, tensor);
} break;
case GGML_OP_ADD_ID:
{
ggml_compute_forward_add_id(params, tensor);
} break;
case GGML_OP_ADD1:
{
ggml_compute_forward_add1(params, tensor);
@@ -1934,7 +1924,7 @@ static void ggml_compute_forward(struct ggml_compute_params * params, struct ggm
} break;
case GGML_OP_FLASH_ATTN_EXT:
{
ggml_compute_forward_flash_attn_ext(params, tensor);
ggml_compute_forward_flash_attn_ext(params, tensor->src[0], tensor->src[1], tensor->src[2], tensor->src[3], tensor);
} break;
case GGML_OP_FLASH_ATTN_BACK:
{
@@ -2022,11 +2012,6 @@ static void ggml_compute_forward(struct ggml_compute_params * params, struct ggm
ggml_compute_forward_opt_step_adamw(params, tensor);
}
break;
case GGML_OP_OPT_STEP_SGD:
{
ggml_compute_forward_opt_step_sgd(params, tensor);
}
break;
case GGML_OP_NONE:
{
// nop
@@ -2126,7 +2111,6 @@ static int ggml_get_n_tasks(struct ggml_tensor * node, int n_threads) {
case GGML_OP_DUP:
case GGML_OP_CONT:
case GGML_OP_ADD:
case GGML_OP_ADD_ID:
case GGML_OP_ADD1:
case GGML_OP_ACC:
{
@@ -2188,7 +2172,6 @@ static int ggml_get_n_tasks(struct ggml_tensor * node, int n_threads) {
case GGML_GLU_OP_REGLU:
case GGML_GLU_OP_GEGLU:
case GGML_GLU_OP_SWIGLU:
case GGML_GLU_OP_SWIGLU_OAI:
case GGML_GLU_OP_GEGLU_ERF:
case GGML_GLU_OP_GEGLU_QUICK:
{
@@ -2330,7 +2313,6 @@ static int ggml_get_n_tasks(struct ggml_tensor * node, int n_threads) {
case GGML_OP_CROSS_ENTROPY_LOSS:
case GGML_OP_CROSS_ENTROPY_LOSS_BACK:
case GGML_OP_OPT_STEP_ADAMW:
case GGML_OP_OPT_STEP_SGD:
{
n_tasks = n_threads;
} break;
@@ -2691,7 +2673,6 @@ struct ggml_cplan ggml_graph_plan(
}
} break;
case GGML_OP_ADD:
case GGML_OP_ADD_ID:
case GGML_OP_ADD1:
{
if (ggml_is_quantized(node->src[0]->type)) {

View File

@@ -35,7 +35,7 @@
// ggml-backend interface
std::vector<ggml_backend_buffer_type_t> & ggml_backend_cpu_get_extra_buffer_types() {
std::vector<ggml_backend_buffer_type_t>& ggml_backend_cpu_get_extra_buffers_type() {
static std::vector<ggml_backend_buffer_type_t> bufts = []() {
std::vector<ggml_backend_buffer_type_t> bufts;
@@ -57,6 +57,8 @@ std::vector<ggml_backend_buffer_type_t> & ggml_backend_cpu_get_extra_buffer_type
}
#endif
bufts.push_back(NULL);
return bufts;
}();
@@ -64,20 +66,14 @@ std::vector<ggml_backend_buffer_type_t> & ggml_backend_cpu_get_extra_buffer_type
}
static ggml_backend_buffer_type_t * ggml_backend_cpu_device_get_extra_buffers_type(ggml_backend_dev_t device) {
static std::vector<ggml_backend_buffer_type_t> extra_bufts = [] {
std::vector<ggml_backend_buffer_type_t> bufts = ggml_backend_cpu_get_extra_buffer_types();
bufts.push_back(nullptr);
return bufts;
}();
return extra_bufts.data();
return ggml_backend_cpu_get_extra_buffers_type().data();
GGML_UNUSED(device);
}
static bool ggml_backend_cpu_is_extra_buffer_type(ggml_backend_buffer_type_t buft) {
for (auto * extra : ggml_backend_cpu_get_extra_buffer_types()) {
if (extra == buft) {
for (auto * extra : ggml_backend_cpu_get_extra_buffers_type()) {
if (extra && extra == buft) {
return true;
}
}
@@ -214,10 +210,10 @@ ggml_backend_t ggml_backend_cpu_init(void) {
ctx->abort_callback_data = NULL;
ggml_backend_t cpu_backend = new ggml_backend {
/* .guid = */ ggml_backend_cpu_guid(),
/* .iface = */ ggml_backend_cpu_i,
/* .device = */ ggml_backend_reg_dev_get(ggml_backend_cpu_reg(), 0),
/* .context = */ ctx,
/* .guid = */ ggml_backend_cpu_guid(),
/* .interface = */ ggml_backend_cpu_i,
/* .device = */ ggml_backend_reg_dev_get(ggml_backend_cpu_reg(), 0),
/* .context = */ ctx,
};
if (cpu_backend == NULL) {
@@ -401,13 +397,20 @@ static bool ggml_backend_cpu_device_supports_op(ggml_backend_dev_t dev, const st
return true;
}
// check extra buffer types
// note: only the first sources are checked for extra buffer types to reduce overhead, increase if necessary
for (int i = 0; i < 4; i++) {
if (op->src[i] && op->src[i]->buffer &&
ggml_backend_cpu_is_extra_buffer_type(op->src[i]->buffer->buft)) {
auto * buf_extra = (ggml::cpu::extra_buffer_type *) op->src[i]->buffer->buft->context;
return buf_extra->supports_op(dev, op);
// extra_buffer_op?
for (auto extra : ggml_backend_cpu_get_extra_buffers_type()) {
if (extra) {
auto buf_extra = (ggml::cpu::extra_buffer_type*) extra->context;
if (buf_extra && buf_extra->supports_op(dev, op)) {
return true;
}
}
}
// the other case need host buffer.
for (int i = 0; i < GGML_MAX_SRC; i++) {
if (op->src[i] && op->src[i]->buffer && !ggml_backend_buft_is_host(op->src[i]->buffer->buft)) {
return false;
}
}

View File

@@ -259,10 +259,7 @@ class tensor_traits : public ggml::cpu::tensor_traits {
const int64_t m_start = 0;
const int64_t n_step = static_cast<int64_t>(kernel->get_n_step());
int64_t num_threads = KAI_MIN(n / n_step, nth);
if (num_threads <= 0) {
num_threads = 1;
}
const int64_t num_threads = KAI_MIN(n / n_step, nth);
if (ith < num_threads) {
const int64_t num_n_per_thread0 = round_down(n / num_threads, n_step);
@@ -312,8 +309,7 @@ class tensor_traits : public ggml::cpu::tensor_traits {
GGML_ASSERT(kernel);
const int ith = params->ith;
const int nth_raw = params->nth;
const int nth = nth_raw > 0 ? nth_raw : 1;
const int nth = params->nth;
const size_t k = ne00;
const size_t m = ne11;
@@ -331,12 +327,9 @@ class tensor_traits : public ggml::cpu::tensor_traits {
const size_t num_n_per_thread = kai_roundup(kai_roundup(n, nth) / nth, n_step);
const size_t n_start = ith * num_n_per_thread;
size_t n_to_process = 0;
if (n_start < n) {
n_to_process = num_n_per_thread;
if ((n_start + n_to_process) > n) {
n_to_process = n - n_start;
}
size_t n_to_process = num_n_per_thread;
if ((n_start + n_to_process) > n) {
n_to_process = n - n_start;
}
// Calculate number of columns to be processed per thread
@@ -368,10 +361,8 @@ class tensor_traits : public ggml::cpu::tensor_traits {
const void* lhs_ptr = (const void*)((const char *)lhs_packed + lhs_packed_offset);
float *dst_ptr = reinterpret_cast<float *>(static_cast<uint8_t *>(dst->data) + dst_offset);
if (n_to_process > 0) {
variant_call<void>(kernel->run_kernel, m, n_to_process, k, QK4_0, lhs_ptr, rhs_ptr, dst_ptr, dst_stride,
sizeof(float), -FLT_MAX, FLT_MAX);
}
variant_call<void>(kernel->run_kernel, m, n_to_process, k, QK4_0, lhs_ptr, rhs_ptr, dst_ptr, dst_stride,
sizeof(float), -FLT_MAX, FLT_MAX);
return true;
}

View File

@@ -8,7 +8,6 @@
#include "vec.h"
#include <float.h>
#include <algorithm>
// ggml_compute_forward_dup
@@ -1284,7 +1283,6 @@ void ggml_compute_forward_add(
case GGML_TYPE_Q5_0:
case GGML_TYPE_Q5_1:
case GGML_TYPE_Q8_0:
case GGML_TYPE_MXFP4:
case GGML_TYPE_Q2_K:
case GGML_TYPE_Q3_K:
case GGML_TYPE_Q4_K:
@@ -1311,77 +1309,6 @@ void ggml_compute_forward_add(
}
}
// ggml_compute_forward_add_id
static void ggml_compute_forward_add_id_f32(
const ggml_compute_params * params,
ggml_tensor * dst) {
const ggml_tensor * src0 = dst->src[0];
const ggml_tensor * src1 = dst->src[1];
const ggml_tensor * src2 = dst->src[2];
GGML_ASSERT(dst->type == GGML_TYPE_F32);
GGML_ASSERT(src0->type == GGML_TYPE_F32);
GGML_ASSERT(src1->type == GGML_TYPE_F32);
GGML_ASSERT(src2->type == GGML_TYPE_I32);
GGML_ASSERT(src0->nb[0] == sizeof(float));
GGML_ASSERT(src1->nb[0] == sizeof(float));
const int ith = params->ith;
const int nth = params->nth;
const int nr = ggml_nrows(src0);
GGML_TENSOR_TERNARY_OP_LOCALS
GGML_ASSERT( nb0 == sizeof(float));
GGML_ASSERT(nb10 == sizeof(float));
// rows per thread
const int dr = (nr + nth - 1)/nth;
// row range for this thread
const int ir0 = dr*ith;
const int ir1 = MIN(ir0 + dr, nr);
for (int ir = ir0; ir < ir1; ++ir) {
// src0 indices
const int i3 = ir/(ne2*ne1);
const int i2 = (ir - i3*ne2*ne1)/ne1;
const int i1 = (ir - i3*ne2*ne1 - i2*ne1);
// src1 indices
const int i11 = *(int32_t *) ((char *) src2->data + i1*nb20 + i2*nb21);
GGML_ASSERT(i11 >= 0 && i11 < ne11);
ggml_vec_add_f32(ne0,
(float *) ((char *) dst->data + i3*nb3 + i2*nb2 + i1*nb1 ),
(float *) ((char *) src0->data + i3*nb03 + i2*nb02 + i1*nb01),
(float *) ((char *) src1->data + i11*nb11));
}
}
void ggml_compute_forward_add_id(
const ggml_compute_params * params,
ggml_tensor * dst) {
const ggml_tensor * src0 = dst->src[0];
switch (src0->type) {
case GGML_TYPE_F32:
{
ggml_compute_forward_add_id_f32(params, dst);
} break;
default:
{
GGML_ABORT("unsupported type for ggml_compute_forward_add_id: %s", ggml_type_name(src0->type));
}
}
}
// ggml_compute_forward_add1
static void ggml_compute_forward_add1_f32(
@@ -1733,7 +1660,6 @@ void ggml_compute_forward_add1(
case GGML_TYPE_Q5_1:
case GGML_TYPE_Q8_0:
case GGML_TYPE_Q8_1:
case GGML_TYPE_MXFP4:
case GGML_TYPE_Q2_K:
case GGML_TYPE_Q3_K:
case GGML_TYPE_Q4_K:
@@ -1861,7 +1787,6 @@ void ggml_compute_forward_acc(
case GGML_TYPE_Q5_1:
case GGML_TYPE_Q8_0:
case GGML_TYPE_Q8_1:
case GGML_TYPE_MXFP4:
case GGML_TYPE_Q2_K:
case GGML_TYPE_Q3_K:
case GGML_TYPE_Q4_K:
@@ -3689,93 +3614,6 @@ static void ggml_compute_forward_swiglu(
}
}
// ggml_compute_forward_swiglu_oai
static void ggml_compute_forward_swiglu_oai_f32(
const ggml_compute_params * params,
ggml_tensor * dst) {
const ggml_tensor * src0 = dst->src[0];
const ggml_tensor * src1 = dst->src[1];
char * src0_d = (char *) src0->data;
char * src1_d = (char *) (src1 ? src1->data : src0->data);
const size_t src0_o = src0->nb[1];
const size_t src1_o = src1 ? src1->nb[1] : src0->nb[1];
GGML_ASSERT(ggml_is_contiguous_1(src0));
GGML_ASSERT(ggml_is_contiguous_1(dst));
if (src1) {
GGML_ASSERT(ggml_is_contiguous_1(src1));
GGML_ASSERT(src0->type == src1->type);
}
const int ith = params->ith;
const int nth = params->nth;
const int nc = src1 ? src0->ne[0] : src0->ne[0] / 2;
const int nr = ggml_nrows(src0);
GGML_ASSERT(dst->ne[0] == nc);
GGML_ASSERT(ggml_nrows(dst) == nr);
const int32_t swapped = ggml_get_op_params_i32(dst, 1);
const float alpha = ggml_get_op_params_f32(dst, 2);
const float limit = ggml_get_op_params_f32(dst, 3);
// rows per thread
const int dr = (nr + nth - 1)/nth;
// row range for this thread
const int ir0 = dr*ith;
const int ir1 = MIN(ir0 + dr, nr);
for (int i1 = ir0; i1 < ir1; i1++) {
float * src0_p = (float *) (src0_d + i1*src0_o);
float * src1_p = (float *) (src1_d + i1*src1_o);
float * dst_p = (float *) ((char *) dst->data + i1*(dst->nb[1]));
if (!src1) {
src0_p += swapped ? nc : 0;
src1_p += swapped ? 0 : nc;
}
for (int k = 0; k < nc; k++) {
const float x = std::min(src0_p[k], limit);
const float y = std::clamp(src1_p[k], -limit, limit);
const float out_glu = x / (1.f + expf(alpha * (-x)));
dst_p[k] = out_glu * (y + 1.f);
}
#ifndef NDEBUG
for (int k = 0; k < nc; k++) {
const float x = dst_p[k];
GGML_UNUSED(x);
assert(!isnan(x));
assert(!isinf(x));
}
#endif
}
}
static void ggml_compute_forward_swiglu_oai(
const ggml_compute_params * params,
ggml_tensor * dst) {
const ggml_tensor * src0 = dst->src[0];
switch (src0->type) {
case GGML_TYPE_F32:
{
ggml_compute_forward_swiglu_oai_f32(params, dst);
} break;
default:
{
GGML_ABORT("fatal error");
}
}
}
// ggml_compute_forward_geglu_erf
static void ggml_compute_forward_geglu_erf_f32(
@@ -4761,7 +4599,6 @@ void ggml_compute_forward_out_prod(
case GGML_TYPE_Q5_0:
case GGML_TYPE_Q5_1:
case GGML_TYPE_Q8_0:
case GGML_TYPE_MXFP4:
case GGML_TYPE_Q2_K:
case GGML_TYPE_Q3_K:
case GGML_TYPE_Q4_K:
@@ -5036,7 +4873,6 @@ void ggml_compute_forward_set(
case GGML_TYPE_Q5_1:
case GGML_TYPE_Q8_0:
case GGML_TYPE_Q8_1:
case GGML_TYPE_MXFP4:
case GGML_TYPE_Q2_K:
case GGML_TYPE_Q3_K:
case GGML_TYPE_Q4_K:
@@ -5298,7 +5134,6 @@ void ggml_compute_forward_get_rows(
case GGML_TYPE_Q5_1:
case GGML_TYPE_Q8_0:
case GGML_TYPE_Q8_1:
case GGML_TYPE_MXFP4:
case GGML_TYPE_Q2_K:
case GGML_TYPE_Q3_K:
case GGML_TYPE_Q4_K:
@@ -5688,7 +5523,6 @@ static void ggml_compute_forward_soft_max_f32(
const ggml_tensor * src0 = dst->src[0];
const ggml_tensor * src1 = dst->src[1];
const ggml_tensor * src2 = dst->src[2];
assert(ggml_is_contiguous(dst));
assert(ggml_are_same_shape(src0, dst));
@@ -5723,9 +5557,6 @@ static void ggml_compute_forward_soft_max_f32(
const bool use_f16 = (src1 && src1->type == GGML_TYPE_F16);
// sinks
const float * sk = src2 ? (float *)((char *) src2->data) : nullptr;
for (int64_t i03 = 0; i03 < ne03; i03++) {
for (int64_t i02 = 0; i02 < ne02; i02++) {
for (int64_t i01 = ith; i01 < ne01; i01 += nth) {
@@ -5768,18 +5599,9 @@ static void ggml_compute_forward_soft_max_f32(
float max = -INFINITY;
ggml_vec_max_f32(ne00, &max, wp);
// if we have sinks, make a correction as if they were included in the softmax
if (sk) {
max = MAX(max, sk[i02]);
}
ggml_float sum = ggml_vec_soft_max_f32(ne00, dp, wp, max);
assert(sum > 0.0);
if (sk) {
sum += (ggml_float) expf(sk[i02] - max);
}
sum = 1.0/sum;
ggml_vec_scale_f32(ne00, dp, sum);
@@ -6014,7 +5836,6 @@ void ggml_compute_forward_clamp(
case GGML_TYPE_Q5_1:
case GGML_TYPE_Q8_0:
case GGML_TYPE_Q8_1:
case GGML_TYPE_MXFP4:
case GGML_TYPE_Q2_K:
case GGML_TYPE_Q3_K:
case GGML_TYPE_Q4_K:
@@ -8168,14 +7989,12 @@ void ggml_compute_forward_argsort(
static void ggml_compute_forward_flash_attn_ext_f16(
const ggml_compute_params * params,
const ggml_tensor * q,
const ggml_tensor * k,
const ggml_tensor * v,
const ggml_tensor * mask,
ggml_tensor * dst) {
const ggml_tensor * q = dst->src[0];
const ggml_tensor * k = dst->src[1];
const ggml_tensor * v = dst->src[2];
const ggml_tensor * mask = dst->src[3];
const ggml_tensor * sinks = dst->src[4];
GGML_TENSOR_LOCALS(int64_t, neq, q, ne)
GGML_TENSOR_LOCALS(size_t, nbq, q, nb)
GGML_TENSOR_LOCALS(int64_t, nek, k, ne)
@@ -8370,23 +8189,6 @@ static void ggml_compute_forward_flash_attn_ext_f16(
}
}
// sinks
if (sinks) {
const float s = ((float *)((char *) sinks->data))[h];
float ms = 1.0f;
float vs = 1.0f;
if (s > M) {
ms = expf(M - s);
ggml_vec_scale_f32(DV, VKQ32, ms);
} else {
vs = expf(s - M);
}
S = S*ms + vs;
}
// V /= S
const float S_inv = 1.0f/S;
ggml_vec_scale_f32(DV, VKQ32, S_inv);
@@ -8406,13 +8208,17 @@ static void ggml_compute_forward_flash_attn_ext_f16(
void ggml_compute_forward_flash_attn_ext(
const ggml_compute_params * params,
const ggml_tensor * q,
const ggml_tensor * k,
const ggml_tensor * v,
const ggml_tensor * mask,
ggml_tensor * dst) {
switch (dst->op_params[3]) {
case GGML_PREC_DEFAULT:
case GGML_PREC_F32:
{
// uses F32 accumulators
ggml_compute_forward_flash_attn_ext_f16(params, dst);
ggml_compute_forward_flash_attn_ext_f16(params, q, k, v, mask, dst);
} break;
default:
{
@@ -9274,10 +9080,6 @@ void ggml_compute_forward_glu(
{
ggml_compute_forward_swiglu(params, dst);
} break;
case GGML_GLU_OP_SWIGLU_OAI:
{
ggml_compute_forward_swiglu_oai(params, dst);
} break;
case GGML_GLU_OP_GEGLU_ERF:
{
ggml_compute_forward_geglu_erf(params, dst);
@@ -10330,7 +10132,6 @@ static void ggml_compute_forward_opt_step_adamw_f32(
const int ir1 = MIN(ir0 + dr, nr);
const float * adamw_params_ptr = ggml_get_data_f32(adamw_params);
const float alpha = adamw_params_ptr[0];
const float beta1 = adamw_params_ptr[1];
const float beta2 = adamw_params_ptr[2];
@@ -10338,7 +10139,7 @@ static void ggml_compute_forward_opt_step_adamw_f32(
const float wd = adamw_params_ptr[4];
const float beta1h = adamw_params_ptr[5];
const float beta2h = adamw_params_ptr[6];
const float keep = 1.f - alpha * wd;
for (int ir = ir0; ir < ir1; ++ir) {
const int64_t i03 = ir/(ne02*ne01);
const int64_t i02 = (ir - i03*ne02*ne01)/ne01;
@@ -10361,7 +10162,7 @@ static void ggml_compute_forward_opt_step_adamw_f32(
// The weight decay is applied independently of the Adam momenta m and v.
// This is NOT equivalent to l2 regularization that adds w[i00]*w[i00] to the loss.
// See: https://arxiv.org/pdf/1711.05101v3.pdf
w[i00] = w[i00] * keep - alpha * mh / vh;
w[i00] = w[i00]*(1.0f - alpha*wd) - alpha*mh/vh;
}
}
}
@@ -10383,63 +10184,3 @@ void ggml_compute_forward_opt_step_adamw(
}
}
}
static void ggml_compute_forward_opt_step_sgd_f32(const ggml_compute_params * params, ggml_tensor * dst) {
const ggml_tensor * src0 = dst->src[0];
const ggml_tensor * src0_grad = dst->src[1];
const ggml_tensor * sgd_params = dst->src[2];
GGML_ASSERT(ggml_are_same_shape(src0, src0_grad));
GGML_ASSERT(ggml_nelements(sgd_params) == 2);
const int ith = params->ith;
const int nth = params->nth;
const int nr = ggml_nrows(src0);
GGML_TENSOR_UNARY_OP_LOCALS
GGML_ASSERT(nb00 == sizeof(float));
// rows per thread
const int dr = (nr + nth - 1) / nth;
// row range for this thread
const int ir0 = dr * ith;
const int ir1 = MIN(ir0 + dr, nr);
// using adamw param subset we care about - alpha, wd - could have a separate struct
const float * sgd_params_ptr = ggml_get_data_f32(sgd_params);
const float alpha = sgd_params_ptr[0];
const float keep = 1.f - alpha * sgd_params_ptr[1];
for (int ir = ir0; ir < ir1; ++ir) {
const int64_t i03 = ir / (ne02 * ne01);
const int64_t i02 = (ir - i03 * ne02 * ne01) / ne01;
const int64_t i01 = (ir - i03 * ne02 * ne01 - i02 * ne01);
const size_t offset = i03 * nb03 + i02 * nb02 + i01 * nb01;
float * w = (float *) ((char *) src0->data + offset); // weight
const float * g = (const float *) ((const char *) src0_grad->data + offset); // grad
for (int i00 = 0; i00 < ne00; ++i00) {
w[i00] = w[i00] * keep - alpha * g[i00];
}
}
}
void ggml_compute_forward_opt_step_sgd(const ggml_compute_params * params, ggml_tensor * dst) {
const ggml_tensor * src0 = dst->src[0];
switch (src0->type) {
case GGML_TYPE_F32:
{
ggml_compute_forward_opt_step_sgd_f32(params, dst);
}
break;
default:
{
GGML_ABORT("fatal error - sgd is F32 only");
}
}
}

View File

@@ -29,7 +29,6 @@ extern "C" {
void ggml_compute_forward_dup(const struct ggml_compute_params * params, struct ggml_tensor * dst);
void ggml_compute_forward_add(const struct ggml_compute_params * params, struct ggml_tensor * dst);
void ggml_compute_forward_add_id(const struct ggml_compute_params * params, struct ggml_tensor * dst);
void ggml_compute_forward_add1(const struct ggml_compute_params * params, struct ggml_tensor * dst);
void ggml_compute_forward_acc(const struct ggml_compute_params * params, struct ggml_tensor * dst);
void ggml_compute_forward_sum(const struct ggml_compute_params * params, struct ggml_tensor * dst);
@@ -83,7 +82,13 @@ void ggml_compute_forward_arange(const struct ggml_compute_params * params, stru
void ggml_compute_forward_timestep_embedding(const struct ggml_compute_params * params, struct ggml_tensor * dst);
void ggml_compute_forward_argsort(const struct ggml_compute_params * params, struct ggml_tensor * dst);
void ggml_compute_forward_leaky_relu(const struct ggml_compute_params * params, struct ggml_tensor * dst);
void ggml_compute_forward_flash_attn_ext(const struct ggml_compute_params * params, struct ggml_tensor * dst);
void ggml_compute_forward_flash_attn_ext(
const struct ggml_compute_params * params,
const struct ggml_tensor * q,
const struct ggml_tensor * k,
const struct ggml_tensor * v,
const struct ggml_tensor * mask,
struct ggml_tensor * dst);
void ggml_compute_forward_flash_attn_back(
const struct ggml_compute_params * params,
const bool masked,
@@ -107,7 +112,7 @@ void ggml_compute_forward_cross_entropy_loss(const struct ggml_compute_params *
void ggml_compute_forward_cross_entropy_loss_back(const struct ggml_compute_params * params, struct ggml_tensor * dst);
void ggml_compute_forward_opt_step_adamw(const struct ggml_compute_params * params, struct ggml_tensor * dst);
void ggml_compute_forward_mul_mat(const struct ggml_compute_params * params, struct ggml_tensor * dst);
void ggml_compute_forward_opt_step_sgd(const struct ggml_compute_params * params, struct ggml_tensor * dst);
#ifdef __cplusplus
}
#endif

View File

@@ -46,10 +46,6 @@ void quantize_row_q8_1_generic(const float * GGML_RESTRICT x, void * GGML_RESTRI
quantize_row_q8_1_ref(x, y, k);
}
void quantize_row_mxfp4(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k) {
quantize_row_mxfp4_ref(x, y, k);
}
//
// 2-6 bit quantization in super-blocks
//
@@ -185,37 +181,6 @@ void ggml_vec_dot_q4_1_q8_1_generic(int n, float * GGML_RESTRICT s, size_t bs, c
*s = sumf;
}
void ggml_vec_dot_mxfp4_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc) {
assert(nrc == 1);
UNUSED(nrc);
UNUSED(bx);
UNUSED(by);
UNUSED(bs);
assert(n % QK_MXFP4 == 0);
static_assert(QK_MXFP4 == QK8_0, "QK_MXFP4 and QK8_0 must be the same");
const block_mxfp4 * GGML_RESTRICT x = vx;
const block_q8_0 * GGML_RESTRICT y = vy;
const int nb = n / QK_MXFP4;
int ib = 0;
float sumf = 0;
for (; ib < nb; ++ib) {
const float d = GGML_CPU_FP16_TO_FP32(y[ib].d)*GGML_E8M0_TO_FP32_HALF(x[ib].e);
int sumi1 = 0;
int sumi2 = 0;
for (int j = 0; j < QK_MXFP4/2; ++j) {
sumi1 += y[ib].qs[j + 0] * kvalues_mxfp4[x[ib].qs[j] & 0xf];
sumi2 += y[ib].qs[j + QK_MXFP4/2] * kvalues_mxfp4[x[ib].qs[j] >> 4];
}
sumf += d * (sumi1 + sumi2);
}
*s = sumf;
}
void ggml_vec_dot_q5_0_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc) {
const int qk = QK8_0;
const int nb = n / qk;

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@@ -19,8 +19,6 @@ void quantize_row_q5_1(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, in
void quantize_row_q8_0(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_q8_1(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_mxfp4(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_q2_K(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_q3_K(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_q4_K(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
@@ -41,8 +39,6 @@ void ggml_vec_dot_q5_0_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const voi
void ggml_vec_dot_q5_1_q8_1(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q8_0_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_mxfp4_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q2_K_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q3_K_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q4_K_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
@@ -71,12 +67,8 @@ void ggml_vec_dot_q4_1_q8_1_generic(int n, float * GGML_RESTRICT s, size_t bs, c
void ggml_vec_dot_q5_0_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q5_1_q8_1_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q8_0_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_mxfp4_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_tq1_0_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_tq2_0_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q2_K_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q3_K_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q4_K_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);

View File

@@ -206,9 +206,8 @@ void ggml_gemv_q4_0_4x4_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs,
const int ncols_interleaved = 4;
const int blocklen = 4;
assert(nr == 1);
assert(n % qk == 0);
assert(nc % ncols_interleaved == 0);
assert (n % qk == 0);
assert (nc % ncols_interleaved == 0);
UNUSED(s);
UNUSED(bs);
@@ -308,28 +307,30 @@ void ggml_gemv_q4_0_8x8_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs,
UNUSED(ncols_interleaved);
UNUSED(blocklen);
float sumf[8];
int sumi;
{
float sumf[8];
int sumi;
const block_q8_0 * a_ptr = (const block_q8_0 *) vy;
for (int x = 0; x < nc / ncols_interleaved; x++) {
const block_q4_0x8 * b_ptr = (const block_q4_0x8 *) vx + (x * nb);
const block_q8_0 * a_ptr = (const block_q8_0 *) vy;
for (int x = 0; x < nc / ncols_interleaved; x++) {
const block_q4_0x8 * b_ptr = (const block_q4_0x8 *) vx + (x * nb);
for (int j = 0; j < ncols_interleaved; j++) sumf[j] = 0.0;
for (int l = 0; l < nb; l++) {
for (int k = 0; k < (qk / (2 * blocklen)); k++) {
for (int j = 0; j < ncols_interleaved; j++) {
sumi = 0;
for (int i = 0; i < blocklen; ++i) {
const int v0 = (int8_t) (b_ptr[l].qs[k * ncols_interleaved * blocklen + j * blocklen + i] << 4);
const int v1 = (int8_t) (b_ptr[l].qs[k * ncols_interleaved * blocklen + j * blocklen + i] & 0xF0);
sumi += ((v0 * a_ptr[l].qs[k * blocklen + i]) + (v1 * a_ptr[l].qs[k * blocklen + i + qk / 2])) >> 4;
for (int j = 0; j < ncols_interleaved; j++) sumf[j] = 0.0;
for (int l = 0; l < nb; l++) {
for (int k = 0; k < (qk / (2 * blocklen)); k++) {
for (int j = 0; j < ncols_interleaved; j++) {
sumi = 0;
for (int i = 0; i < blocklen; ++i) {
const int v0 = (int8_t) (b_ptr[l].qs[k * ncols_interleaved * blocklen + j * blocklen + i] << 4);
const int v1 = (int8_t) (b_ptr[l].qs[k * ncols_interleaved * blocklen + j * blocklen + i] & 0xF0);
sumi += ((v0 * a_ptr[l].qs[k * blocklen + i]) + (v1 * a_ptr[l].qs[k * blocklen + i + qk / 2])) >> 4;
}
sumf[j] += sumi * GGML_CPU_FP16_TO_FP32(b_ptr[l].d[j]) * GGML_CPU_FP16_TO_FP32(a_ptr[l].d);
}
sumf[j] += sumi * GGML_CPU_FP16_TO_FP32(b_ptr[l].d[j]) * GGML_CPU_FP16_TO_FP32(a_ptr[l].d);
}
}
for (int j = 0; j < ncols_interleaved; j++) s[x * ncols_interleaved + j] = sumf[j];
}
for (int j = 0; j < ncols_interleaved; j++) s[x * ncols_interleaved + j] = sumf[j];
}
}
@@ -411,11 +412,11 @@ void ggml_gemv_q4_K_8x8_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs,
}
}
void ggml_gemv_q2_K_8x8_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc) {
const int qk = QK_K;
void ggml_gemv_iq4_nl_4x4_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc) {
const int qk = QK8_0;
const int nb = n / qk;
const int ncols_interleaved = 8;
const int blocklen = 8;
const int ncols_interleaved = 4;
const int blocklen = 4;
assert (n % qk == 0);
assert (nc % ncols_interleaved == 0);
@@ -430,136 +431,30 @@ void ggml_gemv_q2_K_8x8_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs,
UNUSED(ncols_interleaved);
UNUSED(blocklen);
float sumf[8];
float sum_minf[8];
int sumi1,sumi2,sumi3,sumi4;
int sumi;
{
float sumf[4];
int sumi;
const block_q8_K * a_ptr = (const block_q8_K *)vy;
for(int x = 0; x < nc / ncols_interleaved; x++) {
const block_q2_Kx8 * b_ptr = (const block_q2_Kx8 *) vx + (x * nb);
for (int j = 0; j < ncols_interleaved; j++) {
sumf[j] = 0.0;
sum_minf[j] = 0.0;
}
for (int l = 0; l < nb; l++) {
for (int k = 0; k < (qk / (4 * blocklen)); k++) {
const uint8_t *scales_0 = b_ptr[l].scales + (k / 4) * 64 ;
const uint8_t *scales_1 = b_ptr[l].scales + (k / 4) * 64 + 16;
const uint8_t *scales_2 = b_ptr[l].scales + (k / 4) * 64 + 32;
const uint8_t *scales_3 = b_ptr[l].scales + (k / 4) * 64 + 48;
for (int j = 0; j < ncols_interleaved; j++) {
sumi1 = 0;
sumi2 = 0;
sumi3 = 0;
sumi4 = 0;
sumi = 0;
int offset = ((k / 2) % 2) + j * 2;
for (int i = 0; i < blocklen; ++i){
const int v0 = (int8_t) (b_ptr[l].qs[k * ncols_interleaved * blocklen + j * blocklen + i] & 3);
const int v1 = (int8_t) ((b_ptr[l].qs[k * ncols_interleaved * blocklen + j * blocklen + i] >> 2 ) & 3);
const int v2 = (int8_t) ((b_ptr[l].qs[k * ncols_interleaved * blocklen + j * blocklen + i] >> 4 ) & 3);
const int v3 = (int8_t) ((b_ptr[l].qs[k * ncols_interleaved * blocklen + j * blocklen + i] >> 6 ) & 3);
sumi1 = (v0 * a_ptr[l].qs[(k >> 2) * 128 + (k % 4) * blocklen + i]);
sumi2 = (v1 * a_ptr[l].qs[(k >> 2) * 128 + (k % 4) * blocklen + i + 32]);
sumi3 = (v2 * a_ptr[l].qs[(k >> 2) * 128 + (k % 4) * blocklen + i + 64]);
sumi4 = (v3 * a_ptr[l].qs[(k >> 2) * 128 + (k % 4) * blocklen + i + 96]);
const block_q8_0 * a_ptr = (const block_q8_0 *) vy;
for (int x = 0; x < nc / ncols_interleaved; x++) {
const block_iq4_nlx4 * b_ptr = (const block_iq4_nlx4 *) vx + (x * nb);
sumi1 = sumi1 * (scales_0[offset] & 0xF);
sumi2 = sumi2 * (scales_1[offset] & 0xF);
sumi3 = sumi3 * (scales_2[offset] & 0xF);
sumi4 = sumi4 * (scales_3[offset] & 0xF);
sumi += sumi1 + sumi2 + sumi3 + sumi4;
for (int j = 0; j < ncols_interleaved; j++) sumf[j] = 0.0;
for (int l = 0; l < nb; l++) {
for (int k = 0; k < (qk / (2 * blocklen)); k++) {
for (int j = 0; j < ncols_interleaved; j++) {
sumi = 0;
for (int i = 0; i < blocklen; ++i) {
const int v0 = kvalues_iq4nl[b_ptr[l].qs[k * ncols_interleaved * blocklen + j * blocklen + i] & 0x0F];
const int v1 = kvalues_iq4nl[b_ptr[l].qs[k * ncols_interleaved * blocklen + j * blocklen + i] >> 4];
sumi += ((v0 * a_ptr[l].qs[k * blocklen + i]) + (v1 * a_ptr[l].qs[k * blocklen + i + qk / 2]));
}
sumf[j] += sumi * GGML_CPU_FP16_TO_FP32(b_ptr[l].d[j]) * GGML_CPU_FP16_TO_FP32(a_ptr[l].d);
}
sumf[j] += sumi * GGML_FP16_TO_FP32(b_ptr[l].d[j]) * a_ptr[l].d;
}
}
for(int sb = 0; sb < 8; sb++) {
const uint8_t *mins = b_ptr[l].scales + sb * 16;
for(int j = 0; j < ncols_interleaved; j++){
sum_minf[j] += ((mins[j * 2] >> 4) * a_ptr[l].bsums[sb * 2] + (mins[(j * 2)+ 1] >> 4) * a_ptr[l].bsums[sb * 2 + 1]) * GGML_FP16_TO_FP32(b_ptr[l].dmin[j]) * a_ptr[l].d;
}
}
for (int j = 0; j < ncols_interleaved; j++) s[x * ncols_interleaved + j] = sumf[j];
}
for (int j = 0; j < ncols_interleaved; j++) {
s[x * ncols_interleaved + j] = sumf[j] - sum_minf[j];
}
}
}
void ggml_gemv_iq4_nl_4x4_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc) {
const int qk = QK8_0;
const int nb = n / qk;
const int ncols_interleaved = 4;
const int blocklen = 4;
assert(nr == 1);
assert(n % qk == 0);
assert(nc % ncols_interleaved == 0);
UNUSED(bs);
UNUSED(nr);
float sumf[4];
int sumi;
const block_q8_0 * a_ptr = (const block_q8_0 *) vy;
for (int x = 0; x < nc / ncols_interleaved; x++) {
const block_iq4_nlx4 * b_ptr = (const block_iq4_nlx4 *) vx + (x * nb);
for (int j = 0; j < ncols_interleaved; j++) sumf[j] = 0.0;
for (int l = 0; l < nb; l++) {
for (int k = 0; k < (qk / (2 * blocklen)); k++) {
for (int j = 0; j < ncols_interleaved; j++) {
sumi = 0;
for (int i = 0; i < blocklen; ++i) {
const int v0 = kvalues_iq4nl[b_ptr[l].qs[k * ncols_interleaved * blocklen + j * blocklen + i] & 0x0F];
const int v1 = kvalues_iq4nl[b_ptr[l].qs[k * ncols_interleaved * blocklen + j * blocklen + i] >> 4];
sumi += ((v0 * a_ptr[l].qs[k * blocklen + i]) + (v1 * a_ptr[l].qs[k * blocklen + i + qk / 2]));
}
sumf[j] += sumi * GGML_CPU_FP16_TO_FP32(b_ptr[l].d[j]) * GGML_CPU_FP16_TO_FP32(a_ptr[l].d);
}
}
}
for (int j = 0; j < ncols_interleaved; j++) s[x * ncols_interleaved + j] = sumf[j];
}
}
void ggml_gemv_iq4_nl_8x8_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc) {
const int qk = QK8_0;
const int nb = n / qk;
const int ncols_interleaved = 8;
const int blocklen = 8;
assert(nr == 1);
assert(n % qk == 0);
assert(nc % ncols_interleaved == 0);
UNUSED(bs);
UNUSED(nr);
float sumf[8];
int sumi;
const block_q8_0 * a_ptr = (const block_q8_0 *) vy;
for (int x = 0; x < nc / ncols_interleaved; x++) {
const block_iq4_nlx8 * b_ptr = (const block_iq4_nlx8 *) vx + (x * nb);
for (int j = 0; j < ncols_interleaved; j++) sumf[j] = 0.0;
for (int l = 0; l < nb; l++) {
for (int k = 0; k < (qk / (2 * blocklen)); k++) {
for (int j = 0; j < ncols_interleaved; j++) {
sumi = 0;
for (int i = 0; i < blocklen; ++i) {
const int v0 = kvalues_iq4nl[b_ptr[l].qs[k * ncols_interleaved * blocklen + j * blocklen + i] & 0x0F];
const int v1 = kvalues_iq4nl[b_ptr[l].qs[k * ncols_interleaved * blocklen + j * blocklen + i] >> 4];
sumi += ((v0 * a_ptr[l].qs[k * blocklen + i]) + (v1 * a_ptr[l].qs[k * blocklen + i + qk / 2]));
}
sumf[j] += sumi * GGML_CPU_FP16_TO_FP32(b_ptr[l].d[j]) * GGML_CPU_FP16_TO_FP32(a_ptr[l].d);
}
}
}
for (int j = 0; j < ncols_interleaved; j++) s[x * ncols_interleaved + j] = sumf[j];
}
}
@@ -816,97 +711,6 @@ void ggml_gemm_q4_K_8x8_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs,
}
}
void ggml_gemm_q2_K_8x8_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc) {
const int qk = QK_K;
const int nb = n / qk;
const int ncols_interleaved = 8;
const int blocklen = 8;
assert (n % qk == 0);
assert (nr % 4 == 0);
assert (nc % ncols_interleaved == 0);
UNUSED(s);
UNUSED(bs);
UNUSED(vx);
UNUSED(vy);
UNUSED(nr);
UNUSED(nc);
UNUSED(nb);
UNUSED(ncols_interleaved);
UNUSED(blocklen);
float sumf[4][8];
float sum_minf[4][8];
int sumi1, sumi2, sumi3, sumi4;
int sumi;
for (int y = 0; y < nr / 4; y++) {
const block_q8_Kx4 * a_ptr = (const block_q8_Kx4 *) vy + (y * nb);
for (int x = 0; x < nc / ncols_interleaved; x++) {
const block_q2_Kx8 * b_ptr = (const block_q2_Kx8 *) vx + (x * nb);
for (int m = 0; m < 4; m++) {
for (int j = 0; j < ncols_interleaved; j++) {
sumf[m][j] = 0.0;
sum_minf[m][j] = 0.0;
}
}
for (int l = 0; l < nb; l++) {
for (int k = 0; k < (qk / (4 * blocklen)); k++) {
const uint8_t *scales_0 = b_ptr[l].scales + (k / 4) * 64 ;
const uint8_t *scales_1 = b_ptr[l].scales + (k / 4) * 64 + 16;
const uint8_t *scales_2 = b_ptr[l].scales + (k / 4) * 64 + 32;
const uint8_t *scales_3 = b_ptr[l].scales + (k / 4) * 64 + 48;
for (int m = 0; m < 4; m++) {
for (int j = 0; j < ncols_interleaved; j++) {
sumi1 = 0;
sumi2 = 0;
sumi3 = 0;
sumi4 = 0;
sumi = 0;
int offset = ((k / 2) % 2) + j * 2;
for (int i = 0; i < blocklen; ++i){
const int v0 = (int8_t) (b_ptr[l].qs[k * ncols_interleaved * blocklen + j * blocklen + i] & 3);
const int v1 = (int8_t) ((b_ptr[l].qs[k * ncols_interleaved * blocklen + j * blocklen + i] >> 2 ) & 3);
const int v2 = (int8_t) ((b_ptr[l].qs[k * ncols_interleaved * blocklen + j * blocklen + i] >> 4 ) & 3);
const int v3 = (int8_t) ((b_ptr[l].qs[k * ncols_interleaved * blocklen + j * blocklen + i] >> 6 ) & 3);
sumi1 = (v0 * a_ptr[l].qs[(k >> 2) * 512 + (k % 4) * 4 * blocklen + m * blocklen + i]);
sumi2 = (v1 * a_ptr[l].qs[(k >> 2) * 512 + (k % 4) * 4 * blocklen + m * blocklen + i + 128]);
sumi3 = (v2 * a_ptr[l].qs[(k >> 2) * 512 + (k % 4) * 4 * blocklen + m * blocklen + i + 256]);
sumi4 = (v3 * a_ptr[l].qs[(k >> 2) * 512 + (k % 4) * 4 * blocklen + m * blocklen + i + 384]);
sumi1 = sumi1 * (scales_0[offset] & 0xF);
sumi2 = sumi2 * (scales_1[offset] & 0xF);
sumi3 = sumi3 * (scales_2[offset] & 0xF);
sumi4 = sumi4 * (scales_3[offset] & 0xF);
sumi += sumi1 + sumi2 + sumi3 + sumi4;
}
sumf[m][j] += sumi * GGML_FP16_TO_FP32(b_ptr[l].d[j]) * a_ptr[l].d[m];
}
}
}
for(int sb = 0; sb < 8; sb++) {
const uint8_t *mins = b_ptr[l].scales + sb * 16;
for(int m = 0; m < 4; m++) {
const int16_t *bsums = a_ptr[l].bsums + (sb * 8) + (m * 4) - ((sb % 2) * 6);
for(int j = 0; j < ncols_interleaved; j++) {
int mins_prod = ((mins[j * 2] >> 4) * bsums[0] + (mins[(j * 2)+ 1] >> 4) * bsums[1]);
sum_minf[m][j] += (mins_prod) * GGML_FP16_TO_FP32(b_ptr[l].dmin[j]) * a_ptr[l].d[m];
}
}
}
}
for (int m = 0; m < 4; m++) {
for (int j = 0; j < ncols_interleaved; j++) {
s[(y * 4 + m) * bs + x * ncols_interleaved + j] = sumf[m][j] - sum_minf[m][j];
}
}
}
}
}
void ggml_gemm_iq4_nl_4x4_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc) {
const int qk = QK8_0;
const int nb = n / qk;
@@ -963,50 +767,6 @@ void ggml_gemm_iq4_nl_4x4_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs
}
}
void ggml_gemm_iq4_nl_8x8_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc) {
const int qk = QK8_0;
const int nb = n / qk;
const int ncols_interleaved = 8;
const int blocklen = 8;
assert(n % qk == 0);
assert(nr % 4 == 0);
assert(nc % ncols_interleaved == 0);
float sumf[4][8];
int sumi;
for (int y = 0; y < nr / 4; y++) {
const block_q8_0x4 * a_ptr = (const block_q8_0x4 *) vy + (y * nb);
for (int x = 0; x < nc / ncols_interleaved; x++) {
const block_iq4_nlx8 * b_ptr = (const block_iq4_nlx8 *) vx + (x * nb);
for (int m = 0; m < 4; m++) {
for (int j = 0; j < ncols_interleaved; j++) sumf[m][j] = 0.0;
}
for (int l = 0; l < nb; l++) {
for (int k = 0; k < (qk / (2 * blocklen)); k++) {
for (int m = 0; m < 4; m++) {
for (int j = 0; j < ncols_interleaved; j++) {
sumi = 0;
for (int i = 0; i < blocklen; ++i) {
const int v0 = kvalues_iq4nl[b_ptr[l].qs[k * ncols_interleaved * blocklen + j * blocklen + i] & 0x0F];
const int v1 = kvalues_iq4nl[b_ptr[l].qs[k * ncols_interleaved * blocklen + j * blocklen + i] >> 4];
sumi += ((v0 * a_ptr[l].qs[k * 4 * blocklen + m * blocklen + i]) +
(v1 * a_ptr[l].qs[k * 4 * blocklen + m * blocklen + i + qk / 2 * 4]));
}
sumf[m][j] += sumi * GGML_CPU_FP16_TO_FP32(b_ptr[l].d[j]) * GGML_CPU_FP16_TO_FP32(a_ptr[l].d[m]);
}
}
}
}
for (int m = 0; m < 4; m++) {
for (int j = 0; j < ncols_interleaved; j++)
s[(y * 4 + m) * bs + x * ncols_interleaved + j] = sumf[m][j];
}
}
}
}
} // extern "C"
static block_q4_0x4 make_block_q4_0x4(block_q4_0 * in, unsigned int blck_size_interleave) {
@@ -1154,50 +914,6 @@ static block_q4_Kx8 make_block_q4_Kx8(block_q4_K * in, unsigned int blck_size_in
return out;
}
static block_q2_Kx8 make_block_q2_Kx8(block_q2_K * in, unsigned int blck_size_interleave) {
block_q2_Kx8 out;
// Delta(scale) and dmin values of the eight Q2_K structures are copied onto the output interleaved structure
for (int i = 0; i < 8; i++) {
out.d[i] = in[i].GGML_COMMON_AGGR_U.GGML_COMMON_AGGR_S.d;
}
for (int i = 0; i < 8; i++) {
out.dmin[i] = in[i].GGML_COMMON_AGGR_U.GGML_COMMON_AGGR_S.dmin;
}
const int end = QK_K * 2 / blck_size_interleave;
// Interleave Q2_K quants by taking 8 bytes at a time
for (int i = 0; i < end; ++i) {
int src_id = i % 8;
int src_offset = (i / 8) * blck_size_interleave;
int dst_offset = i * blck_size_interleave;
uint64_t elems;
memcpy(&elems, &in[src_id].qs[src_offset], sizeof(uint64_t));
memcpy(&out.qs[dst_offset], &elems, sizeof(uint64_t));
}
// The below logic is designed so as to unpack and rearrange scales and mins values in Q2_K
// Currently the Q2_K structure has 16 scales and 16 mins packed in 16 bytes ( 4 bits for each value)
// The output Q2_Kx8 structure has 128 bytes for storing scales and mins
// Every 16 byte is packed such that it contains scales and mins for corresponding sub blocks from Q2_K structure
// For eg - First 16 bytes contains 16 scales and 16 mins - each of first and second sub blocks from different Q2_K structures
for(int i = 0; i < 128; i++){
// Index for selecting which q2k super block
int src1 = (i % 16) / 2;
// Index for selecting scale
int src2 = ((i / 16) * 2) + (i % 2);
out.scales[i] = in[src1].scales[src2];
}
return out;
}
static int repack_q4_0_to_q4_0_4_bl(struct ggml_tensor * t, int interleave_block, const void * GGML_RESTRICT data, size_t data_size) {
GGML_ASSERT(t->type == GGML_TYPE_Q4_0);
GGML_ASSERT(interleave_block == 4 || interleave_block == 8);
@@ -1259,37 +975,6 @@ static int repack_q4_K_to_q4_K_8_bl(struct ggml_tensor * t, int interleave_block
GGML_UNUSED(data_size);
}
static int repack_q2_K_to_q2_K_8_bl(struct ggml_tensor * t, int interleave_block, const void * GGML_RESTRICT data, size_t data_size) {
GGML_ASSERT(t->type == GGML_TYPE_Q2_K);
GGML_ASSERT(interleave_block == 8);
constexpr int nrows_interleaved = 8;
block_q2_Kx8 * dst = (block_q2_Kx8*)t->data;
const block_q2_K * src = (const block_q2_K*) data;
block_q2_K dst_tmp[8];
int nrow = ggml_nrows(t);
int nblocks = t->ne[0] / QK_K;
GGML_ASSERT(data_size == nrow * nblocks * sizeof(block_q2_K));
if (t->ne[1] % nrows_interleaved != 0 || t->ne[0] % 8 != 0) {
return -1;
}
for (int b = 0; b < nrow; b += nrows_interleaved) {
for (int64_t x = 0; x < nblocks; x++) {
for (int i = 0; i < nrows_interleaved; i++ ) {
dst_tmp[i] = src[x + i * nblocks];
}
*dst++ = make_block_q2_Kx8(dst_tmp, interleave_block);
}
src += nrows_interleaved * nblocks;
}
return 0;
GGML_UNUSED(data_size);
}
static int repack_q4_0_to_q4_0_8_bl(struct ggml_tensor * t, int interleave_block, const void * GGML_RESTRICT data, size_t data_size) {
GGML_ASSERT(t->type == GGML_TYPE_Q4_0);
GGML_ASSERT(interleave_block == 8);
@@ -1358,16 +1043,15 @@ static block_iq4_nlx4 make_block_iq4_nlx4(block_iq4_nl * in, unsigned int blck_s
static int repack_iq4_nl_to_iq4_nl_4_bl(struct ggml_tensor * t, int interleave_block, const void * GGML_RESTRICT data, size_t data_size) {
GGML_ASSERT(t->type == GGML_TYPE_IQ4_NL);
//GGML_ASSERT(interleave_block == 4 || interleave_block == 8);
GGML_ASSERT(interleave_block == 4);
const block_iq4_nl * src = (const block_iq4_nl *)data;
block_iq4_nlx4 * dst = ( block_iq4_nlx4 *)t->data;
block_iq4_nlx4 * dst = (block_iq4_nlx4 *)t->data;
const block_iq4_nl * src = (const block_iq4_nl *)data;
block_iq4_nl dst_tmp[4];
int nrow = ggml_nrows(t);
int nrows_interleaved = 4;
int nblocks = t->ne[0] / QK4_NL;
int nblocks = t->ne[0] / QK4_0;
GGML_ASSERT(data_size == nrow * nblocks * sizeof(block_iq4_nl));
@@ -1389,63 +1073,6 @@ static int repack_iq4_nl_to_iq4_nl_4_bl(struct ggml_tensor * t, int interleave_b
GGML_UNUSED(data_size);
}
static block_iq4_nlx8 make_block_iq4_nlx8(block_iq4_nl * in, unsigned int blck_size_interleave) {
block_iq4_nlx8 out;
for (int i = 0; i < 8; i++) {
out.d[i] = in[i].d;
}
const int end = QK4_NL * 4 / blck_size_interleave;
if (blck_size_interleave == 8) {
for (int i = 0; i < end; ++i) {
int src_id = i % 8;
int src_offset = (i / 8) * blck_size_interleave;
int dst_offset = i * blck_size_interleave;
memcpy(&out.qs[dst_offset], &in[src_id].qs[src_offset], sizeof(uint64_t));
}
} else {
GGML_ASSERT(false);
}
return out;
}
static int repack_iq4_nl_to_iq4_nl_8_bl(struct ggml_tensor * t, int interleave_block, const void * GGML_RESTRICT data, size_t data_size) {
GGML_ASSERT(t->type == GGML_TYPE_IQ4_NL);
GGML_ASSERT(interleave_block == 8);
const block_iq4_nl * src = (const block_iq4_nl *)data;
block_iq4_nlx8 * dst = ( block_iq4_nlx8 *)t->data;
block_iq4_nl dst_tmp[8];
int nrow = ggml_nrows(t);
int nrows_interleaved = 8;
int nblocks = t->ne[0] / QK4_NL;
GGML_ASSERT(data_size == nrow * nblocks * sizeof(block_iq4_nl));
if (t->ne[1] % nrows_interleaved != 0) {
return -1;
}
for (int b = 0; b < nrow; b += nrows_interleaved) {
for (int64_t x = 0; x < nblocks; x++) {
for (int i = 0; i < nrows_interleaved; i++) {
dst_tmp[i] = src[x + i * nblocks];
}
*dst++ = make_block_iq4_nlx8(dst_tmp, interleave_block);
}
src += nrows_interleaved * nblocks;
}
return 0;
GGML_UNUSED(data_size);
}
namespace ggml::cpu::repack {
// repack
template <typename BLOC_TYPE, int64_t INTER_SIZE, int64_t NB_COLS>
@@ -1468,10 +1095,6 @@ template <> int repack<block_q4_K, 8, 8>(struct ggml_tensor * t, const void * da
return repack_q4_K_to_q4_K_8_bl(t, 8, data, data_size);
}
template <> int repack<block_q2_K, 8, 8>(struct ggml_tensor * t, const void * data, size_t data_size) {
return repack_q2_K_to_q2_K_8_bl(t, 8, data, data_size);
}
template <> int repack<block_iq4_nl, 4, 4>(struct ggml_tensor * t, const void * data, size_t data_size) {
return repack_iq4_nl_to_iq4_nl_4_bl(t, 4, data, data_size);
}
@@ -1481,10 +1104,6 @@ template <> int repack<block_iq4_nl, 4, 4>(struct ggml_tensor * t, const void *
// return repack_iq4_nl_to_iq4_nl_4_bl(t, 8, data, data_size);
//}
template <> int repack<block_iq4_nl, 8, 8>(struct ggml_tensor * t, const void * data, size_t data_size) {
return repack_iq4_nl_to_iq4_nl_8_bl(t, 8, data, data_size);
}
// gemv
template <typename BLOC_TYPE, int64_t INTER_SIZE, int64_t NB_COLS, ggml_type PARAM_TYPE>
void gemv(int, float *, size_t, const void *, const void *, int, int);
@@ -1505,18 +1124,10 @@ template <> void gemv<block_q4_K, 8, 8, GGML_TYPE_Q8_K>(int n, float * s, size_t
ggml_gemv_q4_K_8x8_q8_K(n, s, bs, vx, vy, nr, nc);
}
template <> void gemv<block_q2_K, 8, 8, GGML_TYPE_Q8_K>(int n, float * s, size_t bs, const void * vx, const void * vy, int nr, int nc) {
ggml_gemv_q2_K_8x8_q8_K(n, s, bs, vx, vy, nr, nc);
}
template <> void gemv<block_iq4_nl, 4, 4, GGML_TYPE_Q8_0>(int n, float * s, size_t bs, const void * vx, const void * vy, int nr, int nc) {
ggml_gemv_iq4_nl_4x4_q8_0(n, s, bs, vx, vy, nr, nc);
}
template <> void gemv<block_iq4_nl, 8, 8, GGML_TYPE_Q8_0>(int n, float * s, size_t bs, const void * vx, const void * vy, int nr, int nc) {
ggml_gemv_iq4_nl_8x8_q8_0(n, s, bs, vx, vy, nr, nc);
}
// gemm
template <typename BLOC_TYPE, int64_t INTER_SIZE, int64_t NB_COLS, ggml_type PARAM_TYPE>
void gemm(int, float *, size_t, const void *, const void *, int, int);
@@ -1537,18 +1148,10 @@ template <> void gemm<block_q4_K, 8, 8, GGML_TYPE_Q8_K>(int n, float * s, size_t
ggml_gemm_q4_K_8x8_q8_K(n, s, bs, vx, vy, nr, nc);
}
template <> void gemm<block_q2_K, 8, 8, GGML_TYPE_Q8_K>(int n, float * s, size_t bs, const void * vx, const void * vy, int nr, int nc) {
ggml_gemm_q2_K_8x8_q8_K(n, s, bs, vx, vy, nr, nc);
}
template <> void gemm<block_iq4_nl, 4, 4, GGML_TYPE_Q8_0>(int n, float * s, size_t bs, const void * vx, const void * vy, int nr, int nc) {
ggml_gemm_iq4_nl_4x4_q8_0(n, s, bs, vx, vy, nr, nc);
}
template <> void gemm<block_iq4_nl, 8, 8, GGML_TYPE_Q8_0>(int n, float * s, size_t bs, const void * vx, const void * vy, int nr, int nc) {
ggml_gemm_iq4_nl_8x8_q8_0(n, s, bs, vx, vy, nr, nc);
}
class tensor_traits_base : public ggml::cpu::tensor_traits {
public:
virtual int repack(struct ggml_tensor * t, const void * data, size_t data_size) = 0;
@@ -1818,12 +1421,8 @@ static const ggml::cpu::tensor_traits * ggml_repack_get_optimal_repack_type(cons
static const ggml::cpu::repack::tensor_traits<block_q4_0, 8, 8, GGML_TYPE_Q8_0> q4_0_8x8_q8_0;
static const ggml::cpu::repack::tensor_traits<block_q4_K, 8, 8, GGML_TYPE_Q8_K> q4_K_8x8_q8_K;
// instance for Q2
static const ggml::cpu::repack::tensor_traits<block_q2_K, 8, 8, GGML_TYPE_Q8_K> q2_K_8x8_q8_K;
// instance for IQ4
static const ggml::cpu::repack::tensor_traits<block_iq4_nl, 4, 4, GGML_TYPE_Q8_0> iq4_nl_4x4_q8_0;
static const ggml::cpu::repack::tensor_traits<block_iq4_nl, 8, 8, GGML_TYPE_Q8_0> iq4_nl_8x8_q8_0;
if (cur->type == GGML_TYPE_Q4_0) {
if (ggml_cpu_has_avx2() || (ggml_cpu_has_sve() && ggml_cpu_has_matmul_int8() && ggml_cpu_get_sve_cnt() == QK8_0)) {
@@ -1847,18 +1446,7 @@ static const ggml::cpu::tensor_traits * ggml_repack_get_optimal_repack_type(cons
return &q4_K_8x8_q8_K;
}
}
} else if (cur->type == GGML_TYPE_Q2_K) {
if (ggml_cpu_has_avx512()) {
if (cur->ne[1] % 8 == 0) {
return &q2_K_8x8_q8_K;
}
}
} else if (cur->type == GGML_TYPE_IQ4_NL) {
if (ggml_cpu_has_avx2()) {
if (cur->ne[1] % 8 == 0) {
return &iq4_nl_8x8_q8_0;
}
}
if (ggml_cpu_has_neon() && ggml_cpu_has_dotprod()) {
if (cur->ne[1] % 4 == 0) {
return &iq4_nl_4x4_q8_0;

View File

@@ -44,14 +44,7 @@ struct block_q4_Kx8 {
};
static_assert(sizeof(block_q4_Kx8) == sizeof(ggml_half) * 16 + K_SCALE_SIZE * 8 + QK_K * 4, "wrong q4_K block size/padding");
struct block_q2_Kx8 {
ggml_half d[8]; // super-block scale for quantized scales
ggml_half dmin[8]; // super-block scale for quantized mins
uint8_t scales[128]; // scales and mins, quantized with 4 bits
uint8_t qs[512]; // 2--bit quants
};
static_assert(sizeof(block_q2_Kx8) == sizeof(ggml_half) * 16 + QK_K/2 + QK_K * 2, "wrong q2_K block size/padding");
struct block_q8_Kx4 {
float d[4]; // delta
int8_t qs[QK_K * 4]; // quants
@@ -67,13 +60,6 @@ struct block_iq4_nlx4 {
static_assert(sizeof(block_iq4_nlx4) == 4 * sizeof(ggml_half) + QK4_NL * 2, "wrong iq4_nlx4 block size/padding");
struct block_iq4_nlx8 {
ggml_half d[8]; // deltas for 8 iq4_nl blocks
uint8_t qs[QK4_NL * 4]; // nibbles / quants for 8 iq4_nl blocks
};
static_assert(sizeof(block_iq4_nlx8) == 8 * sizeof(ggml_half) + QK4_NL * 4, "wrong iq4_nlx8 block size/padding");
#if defined(__cplusplus)
extern "C" {
#endif
@@ -85,16 +71,12 @@ void ggml_gemv_q4_0_4x4_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const vo
void ggml_gemv_q4_0_4x8_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemv_q4_0_8x8_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemv_q4_K_8x8_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemv_q2_K_8x8_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemv_iq4_nl_4x4_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemv_iq4_nl_8x8_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemm_q4_0_4x4_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemm_q4_0_4x8_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemm_q4_0_8x8_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemm_q4_K_8x8_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemm_q2_K_8x8_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemm_iq4_nl_4x4_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemm_iq4_nl_8x8_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
// Native implementations
void ggml_quantize_mat_q8_0_4x4_generic(const float * GGML_RESTRICT x, void * GGML_RESTRICT vy, int64_t k);
@@ -104,16 +86,12 @@ void ggml_gemv_q4_0_4x4_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs,
void ggml_gemv_q4_0_4x8_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemv_q4_0_8x8_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemv_q4_K_8x8_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemv_q2_K_8x8_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemv_iq4_nl_4x4_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemv_iq4_nl_8x8_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemm_q4_0_4x4_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemm_q4_0_4x8_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemm_q4_0_8x8_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemm_q4_K_8x8_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemm_q2_K_8x8_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemm_iq4_nl_4x4_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemm_iq4_nl_8x8_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
#if defined(__cplusplus)
} // extern "C"

View File

@@ -10,7 +10,7 @@ extra_buffer_type::~extra_buffer_type() {}
} // namespace ggml::cpu
bool ggml_cpu_extra_compute_forward(struct ggml_compute_params * params, struct ggml_tensor * op) {
for (auto extra : ggml_backend_cpu_get_extra_buffer_types()) {
for (auto extra : ggml_backend_cpu_get_extra_buffers_type()) {
if (extra && extra->context) {
auto buf_extra = (ggml::cpu::extra_buffer_type *) extra->context;
auto tensor_traits = buf_extra->get_tensor_traits(op);
@@ -23,7 +23,7 @@ bool ggml_cpu_extra_compute_forward(struct ggml_compute_params * params, struct
}
bool ggml_cpu_extra_work_size(int n_threads, const struct ggml_tensor * op, size_t * size) {
for (auto extra : ggml_backend_cpu_get_extra_buffer_types()) {
for (auto extra : ggml_backend_cpu_get_extra_buffers_type()) {
if (extra && extra->context) {
auto buf_extra = (ggml::cpu::extra_buffer_type *) extra->context;
auto tensor_traits = buf_extra->get_tensor_traits(op);

View File

@@ -33,6 +33,6 @@ class extra_buffer_type {
} // namespace ggml::cpu
// implemented in ggml-cpu.cpp.
std::vector<ggml_backend_buffer_type_t> & ggml_backend_cpu_get_extra_buffer_types();
std::vector<ggml_backend_buffer_type_t> & ggml_backend_cpu_get_extra_buffers_type();
#endif

View File

@@ -55,22 +55,7 @@ inline static void ggml_vec_cpy_i32(const int n, int32_t * y, const int32_t * x)
inline static void ggml_vec_set_f16(const int n, ggml_fp16_t * x, const ggml_fp16_t v) { for (int i = 0; i < n; ++i) x[i] = v; }
inline static void ggml_vec_set_bf16(const int n, ggml_bf16_t * x, const ggml_bf16_t v) { for (int i = 0; i < n; ++i) x[i] = v; }
inline static void ggml_vec_add_f32 (const int n, float * z, const float * x, const float * y) {
int i = 0;
#if defined(__AVX2__)
for (; i + 7 < n; i += 8) {
__m256 vx = _mm256_loadu_ps(x + i);
__m256 vy = _mm256_loadu_ps(y + i);
__m256 vz = _mm256_add_ps(vx, vy);
_mm256_storeu_ps(z + i, vz);
}
#endif
for (; i < n; ++i) {
z[i] = x[i] + y[i];
}
}
inline static void ggml_vec_add_f32 (const int n, float * z, const float * x, const float * y) { for (int i = 0; i < n; ++i) z[i] = x[i] + y[i]; }
inline static void ggml_vec_add_f16 (const int n, ggml_fp16_t * z, const ggml_fp16_t * x, const ggml_fp16_t * y) {
for (int i = 0; i < n; ++i) {
z[i] = GGML_CPU_FP32_TO_FP16(GGML_CPU_FP16_TO_FP32(x[i]) + GGML_CPU_FP16_TO_FP32(y[i]));
@@ -1007,9 +992,9 @@ void ggml_vec_swiglu_f32(const int n, float * y, const float * x, const float *
inline static void ggml_vec_swiglu_f16(const int n, ggml_fp16_t * y, const ggml_fp16_t * x, const ggml_fp16_t * g) {
for (int i = 0; i < n; ++i) {
float xi = GGML_CPU_FP16_TO_FP32(x[i]);
float gi = GGML_CPU_FP16_TO_FP32(g[i]);
y[i] = GGML_CPU_FP32_TO_FP16((xi/(1.0f + expf(-xi))) * gi);
float v = GGML_CPU_FP16_TO_FP32(x[i]);
float w = GGML_CPU_FP16_TO_FP32(g[i]);
y[i] = GGML_CPU_FP32_TO_FP16((v/(1.0f + expf(-v))) * w);
}
}

View File

@@ -120,10 +120,6 @@ if (CUDAToolkit_FOUND)
set(CUDA_FLAGS -use_fast_math -extended-lambda)
if (GGML_CUDA_DEBUG)
list(APPEND CUDA_FLAGS -lineinfo)
endif()
if (CUDAToolkit_VERSION VERSION_GREATER_EQUAL "12.8")
# Options are:
# - none (not recommended)

View File

@@ -1,58 +0,0 @@
#include "add-id.cuh"
static __global__ void add_id_kernel(
const float * src0, const float * src1, const int32_t * src2, float * dst,
int64_t ne0, int64_t ne1,
size_t nb01, size_t nb02,
size_t nb11,
size_t nb21
) {
const int64_t i1 = blockIdx.x;
const int64_t i2 = blockIdx.y;
const int i11 = *(int32_t *) ((char *) src2 + i1*sizeof(int32_t) + i2*nb21);
const size_t nb1 = ne0 * sizeof(float);
const size_t nb2 = ne1 * nb1;
float * dst_row = (float *)((char *)dst + i1*nb1 + i2*nb2);
const float * src0_row = (const float *)((char *)src0 + i1*nb01 + i2*nb02);
const float * src1_row = (const float *)((char *)src1 + i11*nb11);
for (int64_t i0 = threadIdx.x; i0 < ne0; i0 += blockDim.x) {
dst_row[i0] = src0_row[i0] + src1_row[i0];
}
}
void ggml_cuda_op_add_id(ggml_backend_cuda_context & ctx, ggml_tensor * dst) {
const ggml_tensor * src0 = dst->src[0];
const ggml_tensor * src1 = dst->src[1];
const ggml_tensor * src2 = dst->src[2];
GGML_TENSOR_TERNARY_OP_LOCALS
GGML_ASSERT(dst->type == GGML_TYPE_F32);
GGML_ASSERT(src0->type == GGML_TYPE_F32);
GGML_ASSERT(src1->type == GGML_TYPE_F32);
GGML_ASSERT(src2->type == GGML_TYPE_I32);
GGML_ASSERT(nb00 == sizeof(float));
GGML_ASSERT(nb10 == sizeof(float));
GGML_ASSERT(nb20 == sizeof(int32_t));
const float * src0_d = (const float *)src0->data;
const float * src1_d = (const float *)src1->data;
const int32_t * src2_d = (const int32_t *)src2->data;
float * dst_d = (float *)dst->data;
int threads = std::min((int)ne00, 768); // cols
dim3 blocks(ne01, ne02); // n_experts_used, n_tokens
add_id_kernel<<<blocks, threads, 0, ctx.stream()>>>(
src0_d, src1_d, src2_d, dst_d,
ne0, ne1,
nb01, nb02,
nb11,
nb21
);
}

View File

@@ -1,3 +0,0 @@
#include "common.cuh"
void ggml_cuda_op_add_id(ggml_backend_cuda_context & ctx, ggml_tensor * dst);

View File

@@ -1,7 +1,6 @@
#pragma once
#include "ggml.h"
#include "ggml-impl.h"
#include "ggml-cuda.h"
#include <cstdint>
@@ -78,8 +77,6 @@
#define GGML_CUDA_CC_IS_CDNA3(cc) (cc >= GGML_CUDA_CC_CDNA3 && cc < GGML_CUDA_CC_RDNA1)
// Moore Threads
#define MUSART_HMASK 40300 // MUSA rc4.3, min. ver. for half2 -> uint mask comparisons
#define GGML_CUDA_CC_QY1 (GGML_CUDA_CC_OFFSET_MTHREADS + 0x210) // MTT S80, MTT S3000
#define GGML_CUDA_CC_QY2 (GGML_CUDA_CC_OFFSET_MTHREADS + 0x220) // MTT S4000
#define GGML_CUDA_CC_NG (GGML_CUDA_CC_OFFSET_MTHREADS + 0x310) // TBD
@@ -89,10 +86,6 @@
#define GGML_CUDA_CC_IS_QY2(cc) (cc >= GGML_CUDA_CC_QY2 && cc < GGML_CUDA_CC_NG)
#define GGML_CUDA_CC_IS_NG(cc) (cc >= GGML_CUDA_CC_NG)
#if !defined(GGML_USE_HIP) && !defined(GGML_USE_MUSA) && CUDART_VERSION >= 11070
# define GGML_CUDA_USE_CUB
#endif // !defined(GGML_USE_HIP) && !defined(GGML_USE_MUSA) && CUDART_VERSION >= 11070
#ifdef __CUDA_ARCH_LIST__
constexpr bool ggml_cuda_has_arch_impl(int) {
return false;
@@ -183,7 +176,7 @@ static const char * cu_get_error_str(CUresult err) {
#define CU_CHECK(err) CUDA_CHECK_GEN(err, CUDA_SUCCESS, cu_get_error_str)
#endif
#if !defined(GGML_USE_HIP) && !defined(GGML_USE_MUSA)
#if !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)) && !defined(GGML_USE_MUSA)
# define CUDA_SET_SHARED_MEMORY_LIMIT(kernel, nbytes) \
do { \
static bool shared_memory_limit_raised[GGML_CUDA_MAX_DEVICES] = { false }; \
@@ -198,7 +191,7 @@ static const char * cu_get_error_str(CUresult err) {
do { \
GGML_UNUSED(nbytes); \
} while (0)
#endif // !(defined(GGML_USE_HIP) && !defined(GGML_USE_MUSA)
#endif // !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)) && !defined(GGML_USE_MUSA)
#if CUDART_VERSION >= 11010 || defined(GGML_USE_MUSA)
#define GGML_CUDA_ASSUME(x) __builtin_assume(x)
@@ -218,9 +211,9 @@ typedef float2 dfloat2;
#define GGML_USE_VMM
#endif // (!defined(GGML_USE_HIP) && !defined(GGML_CUDA_NO_VMM)) || (defined(GGML_USE_HIP) && !defined(GGML_HIP_NO_VMM))
#if defined(GGML_USE_HIP) || __CUDA_ARCH__ >= GGML_CUDA_CC_PASCAL
#if (defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)) || __CUDA_ARCH__ >= GGML_CUDA_CC_PASCAL
#define FP16_AVAILABLE
#endif // defined(GGML_USE_HIP) || __CUDA_ARCH__ >= GGML_CUDA_CC_PASCAL
#endif // (defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)) || __CUDA_ARCH__ >= GGML_CUDA_CC_PASCAL
#if defined(FP16_AVAILABLE) && __CUDA_ARCH__ != 610
#define FAST_FP16_AVAILABLE
@@ -234,21 +227,17 @@ typedef float2 dfloat2;
#define FP16_MMA_AVAILABLE
#endif // defined(GGML_HIP_ROCWMMA_FATTN) && (defined(CDNA) || defined(RDNA3) || (defined(GGML_HIP_ROCWMMA_FATTN_GFX12) && defined(RDNA4)))
#if defined(GGML_USE_HIP) && defined(CDNA) && !defined(GGML_HIP_NO_MMQ_MFMA)
#if defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__) && defined(CDNA3) && !defined(GGML_HIP_NO_MMQ_MFMA)
#define AMD_MFMA_AVAILABLE
#endif // defined(GGML_USE_HIP) && defined(CDNA) && !defined(GGML_HIP_NO_MMQ_MFMA)
#endif // defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__) && defined(CDNA3)
#if !defined(GGML_USE_HIP) && __CUDA_ARCH__ >= GGML_CUDA_CC_TURING
#define TURING_MMA_AVAILABLE
#endif // !defined(GGML_USE_HIP) && __CUDA_ARCH__ >= GGML_CUDA_CC_TURING
#if !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)) && __CUDA_ARCH__ >= GGML_CUDA_CC_TURING
#define NEW_MMA_AVAILABLE
#endif // !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)) && __CUDA_ARCH__ >= GGML_CUDA_CC_TURING
#if !defined(GGML_USE_HIP) && __CUDA_ARCH__ >= GGML_CUDA_CC_AMPERE
#define AMPERE_MMA_AVAILABLE
#endif // !defined(GGML_USE_HIP) && __CUDA_ARCH__ >= GGML_CUDA_CC_AMPERE
#if !defined(GGML_USE_HIP) && __CUDA_ARCH__ >= GGML_CUDA_CC_AMPERE
#if !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)) && __CUDA_ARCH__ >= GGML_CUDA_CC_AMPERE
#define CP_ASYNC_AVAILABLE
#endif // !defined(GGML_USE_HIP) && __CUDA_ARCH__ >= GGML_CUDA_CC_AMPERE
#endif // !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)) && __CUDA_ARCH__ >= GGML_CUDA_CC_AMPERE
#if !defined(GGML_CUDA_NO_FA) && !(defined(GGML_USE_MUSA) && __MUSA_ARCH__ < 220)
#define FLASH_ATTN_AVAILABLE
@@ -270,7 +259,7 @@ static bool fast_fp16_hardware_available(const int cc) {
// Any FP16 tensor core instructions are available for ggml code.
static bool fp16_mma_available(const int cc) {
#if defined(GGML_USE_HIP) && !defined(GGML_HIP_ROCWMMA_FATTN)
#if defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__) && !defined(GGML_HIP_ROCWMMA_FATTN)
return false;
#else
if ((GGML_CUDA_CC_IS_NVIDIA(cc) && ggml_cuda_highest_compiled_arch(cc) >= GGML_CUDA_CC_VOLTA) ||
@@ -286,7 +275,7 @@ static bool fp16_mma_available(const int cc) {
} else {
return false;
}
#endif // defined(GGML_USE_HIP) && !defined(GGML_HIP_ROCWMMA_FATTN)
#endif // defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__) && !defined(GGML_HIP_ROCWMMA_FATTN)
}
// To be used for feature selection of external libraries, e.g. cuBLAS.
@@ -304,47 +293,44 @@ static bool fp32_mma_hardware_available(const int cc) {
return GGML_CUDA_CC_IS_CDNA(cc);
}
// AMD CDNA3 matrix cores.. Will add support for other CDNA generations later.
static bool amd_mfma_available(const int cc) {
#if !defined(GGML_HIP_NO_MMQ_MFMA)
return GGML_CUDA_CC_IS_CDNA(cc);
return GGML_CUDA_CC_IS_CDNA3(cc);
#else
return false;
#endif //!defined(GGML_HIP_NO_MMQ_MFMA)
}
// Volta technically had FP16 tensor cores but they work very differently compared to Turing and later.
static bool turing_mma_available(const int cc) {
static bool new_mma_available(const int cc) {
return GGML_CUDA_CC_IS_NVIDIA(cc) && ggml_cuda_highest_compiled_arch(cc) >= GGML_CUDA_CC_TURING;
}
static bool ampere_mma_available(const int cc) {
return GGML_CUDA_CC_IS_NVIDIA(cc) && ggml_cuda_highest_compiled_arch(cc) >= GGML_CUDA_CC_AMPERE;
}
static bool cp_async_available(const int cc) {
return GGML_CUDA_CC_IS_NVIDIA(cc) && ggml_cuda_highest_compiled_arch(cc) >= GGML_CUDA_CC_AMPERE;
return cc < GGML_CUDA_CC_OFFSET_AMD && ggml_cuda_highest_compiled_arch(cc) >= GGML_CUDA_CC_AMPERE;
}
static constexpr __device__ int ggml_cuda_get_physical_warp_size() {
#if defined(GGML_USE_HIP) && (defined(__GFX9__) || defined(__GFX8__))
#if defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__) && (defined(__GFX9__) || defined(__GFX8__))
return 64;
#else
return 32;
#endif // defined(GGML_USE_HIP) && (defined(__GFX9__) || defined(__GFX8__))
#endif // defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__) && (defined(__GFX9__) || defined(__GFX8__))
}
[[noreturn]]
static __device__ void no_device_code(
const char * file_name, const int line, const char * function_name, const int arch, const char * arch_list) {
#if defined(GGML_USE_HIP)
#if defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)
printf("%s:%d: ERROR: HIP kernel %s has no device code compatible with HIP arch %d.\n",
file_name, line, function_name, arch);
GGML_UNUSED(arch_list);
#else
printf("%s:%d: ERROR: CUDA kernel %s has no device code compatible with CUDA arch %d. ggml-cuda.cu was compiled for: %s\n",
file_name, line, function_name, arch, arch_list);
#endif // defined(GGML_USE_HIP)
#endif // defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)
__trap();
GGML_UNUSED(no_device_code); // suppress unused function warning
@@ -381,7 +367,7 @@ struct ggml_cuda_unroll<1> {
template<int width = WARP_SIZE>
static __device__ __forceinline__ int warp_reduce_sum(int x) {
#if !defined(GGML_USE_HIP) && __CUDA_ARCH__ >= GGML_CUDA_CC_AMPERE
#if !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)) && __CUDA_ARCH__ >= GGML_CUDA_CC_AMPERE
return __reduce_add_sync(0xffffffff, x);
#else
#pragma unroll
@@ -389,7 +375,7 @@ static __device__ __forceinline__ int warp_reduce_sum(int x) {
x += __shfl_xor_sync(0xffffffff, x, offset, width);
}
return x;
#endif // !defined(GGML_USE_HIP) && __CUDA_ARCH__ >= GGML_CUDA_CC_AMPERE
#endif // !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)) && __CUDA_ARCH__ >= GGML_CUDA_CC_AMPERE
}
template<int width = WARP_SIZE>
@@ -426,18 +412,24 @@ static __device__ __forceinline__ half2 warp_reduce_sum(half2 a) {
#endif // FP16_AVAILABLE
}
template<int width = WARP_SIZE>
static __device__ __forceinline__ int warp_reduce_all(int x) {
#ifdef GGML_USE_HIP
#pragma unroll
for (int offset = width/2; offset > 0; offset >>= 1) {
x = x && __shfl_xor_sync(0xffffffff, x, offset, width);
// Row reduction kernel template - compute sum (norm=false) or mean (norm=true)
template<bool norm>
static __global__ void reduce_rows_f32(const float * x, float * dst, const int ncols) {
const int row = blockIdx.x;
const int col = threadIdx.x;
float sum = 0.0f;
for (int i = col; i < ncols; i += blockDim.x) {
sum += x[row * ncols + i];
}
return x;
#else
static_assert(width == WARP_SIZE, "width != WARP_SIZE not implemented");
return __all_sync(0xffffffff, x);
#endif // GGML_USE_HIP
sum = warp_reduce_sum(sum);
if (col != 0) {
return;
}
dst[row] = norm ? sum / ncols : sum;
}
template<int width = WARP_SIZE>
@@ -452,11 +444,11 @@ static __device__ __forceinline__ float warp_reduce_max(float x) {
static __device__ __forceinline__ half ggml_cuda_hmax(const half a, const half b) {
#ifdef FP16_AVAILABLE
#if !defined(GGML_USE_HIP) && CUDART_VERSION < CUDART_HMAX
#if !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)) && CUDART_VERSION < CUDART_HMAX
return __float2half(fmaxf(__half2float(a), __half2float(b)));
#else
return __hmax(a, b);
#endif // !defined(GGML_USE_HIP) && CUDART_VERSION < CUDART_HMAX
#endif // !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)) && CUDART_VERSION < CUDART_HMAX
#else
NO_DEVICE_CODE;
@@ -466,21 +458,25 @@ static __device__ __forceinline__ half ggml_cuda_hmax(const half a, const half b
}
static __device__ __forceinline__ half2 ggml_cuda_hmax2(const half2 a, const half2 b) {
#if defined(GGML_USE_HIP)
#if defined(GGML_USE_HIP) && HIP_VERSION >= 50700000
return half2(__hmax(a.x, b.x), __hmax(a.y, b.y));
#elif CUDART_VERSION >= CUDART_HMAX
#elif !defined(GGML_USE_HIP) && CUDART_VERSION >= CUDART_HMAX
return __hmax2(a, b);
#else
#elif !defined(GGML_USE_HIP)
half2 ret;
reinterpret_cast<half&>(ret.x) = __float2half(fmaxf( __low2float(a), __low2float(b)));
reinterpret_cast<half&>(ret.y) = __float2half(fmaxf(__high2float(a), __high2float(b)));
return ret;
#else
GGML_UNUSED(a);
GGML_UNUSED(b);
NO_DEVICE_CODE;
#endif
}
template<int width = WARP_SIZE>
static __device__ __forceinline__ half2 warp_reduce_max(half2 x) {
#if !defined(GGML_USE_HIP) && __CUDA_ARCH__ >= GGML_CUDA_CC_PASCAL || defined(GGML_USE_HIP)
#if !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)) && __CUDA_ARCH__ >= GGML_CUDA_CC_PASCAL || (defined(GGML_USE_HIP) && HIP_VERSION >= 50700000)
#pragma unroll
for (int offset = width/2; offset > 0; offset >>= 1) {
x = ggml_cuda_hmax2(x, __shfl_xor_sync(0xffffffff, x, offset, width));
@@ -489,20 +485,19 @@ static __device__ __forceinline__ half2 warp_reduce_max(half2 x) {
#else
GGML_UNUSED(x);
NO_DEVICE_CODE;
#endif // !defined(GGML_USE_HIP) && __CUDA_ARCH__ >= GGML_CUDA_CC_PASCAL || defined(GGML_USE_HIP)
#endif // !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)) && __CUDA_ARCH__ >= GGML_CUDA_CC_PASCAL || (defined(GGML_USE_HIP) && HIP_VERSION >= 50700000)
}
#if (defined(CUDART_VERSION) && CUDART_VERSION < CUDART_HMASK) || defined(GGML_USE_HIP) || \
(defined(MUSART_VERSION) && MUSART_VERSION < MUSART_HMASK)
#if CUDART_VERSION < CUDART_HMASK
static __device__ __forceinline__ uint32_t __hgt2_mask(const half2 a, const half2 b) {
const uint32_t mask_low = 0x0000FFFF * (float( __low2half(a)) > float( __low2half(b)));
const uint32_t mask_high = 0xFFFF0000 * (float(__high2half(a)) > float(__high2half(b)));
return mask_low | mask_high;
}
#endif // (defined(CUDART_VERSION) && CUDART_VERSION < CUDART_HMASK) || defined(GGML_USE_HIP) || (defined(MUSART_VERSION) && MUSART_VERSION < MUSART_HMASK)
#endif // CUDART_VERSION < CUDART_HMASK
static __device__ __forceinline__ int ggml_cuda_dp4a(const int a, const int b, int c) {
#if defined(GGML_USE_HIP)
#if defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)
#if defined(CDNA) || defined(RDNA2) || defined(__gfx906__)
c = __builtin_amdgcn_sdot4(a, b, c, false);
#elif defined(RDNA3) || defined(RDNA4)
@@ -528,7 +523,7 @@ static __device__ __forceinline__ int ggml_cuda_dp4a(const int a, const int b, i
#endif
return c;
#else // defined(GGML_USE_HIP)
#else // defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)
#if __CUDA_ARCH__ >= GGML_CUDA_CC_DP4A || defined(GGML_USE_MUSA)
return __dp4a(a, b, c);
@@ -538,25 +533,7 @@ static __device__ __forceinline__ int ggml_cuda_dp4a(const int a, const int b, i
return c + a8[0]*b8[0] + a8[1]*b8[1] + a8[2]*b8[2] + a8[3]*b8[3];
#endif // __CUDA_ARCH__ >= GGML_CUDA_CC_DP4A || defined(GGML_USE_MUSA)
#endif // defined(GGML_USE_HIP)
}
static __device__ __forceinline__ float ggml_cuda_e8m0_to_fp32(uint8_t x) {
#if CUDART_VERSION >= 12080
const nv_bfloat16 e = __nv_cvt_e8m0_to_bf16raw(x);
return (float) e;
#else
uint32_t bits;
if (x == 0) {
bits = 0x00400000;
} else {
bits = (uint32_t) x << 23;
}
float result;
memcpy(&result, &bits, sizeof(float));
return result;
#endif // CUDART_VERSION >= 12050
#endif // defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)
}
typedef void (*dequantize_kernel_t)(const void * vx, const int64_t ib, const int iqs, dfloat2 & v);
@@ -617,13 +594,6 @@ struct ggml_cuda_type_traits<GGML_TYPE_Q8_0> {
static constexpr int qi = QI8_0;
};
template<>
struct ggml_cuda_type_traits<GGML_TYPE_MXFP4> {
static constexpr int qk = QK_MXFP4;
static constexpr int qr = QR_MXFP4;
static constexpr int qi = QI_MXFP4;
};
template<>
struct ggml_cuda_type_traits<GGML_TYPE_Q2_K> {
static constexpr int qk = QK_K;

View File

@@ -31,8 +31,8 @@ static __global__ void dequantize_block(const void * __restrict__ vx, dst_t * __
dequantize_kernel(vx, ib, iqs, v);
const int64_t iy0 = ((i03*ne02 + i02)*ne01 + i01)*ne00 + iybs + iqs;
y[iy0 + 0] = ggml_cuda_cast<dst_t>(v.x);
y[iy0 + y_offset] = ggml_cuda_cast<dst_t>(v.y);
y[iy0 + 0] = float(v.x);
y[iy0 + y_offset] = float(v.y);
}
template <bool need_check>
@@ -465,24 +465,6 @@ static __global__ void dequantize_block_iq4_xs(const void * __restrict__ vx, dst
}
}
template<typename dst_t>
static __global__ void dequantize_block_mxfp4(const void * __restrict__ vx, dst_t * __restrict__ yy) {
const int64_t i = blockIdx.x;
const block_mxfp4 * x = (const block_mxfp4 *) vx + i*(QK_K/QK_MXFP4);
const int64_t tid = threadIdx.x;
const int64_t il = tid/8; // 0...3
const int64_t ib = tid%8; // 0...7
dst_t * y = yy + i*QK_K + 32*ib + 4*il;
const uint8_t * q4 = x[ib].qs + 4*il;
const float d = ggml_cuda_e8m0_to_fp32(x[ib].e);
for (int j = 0; j < 4; ++j) {
y[j+ 0] = d * kvalues_mxfp4[q4[j] & 0xf]*0.5f;
y[j+16] = d * kvalues_mxfp4[q4[j] >> 4]*0.5f;
}
}
template <int qk, int qr, dequantize_kernel_t dequantize_kernel, typename dst_t>
static void dequantize_block_cuda(const void * vx, dst_t * y,
const int64_t ne00, const int64_t ne01, const int64_t ne02, const int64_t ne03,
@@ -606,12 +588,6 @@ static void dequantize_row_iq4_xs_cuda(const void * vx, dst_t * y, const int64_t
dequantize_block_iq4_xs<<<nb, 32, 0, stream>>>(vx, y);
}
template<typename dst_t>
static void dequantize_row_mxfp4_cuda(const void * vx, dst_t * y, const int64_t k, cudaStream_t stream) {
const int nb = (k + QK_K - 1) / QK_K;
dequantize_block_mxfp4<<<nb, 32, 0, stream>>>(vx, y);
}
template <typename src_t, typename dst_t>
static __global__ void convert_unary(
const void * __restrict__ vx, dst_t * __restrict__ y, const int64_t ne00, const int64_t ne01, const int64_t ne02,
@@ -630,7 +606,7 @@ static __global__ void convert_unary(
const int64_t ix = i03*s03 + i02*s02 + i01*s01 + i00;
const int64_t iy = ((i03*ne02 + i02)*ne01 + i01)*ne00 + i00;
y[iy] = ggml_cuda_cast<dst_t>(x[ix]);
y[iy] = float(x[ix]);
}
template <typename src_t, typename dst_t>
@@ -701,8 +677,6 @@ to_fp16_cuda_t ggml_get_to_fp16_cuda(ggml_type type) {
return dequantize_row_iq4_xs_cuda;
case GGML_TYPE_IQ3_S:
return dequantize_row_iq3_s_cuda;
case GGML_TYPE_MXFP4:
return dequantize_row_mxfp4_cuda;
case GGML_TYPE_F32:
return convert_unary_cont_cuda<float>;
case GGML_TYPE_BF16:
@@ -752,8 +726,6 @@ to_fp32_cuda_t ggml_get_to_fp32_cuda(ggml_type type) {
return dequantize_row_iq4_xs_cuda;
case GGML_TYPE_IQ3_S:
return dequantize_row_iq3_s_cuda;
case GGML_TYPE_MXFP4:
return dequantize_row_mxfp4_cuda;
case GGML_TYPE_F16:
return convert_unary_cont_cuda<half>;
case GGML_TYPE_BF16:

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@@ -29,16 +29,3 @@ typedef to_t_nc_cuda_t<nv_bfloat16> to_bf16_nc_cuda_t;
to_fp32_nc_cuda_t ggml_get_to_fp32_nc_cuda(ggml_type type);
to_fp16_nc_cuda_t ggml_get_to_fp16_nc_cuda(ggml_type type);
to_bf16_nc_cuda_t ggml_get_to_bf16_nc_cuda(ggml_type type);
template<typename dst_t, typename src_t>
__host__ __device__ inline dst_t ggml_cuda_cast(src_t x) {
if constexpr (std::is_same_v<dst_t, src_t>) {
return x;
} else if constexpr(std::is_same_v<dst_t, nv_bfloat16>) {
return __float2bfloat16(float(x));
} else if constexpr(std::is_same_v<src_t, nv_bfloat16>) {
return __bfloat162float(x);
} else {
return float(x);
}
}

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@@ -1,7 +1,15 @@
#pragma once
#include "ggml-common.h"
#include "convert.cuh"
template<typename src_t, typename dst_t>
static __device__ __forceinline__ void convert_flt(const src_t * src, dst_t * dst) {
if constexpr (std::is_same_v<src_t, dst_t>) {
*dst = *src;
} else {
*dst = float(*src);
}
}
static __device__ __forceinline__ int best_index_int8(int n, const int8_t * val, float x) {
if (x <= val[0]) return 0;
@@ -213,5 +221,5 @@ static __device__ void cpy_blck_f32_iq4_nl(const char * cxi, char * cdsti) {
template<typename src_t, typename dst_t>
static __device__ void cpy_1_flt(const char * cxi, char * cdsti) {
*(dst_t *) cdsti = ggml_cuda_cast<dst_t>(*(const src_t *) cxi);
convert_flt((const src_t *)cxi, (dst_t *)cdsti);
}

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@@ -15,8 +15,6 @@ typedef void (* fattn_kernel_t)(
const char * __restrict__ K,
const char * __restrict__ V,
const char * __restrict__ mask,
const char * __restrict__ sinks,
const int * __restrict__ KV_max,
float * __restrict__ dst,
float2 * __restrict__ dst_meta,
const float scale,
@@ -502,59 +500,6 @@ constexpr __device__ dequantize_1_f32_t get_dequantize_1_f32(ggml_type type_V) {
nullptr;
}
template <int ncols1>
__launch_bounds__(FATTN_KQ_STRIDE/2, 1)
static __global__ void flash_attn_mask_to_KV_max(
const half2 * __restrict__ mask, int * __restrict__ KV_max, const int ne30, const int s31, const int s33) {
const int ne31 = gridDim.x;
const int tid = threadIdx.x;
const int sequence = blockIdx.y;
const int jt = blockIdx.x;
mask += sequence*s33 + jt*ncols1*s31;
__shared__ int buf_iw[WARP_SIZE];
if (tid < WARP_SIZE) {
buf_iw[tid] = 1;
}
__syncthreads();
int KV_max_sj = (ne30 - 1) * FATTN_KQ_STRIDE;
for (; KV_max_sj >= 0; KV_max_sj -= FATTN_KQ_STRIDE) {
int all_inf = 1;
#pragma unroll
for (int j = 0; j < ncols1; ++j) {
const float2 tmp = __half22float2(mask[j*s31 + KV_max_sj/2 + tid]);
all_inf = all_inf && int(isinf(tmp.x)) && int(isinf(tmp.y));
}
all_inf = warp_reduce_all(all_inf);
if (tid % WARP_SIZE == 0) {
buf_iw[tid / WARP_SIZE] = all_inf;
}
__syncthreads();
all_inf = buf_iw[tid % WARP_SIZE];
__syncthreads();
all_inf = warp_reduce_all(all_inf);
if (!all_inf) {
break;
}
}
// If the break in the loop was not triggered, KV_max_sj is now -FATTN_KQ_STRIDE.
// If the break was triggered it's the lower edge of the tile with the first non-masked values.
// In either case, walk back the decrementation by FATTN_KQ_STRIDE.
KV_max_sj += FATTN_KQ_STRIDE;
if (threadIdx.x != 0) {
return;
}
KV_max[sequence*ne31 + jt] = KV_max_sj;
}
template<int D, int ncols1, int ncols2> // D == head size
__launch_bounds__(D, 1)
static __global__ void flash_attn_stream_k_fixup(
@@ -647,9 +592,9 @@ static __global__ void flash_attn_stream_k_fixup(
}
template<int D> // D == head size
#if !defined(GGML_USE_HIP)
#if !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__))
__launch_bounds__(D, 1)
#endif // !(defined(GGML_USE_HIP)
#endif // !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__))
static __global__ void flash_attn_combine_results(
const float * __restrict__ VKQ_parts,
const float2 * __restrict__ VKQ_meta,
@@ -741,8 +686,7 @@ void launch_fattn(
GGML_ASSERT(V || is_mla);
const ggml_tensor * mask = dst->src[3];
const ggml_tensor * sinks = dst->src[4];
const ggml_tensor * mask = dst->src[3];
ggml_tensor * KQV = dst;
@@ -767,7 +711,6 @@ void launch_fattn(
ggml_cuda_pool_alloc<half> K_f16(pool);
ggml_cuda_pool_alloc<half> V_f16(pool);
ggml_cuda_pool_alloc<int> KV_max(pool);
ggml_cuda_pool_alloc<float> dst_tmp(pool);
ggml_cuda_pool_alloc<float2> dst_tmp_meta(pool);
@@ -836,30 +779,11 @@ void launch_fattn(
V_data = (char *) V_f16.ptr;
}
int parallel_blocks = 1;
const int ntiles_x = ((Q->ne[1] + ncols1 - 1) / ncols1);
const int ntiles_total = ntiles_x * (Q->ne[2] / ncols2) * Q->ne[3];
// Optional optimization where the mask is scanned to determine whether part of the calculation can be skipped.
// Only worth the overhead if there is at lease one FATTN_KQ_STRIDE x FATTN_KQ_STRIDE square to be skipped or
// multiple sequences of possibly different lengths.
if (mask && (Q->ne[1] >= 1024 || Q->ne[3] > 1)) {
const int s31 = mask->nb[1] / sizeof(half2);
const int s33 = mask->nb[3] / sizeof(half2);
const dim3 blocks_num_KV_max(ntiles_x, Q->ne[3], 1);
const dim3 block_dim_KV_max(FATTN_KQ_STRIDE/2, 1, 1);
const int ne_KV_max = blocks_num_KV_max.x*blocks_num_KV_max.y;
const int iter_k = K->ne[1] / FATTN_KQ_STRIDE;
KV_max.alloc(ne_KV_max);
flash_attn_mask_to_KV_max<ncols1><<<blocks_num_KV_max, block_dim_KV_max, 0, main_stream>>>
((const half2 *) mask->data, KV_max.ptr, iter_k, s31, s33);
CUDA_CHECK(cudaGetLastError());
}
int parallel_blocks = 1;
const dim3 block_dim(warp_size, nwarps, 1);
int max_blocks_per_sm = 1; // Max. number of active blocks limited by occupancy.
CUDA_CHECK(cudaOccupancyMaxActiveBlocksPerMultiprocessor(&max_blocks_per_sm, fattn_kernel, block_dim.x * block_dim.y * block_dim.z, nbytes_shared));
@@ -946,8 +870,6 @@ void launch_fattn(
K_data,
V_data,
mask ? ((const char *) mask->data) : nullptr,
sinks ? ((const char *) sinks->data) : nullptr,
KV_max.ptr,
!stream_k && parallel_blocks > 1 ? dst_tmp.ptr : (float *) KQV->data, dst_tmp_meta.ptr,
scale, max_bias, m0, m1, n_head_log2, logit_softcap,
Q->ne[0], Q->ne[1], Q->ne[2], Q->ne[3], Q->nb[1], Q->nb[2], Q->nb[3],

View File

@@ -392,8 +392,7 @@ static __device__ __forceinline__ void flash_attn_ext_f16_load_mask(
}
}
template<int DKQ, int DV, int ncols1, int ncols2, int nwarps, int ntiles,
bool use_logit_softcap, bool mla, bool needs_fixup, bool is_fixup, bool last_iter>
template<int DKQ, int DV, int ncols1, int ncols2, int nwarps, int ntiles, bool use_logit_softcap, bool mla, bool needs_fixup, bool is_fixup, bool last_iter>
static __device__ __forceinline__ void flash_attn_ext_f16_iter(
const float2 * const __restrict__ Q_f2,
const half2 * const __restrict__ K_h2,
@@ -418,7 +417,7 @@ static __device__ __forceinline__ void flash_attn_ext_f16_iter(
float * const __restrict__ KQ_max,
float * const __restrict__ KQ_rowsum,
const int kb0) {
#ifdef TURING_MMA_AVAILABLE
#ifdef NEW_MMA_AVAILABLE
typedef fattn_mma_f16_config<DKQ, DV> c;
#ifdef CP_ASYNC_AVAILABLE
@@ -776,7 +775,7 @@ static __device__ __forceinline__ void flash_attn_ext_f16_iter(
GGML_UNUSED(VKQ_C); GGML_UNUSED(KQ_max); GGML_UNUSED(KQ_rowsum);
GGML_UNUSED(kb0); GGML_UNUSED(tile_Q);
NO_DEVICE_CODE;
#endif // TURING_MMA_AVAILABLE
#endif // NEW_MMA_AVAILABLE
}
template<int DKQ, int DV, int ncols1, int ncols2, int nwarps, int ntiles, bool use_logit_softcap, bool mla, bool needs_fixup, bool is_fixup>
@@ -785,7 +784,6 @@ static __device__ __forceinline__ void flash_attn_ext_f16_process_tile(
const half2 * const __restrict__ K_h2,
const half2 * const __restrict__ V_h2,
const half2 * const __restrict__ mask_h2,
const float * const __restrict__ sinks_f,
float2 * const __restrict__ dstk,
float2 * const __restrict__ dstk_fixup,
const float scale,
@@ -801,7 +799,7 @@ static __device__ __forceinline__ void flash_attn_ext_f16_process_tile(
const int jt,
const int kb0_start,
const int kb0_stop) {
#ifdef TURING_MMA_AVAILABLE
#ifdef NEW_MMA_AVAILABLE
//In this kernel Q, K, V are matrices while i, j, k are matrix indices.
typedef fattn_mma_f16_config<DKQ, DV> c;
@@ -924,8 +922,7 @@ static __device__ __forceinline__ void flash_attn_ext_f16_process_tile(
}
// Iterate over ne11 == previous tokens:
int kb0 = kb0_start;
for (; kb0 < kb0_stop-1; ++kb0) {
for (int kb0 = kb0_start; kb0 < kb0_stop-1; ++kb0) {
constexpr bool last_iter = false;
flash_attn_ext_f16_iter<DKQ, DV, ncols1, ncols2, nwarps, ntiles, use_logit_softcap, mla, needs_fixup, is_fixup, last_iter>
(Q_f2, K_h2, V_h2, mask_h2, dstk, dstk_fixup, scale, slope, logit_softcap,
@@ -935,7 +932,7 @@ static __device__ __forceinline__ void flash_attn_ext_f16_process_tile(
constexpr bool last_iter = true;
flash_attn_ext_f16_iter<DKQ, DV, ncols1, ncols2, nwarps, ntiles, use_logit_softcap, mla, needs_fixup, is_fixup, last_iter>
(Q_f2, K_h2, V_h2, mask_h2, dstk, dstk_fixup, scale, slope, logit_softcap,
ne01, ne02, stride_K, stride_V, stride_mask, tile_Q, tile_K, tile_V, tile_mask, Q_B, VKQ_C, KQ_max, KQ_rowsum, kb0);
ne01, ne02, stride_K, stride_V, stride_mask, tile_Q, tile_K, tile_V, tile_mask, Q_B, VKQ_C, KQ_max, KQ_rowsum, kb0_stop-1);
}
// With multi-stage loading there is no __syncthreads at the end of the iter,
@@ -958,52 +955,6 @@ static __device__ __forceinline__ void flash_attn_ext_f16_process_tile(
}
}
// If attention sinks are used, potentially re-scale if KQ_max is small.
// Also add the sink as a value to KQ_rowsum, this is done after synchonization of KQ_rowsum
// so it's being done unconditionally for every thread.
if (!is_fixup && (np == 1 || threadIdx.y % np == 0) && sinks_f) {
float KQ_max_scale[cols_per_thread];
#pragma unroll
for (int col = 0; col < cols_per_thread; ++col) {
static_assert(ntiles == 1 || ntiles == 2, "ntiles > 2 not implemented");
const int jc = ntiles == 1 ? 2*tile_C_VKQ::get_j(col/2) + col % 2 : tile_C_VKQ_16::get_i(col);
const float sink = sinks_f[jc % ncols2];
const float KQ_max_new = fmaxf(KQ_max[col], sink);
const float KQ_max_diff = KQ_max[col] - KQ_max_new;
KQ_max_scale[col] = expf(KQ_max_diff);
KQ_max[col] = KQ_max_new;
*((uint32_t *) &KQ_max_scale[col]) *= KQ_max_diff >= SOFTMAX_FTZ_THRESHOLD;
const float KQ_max_add = expf(sink - KQ_max_new);
KQ_rowsum[col] = KQ_max_scale[col]*KQ_rowsum[col] + KQ_max_add;
}
if (ntiles == 1) {
const half2 KQ_max_scale_h2 = make_half2(KQ_max_scale[0], KQ_max_scale[1]);
#pragma unroll
for (int i = 0; i < DV/tile_C_VKQ::I; ++i) {
#pragma unroll
for (int l = 0; l < tile_C_VKQ::ne; ++l) {
VKQ_C[i].x[l] *= KQ_max_scale_h2;
}
}
} else {
#pragma unroll
for (int col = 0; col < cols_per_thread; ++col) {
const half2 KQ_max_scale_h2 = make_half2(KQ_max_scale[col], KQ_max_scale[col]);
#pragma unroll
for (int i = 0; i < DV/tile_C_VKQ_16::J; ++i) {
#pragma unroll
for (int l0 = 0; l0 < tile_C_VKQ_16::ne; l0 += 2) {
VKQ_C_16[i*ntiles/2 + col/2].x[l0 + col % 2] *= KQ_max_scale_h2;
}
}
}
}
}
// Combine VKQ accumulator values if np > 1.
// It's also faster to do small writes to shared memory, then large write to VRAM than to do small writes to VRAM.
// So also write VKQ accumulators to shared memory in column-major format if np == 1.
@@ -1243,7 +1194,7 @@ static __device__ __forceinline__ void flash_attn_ext_f16_process_tile(
GGML_UNUSED(stride_Q2); GGML_UNUSED(stride_K); GGML_UNUSED(stride_V); GGML_UNUSED(stride_mask);
GGML_UNUSED(jt); GGML_UNUSED(kb0_start); GGML_UNUSED(kb0_stop);
NO_DEVICE_CODE;
#endif // TURING_MMA_AVAILABLE
#endif // NEW_MMA_AVAILABLE
}
template<int DKQ, int DV, int ncols1, int ncols2, int nwarps, int ntiles, bool use_logit_softcap, bool mla>
@@ -1253,8 +1204,6 @@ static __global__ void flash_attn_ext_f16(
const char * __restrict__ K,
const char * __restrict__ V,
const char * __restrict__ mask,
const char * __restrict__ sinks,
const int * __restrict__ KV_max,
float * __restrict__ dst,
float2 * __restrict__ dst_meta,
const float scale,
@@ -1270,7 +1219,7 @@ static __global__ void flash_attn_ext_f16(
const int32_t nb21, const int32_t nb22, const int64_t nb23,
const int32_t ne31, const int32_t ne32, const int32_t ne33,
const int32_t nb31, const int32_t nb32, const int64_t nb33) {
#if defined(FLASH_ATTN_AVAILABLE) && defined(TURING_MMA_AVAILABLE)
#if defined(FLASH_ATTN_AVAILABLE) && defined(NEW_MMA_AVAILABLE)
// Skip unused kernel variants for faster compilation:
if (use_logit_softcap && !(DKQ == 128 || DKQ == 256)) {
@@ -1315,42 +1264,34 @@ static __global__ void flash_attn_ext_f16(
// kb0 == k start index when in the output tile.
int kb0_start = kbc % iter_k;
int kb0_stop = min(iter_k, kb0_start + kbc_stop - kbc);
while (kbc < kbc_stop && kb0_stop == iter_k) {
const int sequence = kbc / (iter_k*iter_j*(ne02/ncols2));
const int zt = (kbc - iter_k*iter_j*(ne02/ncols2)*sequence) / (iter_k*iter_j); // head in units of ncols2
const int jt = (kbc - iter_k*iter_j*(ne02/ncols2)*sequence - iter_k*iter_j*zt) / iter_k; // j index of current tile.
const int head = (kbc - iter_k*iter_j*(ne02/ncols2)*sequence) / (iter_k*iter_j);
const int jt = (kbc - iter_k*iter_j*(ne02/ncols2)*sequence - iter_k*iter_j*head) / iter_k; // j index of current tile.
const int head0 = zt * ncols2;
const float2 * Q_f2 = (const float2 *) (Q + nb03*sequence + nb02* head0);
const half2 * K_h2 = (const half2 *) (K + nb13*sequence + nb12*(head0 / gqa_ratio));
const float2 * Q_f2 = (const float2 *) (Q + nb03*sequence + nb02*(head*ncols2));
const half2 * K_h2 = (const half2 *) (K + nb13*sequence + nb12*(head*ncols2 / gqa_ratio));
const half2 * mask_h2 = ncols2 == 1 && !mask ? nullptr :
(const half2 *) (mask + nb33*(sequence % ne33) + nb31*jt*ncols1);
float2 * dstk = ((float2 *) dst) + (sequence*ne01*ne02 + head0) * (DV/2);
float2 * dstk = ((float2 *) dst) + (sequence*ne01*ne02 + head*ncols2) * (DV/2);
const half2 * V_h2 = mla ? K_h2 + (DKQ/2 - DV/2) : (const half2 *) (V + nb23*sequence + nb22*(head0 / gqa_ratio));
const float * sinks_f = sinks ? (const float *) sinks + head0 : nullptr;
const half2 * V_h2 = mla ? K_h2 + (DKQ/2 - DV/2) : (const half2 *) (V + nb23*sequence + nb22*(head*ncols2 / gqa_ratio));
const float slope = ncols2 == 1 ? get_alibi_slope(max_bias, head0, n_head_log2, m0, m1) : 1.0f;
const float slope = ncols2 == 1 ? get_alibi_slope(max_bias, head, n_head_log2, m0, m1) : 1.0f;
const int kb0_start_kernel = kb0_start * kb_niter;
int kb0_stop_kernel = kb0_stop * kb_niter;
if (KV_max) {
kb0_stop_kernel = min(kb0_stop_kernel, KV_max[sequence*iter_j + jt] / c::nbatch_fa);
}
const int kb0_stop_kernel = kb0_stop * kb_niter;
constexpr bool is_fixup = false; // All but (potentially) the last iterations write their data to dst rather than the fixup buffer.
if (kb0_start == 0) {
constexpr bool needs_fixup = false; // CUDA block is working on an entire tile.
flash_attn_ext_f16_process_tile<DKQ, DV, ncols1, ncols2, nwarps, ntiles, use_logit_softcap, mla, needs_fixup, is_fixup>
(Q_f2, K_h2, V_h2, mask_h2, sinks_f, dstk, dst_meta, scale, slope, logit_softcap,
(Q_f2, K_h2, V_h2, mask_h2, dstk, dst_meta, scale, slope, logit_softcap,
ne01, ne02, stride_Q1, stride_Q2, stride_K, stride_V, stride_mask, jt, kb0_start_kernel, kb0_stop_kernel);
} else {
constexpr bool needs_fixup = true; // CUDA block is working on the beginning of a tile.
flash_attn_ext_f16_process_tile<DKQ, DV, ncols1, ncols2, nwarps, ntiles, use_logit_softcap, mla, needs_fixup, is_fixup>
(Q_f2, K_h2, V_h2, mask_h2, sinks_f, dstk, dst_meta, scale, slope, logit_softcap,
(Q_f2, K_h2, V_h2, mask_h2, dstk, dst_meta, scale, slope, logit_softcap,
ne01, ne02, stride_Q1, stride_Q2, stride_K, stride_V, stride_mask, jt, kb0_start_kernel, kb0_stop_kernel);
}
@@ -1366,36 +1307,29 @@ static __global__ void flash_attn_ext_f16(
}
const int sequence = kbc / (iter_k*iter_j*(ne02/ncols2));
const int zt = (kbc - iter_k*iter_j*(ne02/ncols2)*sequence) / (iter_k*iter_j); // head in units of ncols2
const int jt = (kbc - iter_k*iter_j*(ne02/ncols2)*sequence - iter_k*iter_j*zt) / iter_k; // j index of current tile.
const int head = (kbc - iter_k*iter_j*(ne02/ncols2)*sequence) / (iter_k*iter_j);
const int jt = (kbc - iter_k*iter_j*(ne02/ncols2)*sequence - iter_k*iter_j*head) / iter_k; // j index of current tile.
const int head0 = zt * ncols2;
const float2 * Q_f2 = (const float2 *) (Q + nb03*sequence + nb02* head0);
const half2 * K_h2 = (const half2 *) (K + nb13*sequence + nb12*(head0 / gqa_ratio));
const float2 * Q_f2 = (const float2 *) (Q + nb03*sequence + nb02*(head*ncols2));
const half2 * K_h2 = (const half2 *) (K + nb13*sequence + nb12*(head*ncols2 / gqa_ratio));
const half2 * mask_h2 = ncols2 == 1 && !mask ? nullptr :
(const half2 *) (mask + nb33*(sequence % ne33) + nb31*jt*ncols1);
float2 * dstk = ((float2 *) dst) + (sequence*ne01*ne02 + head0) * (DV/2);
float2 * dstk = ((float2 *) dst) + (sequence*ne01*ne02 + head*ncols2) * (DV/2);
const half2 * V_h2 = mla ? K_h2 + (DKQ/2 - DV/2) : (const half2 *) (V + nb23*sequence + nb22*(head0 / gqa_ratio));
const float * sinks_f = sinks ? (const float *) sinks + head0 : nullptr;
const half2 * V_h2 = mla ? K_h2 + (DKQ/2 - DV/2) : (const half2 *) (V + nb23*sequence + nb22*(head*ncols2 / gqa_ratio));
const float slope = ncols2 == 1 ? get_alibi_slope(max_bias, head0, n_head_log2, m0, m1) : 1.0f;
const float slope = ncols2 == 1 ? get_alibi_slope(max_bias, head, n_head_log2, m0, m1) : 1.0f;
const int kb0_start_kernel = kb0_start * kb_niter;
int kb0_stop_kernel = kb0_stop * kb_niter;
if (KV_max) {
kb0_stop_kernel = min(kb0_stop_kernel, KV_max[sequence*iter_j + jt] / c::nbatch_fa);
}
const int kb0_stop_kernel = kb0_stop * kb_niter;
constexpr bool is_fixup = true; // Last index writes its data to fixup buffer to avoid data races with other blocks.
constexpr bool needs_fixup = false;
flash_attn_ext_f16_process_tile<DKQ, DV, ncols1, ncols2, nwarps, ntiles, use_logit_softcap, mla, needs_fixup, is_fixup>
(Q_f2, K_h2, V_h2, mask_h2, sinks_f, dstk, dst_meta, scale, slope, logit_softcap,
(Q_f2, K_h2, V_h2, mask_h2, dstk, dst_meta, scale, slope, logit_softcap,
ne01, ne02, stride_Q1, stride_Q2, stride_K, stride_V, stride_mask, jt, kb0_start_kernel, kb0_stop_kernel);
#else
GGML_UNUSED(Q); GGML_UNUSED(K); GGML_UNUSED(V); GGML_UNUSED(mask); GGML_UNUSED(sinks);
GGML_UNUSED(Q); GGML_UNUSED(K); GGML_UNUSED(V); GGML_UNUSED(mask);
GGML_UNUSED(dst); GGML_UNUSED(dst_meta);
GGML_UNUSED(scale); GGML_UNUSED(max_bias); GGML_UNUSED(m0); GGML_UNUSED(m1);
GGML_UNUSED(n_head_log2); GGML_UNUSED(logit_softcap);
@@ -1407,7 +1341,7 @@ static __global__ void flash_attn_ext_f16(
GGML_UNUSED(ne31); GGML_UNUSED(ne32); GGML_UNUSED(ne33);
GGML_UNUSED(nb31); GGML_UNUSED(nb32); GGML_UNUSED(nb33);
NO_DEVICE_CODE;
#endif // defined(FLASH_ATTN_AVAILABLE) && defined(TURING_MMA_AVAILABLE)
#endif // defined(FLASH_ATTN_AVAILABLE) && defined(NEW_MMA_AVAILABLE)
}
template <int DKQ, int DV, int ncols1, int ncols2>
@@ -1457,24 +1391,24 @@ void ggml_cuda_flash_attn_ext_mma_f16_case(ggml_backend_cuda_context & ctx, ggml
constexpr bool use_logit_softcap = false;
fattn_kernel = flash_attn_ext_f16<DKQ, DV, ncols1, ncols2, nwarps, ntiles, use_logit_softcap, mla>;
#if !defined(GGML_USE_HIP) && !defined(GGML_USE_MUSA)
#if !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)) && !defined(GGML_USE_MUSA)
static bool shared_memory_limit_raised[GGML_CUDA_MAX_DEVICES] = {false};
if (!shared_memory_limit_raised[id]) {
CUDA_CHECK(cudaFuncSetAttribute(fattn_kernel, cudaFuncAttributeMaxDynamicSharedMemorySize, nbytes_shared_total));
shared_memory_limit_raised[id] = true;
}
#endif // !defined(GGML_USE_HIP) && !defined(GGML_USE_MUSA)
#endif // !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)) && !defined(GGML_USE_MUSA)
} else {
constexpr bool use_logit_softcap = true;
fattn_kernel = flash_attn_ext_f16<DKQ, DV, ncols1, ncols2, nwarps, ntiles, use_logit_softcap, mla>;
#if !defined(GGML_USE_HIP) && !defined(GGML_USE_MUSA)
#if !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)) && !defined(GGML_USE_MUSA)
static bool shared_memory_limit_raised[GGML_CUDA_MAX_DEVICES] = {false};
if (!shared_memory_limit_raised[id]) {
CUDA_CHECK(cudaFuncSetAttribute(fattn_kernel, cudaFuncAttributeMaxDynamicSharedMemorySize, nbytes_shared_total));
shared_memory_limit_raised[id] = true;
}
#endif // !defined(GGML_USE_HIP) && !defined(GGML_USE_MUSA)
#endif // !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)) && !defined(GGML_USE_MUSA)
}
launch_fattn<DV, ncols1, ncols2>

View File

@@ -5,16 +5,14 @@
#define FATTN_KQ_STRIDE_TILE_F16 64
template<int D, int ncols, int nwarps, bool use_logit_softcap> // D == head size
#if !defined(GGML_USE_HIP)
#if !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__))
__launch_bounds__(nwarps*WARP_SIZE, 2)
#endif // !defined(GGML_USE_HIP)
#endif // !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__))
static __global__ void flash_attn_tile_ext_f16(
const char * __restrict__ Q,
const char * __restrict__ K,
const char * __restrict__ V,
const char * __restrict__ mask,
const char * __restrict__ sinks,
const int * __restrict__ KV_max,
float * __restrict__ dst,
float2 * __restrict__ dst_meta,
const float scale,
@@ -49,11 +47,10 @@ static __global__ void flash_attn_tile_ext_f16(
const int sequence = blockIdx.z / ne02;
const int head = blockIdx.z - sequence*ne02;
const int gqa_ratio = ne02 / ne12; // With grouped query attention there are > 1 Q matrices per K, V matrix.
const float2 * Q_f2 = (const float2 *) (Q + nb03* sequence + nb02* head + nb01*ic0);
const half2 * K_h2 = (const half2 *) (K + nb13* sequence + nb12*(head / gqa_ratio));
const half2 * V_h2 = (const half2 *) (V + nb13* sequence + nb12*(head / gqa_ratio)); // K and V have same shape
const half * maskh = (const half *) (mask + nb33*(sequence % ne33) + nb31*ic0);
const float * sinksf = (const float *) (sinks);
const float2 * Q_f2 = (const float2 *) (Q + nb03* sequence + nb02* head + nb01*ic0);
const half2 * K_h2 = (const half2 *) (K + nb13* sequence + nb12*(head / gqa_ratio));
const half2 * V_h2 = (const half2 *) (V + nb13* sequence + nb12*(head / gqa_ratio)); // K and V have same shape
const half * maskh = (const half *) (mask + nb33*(sequence % ne33) + nb31*ic0);
const int stride_KV2 = nb11 / sizeof(half2);
@@ -93,8 +90,7 @@ static __global__ void flash_attn_tile_ext_f16(
__syncthreads();
const int k_VKQ_max = KV_max ? KV_max[sequence*gridDim.x + blockIdx.x] : ne11;
for (int k_VKQ_0 = blockIdx.y*FATTN_KQ_STRIDE_TILE_F16; k_VKQ_0 < k_VKQ_max; k_VKQ_0 += gridDim.y*FATTN_KQ_STRIDE_TILE_F16) {
for (int k_VKQ_0 = blockIdx.y*FATTN_KQ_STRIDE_TILE_F16; k_VKQ_0 < ne11; k_VKQ_0 += gridDim.y*FATTN_KQ_STRIDE_TILE_F16) {
// Calculate KQ tile and keep track of new maximum KQ values:
half kqmax_new[ncols/nwarps];
@@ -243,31 +239,6 @@ static __global__ void flash_attn_tile_ext_f16(
__syncthreads();
}
//Attention sink: adjust running max and sum once per head
if (sinksf && blockIdx.y == 0) {
const half sink = __float2half(sinksf[head]);
#pragma unroll
for (int j0 = 0; j0 < ncols; j0 += nwarps) {
half kqmax_new_j = fmaxf(kqmax[j0/nwarps], sink);
kqmax_new_j = warp_reduce_max(kqmax_new_j);
const half2 KQ_max_scale = __half2half2(hexp(kqmax[j0/nwarps] - kqmax_new_j));
kqmax[j0/nwarps] = kqmax_new_j;
const half val = hexp(sink - kqmax[j0/nwarps]);
kqsum[j0/nwarps] = kqsum[j0/nwarps] * KQ_max_scale;
if (threadIdx.x == 0) {
kqsum[j0/nwarps].x = __hadd(kqsum[j0/nwarps].x, val);
}
#pragma unroll
for (int i0 = 0; i0 < D/2; i0 += WARP_SIZE) {
VKQ[j0/nwarps][i0/WARP_SIZE] *= KQ_max_scale;
}
}
}
float2 * dst2 = (float2 *) dst;
#pragma unroll
@@ -299,7 +270,7 @@ static __global__ void flash_attn_tile_ext_f16(
}
}
#else
GGML_UNUSED(Q); GGML_UNUSED(K); GGML_UNUSED(V); GGML_UNUSED(mask); GGML_UNUSED(sinks);
GGML_UNUSED(Q); GGML_UNUSED(K); GGML_UNUSED(V); GGML_UNUSED(mask);
GGML_UNUSED(dst); GGML_UNUSED(dst_meta); GGML_UNUSED(scale);
GGML_UNUSED(max_bias); GGML_UNUSED(m0); GGML_UNUSED(m1);
GGML_UNUSED(n_head_log2); GGML_UNUSED(logit_softcap);

View File

@@ -5,16 +5,14 @@
#define FATTN_KQ_STRIDE_TILE_F32 32
template<int D, int ncols, int nwarps, bool use_logit_softcap> // D == head size
#if !defined(GGML_USE_HIP)
#if !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__))
__launch_bounds__(nwarps*WARP_SIZE, 2)
#endif // !defined(GGML_USE_HIP)
#endif // !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__))
static __global__ void flash_attn_tile_ext_f32(
const char * __restrict__ Q,
const char * __restrict__ K,
const char * __restrict__ V,
const char * __restrict__ mask,
const char * __restrict__ sinks,
const int * __restrict__ KV_max,
float * __restrict__ dst,
float2 * __restrict__ dst_meta,
const float scale,
@@ -38,7 +36,7 @@ static __global__ void flash_attn_tile_ext_f32(
return;
#endif // FP16_MMA_AVAILABLE
if (use_logit_softcap && !(D == 128 || D == 256)) {
GGML_UNUSED(Q); GGML_UNUSED(K); GGML_UNUSED(V); GGML_UNUSED(mask); GGML_UNUSED(sinks);
GGML_UNUSED(Q); GGML_UNUSED(K); GGML_UNUSED(V); GGML_UNUSED(mask);
GGML_UNUSED(dst); GGML_UNUSED(dst_meta);
GGML_UNUSED(scale); GGML_UNUSED(max_bias); GGML_UNUSED(m0); GGML_UNUSED(m1);
GGML_UNUSED(n_head_log2); GGML_UNUSED(logit_softcap);
@@ -60,11 +58,10 @@ static __global__ void flash_attn_tile_ext_f32(
const int sequence = blockIdx.z / ne02;
const int head = blockIdx.z - sequence*ne02;
const int gqa_ratio = ne02 / ne12; // With grouped query attention there are > 1 Q matrices per K, V matrix.
const float2 * Q_f2 = (const float2 *) (Q + nb03* sequence + nb02* head + nb01*ic0);
const half2 * K_h2 = (const half2 *) (K + nb13* sequence + nb12*(head / gqa_ratio));
const half2 * V_h2 = (const half2 *) (V + nb13* sequence + nb12*(head / gqa_ratio)); // K and V have same shape
const half * maskh = (const half *) (mask + nb33*(sequence % ne33) + nb31*ic0);
const float * sinksf = (const float *) (sinks);
const float2 * Q_f2 = (const float2 *) (Q + nb03* sequence + nb02* head + nb01*ic0);
const half2 * K_h2 = (const half2 *) (K + nb13* sequence + nb12*(head / gqa_ratio));
const half2 * V_h2 = (const half2 *) (V + nb13* sequence + nb12*(head / gqa_ratio)); // K and V have same shape
const half * maskh = (const half *) (mask + nb33*(sequence % ne33) + nb31*ic0);
const int stride_KV2 = nb11 / sizeof(half2);
@@ -102,8 +99,7 @@ static __global__ void flash_attn_tile_ext_f32(
__syncthreads();
const int k_VKQ_max = KV_max ? KV_max[sequence*gridDim.x + blockIdx.x] : ne11;
for (int k_VKQ_0 = blockIdx.y*FATTN_KQ_STRIDE_TILE_F32; k_VKQ_0 < k_VKQ_max; k_VKQ_0 += gridDim.y*FATTN_KQ_STRIDE_TILE_F32) {
for (int k_VKQ_0 = blockIdx.y*FATTN_KQ_STRIDE_TILE_F32; k_VKQ_0 < ne11; k_VKQ_0 += gridDim.y*FATTN_KQ_STRIDE_TILE_F32) {
// Calculate KQ tile and keep track of new maximum KQ values:
float kqmax_new[ncols/nwarps];
@@ -253,33 +249,6 @@ static __global__ void flash_attn_tile_ext_f32(
__syncthreads();
}
//Attention sink: adjust running max and sum once per head
if (sinksf && blockIdx.y == 0) {
const float sink = sinksf[head];
#pragma unroll
for (int j0 = 0; j0 < ncols; j0 += nwarps) {
float kqmax_new_j = fmaxf(kqmax[j0/nwarps], sink);
kqmax_new_j = warp_reduce_max(kqmax_new_j);
const float KQ_max_scale = expf(kqmax[j0/nwarps] - kqmax_new_j);
kqmax[j0/nwarps] = kqmax_new_j;
const float val = expf(sink - kqmax[j0/nwarps]);
kqsum[j0/nwarps] = kqsum[j0/nwarps] * KQ_max_scale;
if (threadIdx.x == 0) {
kqsum[j0/nwarps] += val;
}
#pragma unroll
for (int i0 = 0; i0 < D/2; i0 += WARP_SIZE) {
VKQ[j0/nwarps][i0/WARP_SIZE].x *= KQ_max_scale;
VKQ[j0/nwarps][i0/WARP_SIZE].y *= KQ_max_scale;
}
}
}
float2 * dst2 = (float2 *) dst;
#pragma unroll

View File

@@ -16,8 +16,6 @@ static __global__ void flash_attn_vec_ext_f16(
const char * __restrict__ K,
const char * __restrict__ V,
const char * __restrict__ mask,
const char * __restrict__ sinks,
const int * __restrict__ KV_max,
float * __restrict__ dst,
float2 * __restrict__ dst_meta,
const float scale,
@@ -62,8 +60,7 @@ static __global__ void flash_attn_vec_ext_f16(
K += nb13*sequence + nb12*(head / gqa_ratio);
V += nb23*sequence + nb22*(head / gqa_ratio);
const half * maskh = (const half *) (mask + nb33*(sequence % ne33) + nb31*ic0);
const float * sinksf = (const float *) (sinks);
const half * maskh = (const half *) (mask + nb33*(sequence % ne33) + nb31*ic0);
const float slopef = get_alibi_slope(max_bias, head, n_head_log2, m0, m1);
const half slopeh = __float2half(slopef);
@@ -77,12 +74,11 @@ static __global__ void flash_attn_vec_ext_f16(
half2 * KQ2 = (half2 *) KQ;
half kqmax[ncols];
half kqsum[ncols];
#pragma unroll
for (int j = 0; j < ncols; ++j) {
kqmax[j] = -HALF_MAX_HALF;
kqsum[j] = 0.0f;
}
half kqsum[ncols] = {0.0f};
__shared__ half kqmax_shared[ncols][WARP_SIZE];
__shared__ half kqsum_shared[ncols][WARP_SIZE];
@@ -181,11 +177,10 @@ static __global__ void flash_attn_vec_ext_f16(
half2 VKQ[ncols] = {{0.0f, 0.0f}};
const int k_VKQ_max = KV_max ? KV_max[sequence*gridDim.x + blockIdx.x] : ne11;
K += blockIdx.y*D * nb11;
V += blockIdx.y*D * nb21;
maskh += blockIdx.y*D;
for (int k_VKQ_0 = blockIdx.y*D; k_VKQ_0 < k_VKQ_max; k_VKQ_0 += gridDim.y*D,
for (int k_VKQ_0 = blockIdx.y*D; k_VKQ_0 < ne11; k_VKQ_0 += gridDim.y*D,
// Increment pointers after each loop:
K += gridDim.y*D*nb11, V += gridDim.y*D*nb21, maskh += gridDim.y*D) {
@@ -196,7 +191,29 @@ static __global__ void flash_attn_vec_ext_f16(
for (int j = 0; j < ncols; ++j) {
maskh_shared[j*D + tid] = slopeh*maskh[j*ne11 + tid];
}
__syncthreads();
// When using multiple parallel sequences in llama.cpp, some KV slices can be fully masked out.
// In such cases, skip the KV slice.
// On AMD __all_sync would not work correctly because it assumes a warp size of 64.
#ifndef GGML_USE_HIP
bool skip = true;
#pragma unroll
for (int j = 0; j < ncols; ++j) {
#pragma unroll
for (int i0 = 0; i0 < D/2; i0 += WARP_SIZE) {
const int i = i0 + threadIdx.x;
const float2 tmp = __half22float2(((const half2 *) maskh_shared)[j*(D/2) + i]);
skip = skip && isinf(tmp.x) && isinf(tmp.y);
}
}
if (__all_sync(0xFFFFFFFF, skip)) {
__syncthreads();
continue;
}
#endif // GGML_USE_HIP
}
// For unknown reasons using a half array of size 1 for kqmax_new causes a performance regression,
@@ -286,39 +303,6 @@ static __global__ void flash_attn_vec_ext_f16(
__syncthreads();
}
if (sinksf && blockIdx.y == 0) {
const half sink = __float2half(sinksf[head]);
#pragma unroll
for (int j = 0; j < ncols; ++j) {
if (threadIdx.x == 0) {
kqmax_shared[j][threadIdx.y] = fmaxf(kqmax[j], sink);
}
}
__syncthreads();
#pragma unroll
for (int j = 0; j < ncols; ++j) {
half kqmax_new_j = kqmax_shared[j][threadIdx.x];
kqmax_new_j = warp_reduce_max(kqmax_new_j);
const half KQ_max_scale = hexp(kqmax[j] - kqmax_new_j);
kqmax[j] = kqmax_new_j;
const half val = hexp(sink - kqmax[j]);
kqsum[j] = kqsum[j]*KQ_max_scale;
if (tid == 0) {
kqsum[j] += val;
}
VKQ[j] *= __half2half2(KQ_max_scale);
}
__syncthreads();
}
#pragma unroll
for (int j = 0; j < ncols; ++j) {
kqsum[j] = warp_reduce_sum((float)kqsum[j]);
@@ -349,7 +333,7 @@ static __global__ void flash_attn_vec_ext_f16(
dst_meta[((sequence*ne01 + ic0 + tid)*ne02 + head)*gridDim.y + blockIdx.y] = make_float2(kqmax[tid], kqsum[tid]);
}
#else
GGML_UNUSED(Q); GGML_UNUSED(K); GGML_UNUSED(V); GGML_UNUSED(mask); GGML_UNUSED(sinks);
GGML_UNUSED(Q); GGML_UNUSED(K); GGML_UNUSED(V); GGML_UNUSED(mask);
GGML_UNUSED(dst); GGML_UNUSED(dst_meta);
GGML_UNUSED(scale); GGML_UNUSED(max_bias); GGML_UNUSED(m0); GGML_UNUSED(m1);
GGML_UNUSED(n_head_log2); GGML_UNUSED(logit_softcap);

View File

@@ -16,8 +16,6 @@ static __global__ void flash_attn_vec_ext_f32(
const char * __restrict__ K,
const char * __restrict__ V,
const char * __restrict__ mask,
const char * __restrict__ sinks,
const int * __restrict__ KV_max,
float * __restrict__ dst,
float2 * __restrict__ dst_meta,
const float scale,
@@ -73,8 +71,7 @@ static __global__ void flash_attn_vec_ext_f32(
K += nb13*sequence + nb12*(head / gqa_ratio);
V += nb23*sequence + nb22*(head / gqa_ratio);
const half * maskh = (const half *) (mask + nb33*(sequence % ne33) + nb31*ic0);
const float * sinksf = (const float *) (sinks);
const half * maskh = (const half *) (mask + nb33*(sequence % ne33) + nb31*ic0);
const float slope = get_alibi_slope(max_bias, head, n_head_log2, m0, m1);
@@ -90,12 +87,11 @@ static __global__ void flash_attn_vec_ext_f32(
}
float kqmax[ncols];
float kqsum[ncols];
#pragma unroll
for (int j = 0; j < ncols; ++j) {
kqmax[j] = -FLT_MAX/2.0f;
kqsum[j] = 0.0f;
}
float kqsum[ncols] = {0.0f};
__shared__ float kqmax_shared[ncols][WARP_SIZE];
__shared__ float kqsum_shared[ncols][WARP_SIZE];
@@ -187,11 +183,10 @@ static __global__ void flash_attn_vec_ext_f32(
float VKQ[ncols] = {0.0f};
const int k_VKQ_max = KV_max ? KV_max[sequence*gridDim.x + blockIdx.x] : ne11;
K += blockIdx.y*D * nb11;
V += blockIdx.y*D * nb21;
maskh += blockIdx.y*D;
for (int k_VKQ_0 = blockIdx.y*D; k_VKQ_0 < k_VKQ_max; k_VKQ_0 += gridDim.y*D,
for (int k_VKQ_0 = blockIdx.y*D; k_VKQ_0 < ne11; k_VKQ_0 += gridDim.y*D,
// Increment pointers after each loop:
K += gridDim.y*D*nb11, V += gridDim.y*D*nb21, maskh += gridDim.y*D) {
@@ -202,7 +197,28 @@ static __global__ void flash_attn_vec_ext_f32(
for (int j = 0; j < ncols; ++j) {
maskf_shared[j*D + tid] = slope*__half2float(maskh[j*ne11 + tid]);
}
__syncthreads();
// When using multiple parallel sequences in llama.cpp, some KV slices can be fully masked out.
// In such cases, skip the KV slice.
// On AMD __all_sync would not work correctly because it assumes a warp size of 64.
#ifndef GGML_USE_HIP
bool skip = true;
#pragma unroll
for (int j = 0; j < ncols; ++j) {
#pragma unroll
for (int i0 = 0; i0 < D; i0 += WARP_SIZE) {
const int i = i0 + threadIdx.x;
skip = skip && isinf(maskf_shared[j*D + i]);
}
}
if (__all_sync(0xFFFFFFFF, skip)) {
__syncthreads();
continue;
}
#endif // GGML_USE_HIP
}
float kqmax_new_arr[ncols];
@@ -282,39 +298,6 @@ static __global__ void flash_attn_vec_ext_f32(
__syncthreads();
}
if (sinksf && blockIdx.y == 0) {
const float sink = sinksf[head];
#pragma unroll
for (int j = 0; j < ncols; ++j) {
if (threadIdx.x == 0) {
kqmax_shared[j][threadIdx.y] = fmaxf(kqmax[j], sink);
}
}
__syncthreads();
#pragma unroll
for (int j = 0; j < ncols; ++j) {
float kqmax_new_j = kqmax_shared[j][threadIdx.x];
kqmax_new_j = warp_reduce_max(kqmax_new_j);
const float KQ_max_scale = expf(kqmax[j] - kqmax_new_j);
kqmax[j] = kqmax_new_j;
const float val = expf(sink - kqmax[j]);
kqsum[j] = kqsum[j]*KQ_max_scale;
if (tid == 0) {
kqsum[j] += val;
}
VKQ[j] *= KQ_max_scale;
}
__syncthreads();
}
#pragma unroll
for (int j = 0; j < ncols; ++j) {
kqsum[j] = warp_reduce_sum(kqsum[j]);

View File

@@ -7,7 +7,7 @@
#include "fattn-wmma-f16.cuh"
#ifdef FP16_MMA_AVAILABLE
#if !defined(GGML_USE_HIP)
#if !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__))
#include <mma.h>
#ifdef GGML_USE_MUSA
namespace wmma = mtmusa::wmma;
@@ -15,9 +15,10 @@ namespace wmma = mtmusa::wmma;
namespace wmma = nvcuda::wmma;
#endif // GGML_USE_MUSA
#elif defined(GGML_HIP_ROCWMMA_FATTN) && defined(FP16_MMA_AVAILABLE)
#undef HIP_ENABLE_WARP_SYNC_BUILTINS // conflicts with rocWMMA headers
#include <rocwmma/rocwmma.hpp>
namespace wmma = rocwmma;
#endif // !defined(GGML_USE_HIP)
#endif // !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__))
#endif // FP16_MMA_AVAILABLE
// D == head size, VKQ_stride == num VKQ rows calculated in parallel:
@@ -28,8 +29,6 @@ static __global__ void flash_attn_ext_f16(
const char * __restrict__ K,
const char * __restrict__ V,
const char * __restrict__ mask,
const char * __restrict__ sinks,
const int * __restrict__ KV_max,
float * __restrict__ dst,
float2 * __restrict__ dst_meta,
const float scale,
@@ -81,12 +80,11 @@ static __global__ void flash_attn_ext_f16(
const int sequence = blockIdx.z / ne02;
const int head = blockIdx.z - sequence*ne02;
const int gqa_ratio = ne02 / ne12; // With grouped query attention there are > 1 Q matrices per K, V matrix.
const float * Q_f = (const float *) (Q + nb03* sequence + nb02* head + nb01*ic0);
const half * K_h = (const half *) (K + nb13* sequence + nb12*(head / gqa_ratio));
const half * V_h = (const half *) (V + nb13* sequence + nb12*(head / gqa_ratio)); // K and V have same shape
const half * maskh = (const half *) (mask + nb33*(sequence % ne33) + nb31*ic0);
const half2 * mask2 = (const half2 *) maskh;
const float * sinksf = (const float *) sinks;
const float * Q_f = (const float *) (Q + nb03* sequence + nb02* head + nb01*ic0);
const half * K_h = (const half *) (K + nb13* sequence + nb12*(head / gqa_ratio));
const half * V_h = (const half *) (V + nb13* sequence + nb12*(head / gqa_ratio)); // K and V have same shape
const half * maskh = (const half *) (mask + nb33*(sequence % ne33) + nb31*ic0);
const half2 * mask2 = (const half2 *) maskh;
const int stride_Q = nb01 / sizeof(float);
const int stride_KV = nb11 / sizeof(half);
@@ -167,8 +165,7 @@ static __global__ void flash_attn_ext_f16(
__syncthreads();
// Iterate over ne11 == previous tokens:
const int k_VKQ_max = KV_max ? KV_max[sequence*gridDim.x + blockIdx.x] : ne11;
for (int k_VKQ_0 = blockIdx.y*FATTN_KQ_STRIDE; k_VKQ_0 < k_VKQ_max; k_VKQ_0 += gridDim.y*FATTN_KQ_STRIDE) {
for (int k_VKQ_0 = blockIdx.y*FATTN_KQ_STRIDE; k_VKQ_0 < ne11; k_VKQ_0 += gridDim.y*FATTN_KQ_STRIDE) {
// Calculate tile of KQ:
#pragma unroll
for (int i_KQ_0 = 0; i_KQ_0 < FATTN_KQ_STRIDE; i_KQ_0 += KQ_stride_tc) {
@@ -381,53 +378,6 @@ static __global__ void flash_attn_ext_f16(
__syncthreads();
}
// Apply attention sinks
if (sinksf && blockIdx.y == 0) {
const float sinkf = sinksf[head];
const half sinkh = __float2half(sinkf);
#pragma unroll
for (int j0 = 0; j0 < ncols; j0 += nwarps) {
const int j = j0 + threadIdx.y;
if (std::is_same<KQ_acc_t, float>::value) {
float kqmax_new = fmaxf(KQ_max_f[j0/nwarps], sinkf);
const float KQ_max_scale = expf(KQ_max_f[j0/nwarps] - kqmax_new);
KQ_max_f[j0/nwarps] = kqmax_new;
KQ_rowsum_f[j0/nwarps] = KQ_rowsum_f[j0/nwarps] * KQ_max_scale + expf(sinkf - KQ_max_f[j0/nwarps]);
const half2 scale_h2 = make_half2(KQ_max_scale, KQ_max_scale);
#pragma unroll
for (int i0 = 0; i0 < D/2; i0 += warp_size) {
const int i = i0 + threadIdx.x;
if (i0 + warp_size > D/2 && i >= D/2) break;
VKQ2[j*(D_padded/2) + i] *= scale_h2;
}
} else {
half kqmax_old = __low2half(KQ_max_h2[j0/nwarps]);
half kqmax_new = fmaxf(kqmax_old, sinkh);
KQ_max_h2[j0/nwarps] = __half2half2(kqmax_new);
const half KQ_max_scale_h = hexp(kqmax_old - kqmax_new);
const half2 KQ_max_scale = __half2half2(KQ_max_scale_h);
KQ_rowsum_h2[j0/nwarps] = KQ_rowsum_h2[j0/nwarps] * KQ_max_scale;
const half val = hexp(sinkh - kqmax_new);
KQ_rowsum_h2[j0/nwarps].x = __hadd(KQ_rowsum_h2[j0/nwarps].x, val);
#pragma unroll
for (int i0 = 0; i0 < D/2; i0 += warp_size) {
const int i = i0 + threadIdx.x;
if (i0 + warp_size > D/2 && i >= D/2) break;
VKQ2[j*(D_padded/2) + i] *= KQ_max_scale;
}
}
}
__syncthreads();
}
#pragma unroll
for (int j0 = 0; j0 < ncols; j0 += nwarps) {
const int j_VKQ = j0 + threadIdx.y;
@@ -471,7 +421,7 @@ static __global__ void flash_attn_ext_f16(
dst_meta[j_dst_unrolled] = dst_meta_val;
}
#else
GGML_UNUSED(Q); GGML_UNUSED(K); GGML_UNUSED(V); GGML_UNUSED(mask); GGML_UNUSED(sinks);
GGML_UNUSED(Q); GGML_UNUSED(K); GGML_UNUSED(V); GGML_UNUSED(mask);
GGML_UNUSED(dst); GGML_UNUSED(dst_meta); GGML_UNUSED(scale);
GGML_UNUSED(max_bias); GGML_UNUSED(m0); GGML_UNUSED(m1);
GGML_UNUSED(n_head_log2); GGML_UNUSED(logit_softcap);
@@ -596,7 +546,7 @@ void ggml_cuda_flash_attn_ext_wmma_f16(ggml_backend_cuda_context & ctx, ggml_ten
return;
}
#if !defined(GGML_USE_HIP)
#if !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__))
if (Q->ne[1] <= 8 && Q->ne[0] % warp_size == 0) {
constexpr int cols_per_block = 8;
switch (Q->ne[0]) {
@@ -618,7 +568,7 @@ void ggml_cuda_flash_attn_ext_wmma_f16(ggml_backend_cuda_context & ctx, ggml_ten
}
return;
}
#endif // !defined(GGML_USE_HIP)
#endif // !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__))
if (Q->ne[1] <= 32) {
constexpr int cols_per_block = 16;

View File

@@ -269,11 +269,11 @@ static void ggml_cuda_flash_attn_ext_vec_f32(ggml_backend_cuda_context & ctx, gg
}
void ggml_cuda_flash_attn_ext(ggml_backend_cuda_context & ctx, ggml_tensor * dst) {
const ggml_tensor * KQV = dst;
const ggml_tensor * Q = dst->src[0];
const ggml_tensor * K = dst->src[1];
const ggml_tensor * V = dst->src[2];
const ggml_tensor * mask = dst->src[3];
const ggml_tensor * KQV = dst;
const ggml_tensor * Q = dst->src[0];
const ggml_tensor * K = dst->src[1];
const ggml_tensor * V = dst->src[2];
const ggml_tensor * mask = dst->src[3];
ggml_cuda_set_device(ctx.device);
const int cc = ggml_cuda_info().devices[ggml_cuda_get_device()].cc;
@@ -315,9 +315,7 @@ void ggml_cuda_flash_attn_ext(ggml_backend_cuda_context & ctx, ggml_tensor * dst
const bool gqa_opt_applies = ((Q->ne[2] / K->ne[2]) % 2 == 0) && mask; // The mma-based kernels have GQA-specific optimizations
const bool mma_needs_data_conversion = K->type != GGML_TYPE_F16 || V->type != GGML_TYPE_F16;
const bool mma_faster_for_rtx4000 = Q->ne[3] > 1 || (Q->ne[2] > 4*K->ne[2] && K->ne[1] >= 8192);
const bool mma_faster_for_bs1 = turing_mma_available(cc) && gqa_opt_applies && !mma_needs_data_conversion &&
(cc < GGML_CUDA_CC_ADA_LOVELACE || mma_faster_for_rtx4000);
const bool mma_faster_for_bs1 = new_mma_available(cc) && gqa_opt_applies && cc < GGML_CUDA_CC_ADA_LOVELACE && !mma_needs_data_conversion;
const bool can_use_vector_kernel = Q->ne[0] <= 256 && Q->ne[0] % (2*warp_size) == 0;
if (Q->ne[1] == 1 && can_use_vector_kernel && !mma_faster_for_bs1) {
if (prec == GGML_PREC_DEFAULT) {
@@ -329,7 +327,7 @@ void ggml_cuda_flash_attn_ext(ggml_backend_cuda_context & ctx, ggml_tensor * dst
}
// The MMA implementation needs Turing or newer, use the old WMMA code for Volta:
if (fp16_mma_available(cc) && !turing_mma_available(cc)) {
if (fp16_mma_available(cc) && !new_mma_available(cc)) {
ggml_cuda_flash_attn_ext_wmma_f16(ctx, dst);
return;
}

View File

@@ -1,6 +1,5 @@
#include "getrows.cuh"
#include "dequantize.cuh"
#include "convert.cuh"
template<int qk, int qr, dequantize_kernel_t dequantize_kernel, typename dst_t>
static __global__ void k_get_rows(
@@ -35,8 +34,8 @@ static __global__ void k_get_rows(
dfloat2 v;
dequantize_kernel(src0_row, ib, iqs, v);
dst_row[iybs + iqs + 0] = ggml_cuda_cast<dst_t>(v.x);
dst_row[iybs + iqs + y_offset] = ggml_cuda_cast<dst_t>(v.y);
dst_row[iybs + iqs + 0] = float(v.x);
dst_row[iybs + iqs + y_offset] = float(v.y);
}
template<typename src0_t, typename dst_t>
@@ -63,7 +62,7 @@ static __global__ void k_get_rows_float(
dst_t * dst_row = dst + i10*s1 + i11*s2 + i12*s3;
const src0_t * src0_row = (const src0_t *)((const char *) src0 + i01*nb01 + i11*nb02 + i12*nb03);
dst_row[i00] = ggml_cuda_cast<dst_t>(src0_row[i00]);
dst_row[i00] = float(src0_row[i00]);
}
template<typename grad_t, typename dst_t>

View File

@@ -4,7 +4,6 @@
#include "ggml-cuda/common.cuh"
#include "ggml-cuda/acc.cuh"
#include "ggml-cuda/add-id.cuh"
#include "ggml-cuda/arange.cuh"
#include "ggml-cuda/argmax.cuh"
#include "ggml-cuda/argsort.cuh"
@@ -22,13 +21,11 @@
#include "ggml-cuda/fattn.cuh"
#include "ggml-cuda/getrows.cuh"
#include "ggml-cuda/im2col.cuh"
#include "ggml-cuda/mmf.cuh"
#include "ggml-cuda/mmq.cuh"
#include "ggml-cuda/mmvf.cuh"
#include "ggml-cuda/mmv.cuh"
#include "ggml-cuda/mmvq.cuh"
#include "ggml-cuda/norm.cuh"
#include "ggml-cuda/opt-step-adamw.cuh"
#include "ggml-cuda/opt-step-sgd.cuh"
#include "ggml-cuda/out-prod.cuh"
#include "ggml-cuda/pad.cuh"
#include "ggml-cuda/pool2d.cuh"
@@ -131,7 +128,7 @@ static cudaError_t ggml_cuda_device_malloc(void ** ptr, size_t size, int device)
return err;
}
#if defined(GGML_USE_HIP)
#if defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)
static int ggml_cuda_parse_id(char devName[]) {
// A list of possible Target IDs can be found under the rocclr/clr repo in device.cpp
// these values are not stable so this is susceptible to breakage
@@ -178,9 +175,33 @@ static int ggml_cuda_parse_id(char devName[]) {
archNum += archMinor;
return archNum;
}
#endif // defined(GGML_USE_HIP)
#endif // defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)
static ggml_cuda_device_info ggml_cuda_init() {
#ifdef __HIP_PLATFORM_AMD__
// Workaround for a rocBLAS bug when using multiple graphics cards:
// https://github.com/ROCmSoftwarePlatform/rocBLAS/issues/1346
{
int major_version = 0;
size_t version_length = 0;
if (rocblas_get_version_string_size(&version_length) == rocblas_status_success) {
std::vector<char> version(version_length+1, '\0');
if (rocblas_get_version_string(version.data(), version.size()) == rocblas_status_success) {
version.resize(::strlen(version.data()));
int parsed_value = 0;
if (std::from_chars(version.data(), version.data() + version.size(), parsed_value).ec == std::errc()) {
major_version = parsed_value;
}
}
}
if (major_version < 4) {
GGML_LOG_DEBUG(GGML_CUDA_NAME " calling rocblas_initialize as a workaround for a rocBLAS bug\n");
rocblas_initialize();
CUDA_CHECK(cudaDeviceSynchronize());
}
}
#endif
ggml_cuda_device_info info = {};
cudaError_t err = cudaGetDeviceCount(&info.device_count);
@@ -230,7 +251,7 @@ static ggml_cuda_device_info ggml_cuda_init() {
info.devices[id].nsm = prop.multiProcessorCount;
info.devices[id].smpb = prop.sharedMemPerBlock;
info.devices[id].warp_size = prop.warpSize;
#if defined(GGML_USE_HIP)
#if defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)
info.devices[id].smpbo = prop.sharedMemPerBlock;
info.devices[id].cc = ggml_cuda_parse_id(prop.gcnArchName);
@@ -260,7 +281,7 @@ static ggml_cuda_device_info ggml_cuda_init() {
info.devices[id].cc = 100*prop.major + 10*prop.minor;
GGML_LOG_INFO(" Device %d: %s, compute capability %d.%d, VMM: %s\n",
id, prop.name, prop.major, prop.minor, device_vmm ? "yes" : "no");
#endif // defined(GGML_USE_HIP)
#endif // defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)
}
for (int id = 0; id < info.device_count; ++id) {
@@ -1831,9 +1852,6 @@ static void ggml_cuda_mul_mat_batched_cublas_impl(ggml_backend_cuda_context & ct
ggml_cuda_pool_alloc<cuda_t> src0_alloc(ctx.pool());
ggml_cuda_pool_alloc<cuda_t> src1_alloc(ctx.pool());
bool is_src0_cont_2 = ggml_is_contiguous_2(src0);
bool is_src1_cont_2 = ggml_is_contiguous_2(src1);
// Handle src0
src0_ptr = (const cuda_t *) src0->data;
@@ -1852,8 +1870,6 @@ static void ggml_cuda_mul_mat_batched_cublas_impl(ggml_backend_cuda_context & ct
s11 = ne10;
s12 = ne11*s11;
s13 = ne12*s12;
is_src1_cont_2 = true;
}
// Setup destination buffer
@@ -1902,19 +1918,15 @@ static void ggml_cuda_mul_mat_batched_cublas_impl(ggml_backend_cuda_context & ct
const int64_t r2 = ne12/ne02;
const int64_t r3 = ne13/ne03;
if (r2 == 1 && r3 == 1 && is_src0_cont_2 && is_src1_cont_2) {
// with a [0, 2, 1, 3] perm. and ne02==1 the matrix strides need to be determined from dim 3:
const int64_t sma = ne02 == 1 ? nb03/nb00 : nb02/nb00;
const int64_t smb = ne12 == 1 ? s13 : s12;
if (r2 == 1 && r3 == 1 && ggml_is_contiguous_2(src0) && ggml_is_contiguous_2(src1)) {
// there is no broadcast and src0, src1 are contiguous across dims 2, 3
// use cublasGemmStridedBatchedEx
CUBLAS_CHECK(
cublasGemmStridedBatchedEx(ctx.cublas_handle(), CUBLAS_OP_T, CUBLAS_OP_N,
ne01, ne11, ne10,
alpha, src0_ptr, cu_data_type_a, nb01/nb00, sma, // strideA
src1_ptr, cu_data_type_b, s11, smb, // strideB
beta, dst_t, cu_data_type, ne0, ne1*ne0, // strideC
alpha, src0_ptr, cu_data_type_a, nb01/nb00, nb02/nb00, // strideA
src1_ptr, cu_data_type_b, s11, s12, // strideB
beta, dst_t, cu_data_type, ne0, ne1*ne0, // strideC
ne12*ne13,
cu_compute_type,
CUBLAS_GEMM_DEFAULT_TENSOR_OP));
@@ -1986,9 +1998,7 @@ static void ggml_cuda_mul_mat(ggml_backend_cuda_context & ctx, const ggml_tensor
const bool bad_padding_clear = ggml_backend_buffer_get_usage(src0->buffer) == GGML_BACKEND_BUFFER_USAGE_COMPUTE
&& ggml_nbytes(src0) != ggml_backend_buffer_get_alloc_size(src0->buffer, src0) && src0->view_src;
bool use_mul_mat_vec_f = (src0->type == GGML_TYPE_F32 || src0->type == GGML_TYPE_F16 || src0->type == GGML_TYPE_BF16)
&& src1->type == GGML_TYPE_F32 && dst->type == GGML_TYPE_F32;
bool use_mul_mat_f = !ggml_is_quantized(src0->type)
bool use_mul_mat_vec = (src0->type == GGML_TYPE_F32 || src0->type == GGML_TYPE_F16 || src0->type == GGML_TYPE_BF16)
&& src1->type == GGML_TYPE_F32 && dst->type == GGML_TYPE_F32;
bool use_mul_mat_vec_q = ggml_is_quantized(src0->type) && !bad_padding_clear
&& src1->type == GGML_TYPE_F32 && dst->type == GGML_TYPE_F32
@@ -2008,18 +2018,14 @@ static void ggml_cuda_mul_mat(ggml_backend_cuda_context & ctx, const ggml_tensor
}
const int cc = ggml_cuda_info().devices[id].cc;
const int warp_size = ggml_cuda_info().devices[id].warp_size;
use_mul_mat_q = use_mul_mat_q && ggml_cuda_should_use_mmq(src0->type, cc, src1->ne[1]);
use_mul_mat_f = use_mul_mat_f && ggml_cuda_should_use_mmf(src0->type, cc, warp_size, src0->ne, src1->ne[1]);
use_mul_mat_vec_f = use_mul_mat_vec_f && ggml_cuda_should_use_mmvf(src0->type, cc, src0->ne, src1->ne[1]);
use_mul_mat_vec = use_mul_mat_vec && ggml_cuda_should_use_mmv(src0->type, cc, src0->ne, src1->ne[1]);
any_gpus_with_slow_fp16 = any_gpus_with_slow_fp16 || !fast_fp16_hardware_available(cc);
}
} else {
const int cc = ggml_cuda_info().devices[ctx.device].cc;
const int warp_size = ggml_cuda_info().devices[ctx.device].warp_size;
use_mul_mat_q = use_mul_mat_q && ggml_cuda_should_use_mmq(src0->type, cc, src1->ne[1]);
use_mul_mat_f = use_mul_mat_f && ggml_cuda_should_use_mmf(src0->type, cc, warp_size, src0->ne, src1->ne[1]);
use_mul_mat_vec_f = use_mul_mat_vec_f && ggml_cuda_should_use_mmvf(src0->type, cc, src0->ne, src1->ne[1]);
use_mul_mat_vec = use_mul_mat_vec && ggml_cuda_should_use_mmv(src0->type, cc, src0->ne, src1->ne[1]);
any_gpus_with_slow_fp16 = any_gpus_with_slow_fp16 || !fast_fp16_hardware_available(cc);
}
@@ -2032,17 +2038,15 @@ static void ggml_cuda_mul_mat(ggml_backend_cuda_context & ctx, const ggml_tensor
//printf("src1 is contiguous %d, transposed %d, type = %s, name = %s\n", ggml_is_contiguous(src1), ggml_is_transposed(src1), ggml_type_name(src1->type), src1->name);
//TODO update for generic tensor parallelism
const int cc = ggml_cuda_info().devices[ggml_cuda_get_device()].cc;
const int cc = ggml_cuda_info().devices[ggml_cuda_get_device()].cc;
bool use_batched_cublas_f16 = src0->type == GGML_TYPE_F16 && (src1->type == GGML_TYPE_F16 || !any_gpus_with_slow_fp16);
bool use_batched_cublas_bf16 = src0->type == GGML_TYPE_BF16 && bf16_mma_hardware_available(cc);
bool use_batched_cublas_f32 = src0->type == GGML_TYPE_F32;
if (!split && use_mul_mat_vec_f) {
if (!split && use_mul_mat_vec) {
// the custom F16 vector kernel can be used over batched cuBLAS GEMM
// but this is only faster for GPUs without tensor cores or with a thin src0 matrix (particularly KQV in attention)
ggml_cuda_mul_mat_vec_f(ctx, src0, src1, nullptr, dst);
} else if (!split && use_mul_mat_f) {
ggml_cuda_mul_mat_f(ctx, src0, src1, nullptr, dst);
ggml_cuda_mul_mat_vec(ctx, src0, src1, nullptr, dst);
} else if (!split && use_mul_mat_vec_q) {
ggml_cuda_mul_mat_vec_q(ctx, src0, src1, nullptr, dst);
} else if (!split && use_mul_mat_q) {
@@ -2051,8 +2055,8 @@ static void ggml_cuda_mul_mat(ggml_backend_cuda_context & ctx, const ggml_tensor
&& !ggml_is_transposed(src0) && !ggml_is_transposed(src1) && src1->ne[2]*src1->ne[3] > 1) {
// general KQ + KQV multi-batch without FlashAttention
ggml_cuda_mul_mat_batched_cublas(ctx, src0, src1, dst);
} else if (use_mul_mat_vec_f) {
ggml_cuda_op_mul_mat(ctx, src0, src1, dst, ggml_cuda_op_mul_mat_vec_f, nullptr);
} else if (use_mul_mat_vec) {
ggml_cuda_op_mul_mat(ctx, src0, src1, dst, ggml_cuda_op_mul_mat_vec, nullptr);
} else if (use_mul_mat_vec_q) {
ggml_cuda_op_mul_mat(ctx, src0, src1, dst, ggml_cuda_op_mul_mat_vec_q, quantize_row_q8_1_cuda);
} else if (use_mul_mat_q) {
@@ -2080,7 +2084,7 @@ static void ggml_cuda_mul_mat_id(ggml_backend_cuda_context & ctx, ggml_tensor *
if (ggml_is_quantized(src0->type)) {
ggml_cuda_mul_mat_vec_q(ctx, src0, src1, ids, dst);
} else {
ggml_cuda_mul_mat_vec_f(ctx, src0, src1, ids, dst);
ggml_cuda_mul_mat_vec(ctx, src0, src1, ids, dst);
}
return;
}
@@ -2246,9 +2250,6 @@ static bool ggml_cuda_compute_forward(ggml_backend_cuda_context & ctx, struct gg
case GGML_OP_ADD1: // TODO: more efficient implementation
ggml_cuda_op_add(ctx, dst);
break;
case GGML_OP_ADD_ID:
ggml_cuda_op_add_id(ctx, dst);
break;
case GGML_OP_SUB:
ggml_cuda_op_sub(ctx, dst);
break;
@@ -2323,9 +2324,6 @@ static bool ggml_cuda_compute_forward(ggml_backend_cuda_context & ctx, struct gg
case GGML_GLU_OP_SWIGLU:
ggml_cuda_op_swiglu(ctx, dst);
break;
case GGML_GLU_OP_SWIGLU_OAI:
ggml_cuda_op_swiglu_oai(ctx, dst);
break;
case GGML_GLU_OP_GEGLU_ERF:
ggml_cuda_op_geglu_erf(ctx, dst);
break;
@@ -2480,9 +2478,6 @@ static bool ggml_cuda_compute_forward(ggml_backend_cuda_context & ctx, struct gg
case GGML_OP_OPT_STEP_ADAMW:
ggml_cuda_opt_step_adamw(ctx, dst);
break;
case GGML_OP_OPT_STEP_SGD:
ggml_cuda_opt_step_sgd(ctx, dst);
break;
default:
return false;
}
@@ -2603,9 +2598,6 @@ static bool check_node_graph_compatibility_and_refresh_copy_ops(ggml_backend_cud
const std::string gemma3n_per_layer_proj_src0_name = "inp_per_layer_selected";
const std::string gemma3n_per_layer_proj_src1_name = "per_layer_proj";
const std::string ffn_moe_gate_bias_prefix = "ffn_moe_gate_biased";
const std::string ffn_moe_up_bias_prefix = "ffn_moe_up_biased";
const std::string ffn_moe_down_bias_prefix = "ffn_moe_down_biased";
for (int i = 0; i < cgraph->n_nodes; i++) {
ggml_tensor * node = cgraph->nodes[i];
@@ -2628,13 +2620,7 @@ static bool check_node_graph_compatibility_and_refresh_copy_ops(ggml_backend_cud
#endif
}
if (node->op == GGML_OP_ADD &&
node->src[1] && node->src[1]->ne[1] > 1 &&
(node->src[0] ? node->src[0]->name != gemma3n_per_layer_proj_src0_name : true) &&
(node->src[1] ? node->src[1]->name != gemma3n_per_layer_proj_src1_name : true) &&
strncmp(node->name, ffn_moe_gate_bias_prefix.c_str(), ffn_moe_gate_bias_prefix.size()) != 0 &&
strncmp(node->name, ffn_moe_up_bias_prefix.c_str(), ffn_moe_up_bias_prefix.size()) != 0 &&
strncmp(node->name, ffn_moe_down_bias_prefix.c_str(), ffn_moe_down_bias_prefix.size()) != 0) {
if (node->op == GGML_OP_ADD && node->src[1] && node->src[1]->ne[1] > 1 && (node->src[0] ? node->src[0]->name != gemma3n_per_layer_proj_src0_name : true) && (node->src[1] ? node->src[1]->name != gemma3n_per_layer_proj_src1_name : true)) {
// disable CUDA graphs for batch size > 1 for now while excluding the matrix-matrix addition as part of Gemma3n's `project_per_layer_input` operation
// by means of matching node names. See
// https://github.com/ggml-org/llama.cpp/blob/f9a31eea06a859e34cecb88b4d020c7f03d86cc4/src/llama-model.cpp#L10199-L10241 and
@@ -3232,7 +3218,6 @@ static bool ggml_backend_cuda_device_supports_op(ggml_backend_dev_t dev, const g
case GGML_GLU_OP_REGLU:
case GGML_GLU_OP_GEGLU:
case GGML_GLU_OP_SWIGLU:
case GGML_GLU_OP_SWIGLU_OAI:
case GGML_GLU_OP_GEGLU_ERF:
case GGML_GLU_OP_GEGLU_QUICK:
return ggml_is_contiguous_1(op->src[0]);
@@ -3283,7 +3268,6 @@ static bool ggml_backend_cuda_device_supports_op(ggml_backend_dev_t dev, const g
case GGML_TYPE_Q5_0:
case GGML_TYPE_Q5_1:
case GGML_TYPE_Q8_0:
case GGML_TYPE_MXFP4:
case GGML_TYPE_Q2_K:
case GGML_TYPE_Q3_K:
case GGML_TYPE_Q4_K:
@@ -3430,7 +3414,6 @@ static bool ggml_backend_cuda_device_supports_op(ggml_backend_dev_t dev, const g
case GGML_OP_PERMUTE:
case GGML_OP_TRANSPOSE:
case GGML_OP_ADD:
case GGML_OP_ADD_ID:
case GGML_OP_ADD1:
case GGML_OP_SUB:
case GGML_OP_MUL:
@@ -3505,17 +3488,12 @@ static bool ggml_backend_cuda_device_supports_op(ggml_backend_dev_t dev, const g
#endif // FLASH_ATTN_AVAILABLE
if (op->src[1]->ne[0] != op->src[2]->ne[0]) {
const int cc = ggml_cuda_info().devices[dev_ctx->device].cc;
if (!turing_mma_available(cc)) {
if (!new_mma_available(cc)) {
return false;
}
const int gqa_ratio = op->src[0]->ne[2] / op->src[1]->ne[2];
return op->src[1]->ne[0] == 576 && op->src[2]->ne[0] == 512 && op->src[3] && gqa_ratio % 16 == 0;
}
// TODO: more general-purpose attention sink support [TAG_ATTN_SINKS]
if (op->src[4] && !fp16_mma_available(ggml_cuda_info().devices[dev_ctx->device].cc)
&& op->src[0]->ne[0] != 64 && op->src[0]->ne[0] != 128) {
return false;
}
if (op->src[0]->ne[0] == 192) {
return false;
}
@@ -3540,7 +3518,6 @@ static bool ggml_backend_cuda_device_supports_op(ggml_backend_dev_t dev, const g
case GGML_OP_CROSS_ENTROPY_LOSS:
case GGML_OP_CROSS_ENTROPY_LOSS_BACK:
case GGML_OP_OPT_STEP_ADAMW:
case GGML_OP_OPT_STEP_SGD:
return true;
default:
return false;
@@ -3780,10 +3757,10 @@ ggml_backend_t ggml_backend_cuda_init(int device) {
}
ggml_backend_t cuda_backend = new ggml_backend {
/* .guid = */ ggml_backend_cuda_guid(),
/* .iface = */ ggml_backend_cuda_interface,
/* .device = */ ggml_backend_reg_dev_get(ggml_backend_cuda_reg(), device),
/* .context = */ ctx,
/* .guid = */ ggml_backend_cuda_guid(),
/* .interface = */ ggml_backend_cuda_interface,
/* .device = */ ggml_backend_reg_dev_get(ggml_backend_cuda_reg(), device),
/* .context = */ ctx,
};
return cuda_backend;

View File

@@ -1,76 +1,65 @@
#include "im2col.cuh"
#define MAX_GRIDDIM_Z 65535
template <typename T>
static __global__ void im2col_kernel(
const float * x, T * dst,
int64_t IC, int64_t IW, int64_t IH, int64_t OH, int64_t OW, int64_t KW, int64_t KH,
int64_t IC_IH_IW, int64_t IH_IW, int64_t N_OH, int64_t KH_KW, int64_t IC_KH_KW,
const float * x, T * dst, int64_t batch_offset,
int64_t offset_delta, int64_t IC, int64_t IW, int64_t IH, int64_t OH, int64_t OW, int64_t KW, int64_t KH, int64_t pelements, int64_t CHW,
int s0, int s1, int p0, int p1, int d0, int d1) {
const int64_t i = threadIdx.x + blockIdx.x * blockDim.x;
if (i >= IC_KH_KW) {
if (i >= pelements) {
return;
}
const int64_t iic = i / (KH_KW);
const int64_t rem = i - iic * KH_KW;
const int64_t ikh = rem / KW;
const int64_t ikw = rem - ikh * KW;
const int64_t ksize = OW * KH;
const int64_t kx = i / ksize;
const int64_t kd = kx * ksize;
const int64_t ky = (i - kd) / OW;
const int64_t ix = i % OW;
const int64_t iow = blockIdx.y;
for (int64_t iz = blockIdx.z; iz < N_OH; iz+=MAX_GRIDDIM_Z) {
const int64_t in = iz / OH;
const int64_t ioh = iz - in * OH;
const int64_t oh = blockIdx.y;
const int64_t batch = blockIdx.z / IC;
const int64_t ic = blockIdx.z % IC;
const int64_t iiw = iow * s0 + ikw * d0 - p0;
const int64_t iih = ioh * s1 + ikh * d1 - p1;
const int64_t iiw = ix * s0 + kx * d0 - p0;
const int64_t iih = oh * s1 + ky * d1 - p1;
const int64_t offset_dst =
((in * OH + ioh) * OW + iow) * IC_KH_KW + iic * KH_KW + ikh * KW + ikw;
const int64_t offset_dst =
((batch * OH + oh) * OW + ix) * CHW +
(ic * (KW * KH) + ky * KW + kx);
if (iih < 0 || iih >= IH || iiw < 0 || iiw >= IW) {
dst[offset_dst] = 0.0f;
} else {
const int64_t offset_src = iic * IC_IH_IW + in * IH_IW;
dst[offset_dst] = x[offset_src + iih * IW + iiw];
}
if (iih < 0 || iih >= IH || iiw < 0 || iiw >= IW) {
dst[offset_dst] = 0.0f;
} else {
const int64_t offset_src = ic * offset_delta + batch * batch_offset;
dst[offset_dst] = x[offset_src + iih * IW + iiw];
}
GGML_UNUSED(IC);
GGML_UNUSED(KH);
}
// im2col: [N, IC, IH, IW] => [N, OH, OW, IC*KH*KW]
template <typename T>
static void im2col_cuda(const float * x, T* dst,
int64_t IW, int64_t IH, int64_t OW, int64_t OH, int64_t KW, int64_t KH, int64_t IC,
int64_t N, int64_t IC_IH_IW, int64_t IH_IW,
int64_t batch, int64_t batch_offset, int64_t offset_delta,
int s0,int s1,int p0,int p1,int d0,int d1, cudaStream_t stream) {
const int64_t IC_KH_KW = IC * KH * KW;
const int64_t num_blocks = (IC_KH_KW + CUDA_IM2COL_BLOCK_SIZE - 1) / CUDA_IM2COL_BLOCK_SIZE;
const int64_t N_OH = N * OH;
const int64_t KH_KW = KW*KH;
dim3 block_nums(num_blocks, OW, MIN(N_OH, MAX_GRIDDIM_Z));
im2col_kernel<<<block_nums, MIN(IC_KH_KW, CUDA_IM2COL_BLOCK_SIZE) , 0, stream>>>(x, dst, IC, IW, IH, OH, OW, KW, KH,
IC_IH_IW, IH_IW, N_OH, KH_KW, IC_KH_KW,
s0, s1, p0, p1, d0, d1);
const int parallel_elements = OW * KW * KH;
const int num_blocks = (parallel_elements + CUDA_IM2COL_BLOCK_SIZE - 1) / CUDA_IM2COL_BLOCK_SIZE;
dim3 block_nums(num_blocks, OH, batch * IC);
im2col_kernel<<<block_nums, CUDA_IM2COL_BLOCK_SIZE, 0, stream>>>(x, dst, batch_offset, offset_delta, IC, IW, IH, OH, OW, KW, KH, parallel_elements, (IC * KH * KW), s0, s1, p0, p1, d0, d1);
}
static void im2col_cuda_f16(const float * x, half * dst,
int64_t IW, int64_t IH, int64_t OW, int64_t OH, int64_t KW, int64_t KH, int64_t IC,
int64_t N, int64_t IC_IH_IW, int64_t IH_IW,
int64_t batch, int64_t batch_offset, int64_t offset_delta,
int s0,int s1,int p0,int p1,int d0,int d1, cudaStream_t stream) {
im2col_cuda<half>(x, dst, IW, IH, OW, OH, KW, KH, IC, N, IC_IH_IW, IH_IW, s0, s1, p0, p1, d0, d1, stream);
im2col_cuda<half>(x, dst, IW, IH, OW, OH, KW, KH, IC, batch, batch_offset, offset_delta, s0, s1, p0, p1, d0, d1, stream);
}
static void im2col_cuda_f32(const float * x, float * dst,
int64_t IW, int64_t IH, int64_t OW, int64_t OH, int64_t KW, int64_t KH, int64_t IC,
int64_t N, int64_t IC_IH_IW, int64_t IH_IW,
int64_t batch, int64_t batch_offset, int64_t offset_delta,
int s0,int s1,int p0,int p1,int d0,int d1, cudaStream_t stream) {
im2col_cuda<float>(x, dst, IW, IH, OW, OH, KW, KH, IC, N, IC_IH_IW, IH_IW, s0, s1, p0, p1, d0, d1, stream);
im2col_cuda<float>(x, dst, IW, IH, OW, OH, KW, KH, IC, batch, batch_offset, offset_delta, s0, s1, p0, p1, d0, d1, stream);
}
void ggml_cuda_op_im2col(ggml_backend_cuda_context & ctx, ggml_tensor * dst) {
@@ -102,13 +91,13 @@ void ggml_cuda_op_im2col(ggml_backend_cuda_context & ctx, ggml_tensor * dst) {
const int64_t OH = is_2D ? dst->ne[2] : 1;
const int64_t OW = dst->ne[1];
const int64_t IC_IH_IW = src1->nb[is_2D ? 2 : 1] / 4; // nb is byte offset, src is type float32
const int64_t N = src1->ne[is_2D ? 3 : 2];
const int64_t IH_IW = src1->nb[is_2D ? 3 : 2] / 4; // nb is byte offset, src is type float32
const size_t delta_offset = src1->nb[is_2D ? 2 : 1] / 4; // nb is byte offset, src is type float32
const int64_t batch = src1->ne[is_2D ? 3 : 2];
const size_t batch_offset = src1->nb[is_2D ? 3 : 2] / 4; // nb is byte offset, src is type float32
if(dst->type == GGML_TYPE_F16) {
im2col_cuda_f16(src1_d, (half *) dst_d, IW, IH, OW, OH, KW, KH, IC, N, IC_IH_IW, IH_IW, s0, s1, p0, p1, d0, d1, stream);
im2col_cuda_f16(src1_d, (half *) dst_d, IW, IH, OW, OH, KW, KH, IC, batch, batch_offset, delta_offset, s0, s1, p0, p1, d0, d1, stream);
} else {
im2col_cuda_f32(src1_d, (float *) dst_d, IW, IH, OW, OH, KW, KH, IC, N, IC_IH_IW, IH_IW, s0, s1, p0, p1, d0, d1, stream);
im2col_cuda_f32(src1_d, (float *) dst_d, IW, IH, OW, OH, KW, KH, IC, batch, batch_offset, delta_offset, s0, s1, p0, p1, d0, d1, stream);
}
}

View File

@@ -1,14 +1,4 @@
#include "mean.cuh"
#include "reduce_rows.cuh"
#ifdef GGML_CUDA_USE_CUB
#include <cub/cub.cuh>
using namespace cub;
#endif // GGML_CUDA_USE_CUB
template <typename T> __global__ void divide_by_count(T * result, size_t count) {
*result /= static_cast<T>(count);
}
void ggml_cuda_op_mean(ggml_backend_cuda_context & ctx, ggml_tensor * dst) {
const ggml_tensor * src0 = dst->src[0];
@@ -23,51 +13,7 @@ void ggml_cuda_op_mean(ggml_backend_cuda_context & ctx, ggml_tensor * dst) {
const int64_t ncols = src0->ne[0];
const int64_t nrows = ggml_nrows(src0);
// Special case for reducing vectors
#ifdef GGML_CUDA_USE_CUB
#ifdef USE_CUDA_GRAPH
cudaStreamCaptureStatus iscapturing;
CUDA_CHECK(cudaStreamIsCapturing(stream, &iscapturing));
#endif // USE_CUDA_GRAPH
if ((nrows == 1) &&
#ifdef USE_CUDA_GRAPH
// CUDA_GRAPHS_DISABLED
((ncols > 65536) &&
((ctx.cuda_graph->instance == nullptr) && (iscapturing == cudaStreamCaptureStatusNone) ||
ctx.cuda_graph->disable_due_to_gpu_arch || ctx.cuda_graph->disable_due_to_too_many_updates ||
ctx.cuda_graph->disable_due_to_failed_graph_capture)) ||
// CUDA_GRAPHS ENABLED
((ncols > 32768) &&
!((ctx.cuda_graph->instance == nullptr) && (iscapturing == cudaStreamCaptureStatusNone) ||
ctx.cuda_graph->disable_due_to_gpu_arch || ctx.cuda_graph->disable_due_to_too_many_updates ||
ctx.cuda_graph->disable_due_to_failed_graph_capture))) {
#else
(ncols > 65536)) {
#endif // USE_CUDA_GRAPH
// Single row - use device-wide reduction
size_t tmp_size = 0;
ggml_cuda_pool & pool = ctx.pool();
DeviceReduce::Sum(nullptr, tmp_size, src0_d, dst_d, ncols, stream);
ggml_cuda_pool_alloc<uint8_t> tmp_alloc(pool, tmp_size);
DeviceReduce::Sum(tmp_alloc.ptr, tmp_size, src0_d, dst_d, ncols, stream);
// Divide by ncols
divide_by_count<float><<<1, 1, 0, stream>>>(dst_d, ncols);
return;
}
#endif // GGML_CUDA_USE_CUB
const dim3 block_dims(WARP_SIZE, 1, 1);
const dim3 block_nums(nrows, 1, 1);
const int id = ggml_cuda_get_device();
const int nsm = ggml_cuda_info().devices[id].nsm;
if ((nrows / nsm) < 2) {
const dim3 block_dims(512, 1, 1);
reduce_rows_f32</*norm=*/true><<<block_nums, block_dims, 0, stream>>>(src0_d, dst_d, ncols);
} else {
const dim3 block_dims(ncols < 1024 ? 32 : 128, 1, 1);
reduce_rows_f32</*norm=*/true><<<block_nums, block_dims, 0, stream>>>(src0_d, dst_d, ncols);
}
reduce_rows_f32</*norm*/ true><<<block_nums, block_dims, 0, stream>>>(src0_d, dst_d, ncols);
}

View File

@@ -23,13 +23,13 @@
static __device__ __forceinline__ int ggml_cuda_movmatrix(const int x) {
int ret = 0;
#ifdef TURING_MMA_AVAILABLE
#ifdef NEW_MMA_AVAILABLE
asm("movmatrix.sync.aligned.m8n8.trans.b16 %0, %1;"
: "=r"(ret) : "r"(x));
#else
GGML_UNUSED(x);
NO_DEVICE_CODE;
#endif // defined(TURING_MMA_AVAILABLE)
#endif // defined(NEW_MMA_AVAILABLE)
return ret;
}
@@ -68,7 +68,7 @@ namespace ggml_cuda_mma {
static constexpr int I = I_;
static constexpr int J = J_;
#if defined(GGML_USE_HIP)
#if defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)
static constexpr int ne = I * J / 64;
T x[ne] = {0};
@@ -132,7 +132,7 @@ namespace ggml_cuda_mma {
static_assert(I == -1 && J == -1, "template specialization not implemented");
}
}
#endif // defined(GGML_USE_HIP)
#endif // defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)
};
template <int I_, int J_>
@@ -167,38 +167,6 @@ namespace ggml_cuda_mma {
}
};
template <int I_, int J_>
struct tile<I_, J_, nv_bfloat162> {
static constexpr int I = I_;
static constexpr int J = J_;
static constexpr int ne = I * J / WARP_SIZE;
nv_bfloat162 x[ne] = {{0.0f, 0.0f}};
static __device__ __forceinline__ int get_i(const int l) {
if constexpr (I == 8 && J == 8) {
return threadIdx.x / 4;
} else if constexpr (I == 16 && J == 4) {
return l * 8 + threadIdx.x / 4;
} else if constexpr (I == 16 && J == 8) {
return (l % 2) * 8 + threadIdx.x / 4;
} else {
static_assert(I == -1 && J == -1, "template specialization not implemented");
}
}
static __device__ __forceinline__ int get_j(const int l) {
if constexpr (I == 8 && J == 8) {
return l * 4 + threadIdx.x % 4;
} else if constexpr (I == 16 && J == 4) {
return threadIdx.x % 4;
} else if constexpr (I == 16 && J == 8) {
return (l / 2) * 4 + threadIdx.x % 4;
} else {
static_assert(I == -1 && J == -1, "template specialization not implemented");
}
}
};
template <int I, int J>
static __device__ __forceinline__ tile<I, J/2, half2> get_half2(const tile<I, J, float> & tile_float) {
tile<I, J/2, half2> ret;
@@ -241,7 +209,7 @@ namespace ggml_cuda_mma {
template <typename T>
static __device__ __forceinline__ void load_ldmatrix(
tile<8, 8, T> & t, const T * __restrict__ xs0, const int stride) {
#ifdef TURING_MMA_AVAILABLE
#ifdef NEW_MMA_AVAILABLE
int * xi = (int *) t.x;
const int * xs = (const int *) xs0 + (threadIdx.x % t.I) * stride + ((threadIdx.x / t.I) * (t.J / 2)) % t.J;
asm volatile("ldmatrix.sync.aligned.m8n8.x2.b16 {%0, %1}, [%2];"
@@ -249,13 +217,13 @@ namespace ggml_cuda_mma {
: "l"(xs));
#else
load_generic(t, xs0, stride);
#endif // TURING_MMA_AVAILABLE
#endif // NEW_MMA_AVAILABLE
}
template <typename T>
static __device__ __forceinline__ void load_ldmatrix(
tile<16, 4, T> & t, const T * __restrict__ xs0, const int stride) {
#ifdef TURING_MMA_AVAILABLE
#ifdef NEW_MMA_AVAILABLE
int * xi = (int *) t.x;
const int * xs = (const int *) xs0 + (threadIdx.x % t.I) * stride;
asm volatile("ldmatrix.sync.aligned.m8n8.x2.b16 {%0, %1}, [%2];"
@@ -264,13 +232,13 @@ namespace ggml_cuda_mma {
#else
load_generic(xs0, stride);
GGML_UNUSED(t);
#endif // TURING_MMA_AVAILABLE
#endif // NEW_MMA_AVAILABLE
}
template <typename T>
static __device__ __forceinline__ void load_ldmatrix(
tile<16, 8, T> & t, const T * __restrict__ xs0, const int stride) {
#if defined(TURING_MMA_AVAILABLE)
#if defined(NEW_MMA_AVAILABLE)
int * xi = (int * ) t.x;
const int * xs = (const int *) xs0 + (threadIdx.x % t.I) * stride + (threadIdx.x / t.I) * (t.J / 2);
asm volatile("ldmatrix.sync.aligned.m8n8.x4.b16 {%0, %1, %2, %3}, [%4];"
@@ -278,13 +246,13 @@ namespace ggml_cuda_mma {
: "l"(xs));
#else
load_generic(t, xs0, stride);
#endif // TURING_MMA_AVAILABLE
#endif // NEW_MMA_AVAILABLE
}
template <typename T>
static __device__ __forceinline__ void load_ldmatrix_trans(
tile<16, 8, T> & t, const T * __restrict__ xs0, const int stride) {
#ifdef TURING_MMA_AVAILABLE
#ifdef NEW_MMA_AVAILABLE
int * xi = (int * ) t.x;
const int * xs = (const int *) xs0 + (threadIdx.x % t.I) * stride + (threadIdx.x / t.I) * (t.J / 2);
asm volatile("ldmatrix.sync.aligned.m8n8.x4.trans.b16 {%0, %1, %2, %3}, [%4];"
@@ -295,12 +263,12 @@ namespace ggml_cuda_mma {
GGML_UNUSED(xs0);
GGML_UNUSED(stride);
NO_DEVICE_CODE;
#endif // TURING_MMA_AVAILABLE
#endif // NEW_MMA_AVAILABLE
}
static __device__ __forceinline__ void mma(
tile<16, 8, int> & D, const tile<16, 4, int> & A, const tile<8, 4, int> & B) {
#ifdef TURING_MMA_AVAILABLE
#ifdef NEW_MMA_AVAILABLE
#if __CUDA_ARCH__ >= GGML_CUDA_CC_AMPERE
asm("mma.sync.aligned.m16n8k16.row.col.s32.s8.s8.s32 {%0, %1, %2, %3}, {%4, %5}, {%6}, {%0, %1, %2, %3};"
: "+r"(D.x[0]), "+r"(D.x[1]), "+r"(D.x[2]), "+r"(D.x[3])
@@ -319,12 +287,12 @@ namespace ggml_cuda_mma {
GGML_UNUSED(A);
GGML_UNUSED(B);
NO_DEVICE_CODE;
#endif // TURING_MMA_AVAILABLE
#endif // NEW_MMA_AVAILABLE
}
static __device__ __forceinline__ void mma(
tile<16, 8, int> & D, const tile<16, 8, int> & A, const tile<8, 8, int> & B) {
#ifdef TURING_MMA_AVAILABLE
#ifdef NEW_MMA_AVAILABLE
#if __CUDA_ARCH__ >= GGML_CUDA_CC_AMPERE
asm("mma.sync.aligned.m16n8k32.row.col.s32.s8.s8.s32 {%0, %1, %2, %3}, {%4, %5, %6, %7}, {%8, %9}, {%0, %1, %2, %3};"
: "+r"(D.x[0]), "+r"(D.x[1]), "+r"(D.x[2]), "+r"(D.x[3])
@@ -349,12 +317,12 @@ namespace ggml_cuda_mma {
GGML_UNUSED(A);
GGML_UNUSED(B);
NO_DEVICE_CODE;
#endif // TURING_MMA_AVAILABLE
#endif // NEW_MMA_AVAILABLE
}
static __device__ __forceinline__ void mma(
tile<16, 4, half2> & D, const tile<16, 8, half2> & A, const tile<8, 8, half2> & B) {
#ifdef TURING_MMA_AVAILABLE
#ifdef NEW_MMA_AVAILABLE
const int * Axi = (const int *) A.x;
const int * Bxi = (const int *) B.x;
int * Dxi = (int *) D.x;
@@ -376,12 +344,12 @@ namespace ggml_cuda_mma {
GGML_UNUSED(A);
GGML_UNUSED(B);
NO_DEVICE_CODE;
#endif // TURING_MMA_AVAILABLE
#endif // NEW_MMA_AVAILABLE
}
static __device__ __forceinline__ void mma(
tile<16, 8, half2> & D, const tile<16, 8, half2> & A, const tile<16, 8, half2> & B) {
#ifdef TURING_MMA_AVAILABLE
#ifdef NEW_MMA_AVAILABLE
const int * Axi = (const int *) A.x;
const int * Bxi = (const int *) B.x;
int * Dxi = (int *) D.x;
@@ -412,29 +380,12 @@ namespace ggml_cuda_mma {
GGML_UNUSED(A);
GGML_UNUSED(B);
NO_DEVICE_CODE;
#endif // TURING_MMA_AVAILABLE
}
static __device__ __forceinline__ void mma(
tile<16, 8, float> & D, const tile<16, 8, float> & A, const tile<8, 8, float> & B) {
#ifdef AMPERE_MMA_AVAILABLE
const int * Axi = (const int *) A.x;
const int * Bxi = (const int *) B.x;
int * Dxi = (int *) D.x;
asm("mma.sync.aligned.m16n8k8.row.col.f32.tf32.tf32.f32 {%0, %1, %2, %3}, {%4, %5, %6, %7}, {%8, %9}, {%0, %1, %2, %3};"
: "+r"(Dxi[0]), "+r"(Dxi[1]), "+r"(Dxi[2]), "+r"(Dxi[3])
: "r"(Axi[0]), "r"(Axi[1]), "r"(Axi[2]), "r"(Axi[3]), "r"(Bxi[0]), "r"(Bxi[1]));
#else
GGML_UNUSED(D);
GGML_UNUSED(A);
GGML_UNUSED(B);
NO_DEVICE_CODE;
#endif // AMPERE_MMA_AVAILABLE
#endif // NEW_MMA_AVAILABLE
}
static __device__ __forceinline__ void mma(
tile<16, 8, float> & D, const tile<16, 8, half2> & A, const tile<8, 8, half2> & B) {
#ifdef TURING_MMA_AVAILABLE
#ifdef NEW_MMA_AVAILABLE
const int * Axi = (const int *) A.x;
const int * Bxi = (const int *) B.x;
int * Dxi = (int *) D.x;
@@ -456,29 +407,12 @@ namespace ggml_cuda_mma {
GGML_UNUSED(A);
GGML_UNUSED(B);
NO_DEVICE_CODE;
#endif // TURING_MMA_AVAILABLE
}
static __device__ __forceinline__ void mma(
tile<16, 8, float> & D, const tile<16, 8, nv_bfloat162> & A, const tile<8, 8, nv_bfloat162> & B) {
#ifdef AMPERE_MMA_AVAILABLE
const int * Axi = (const int *) A.x;
const int * Bxi = (const int *) B.x;
int * Dxi = (int *) D.x;
asm("mma.sync.aligned.m16n8k16.row.col.f32.bf16.bf16.f32 {%0, %1, %2, %3}, {%4, %5, %6, %7}, {%8, %9}, {%0, %1, %2, %3};"
: "+r"(Dxi[0]), "+r"(Dxi[1]), "+r"(Dxi[2]), "+r"(Dxi[3])
: "r"(Axi[0]), "r"(Axi[1]), "r"(Axi[2]), "r"(Axi[3]), "r"(Bxi[0]), "r"(Bxi[1]));
#else
GGML_UNUSED(D);
GGML_UNUSED(A);
GGML_UNUSED(B);
NO_DEVICE_CODE;
#endif // AMPERE_MMA_AVAILABLE
#endif // NEW_MMA_AVAILABLE
}
static __device__ __forceinline__ void mma(
tile<16, 16, float> & D, const tile<16, 8, half2> & A, const tile<16, 8, half2> & B) {
#ifdef TURING_MMA_AVAILABLE
#ifdef NEW_MMA_AVAILABLE
const int * Axi = (const int *) A.x;
const int * Bxi = (const int *) B.x;
int * Dxi = (int *) D.x;
@@ -509,7 +443,7 @@ namespace ggml_cuda_mma {
GGML_UNUSED(A);
GGML_UNUSED(B);
NO_DEVICE_CODE;
#endif // TURING_MMA_AVAILABLE
#endif // NEW_MMA_AVAILABLE
}
static __device__ __forceinline__ void mma(

View File

@@ -1,431 +0,0 @@
#include "ggml.h"
#include "common.cuh"
#include "mma.cuh"
#include "mmf.cuh"
using namespace ggml_cuda_mma;
#define MMF_ROWS_PER_BLOCK 32
template <typename T, int rows_per_block, int cols_per_block, int nwarps>
__launch_bounds__(ggml_cuda_get_physical_warp_size()*nwarps, 1)
static __global__ void mul_mat_f(
const T * __restrict__ x, const float * __restrict__ y, const int32_t * __restrict__ ids, float * __restrict__ dst,
const int ncols, const int nchannels_y, const int stride_row, const int stride_col_y, const int stride_col_dst,
const int channel_ratio, const int stride_channel_x, const int stride_channel_y, const int stride_channel_dst,
const int sample_ratio, const int stride_sample_x, const int stride_sample_y, const int stride_sample_dst) {
#if !defined(GGML_USE_HIP) && !defined(GGML_USE_MUSA)
typedef tile<16, 8, T> tile_A;
typedef tile< 8, 8, T> tile_B;
typedef tile<16, 8, float> tile_C;
constexpr int warp_size = ggml_cuda_get_physical_warp_size();
constexpr int tile_k_padded = warp_size + 4;
constexpr int ntA = rows_per_block / tile_A::I;
constexpr int ntB = (cols_per_block + tile_B::I - 1) / tile_B::I;
const int row0 = blockIdx.x * rows_per_block;
const int channel_dst = blockIdx.y;
const int channel_x = channel_dst / channel_ratio;
const int channel_y = channel_dst;
const int sample_dst = blockIdx.z;
const int sample_x = sample_dst / sample_ratio;
const int sample_y = sample_dst;
x += int64_t(sample_x) *stride_sample_x + channel_x *stride_channel_x + row0*stride_row ;
y += int64_t(sample_y) *stride_sample_y + channel_y *stride_channel_y;
dst += int64_t(sample_dst)*stride_sample_dst + channel_dst*stride_channel_dst;
const float2 * y2 = (const float2 *) y;
extern __shared__ char data_mmv[];
tile_C C[ntA][ntB];
T * tile_xy = (T *) data_mmv + threadIdx.y*(tile_A::I * tile_k_padded);
for (int col = threadIdx.y*warp_size + threadIdx.x; col < ncols; col += nwarps*warp_size) {
tile_A A[ntA][warp_size / tile_A::J];
#pragma unroll
for (int itA = 0; itA < ntA; ++itA) {
#pragma unroll
for (int i = 0; i < tile_A::I; ++i) {
tile_xy[i*tile_k_padded + threadIdx.x] = x[(itA*tile_A::I + i)*stride_row + col];
}
#pragma unroll
for (int k0 = 0; k0 < warp_size; k0 += tile_A::J) {
load_ldmatrix(A[itA][k0/tile_A::J], tile_xy + k0, tile_k_padded);
}
}
#pragma unroll
for (int itB = 0; itB < ntB; ++itB) {
if constexpr (std::is_same_v<T, float>) {
#pragma unroll
for (int j0 = 0; j0 < tile_B::I; ++j0) {
const int j = j0 + itB*tile_B::I;
tile_xy[j0*tile_k_padded + threadIdx.x] = j < cols_per_block ? y[j*stride_col_y + col] : 0.0f;
}
} else if constexpr (std::is_same_v<T, half2> || std::is_same_v<T, nv_bfloat162>) {
#pragma unroll
for (int j0 = 0; j0 < tile_B::I; ++j0) {
const int j = j0 + itB*tile_B::I;
const float2 tmp = j < cols_per_block ? y2[j*stride_col_y + col] : make_float2(0.0f, 0.0f);
tile_xy[j0*tile_k_padded + threadIdx.x] = {tmp.x, tmp.y};
}
} else {
static_assert(std::is_same_v<T, void>, "unsupported type");
}
#pragma unroll
for (int k0 = 0; k0 < warp_size; k0 += tile_B::J) {
tile_B B;
load_ldmatrix(B, tile_xy + k0, tile_k_padded);
#pragma unroll
for (int itA = 0; itA < ntA; ++itA) {
mma(C[itA][itB], A[itA][k0/tile_B::J], B);
}
}
}
}
float * buf_iw = (float *) data_mmv;
constexpr int kiw = nwarps*rows_per_block + 4;
if (nwarps > 1) {
__syncthreads();
}
#pragma unroll
for (int itB = 0; itB < ntB; ++itB) {
#pragma unroll
for (int itA = 0; itA < ntA; ++itA) {
#pragma unroll
for (int l = 0; l < tile_C::ne; ++l) {
const int i = threadIdx.y*rows_per_block + itA*tile_C::I + tile_C::get_i(l);
const int j = itB*tile_C::J + tile_C::get_j(l);
buf_iw[j*kiw + i] = C[itA][itB].x[l];
}
}
}
if (nwarps > 1) {
__syncthreads();
}
#pragma unroll
for (int j0 = 0; j0 < cols_per_block; j0 += nwarps) {
const int j = j0 + threadIdx.y;
if (j0 + nwarps > cols_per_block && j >= cols_per_block) {
return;
}
float sum = 0.0f;
static_assert(rows_per_block == warp_size, "need loop/check");
#pragma unroll
for (int i0 = 0; i0 < nwarps*rows_per_block; i0 += rows_per_block) {
const int i = i0 + threadIdx.x;
sum += buf_iw[j*kiw + i];
}
dst[j*stride_col_dst + row0 + threadIdx.x] = sum;
}
#else
NO_DEVICE_CODE;
GGML_UNUSED(x); GGML_UNUSED(y); GGML_UNUSED(ids); GGML_UNUSED(dst);
GGML_UNUSED(ncols); GGML_UNUSED(nchannels_y); GGML_UNUSED(stride_row); GGML_UNUSED(stride_col_y); GGML_UNUSED(stride_col_dst);
GGML_UNUSED(channel_ratio); GGML_UNUSED(stride_channel_x); GGML_UNUSED(stride_channel_y); GGML_UNUSED(stride_channel_dst);
GGML_UNUSED(sample_ratio); GGML_UNUSED(stride_sample_x); GGML_UNUSED(stride_sample_y); GGML_UNUSED(stride_sample_dst);
#endif // !defined(GGML_USE_HIP) && !defined(GGML_USE_MUSA)
}
template <typename T, int cols_per_block>
static void mul_mat_f_cuda(
const T * x, const float * y, const int32_t * ids, float * dst,
const int64_t ncols_x, const int64_t nrows_x,
const int64_t stride_row, const int64_t stride_col_y, const int64_t stride_col_dst,
const int64_t nchannels_x, const int64_t nchannels_y, const int64_t nchannels_dst,
const int64_t stride_channel_x, const int64_t stride_channel_y, const int64_t stride_channel_dst, const int64_t nsamples_x,
const int64_t nsamples_dst, const int64_t stride_sample_x, const int64_t stride_sample_y, const int64_t stride_sample_dst,
cudaStream_t stream) {
typedef tile<16, 8, T> tile_A;
typedef tile< 8, 8, T> tile_B;
typedef tile<16, 8, float> tile_C;
GGML_ASSERT(!ids && "mul_mat_id not implemented");
GGML_ASSERT(ncols_x % 2 == 0);
GGML_ASSERT(stride_row % 2 == 0);
GGML_ASSERT(stride_col_y % 2 == 0);
GGML_ASSERT(ids || nchannels_dst % nchannels_x == 0);
GGML_ASSERT( nsamples_dst % nsamples_x == 0);
const int64_t channel_ratio = nchannels_dst / nchannels_x;
const int64_t sample_ratio = nsamples_dst / nsamples_x;
const int device = ggml_cuda_get_device();
const int warp_size = ggml_cuda_info().devices[device].warp_size;
int64_t nwarps_best = 1;
int64_t niter_best = (ncols_x + warp_size*2 - 1) / (warp_size*2);
int64_t max_block_size = 256;
for (int64_t nwarps = 2; nwarps <= max_block_size/warp_size; nwarps++) {
const int64_t niter = (ncols_x + nwarps*warp_size*2 - 1) / (nwarps*warp_size*2);
if (niter < niter_best) {
niter_best = niter;
nwarps_best = nwarps;
}
}
constexpr int rows_per_block = MMF_ROWS_PER_BLOCK;
const int nbytes_shared_iter = nwarps_best * tile_A::I * (warp_size + 4) * 4;
const int nbytes_shared_combine = GGML_PAD(cols_per_block, tile_B::I) * (nwarps_best*rows_per_block + 4) * 4;
const int nbytes_shared = std::max(nbytes_shared_iter, nbytes_shared_combine);
const dim3 block_nums(nrows_x/rows_per_block, nchannels_dst, nsamples_dst);
const dim3 block_dims(warp_size, nwarps_best, 1);
switch (nwarps_best) {
case 1: {
mul_mat_f<T, rows_per_block, cols_per_block, 1><<<block_nums, block_dims, nbytes_shared, stream>>>
(x, y, ids, dst, ncols_x, nchannels_y, stride_row, stride_col_y, stride_col_dst,
channel_ratio, stride_channel_x, stride_channel_y, stride_channel_dst,
sample_ratio, stride_sample_x, stride_sample_y, stride_sample_dst);
} break;
case 2: {
mul_mat_f<T, rows_per_block, cols_per_block, 2><<<block_nums, block_dims, nbytes_shared, stream>>>
(x, y, ids, dst, ncols_x, nchannels_y, stride_row, stride_col_y, stride_col_dst,
channel_ratio, stride_channel_x, stride_channel_y, stride_channel_dst,
sample_ratio, stride_sample_x, stride_sample_y, stride_sample_dst);
} break;
case 3: {
mul_mat_f<T, rows_per_block, cols_per_block, 3><<<block_nums, block_dims, nbytes_shared, stream>>>
(x, y, ids, dst, ncols_x, nchannels_y, stride_row, stride_col_y, stride_col_dst,
channel_ratio, stride_channel_x, stride_channel_y, stride_channel_dst,
sample_ratio, stride_sample_x, stride_sample_y, stride_sample_dst);
} break;
case 4: {
mul_mat_f<T, rows_per_block, cols_per_block, 4><<<block_nums, block_dims, nbytes_shared, stream>>>
(x, y, ids, dst, ncols_x, nchannels_y, stride_row, stride_col_y, stride_col_dst,
channel_ratio, stride_channel_x, stride_channel_y, stride_channel_dst,
sample_ratio, stride_sample_x, stride_sample_y, stride_sample_dst);
} break;
case 5: {
mul_mat_f<T, rows_per_block, cols_per_block, 5><<<block_nums, block_dims, nbytes_shared, stream>>>
(x, y, ids, dst, ncols_x, nchannels_y, stride_row, stride_col_y, stride_col_dst,
channel_ratio, stride_channel_x, stride_channel_y, stride_channel_dst,
sample_ratio, stride_sample_x, stride_sample_y, stride_sample_dst);
} break;
case 6: {
mul_mat_f<T, rows_per_block, cols_per_block, 6><<<block_nums, block_dims, nbytes_shared, stream>>>
(x, y, ids, dst, ncols_x, nchannels_y, stride_row, stride_col_y, stride_col_dst,
channel_ratio, stride_channel_x, stride_channel_y, stride_channel_dst,
sample_ratio, stride_sample_x, stride_sample_y, stride_sample_dst);
} break;
case 7: {
mul_mat_f<T, rows_per_block, cols_per_block, 7><<<block_nums, block_dims, nbytes_shared, stream>>>
(x, y, ids, dst, ncols_x, nchannels_y, stride_row, stride_col_y, stride_col_dst,
channel_ratio, stride_channel_x, stride_channel_y, stride_channel_dst,
sample_ratio, stride_sample_x, stride_sample_y, stride_sample_dst);
} break;
case 8: {
mul_mat_f<T, rows_per_block, cols_per_block, 8><<<block_nums, block_dims, nbytes_shared, stream>>>
(x, y, ids, dst, ncols_x, nchannels_y, stride_row, stride_col_y, stride_col_dst,
channel_ratio, stride_channel_x, stride_channel_y, stride_channel_dst,
sample_ratio, stride_sample_x, stride_sample_y, stride_sample_dst);
} break;
default: {
GGML_ABORT("fatal error");
} break;
}
}
template <typename T>
static void mul_mat_f_switch_cols_per_block(
const T * x, const float * y, const int32_t * ids, float * dst,
const int64_t ncols_x, const int64_t nrows_x, const int64_t ncols_dst,
const int64_t stride_row, const int64_t stride_col_y, const int64_t stride_col_dst,
const int64_t nchannels_x, const int64_t nchannels_y, const int64_t nchannels_dst,
const int64_t stride_channel_x, const int64_t stride_channel_y, const int64_t stride_channel_dst, const int64_t nsamples_x,
const int64_t nsamples_dst, const int64_t stride_sample_x, const int64_t stride_sample_y, const int64_t stride_sample_dst,
cudaStream_t stream) {
switch (ncols_dst) {
case 1: {
mul_mat_f_cuda<T, 1>(x, y, ids, dst, ncols_x, nrows_x, stride_row, stride_col_y, stride_col_dst,
nchannels_x, nchannels_y, nchannels_dst, stride_channel_x, stride_channel_y, stride_channel_dst,
nsamples_x, nsamples_dst, stride_sample_x, stride_sample_y, stride_sample_dst, stream);
} break;
case 2: {
mul_mat_f_cuda<T, 2>(x, y, ids, dst, ncols_x, nrows_x, stride_row, stride_col_y, stride_col_dst,
nchannels_x, nchannels_y, nchannels_dst, stride_channel_x, stride_channel_y, stride_channel_dst,
nsamples_x, nsamples_dst, stride_sample_x, stride_sample_y, stride_sample_dst, stream);
} break;
case 3: {
mul_mat_f_cuda<T, 3>(x, y, ids, dst, ncols_x, nrows_x, stride_row, stride_col_y, stride_col_dst,
nchannels_x, nchannels_y, nchannels_dst, stride_channel_x, stride_channel_y, stride_channel_dst,
nsamples_x, nsamples_dst, stride_sample_x, stride_sample_y, stride_sample_dst, stream);
} break;
case 4: {
mul_mat_f_cuda<T, 4>(x, y, ids, dst, ncols_x, nrows_x, stride_row, stride_col_y, stride_col_dst,
nchannels_x, nchannels_y, nchannels_dst, stride_channel_x, stride_channel_y, stride_channel_dst,
nsamples_x, nsamples_dst, stride_sample_x, stride_sample_y, stride_sample_dst, stream);
} break;
case 5: {
mul_mat_f_cuda<T, 5>(x, y, ids, dst, ncols_x, nrows_x, stride_row, stride_col_y, stride_col_dst,
nchannels_x, nchannels_y, nchannels_dst, stride_channel_x, stride_channel_y, stride_channel_dst,
nsamples_x, nsamples_dst, stride_sample_x, stride_sample_y, stride_sample_dst, stream);
} break;
case 6: {
mul_mat_f_cuda<T, 6>(x, y, ids, dst, ncols_x, nrows_x, stride_row, stride_col_y, stride_col_dst,
nchannels_x, nchannels_y, nchannels_dst, stride_channel_x, stride_channel_y, stride_channel_dst,
nsamples_x, nsamples_dst, stride_sample_x, stride_sample_y, stride_sample_dst, stream);
} break;
case 7: {
mul_mat_f_cuda<T, 7>(x, y, ids, dst, ncols_x, nrows_x, stride_row, stride_col_y, stride_col_dst,
nchannels_x, nchannels_y, nchannels_dst, stride_channel_x, stride_channel_y, stride_channel_dst,
nsamples_x, nsamples_dst, stride_sample_x, stride_sample_y, stride_sample_dst, stream);
} break;
case 8: {
mul_mat_f_cuda<T, 8>(x, y, ids, dst, ncols_x, nrows_x, stride_row, stride_col_y, stride_col_dst,
nchannels_x, nchannels_y, nchannels_dst, stride_channel_x, stride_channel_y, stride_channel_dst,
nsamples_x, nsamples_dst, stride_sample_x, stride_sample_y, stride_sample_dst, stream);
} break;
case 9: {
mul_mat_f_cuda<T, 9>(x, y, ids, dst, ncols_x, nrows_x, stride_row, stride_col_y, stride_col_dst,
nchannels_x, nchannels_y, nchannels_dst, stride_channel_x, stride_channel_y, stride_channel_dst,
nsamples_x, nsamples_dst, stride_sample_x, stride_sample_y, stride_sample_dst, stream);
} break;
case 10: {
mul_mat_f_cuda<T, 10>(x, y, ids, dst, ncols_x, nrows_x, stride_row, stride_col_y, stride_col_dst,
nchannels_x, nchannels_y, nchannels_dst, stride_channel_x, stride_channel_y, stride_channel_dst,
nsamples_x, nsamples_dst, stride_sample_x, stride_sample_y, stride_sample_dst, stream);
} break;
case 11: {
mul_mat_f_cuda<T, 11>(x, y, ids, dst, ncols_x, nrows_x, stride_row, stride_col_y, stride_col_dst,
nchannels_x, nchannels_y, nchannels_dst, stride_channel_x, stride_channel_y, stride_channel_dst,
nsamples_x, nsamples_dst, stride_sample_x, stride_sample_y, stride_sample_dst, stream);
} break;
case 12: {
mul_mat_f_cuda<T, 12>(x, y, ids, dst, ncols_x, nrows_x, stride_row, stride_col_y, stride_col_dst,
nchannels_x, nchannels_y, nchannels_dst, stride_channel_x, stride_channel_y, stride_channel_dst,
nsamples_x, nsamples_dst, stride_sample_x, stride_sample_y, stride_sample_dst, stream);
} break;
case 13: {
mul_mat_f_cuda<T, 13>(x, y, ids, dst, ncols_x, nrows_x, stride_row, stride_col_y, stride_col_dst,
nchannels_x, nchannels_y, nchannels_dst, stride_channel_x, stride_channel_y, stride_channel_dst,
nsamples_x, nsamples_dst, stride_sample_x, stride_sample_y, stride_sample_dst, stream);
} break;
case 14: {
mul_mat_f_cuda<T, 14>(x, y, ids, dst, ncols_x, nrows_x, stride_row, stride_col_y, stride_col_dst,
nchannels_x, nchannels_y, nchannels_dst, stride_channel_x, stride_channel_y, stride_channel_dst,
nsamples_x, nsamples_dst, stride_sample_x, stride_sample_y, stride_sample_dst, stream);
} break;
case 15: {
mul_mat_f_cuda<T, 15>(x, y, ids, dst, ncols_x, nrows_x, stride_row, stride_col_y, stride_col_dst,
nchannels_x, nchannels_y, nchannels_dst, stride_channel_x, stride_channel_y, stride_channel_dst,
nsamples_x, nsamples_dst, stride_sample_x, stride_sample_y, stride_sample_dst, stream);
} break;
case 16: {
mul_mat_f_cuda<T, 16>(x, y, ids, dst, ncols_x, nrows_x, stride_row, stride_col_y, stride_col_dst,
nchannels_x, nchannels_y, nchannels_dst, stride_channel_x, stride_channel_y, stride_channel_dst,
nsamples_x, nsamples_dst, stride_sample_x, stride_sample_y, stride_sample_dst, stream);
} break;
default: {
GGML_ABORT("fatal error");
} break;
}
}
void ggml_cuda_mul_mat_f(ggml_backend_cuda_context & ctx, const ggml_tensor * src0, const ggml_tensor * src1, const ggml_tensor * ids, ggml_tensor * dst) {
GGML_ASSERT( src1->type == GGML_TYPE_F32);
GGML_ASSERT(!ids || ids->type == GGML_TYPE_I32);
GGML_ASSERT( dst->type == GGML_TYPE_F32);
GGML_TENSOR_BINARY_OP_LOCALS;
const size_t ts_src0 = ggml_type_size(src0->type);
const size_t ts_src1 = ggml_type_size(src1->type);
const size_t ts_dst = ggml_type_size(dst->type);
GGML_ASSERT(ne13 == ne3);
GGML_ASSERT( nb00 == ts_src0);
GGML_ASSERT( nb10 == ts_src1);
GGML_ASSERT(!ids || ids->nb[0] == ggml_type_size(ids->type));
GGML_ASSERT( nb0 == ts_dst);
const int cc = ggml_cuda_info().devices[ggml_cuda_get_device()].cc;
const enum ggml_prec prec = fast_fp16_available(cc) ? ggml_prec(dst->op_params[0]) : GGML_PREC_F32;
const float * src1_d = (const float *) src1->data;
const int32_t * ids_d = ids ? (const int32_t *) ids->data : nullptr;
float * dst_d = (float *) dst->data;
const int64_t s01 = src0->nb[1] / ts_src0;
const int64_t s11 = src1->nb[1] / ts_src1;
const int64_t s1 = dst->nb[1] / ts_dst;
const int64_t s02 = src0->nb[2] / ts_src0;
const int64_t s12 = src1->nb[2] / ts_src1;
const int64_t s2 = dst->nb[2] / ts_dst;
const int64_t s03 = src0->nb[3] / ts_src0;
const int64_t s13 = src1->nb[3] / ts_src1;
const int64_t s3 = dst->nb[3] / ts_dst;
// For MUL_MAT_ID the memory layout is different than for MUL_MAT:
const int64_t ncols_dst = ids ? ne2 : ne1;
const int64_t nchannels_y = ids ? ne11 : ne12;
const int64_t nchannels_dst = ids ? ne1 : ne2;
const int64_t stride_channel_dst = ids ? s1 : s2;
const int64_t stride_channel_y = ids ? s11 : s12;
GGML_ASSERT(!ids || ncols_dst == 1);
switch (src0->type) {
case GGML_TYPE_F32: {
const float * src0_d = (const float *) src0->data;
constexpr int vals_per_T = 1;
mul_mat_f_switch_cols_per_block(
src0_d, src1_d, ids_d, dst_d, ne00/vals_per_T, ne01, ncols_dst, s01/vals_per_T, s11/vals_per_T, s1,
ne02, nchannels_y, nchannels_dst, s02/vals_per_T, stride_channel_y, stride_channel_dst,
ne03, ne3, s03/vals_per_T, s13, s3, ctx.stream());
} break;
case GGML_TYPE_F16: {
const half2 * src0_d = (const half2 *) src0->data;
constexpr int vals_per_T = 2;
mul_mat_f_switch_cols_per_block(
src0_d, src1_d, ids_d, dst_d, ne00/vals_per_T, ne01, ncols_dst, s01/vals_per_T, s11/vals_per_T, s1,
ne02, nchannels_y, nchannels_dst, s02/vals_per_T, stride_channel_y, stride_channel_dst,
ne03, ne3, s03/vals_per_T, s13, s3, ctx.stream());
} break;
case GGML_TYPE_BF16: {
const nv_bfloat162 * src0_d = (const nv_bfloat162 *) src0->data;
constexpr int vals_per_T = 2;
mul_mat_f_switch_cols_per_block(
src0_d, src1_d, ids_d, dst_d, ne00/vals_per_T, ne01, ncols_dst, s01/vals_per_T, s11/vals_per_T, s1,
ne02, nchannels_y, nchannels_dst, s02/vals_per_T, stride_channel_y, stride_channel_dst,
ne03, ne3, s03/vals_per_T, s13, s3, ctx.stream());
} break;
default:
GGML_ABORT("unsupported type: %s", ggml_type_name(src0->type));
}
}
bool ggml_cuda_should_use_mmf(enum ggml_type type, int cc, int warp_size, const int64_t * src0_ne, int64_t ne11) {
if (src0_ne[0] % (warp_size * (4/ggml_type_size(type))) != 0) {
return false;
}
if (src0_ne[1] % MMF_ROWS_PER_BLOCK != 0) {
return false;
}
if (ne11 > 16) {
return false;
}
switch (type) {
case GGML_TYPE_F32:
return ampere_mma_available(cc);
case GGML_TYPE_F16:
return turing_mma_available(cc);
case GGML_TYPE_BF16:
return ampere_mma_available(cc);
default:
return false;
}
}

View File

@@ -1,5 +0,0 @@
#include "common.cuh"
void ggml_cuda_mul_mat_f(ggml_backend_cuda_context & ctx, const ggml_tensor * src0, const ggml_tensor * src1, const ggml_tensor * ids, ggml_tensor * dst);
bool ggml_cuda_should_use_mmf(enum ggml_type type, int cc, int warp_size, const int64_t * scr0_ne, int64_t ne11);

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