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2 Commits
zhxchen17/
...
ciflow/tru
| Author | SHA1 | Date | |
|---|---|---|---|
| a38b1ee364 | |||
| d6b27c4cef |
@ -36,7 +36,11 @@ case ${DOCKER_TAG_PREFIX} in
|
||||
;;
|
||||
rocm*)
|
||||
BASE_TARGET=rocm
|
||||
PYTORCH_ROCM_ARCH="gfx900;gfx906;gfx908;gfx90a;gfx942;gfx1030;gfx1100;gfx1101;gfx1102;gfx1200;gfx1201;gfx950;gfx1150;gfx1151"
|
||||
PYTORCH_ROCM_ARCH="gfx900;gfx906;gfx908;gfx90a;gfx942;gfx1030;gfx1100;gfx1101;gfx1102;gfx1200;gfx1201"
|
||||
# add gfx950, gfx115x conditionally starting in ROCm 7.0
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||||
if [[ "$ROCM_VERSION" == *"7.0"* ]]; then
|
||||
PYTORCH_ROCM_ARCH="${PYTORCH_ROCM_ARCH};gfx950;gfx1150;gfx1151"
|
||||
fi
|
||||
EXTRA_BUILD_ARGS="${EXTRA_BUILD_ARGS} --build-arg PYTORCH_ROCM_ARCH=${PYTORCH_ROCM_ARCH}"
|
||||
;;
|
||||
*)
|
||||
|
||||
@ -168,18 +168,6 @@ case "$tag" in
|
||||
VISION=yes
|
||||
TRITON=yes
|
||||
;;
|
||||
pytorch-linux-jammy-py3.11-clang12)
|
||||
ANACONDA_PYTHON_VERSION=3.11
|
||||
CLANG_VERSION=12
|
||||
VISION=no
|
||||
TRITON=no
|
||||
;;
|
||||
pytorch-linux-jammy-py3.12-clang12)
|
||||
ANACONDA_PYTHON_VERSION=3.12
|
||||
CLANG_VERSION=12
|
||||
VISION=no
|
||||
TRITON=no
|
||||
;;
|
||||
pytorch-linux-jammy-rocm-n-py3 | pytorch-linux-jammy-rocm-n-py3-benchmarks | pytorch-linux-noble-rocm-n-py3)
|
||||
if [[ $tag =~ "jammy" ]]; then
|
||||
ANACONDA_PYTHON_VERSION=3.10
|
||||
@ -207,9 +195,9 @@ case "$tag" in
|
||||
NINJA_VERSION=1.9.0
|
||||
TRITON=yes
|
||||
;;
|
||||
pytorch-linux-noble-xpu-n-py3 | pytorch-linux-noble-xpu-n-py3-inductor-benchmarks)
|
||||
pytorch-linux-jammy-xpu-n-py3 | pytorch-linux-jammy-xpu-n-py3-inductor-benchmarks)
|
||||
ANACONDA_PYTHON_VERSION=3.10
|
||||
GCC_VERSION=13
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||||
GCC_VERSION=11
|
||||
VISION=yes
|
||||
XPU_VERSION=2025.2
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||||
NINJA_VERSION=1.9.0
|
||||
@ -260,12 +248,6 @@ case "$tag" in
|
||||
HALIDE=yes
|
||||
TRITON=yes
|
||||
;;
|
||||
pytorch-linux-jammy-cuda12.8-py3.12-pallas)
|
||||
CUDA_VERSION=12.8.1
|
||||
ANACONDA_PYTHON_VERSION=3.12
|
||||
GCC_VERSION=11
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||||
PALLAS=yes
|
||||
;;
|
||||
pytorch-linux-jammy-py3.12-triton-cpu)
|
||||
CUDA_VERSION=12.6
|
||||
ANACONDA_PYTHON_VERSION=3.12
|
||||
@ -387,7 +369,6 @@ docker build \
|
||||
--build-arg "INDUCTOR_BENCHMARKS=${INDUCTOR_BENCHMARKS}" \
|
||||
--build-arg "EXECUTORCH=${EXECUTORCH}" \
|
||||
--build-arg "HALIDE=${HALIDE}" \
|
||||
--build-arg "PALLAS=${PALLAS}" \
|
||||
--build-arg "XPU_VERSION=${XPU_VERSION}" \
|
||||
--build-arg "UNINSTALL_DILL=${UNINSTALL_DILL}" \
|
||||
--build-arg "ACL=${ACL:-}" \
|
||||
|
||||
@ -1 +0,0 @@
|
||||
0.8.0
|
||||
@ -1,40 +0,0 @@
|
||||
#!/bin/bash
|
||||
|
||||
set -ex
|
||||
|
||||
source "$(dirname "${BASH_SOURCE[0]}")/common_utils.sh"
|
||||
|
||||
# Get the pinned JAX version (same for all CUDA versions)
|
||||
JAX_VERSION=$(get_pinned_commit /ci_commit_pins/jax)
|
||||
|
||||
function install_jax_12() {
|
||||
echo "Installing JAX ${JAX_VERSION} with CUDA 12 support"
|
||||
pip_install "jax[cuda12]==${JAX_VERSION}" -f https://storage.googleapis.com/jax-releases/jax_cuda_releases.html
|
||||
|
||||
# Verify installation
|
||||
python -c "import jax" # check for errors
|
||||
echo "JAX ${JAX_VERSION} installation completed successfully for CUDA 12"
|
||||
}
|
||||
|
||||
function install_jax_13() {
|
||||
echo "Installing JAX ${JAX_VERSION} with CUDA 13 support"
|
||||
pip_install "jax[cuda13]==${JAX_VERSION}" -f https://storage.googleapis.com/jax-releases/jax_cuda_releases.html
|
||||
|
||||
# Verify installation
|
||||
python -c "import jax" # check for errors
|
||||
echo "JAX ${JAX_VERSION} installation completed successfully for CUDA 13"
|
||||
}
|
||||
|
||||
# idiomatic parameter and option handling in sh
|
||||
while test $# -gt 0
|
||||
do
|
||||
case "$1" in
|
||||
12.4|12.6|12.6.*|12.8|12.8.*|12.9|12.9.*) install_jax_12;
|
||||
;;
|
||||
13.0|13.0.*) install_jax_13;
|
||||
;;
|
||||
*) echo "bad argument $1"; exit 1
|
||||
;;
|
||||
esac
|
||||
shift
|
||||
done
|
||||
@ -1,56 +0,0 @@
|
||||
#!/bin/bash
|
||||
# Script used only in CD pipeline
|
||||
|
||||
set -ex
|
||||
|
||||
# install dependencies
|
||||
dnf -y install gmp-devel libmpc-devel texinfo flex bison
|
||||
|
||||
cd /usr/local/src
|
||||
# fetch source for gcc 13
|
||||
git clone --depth 1 --single-branch -b releases/gcc-13.3.0 https://github.com/gcc-mirror/gcc.git gcc-13.3.0
|
||||
|
||||
mkdir -p gcc-13.3.0/build-gomp
|
||||
cd gcc-13.3.0/build-gomp
|
||||
|
||||
# configure gcc build
|
||||
# I got these flags by:
|
||||
# 1. downloading the source rpm for gcc-11 on AlmaLinux 8 container
|
||||
# dnf install -y dnf-plugins-core rpmdevtools
|
||||
# dnf download --source libgomp
|
||||
# 2. extracting the gcc.spec from the source.
|
||||
# rpmdev-extract gcc-xx.src.rpm
|
||||
# 3. extracting optflags and ld_flags from gcc.spec:
|
||||
# rpm --eval '%{optflags}'
|
||||
# rpm --eval '%{build_ldflags}'
|
||||
#
|
||||
# I had to remove the following flags because they didn't compile for this version of libgomp:
|
||||
# -Werror=format-security
|
||||
# -specs=/usr/lib/rpm/redhat/redhat-hardened-cc1
|
||||
# -specs=/usr/lib/rpm/redhat/redhat-annobin-cc1
|
||||
#
|
||||
# I added -march=armv8-a -mtune=generic to make them explicit. I don't think they're strictly needed.
|
||||
|
||||
OPT_FLAGS='-O2 -march=armv8-a -mtune=generic'\
|
||||
' -fexceptions -g -grecord-gcc-switches -pipe -Wall'\
|
||||
' -Wp,-D_FORTIFY_SOURCE=2 -Wp,-D_GLIBCXX_ASSERTIONS'\
|
||||
' -fstack-protector-strong -fasynchronous-unwind-tables'\
|
||||
' -fstack-clash-protection'
|
||||
|
||||
LDFLAGS='-Wl,-z,relro -Wl,--as-needed -Wl,-z,now'
|
||||
|
||||
CFLAGS="$OPT_FLAGS" \
|
||||
CXXFLAGS="$OPT_FLAGS" \
|
||||
LDFLAGS="$LDFLAGS" \
|
||||
../configure \
|
||||
--prefix=/usr \
|
||||
--libdir=/usr/lib64 \
|
||||
--enable-languages=c,c++ \
|
||||
--disable-multilib \
|
||||
--disable-bootstrap \
|
||||
--enable-libgomp
|
||||
|
||||
# only build libgomp
|
||||
make -j$(nproc) all-target-libgomp
|
||||
|
||||
make install-target-libgomp
|
||||
@ -9,7 +9,7 @@ set -xe
|
||||
|
||||
function install_ubuntu() {
|
||||
. /etc/os-release
|
||||
if [[ ! " jammy noble " =~ " ${VERSION_CODENAME} " ]]; then
|
||||
if [[ ! " jammy " =~ " ${VERSION_CODENAME} " ]]; then
|
||||
echo "Ubuntu version ${VERSION_CODENAME} not supported"
|
||||
exit
|
||||
fi
|
||||
@ -35,24 +35,25 @@ function install_ubuntu() {
|
||||
# The xpu-smi packages
|
||||
apt-get install -y flex bison xpu-smi
|
||||
|
||||
# Compute and Media Runtimes
|
||||
if [[ " ${VERSION_CODENAME} " =~ " noble " ]]; then
|
||||
if [[ "${XPU_DRIVER_TYPE,,}" == "lts" ]]; then
|
||||
# Compute and Media Runtimes
|
||||
apt-get install -y \
|
||||
intel-opencl-icd libze-intel-gpu1 libze1 \
|
||||
intel-media-va-driver-non-free libmfx-gen1 libvpl2 \
|
||||
libegl-mesa0 libegl1-mesa-dev libgbm1 libgl1-mesa-dev libgl1-mesa-dri \
|
||||
intel-opencl-icd intel-level-zero-gpu level-zero \
|
||||
intel-media-va-driver-non-free libmfx1 libmfxgen1 libvpl2 \
|
||||
libegl-mesa0 libegl1-mesa libegl1-mesa-dev libgbm1 libgl1-mesa-dev libgl1-mesa-dri \
|
||||
libglapi-mesa libgles2-mesa-dev libglx-mesa0 libigdgmm12 libxatracker2 mesa-va-drivers \
|
||||
mesa-vdpau-drivers mesa-vulkan-drivers va-driver-all vainfo hwinfo clinfo intel-ocloc
|
||||
else # jammy
|
||||
mesa-vdpau-drivers mesa-vulkan-drivers va-driver-all vainfo hwinfo clinfo
|
||||
# Development Packages
|
||||
apt-get install -y libigc-dev intel-igc-cm libigdfcl-dev libigfxcmrt-dev level-zero-dev
|
||||
else # rolling driver
|
||||
apt-get install -y \
|
||||
intel-opencl-icd libze-intel-gpu1 libze1 \
|
||||
intel-media-va-driver-non-free libmfx-gen1 libvpl2 \
|
||||
libegl-mesa0 libegl1-mesa libegl1-mesa-dev libgbm1 libgl1-mesa-dev libgl1-mesa-dri \
|
||||
libglapi-mesa libglx-mesa0 libigdgmm12 libxatracker2 mesa-va-drivers \
|
||||
mesa-vdpau-drivers mesa-vulkan-drivers va-driver-all vainfo hwinfo clinfo intel-ocloc
|
||||
apt-get install -y libigc-dev intel-igc-cm libigdfcl-dev libigfxcmrt-dev libze-dev
|
||||
fi
|
||||
# Development Packages
|
||||
apt-get install -y libigc-dev intel-igc-cm libigdfcl-dev libigfxcmrt-dev libze-dev
|
||||
|
||||
# Install Intel Support Packages
|
||||
apt-get install -y ${XPU_PACKAGES}
|
||||
@ -65,7 +66,7 @@ function install_ubuntu() {
|
||||
function install_rhel() {
|
||||
. /etc/os-release
|
||||
if [[ "${ID}" == "rhel" ]]; then
|
||||
if [[ ! " 8.8 8.10 9.0 9.2 9.3 " =~ " ${VERSION_ID} " ]]; then
|
||||
if [[ ! " 8.8 8.9 9.0 9.2 9.3 " =~ " ${VERSION_ID} " ]]; then
|
||||
echo "RHEL version ${VERSION_ID} not supported"
|
||||
exit
|
||||
fi
|
||||
@ -146,7 +147,7 @@ function install_sles() {
|
||||
XPU_DRIVER_VERSION=""
|
||||
if [[ "${XPU_DRIVER_TYPE,,}" == "lts" ]]; then
|
||||
# Use GPU driver LTS releases
|
||||
XPU_DRIVER_VERSION="/lts/2523"
|
||||
XPU_DRIVER_VERSION="/lts/2350"
|
||||
fi
|
||||
|
||||
# Default use Intel® oneAPI Deep Learning Essentials 2025.1
|
||||
|
||||
@ -49,7 +49,11 @@ case ${DOCKER_TAG_PREFIX} in
|
||||
fi
|
||||
BASE_TARGET=rocm
|
||||
GPU_IMAGE=rocm/dev-ubuntu-22.04:${GPU_ARCH_VERSION}-complete
|
||||
PYTORCH_ROCM_ARCH="gfx900;gfx906;gfx908;gfx90a;gfx942;gfx1030;gfx1100;gfx1101;gfx1102;gfx1200;gfx1201;gfx950;gfx1150;gfx1151"
|
||||
PYTORCH_ROCM_ARCH="gfx900;gfx906;gfx908;gfx90a;gfx942;gfx1030;gfx1100;gfx1101;gfx1102;gfx1200;gfx1201"
|
||||
# add gfx950, gfx115x conditionally starting in ROCm 7.0
|
||||
if [[ "$GPU_ARCH_VERSION" == *"7.0"* ]]; then
|
||||
PYTORCH_ROCM_ARCH="${PYTORCH_ROCM_ARCH};gfx950;gfx1150;gfx1151"
|
||||
fi
|
||||
DOCKER_GPU_BUILD_ARG="--build-arg PYTORCH_ROCM_ARCH=${PYTORCH_ROCM_ARCH} --build-arg ROCM_VERSION=${GPU_ARCH_VERSION}"
|
||||
;;
|
||||
*)
|
||||
|
||||
@ -50,10 +50,6 @@ RUN rm install_ninja.sh
|
||||
ENV PATH=/opt/rh/gcc-toolset-${GCCTOOLSET_VERSION}/root/usr/bin:$PATH
|
||||
ENV LD_LIBRARY_PATH=/opt/rh/gcc-toolset-${GCCTOOLSET_VERSION}/root/usr/lib64:/opt/rh/gcc-toolset-${GCCTOOLSET_VERSION}/root/usr/lib:$LD_LIBRARY_PATH
|
||||
|
||||
# Build a newer version of libgomp than that supported in in Almalinux 8.
|
||||
COPY ./common/install_libgomp.sh install_libgomp.sh
|
||||
RUN bash ./install_libgomp.sh && rm install_libgomp.sh
|
||||
|
||||
# git236+ would refuse to run git commands in repos owned by other users
|
||||
# Which causes version check to fail, as pytorch repo is bind-mounted into the image
|
||||
# Override this behaviour by treating every folder as safe
|
||||
|
||||
@ -87,7 +87,11 @@ case ${image} in
|
||||
MANY_LINUX_VERSION="2_28"
|
||||
DEVTOOLSET_VERSION="11"
|
||||
GPU_IMAGE=rocm/dev-almalinux-8:${GPU_ARCH_VERSION}-complete
|
||||
PYTORCH_ROCM_ARCH="gfx900;gfx906;gfx908;gfx90a;gfx942;gfx1030;gfx1100;gfx1101;gfx1102;gfx1200;gfx1201;gfx950;gfx1150;gfx1151"
|
||||
PYTORCH_ROCM_ARCH="gfx900;gfx906;gfx908;gfx90a;gfx942;gfx1030;gfx1100;gfx1101;gfx1102;gfx1200;gfx1201"
|
||||
# add gfx950, gfx115x conditionally starting in ROCm 7.0
|
||||
if [[ "$GPU_ARCH_VERSION" == *"7.0"* ]]; then
|
||||
PYTORCH_ROCM_ARCH="${PYTORCH_ROCM_ARCH};gfx950;gfx1150;gfx1151"
|
||||
fi
|
||||
DOCKER_GPU_BUILD_ARG="--build-arg ROCM_VERSION=${GPU_ARCH_VERSION} --build-arg PYTORCH_ROCM_ARCH=${PYTORCH_ROCM_ARCH} --build-arg DEVTOOLSET_VERSION=${DEVTOOLSET_VERSION}"
|
||||
;;
|
||||
manylinux2_28-builder:xpu)
|
||||
|
||||
@ -1,11 +1,15 @@
|
||||
sphinx==7.2.6
|
||||
sphinx==5.3.0
|
||||
#Description: This is used to generate PyTorch docs
|
||||
#Pinned versions: 7.2.6
|
||||
#Pinned versions: 5.3.0
|
||||
|
||||
pytorch_sphinx_theme2==0.2.0
|
||||
#Description: This is needed to generate PyTorch docs
|
||||
#Pinned versions: 0.2.0
|
||||
standard-imghdr==3.13.0; python_version >= "3.13"
|
||||
#Description: This is needed by Sphinx, so it needs to be added here.
|
||||
# The reasons are as follows:
|
||||
# 1) This module has been removed from the Python standard library since Python 3.13(https://peps.python.org/pep-0594/#imghdr);
|
||||
# 2) The current version of Sphinx (5.3.0) is not compatible with Python 3.13.
|
||||
# Once Sphinx is upgraded to a version compatible with Python 3.13 or later, we can remove this dependency.
|
||||
|
||||
-e git+https://github.com/pytorch/pytorch_sphinx_theme.git@71e55749be14ceb56e7f8211a9fb649866b87ad4#egg=pytorch_sphinx_theme2
|
||||
# TODO: sphinxcontrib.katex 0.9.0 adds a local KaTeX server to speed up pre-rendering
|
||||
# but it doesn't seem to work and hangs around idly. The initial thought that it is probably
|
||||
# something related to Docker setup. We can investigate this later.
|
||||
@ -32,17 +36,17 @@ tensorboard==2.18.0 ; python_version >= "3.13"
|
||||
#Description: This is used to generate PyTorch docs
|
||||
#Pinned versions: 2.13.0
|
||||
|
||||
breathe==4.36.0
|
||||
breathe==4.34.0
|
||||
#Description: This is used to generate PyTorch C++ docs
|
||||
#Pinned versions: 4.36.0
|
||||
#Pinned versions: 4.34.0
|
||||
|
||||
exhale==0.3.7
|
||||
exhale==0.2.3
|
||||
#Description: This is used to generate PyTorch C++ docs
|
||||
#Pinned versions: 0.3.7
|
||||
#Pinned versions: 0.2.3
|
||||
|
||||
docutils==0.20
|
||||
docutils==0.16
|
||||
#Description: This is used to generate PyTorch C++ docs
|
||||
#Pinned versions: 0.20
|
||||
#Pinned versions: 0.16
|
||||
|
||||
bs4==0.0.1
|
||||
#Description: This is used to generate PyTorch C++ docs
|
||||
@ -52,13 +56,13 @@ IPython==8.12.0
|
||||
#Description: This is used to generate PyTorch functorch docs
|
||||
#Pinned versions: 8.12.0
|
||||
|
||||
myst-nb==1.3.0
|
||||
myst-nb==0.17.2
|
||||
#Description: This is used to generate PyTorch functorch and torch.compile docs.
|
||||
#Pinned versions: 1.3.0
|
||||
#Pinned versions: 0.17.2
|
||||
|
||||
# The following are required to build torch.distributed.elastic.rendezvous.etcd* docs
|
||||
python-etcd==0.4.5
|
||||
sphinx-copybutton==0.5.0
|
||||
sphinx-design==0.6.1
|
||||
sphinx-design==0.4.0
|
||||
sphinxcontrib-mermaid==1.0.0
|
||||
myst-parser==4.0.1
|
||||
myst-parser==0.18.1
|
||||
|
||||
@ -143,15 +143,6 @@ COPY ci_commit_pins/halide.txt halide.txt
|
||||
RUN if [ -n "${HALIDE}" ]; then bash ./install_halide.sh; fi
|
||||
RUN rm install_halide.sh common_utils.sh halide.txt
|
||||
|
||||
ARG PALLAS
|
||||
ARG CUDA_VERSION
|
||||
# Install JAX with CUDA support (for Pallas)
|
||||
COPY ./common/install_jax.sh install_jax.sh
|
||||
COPY ./common/common_utils.sh common_utils.sh
|
||||
COPY ./ci_commit_pins/jax.txt /ci_commit_pins/jax.txt
|
||||
RUN if [ -n "${PALLAS}" ]; then bash ./install_jax.sh ${CUDA_VERSION}; fi
|
||||
RUN rm -f install_jax.sh common_utils.sh /ci_commit_pins/jax.txt
|
||||
|
||||
ARG ONNX
|
||||
# Install ONNX dependencies
|
||||
COPY ./common/install_onnx.sh ./common/common_utils.sh ./
|
||||
|
||||
@ -8,11 +8,9 @@ from abc import ABC, abstractmethod
|
||||
|
||||
|
||||
try:
|
||||
from collections.abc import Callable # Python 3.11+
|
||||
from typing import Any, Required, TypedDict
|
||||
from typing import Any, Callable, Required, TypedDict # Python 3.11+
|
||||
except ImportError:
|
||||
from collections.abc import Callable
|
||||
from typing import Any, TypedDict
|
||||
from typing import Any, Callable, TypedDict
|
||||
|
||||
from typing_extensions import Required # Fallback for Python <3.11
|
||||
|
||||
|
||||
@ -30,6 +30,7 @@ into a tarball, with the following structure:
|
||||
More specifically, `build_magma.sh` copies over the relevant files from the `package_files` directory depending on the ROCm version.
|
||||
Outputted binaries should be in the `output` folder.
|
||||
|
||||
|
||||
## Pushing
|
||||
|
||||
Packages can be uploaded to an S3 bucket using:
|
||||
|
||||
@ -168,16 +168,14 @@ if [[ "$BUILD_ENVIRONMENT" == *xpu* ]]; then
|
||||
# shellcheck disable=SC1091
|
||||
source /opt/intel/oneapi/compiler/latest/env/vars.sh
|
||||
# shellcheck disable=SC1091
|
||||
source /opt/intel/oneapi/umf/latest/env/vars.sh
|
||||
# shellcheck disable=SC1091
|
||||
source /opt/intel/oneapi/ccl/latest/env/vars.sh
|
||||
# shellcheck disable=SC1091
|
||||
source /opt/intel/oneapi/mpi/latest/env/vars.sh
|
||||
# shellcheck disable=SC1091
|
||||
source /opt/intel/oneapi/pti/latest/env/vars.sh
|
||||
# Enable XCCL build
|
||||
export USE_XCCL=1
|
||||
export USE_MPI=0
|
||||
# XPU kineto feature dependencies are not fully ready, disable kineto build as temp WA
|
||||
export USE_KINETO=0
|
||||
export TORCH_XPU_ARCH_LIST=pvc
|
||||
fi
|
||||
|
||||
|
||||
@ -89,41 +89,23 @@ if [ "$is_main_doc" = true ]; then
|
||||
|
||||
make coverage
|
||||
# Now we have the coverage report, we need to make sure it is empty.
|
||||
# Sphinx 7.2.6+ format: python.txt contains a statistics table with a TOTAL row
|
||||
# showing the undocumented count in the third column.
|
||||
# Example: | TOTAL | 99.83% | 2 |
|
||||
# Count the number of lines in the file and turn that number into a variable
|
||||
# $lines. The `cut -f1 ...` is to only parse the number, not the filename
|
||||
# Skip the report header by subtracting 2: the header will be output even if
|
||||
# there are no undocumented items.
|
||||
#
|
||||
# Also: see docs/source/conf.py for "coverage_ignore*" items, which should
|
||||
# be documented then removed from there.
|
||||
|
||||
# Extract undocumented count from TOTAL row in Sphinx 7.2.6 statistics table
|
||||
# The table format is: | Module | Coverage | Undocumented |
|
||||
# Extract the third column (undocumented count) from the TOTAL row
|
||||
undocumented=$(grep "| TOTAL" build/coverage/python.txt | awk -F'|' '{print $4}' | tr -d ' ')
|
||||
|
||||
if [ -z "$undocumented" ] || ! [[ "$undocumented" =~ ^[0-9]+$ ]]; then
|
||||
lines=$(wc -l build/coverage/python.txt 2>/dev/null |cut -f1 -d' ')
|
||||
undocumented=$((lines - 2))
|
||||
if [ $undocumented -lt 0 ]; then
|
||||
echo coverage output not found
|
||||
exit 1
|
||||
elif [ "$undocumented" -gt 0 ]; then
|
||||
set +x # Disable command echoing for cleaner output
|
||||
echo ""
|
||||
echo "====================="
|
||||
echo "UNDOCUMENTED OBJECTS:"
|
||||
echo "====================="
|
||||
echo ""
|
||||
# Find the line number of the TOTAL row and print only what comes after it
|
||||
total_line=$(grep -n "| TOTAL" build/coverage/python.txt | cut -d: -f1)
|
||||
if [ -n "$total_line" ]; then
|
||||
# Print only the detailed list (skip the statistics table)
|
||||
tail -n +$((total_line + 2)) build/coverage/python.txt
|
||||
else
|
||||
# Fallback to showing entire file if TOTAL line not found
|
||||
cat build/coverage/python.txt
|
||||
fi
|
||||
echo ""
|
||||
elif [ $undocumented -gt 0 ]; then
|
||||
echo undocumented objects found:
|
||||
cat build/coverage/python.txt
|
||||
echo "Make sure you've updated relevant .rsts in docs/source!"
|
||||
echo "You can reproduce locally by running 'cd docs && make coverage && tail -n +\$((grep -n \"| TOTAL\" build/coverage/python.txt | cut -d: -f1) + 2)) build/coverage/python.txt'"
|
||||
set -x # Re-enable command echoing
|
||||
echo "You can reproduce locally by running 'cd docs && make coverage && cat build/coverage/python.txt'"
|
||||
exit 1
|
||||
fi
|
||||
else
|
||||
|
||||
@ -208,8 +208,6 @@ if [[ "$BUILD_ENVIRONMENT" == *xpu* ]]; then
|
||||
source /opt/intel/oneapi/ccl/latest/env/vars.sh
|
||||
# shellcheck disable=SC1091
|
||||
source /opt/intel/oneapi/mpi/latest/env/vars.sh
|
||||
# shellcheck disable=SC1091
|
||||
source /opt/intel/oneapi/pti/latest/env/vars.sh
|
||||
# Check XPU status before testing
|
||||
timeout 30 xpu-smi discovery || true
|
||||
fi
|
||||
@ -339,7 +337,7 @@ test_python() {
|
||||
|
||||
test_python_smoke() {
|
||||
# Smoke tests for H100/B200
|
||||
time python test/run_test.py --include test_matmul_cuda test_scaled_matmul_cuda inductor/test_fp8 inductor/test_max_autotune inductor/test_cutedsl_grouped_mm $PYTHON_TEST_EXTRA_OPTION --upload-artifacts-while-running
|
||||
time python test/run_test.py --include test_matmul_cuda test_scaled_matmul_cuda inductor/test_fp8 inductor/test_max_autotune $PYTHON_TEST_EXTRA_OPTION --upload-artifacts-while-running
|
||||
assert_git_not_dirty
|
||||
}
|
||||
|
||||
@ -826,11 +824,6 @@ test_inductor_halide() {
|
||||
assert_git_not_dirty
|
||||
}
|
||||
|
||||
test_inductor_pallas() {
|
||||
python test/run_test.py --include inductor/test_pallas.py --verbose
|
||||
assert_git_not_dirty
|
||||
}
|
||||
|
||||
test_inductor_triton_cpu() {
|
||||
python test/run_test.py --include inductor/test_triton_cpu_backend.py inductor/test_torchinductor_strided_blocks.py --verbose
|
||||
assert_git_not_dirty
|
||||
@ -1731,8 +1724,6 @@ elif [[ "${TEST_CONFIG}" == *inductor_distributed* ]]; then
|
||||
test_inductor_distributed
|
||||
elif [[ "${TEST_CONFIG}" == *inductor-halide* ]]; then
|
||||
test_inductor_halide
|
||||
elif [[ "${TEST_CONFIG}" == *inductor-pallas* ]]; then
|
||||
test_inductor_pallas
|
||||
elif [[ "${TEST_CONFIG}" == *inductor-triton-cpu* ]]; then
|
||||
test_inductor_triton_cpu
|
||||
elif [[ "${TEST_CONFIG}" == *inductor-micro-benchmark* ]]; then
|
||||
|
||||
@ -70,7 +70,7 @@ sccache --zero-stats
|
||||
sccache --show-stats
|
||||
|
||||
# Build the wheel
|
||||
python -m build --wheel --no-isolation
|
||||
python -m build --wheel --no-build-isolation
|
||||
if ($LASTEXITCODE -ne 0) { exit 1 }
|
||||
|
||||
# Install the wheel locally
|
||||
|
||||
2
.github/ci_commit_pins/vision.txt
vendored
2
.github/ci_commit_pins/vision.txt
vendored
@ -1 +1 @@
|
||||
ccb801b88af136454798b945175c4c87e636ac33
|
||||
cfbc5c2f1c798991715a6b06bb3ce46478c4487c
|
||||
|
||||
2
.github/ci_commit_pins/xla.txt
vendored
2
.github/ci_commit_pins/xla.txt
vendored
@ -1 +1 @@
|
||||
e4d25697f9dc5eedaf8f0a5bf085c62c5455a53a
|
||||
c8b09f5f77d6bf6fb7ed7a9aa83e5d8156b3a5e9
|
||||
|
||||
22
.github/labeler.yml
vendored
22
.github/labeler.yml
vendored
@ -138,8 +138,7 @@
|
||||
- test/test_matmul_cuda.py
|
||||
- test/test_scaled_matmul_cuda.py
|
||||
- test/inductor/test_fp8.py
|
||||
- aten/src/ATen/native/cuda/*Blas.cpp
|
||||
- aten/src/ATen/cuda/CUDA*Blas.*
|
||||
- aten/src/ATen/native/cuda/Blas.cpp
|
||||
- torch/**/*cublas*
|
||||
- torch/_inductor/kernel/mm.py
|
||||
- test/inductor/test_max_autotune.py
|
||||
@ -149,8 +148,7 @@
|
||||
- test/test_matmul_cuda.py
|
||||
- test/test_scaled_matmul_cuda.py
|
||||
- test/inductor/test_fp8.py
|
||||
- aten/src/ATen/native/cuda/*Blas.cpp
|
||||
- aten/src/ATen/cuda/CUDA*Blas.*
|
||||
- aten/src/ATen/native/cuda/Blas.cpp
|
||||
- torch/**/*cublas*
|
||||
- torch/_inductor/kernel/mm.py
|
||||
- test/inductor/test_max_autotune.py
|
||||
@ -160,21 +158,7 @@
|
||||
- test/test_matmul_cuda.py
|
||||
- test/test_scaled_matmul_cuda.py
|
||||
- test/inductor/test_fp8.py
|
||||
- aten/src/ATen/native/cuda/*Blas.cpp
|
||||
- aten/src/ATen/cuda/CUDA*Blas.*
|
||||
- aten/src/ATen/native/cuda/Blas.cpp
|
||||
- torch/_inductor/kernel/mm.py
|
||||
- test/inductor/test_max_autotune.py
|
||||
- third_party/fbgemm
|
||||
|
||||
"ciflow/mps":
|
||||
- aten/src/ATen/mps/**
|
||||
- aten/src/ATen/native/mps/**
|
||||
- torch/_inductor/codegen/mps.py
|
||||
- test/test_mps.py
|
||||
- test/inductor/test_mps_basic.py
|
||||
|
||||
"ciflow/h100-symm-mem":
|
||||
- torch/csrc/distributed/c10d/symm_mem/**
|
||||
- torch/distributed/_symmetric_memory/**
|
||||
- test/distributed/**/*mem*
|
||||
- test/distributed/**/*mem*/**
|
||||
|
||||
1
.github/nitpicks.yml
vendored
1
.github/nitpicks.yml
vendored
@ -10,4 +10,3 @@
|
||||
pathFilter:
|
||||
- 'torch/csrc/inductor/aoti_torch/c/*'
|
||||
- 'torch/csrc/inductor/aoti_torch/generated/*'
|
||||
- 'torch/csrc/stable/c/*'
|
||||
|
||||
6
.github/pytorch-probot.yml
vendored
6
.github/pytorch-probot.yml
vendored
@ -2,8 +2,8 @@ tracking_issue: 24422
|
||||
ciflow_tracking_issue: 64124
|
||||
ciflow_push_tags:
|
||||
- ciflow/b200
|
||||
- ciflow/b200-distributed
|
||||
- ciflow/b200-symm-mem
|
||||
- ciflow/b200-distributed
|
||||
- ciflow/binaries
|
||||
- ciflow/binaries_libtorch
|
||||
- ciflow/binaries_wheel
|
||||
@ -22,8 +22,6 @@ ciflow_push_tags:
|
||||
- ciflow/inductor-perf-test-nightly-xpu
|
||||
- ciflow/inductor-periodic
|
||||
- ciflow/inductor-rocm
|
||||
- ciflow/inductor-rocm-mi200
|
||||
- ciflow/inductor-rocm-mi300
|
||||
- ciflow/linux-aarch64
|
||||
- ciflow/mps
|
||||
- ciflow/nightly
|
||||
@ -35,13 +33,11 @@ ciflow_push_tags:
|
||||
- ciflow/quantization-periodic
|
||||
- ciflow/riscv64
|
||||
- ciflow/rocm
|
||||
- ciflow/rocm-mi200
|
||||
- ciflow/rocm-mi300
|
||||
- ciflow/rocm-mi355
|
||||
- ciflow/rocm-navi31
|
||||
- ciflow/s390
|
||||
- ciflow/slow
|
||||
- ciflow/slow-rocm-mi200
|
||||
- ciflow/torchbench
|
||||
- ciflow/triton_binaries
|
||||
- ciflow/trunk
|
||||
|
||||
3
.github/scripts/delete_old_branches.py
vendored
3
.github/scripts/delete_old_branches.py
vendored
@ -1,11 +1,10 @@
|
||||
# Delete old branches
|
||||
import os
|
||||
import re
|
||||
from collections.abc import Callable
|
||||
from datetime import datetime
|
||||
from functools import lru_cache
|
||||
from pathlib import Path
|
||||
from typing import Any
|
||||
from typing import Any, Callable
|
||||
|
||||
from github_utils import gh_fetch_json_dict, gh_graphql
|
||||
from gitutils import GitRepo
|
||||
|
||||
3
.github/scripts/filter_test_configs.py
vendored
3
.github/scripts/filter_test_configs.py
vendored
@ -8,11 +8,10 @@ import re
|
||||
import subprocess
|
||||
import sys
|
||||
import warnings
|
||||
from collections.abc import Callable
|
||||
from enum import Enum
|
||||
from functools import cache
|
||||
from logging import info
|
||||
from typing import Any, Optional
|
||||
from typing import Any, Callable, Optional
|
||||
from urllib.request import Request, urlopen
|
||||
|
||||
import yaml
|
||||
|
||||
3
.github/scripts/get_workflow_job_id.py
vendored
3
.github/scripts/get_workflow_job_id.py
vendored
@ -11,8 +11,7 @@ import sys
|
||||
import time
|
||||
import urllib
|
||||
import urllib.parse
|
||||
from collections.abc import Callable
|
||||
from typing import Any, Optional
|
||||
from typing import Any, Callable, Optional
|
||||
from urllib.request import Request, urlopen
|
||||
|
||||
|
||||
|
||||
3
.github/scripts/github_utils.py
vendored
3
.github/scripts/github_utils.py
vendored
@ -3,9 +3,8 @@
|
||||
import json
|
||||
import os
|
||||
import warnings
|
||||
from collections.abc import Callable
|
||||
from dataclasses import dataclass
|
||||
from typing import Any, cast, Optional, Union
|
||||
from typing import Any, Callable, cast, Optional, Union
|
||||
from urllib.error import HTTPError
|
||||
from urllib.parse import quote
|
||||
from urllib.request import Request, urlopen
|
||||
|
||||
4
.github/scripts/gitutils.py
vendored
4
.github/scripts/gitutils.py
vendored
@ -4,10 +4,10 @@ import os
|
||||
import re
|
||||
import tempfile
|
||||
from collections import defaultdict
|
||||
from collections.abc import Callable, Iterator
|
||||
from collections.abc import Iterator
|
||||
from datetime import datetime
|
||||
from functools import wraps
|
||||
from typing import Any, cast, Optional, TypeVar, Union
|
||||
from typing import Any, Callable, cast, Optional, TypeVar, Union
|
||||
|
||||
|
||||
T = TypeVar("T")
|
||||
|
||||
3
.github/scripts/lintrunner.sh
vendored
3
.github/scripts/lintrunner.sh
vendored
@ -34,9 +34,6 @@ python3 torch/utils/data/datapipes/gen_pyi.py
|
||||
# Also check generated pyi files
|
||||
find torch -name '*.pyi' -exec git add --force -- "{}" +
|
||||
|
||||
# Print current environment
|
||||
python3 -m pip freeze
|
||||
|
||||
RC=0
|
||||
# Run lintrunner on all files
|
||||
if ! lintrunner --force-color --tee-json=lint.json ${ADDITIONAL_LINTRUNNER_ARGS} 2> /dev/null; then
|
||||
|
||||
4
.github/scripts/trymerge.py
vendored
4
.github/scripts/trymerge.py
vendored
@ -17,12 +17,12 @@ import re
|
||||
import time
|
||||
import urllib.parse
|
||||
from collections import defaultdict
|
||||
from collections.abc import Callable, Iterable
|
||||
from collections.abc import Iterable
|
||||
from dataclasses import dataclass
|
||||
from functools import cache
|
||||
from pathlib import Path
|
||||
from re import Pattern
|
||||
from typing import Any, cast, NamedTuple, Optional
|
||||
from typing import Any, Callable, cast, NamedTuple, Optional
|
||||
from warnings import warn
|
||||
|
||||
import yaml
|
||||
|
||||
1
.github/workflows/b200-distributed.yml
vendored
1
.github/workflows/b200-distributed.yml
vendored
@ -37,6 +37,7 @@ jobs:
|
||||
needs: get-label-type
|
||||
with:
|
||||
runner_prefix: "${{ needs.get-label-type.outputs.label-type }}"
|
||||
runner: linux.12xlarge.memory
|
||||
build-environment: linux-jammy-cuda12.8-py3.10-gcc11-distributed-b200
|
||||
docker-image-name: ci-image:pytorch-linux-jammy-cuda12.8-cudnn9-py3-gcc11
|
||||
cuda-arch-list: '10.0'
|
||||
|
||||
1
.github/workflows/b200-symm-mem.yml
vendored
1
.github/workflows/b200-symm-mem.yml
vendored
@ -37,6 +37,7 @@ jobs:
|
||||
needs: get-label-type
|
||||
with:
|
||||
runner_prefix: "${{ needs.get-label-type.outputs.label-type }}"
|
||||
runner: linux.12xlarge.memory
|
||||
build-environment: linux-jammy-cuda12.8-py3.10-gcc11-sm100-symm
|
||||
docker-image-name: ci-image:pytorch-linux-jammy-cuda12.8-cudnn9-py3-gcc11
|
||||
cuda-arch-list: '10.0'
|
||||
|
||||
7
.github/workflows/docker-builds.yml
vendored
7
.github/workflows/docker-builds.yml
vendored
@ -56,8 +56,6 @@ jobs:
|
||||
pytorch-linux-jammy-cuda12.8-cudnn9-py3-gcc9,
|
||||
pytorch-linux-jammy-cuda12.4-cudnn9-py3-gcc11,
|
||||
pytorch-linux-jammy-py3.10-clang12,
|
||||
pytorch-linux-jammy-py3.11-clang12,
|
||||
pytorch-linux-jammy-py3.12-clang12,
|
||||
pytorch-linux-jammy-py3.13-clang12,
|
||||
pytorch-linux-jammy-py3.14-clang12,
|
||||
pytorch-linux-jammy-rocm-n-py3,
|
||||
@ -67,10 +65,9 @@ jobs:
|
||||
pytorch-linux-jammy-py3.10-gcc11,
|
||||
pytorch-linux-jammy-py3-gcc11-inductor-benchmarks,
|
||||
pytorch-linux-jammy-py3.12-halide,
|
||||
pytorch-linux-jammy-cuda12.8-py3.12-pallas,
|
||||
pytorch-linux-jammy-xpu-n-1-py3,
|
||||
pytorch-linux-noble-xpu-n-py3,
|
||||
pytorch-linux-noble-xpu-n-py3-inductor-benchmarks,
|
||||
pytorch-linux-jammy-xpu-n-py3,
|
||||
pytorch-linux-jammy-xpu-n-py3-inductor-benchmarks,
|
||||
pytorch-linux-jammy-py3-clang18-asan,
|
||||
pytorch-linux-jammy-py3-clang12-onnx,
|
||||
pytorch-linux-jammy-linter,
|
||||
|
||||
1
.github/workflows/h100-distributed.yml
vendored
1
.github/workflows/h100-distributed.yml
vendored
@ -37,6 +37,7 @@ jobs:
|
||||
needs: get-label-type
|
||||
with:
|
||||
runner_prefix: "${{ needs.get-label-type.outputs.label-type }}"
|
||||
runner: "linux.c7i.12xlarge"
|
||||
build-environment: linux-jammy-cuda12.8-py3.10-gcc11-sm90-dist
|
||||
docker-image-name: ci-image:pytorch-linux-jammy-cuda12.8-cudnn9-py3-gcc11
|
||||
cuda-arch-list: '9.0'
|
||||
|
||||
@ -83,8 +83,8 @@ jobs:
|
||||
needs: get-label-type
|
||||
with:
|
||||
runner_prefix: "${{ needs.get-label-type.outputs.label-type }}"
|
||||
build-environment: linux-noble-xpu-n-py3.10
|
||||
docker-image-name: ci-image:pytorch-linux-noble-xpu-n-py3-inductor-benchmarks
|
||||
build-environment: linux-jammy-xpu-n-py3.10
|
||||
docker-image-name: ci-image:pytorch-linux-jammy-xpu-n-py3-inductor-benchmarks
|
||||
runner: linux.c7i.12xlarge
|
||||
test-matrix: |
|
||||
{ include: [
|
||||
@ -117,7 +117,7 @@ jobs:
|
||||
uses: ./.github/workflows/_xpu-test.yml
|
||||
needs: xpu-n-py3_10-inductor-benchmark-build
|
||||
with:
|
||||
build-environment: linux-noble-xpu-n-py3.10
|
||||
build-environment: linux-jammy-xpu-n-py3.10
|
||||
dashboard-tag: training-true-inference-true-default-true-dynamic-true-cudagraphs-false-cppwrapper-true-aotinductor-true-freezing_cudagraphs-false-cudagraphs_low_precision-false
|
||||
docker-image: ${{ needs.xpu-n-py3_10-inductor-benchmark-build.outputs.docker-image }}
|
||||
test-matrix: ${{ needs.xpu-n-py3_10-inductor-benchmark-build.outputs.test-matrix }}
|
||||
@ -137,7 +137,7 @@ jobs:
|
||||
uses: ./.github/workflows/_xpu-test.yml
|
||||
needs: xpu-n-py3_10-inductor-benchmark-build
|
||||
with:
|
||||
build-environment: linux-noble-xpu-n-py3.10
|
||||
build-environment: linux-jammy-xpu-n-py3.10
|
||||
dashboard-tag: training-${{ inputs.training }}-inference-${{ inputs.inference }}-default-${{ inputs.default }}-dynamic-${{ inputs.dynamic }}-cudagraphs-${{ inputs.cudagraphs }}-cppwrapper-${{ inputs.cppwrapper }}-aotinductor-${{ inputs.aotinductor }}-maxautotune-${{ inputs.maxautotune }}-freezing_cudagraphs-${{ inputs.freezing_cudagraphs }}-cudagraphs_low_precision-${{ inputs.cudagraphs }}
|
||||
docker-image: ${{ needs.xpu-n-py3_10-inductor-benchmark-build.outputs.docker-image }}
|
||||
test-matrix: ${{ needs.xpu-n-py3_10-inductor-benchmark-build.outputs.test-matrix }}
|
||||
|
||||
1
.github/workflows/inductor-rocm-mi300.yml
vendored
1
.github/workflows/inductor-rocm-mi300.yml
vendored
@ -7,7 +7,6 @@ on:
|
||||
- release/*
|
||||
tags:
|
||||
- ciflow/inductor-rocm/*
|
||||
- ciflow/inductor-rocm-mi300/*
|
||||
workflow_dispatch:
|
||||
|
||||
concurrency:
|
||||
|
||||
@ -1,13 +1,13 @@
|
||||
name: inductor-rocm-mi200
|
||||
name: inductor-rocm
|
||||
|
||||
on:
|
||||
schedule:
|
||||
- cron: 0 */3 * * *
|
||||
- cron: 0 * * * *
|
||||
push:
|
||||
branches:
|
||||
- release/*
|
||||
tags:
|
||||
- ciflow/inductor-rocm-mi200/*
|
||||
- ciflow/inductor-rocm/*
|
||||
workflow_dispatch:
|
||||
|
||||
concurrency:
|
||||
26
.github/workflows/inductor-unittest.yml
vendored
26
.github/workflows/inductor-unittest.yml
vendored
@ -81,32 +81,6 @@ jobs:
|
||||
test-matrix: ${{ needs.inductor-halide-build.outputs.test-matrix }}
|
||||
secrets: inherit
|
||||
|
||||
inductor-pallas-build:
|
||||
name: inductor-pallas-build
|
||||
uses: ./.github/workflows/_linux-build.yml
|
||||
needs: get-label-type
|
||||
with:
|
||||
build-environment: linux-jammy-cuda12.8-py3.12-gcc11
|
||||
docker-image-name: ci-image:pytorch-linux-jammy-cuda12.8-py3.12-pallas
|
||||
cuda-arch-list: '8.9'
|
||||
runner: linux.8xlarge.memory
|
||||
runner_prefix: "${{ needs.get-label-type.outputs.label-type }}"
|
||||
test-matrix: |
|
||||
{ include: [
|
||||
{ config: "inductor-pallas", shard: 1, num_shards: 1, runner: "${{ needs.get-label-type.outputs.label-type }}linux.g5.12xlarge.nvidia.gpu" },
|
||||
]}
|
||||
secrets: inherit
|
||||
|
||||
inductor-pallas-test:
|
||||
name: inductor-pallas-test
|
||||
uses: ./.github/workflows/_linux-test.yml
|
||||
needs: inductor-pallas-build
|
||||
with:
|
||||
build-environment: linux-jammy-py3.12-gcc11
|
||||
docker-image: ${{ needs.inductor-pallas-build.outputs.docker-image }}
|
||||
test-matrix: ${{ needs.inductor-pallas-build.outputs.test-matrix }}
|
||||
secrets: inherit
|
||||
|
||||
inductor-triton-cpu-build:
|
||||
name: inductor-triton-cpu-build
|
||||
uses: ./.github/workflows/_linux-build.yml
|
||||
|
||||
8
.github/workflows/nightly.yml
vendored
8
.github/workflows/nightly.yml
vendored
@ -5,11 +5,9 @@ on:
|
||||
- cron: 0 0 * * *
|
||||
push:
|
||||
tags:
|
||||
# NOTE: Doc build pipelines should only get triggered on:
|
||||
# Major or minor release candidates builds
|
||||
- v[0-9]+.[0-9]+.0+-rc[0-9]+
|
||||
# Final RC for major, minor and patch releases
|
||||
- v[0-9]+.[0-9]+.[0-9]+
|
||||
# NOTE: Doc build pipelines should only get triggered on release candidate builds
|
||||
# Release candidate tags look like: v1.11.0-rc1
|
||||
- v[0-9]+.[0-9]+.[0-9]+-rc[0-9]+
|
||||
- ciflow/nightly/*
|
||||
workflow_dispatch:
|
||||
|
||||
|
||||
1
.github/workflows/periodic-rocm-mi200.yml
vendored
1
.github/workflows/periodic-rocm-mi200.yml
vendored
@ -11,6 +11,7 @@ on:
|
||||
- cron: 29 8 * * * # about 1:29am PDT, for mem leak check and rerun disabled tests
|
||||
push:
|
||||
tags:
|
||||
- ciflow/periodic/*
|
||||
- ciflow/periodic-rocm-mi200/*
|
||||
branches:
|
||||
- release/*
|
||||
|
||||
1
.github/workflows/periodic-rocm-mi300.yml
vendored
1
.github/workflows/periodic-rocm-mi300.yml
vendored
@ -11,7 +11,6 @@ on:
|
||||
- cron: 29 8 * * * # about 1:29am PDT, for mem leak check and rerun disabled tests
|
||||
push:
|
||||
tags:
|
||||
- ciflow/periodic/*
|
||||
- ciflow/periodic-rocm-mi300/*
|
||||
branches:
|
||||
- release/*
|
||||
|
||||
8
.github/workflows/pull.yml
vendored
8
.github/workflows/pull.yml
vendored
@ -342,16 +342,16 @@ jobs:
|
||||
test-matrix: ${{ needs.linux-jammy-cuda12_8-py3_10-gcc9-inductor-build.outputs.test-matrix }}
|
||||
secrets: inherit
|
||||
|
||||
linux-noble-xpu-n-py3_10-build:
|
||||
name: linux-noble-xpu-n-py3.10
|
||||
linux-jammy-xpu-n-py3_10-build:
|
||||
name: linux-jammy-xpu-n-py3.10
|
||||
uses: ./.github/workflows/_linux-build.yml
|
||||
needs: get-label-type
|
||||
with:
|
||||
# This should sync with the build in xpu.yml but xpu uses a larger runner
|
||||
# sync-tag: linux-xpu-n-build
|
||||
runner_prefix: ${{ needs.get-label-type.outputs.label-type }}
|
||||
build-environment: linux-noble-xpu-n-py3.10
|
||||
docker-image-name: ci-image:pytorch-linux-noble-xpu-n-py3
|
||||
build-environment: linux-jammy-xpu-n-py3.10
|
||||
docker-image-name: ci-image:pytorch-linux-jammy-xpu-n-py3
|
||||
test-matrix: |
|
||||
{ include: [
|
||||
{ config: "default", shard: 1, num_shards: 4, runner: "linux.idc.xpu" },
|
||||
|
||||
1
.github/workflows/rocm-mi300.yml
vendored
1
.github/workflows/rocm-mi300.yml
vendored
@ -6,7 +6,6 @@ on:
|
||||
- main
|
||||
- release/*
|
||||
tags:
|
||||
- ciflow/rocm/*
|
||||
- ciflow/rocm-mi300/*
|
||||
workflow_dispatch:
|
||||
schedule:
|
||||
|
||||
@ -1,16 +1,15 @@
|
||||
name: rocm-mi200
|
||||
name: rocm
|
||||
|
||||
on:
|
||||
push:
|
||||
branches:
|
||||
- release/*
|
||||
tags:
|
||||
- ciflow/rocm-mi200/*
|
||||
- ciflow/rocm/*
|
||||
workflow_dispatch:
|
||||
schedule:
|
||||
- cron: 29 8 * * * # about 1:29am PDT
|
||||
- cron: 0 */3 * * *
|
||||
|
||||
- cron: 0 * * * *
|
||||
|
||||
concurrency:
|
||||
group: ${{ github.workflow }}-${{ github.event.pull_request.number || github.ref_name }}-${{ github.ref_type == 'branch' && github.sha }}-${{ github.event_name == 'workflow_dispatch' }}-${{ github.event_name == 'schedule' }}
|
||||
81
.github/workflows/slow-rocm-mi200.yml
vendored
81
.github/workflows/slow-rocm-mi200.yml
vendored
@ -1,81 +0,0 @@
|
||||
# This workflow is dedicated to host slow jobs that are run only periodically because
|
||||
# they are too slow to run in every commit. The list of slow tests can be found in
|
||||
# https://github.com/pytorch/test-infra/blob/generated-stats/stats/slow-tests.json
|
||||
name: slow-rocm-mi200
|
||||
|
||||
on:
|
||||
push:
|
||||
branches:
|
||||
- release/*
|
||||
tags:
|
||||
- ciflow/slow/*
|
||||
- ciflow/slow-rocm-mi200/*
|
||||
schedule:
|
||||
- cron: 0 */3 * * *
|
||||
workflow_dispatch:
|
||||
|
||||
concurrency:
|
||||
group: ${{ github.workflow }}-${{ github.event.pull_request.number || github.ref_name }}-${{ github.ref_type == 'branch' && github.sha }}-${{ github.event_name == 'workflow_dispatch' }}-${{ github.event_name == 'schedule' }}-${{ github.event.schedule }}
|
||||
cancel-in-progress: true
|
||||
|
||||
permissions:
|
||||
id-token: write
|
||||
contents: read
|
||||
|
||||
jobs:
|
||||
llm-td:
|
||||
if: github.repository_owner == 'pytorch'
|
||||
name: before-test
|
||||
uses: ./.github/workflows/llm_td_retrieval.yml
|
||||
permissions:
|
||||
id-token: write
|
||||
contents: read
|
||||
|
||||
target-determination:
|
||||
name: before-test
|
||||
uses: ./.github/workflows/target_determination.yml
|
||||
needs: llm-td
|
||||
permissions:
|
||||
id-token: write
|
||||
contents: read
|
||||
|
||||
get-label-type:
|
||||
name: get-label-type
|
||||
uses: pytorch/pytorch/.github/workflows/_runner-determinator.yml@main
|
||||
if: ${{ (github.event_name != 'schedule' || github.repository == 'pytorch/pytorch') && github.repository_owner == 'pytorch' }}
|
||||
with:
|
||||
triggering_actor: ${{ github.triggering_actor }}
|
||||
issue_owner: ${{ github.event.pull_request.user.login || github.event.issue.user.login }}
|
||||
curr_branch: ${{ github.head_ref || github.ref_name }}
|
||||
curr_ref_type: ${{ github.ref_type }}
|
||||
|
||||
linux-jammy-rocm-py3_10-build:
|
||||
name: linux-jammy-rocm-py3.10
|
||||
uses: ./.github/workflows/_linux-build.yml
|
||||
needs: get-label-type
|
||||
with:
|
||||
runner_prefix: "${{ needs.get-label-type.outputs.label-type }}"
|
||||
build-environment: linux-jammy-rocm-py3.10
|
||||
docker-image-name: ci-image:pytorch-linux-jammy-rocm-n-py3
|
||||
sync-tag: rocm-build
|
||||
test-matrix: |
|
||||
{ include: [
|
||||
{ config: "slow", shard: 1, num_shards: 2, runner: "linux.rocm.gpu.2", owners: ["module:rocm"] },
|
||||
{ config: "slow", shard: 2, num_shards: 2, runner: "linux.rocm.gpu.2", owners: ["module:rocm"] },
|
||||
]}
|
||||
secrets: inherit
|
||||
|
||||
linux-jammy-rocm-py3_10-test:
|
||||
permissions:
|
||||
id-token: write
|
||||
contents: read
|
||||
name: linux-jammy-rocm-py3.10
|
||||
uses: ./.github/workflows/_rocm-test.yml
|
||||
needs:
|
||||
- linux-jammy-rocm-py3_10-build
|
||||
- target-determination
|
||||
with:
|
||||
build-environment: linux-jammy-rocm-py3.10
|
||||
docker-image: ${{ needs.linux-jammy-rocm-py3_10-build.outputs.docker-image }}
|
||||
test-matrix: ${{ needs.linux-jammy-rocm-py3_10-build.outputs.test-matrix }}
|
||||
secrets: inherit
|
||||
30
.github/workflows/slow.yml
vendored
30
.github/workflows/slow.yml
vendored
@ -105,6 +105,36 @@ jobs:
|
||||
test-matrix: ${{ needs.linux-jammy-py3_10-clang12-build.outputs.test-matrix }}
|
||||
secrets: inherit
|
||||
|
||||
linux-jammy-rocm-py3_10-build:
|
||||
name: linux-jammy-rocm-py3.10
|
||||
uses: ./.github/workflows/_linux-build.yml
|
||||
needs: get-label-type
|
||||
with:
|
||||
runner_prefix: "${{ needs.get-label-type.outputs.label-type }}"
|
||||
build-environment: linux-jammy-rocm-py3.10
|
||||
docker-image-name: ci-image:pytorch-linux-jammy-rocm-n-py3
|
||||
test-matrix: |
|
||||
{ include: [
|
||||
{ config: "slow", shard: 1, num_shards: 2, runner: "linux.rocm.gpu.2", owners: ["module:rocm"] },
|
||||
{ config: "slow", shard: 2, num_shards: 2, runner: "linux.rocm.gpu.2", owners: ["module:rocm"] },
|
||||
]}
|
||||
secrets: inherit
|
||||
|
||||
linux-jammy-rocm-py3_10-test:
|
||||
permissions:
|
||||
id-token: write
|
||||
contents: read
|
||||
name: linux-jammy-rocm-py3.10
|
||||
uses: ./.github/workflows/_rocm-test.yml
|
||||
needs:
|
||||
- linux-jammy-rocm-py3_10-build
|
||||
- target-determination
|
||||
with:
|
||||
build-environment: linux-jammy-rocm-py3.10
|
||||
docker-image: ${{ needs.linux-jammy-rocm-py3_10-build.outputs.docker-image }}
|
||||
test-matrix: ${{ needs.linux-jammy-rocm-py3_10-build.outputs.test-matrix }}
|
||||
secrets: inherit
|
||||
|
||||
linux-jammy-py3_10-clang18-asan-build:
|
||||
name: linux-jammy-py3.10-clang18-asan
|
||||
uses: ./.github/workflows/_linux-build.yml
|
||||
|
||||
3
.github/workflows/test-b200.yml
vendored
3
.github/workflows/test-b200.yml
vendored
@ -52,6 +52,7 @@ jobs:
|
||||
needs: get-label-type
|
||||
with:
|
||||
runner_prefix: "${{ needs.get-label-type.outputs.label-type }}"
|
||||
runner: linux.12xlarge.memory
|
||||
build-environment: linux-jammy-cuda12.8-py3.10-gcc11-sm100
|
||||
docker-image-name: ci-image:pytorch-linux-jammy-cuda12.8-cudnn9-py3-gcc11
|
||||
cuda-arch-list: '10.0'
|
||||
@ -72,4 +73,4 @@ jobs:
|
||||
docker-image: ${{ needs.linux-jammy-cuda12_8-py3_10-gcc11-sm100-build.outputs.docker-image }}
|
||||
test-matrix: ${{ needs.linux-jammy-cuda12_8-py3_10-gcc11-sm100-build.outputs.test-matrix }}
|
||||
aws-role-to-assume: arn:aws:iam::308535385114:role/gha_workflow_s3_and_ecr_read_only
|
||||
secrets: inherit
|
||||
secrets: inherit
|
||||
1
.github/workflows/test-h100.yml
vendored
1
.github/workflows/test-h100.yml
vendored
@ -41,6 +41,7 @@ jobs:
|
||||
needs: get-label-type
|
||||
with:
|
||||
runner_prefix: "${{ needs.get-label-type.outputs.label-type }}"
|
||||
runner: linux.12xlarge.memory
|
||||
build-environment: linux-jammy-cuda12.8-py3.10-gcc11-sm90
|
||||
docker-image-name: ci-image:pytorch-linux-jammy-cuda12.8-cudnn9-py3-gcc11
|
||||
cuda-arch-list: '9.0'
|
||||
|
||||
5
.github/workflows/upload-test-stats.yml
vendored
5
.github/workflows/upload-test-stats.yml
vendored
@ -11,16 +11,15 @@ on:
|
||||
- inductor
|
||||
- unstable
|
||||
- slow
|
||||
- slow-rocm-mi200
|
||||
- unstable-periodic
|
||||
- inductor-periodic
|
||||
- rocm-mi200
|
||||
- rocm
|
||||
- rocm-mi300
|
||||
- rocm-mi355
|
||||
- inductor-micro-benchmark
|
||||
- inductor-micro-benchmark-x86
|
||||
- inductor-cu124
|
||||
- inductor-rocm-mi200
|
||||
- inductor-rocm
|
||||
- inductor-rocm-mi300
|
||||
- mac-mps
|
||||
- linux-aarch64
|
||||
|
||||
20
.github/workflows/xpu.yml
vendored
20
.github/workflows/xpu.yml
vendored
@ -47,15 +47,15 @@ jobs:
|
||||
]}
|
||||
secrets: inherit
|
||||
|
||||
linux-noble-xpu-n-py3_10-build:
|
||||
name: linux-noble-xpu-n-py3.10
|
||||
linux-jammy-xpu-n-py3_10-build:
|
||||
name: linux-jammy-xpu-n-py3.10
|
||||
uses: ./.github/workflows/_linux-build.yml
|
||||
needs: get-label-type
|
||||
with:
|
||||
sync-tag: linux-xpu-n-build
|
||||
runner_prefix: ${{ needs.get-label-type.outputs.label-type }}
|
||||
build-environment: linux-noble-xpu-n-py3.10
|
||||
docker-image-name: ci-image:pytorch-linux-noble-xpu-n-py3
|
||||
build-environment: linux-jammy-xpu-n-py3.10
|
||||
docker-image-name: ci-image:pytorch-linux-jammy-xpu-n-py3
|
||||
runner: linux.c7i.12xlarge
|
||||
test-matrix: |
|
||||
{ include: [
|
||||
@ -74,17 +74,17 @@ jobs:
|
||||
]}
|
||||
secrets: inherit
|
||||
|
||||
linux-noble-xpu-n-py3_10-test:
|
||||
name: linux-noble-xpu-n-py3.10
|
||||
linux-jammy-xpu-n-py3_10-test:
|
||||
name: linux-jammy-xpu-n-py3.10
|
||||
uses: ./.github/workflows/_xpu-test.yml
|
||||
needs: linux-noble-xpu-n-py3_10-build
|
||||
needs: linux-jammy-xpu-n-py3_10-build
|
||||
permissions:
|
||||
id-token: write
|
||||
contents: read
|
||||
with:
|
||||
build-environment: linux-noble-xpu-n-py3.10
|
||||
docker-image: ${{ needs.linux-noble-xpu-n-py3_10-build.outputs.docker-image }}
|
||||
test-matrix: ${{ needs.linux-noble-xpu-n-py3_10-build.outputs.test-matrix }}
|
||||
build-environment: linux-jammy-xpu-n-py3.10
|
||||
docker-image: ${{ needs.linux-jammy-xpu-n-py3_10-build.outputs.docker-image }}
|
||||
test-matrix: ${{ needs.linux-jammy-xpu-n-py3_10-build.outputs.test-matrix }}
|
||||
secrets: inherit
|
||||
|
||||
windows-xpu-n-1-build:
|
||||
|
||||
1
.gitignore
vendored
1
.gitignore
vendored
@ -127,7 +127,6 @@ torch/test/
|
||||
torch/utils/benchmark/utils/valgrind_wrapper/callgrind.h
|
||||
torch/utils/benchmark/utils/valgrind_wrapper/valgrind.h
|
||||
torch/version.py
|
||||
torch/_inductor/kernel/vendored_templates/*
|
||||
minifier_launcher.py
|
||||
aten/src/ATen/native/transformers/hip/flash_attn/ck/fmha_fwd_d*
|
||||
aten/src/ATen/native/transformers/hip/flash_attn/ck/fmha_bwd_d*
|
||||
|
||||
@ -143,8 +143,7 @@ init_command = [
|
||||
'tools/linter/adapters/pip_init.py',
|
||||
'--dry-run={{DRYRUN}}',
|
||||
'numpy==1.26.4 ; python_version >= "3.10" and python_version <= "3.11"',
|
||||
'numpy==2.1.0 ; python_version >= "3.12" and python_version <= "3.13"',
|
||||
'numpy==2.3.4 ; python_version >= "3.14"',
|
||||
'numpy==2.1.0 ; python_version >= "3.12"',
|
||||
'expecttest==0.3.0',
|
||||
'pyrefly==0.36.2',
|
||||
'sympy==1.13.3',
|
||||
@ -186,8 +185,6 @@ include_patterns = [
|
||||
'aten/src/ATen/native/nested/cuda/*.h',
|
||||
'aten/src/ATen/native/nested/*.cpp',
|
||||
'aten/src/ATen/native/nested/*.h',
|
||||
'aten/src/ATen/xpu/**/*.h',
|
||||
'aten/src/ATen/xpu/**/*.cpp',
|
||||
'c10/**/*.cpp',
|
||||
'c10/**/*.h',
|
||||
'torch/*.h',
|
||||
@ -1404,7 +1401,7 @@ init_command = [
|
||||
'--dry-run={{DRYRUN}}',
|
||||
'usort==1.0.8.post1',
|
||||
'isort==6.0.1',
|
||||
'ruff==0.14.4', # sync with RUFF
|
||||
'ruff==0.13.1', # sync with RUFF
|
||||
]
|
||||
is_formatter = true
|
||||
|
||||
@ -1539,7 +1536,7 @@ init_command = [
|
||||
'python3',
|
||||
'tools/linter/adapters/pip_init.py',
|
||||
'--dry-run={{DRYRUN}}',
|
||||
'ruff==0.14.4', # sync with PYFMT
|
||||
'ruff==0.13.1', # sync with PYFMT
|
||||
]
|
||||
is_formatter = true
|
||||
|
||||
|
||||
@ -736,44 +736,6 @@ if(NOT DEFINED USE_BLAS)
|
||||
set(USE_BLAS ON)
|
||||
endif()
|
||||
|
||||
# Prioritized Text Linker Optimization
|
||||
if(USE_PRIORITIZED_TEXT_FOR_LD)
|
||||
|
||||
set(LINKER_SCRIPT_FILE_IN "${CMAKE_SOURCE_DIR}/cmake/prioritized_text.txt")
|
||||
set(LINKER_SCRIPT_FILE_OUT "${CMAKE_SOURCE_DIR}/cmake/linker_script.ld")
|
||||
|
||||
execute_process(
|
||||
COMMAND ${Python_EXECUTABLE}
|
||||
${CMAKE_SOURCE_DIR}/tools/setup_helpers/generate_linker_script.py
|
||||
--filein "${LINKER_SCRIPT_FILE_IN}"
|
||||
--fout "${LINKER_SCRIPT_FILE_OUT}"
|
||||
RESULT_VARIABLE _gen_result
|
||||
OUTPUT_VARIABLE _gen_output
|
||||
ERROR_VARIABLE _gen_error
|
||||
)
|
||||
|
||||
if(NOT _gen_result EQUAL 0)
|
||||
message(FATAL_ERROR
|
||||
"Failed to generate linker script:\n${_gen_output}\n${_gen_error}")
|
||||
endif()
|
||||
|
||||
append_cxx_flag_if_supported("-ffunction-sections" CMAKE_CXX_FLAGS)
|
||||
append_cxx_flag_if_supported("-fdata-sections" CMAKE_CXX_FLAGS)
|
||||
append_c_flag_if_supported("-ffunction-sections" CMAKE_C_FLAGS)
|
||||
append_c_flag_if_supported("-fdata-sections" CMAKE_C_FLAGS)
|
||||
|
||||
set(CMAKE_SHARED_LINKER_FLAGS "${CMAKE_SHARED_LINKER_FLAGS} -T${LINKER_SCRIPT_FILE_OUT}")
|
||||
set(CMAKE_MODULE_LINKER_FLAGS "${CMAKE_MODULE_LINKER_FLAGS} -T${LINKER_SCRIPT_FILE_OUT}")
|
||||
|
||||
else()
|
||||
if(LINUX AND CPU_AARCH64)
|
||||
message(WARNING [[
|
||||
It is strongly recommend to enable linker script optimization for all AArch64 Linux builds.
|
||||
To do so please export USE_PRIORITIZED_TEXT_FOR_LD=1
|
||||
]])
|
||||
endif()
|
||||
endif()
|
||||
|
||||
# Build libtorch mobile library, which contains ATen/TH ops and native support
|
||||
# for TorchScript model, but doesn't contain not-yet-unified caffe2 ops;
|
||||
if(INTERN_BUILD_MOBILE)
|
||||
@ -1440,6 +1402,9 @@ if(BUILD_JNI)
|
||||
add_subdirectory(android/pytorch_android)
|
||||
endif()
|
||||
|
||||
include(cmake/Summary.cmake)
|
||||
caffe2_print_configuration_summary()
|
||||
|
||||
# Parse custom debug info
|
||||
if(DEFINED USE_CUSTOM_DEBINFO)
|
||||
string(REPLACE ";" " " SOURCE_FILES "${USE_CUSTOM_DEBINFO}")
|
||||
@ -1479,5 +1444,56 @@ if(BUILD_BUNDLE_PTXAS AND USE_CUDA)
|
||||
DESTINATION "${CMAKE_INSTALL_BINDIR}")
|
||||
endif()
|
||||
|
||||
include(cmake/Summary.cmake)
|
||||
caffe2_print_configuration_summary()
|
||||
if(USE_PRIORITIZED_TEXT_FOR_LD)
|
||||
add_compile_options(
|
||||
$<$<COMPILE_LANGUAGE:C,CXX>:-ffunction-sections>
|
||||
$<$<COMPILE_LANGUAGE:C,CXX>:-fdata-sections>
|
||||
)
|
||||
set(LINKER_SCRIPT_FILE_OUT "${CMAKE_SOURCE_DIR}/cmake/linker_script.ld")
|
||||
set(LINKER_SCRIPT_FILE_IN "${CMAKE_SOURCE_DIR}/cmake/prioritized_text.txt")
|
||||
|
||||
add_custom_command(
|
||||
OUTPUT "${LINKER_SCRIPT_FILE_OUT}"
|
||||
COMMAND ${Python_EXECUTABLE} ${CMAKE_SOURCE_DIR}/tools/setup_helpers/generate_linker_script.py --filein "${LINKER_SCRIPT_FILE_IN}" --fout "${LINKER_SCRIPT_FILE_OUT}"
|
||||
DEPENDS ${CMAKE_SOURCE_DIR}/tools/setup_helpers/generate_linker_script.py "${LINKER_SCRIPT_FILE_IN}"
|
||||
COMMENT "Generating prioritized text linker files"
|
||||
VERBATIM
|
||||
)
|
||||
|
||||
add_custom_target(generate_linker_script DEPENDS "${LINKER_SCRIPT_FILE_OUT}")
|
||||
|
||||
if(BUILD_PYTHON)
|
||||
set(LINKER_OPT_TARGETS torch_python)
|
||||
endif()
|
||||
|
||||
if(NOT BUILD_LIBTORCHLESS)
|
||||
list(APPEND LINKER_OPT_TARGETS torch_cpu c10)
|
||||
if(USE_CUDA)
|
||||
list(APPEND LINKER_OPT_TARGETS torch_cuda c10_cuda)
|
||||
endif()
|
||||
if(USE_XPU)
|
||||
list(APPEND LINKER_OPT_TARGETS torch_xpu c10_xpu)
|
||||
endif()
|
||||
if(USE_ROCM)
|
||||
list(APPEND LINKER_OPT_TARGETS torch_hip c10_hip)
|
||||
endif()
|
||||
endif()
|
||||
|
||||
foreach(tgt IN LISTS LINKER_OPT_TARGETS)
|
||||
if(TARGET ${tgt})
|
||||
add_dependencies("${tgt}" generate_linker_script)
|
||||
target_link_options_if_supported(${tgt} "-T,${LINKER_SCRIPT_FILE_OUT}")
|
||||
set_property(TARGET ${tgt} APPEND PROPERTY LINK_DEPENDS "${LINKER_SCRIPT_FILE_OUT}")
|
||||
else()
|
||||
message(WARNING "Requested target '${tgt}' for linker script optimization was not found.")
|
||||
endif()
|
||||
endforeach()
|
||||
|
||||
else()
|
||||
if(LINUX AND CPU_AARCH64)
|
||||
message(WARNING [[
|
||||
It is strongly recommend to enable linker script optimization for all AArch64 Linux builds.
|
||||
To do so please export USE_PRIORITIZED_TEXT_FOR_LD=1
|
||||
]])
|
||||
endif()
|
||||
endif()
|
||||
|
||||
@ -210,12 +210,8 @@ torch/backends/cudnn/ @eqy @syed-ahmed @Aidyn-A
|
||||
/test/inductor/test_flex_attention.py @drisspg
|
||||
/test/inductor/test_flex_decoding.py @drisspg
|
||||
|
||||
# Low Precision & Grouped GEMMs
|
||||
# Low Precision GEMMs
|
||||
/aten/src/ATen/native/cuda/Blas.cpp @drisspg @slayton58
|
||||
/aten/src/ATen/native/cuda/GroupedBlas.cpp @drisspg @slayton58
|
||||
/aten/src/ATen/native/cuda/ScaledBlas.cpp @drisspg @slayton58
|
||||
/aten/src/ATen/cuda/CUDABlas.cpp @drisspg @slayton58
|
||||
/aten/src/ATen/cuda/CUDABlas.h @drisspg @slayton58
|
||||
/aten/src/ATen/cuda/CUDAScaledBlas.cpp @drisspg @slayton58
|
||||
/aten/src/ATen/cuda/CUDAScaledBlas.h @drisspg @slayton58
|
||||
/test/test_scaled_matmul_cuda.py @drisspg @slayton58
|
||||
|
||||
2
LICENSE
2
LICENSE
@ -37,7 +37,7 @@ Copyright (c) 2024 Tri Dao.
|
||||
All rights reserved.
|
||||
|
||||
All contributions by Arm:
|
||||
Copyright (c) 2021, 2023-2025 Arm Limited and/or its affiliates
|
||||
Copyright (c) 2021, 2023-2024 Arm Limited and/or its affiliates
|
||||
|
||||
All contributions from Caffe:
|
||||
Copyright(c) 2013, 2014, 2015, the respective contributors
|
||||
|
||||
@ -18,8 +18,6 @@ Please report security issues using https://github.com/pytorch/pytorch/security/
|
||||
|
||||
All reports submitted through the security advisories mechanism would **either be made public or dismissed by the team within 90 days of the submission**. If advisory has been closed on the grounds that it is not a security issue, please do not hesitate to create an [new issue](https://github.com/pytorch/pytorch/issues/new?template=bug-report.yml) as it is still likely a valid issue within the framework.
|
||||
|
||||
**Note on crashes and out of bounds access**: PyTorch is a computational framework that performs operations on behalf of the caller. Like many low-level libraries, PyTorch generally does not validate all inputs to every function—the responsibility for providing valid arguments lies with the calling code. While crashes and out of bounds memory access should be reported as bugs, they are generally not considered security vulnerabilities in PyTorch's threat model.
|
||||
|
||||
Please refer to the following page for our responsible disclosure policy, reward guidelines, and those things that should not be reported:
|
||||
|
||||
https://www.facebook.com/whitehat
|
||||
|
||||
@ -174,12 +174,6 @@ class TORCH_API Context {
|
||||
static long versionCuDNN() {
|
||||
return detail::getCUDAHooks().versionCuDNN();
|
||||
}
|
||||
static long versionRuntimeCuDNN() {
|
||||
return detail::getCUDAHooks().versionRuntimeCuDNN();
|
||||
}
|
||||
static long versionCuDNNFrontend() {
|
||||
return detail::getCUDAHooks().versionCuDNNFrontend();
|
||||
}
|
||||
static bool hasCuSOLVER() {
|
||||
return detail::getCUDAHooks().hasCuSOLVER();
|
||||
}
|
||||
|
||||
@ -94,11 +94,6 @@ TORCH_API inline void resetPeakStats(c10::DeviceIndex device_index) {
|
||||
at::getDeviceAllocator(device_type)->resetPeakStats(device_index);
|
||||
}
|
||||
|
||||
TORCH_API inline std::pair<size_t, size_t> getMemoryInfo(
|
||||
c10::DeviceIndex device_index) {
|
||||
const auto device_type = getAccelerator(true).value();
|
||||
return at::getDeviceAllocator(device_type)->getMemoryInfo(device_index);
|
||||
}
|
||||
} // namespace at::accelerator
|
||||
|
||||
namespace at {
|
||||
|
||||
@ -6,7 +6,6 @@
|
||||
#include <c10/util/Half.h>
|
||||
#include <c10/util/Metaprogramming.h>
|
||||
#include <c10/util/complex.h>
|
||||
#include <torch/headeronly/core/Dispatch.h>
|
||||
|
||||
#ifdef __CUDACC__
|
||||
#include <cuda.h> // For CUDA_VERSION
|
||||
@ -62,9 +61,12 @@ TORCH_API void record_kernel_function_dtype(std::string name);
|
||||
} \
|
||||
} while (0)
|
||||
|
||||
#define AT_PRIVATE_CASE_TYPE_USING_HINT(enum_type, HINT, ...) \
|
||||
THO_PRIVATE_CASE_TYPE_USING_HINT_TMPL( \
|
||||
AT_PRIVATE_CHECK_SELECTIVE_BUILD, enum_type, HINT, __VA_ARGS__)
|
||||
#define AT_PRIVATE_CASE_TYPE_USING_HINT(enum_type, HINT, ...) \
|
||||
case enum_type: { \
|
||||
AT_PRIVATE_CHECK_SELECTIVE_BUILD(enum_type); \
|
||||
using HINT [[maybe_unused]] = c10::impl::ScalarTypeToCPPTypeT<enum_type>; \
|
||||
return __VA_ARGS__(); \
|
||||
}
|
||||
|
||||
#define AT_DISPATCH_CASE(enum_type, ...) \
|
||||
AT_PRIVATE_CASE_TYPE_USING_HINT(enum_type, scalar_t, __VA_ARGS__)
|
||||
@ -93,6 +95,14 @@ TORCH_API void record_kernel_function_dtype(std::string name);
|
||||
return __VA_ARGS__(); \
|
||||
}
|
||||
|
||||
namespace detail {
|
||||
|
||||
inline at::ScalarType scalar_type(at::ScalarType s) {
|
||||
return s;
|
||||
}
|
||||
|
||||
} // namespace detail
|
||||
|
||||
// The AT_DISPATCH_* family of macros provides the ability to
|
||||
// conveniently generate specializations of a kernel over all of the
|
||||
// dtypes we care about in PyTorch. We call it "dispatch" because
|
||||
@ -180,13 +190,27 @@ TORCH_API void record_kernel_function_dtype(std::string name);
|
||||
// but we're just being safe (and it doesn't hurt.) Note we must
|
||||
// use it to shut up warnings about unused store.
|
||||
|
||||
#define AT_DISPATCH_SWITCH(TYPE, NAME, ...) \
|
||||
THO_DISPATCH_SWITCH_TMPL( \
|
||||
RECORD_KERNEL_FUNCTION_DTYPE, \
|
||||
TORCH_CHECK_NOT_IMPLEMENTED, \
|
||||
TYPE, \
|
||||
NAME, \
|
||||
__VA_ARGS__)
|
||||
#define AT_DISPATCH_SWITCH(TYPE, NAME, ...) \
|
||||
[&] { \
|
||||
const auto& the_type = TYPE; \
|
||||
constexpr const char* at_dispatch_name = NAME; \
|
||||
/* don't use TYPE again in case it is an expensive or side-effect op */ \
|
||||
at::ScalarType _st = ::detail::scalar_type(the_type); \
|
||||
RECORD_KERNEL_FUNCTION_DTYPE(at_dispatch_name, _st); \
|
||||
C10_DIAGNOSTIC_PUSH_AND_IGNORED_IF_DEFINED("-Wswitch-enum") \
|
||||
switch (_st) { \
|
||||
__VA_ARGS__ \
|
||||
default: \
|
||||
TORCH_CHECK_NOT_IMPLEMENTED( \
|
||||
false, \
|
||||
'"', \
|
||||
at_dispatch_name, \
|
||||
"\" not implemented for '", \
|
||||
toString(_st), \
|
||||
"'"); \
|
||||
} \
|
||||
C10_DIAGNOSTIC_POP() \
|
||||
}()
|
||||
|
||||
#define AT_DISPATCH_CASE_FLOATING_TYPES(...) \
|
||||
AT_DISPATCH_CASE(at::ScalarType::Double, __VA_ARGS__) \
|
||||
|
||||
@ -1,8 +1,3 @@
|
||||
#pragma once
|
||||
|
||||
#include <torch/headeronly/core/Dispatch_v2.h>
|
||||
|
||||
// Get AT_DISPATCH_SWITCH and AT_DISPATCH_CASE:
|
||||
#include <ATen/Dispatch.h>
|
||||
|
||||
// This is a new implementation of the AT_DISPATCH macro family from
|
||||
@ -79,19 +74,41 @@
|
||||
// macro expansion occurs, mediated with AT_EXPAND and AT_GUARD. I mostly
|
||||
// relied on GPT4 to help me get it right.
|
||||
|
||||
// Public API macros
|
||||
|
||||
// See documentation above
|
||||
#define AT_DISPATCH_V2(TYPE, NAME, BODY, ...) \
|
||||
THO_DISPATCH_V2_TMPL( \
|
||||
AT_DISPATCH_SWITCH, \
|
||||
AT_DISPATCH_CASE, \
|
||||
TYPE, \
|
||||
NAME, \
|
||||
AT_WRAP(BODY), \
|
||||
__VA_ARGS__)
|
||||
AT_DISPATCH_SWITCH(TYPE, NAME, AT_AP_VAR(AT_WRAP(BODY), TYPE, __VA_ARGS__))
|
||||
|
||||
// This macro lets you pass an arbitrary expression that may contain internal
|
||||
// commas to another macro without having the commas causing the expression
|
||||
// to be interpreted as being multiple arguments
|
||||
#define AT_WRAP(...) __VA_ARGS__
|
||||
|
||||
#define AT_FLOAT8_TYPES \
|
||||
c10::kFloat8_e5m2, c10::kFloat8_e5m2fnuz, c10::kFloat8_e4m3fn, \
|
||||
c10::kFloat8_e4m3fnuz, c10::kFloat8_e8m0fnu
|
||||
|
||||
#define AT_INTEGRAL_TYPES \
|
||||
c10::kByte, c10::kChar, c10::kInt, c10::kLong, c10::kShort
|
||||
#define AT_FLOATING_TYPES c10::kDouble, c10::kFloat
|
||||
#define AT_BAREBONES_UNSIGNED_TYPES c10::kUInt16, c10::kUInt32, c10::kUInt64
|
||||
#define AT_INTEGRAL_TYPES_V2 \
|
||||
AT_EXPAND(AT_INTEGRAL_TYPES), AT_EXPAND(AT_BAREBONES_UNSIGNED_TYPES)
|
||||
#define AT_COMPLEX_TYPES c10::kComplexDouble, c10::kComplexFloat
|
||||
#define AT_QINT_TYPES c10::kQInt8, c10::kQUInt8, c10::kQInt32
|
||||
// NB: not *actually* all types
|
||||
#define AT_ALL_TYPES AT_EXPAND(AT_INTEGRAL_TYPES), AT_EXPAND(AT_FLOATING_TYPES)
|
||||
#define AT_ALL_TYPES_AND_COMPLEX \
|
||||
AT_EXPAND(AT_ALL_TYPES), AT_EXPAND(AT_COMPLEX_TYPES)
|
||||
|
||||
// Helper macros
|
||||
|
||||
// Unused helper macros, kept for BC:
|
||||
#define AT_AP_VAR(N, T, ...) \
|
||||
AT_EXPAND(AT_CONCAT(AT_AP, AT_NUM_ARGS(__VA_ARGS__))(AT_WRAP(N), __VA_ARGS__))
|
||||
#define AT_CONCAT(a, b) AT_CONCAT_AUX(a, b)
|
||||
#define AT_CONCAT_AUX(a, b) a##b
|
||||
#define AT_EXPAND(X) X
|
||||
|
||||
// Ensure we never have too many scalar types for the expansion here to
|
||||
// support. To bump this, you must regenerate the macros below.
|
||||
@ -102,6 +119,12 @@ static_assert(static_cast<int>(c10::ScalarType::NumOptions) < 60);
|
||||
|
||||
num_args = 60
|
||||
|
||||
nums = ', '.join(str(i) for i in reversed(range(num_args+1)))
|
||||
args = ', '.join(f'_{i}' for i in range(1, num_args+1))
|
||||
|
||||
print(f'#define AT_NUM_ARGS(...) AT_EXPAND(AT_NUM_ARGS_AUX(__VA_ARGS__, {nums}))')
|
||||
print(f'#define AT_NUM_ARGS_AUX({args}, N, ...) N')
|
||||
|
||||
for i in range(1, num_args+1):
|
||||
args = ', '.join(f'_{i}' for i in range(1, i+1))
|
||||
cases = ' '.join([f'AT_DISPATCH_CASE(_{j}, N)' for j in range(1, i+1)])
|
||||
@ -112,6 +135,8 @@ for i in range(1, num_args+1):
|
||||
// Begin generated code
|
||||
// clang-format off
|
||||
|
||||
#define AT_NUM_ARGS(...) AT_EXPAND(AT_NUM_ARGS_AUX(__VA_ARGS__, 60, 59, 58, 57, 56, 55, 54, 53, 52, 51, 50, 49, 48, 47, 46, 45, 44, 43, 42, 41, 40, 39, 38, 37, 36, 35, 34, 33, 32, 31, 30, 29, 28, 27, 26, 25, 24, 23, 22, 21, 20, 19, 18, 17, 16, 15, 14, 13, 12, 11, 10, 9, 8, 7, 6, 5, 4, 3, 2, 1, 0))
|
||||
#define AT_NUM_ARGS_AUX(_1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35, _36, _37, _38, _39, _40, _41, _42, _43, _44, _45, _46, _47, _48, _49, _50, _51, _52, _53, _54, _55, _56, _57, _58, _59, _60, N, ...) N
|
||||
#define AT_AP1(N, _1) AT_DISPATCH_CASE(_1, N)
|
||||
#define AT_AP2(N, _1, _2) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N)
|
||||
#define AT_AP3(N, _1, _2, _3) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N)
|
||||
|
||||
@ -226,8 +226,8 @@ template <
|
||||
typename B = HostBlock<S>>
|
||||
struct CachingHostAllocatorImpl {
|
||||
virtual ~CachingHostAllocatorImpl() {
|
||||
if (active_) {
|
||||
active_ = false;
|
||||
active_ = false;
|
||||
if (pinned_use_background_threads()) {
|
||||
getBackgroundThreadPool()->waitWorkComplete();
|
||||
}
|
||||
}
|
||||
@ -260,7 +260,6 @@ struct CachingHostAllocatorImpl {
|
||||
if (pinned_use_background_threads()) {
|
||||
// Launch the background thread and process events in a loop.
|
||||
static bool background_thread_flag [[maybe_unused]] = [this] {
|
||||
active_ = true;
|
||||
getBackgroundThreadPool()->run([&]() {
|
||||
while (active_) {
|
||||
process_events();
|
||||
@ -684,9 +683,9 @@ struct CachingHostAllocatorImpl {
|
||||
alignas(hardware_destructive_interference_size) std::mutex events_mutex_;
|
||||
std::deque<std::pair<E, B*>> events_; // event queue paired with block
|
||||
|
||||
// Indicates whether the event-processing thread pool is active.
|
||||
// Indicates whether the object is active.
|
||||
// Set to false in the destructor to signal background threads to stop.
|
||||
std::atomic<bool> active_{false};
|
||||
std::atomic<bool> active_{true};
|
||||
protected:
|
||||
alignas(hardware_destructive_interference_size) HostStatsStaged stats_;
|
||||
};
|
||||
|
||||
@ -1597,7 +1597,7 @@ bool gemm_and_bias(
|
||||
}
|
||||
|
||||
using opmath_t = at::opmath_type<Dtype>;
|
||||
opmath_t beta_val = bias ? 0 : 1; // bias is added in epilogue unless nullptr
|
||||
opmath_t beta_val = 0; // bias is added in epilogue
|
||||
|
||||
cudaDataType_t abType = CUDA_R_32F;
|
||||
cudaDataType_t cType = CUDA_R_32F;
|
||||
@ -1686,22 +1686,15 @@ bool gemm_and_bias(
|
||||
_syncCurrentWithCarveoutStream(stream, true);
|
||||
}
|
||||
#endif
|
||||
const auto epilogue = [&]() -> cublasLtEpilogue_t {
|
||||
// The cuBLAS documentation indicates that
|
||||
// *_<ACTIVATION>_BIAS = *_<ACTIVATION>,
|
||||
// but we keep it verbose here for clarity.
|
||||
switch (activation) {
|
||||
case GEMMAndBiasActivationEpilogue::RELU:
|
||||
return bias ? CUBLASLT_EPILOGUE_RELU_BIAS : CUBLASLT_EPILOGUE_RELU;
|
||||
case GEMMAndBiasActivationEpilogue::GELU:
|
||||
return bias ? CUBLASLT_EPILOGUE_GELU_BIAS : CUBLASLT_EPILOGUE_GELU;
|
||||
default:
|
||||
return bias ? CUBLASLT_EPILOGUE_BIAS : CUBLASLT_EPILOGUE_DEFAULT;
|
||||
}
|
||||
}();
|
||||
computeDesc.setAttribute(CUBLASLT_MATMUL_DESC_EPILOGUE, epilogue);
|
||||
cublasLtEpilogue_t epilogue = CUBLASLT_EPILOGUE_BIAS;
|
||||
if (activation == GEMMAndBiasActivationEpilogue::RELU) {
|
||||
epilogue = CUBLASLT_EPILOGUE_RELU_BIAS;
|
||||
} else if (activation == GEMMAndBiasActivationEpilogue::GELU) {
|
||||
epilogue = CUBLASLT_EPILOGUE_GELU_BIAS;
|
||||
}
|
||||
|
||||
if (bias) {
|
||||
if (bias != nullptr) {
|
||||
computeDesc.setAttribute(CUBLASLT_MATMUL_DESC_EPILOGUE, epilogue);
|
||||
computeDesc.setAttribute(CUBLASLT_MATMUL_DESC_BIAS_POINTER, bias);
|
||||
}
|
||||
|
||||
|
||||
@ -55,6 +55,14 @@ struct numeric_limits<int8_t> {
|
||||
static inline __host__ __device__ int8_t upper_bound() { return INT8_MAX; }
|
||||
};
|
||||
|
||||
template <>
|
||||
struct numeric_limits<uint16_t> {
|
||||
static inline __host__ __device__ uint16_t lowest() { return 0; }
|
||||
static inline __host__ __device__ uint16_t max() { return UINT16_MAX; }
|
||||
static inline __host__ __device__ uint16_t lower_bound() { return 0; }
|
||||
static inline __host__ __device__ uint16_t upper_bound() { return UINT16_MAX; }
|
||||
};
|
||||
|
||||
template <>
|
||||
struct numeric_limits<int16_t> {
|
||||
static inline __host__ __device__ int16_t lowest() { return INT16_MIN; }
|
||||
@ -63,6 +71,14 @@ struct numeric_limits<int16_t> {
|
||||
static inline __host__ __device__ int16_t upper_bound() { return INT16_MAX; }
|
||||
};
|
||||
|
||||
template <>
|
||||
struct numeric_limits<uint32_t> {
|
||||
static inline __host__ __device__ uint32_t lowest() { return 0; }
|
||||
static inline __host__ __device__ uint32_t max() { return UINT32_MAX; }
|
||||
static inline __host__ __device__ uint32_t lower_bound() { return 0; }
|
||||
static inline __host__ __device__ uint32_t upper_bound() { return UINT32_MAX; }
|
||||
};
|
||||
|
||||
template <>
|
||||
struct numeric_limits<int32_t> {
|
||||
static inline __host__ __device__ int32_t lowest() { return INT32_MIN; }
|
||||
@ -71,6 +87,21 @@ struct numeric_limits<int32_t> {
|
||||
static inline __host__ __device__ int32_t upper_bound() { return INT32_MAX; }
|
||||
};
|
||||
|
||||
template <>
|
||||
struct numeric_limits<uint64_t> {
|
||||
#ifdef _MSC_VER
|
||||
static inline __host__ __device__ uint64_t lowest() { return 0; }
|
||||
static inline __host__ __device__ uint64_t max() { return _UI64_MAX; }
|
||||
static inline __host__ __device__ uint64_t lower_bound() { return 0; }
|
||||
static inline __host__ __device__ uint64_t upper_bound() { return _UI64_MAX; }
|
||||
#else
|
||||
static inline __host__ __device__ uint64_t lowest() { return 0; }
|
||||
static inline __host__ __device__ uint64_t max() { return UINT64_MAX; }
|
||||
static inline __host__ __device__ uint64_t lower_bound() { return 0; }
|
||||
static inline __host__ __device__ uint64_t upper_bound() { return UINT64_MAX; }
|
||||
#endif
|
||||
};
|
||||
|
||||
template <>
|
||||
struct numeric_limits<int64_t> {
|
||||
#ifdef _MSC_VER
|
||||
|
||||
@ -21,7 +21,6 @@
|
||||
|
||||
#if AT_CUDNN_ENABLED()
|
||||
#include <ATen/cudnn/cudnn-wrapper.h>
|
||||
#include <cudnn_frontend.h>
|
||||
#endif
|
||||
|
||||
#if AT_MAGMA_ENABLED()
|
||||
@ -352,26 +351,6 @@ long CUDAHooks::versionCuDNN() const {
|
||||
#endif
|
||||
}
|
||||
|
||||
long CUDAHooks::versionRuntimeCuDNN() const {
|
||||
#if AT_CUDNN_ENABLED()
|
||||
#ifndef USE_STATIC_CUDNN
|
||||
return cudnnGetVersion();
|
||||
#else
|
||||
return CUDNN_VERSION;
|
||||
#endif
|
||||
#else
|
||||
TORCH_CHECK(false, "Cannot query CuDNN version if ATen_cuda is not built with CuDNN");
|
||||
#endif
|
||||
}
|
||||
|
||||
long CUDAHooks::versionCuDNNFrontend() const {
|
||||
#if AT_CUDNN_ENABLED()
|
||||
return CUDNN_FRONTEND_VERSION;
|
||||
#else
|
||||
TORCH_CHECK(false, "Cannot query CuDNN Frontend version if ATen_cuda is not built with CuDNN");
|
||||
#endif
|
||||
}
|
||||
|
||||
long CUDAHooks::versionMIOpen() const {
|
||||
#if AT_ROCM_ENABLED()
|
||||
return MIOPEN_VERSION_MAJOR * 10000 +
|
||||
|
||||
@ -49,8 +49,6 @@ struct CUDAHooks : public at::CUDAHooksInterface {
|
||||
bool hasCUDART() const override;
|
||||
long versionCUDART() const override;
|
||||
long versionCuDNN() const override;
|
||||
long versionRuntimeCuDNN() const override;
|
||||
long versionCuDNNFrontend() const override;
|
||||
long versionMIOpen() const override;
|
||||
std::string showConfig() const override;
|
||||
double batchnormMinEpsilonCuDNN() const override;
|
||||
|
||||
@ -174,14 +174,6 @@ struct TORCH_API CUDAHooksInterface : AcceleratorHooksInterface {
|
||||
TORCH_CHECK(false, "Cannot query cuDNN version without ATen_cuda library. ", CUDA_HELP);
|
||||
}
|
||||
|
||||
virtual long versionRuntimeCuDNN() const {
|
||||
TORCH_CHECK(false, "Cannot query cuDNN version without ATen_cuda library. ", CUDA_HELP);
|
||||
}
|
||||
|
||||
virtual long versionCuDNNFrontend() const {
|
||||
TORCH_CHECK(false, "Cannot query cuDNN Frontend version without ATen_cuda library. ", CUDA_HELP);
|
||||
}
|
||||
|
||||
virtual long versionMIOpen() const {
|
||||
TORCH_CHECK(false, "Cannot query MIOpen version without ATen_cuda library. ", CUDA_HELP);
|
||||
}
|
||||
|
||||
@ -157,8 +157,6 @@ constexpr DispatchKeySet kKeysToPropagateToWrapper({
|
||||
DispatchKey::Negative,
|
||||
DispatchKey::Conjugate,
|
||||
DispatchKey::XLA,
|
||||
DispatchKey::XPU,
|
||||
DispatchKey::HPU,
|
||||
DispatchKey::CUDA,
|
||||
DispatchKey::CPU,
|
||||
DispatchKey::PrivateUse1,
|
||||
|
||||
@ -440,7 +440,7 @@ bool MPSHeapAllocatorImpl::release_cached_buffers() {
|
||||
// we need to release the lock temporarily as synchronizing may cause deadlock with completion handlers.
|
||||
m_mutex.unlock();
|
||||
auto stream = getDefaultMPSStream();
|
||||
dispatch_sync_with_rethrow(stream->queue(), ^() {
|
||||
dispatch_sync(stream->queue(), ^() {
|
||||
stream->synchronize(SyncType::COMMIT_AND_WAIT);
|
||||
});
|
||||
m_mutex.lock();
|
||||
|
||||
@ -110,9 +110,6 @@ class TORCH_API MPSStream {
|
||||
return _stream;
|
||||
}
|
||||
|
||||
MTLBuffer_t getErrorBuffer();
|
||||
void checkLastError();
|
||||
|
||||
private:
|
||||
Stream _stream;
|
||||
MTLCommandQueue_t _commandQueue = nil;
|
||||
@ -124,8 +121,6 @@ class TORCH_API MPSStream {
|
||||
dispatch_queue_t _serialQueue = nullptr;
|
||||
// CommitAndContinue is enabled by default
|
||||
bool _enableCommitAndContinue = true;
|
||||
// Buffer that contains last raised error
|
||||
MTLBuffer_t _errorBuffer = nil;
|
||||
|
||||
// use synchronize() to access any of these commit functions outside MPSStream
|
||||
void commit();
|
||||
@ -160,7 +155,4 @@ class TORCH_API MPSStreamImpl {
|
||||
MPSStreamImpl();
|
||||
};
|
||||
|
||||
#ifdef __OBJC__
|
||||
void dispatch_sync_with_rethrow(dispatch_queue_t queue, void (^block)());
|
||||
#endif
|
||||
} // namespace at::mps
|
||||
|
||||
@ -3,13 +3,13 @@
|
||||
#include <ATen/mps/MPSAllocatorInterface.h>
|
||||
#include <ATen/mps/MPSProfiler.h>
|
||||
#include <ATen/mps/MPSStream.h>
|
||||
#include <c10/metal/error.h>
|
||||
|
||||
@interface MPSGraphExecutionDescriptor ()
|
||||
@property(readwrite, atomic) BOOL enableCommitAndContinue;
|
||||
@end
|
||||
|
||||
namespace at::mps {
|
||||
|
||||
//-----------------------------------------------------------------
|
||||
// MPSStream
|
||||
//-----------------------------------------------------------------
|
||||
@ -30,10 +30,6 @@ MPSStream::MPSStream(Stream stream) : _stream(stream) {
|
||||
// Choose level which optimizes for GPU
|
||||
_compilationDescriptor.optimizationLevel = MPSGraphOptimizationLevel0;
|
||||
_executionDescriptor.compilationDescriptor = _compilationDescriptor;
|
||||
|
||||
_errorBuffer = [MPSDevice::getInstance()->device() newBufferWithLength:sizeof(c10::metal::ErrorMessages)
|
||||
options:MTLResourceStorageModeShared];
|
||||
std::memset([_errorBuffer contents], 0, 1024);
|
||||
}
|
||||
|
||||
MPSStream::~MPSStream() {
|
||||
@ -42,8 +38,6 @@ MPSStream::~MPSStream() {
|
||||
[_executionDescriptor release];
|
||||
[_compilationDescriptor release];
|
||||
_executionDescriptor = nil;
|
||||
[_errorBuffer release];
|
||||
_errorBuffer = nil;
|
||||
_compilationDescriptor = nil;
|
||||
|
||||
assert(_commandBuffer == nil);
|
||||
@ -110,7 +104,6 @@ void MPSStream::commitAndWait() {
|
||||
[_prevCommandBuffer waitUntilCompleted];
|
||||
[_prevCommandBuffer release];
|
||||
_prevCommandBuffer = nil;
|
||||
checkLastError();
|
||||
}
|
||||
|
||||
if (_commandBuffer) {
|
||||
@ -118,7 +111,6 @@ void MPSStream::commitAndWait() {
|
||||
[_commandBuffer waitUntilCompleted];
|
||||
[_commandBuffer release];
|
||||
_commandBuffer = nil;
|
||||
checkLastError();
|
||||
}
|
||||
}
|
||||
|
||||
@ -161,7 +153,7 @@ void MPSStream::fill(id<MTLBuffer> buffer, uint8_t value, size_t length, size_t
|
||||
if (length == 0) {
|
||||
return;
|
||||
}
|
||||
dispatch_sync_with_rethrow(_serialQueue, ^() {
|
||||
dispatch_sync(_serialQueue, ^() {
|
||||
@autoreleasepool {
|
||||
endKernelCoalescing();
|
||||
id<MTLBlitCommandEncoder> blitEncoder = [commandBuffer() blitCommandEncoder];
|
||||
@ -191,7 +183,7 @@ void MPSStream::copy(id<MTLBuffer> srcBuffer,
|
||||
size_t dstOffset,
|
||||
uint64_t profileId,
|
||||
SyncType syncType) {
|
||||
dispatch_sync_with_rethrow(_serialQueue, ^() {
|
||||
dispatch_sync(_serialQueue, ^() {
|
||||
@autoreleasepool {
|
||||
endKernelCoalescing();
|
||||
id<MTLBlitCommandEncoder> blitEncoder = [commandBuffer() blitCommandEncoder];
|
||||
@ -244,7 +236,7 @@ void MPSStream::executeMPSGraph(MPSGraph* mpsGraph, NSDictionary* feeds, NSDicti
|
||||
auto& profiler = getMPSProfiler();
|
||||
const bool isGraphProfilingEnabled = profiler.isOperationProfilingEnabled();
|
||||
|
||||
dispatch_sync_with_rethrow(_serialQueue, ^() {
|
||||
dispatch_sync(_serialQueue, ^() {
|
||||
endKernelCoalescing();
|
||||
if (isGraphProfilingEnabled) {
|
||||
// this function call is only relevant for interval-based Signposts
|
||||
@ -274,24 +266,6 @@ void MPSStream::executeMPSGraph(MPSGraph* mpsGraph, NSDictionary* feeds, NSDicti
|
||||
});
|
||||
}
|
||||
|
||||
id<MTLBuffer> MPSStream::getErrorBuffer() {
|
||||
return _errorBuffer;
|
||||
}
|
||||
|
||||
void MPSStream::checkLastError() {
|
||||
auto msgs = reinterpret_cast<c10::metal::ErrorMessages*>([_errorBuffer contents]);
|
||||
const auto& msg = msgs->msg[0];
|
||||
if (!msgs) {
|
||||
return;
|
||||
}
|
||||
unsigned int count = 0;
|
||||
std::swap(count, msgs->count);
|
||||
if (!count) {
|
||||
return;
|
||||
}
|
||||
throw c10::AcceleratorError({msg.func, msg.file, msg.line}, 1, msg.message);
|
||||
}
|
||||
|
||||
//-----------------------------------------------------------------
|
||||
// MPSStreamImpl
|
||||
//-----------------------------------------------------------------
|
||||
@ -315,19 +289,4 @@ MPSStream* getDefaultMPSStream() {
|
||||
return MPSStreamImpl::getInstance();
|
||||
}
|
||||
|
||||
// Helper methods
|
||||
void dispatch_sync_with_rethrow(dispatch_queue_t queue, void (^block)()) {
|
||||
__block std::optional<std::exception_ptr> block_exception;
|
||||
dispatch_sync(queue, ^() {
|
||||
try {
|
||||
block();
|
||||
} catch (...) {
|
||||
block_exception = std::current_exception();
|
||||
}
|
||||
});
|
||||
if (block_exception) {
|
||||
std::rethrow_exception(*block_exception);
|
||||
}
|
||||
}
|
||||
|
||||
} // namespace at::mps
|
||||
|
||||
@ -409,7 +409,7 @@ struct ConvParams {
|
||||
if (!detail::getCUDAHooks().compiledWithCuDNN() || !input.is_cuda() || !cudnn_enabled) {
|
||||
return false;
|
||||
}
|
||||
static long cudnn_version = detail::getCUDAHooks().versionRuntimeCuDNN();
|
||||
static long cudnn_version = detail::getCUDAHooks().versionCuDNN();
|
||||
// broken on cuDNN 9.8 - 9.14
|
||||
if (cudnn_version >= 90800 && cudnn_version < 91500) {
|
||||
if (cudnn_conv_suggest_memory_format(input, weight) == at::MemoryFormat::Contiguous &&
|
||||
@ -453,7 +453,7 @@ struct ConvParams {
|
||||
}
|
||||
// native kernel doesn't support 64-bit non-splittable case
|
||||
if (!(canUse32BitIndexMath(input) && canUse32BitIndexMath(weight))) {
|
||||
static long cudnn_version = detail::getCUDAHooks().compiledWithCuDNN() ? detail::getCUDAHooks().versionRuntimeCuDNN() : -1;
|
||||
static long cudnn_version = detail::getCUDAHooks().compiledWithCuDNN() ? detail::getCUDAHooks().versionCuDNN() : -1;
|
||||
// TODO(eqy): remove this once cuDNN fixes 64-bit depthwise support, first broken in 9.11x
|
||||
if (cudnn_conv_suggest_memory_format(input, weight) != at::MemoryFormat::Contiguous) {
|
||||
if (cudnn_version < 0 || cudnn_version > 91000) {
|
||||
|
||||
@ -50,35 +50,18 @@ static inline bool parseLinearFlatten3d() {
|
||||
// `_flatten_nd_linear` flattens all but the last dimension of the input tensor
|
||||
// before passing it to linear operation
|
||||
static inline Tensor _flatten_nd_linear(const Tensor& input, const Tensor& weight, const Tensor& bias) {
|
||||
const auto input_sizes = input.sym_sizes();
|
||||
|
||||
const auto result_flattened = [&]() -> Tensor {
|
||||
const auto input_ncols = input_sizes.back();
|
||||
const auto input_flattened_nrows = [&]() -> c10::SymInt {
|
||||
// can't use -1 in reshape because it errors when a dimension is 0
|
||||
auto flattened_nrows = c10::SymInt{1};
|
||||
for (const auto& size : input_sizes.slice(0, input_sizes.size() - 1)) {
|
||||
flattened_nrows *= size;
|
||||
}
|
||||
return flattened_nrows;
|
||||
}();
|
||||
|
||||
const auto input_flattened = input.view_symint({input_flattened_nrows, input_ncols});
|
||||
if (weight.layout() == c10::kStrided) {
|
||||
return at::addmm(bias, input_flattened, weight.t());
|
||||
} else {
|
||||
// weight is sparse, and addmm for sparse expects matmul lhs to be sparse,
|
||||
// so we transpose the problem.
|
||||
// NOTE: at::matmul handles (dense @ sparse) similarly.
|
||||
const auto bias_t = (bias.dim() >= 2) ? bias.mT() : bias.unsqueeze(-1);
|
||||
return at::addmm(bias_t, weight, input_flattened.t()).t();
|
||||
const auto input_sizes = input.sym_sizes();
|
||||
// can't use -1 in reshape because it errors when a dimension is 0
|
||||
c10::SymInt flattened_dim = 1;
|
||||
for (int64_t i = 0, ndim = input_sizes.size(); i < ndim - 1; ++i) {
|
||||
flattened_dim = flattened_dim * input_sizes[i];
|
||||
}
|
||||
}();
|
||||
|
||||
// Unflatten flattened row dims
|
||||
auto result_sizes = c10::SymDimVector{input_sizes.begin(), input_sizes.end()};
|
||||
result_sizes.back() = result_flattened.sym_size(1);
|
||||
return result_flattened.view_symint(result_sizes);
|
||||
auto inp_reshape = input.reshape_symint({flattened_dim, input_sizes.at(input_sizes.size() -1)});
|
||||
const auto result = at::addmm(bias, inp_reshape, weight.t());
|
||||
auto new_size = input_sizes.slice(0, input_sizes.size() - 1);
|
||||
c10::SymDimVector sizes_vec(new_size.begin(), new_size.end());
|
||||
sizes_vec.push_back(result.sym_size(1));
|
||||
return result.view_symint(sizes_vec);
|
||||
}
|
||||
|
||||
|
||||
@ -107,23 +90,15 @@ Tensor linear(const Tensor& input, const Tensor& weight, const std::optional<Ten
|
||||
// Fused op is marginally faster.
|
||||
return at::addmm(*bias, input, weight.t());
|
||||
}
|
||||
|
||||
const auto is_bias_likely_fusable = (
|
||||
bias->defined() &&
|
||||
// cuBLASLt: will fuse in the epilogue without copies
|
||||
// when input/weight/bias are all strided.
|
||||
// When weight is not strided, bias will not be fused,
|
||||
// but we can still dispatch here to avoid at::matmul
|
||||
// path which will probably use a very similar
|
||||
// flattening optimization.
|
||||
((bias->dim() == 1 || bias->squeeze().dim() == 1) && bias->is_contiguous_or_false())
|
||||
);
|
||||
if (is_bias_likely_fusable && !input.is_xla()) {
|
||||
// Also hit the fused path for contiguous nD input, if not using xla
|
||||
if (bias->defined() && !input.is_xla()) {
|
||||
// Also hit the fused path for contiguous 3D input, if not using xla
|
||||
// backend. Reshaping/flattening has some performance implications on xla.
|
||||
if (input.is_contiguous_or_false()) {
|
||||
bool is_contiguous = input.is_contiguous_or_false();
|
||||
if (is_contiguous && input_dim == 3) {
|
||||
return _flatten_nd_linear(input, weight, *bias);
|
||||
} else if (parseLinearFlatten3d()) {
|
||||
} else if (is_contiguous && input.layout() == c10::kStrided && weight.layout() == c10::kStrided && bias->dim() == 1) {
|
||||
return _flatten_nd_linear(input, weight, *bias);
|
||||
} else if (parseLinearFlatten3d() && input_dim == 3) {
|
||||
// If user forces flattening via env var
|
||||
const Tensor input_cont = input.contiguous();
|
||||
return _flatten_nd_linear(input_cont, weight, *bias);
|
||||
|
||||
@ -23,7 +23,6 @@
|
||||
#include <ATen/ops/_aminmax_native.h>
|
||||
#include <ATen/ops/_assert_async_native.h>
|
||||
#include <ATen/ops/_assert_scalar_native.h>
|
||||
#include <ATen/ops/_async_error_native.h>
|
||||
#include <ATen/ops/_functional_assert_async_native.h>
|
||||
#include <ATen/ops/_functional_assert_scalar_native.h>
|
||||
#include <ATen/ops/_make_per_tensor_quantized_tensor.h>
|
||||
@ -480,14 +479,6 @@ Tensor isfinite(const Tensor& self) {
|
||||
});
|
||||
}
|
||||
|
||||
void _async_error(std::string_view msg) {
|
||||
TORCH_CHECK(0, msg);
|
||||
}
|
||||
|
||||
void _async_error_meta(std::string_view msg) {
|
||||
// Do NOT error, it's an async error!
|
||||
}
|
||||
|
||||
void _assert_async_cpu(const Tensor& self) {
|
||||
TORCH_CHECK(
|
||||
native::is_nonzero(self),
|
||||
|
||||
@ -247,8 +247,8 @@ void binary_kernel_reduce(TensorIteratorBase& iter, ops_t ops, init_t init) {
|
||||
});
|
||||
}
|
||||
|
||||
template <typename func_t, typename vec_func_t>
|
||||
void binary_kernel_reduce_vec(TensorIteratorBase& iter, func_t op, vec_func_t vop, double ident = 0) {
|
||||
template <typename func_t, typename vec_func_t, typename ident_t = double>
|
||||
void binary_kernel_reduce_vec(TensorIteratorBase& iter, func_t op, vec_func_t vop, ident_t ident = static_cast<ident_t>(0)) {
|
||||
using traits = binary_function_traits<func_t>;
|
||||
static_assert(
|
||||
all_same<
|
||||
|
||||
@ -5,6 +5,7 @@
|
||||
#include <ATen/native/ReduceOpsUtils.h>
|
||||
|
||||
#include <ATen/Dispatch.h>
|
||||
#include <ATen/Dispatch_v2.h>
|
||||
#include <ATen/Parallel.h>
|
||||
#include <ATen/TensorIterator.h>
|
||||
#include <ATen/OpMathType.h>
|
||||
@ -78,12 +79,12 @@ void min_all_kernel_impl(Tensor& result, const Tensor& input) {
|
||||
reduce_all_impl<int64_t>(result, input, upper_bound<int64_t>(),
|
||||
[=](int64_t a, int64_t b) -> int64_t { return min_impl(a, b); });
|
||||
} else {
|
||||
AT_DISPATCH_ALL_TYPES_AND2(kHalf, kBFloat16, input.scalar_type(), "min_all", [&] {
|
||||
AT_DISPATCH_V2(input.scalar_type(), "min_all", AT_WRAP([&] {
|
||||
using Vec = Vectorized<opmath_type<scalar_t>>;
|
||||
reduce_all_impl_vec<scalar_t>(result, input, upper_bound<scalar_t>(),
|
||||
[=] (scalar_t a , scalar_t b) -> scalar_t { return min_impl(a, b); },
|
||||
[=](Vec a, Vec b) -> Vec { return minimum(a, b); });
|
||||
});
|
||||
}), AT_EXPAND(AT_ALL_TYPES), AT_EXPAND(AT_BAREBONES_UNSIGNED_TYPES), kHalf, kBFloat16);
|
||||
}
|
||||
}
|
||||
|
||||
@ -103,12 +104,12 @@ void max_all_kernel_impl(Tensor& result, const Tensor& input) {
|
||||
reduce_all_impl<int64_t>(result, input, lower_bound<int64_t>(),
|
||||
[=](int64_t a, int64_t b) -> int64_t { return max_impl(a, b); });
|
||||
} else {
|
||||
AT_DISPATCH_ALL_TYPES_AND2(kHalf, kBFloat16, input.scalar_type(), "max_all", [&] {
|
||||
AT_DISPATCH_V2(input.scalar_type(), "max_all", AT_WRAP([&] {
|
||||
using Vec = Vectorized<opmath_type<scalar_t>>;
|
||||
reduce_all_impl_vec<scalar_t>(result, input, lower_bound<scalar_t>(),
|
||||
[=] (scalar_t a , scalar_t b) -> scalar_t { return max_impl(a, b); },
|
||||
[=](Vec a, Vec b) -> Vec { return maximum(a, b); });
|
||||
});
|
||||
}), AT_EXPAND(AT_ALL_TYPES), AT_EXPAND(AT_BAREBONES_UNSIGNED_TYPES), kHalf, kBFloat16);
|
||||
}
|
||||
}
|
||||
|
||||
@ -199,7 +200,7 @@ void aminmax_allreduce_kernel(
|
||||
}
|
||||
);
|
||||
} else {
|
||||
AT_DISPATCH_ALL_TYPES_AND2(kBFloat16, kHalf, input.scalar_type(), "aminmax_cpu", [&] {
|
||||
AT_DISPATCH_V2(input.scalar_type(), "aminmax_cpu", AT_WRAP([&] {
|
||||
using Vec = Vectorized<opmath_type<scalar_t>>;
|
||||
using scalar_t_pair = std::pair<scalar_t, scalar_t>;
|
||||
reduce_all_impl_vec_two_outputs<scalar_t>(
|
||||
@ -214,7 +215,7 @@ void aminmax_allreduce_kernel(
|
||||
[=](Vec a, Vec b) -> Vec { return minimum(a, b); },
|
||||
[=](Vec a, Vec b) -> Vec { return maximum(a, b); }
|
||||
);
|
||||
});
|
||||
}), AT_EXPAND(AT_ALL_TYPES), AT_EXPAND(AT_BAREBONES_UNSIGNED_TYPES), kBFloat16, kHalf);
|
||||
}
|
||||
}
|
||||
|
||||
|
||||
@ -3,6 +3,7 @@
|
||||
|
||||
#include <ATen/core/Tensor.h>
|
||||
#include <ATen/Dispatch.h>
|
||||
#include <ATen/Dispatch_v2.h>
|
||||
#include <ATen/OpMathType.h>
|
||||
#include <ATen/cpu/vec/vec.h>
|
||||
#include <ATen/cpu/vec/functional.h>
|
||||
@ -338,43 +339,24 @@ void or_kernel_impl(TensorIterator& iter) {
|
||||
}
|
||||
}
|
||||
|
||||
template<typename scalar_t>
|
||||
struct MinValuesOps: public at::native::MinOps<scalar_t> {
|
||||
using arg_t = typename MinOps<scalar_t>::arg_t;
|
||||
static scalar_t project(arg_t arg) {
|
||||
return arg.first;
|
||||
}
|
||||
};
|
||||
|
||||
void min_values_kernel_impl(TensorIterator& iter) {
|
||||
if (iter.dtype() == kLong) {
|
||||
// This case is special because of Vectorized<int64_t> does not
|
||||
// handle upper_bound<int64_t>().
|
||||
// See: https://github.com/pytorch/pytorch/issues/43254
|
||||
using scalar_t = int64_t;
|
||||
binary_kernel_reduce(
|
||||
iter,
|
||||
MinValuesOps<scalar_t>{},
|
||||
std::pair<scalar_t, int64_t>(upper_bound<scalar_t>(), -1));
|
||||
return;
|
||||
}
|
||||
AT_DISPATCH_ALL_TYPES_AND3(kBFloat16, kHalf, kBool, iter.dtype(), "min_values_cpu", [&iter] {
|
||||
AT_DISPATCH_V2(iter.dtype(), "min_values_cpu", AT_WRAP([&iter] {
|
||||
binary_kernel_reduce_vec(
|
||||
iter,
|
||||
[](scalar_t a, scalar_t b) -> scalar_t { return min_impl(a, b); },
|
||||
[](Vectorized<scalar_t> a, Vectorized<scalar_t> b) { return minimum(a, b); },
|
||||
static_cast<double>(upper_bound<scalar_t>()));
|
||||
});
|
||||
upper_bound<scalar_t>());
|
||||
}), AT_EXPAND(AT_ALL_TYPES), AT_EXPAND(AT_BAREBONES_UNSIGNED_TYPES), kBFloat16, kHalf, kBool);
|
||||
}
|
||||
|
||||
void max_values_kernel_impl(TensorIterator& iter) {
|
||||
AT_DISPATCH_ALL_TYPES_AND3(kBFloat16, kHalf, kBool, iter.dtype(), "max_values_cpu", [&iter] {
|
||||
AT_DISPATCH_V2(iter.dtype(), "max_values_cpu", AT_WRAP([&iter] {
|
||||
binary_kernel_reduce_vec(
|
||||
iter,
|
||||
[](scalar_t a, scalar_t b) -> scalar_t { return max_impl(a, b); },
|
||||
[](Vectorized<scalar_t> a, Vectorized<scalar_t> b) { return maximum(a, b); },
|
||||
lower_bound<scalar_t>());
|
||||
});
|
||||
}), AT_EXPAND(AT_ALL_TYPES), AT_EXPAND(AT_BAREBONES_UNSIGNED_TYPES), kBFloat16, kHalf, kBool);
|
||||
}
|
||||
|
||||
void argmax_kernel_impl(TensorIterator &iter) {
|
||||
|
||||
@ -11,6 +11,7 @@
|
||||
#include <vector>
|
||||
|
||||
#include <ATen/Dispatch.h>
|
||||
#include <ATen/Dispatch_v2.h>
|
||||
#include <ATen/Parallel.h>
|
||||
#include <ATen/NumericUtils.h>
|
||||
#include <ATen/TensorIterator.h>
|
||||
@ -106,7 +107,7 @@ void min_kernel_impl(
|
||||
bool keepdim) {
|
||||
int64_t self_dim_size = ensure_nonempty_size(self, dim);
|
||||
|
||||
AT_DISPATCH_ALL_TYPES_AND3(ScalarType::Half, ScalarType::BFloat16, ScalarType::Bool, self.scalar_type(), "min_cpu", [&] {
|
||||
AT_DISPATCH_V2(self.scalar_type(), "min_cpu", AT_WRAP([&] {
|
||||
compare_base_kernel<scalar_t>(result, indice, self, dim, keepdim, [&] (
|
||||
scalar_t* result_data, int64_t* indice_data,
|
||||
const scalar_t* self_data, auto self_dim_stride) {
|
||||
@ -128,7 +129,7 @@ void min_kernel_impl(
|
||||
*indice_data = index;
|
||||
}
|
||||
);
|
||||
});
|
||||
}), AT_EXPAND(AT_ALL_TYPES), AT_EXPAND(AT_BAREBONES_UNSIGNED_TYPES), ScalarType::Half, ScalarType::BFloat16, ScalarType::Bool);
|
||||
}
|
||||
|
||||
void max_kernel_impl(
|
||||
@ -139,7 +140,7 @@ void max_kernel_impl(
|
||||
bool keepdim) {
|
||||
int64_t self_dim_size = ensure_nonempty_size(self, dim);
|
||||
|
||||
AT_DISPATCH_ALL_TYPES_AND3(ScalarType::Half, ScalarType::BFloat16, ScalarType::Bool, self.scalar_type(), "max_cpu", [&] {
|
||||
AT_DISPATCH_V2(self.scalar_type(), "max_cpu", AT_WRAP([&] {
|
||||
compare_base_kernel<scalar_t>(result, indice, self, dim, keepdim, [&] (
|
||||
scalar_t* result_data, int64_t* indice_data,
|
||||
const scalar_t* self_data, auto self_dim_stride) {
|
||||
@ -161,7 +162,7 @@ void max_kernel_impl(
|
||||
*indice_data = index;
|
||||
}
|
||||
);
|
||||
});
|
||||
}), AT_EXPAND(AT_ALL_TYPES), AT_EXPAND(AT_BAREBONES_UNSIGNED_TYPES), ScalarType::Half, ScalarType::BFloat16, ScalarType::Bool);
|
||||
}
|
||||
|
||||
void aminmax_kernel(
|
||||
@ -186,7 +187,7 @@ void aminmax_kernel(
|
||||
return;
|
||||
}
|
||||
|
||||
AT_DISPATCH_ALL_TYPES_AND3(ScalarType::Bool, ScalarType::BFloat16, ScalarType::Half, self.scalar_type(), "aminmax_cpu", [&] {
|
||||
AT_DISPATCH_V2(self.scalar_type(), "aminmax_cpu", AT_WRAP([&] {
|
||||
compare_base_kernel<scalar_t, scalar_t>(min_result, max_result, self, wrap_dim, keepdim, [&] (
|
||||
scalar_t* min_result_data, scalar_t* max_result_data,
|
||||
const scalar_t* self_data, auto self_dim_stride) {
|
||||
@ -209,7 +210,7 @@ void aminmax_kernel(
|
||||
*max_result_data = max_number;
|
||||
}
|
||||
);
|
||||
});
|
||||
}), AT_EXPAND(AT_ALL_TYPES), AT_EXPAND(AT_BAREBONES_UNSIGNED_TYPES), ScalarType::Bool, ScalarType::BFloat16, ScalarType::Half);
|
||||
}
|
||||
|
||||
void where_kernel_impl(TensorIterator &iter) {
|
||||
|
||||
@ -147,24 +147,14 @@ static bool isGloballyDisabledAddmmCudaLt(const at::Device& device) {
|
||||
/*
|
||||
* Check whether for the given input we want to enable the Lt interface
|
||||
*/
|
||||
static bool isInputCompliesAddmmCudaLt(
|
||||
Tensor& result,
|
||||
const Tensor& self,
|
||||
const Tensor& mat1,
|
||||
const Tensor& mat2,
|
||||
const Scalar& beta,
|
||||
const Scalar& alpha,
|
||||
Activation activation
|
||||
) {
|
||||
#ifdef USE_ROCM
|
||||
static bool isInputCompliesAddmmCudaLt(Tensor& result, const Tensor& self, const Tensor& mat1, const Tensor& mat2, const Scalar& beta, const Scalar& alpha) {
|
||||
// Implies 2D bias which we currently not send through Lt.
|
||||
// TODO: this check is done pre col-major input preparation,
|
||||
// so, this condition can be ralexed in cases when a col-major
|
||||
// copy of result is needed.
|
||||
if (self.is_same(result) || self.dim() == 2) {
|
||||
if (result.is_same(self)) {
|
||||
return false;
|
||||
}
|
||||
#endif
|
||||
|
||||
#if defined(USE_ROCM) && ROCM_VERSION == 60400
|
||||
// hipblaslt TT fp32 regression on ROCm 6.4, cannot use
|
||||
@ -179,33 +169,13 @@ static bool isInputCompliesAddmmCudaLt(
|
||||
#if defined(CUDA_VERSION) || defined(USE_ROCM)
|
||||
const auto scalar_type = mat1.scalar_type();
|
||||
return (beta.toComplexDouble() == 1.0
|
||||
// NOTE: row-major result is important when bias is 1D.
|
||||
// This is because Lt broadcasts 1D bias over the columns
|
||||
// while the aten::addmm API broadcasts it over the rows,
|
||||
// and this is in conjuction with the data preparation
|
||||
// procedure that does not transpose arguments with
|
||||
// col-major result. For col-major result we need
|
||||
// to explicitly transpose the problem so that bias is
|
||||
// correctly applied.
|
||||
// TODO: enable col-major result if needed.
|
||||
// TODO: no need to check result's layout when
|
||||
// !result.is_same(self) and self.dim() == 2, because
|
||||
// self needs to be copied into result and the bias ptr
|
||||
// will be ignored.
|
||||
&& result.dim() == 2 && result.is_contiguous()
|
||||
// Conditions for bias to be fusable
|
||||
&& (
|
||||
( // Conditions for bias to be fusable -- implies direct Lt path without copies.
|
||||
self.is_contiguous() &&
|
||||
// NOTE: fine to have 1-len dims to the left from the right-most one
|
||||
(self.dim() == 1 || self.squeeze().dim() == 1) &&
|
||||
self.sizes().back() == mat2_sizes[1]
|
||||
)
|
||||
|| ( // 2D bias restrictions. self.is_contiguous() is implicit when result.is_same(self),
|
||||
// and we need to copy self into result otherwise, so the self's layout becomes irrelevant.
|
||||
// See also TODO from above.
|
||||
activation != Activation::None && // Lt is faster when activation is fused
|
||||
(self.dim() == 2 && at::is_expandable_to(self.sizes(), {mat1_sizes[0], mat2_sizes[1]}))
|
||||
)
|
||||
self.is_contiguous() &&
|
||||
// NOTE: fine to have 1-len dims to the left from the right-most one
|
||||
(self.dim() == 1 || self.squeeze().dim() == 1) &&
|
||||
self.sizes().back() == mat2_sizes[1]
|
||||
)
|
||||
&& ( // some dtype restrictions
|
||||
#ifndef USE_ROCM
|
||||
@ -300,16 +270,7 @@ bool launchGemmAndBiasCublasLt(
|
||||
const Scalar& alpha,
|
||||
Activation activation = Activation::None
|
||||
) {
|
||||
// We apply bias in the epilogue only when it is 1D,
|
||||
// or when it can be squeezed to 1D.
|
||||
// self_ptr == nullptr implies ignore bias epilogue
|
||||
// and use standard gemm-like API.
|
||||
const auto* self_ptr = [&]() -> auto {
|
||||
if (self.dim() == 1 || self.squeeze().dim() == 1) {
|
||||
return self.const_data_ptr<scalar_t>();
|
||||
}
|
||||
return static_cast<const scalar_t*>(nullptr);
|
||||
}();
|
||||
const auto* self_ptr = self.const_data_ptr<scalar_t>();
|
||||
|
||||
const auto tuning_ctx = at::cuda::tunable::getTuningContext();
|
||||
if (tuning_ctx->IsTunableOpEnabled()) {
|
||||
@ -395,7 +356,7 @@ Tensor& addmm_out_cuda_impl(Tensor& result, const Tensor& self, const Tensor& ma
|
||||
disable_addmm_cuda_lt = isGloballyDisabledAddmmCudaLt(self.device()) || disable_addmm_cuda_lt;
|
||||
#endif
|
||||
// Condition on the input
|
||||
disable_addmm_cuda_lt = !isInputCompliesAddmmCudaLt(result, self, mat1, mat2, beta, alpha, activation) || disable_addmm_cuda_lt;
|
||||
disable_addmm_cuda_lt = !isInputCompliesAddmmCudaLt(result, self, mat1, mat2, beta, alpha) || disable_addmm_cuda_lt;
|
||||
// }
|
||||
|
||||
at::ScalarType scalar_type = mat1.scalar_type();
|
||||
@ -405,20 +366,19 @@ Tensor& addmm_out_cuda_impl(Tensor& result, const Tensor& self, const Tensor& ma
|
||||
if (!result.is_same(self)) {
|
||||
at::native::resize_output(result, {mat1.sizes()[0], mat2.sizes()[1]});
|
||||
|
||||
// We use bias ptr in the Lt path only when bias is 1D
|
||||
const auto use_bias_ptr_lt = (self.dim() == 1) && !disable_addmm_cuda_lt;
|
||||
const auto self_maybe_expanded = [&]() -> c10::MaybeOwned<Tensor> {
|
||||
if (!use_bias_ptr_lt) {
|
||||
// We do expand self even before
|
||||
if (disable_addmm_cuda_lt) {
|
||||
// When in non-Lt path we do expand self even before
|
||||
// check for beta != 0.0 to make sure that
|
||||
// test_sparse_csr.py::TestSparseCSRCUDA::test_addmm_errors_*
|
||||
// runs green.
|
||||
return expand_size(self, result.sizes(), "addmm");
|
||||
}
|
||||
// copy next, should broadcast
|
||||
return c10::MaybeOwned<Tensor>::borrowed(self);
|
||||
}();
|
||||
// We do not copy bias only when we need the bias ptr
|
||||
if (beta.toComplexDouble() != 0.0 && !use_bias_ptr_lt) {
|
||||
// We copy bias when in the non-Lt path
|
||||
if (beta.toComplexDouble() != 0.0 && disable_addmm_cuda_lt) {
|
||||
// NOTE: self should broadcast over result
|
||||
at::native::copy_(result, *self_maybe_expanded);
|
||||
}
|
||||
|
||||
@ -884,69 +884,6 @@ struct type_specialized_kernel_launcher {
|
||||
}
|
||||
};
|
||||
|
||||
template <int arg_index>
|
||||
struct type_specialized_broadcast_kernel_launcher {
|
||||
template <
|
||||
typename func_t,
|
||||
typename array_t,
|
||||
typename dtypes_t,
|
||||
typename calc_t>
|
||||
static void apply(
|
||||
int64_t numel,
|
||||
func_t f,
|
||||
array_t data,
|
||||
dtypes_t dtypes,
|
||||
calc_t offset_calc) {
|
||||
using traits = function_traits<func_t>;
|
||||
using ret_t = typename traits::result_type;
|
||||
using arg0_t = typename traits::template arg<0>::type;
|
||||
using arg1_t = typename traits::template arg<1>::type;
|
||||
if (dtypes[0] == rt_binary_specializations[arg_index][0] &&
|
||||
dtypes[1] == rt_binary_specializations[arg_index][1] &&
|
||||
dtypes[2] == rt_binary_specializations[arg_index][2]) {
|
||||
using ret_cpp_t = c10::impl::ScalarTypeToCPPTypeT<rt_binary_specializations[arg_index][0]>;
|
||||
using arg0_cpp_t = c10::impl::ScalarTypeToCPPTypeT<rt_binary_specializations[arg_index][1]>;
|
||||
using arg1_cpp_t = c10::impl::ScalarTypeToCPPTypeT<rt_binary_specializations[arg_index][2]>;
|
||||
constexpr int grp_sz = 128;
|
||||
launch_legacy_kernel_manual_unroll<grp_sz, 4>(numel, [=] GPU_LAMBDA(int idx, bool unrl) {
|
||||
if (unrl) {
|
||||
auto offsets0 = offset_calc.get(idx);
|
||||
auto offsets1 = offset_calc.get(idx + grp_sz);
|
||||
auto offsets2 = offset_calc.get(idx + grp_sz * 2);
|
||||
auto offsets3 = offset_calc.get(idx + grp_sz * 3);
|
||||
void* out0 = data[0] + offsets0[0];
|
||||
void* out1 = data[0] + offsets1[0];
|
||||
void* out2 = data[0] + offsets2[0];
|
||||
void* out3 = data[0] + offsets3[0];
|
||||
auto u = c10::load<arg0_cpp_t>(data[1] + offsets0[1]);
|
||||
auto v = c10::load<arg1_cpp_t>(data[2] + offsets0[2]);
|
||||
ret_t result0 = f(c10::convert<arg0_t>(u), c10::convert<arg1_t>(v));
|
||||
auto u1 = c10::load<arg0_cpp_t>(data[1] + offsets1[1]);
|
||||
auto v1 = c10::load<arg1_cpp_t>(data[2]+ offsets1[2]);
|
||||
ret_t result1 = f(c10::convert<arg0_t>(u1), c10::convert<arg1_t>(v1));
|
||||
auto u2 = c10::load<arg0_cpp_t>(data[1] + offsets2[1]);
|
||||
auto v2 = c10::load<arg1_cpp_t>(data[2] + offsets2[2]);
|
||||
ret_t result2 = f(c10::convert<arg0_t>(u2), c10::convert<arg1_t>(v2));
|
||||
auto u3 = c10::load<arg0_cpp_t>(data[1] + offsets3[1]);
|
||||
auto v3 = c10::load<arg1_cpp_t>(data[2] + offsets3[2]);
|
||||
ret_t result3 = f(c10::convert<arg0_t>(u3), c10::convert<arg1_t>(v3));
|
||||
*(ret_cpp_t*)out0 = c10::convert<ret_cpp_t>(result0);
|
||||
*(ret_cpp_t*)out1 = c10::convert<ret_cpp_t>(result1);
|
||||
*(ret_cpp_t*)out2 = c10::convert<ret_cpp_t>(result2);
|
||||
*(ret_cpp_t*)out3 = c10::convert<ret_cpp_t>(result3);
|
||||
} else {
|
||||
auto offsets = offset_calc.get(idx);
|
||||
void* out = data[0] + offsets[0];
|
||||
auto u = c10::load<arg0_cpp_t>(data[1] + offsets[1]);
|
||||
auto v = c10::load<arg1_cpp_t>(data[2] + offsets[2]);
|
||||
ret_t result = f(c10::convert<arg0_t>(u), c10::convert<arg1_t>(v));
|
||||
*(ret_cpp_t*)out = c10::convert<ret_cpp_t>(result);
|
||||
}
|
||||
});
|
||||
}
|
||||
}
|
||||
};
|
||||
|
||||
} // namespace
|
||||
#endif
|
||||
|
||||
@ -1065,32 +1002,6 @@ void gpu_kernel_impl(TensorIteratorBase& iter, const func_t& f) {
|
||||
}
|
||||
auto offset_calc = ::make_offset_calculator<traits::arity + 1>(iter);
|
||||
#ifdef USE_ROCM
|
||||
if (check_binary_rt_types_for_specialization(iter)) {
|
||||
// constexpr to reduce the amount of kernels generated for
|
||||
// broadcast elementwise with mexed dtypes and limit which functors are actually
|
||||
// applied to the load and store at compile time.
|
||||
using func_tuple = typename traits::ArgsTuple;
|
||||
if constexpr (
|
||||
std::is_same_v<float, arg0_t> && traits::arity == 2 &&
|
||||
check_binary_functor_types_for_specialization<
|
||||
func_tuple,
|
||||
float,
|
||||
float,
|
||||
traits::arity,
|
||||
/*arg_num=*/0>::check()) {
|
||||
memory::detail::static_unroll<
|
||||
type_specialized_broadcast_kernel_launcher,
|
||||
rt_binary_specializations.size()>::with_args(
|
||||
numel,
|
||||
f,
|
||||
data,
|
||||
dtypes,
|
||||
offset_calc
|
||||
);
|
||||
return;
|
||||
}
|
||||
}
|
||||
|
||||
constexpr int grp_sz = 128;
|
||||
launch_legacy_kernel_manual_unroll<grp_sz, 4>(numel, [=] GPU_LAMBDA(int idx, bool unrl) {
|
||||
if (unrl) {
|
||||
|
||||
@ -1,5 +1,6 @@
|
||||
#define TORCH_ASSERT_NO_OPERATORS
|
||||
#include <ATen/Dispatch.h>
|
||||
#include <ATen/Dispatch_v2.h>
|
||||
#include <ATen/NumericUtils.h>
|
||||
#include <ATen/native/DispatchStub.h>
|
||||
#include <ATen/native/ReduceAllOps.h>
|
||||
@ -28,22 +29,22 @@ void _min_max_values_kernel_cuda_impl(TensorIterator& iter) {
|
||||
}
|
||||
|
||||
void aminmax_allreduce_launch_kernel(TensorIterator& iter) {
|
||||
AT_DISPATCH_ALL_TYPES_AND3(
|
||||
kBFloat16, kHalf, kBool, iter.input_dtype(), "aminmax_all_cuda", [&] {
|
||||
AT_DISPATCH_V2(
|
||||
iter.input_dtype(), "aminmax_all_cuda", AT_WRAP([&] {
|
||||
_min_max_values_kernel_cuda_impl<scalar_t>(iter);
|
||||
});
|
||||
}), AT_EXPAND(AT_ALL_TYPES), AT_EXPAND(AT_BAREBONES_UNSIGNED_TYPES), kBFloat16, kHalf, kBool);
|
||||
}
|
||||
|
||||
void aminmax_launch_kernel(TensorIterator& iter) {
|
||||
AT_DISPATCH_ALL_TYPES_AND3(
|
||||
kBFloat16, kHalf, kBool, iter.input_dtype(), "aminmax_cuda", [&]() {
|
||||
AT_DISPATCH_V2(
|
||||
iter.input_dtype(), "aminmax_cuda", AT_WRAP([&]() {
|
||||
gpu_reduce_kernel<scalar_t, scalar_t>(
|
||||
iter,
|
||||
MinMaxOps<scalar_t, scalar_t, int32_t>{},
|
||||
thrust::pair<scalar_t, scalar_t>(
|
||||
at::numeric_limits<scalar_t>::upper_bound(),
|
||||
at::numeric_limits<scalar_t>::lower_bound()));
|
||||
});
|
||||
}), AT_EXPAND(AT_ALL_TYPES), AT_EXPAND(AT_BAREBONES_UNSIGNED_TYPES), kBFloat16, kHalf, kBool);
|
||||
}
|
||||
|
||||
} // namespace at::native
|
||||
|
||||
@ -1,5 +1,6 @@
|
||||
#define TORCH_ASSERT_NO_OPERATORS
|
||||
#include <ATen/Dispatch.h>
|
||||
#include <ATen/Dispatch_v2.h>
|
||||
#include <ATen/NumericUtils.h>
|
||||
#include <ATen/native/DispatchStub.h>
|
||||
#include <ATen/native/ReduceAllOps.h>
|
||||
@ -33,27 +34,27 @@ void max_values_kernel_cuda_impl(TensorIterator& iter) {
|
||||
}
|
||||
|
||||
void max_values_kernel_cuda(TensorIterator& iter) {
|
||||
AT_DISPATCH_ALL_TYPES_AND3(
|
||||
kBFloat16, kHalf, kBool, iter.dtype(), "max_values_cuda", [&]() {
|
||||
AT_DISPATCH_V2(
|
||||
iter.dtype(), "max_values_cuda", AT_WRAP([&]() {
|
||||
max_values_kernel_cuda_impl<scalar_t>(iter);
|
||||
});
|
||||
}), AT_EXPAND(AT_ALL_TYPES), AT_EXPAND(AT_BAREBONES_UNSIGNED_TYPES), kBFloat16, kHalf, kBool);
|
||||
}
|
||||
|
||||
void max_launch_kernel(TensorIterator& iter) {
|
||||
AT_DISPATCH_ALL_TYPES_AND3(
|
||||
kBFloat16, kHalf, kBool, iter.input_dtype(), "max_cuda", [&]() {
|
||||
AT_DISPATCH_V2(
|
||||
iter.input_dtype(), "max_cuda", AT_WRAP([&]() {
|
||||
gpu_reduce_kernel<scalar_t, scalar_t>(
|
||||
iter,
|
||||
MaxOps<scalar_t>{},
|
||||
thrust::pair<scalar_t, int64_t>(
|
||||
at::numeric_limits<scalar_t>::lower_bound(), 0));
|
||||
});
|
||||
}), AT_EXPAND(AT_ALL_TYPES), AT_EXPAND(AT_BAREBONES_UNSIGNED_TYPES), kBFloat16, kHalf, kBool);
|
||||
}
|
||||
|
||||
void max_all_launch_kernel(TensorIterator &iter) {
|
||||
AT_DISPATCH_ALL_TYPES_AND3(kBFloat16, kHalf, kBool, iter.input_dtype(), "max_all_cuda", [&] {
|
||||
AT_DISPATCH_V2(iter.input_dtype(), "max_all_cuda", AT_WRAP([&] {
|
||||
max_values_kernel_cuda_impl<scalar_t>(iter);
|
||||
});
|
||||
}), AT_EXPAND(AT_ALL_TYPES), AT_EXPAND(AT_BAREBONES_UNSIGNED_TYPES), kBFloat16, kHalf, kBool);
|
||||
}
|
||||
|
||||
REGISTER_DISPATCH(max_values_stub, &max_values_kernel_cuda)
|
||||
|
||||
@ -12,6 +12,7 @@
|
||||
#include <ATen/NumericUtils.h>
|
||||
|
||||
#include <ATen/Dispatch.h>
|
||||
#include <ATen/Dispatch_v2.h>
|
||||
#include <ATen/NumericUtils.h>
|
||||
#include <ATen/cuda/NumericLimits.cuh>
|
||||
|
||||
@ -33,24 +34,24 @@ void min_values_kernel_cuda_impl(TensorIterator& iter) {
|
||||
}
|
||||
|
||||
void min_values_kernel_cuda(TensorIterator& iter) {
|
||||
AT_DISPATCH_ALL_TYPES_AND3(kBFloat16, kHalf, kBool, iter.dtype(), "min_values_cuda", [&]() {
|
||||
AT_DISPATCH_V2(iter.dtype(), "min_values_cuda", AT_WRAP([&]() {
|
||||
min_values_kernel_cuda_impl<scalar_t>(iter);
|
||||
});
|
||||
}), AT_EXPAND(AT_ALL_TYPES), AT_EXPAND(AT_BAREBONES_UNSIGNED_TYPES), kBFloat16, kHalf, kBool);
|
||||
}
|
||||
|
||||
void min_launch_kernel(TensorIterator &iter) {
|
||||
AT_DISPATCH_ALL_TYPES_AND3(kBFloat16, kHalf, kBool, iter.input_dtype(), "min_cuda", [&]() {
|
||||
AT_DISPATCH_V2(iter.input_dtype(), "min_cuda", AT_WRAP([&]() {
|
||||
gpu_reduce_kernel<scalar_t, scalar_t>(
|
||||
iter,
|
||||
MinOps<scalar_t>{},
|
||||
thrust::pair<scalar_t, int64_t>(at::numeric_limits<scalar_t>::upper_bound(), 0));
|
||||
});
|
||||
}), AT_EXPAND(AT_ALL_TYPES), AT_EXPAND(AT_BAREBONES_UNSIGNED_TYPES), kBFloat16, kHalf, kBool);
|
||||
}
|
||||
|
||||
void min_all_launch_kernel(TensorIterator &iter) {
|
||||
AT_DISPATCH_ALL_TYPES_AND3(kBFloat16, kHalf, kBool, iter.input_dtype(), "min_all_cuda", [&] {
|
||||
AT_DISPATCH_V2(iter.input_dtype(), "min_all_cuda", AT_WRAP([&] {
|
||||
min_values_kernel_cuda_impl<scalar_t>(iter);
|
||||
});
|
||||
}), AT_EXPAND(AT_ALL_TYPES), AT_EXPAND(AT_BAREBONES_UNSIGNED_TYPES), kBFloat16, kHalf, kBool);
|
||||
}
|
||||
|
||||
REGISTER_DISPATCH(min_values_stub, &min_values_kernel_cuda)
|
||||
|
||||
@ -133,7 +133,7 @@ at::Tensor quantized_convolution(
|
||||
// supported in conv.
|
||||
mask_weight = weight_zero_points.numel() > 1 ? 1 : 0;
|
||||
if (groups > 1 && weight_zero_points.numel() > 1)
|
||||
mask_weight = (1 << 0) | (1 << 1); // 2^0 (group) | 2^1 (output channel)
|
||||
mask_weight = (2 ^ 0) | (2 ^ 1); // 2^0 (group) | 2^1 (output channel)
|
||||
dnnl::primitive_attr pattr;
|
||||
|
||||
bool src_need_zp = (act_zero_point != 0);
|
||||
|
||||
@ -40,6 +40,8 @@ using namespace at::mps;
|
||||
|
||||
namespace at::native::mps {
|
||||
|
||||
void dispatch_sync_with_rethrow(dispatch_queue_t queue, void (^block)());
|
||||
|
||||
struct MPSScalar {
|
||||
id<MTLBuffer> getMTLBuffer() const {
|
||||
return __builtin_bit_cast(id<MTLBuffer>, buffer.get());
|
||||
|
||||
@ -53,6 +53,21 @@
|
||||
@end
|
||||
|
||||
namespace at::native::mps {
|
||||
|
||||
void dispatch_sync_with_rethrow(dispatch_queue_t queue, void (^block)()) {
|
||||
__block std::optional<std::exception_ptr> block_exception;
|
||||
dispatch_sync(queue, ^() {
|
||||
try {
|
||||
block();
|
||||
} catch (...) {
|
||||
block_exception = std::current_exception();
|
||||
}
|
||||
});
|
||||
if (block_exception) {
|
||||
std::rethrow_exception(*block_exception);
|
||||
}
|
||||
}
|
||||
|
||||
/**
|
||||
* Computes distance from lowest to highest element offset in given tensor.
|
||||
*/
|
||||
|
||||
@ -1,5 +1,4 @@
|
||||
#include <c10/metal/atomic.h>
|
||||
#include <c10/metal/error.h>
|
||||
#include <c10/metal/indexing.h>
|
||||
#include <metal_stdlib>
|
||||
|
||||
@ -32,24 +31,10 @@ OffsetT index_apply_indices(
|
||||
constant IndexAB* indices,
|
||||
constant int64_t* sizes,
|
||||
constant int64_t* strides,
|
||||
uint num_indices,
|
||||
thread bool& error,
|
||||
device ErrorMessages* error_buf) {
|
||||
uint num_indices) {
|
||||
OffsetT rc = offs.x;
|
||||
for (uint i = 0; i < num_indices; i++) {
|
||||
auto idx = indices[i].indexArray[offs.y];
|
||||
if (idx < -sizes[i] || idx >= sizes[i]) {
|
||||
TORCH_REPORT_ERROR(
|
||||
error_buf,
|
||||
"index ",
|
||||
idx,
|
||||
" is out of bounds for dimension ",
|
||||
i,
|
||||
" with size ",
|
||||
sizes[i]);
|
||||
error = true;
|
||||
break;
|
||||
}
|
||||
if (idx < 0) {
|
||||
idx += sizes[i];
|
||||
}
|
||||
@ -70,7 +55,6 @@ kernel void index_select(
|
||||
constant int64_t* index_sizes,
|
||||
constant int64_t* index_strides,
|
||||
constant uint4& ndim_nindices_numel,
|
||||
device ErrorMessages* error_buffer,
|
||||
uint thread_index [[thread_position_in_grid]]) {
|
||||
const auto ndim = ndim_nindices_numel.x;
|
||||
const auto num_indices = ndim_nindices_numel.y;
|
||||
@ -81,19 +65,8 @@ kernel void index_select(
|
||||
indices_strides,
|
||||
ndim,
|
||||
thread_index);
|
||||
bool error = false;
|
||||
auto input_offs = index_apply_indices<OffsetT>(
|
||||
offs.yz,
|
||||
indices,
|
||||
index_sizes,
|
||||
index_strides,
|
||||
num_indices,
|
||||
error,
|
||||
error_buffer);
|
||||
if (error) {
|
||||
output[offs.x / sizeof(T)] = 0;
|
||||
return;
|
||||
}
|
||||
offs.yz, indices, index_sizes, index_strides, num_indices);
|
||||
output[offs.x / sizeof(T)] = input[input_offs / sizeof(T)];
|
||||
}
|
||||
|
||||
@ -109,9 +82,7 @@ inline void index_put_impl(
|
||||
constant int64_t* index_sizes,
|
||||
constant int64_t* index_strides,
|
||||
constant uint4& ndim_nindices_numel,
|
||||
device ErrorMessages* error_buffer,
|
||||
uint thread_index) {
|
||||
bool error = false;
|
||||
const auto ndim = ndim_nindices_numel.x;
|
||||
const auto num_indices = ndim_nindices_numel.y;
|
||||
const auto offs = index_get_offsets(
|
||||
@ -122,16 +93,7 @@ inline void index_put_impl(
|
||||
ndim,
|
||||
thread_index);
|
||||
auto output_offs = index_apply_indices<OffsetT>(
|
||||
offs.xz,
|
||||
indices,
|
||||
index_sizes,
|
||||
index_strides,
|
||||
num_indices,
|
||||
error,
|
||||
error_buffer);
|
||||
if (error) {
|
||||
return;
|
||||
}
|
||||
offs.xz, indices, index_sizes, index_strides, num_indices);
|
||||
output[output_offs / sizeof(T)] = input[offs.y / sizeof(T)];
|
||||
}
|
||||
|
||||
@ -147,7 +109,6 @@ kernel void index_put(
|
||||
constant int64_t* index_sizes,
|
||||
constant int64_t* index_strides,
|
||||
constant uint4& ndim_nindices_numel,
|
||||
device ErrorMessages* error_buffer,
|
||||
uint thread_index [[thread_position_in_grid]]) {
|
||||
index_put_impl(
|
||||
output,
|
||||
@ -160,7 +121,6 @@ kernel void index_put(
|
||||
index_sizes,
|
||||
index_strides,
|
||||
ndim_nindices_numel,
|
||||
error_buffer,
|
||||
thread_index);
|
||||
}
|
||||
|
||||
@ -176,7 +136,6 @@ kernel void index_put_serial(
|
||||
constant int64_t* index_sizes,
|
||||
constant int64_t* index_strides,
|
||||
constant uint4& ndim_nindices_numel,
|
||||
device ErrorMessages* error_buffer,
|
||||
uint thread_index [[thread_position_in_grid]]) {
|
||||
(void)thread_index; // Suppress unused vairable varning
|
||||
for (uint idx = 0; idx < ndim_nindices_numel.z; ++idx) {
|
||||
@ -191,7 +150,6 @@ kernel void index_put_serial(
|
||||
index_sizes,
|
||||
index_strides,
|
||||
ndim_nindices_numel,
|
||||
error_buffer,
|
||||
idx);
|
||||
}
|
||||
}
|
||||
@ -208,7 +166,6 @@ kernel void index_put_accumulate(
|
||||
constant int64_t* index_sizes,
|
||||
constant int64_t* index_strides,
|
||||
constant uint4& ndim_nindices_numel,
|
||||
device ErrorMessages* error_buffer,
|
||||
uint thread_index [[thread_position_in_grid]]) {
|
||||
const auto ndim = ndim_nindices_numel.x;
|
||||
const auto num_indices = ndim_nindices_numel.y;
|
||||
@ -219,18 +176,8 @@ kernel void index_put_accumulate(
|
||||
indices_strides,
|
||||
ndim,
|
||||
thread_index);
|
||||
bool error = false;
|
||||
auto output_offs = index_apply_indices<OffsetT>(
|
||||
offs.xz,
|
||||
indices,
|
||||
index_sizes,
|
||||
index_strides,
|
||||
num_indices,
|
||||
error,
|
||||
error_buffer);
|
||||
if (error) {
|
||||
return;
|
||||
}
|
||||
offs.xz, indices, index_sizes, index_strides, num_indices);
|
||||
AtomicType<T>::atomic_add(
|
||||
reinterpret_cast<device AtomicType_t<T>*>(output),
|
||||
output_offs / sizeof(T),
|
||||
@ -250,7 +197,6 @@ kernel void index_put_accumulate(
|
||||
constant int64_t* index_sizes, \
|
||||
constant int64_t* index_strides, \
|
||||
constant uint4& ndim_nindices_numel, \
|
||||
device ErrorMessages* error_buffer, \
|
||||
uint thread_index [[thread_position_in_grid]])
|
||||
|
||||
#define REGISTER_INDEX_OP_ALL_DTYPES(OP_NAME) \
|
||||
|
||||
@ -141,9 +141,6 @@ static Tensor& addmv_out_mps_impl(const Tensor& self,
|
||||
};
|
||||
|
||||
MPSStream* stream = at::mps::getCurrentMPSStream();
|
||||
if (result.numel() == 0) {
|
||||
return result;
|
||||
}
|
||||
Tensor matMulVec = at::mm(mat, vec.unsqueeze(1)).squeeze(1);
|
||||
|
||||
@autoreleasepool {
|
||||
|
||||
@ -220,7 +220,7 @@ Tensor _embedding_bag_dense_backward_mps(const Tensor& output_grad,
|
||||
auto num_threads = (params.mode == EmbeddingBagMode::MAX) ? output_grad.numel() : num_indices * params.feature_size;
|
||||
MPSStream* stream = getCurrentMPSStream();
|
||||
|
||||
dispatch_sync_with_rethrow(stream->queue(), ^() {
|
||||
mps::dispatch_sync_with_rethrow(stream->queue(), ^() {
|
||||
@autoreleasepool {
|
||||
id<MTLComputeCommandEncoder> computeEncoder = stream->commandEncoder();
|
||||
auto pipeline_state = lib.getPipelineStateForFunc(fmt::format("embedding_bag_backward_{}_{}",
|
||||
@ -273,7 +273,7 @@ Tensor _embedding_bag_per_sample_weights_backward_mps(const Tensor& output_grad,
|
||||
auto num_threads = num_indices * feature_size;
|
||||
MPSStream* stream = getCurrentMPSStream();
|
||||
|
||||
dispatch_sync_with_rethrow(stream->queue(), ^() {
|
||||
mps::dispatch_sync_with_rethrow(stream->queue(), ^() {
|
||||
@autoreleasepool {
|
||||
id<MTLComputeCommandEncoder> computeEncoder = stream->commandEncoder();
|
||||
auto pipeline_state = lib.getPipelineStateForFunc(fmt::format("embedding_bag_per_sample_weights_backward_{}_{}",
|
||||
|
||||
@ -179,8 +179,7 @@ static void dispatch_index_kernel(TensorIteratorBase& iter,
|
||||
iter.strides(2),
|
||||
index_size,
|
||||
index_stride,
|
||||
ndim_nindiees,
|
||||
mpsStream->getErrorBuffer());
|
||||
ndim_nindiees);
|
||||
mtl_dispatch1DJob(computeEncoder, indexSelectPSO, serial ? 1 : iter.numel());
|
||||
});
|
||||
}
|
||||
@ -300,7 +299,7 @@ static Tensor& nonzero_out_native_mps(const Tensor& self, Tensor& out_) {
|
||||
MPSStream* stream = getCurrentMPSStream();
|
||||
using CachedGraph = MPSUnaryCachedGraph;
|
||||
|
||||
dispatch_sync_with_rethrow(stream->queue(), ^() {
|
||||
dispatch_sync(stream->queue(), ^() {
|
||||
stream->synchronize(SyncType::COMMIT_AND_WAIT);
|
||||
});
|
||||
int64_t total_nonzero = at::count_nonzero(self).item<int64_t>();
|
||||
@ -385,7 +384,7 @@ Tensor& nonzero_out_mps(const Tensor& self, Tensor& out_) {
|
||||
MPSStream* stream = getCurrentMPSStream();
|
||||
using CachedGraph = MPSUnaryCachedGraph;
|
||||
|
||||
dispatch_sync_with_rethrow(stream->queue(), ^() {
|
||||
dispatch_sync(stream->queue(), ^() {
|
||||
stream->synchronize(SyncType::COMMIT_AND_WAIT);
|
||||
});
|
||||
int64_t total_nonzero = at::count_nonzero(self).item<int64_t>();
|
||||
|
||||
@ -923,7 +923,7 @@ std::tuple<Tensor, Tensor, Tensor> layer_norm_mps(const Tensor& input,
|
||||
MPSStream* stream = getCurrentMPSStream();
|
||||
TORCH_CHECK_NOT_IMPLEMENTED(input.scalar_type() != kLong, "Not implemented for long on MPS");
|
||||
@autoreleasepool {
|
||||
dispatch_sync_with_rethrow(stream->queue(), ^() {
|
||||
mps::dispatch_sync_with_rethrow(stream->queue(), ^() {
|
||||
// which kernel variant to use based on the normalized axis N size
|
||||
const int N_READS = 4;
|
||||
auto metalType = mps::scalarToMetalTypeString(input);
|
||||
|
||||
@ -192,11 +192,6 @@
|
||||
CompositeExplicitAutograd: _assert_tensor_metadata
|
||||
Meta: _assert_tensor_metadata_meta_symint
|
||||
|
||||
- func: _async_error(str msg) -> ()
|
||||
dispatch:
|
||||
CompositeExplicitAutograd: _async_error
|
||||
Meta: _async_error_meta
|
||||
|
||||
- func: _print(str s) -> ()
|
||||
dispatch:
|
||||
CompositeExplicitAutograd: _print
|
||||
@ -2808,7 +2803,7 @@
|
||||
- func: floor_divide.out(Tensor self, Tensor other, *, Tensor(a!) out) -> Tensor(a!)
|
||||
device_check: NoCheck # TensorIterator
|
||||
dispatch:
|
||||
CPU, CUDA, MPS, MTIA: floor_divide_out
|
||||
CPU, CUDA, MPS: floor_divide_out
|
||||
SparseCPU, SparseCUDA, SparseMPS: floor_divide_out_sparse_zerodim
|
||||
|
||||
- func: floor_divide.Scalar(Tensor self, Scalar other) -> Tensor
|
||||
@ -4297,7 +4292,6 @@
|
||||
dispatch:
|
||||
SparseCPU: sparse_sparse_matmul_cpu
|
||||
SparseCUDA: sparse_sparse_matmul_cuda
|
||||
SparseMPS: sparse_sparse_matmul_mps
|
||||
autogen: _sparse_sparse_matmul.out
|
||||
|
||||
- func: mode(Tensor self, int dim=-1, bool keepdim=False) -> (Tensor values, Tensor indices)
|
||||
@ -4389,7 +4383,7 @@
|
||||
variants: function, method
|
||||
dispatch:
|
||||
CompositeExplicitAutograd: mv
|
||||
SparseCPU, SparseCUDA, SparseMPS: mv_sparse
|
||||
SparseCPU, SparseCUDA: mv_sparse
|
||||
|
||||
- func: mv.out(Tensor self, Tensor vec, *, Tensor(a!) out) -> Tensor(a!)
|
||||
dispatch:
|
||||
@ -9838,7 +9832,7 @@
|
||||
structured_delegate: erfinv.out
|
||||
variants: method, function
|
||||
dispatch:
|
||||
SparseCPU, SparseCUDA, SparseMPS: erfinv_sparse
|
||||
SparseCPU, SparseCUDA: erfinv_sparse
|
||||
SparseCsrCPU, SparseCsrCUDA, SparseCsrMeta: erfinv_sparse_csr
|
||||
tags: pointwise
|
||||
|
||||
@ -9847,7 +9841,7 @@
|
||||
structured_delegate: erfinv.out
|
||||
variants: method
|
||||
dispatch:
|
||||
SparseCPU, SparseCUDA, SparseMPS: erfinv_sparse_
|
||||
SparseCPU, SparseCUDA: erfinv_sparse_
|
||||
SparseCsrCPU, SparseCsrCUDA, SparseCsrMeta: erfinv_sparse_csr_
|
||||
tags: pointwise
|
||||
|
||||
@ -9857,7 +9851,7 @@
|
||||
structured_inherits: TensorIteratorBase
|
||||
dispatch:
|
||||
CPU, CUDA, MPS: erfinv_out
|
||||
SparseCPU, SparseCUDA, SparseMPS: erfinv_sparse_out
|
||||
SparseCPU, SparseCUDA: erfinv_sparse_out
|
||||
SparseCsrCPU, SparseCsrCUDA, SparseCsrMeta: erfinv_sparse_csr_out
|
||||
tags: pointwise
|
||||
|
||||
|
||||
@ -10,10 +10,6 @@
|
||||
#include <ATen/NativeFunctions.h>
|
||||
#else
|
||||
#include <ATen/ops/_coalesce_native.h>
|
||||
#include <ATen/ops/repeat_interleave_native.h>
|
||||
#include <ATen/ops/cumsum.h>
|
||||
#include <ATen/ops/_sparse_sparse_matmul_native.h>
|
||||
#include <ATen/ops/_sparse_coo_tensor_unsafe.h>
|
||||
#include <ATen/ops/_sparse_coo_tensor_unsafe_native.h>
|
||||
#include <ATen/ops/cat.h>
|
||||
#include <ATen/ops/add_native.h>
|
||||
@ -892,114 +888,5 @@ static void sparse_mask_intersection_out_mps_kernel(
|
||||
/*coalesce_mask=*/false);
|
||||
}
|
||||
|
||||
Tensor sparse_sparse_matmul_mps(const Tensor& mat1_, const Tensor& mat2_) {
|
||||
TORCH_CHECK(mat1_.is_sparse() && mat2_.is_sparse(),
|
||||
"sparse_sparse_matmul_mps: both inputs must be sparse COO tensors");
|
||||
TORCH_CHECK(mat1_.is_mps() && mat2_.is_mps(),
|
||||
"sparse_sparse_matmul_mps: both inputs must be on MPS device");
|
||||
TORCH_CHECK(mat1_.dim() == 2 && mat2_.dim() == 2,
|
||||
"sparse_sparse_matmul_mps: both inputs must be 2D matrices");
|
||||
TORCH_CHECK(mat1_.dense_dim() == 0 && mat2_.dense_dim() == 0,
|
||||
"sparse_sparse_matmul_mps: only scalar values supported (dense_dim == 0)");
|
||||
TORCH_CHECK(mat1_.size(1) == mat2_.size(0),
|
||||
"mat1 and mat2 shapes cannot be multiplied (", mat1_.size(0), "x", mat1_.size(1), " and ", mat2_.size(0), "x", mat2_.size(1), ")");
|
||||
TORCH_CHECK(mat1_.scalar_type() == mat2_.scalar_type(),
|
||||
"sparse_sparse_matmul_mps: mat1 dtype ", mat1_.scalar_type(),
|
||||
" does not match mat2 dtype ", mat2_.scalar_type());
|
||||
|
||||
const auto device = mat1_.device();
|
||||
|
||||
auto A = mat1_.coalesce();
|
||||
auto B = mat2_.coalesce();
|
||||
|
||||
const auto I = A.size(0);
|
||||
const auto K = A.size(1);
|
||||
const auto N = B.size(1);
|
||||
|
||||
const auto nnzA = A._nnz();
|
||||
const auto nnzB = B._nnz();
|
||||
|
||||
// Early empty result, return an empty, coalesced tensor
|
||||
if (I == 0 || N == 0 || K == 0 || nnzA == 0 || nnzB == 0) {
|
||||
auto empty_idx = at::empty({2, 0}, at::device(device).dtype(at::kLong));
|
||||
auto empty_val = at::empty({0}, at::device(device).dtype(mat1_.scalar_type()));
|
||||
auto out = _sparse_coo_tensor_unsafe(empty_idx, empty_val, {I, N}, mat1_.options());
|
||||
out._coalesced_(true);
|
||||
return out;
|
||||
}
|
||||
|
||||
const auto computeDtype = at::result_type(mat1_, mat2_);
|
||||
|
||||
auto A_idx = A._indices().contiguous();
|
||||
auto A_val = A._values().to(computeDtype).contiguous();
|
||||
auto A_i = A_idx.select(0, 0).contiguous();
|
||||
auto A_k = A_idx.select(0, 1).contiguous();
|
||||
|
||||
auto B_idx = B._indices().contiguous();
|
||||
auto B_val = B._values().to(computeDtype).contiguous();
|
||||
auto B_k = B_idx.select(0, 0).contiguous();
|
||||
auto B_j = B_idx.select(0, 1).contiguous();
|
||||
|
||||
// csr-style row pointers for B by k (the shared dimension)
|
||||
Tensor row_ptr_B;
|
||||
{
|
||||
auto batch_ptr = at::tensor({0LL, nnzB}, at::device(device).dtype(at::kLong));
|
||||
row_ptr_B = at::empty({K + 1}, at::device(device).dtype(at::kLong));
|
||||
build_row_ptr_per_batch_mps(B_k, batch_ptr, /*B=*/1, /*I=*/K, row_ptr_B);
|
||||
}
|
||||
|
||||
auto row_ptr_B_lo = row_ptr_B.narrow(0, 0, K);
|
||||
auto row_ptr_B_hi = row_ptr_B.narrow(0, 1, K);
|
||||
auto deg_B = row_ptr_B_hi.sub(row_ptr_B_lo);
|
||||
|
||||
auto counts = deg_B.index_select(0, A_k);
|
||||
|
||||
const int64_t P = counts.sum().item<int64_t>();
|
||||
if (P == 0) {
|
||||
auto empty_idx = at::empty({2, 0}, at::device(device).dtype(at::kLong));
|
||||
auto empty_val = at::empty({0}, at::device(device).dtype(mat1_.scalar_type()));
|
||||
auto out = _sparse_coo_tensor_unsafe(empty_idx, empty_val, {I, N}, mat1_.options());
|
||||
out._coalesced_(true);
|
||||
return out;
|
||||
}
|
||||
|
||||
auto group_ids = repeat_interleave_mps(counts);
|
||||
|
||||
// exclusive cumsum of counts
|
||||
auto offsets = cumsum(counts, /*dim=*/0).sub(counts);
|
||||
auto offsets_gather = offsets.index_select(0, group_ids);
|
||||
auto within = at::arange(P, at::device(device).dtype(at::kLong)).sub(offsets_gather);
|
||||
|
||||
// Map each output element to its source B row and position
|
||||
auto k_per_out = A_k.index_select(0, group_ids);
|
||||
auto start_in_B = row_ptr_B.index_select(0, k_per_out);
|
||||
auto seg_index = start_in_B.add(within);
|
||||
|
||||
// Assemble candidate coo pairs and values
|
||||
auto i_out = A_i.index_select(0, group_ids).contiguous();
|
||||
auto j_out = B_j.index_select(0, seg_index).contiguous();
|
||||
auto vA_out = A_val.index_select(0, group_ids).contiguous();
|
||||
auto vB_out = B_val.index_select(0, seg_index).contiguous();
|
||||
auto v_out = vA_out.mul(vB_out);
|
||||
|
||||
// build (2, P) indices
|
||||
auto out_indices = at::empty({2, P}, at::device(device).dtype(at::kLong)).contiguous();
|
||||
out_indices.select(0, 0).copy_(i_out);
|
||||
out_indices.select(0, 1).copy_(j_out);
|
||||
|
||||
auto result = _sparse_coo_tensor_unsafe(
|
||||
out_indices, v_out, {I, N}, mat1_.options().dtype(computeDtype));
|
||||
|
||||
result = result.coalesce();
|
||||
|
||||
if (result.scalar_type() != mat1_.scalar_type()) {
|
||||
auto cast_vals = result._values().to(mat1_.scalar_type());
|
||||
auto out = _sparse_coo_tensor_unsafe(result._indices(), cast_vals, {I, N}, mat1_.options());
|
||||
out._coalesced_(true);
|
||||
return out;
|
||||
}
|
||||
return result;
|
||||
}
|
||||
|
||||
REGISTER_MPS_DISPATCH(sparse_mask_intersection_out_stub, &sparse_mask_intersection_out_mps_kernel);
|
||||
} // namespace at::native
|
||||
@ -478,7 +478,7 @@ bool check_cudnn_tensor_shapes(sdp_params const& params, bool debug) {
|
||||
const auto s_k = params.key.sym_size(2);
|
||||
const auto d_qk = params.query.sym_size(3);
|
||||
const auto d_v = params.value.sym_size(3);
|
||||
long cudnn_version = at::detail::getCUDAHooks().versionRuntimeCuDNN();
|
||||
long cudnn_version = at::detail::getCUDAHooks().versionCuDNN();
|
||||
if (cudnn_version < 8903) {
|
||||
if (debug) {
|
||||
TORCH_WARN("SDPA fprop requires cudnn 8.9.3 or higher");
|
||||
@ -709,7 +709,7 @@ bool can_use_cudnn_attention(const sdp_params& params, bool debug) {
|
||||
return false;
|
||||
#endif
|
||||
#if defined(CUDNN_VERSION)
|
||||
static auto cudnn_version = at::detail::getCUDAHooks().versionRuntimeCuDNN();
|
||||
static auto cudnn_version = cudnnGetVersion();
|
||||
if (params.dropout > 0.0 && cudnn_version > 91100 && cudnn_version < 91400) {
|
||||
if (debug) {
|
||||
TORCH_WARN(CUDNN_VERSION, " cuDNN version does not support droppout in SDPA (9.11 - 9.13).");
|
||||
|
||||
@ -952,7 +952,7 @@ def latency_experiment_summary(suite_name, args, model, timings, **kwargs):
|
||||
first_fields.append(kwargs["tag"])
|
||||
headers = first_headers + ["speedup", "abs_latency"]
|
||||
row = first_fields + [float(speedup), median[1] * 1000]
|
||||
msg = f"{median[0] * 1000} ms, {median[1] * 1000} ms, {speedup:.3f}x"
|
||||
msg = f"{speedup:.3f}x"
|
||||
if args.baseline:
|
||||
headers.extend(
|
||||
[
|
||||
@ -1010,7 +1010,7 @@ def latency_experiment_summary(suite_name, args, model, timings, **kwargs):
|
||||
# Hypothetically you can use this from other places, but it's currently
|
||||
# inaccessible, and when this assert fails you need to update the
|
||||
# event_name here to account for the other cases you are using this
|
||||
assert any([args.quantization, args.optimus])
|
||||
assert args.quantization is not None
|
||||
output_signpost(
|
||||
dict(zip(headers, row)),
|
||||
args,
|
||||
@ -2587,9 +2587,6 @@ class BenchmarkRunner:
|
||||
**experiment_kwargs,
|
||||
)
|
||||
|
||||
# reset dynamo
|
||||
torch._dynamo.reset()
|
||||
|
||||
if self.args.export_aot_inductor:
|
||||
optimized_model_iter_fn = optimize_ctx
|
||||
else:
|
||||
@ -2953,7 +2950,7 @@ class BenchmarkRunner:
|
||||
status = self.check_tolerance(name, model, example_inputs, optimize_ctx)
|
||||
print(status)
|
||||
elif self.args.performance:
|
||||
if self.args.backend in ["torchao", "optimus"]:
|
||||
if self.args.backend == "torchao":
|
||||
status = self.run_performance_test_non_alternate(
|
||||
name, model, example_inputs, optimize_ctx, experiment, tag
|
||||
)
|
||||
@ -3529,12 +3526,6 @@ def parse_args(args=None):
|
||||
action="store_true",
|
||||
help="Measure speedup with TorchInductor",
|
||||
)
|
||||
group.add_argument(
|
||||
"--optimus",
|
||||
choices=["vertical_opt", "horizontal_opt", "all"],
|
||||
default=None,
|
||||
help="Measure speedup of Optimus with TorchInductor baseline",
|
||||
)
|
||||
group.add_argument(
|
||||
"--quantization",
|
||||
choices=[
|
||||
@ -3792,9 +3783,6 @@ def run(runner, args, original_dir=None):
|
||||
if args.inductor:
|
||||
assert args.backend is None
|
||||
args.backend = "inductor"
|
||||
if args.optimus:
|
||||
assert args.backend is None
|
||||
args.backend = "optimus"
|
||||
if args.quantization:
|
||||
assert args.backend is None
|
||||
args.backend = "torchao"
|
||||
@ -4079,22 +4067,10 @@ def run(runner, args, original_dir=None):
|
||||
|
||||
runner.model_iter_fn = model_iter_fn_and_mark_step
|
||||
optimize_ctx = torchao_optimize_ctx(args.quantization)
|
||||
elif args.backend == "optimus":
|
||||
from .optimus import get_baseline_ctx, get_optimus_optimize_ctx
|
||||
|
||||
baseline_ctx = get_baseline_ctx(
|
||||
nopython=args.nopython, inductor_compile_mode=args.inductor_compile_mode
|
||||
)
|
||||
runner.model_iter_fn = baseline_ctx(runner.model_iter_fn)
|
||||
optimize_ctx = get_optimus_optimize_ctx(
|
||||
args.optimus, args.nopython, args.inductor_compile_mode
|
||||
)
|
||||
else:
|
||||
optimize_ctx = torch._dynamo.optimize(args.backend, nopython=args.nopython)
|
||||
experiment = (
|
||||
speedup_experiment
|
||||
if args.backend not in ["torchao", "optimus"]
|
||||
else latency_experiment
|
||||
speedup_experiment if args.backend != "torchao" else latency_experiment
|
||||
)
|
||||
if args.accuracy:
|
||||
output_filename = f"accuracy_{args.backend}.csv"
|
||||
@ -4115,12 +4091,7 @@ def run(runner, args, original_dir=None):
|
||||
if args.only in runner.disable_cudagraph_models:
|
||||
args.disable_cudagraphs = True
|
||||
|
||||
if (
|
||||
args.inductor
|
||||
or args.backend == "inductor"
|
||||
or args.export_aot_inductor
|
||||
or args.backend == "optimus"
|
||||
):
|
||||
if args.inductor or args.backend == "inductor" or args.export_aot_inductor:
|
||||
inductor_config.triton.cudagraphs = not args.disable_cudagraphs
|
||||
inductor_config.triton.persistent_reductions = (
|
||||
not args.disable_persistent_reductions
|
||||
|
||||
@ -1,62 +0,0 @@
|
||||
import functools
|
||||
|
||||
import torch
|
||||
|
||||
|
||||
def get_baseline_ctx(nopython, inductor_compile_mode):
|
||||
return functools.partial(
|
||||
torch.compile,
|
||||
backend="inductor",
|
||||
fullgraph=nopython,
|
||||
mode=inductor_compile_mode,
|
||||
)
|
||||
|
||||
|
||||
def get_optimus_optimize_ctx(config, nopython, inductor_compile_mode):
|
||||
if config == "vertical_opt":
|
||||
optimus_inductor_config = {
|
||||
"pre_grad_fusion_options": {
|
||||
"normalization_pass": {},
|
||||
"merge_splits_pass": {},
|
||||
"split_cat_pass": {},
|
||||
"unbind_stack_pass": {},
|
||||
"unbind_cat_to_view_pass": {},
|
||||
}
|
||||
}
|
||||
elif config == "horizontal_opt":
|
||||
optimus_inductor_config = {
|
||||
"pre_grad_fusion_options": {
|
||||
"normalization_pass": {},
|
||||
"batch_linear": {},
|
||||
"batch_layernorm": {},
|
||||
},
|
||||
}
|
||||
elif config == "all":
|
||||
optimus_inductor_config = {
|
||||
"pre_grad_fusion_options": {
|
||||
"normalization_pass": {},
|
||||
"batch_linear": {},
|
||||
"batch_layernorm": {},
|
||||
"merge_splits_pass": {},
|
||||
"split_cat_pass": {},
|
||||
"unbind_stack_pass": {},
|
||||
"unbind_cat_to_view_pass": {},
|
||||
},
|
||||
}
|
||||
else:
|
||||
raise RuntimeError(f"Unknown optimus config: {config}")
|
||||
|
||||
def _inner(fn):
|
||||
if "pre_grad_fusion_options" in optimus_inductor_config:
|
||||
torch._inductor.config.pre_grad_fusion_options = optimus_inductor_config[
|
||||
"pre_grad_fusion_options"
|
||||
]
|
||||
if "post_grad_fusion_options" in optimus_inductor_config:
|
||||
torch._inductor.config.post_grad_fusion_options = optimus_inductor_config[
|
||||
"post_grad_fusion_options"
|
||||
]
|
||||
return torch.compile(
|
||||
fn, backend="inductor", fullgraph=nopython, mode=inductor_compile_mode
|
||||
)
|
||||
|
||||
return _inner
|
||||
@ -2,7 +2,6 @@ import csv
|
||||
import os
|
||||
import re
|
||||
import sys
|
||||
from pathlib import Path
|
||||
|
||||
|
||||
# This script takes the logs produced by the benchmark scripts (e.g.,
|
||||
@ -16,7 +15,8 @@ from pathlib import Path
|
||||
# This script is not very well written, feel free to rewrite it as necessary
|
||||
|
||||
assert len(sys.argv) == 2
|
||||
full_log = Path(sys.argv[1]).read_text()
|
||||
|
||||
full_log = open(sys.argv[1]).read()
|
||||
|
||||
# If the log contains a gist URL, extract it so we can include it in the CSV
|
||||
gist_url = ""
|
||||
|
||||
@ -484,106 +484,24 @@ PyTorch,sum,sum_R256_V512_dim0_contiguousTrue_cpu,short,False,50.954394,0.000000
|
||||
PyTorch,sum,sum_R256_V512_dim0_contiguousFalse_cpu,short,False,57.957757,0.000000
|
||||
PyTorch,sum,sum_R256_V512_dim1_contiguousTrue_cpu,short,False,53.592068,0.000000
|
||||
PyTorch,sum,sum_R256_V512_dim1_contiguousFalse_cpu,short,False,51.339726,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bool_dtype_twotorch.bool,short,False,0.927,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bool_dtype_twotorch.uint8,short,False,6.261,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bool_dtype_twotorch.int8,short,False,6.351,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bool_dtype_twotorch.int16,short,False,6.177,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bool_dtype_twotorch.int32,short,False,6.333,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bool_dtype_twotorch.int64,short,False,6.588,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bool_dtype_twotorch.float16,short,False,8.117,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bool_dtype_twotorch.bfloat16,short,False,9.358,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bool_dtype_twotorch.float32,short,False,7.844,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bool_dtype_twotorch.float64,short,False,8.097,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.uint8_dtype_twotorch.bool,short,False,6.159,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.uint8_dtype_twotorch.uint8,short,False,0.926,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.uint8_dtype_twotorch.int8,short,False,6.192,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.uint8_dtype_twotorch.int16,short,False,6.276,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.uint8_dtype_twotorch.int32,short,False,6.461,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.uint8_dtype_twotorch.int64,short,False,6.524,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.uint8_dtype_twotorch.float16,short,False,8.136,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.uint8_dtype_twotorch.bfloat16,short,False,6.854,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.uint8_dtype_twotorch.float32,short,False,6.446,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.uint8_dtype_twotorch.float64,short,False,6.829,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int8_dtype_twotorch.bool,short,False,6.088,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int8_dtype_twotorch.uint8,short,False,6.059,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int8_dtype_twotorch.int8,short,False,0.922,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int8_dtype_twotorch.int16,short,False,6.263,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int8_dtype_twotorch.int32,short,False,6.330,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int8_dtype_twotorch.int64,short,False,6.688,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int8_dtype_twotorch.float16,short,False,8.176,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int8_dtype_twotorch.bfloat16,short,False,6.959,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int8_dtype_twotorch.float32,short,False,6.430,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int8_dtype_twotorch.float64,short,False,6.818,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int16_dtype_twotorch.bool,short,False,6.350,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int16_dtype_twotorch.uint8,short,False,6.221,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int16_dtype_twotorch.int8,short,False,6.193,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int16_dtype_twotorch.int16,short,False,0.922,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int16_dtype_twotorch.int32,short,False,6.263,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int16_dtype_twotorch.int64,short,False,6.525,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int16_dtype_twotorch.float16,short,False,7.960,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int16_dtype_twotorch.bfloat16,short,False,6.801,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int16_dtype_twotorch.float32,short,False,6.594,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int16_dtype_twotorch.float64,short,False,7.089,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int32_dtype_twotorch.bool,short,False,6.498,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int32_dtype_twotorch.uint8,short,False,6.358,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int32_dtype_twotorch.int8,short,False,6.390,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int32_dtype_twotorch.int16,short,False,6.415,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int32_dtype_twotorch.int32,short,False,0.925,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int32_dtype_twotorch.int64,short,False,6.657,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int32_dtype_twotorch.float16,short,False,7.954,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int32_dtype_twotorch.bfloat16,short,False,6.930,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int32_dtype_twotorch.float32,short,False,6.737,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int32_dtype_twotorch.float64,short,False,6.948,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int64_dtype_twotorch.bool,short,False,6.757,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int64_dtype_twotorch.uint8,short,False,6.402,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int64_dtype_twotorch.int8,short,False,6.550,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int64_dtype_twotorch.int16,short,False,6.518,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int64_dtype_twotorch.int32,short,False,6.766,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int64_dtype_twotorch.int64,short,False,0.929,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int64_dtype_twotorch.float16,short,False,8.557,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int64_dtype_twotorch.bfloat16,short,False,9.045,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int64_dtype_twotorch.float32,short,False,7.672,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int64_dtype_twotorch.float64,short,False,7.276,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float16_dtype_twotorch.bool,short,False,6.414,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float16_dtype_twotorch.uint8,short,False,7.736,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float16_dtype_twotorch.int8,short,False,7.889,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float16_dtype_twotorch.int16,short,False,8.170,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float16_dtype_twotorch.int32,short,False,7.783,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float16_dtype_twotorch.int64,short,False,7.743,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float16_dtype_twotorch.float16,short,False,0.927,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float16_dtype_twotorch.bfloat16,short,False,7.018,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float16_dtype_twotorch.float32,short,False,8.428,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float16_dtype_twotorch.float64,short,False,6.767,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bfloat16_dtype_twotorch.bool,short,False,6.479,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bfloat16_dtype_twotorch.uint8,short,False,7.827,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bfloat16_dtype_twotorch.int8,short,False,6.450,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bfloat16_dtype_twotorch.int16,short,False,6.320,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bfloat16_dtype_twotorch.int32,short,False,6.385,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bfloat16_dtype_twotorch.int64,short,False,8.119,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bfloat16_dtype_twotorch.float16,short,False,8.063,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bfloat16_dtype_twotorch.bfloat16,short,False,0.925,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bfloat16_dtype_twotorch.float32,short,False,8.629,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bfloat16_dtype_twotorch.float64,short,False,6.638,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float32_dtype_twotorch.bool,short,False,6.425,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float32_dtype_twotorch.uint8,short,False,7.803,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float32_dtype_twotorch.int8,short,False,6.502,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float32_dtype_twotorch.int16,short,False,6.429,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float32_dtype_twotorch.int32,short,False,6.549,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float32_dtype_twotorch.int64,short,False,7.749,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float32_dtype_twotorch.float16,short,False,7.301,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float32_dtype_twotorch.bfloat16,short,False,7.682,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float32_dtype_twotorch.float32,short,False,0.930,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float32_dtype_twotorch.float64,short,False,6.738,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float64_dtype_twotorch.bool,short,False,6.798,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float64_dtype_twotorch.uint8,short,False,6.506,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float64_dtype_twotorch.int8,short,False,6.494,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float64_dtype_twotorch.int16,short,False,6.668,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float64_dtype_twotorch.int32,short,False,6.696,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float64_dtype_twotorch.int64,short,False,7.115,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float64_dtype_twotorch.float16,short,False,7.910,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float64_dtype_twotorch.bfloat16,short,False,7.410,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float64_dtype_twotorch.float32,short,False,6.868,0.000000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float64_dtype_twotorch.float64,short,False,0.924,0.000000
|
||||
PyTorch,FloatToHalfTensorConversionBenchmark,FloatToHalfTensorConversionBenchmark_M8_N16_cpu,short,False,7.040985,0.000000
|
||||
PyTorch,FloatToHalfTensorConversionBenchmark,FloatToHalfTensorConversionBenchmark_M8_N64_cpu,short,False,7.168604,0.000000
|
||||
PyTorch,FloatToHalfTensorConversionBenchmark,FloatToHalfTensorConversionBenchmark_M8_N128_cpu,short,False,7.434442,0.000000
|
||||
PyTorch,FloatToHalfTensorConversionBenchmark,FloatToHalfTensorConversionBenchmark_M16_N16_cpu,short,False,7.078318,0.000000
|
||||
PyTorch,FloatToHalfTensorConversionBenchmark,FloatToHalfTensorConversionBenchmark_M16_N64_cpu,short,False,7.426670,0.000000
|
||||
PyTorch,FloatToHalfTensorConversionBenchmark,FloatToHalfTensorConversionBenchmark_M16_N128_cpu,short,False,7.679027,0.000000
|
||||
PyTorch,FloatToHalfTensorConversionBenchmark,FloatToHalfTensorConversionBenchmark_M32_N16_cpu,short,False,7.281365,0.000000
|
||||
PyTorch,FloatToHalfTensorConversionBenchmark,FloatToHalfTensorConversionBenchmark_M32_N64_cpu,short,False,7.682783,0.000000
|
||||
PyTorch,FloatToHalfTensorConversionBenchmark,FloatToHalfTensorConversionBenchmark_M32_N128_cpu,short,False,8.381938,0.000000
|
||||
PyTorch,HalfToFloatTensorConversionBenchmark,HalfToFloatTensorConversionBenchmark_M8_N16_cpu,short,False,7.039854,0.000000
|
||||
PyTorch,HalfToFloatTensorConversionBenchmark,HalfToFloatTensorConversionBenchmark_M8_N64_cpu,short,False,7.399855,0.000000
|
||||
PyTorch,HalfToFloatTensorConversionBenchmark,HalfToFloatTensorConversionBenchmark_M8_N128_cpu,short,False,7.715193,0.000000
|
||||
PyTorch,HalfToFloatTensorConversionBenchmark,HalfToFloatTensorConversionBenchmark_M16_N16_cpu,short,False,7.255140,0.000000
|
||||
PyTorch,HalfToFloatTensorConversionBenchmark,HalfToFloatTensorConversionBenchmark_M16_N64_cpu,short,False,7.753522,0.000000
|
||||
PyTorch,HalfToFloatTensorConversionBenchmark,HalfToFloatTensorConversionBenchmark_M16_N128_cpu,short,False,8.364281,0.000000
|
||||
PyTorch,HalfToFloatTensorConversionBenchmark,HalfToFloatTensorConversionBenchmark_M32_N16_cpu,short,False,7.476377,0.000000
|
||||
PyTorch,HalfToFloatTensorConversionBenchmark,HalfToFloatTensorConversionBenchmark_M32_N64_cpu,short,False,8.458564,0.000000
|
||||
PyTorch,HalfToFloatTensorConversionBenchmark,HalfToFloatTensorConversionBenchmark_M32_N128_cpu,short,False,9.391939,0.000000
|
||||
PyTorch,addcmul,addcmul_M1_N2_cpu_dtypetorch.float32,short,False,4.461410,0.000000
|
||||
PyTorch,addcmul,addcmul_M1_N2_cpu_dtypetorch.bfloat16,short,False,4.560082,0.000000
|
||||
PyTorch,addcmul,addcmul_M32_N64_cpu_dtypetorch.float32,short,False,5.141248,0.000000
|
||||
|
||||
|
@ -4,84 +4,74 @@ import torch
|
||||
|
||||
|
||||
tensor_conversion_short_configs = op_bench.cross_product_configs(
|
||||
M=[32],
|
||||
N=[128],
|
||||
M=(
|
||||
8,
|
||||
16,
|
||||
32,
|
||||
),
|
||||
N=(
|
||||
16,
|
||||
64,
|
||||
128,
|
||||
),
|
||||
device=["cpu", "cuda"],
|
||||
dtype_one=[
|
||||
torch.bool,
|
||||
torch.uint8,
|
||||
torch.int8,
|
||||
torch.int16,
|
||||
torch.int32,
|
||||
torch.int64,
|
||||
torch.half,
|
||||
torch.bfloat16,
|
||||
torch.float,
|
||||
torch.double,
|
||||
],
|
||||
dtype_two=[
|
||||
torch.bool,
|
||||
torch.uint8,
|
||||
torch.int8,
|
||||
torch.int16,
|
||||
torch.int32,
|
||||
torch.int64,
|
||||
torch.half,
|
||||
torch.bfloat16,
|
||||
torch.float,
|
||||
torch.double,
|
||||
],
|
||||
tags=["short"],
|
||||
)
|
||||
|
||||
tensor_conversion_long_configs = op_bench.cross_product_configs(
|
||||
M=[1024],
|
||||
N=[1024],
|
||||
M=(
|
||||
64,
|
||||
128,
|
||||
256,
|
||||
512,
|
||||
),
|
||||
N=(
|
||||
256,
|
||||
512,
|
||||
1024,
|
||||
2048,
|
||||
),
|
||||
device=["cpu", "cuda"],
|
||||
dtype_one=[
|
||||
torch.bool,
|
||||
torch.uint8,
|
||||
torch.int8,
|
||||
torch.int16,
|
||||
torch.int32,
|
||||
torch.int64,
|
||||
torch.half,
|
||||
torch.bfloat16,
|
||||
torch.float,
|
||||
torch.double,
|
||||
],
|
||||
dtype_two=[
|
||||
torch.bool,
|
||||
torch.uint8,
|
||||
torch.int8,
|
||||
torch.int16,
|
||||
torch.int32,
|
||||
torch.int64,
|
||||
torch.half,
|
||||
torch.bfloat16,
|
||||
torch.float,
|
||||
torch.double,
|
||||
],
|
||||
tags=["long"],
|
||||
)
|
||||
|
||||
|
||||
class TensorConversionBenchmark(op_bench.TorchBenchmarkBase):
|
||||
def init(self, M, N, dtype_one, dtype_two, device):
|
||||
class FloatToHalfTensorConversionBenchmark(op_bench.TorchBenchmarkBase):
|
||||
def init(self, M, N, device):
|
||||
self.inputs = {
|
||||
"input": torch.rand(
|
||||
M, N, device=device, requires_grad=False, dtype=torch.float
|
||||
).to(dtype=dtype_one)
|
||||
)
|
||||
}
|
||||
self.dtype_one = dtype_one
|
||||
self.dtype_two = dtype_two
|
||||
|
||||
def forward(self, input):
|
||||
return input.to(dtype=self.dtype_two)
|
||||
return input.to(torch.half)
|
||||
|
||||
|
||||
op_bench.generate_pt_test(tensor_conversion_short_configs, TensorConversionBenchmark)
|
||||
op_bench.generate_pt_test(tensor_conversion_long_configs, TensorConversionBenchmark)
|
||||
class HalfToFloatTensorConversionBenchmark(op_bench.TorchBenchmarkBase):
|
||||
def init(self, M, N, device):
|
||||
self.inputs = {
|
||||
"input": torch.rand(
|
||||
M, N, device=device, requires_grad=False, dtype=torch.half
|
||||
)
|
||||
}
|
||||
|
||||
def forward(self, input):
|
||||
return input.to(torch.float)
|
||||
|
||||
|
||||
op_bench.generate_pt_test(
|
||||
tensor_conversion_short_configs, FloatToHalfTensorConversionBenchmark
|
||||
)
|
||||
op_bench.generate_pt_test(
|
||||
tensor_conversion_long_configs, FloatToHalfTensorConversionBenchmark
|
||||
)
|
||||
op_bench.generate_pt_test(
|
||||
tensor_conversion_short_configs, HalfToFloatTensorConversionBenchmark
|
||||
)
|
||||
op_bench.generate_pt_test(
|
||||
tensor_conversion_long_configs, HalfToFloatTensorConversionBenchmark
|
||||
)
|
||||
|
||||
if __name__ == "__main__":
|
||||
op_bench.benchmark_runner.main()
|
||||
|
||||
@ -349,106 +349,24 @@ PyTorch,sum,sum_R256_V512_dim0_contiguousTrue_cpu,short,FALSE,12.5841
|
||||
PyTorch,sum,sum_R256_V512_dim0_contiguousFALSE_cpu,short,FALSE,20.8765
|
||||
PyTorch,sum,sum_R256_V512_dim1_contiguousTrue_cpu,short,FALSE,15.4414
|
||||
PyTorch,sum,sum_R256_V512_dim1_contiguousFALSE_cpu,short,FALSE,15.3287
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bool_dtype_twotorch.bool,short,False,0.797
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bool_dtype_twotorch.uint8,short,False,6.071
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bool_dtype_twotorch.int8,short,False,6.031
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bool_dtype_twotorch.int16,short,False,6.243
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bool_dtype_twotorch.int32,short,False,7.231
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bool_dtype_twotorch.int64,short,False,7.791
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bool_dtype_twotorch.float16,short,False,12.661
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bool_dtype_twotorch.bfloat16,short,False,11.225
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bool_dtype_twotorch.float32,short,False,9.772
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bool_dtype_twotorch.float64,short,False,9.872
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.uint8_dtype_twotorch.bool,short,False,6.033
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.uint8_dtype_twotorch.uint8,short,False,0.781
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.uint8_dtype_twotorch.int8,short,False,6.060
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.uint8_dtype_twotorch.int16,short,False,6.180
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.uint8_dtype_twotorch.int32,short,False,7.258
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.uint8_dtype_twotorch.int64,short,False,7.758
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.uint8_dtype_twotorch.float16,short,False,10.504
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.uint8_dtype_twotorch.bfloat16,short,False,6.749
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.uint8_dtype_twotorch.float32,short,False,7.679
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.uint8_dtype_twotorch.float64,short,False,7.797
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int8_dtype_twotorch.bool,short,False,6.019
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int8_dtype_twotorch.uint8,short,False,6.079
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int8_dtype_twotorch.int8,short,False,0.785
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int8_dtype_twotorch.int16,short,False,6.188
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int8_dtype_twotorch.int32,short,False,7.288
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int8_dtype_twotorch.int64,short,False,7.770
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int8_dtype_twotorch.float16,short,False,10.466
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int8_dtype_twotorch.bfloat16,short,False,6.676
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int8_dtype_twotorch.float32,short,False,7.736
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int8_dtype_twotorch.float64,short,False,7.780
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int16_dtype_twotorch.bool,short,False,6.130
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int16_dtype_twotorch.uint8,short,False,6.221
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int16_dtype_twotorch.int8,short,False,6.101
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int16_dtype_twotorch.int16,short,False,0.791
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int16_dtype_twotorch.int32,short,False,6.254
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int16_dtype_twotorch.int64,short,False,7.733
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int16_dtype_twotorch.float16,short,False,10.562
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int16_dtype_twotorch.bfloat16,short,False,6.704
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int16_dtype_twotorch.float32,short,False,7.819
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int16_dtype_twotorch.float64,short,False,8.276
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int32_dtype_twotorch.bool,short,False,6.361
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int32_dtype_twotorch.uint8,short,False,6.364
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int32_dtype_twotorch.int8,short,False,6.309
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int32_dtype_twotorch.int16,short,False,6.362
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int32_dtype_twotorch.int32,short,False,0.791
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int32_dtype_twotorch.int64,short,False,7.746
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int32_dtype_twotorch.float16,short,False,9.462
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int32_dtype_twotorch.bfloat16,short,False,6.678
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int32_dtype_twotorch.float32,short,False,7.827
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int32_dtype_twotorch.float64,short,False,8.200
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int64_dtype_twotorch.bool,short,False,6.925
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int64_dtype_twotorch.uint8,short,False,6.947
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int64_dtype_twotorch.int8,short,False,6.962
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int64_dtype_twotorch.int16,short,False,6.906
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int64_dtype_twotorch.int32,short,False,7.664
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int64_dtype_twotorch.int64,short,False,0.782
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int64_dtype_twotorch.float16,short,False,10.528
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int64_dtype_twotorch.bfloat16,short,False,10.123
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int64_dtype_twotorch.float32,short,False,9.234
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.int64_dtype_twotorch.float64,short,False,8.694
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float16_dtype_twotorch.bool,short,False,12.653
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float16_dtype_twotorch.uint8,short,False,9.348
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float16_dtype_twotorch.int8,short,False,8.774
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float16_dtype_twotorch.int16,short,False,9.063
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float16_dtype_twotorch.int32,short,False,10.012
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float16_dtype_twotorch.int64,short,False,13.641
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float16_dtype_twotorch.float16,short,False,0.788
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float16_dtype_twotorch.bfloat16,short,False,13.757
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float16_dtype_twotorch.float32,short,False,7.170
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float16_dtype_twotorch.float64,short,False,12.511
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bfloat16_dtype_twotorch.bool,short,False,6.516
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bfloat16_dtype_twotorch.uint8,short,False,8.539
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bfloat16_dtype_twotorch.int8,short,False,6.483
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bfloat16_dtype_twotorch.int16,short,False,6.468
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bfloat16_dtype_twotorch.int32,short,False,7.752
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bfloat16_dtype_twotorch.int64,short,False,9.868
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bfloat16_dtype_twotorch.float16,short,False,10.556
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bfloat16_dtype_twotorch.bfloat16,short,False,0.792
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bfloat16_dtype_twotorch.float32,short,False,7.577
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.bfloat16_dtype_twotorch.float64,short,False,8.267
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float32_dtype_twotorch.bool,short,False,6.819
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float32_dtype_twotorch.uint8,short,False,7.715
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float32_dtype_twotorch.int8,short,False,6.754
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float32_dtype_twotorch.int16,short,False,6.825
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float32_dtype_twotorch.int32,short,False,7.790
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float32_dtype_twotorch.int64,short,False,9.219
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float32_dtype_twotorch.float16,short,False,5.977
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float32_dtype_twotorch.bfloat16,short,False,7.069
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float32_dtype_twotorch.float32,short,False,0.794
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float32_dtype_twotorch.float64,short,False,8.301
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float64_dtype_twotorch.bool,short,False,7.401
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float64_dtype_twotorch.uint8,short,False,7.843
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float64_dtype_twotorch.int8,short,False,7.117
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float64_dtype_twotorch.int16,short,False,7.170
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float64_dtype_twotorch.int32,short,False,8.000
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float64_dtype_twotorch.int64,short,False,9.284
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float64_dtype_twotorch.float16,short,False,7.179
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float64_dtype_twotorch.bfloat16,short,False,7.645
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float64_dtype_twotorch.float32,short,False,7.988
|
||||
PyTorch,TensorConversionBenchmark,TensorConversionBenchmark_M32_N128_cpu_dtype_onetorch.float64_dtype_twotorch.float64,short,False,0.792
|
||||
PyTorch,FloatToHalfTensorConversionBenchmark,FloatToHalfTensorConversionBenchmark_M8_N16_cpu,short,FALSE,5.0499
|
||||
PyTorch,FloatToHalfTensorConversionBenchmark,FloatToHalfTensorConversionBenchmark_M8_N64_cpu,short,FALSE,5.3229
|
||||
PyTorch,FloatToHalfTensorConversionBenchmark,FloatToHalfTensorConversionBenchmark_M8_N128_cpu,short,FALSE,5.4418
|
||||
PyTorch,FloatToHalfTensorConversionBenchmark,FloatToHalfTensorConversionBenchmark_M16_N16_cpu,short,FALSE,5.0868
|
||||
PyTorch,FloatToHalfTensorConversionBenchmark,FloatToHalfTensorConversionBenchmark_M16_N64_cpu,short,FALSE,5.4495
|
||||
PyTorch,FloatToHalfTensorConversionBenchmark,FloatToHalfTensorConversionBenchmark_M16_N128_cpu,short,FALSE,5.5578
|
||||
PyTorch,FloatToHalfTensorConversionBenchmark,FloatToHalfTensorConversionBenchmark_M32_N16_cpu,short,FALSE,5.2631
|
||||
PyTorch,FloatToHalfTensorConversionBenchmark,FloatToHalfTensorConversionBenchmark_M32_N64_cpu,short,FALSE,5.5646
|
||||
PyTorch,FloatToHalfTensorConversionBenchmark,FloatToHalfTensorConversionBenchmark_M32_N128_cpu,short,FALSE,5.7898
|
||||
PyTorch,HalfToFloatTensorConversionBenchmark,HalfToFloatTensorConversionBenchmark_M8_N16_cpu,short,FALSE,5.0228
|
||||
PyTorch,HalfToFloatTensorConversionBenchmark,HalfToFloatTensorConversionBenchmark_M8_N64_cpu,short,FALSE,5.3692
|
||||
PyTorch,HalfToFloatTensorConversionBenchmark,HalfToFloatTensorConversionBenchmark_M8_N128_cpu,short,FALSE,5.4006
|
||||
PyTorch,HalfToFloatTensorConversionBenchmark,HalfToFloatTensorConversionBenchmark_M16_N16_cpu,short,FALSE,5.1107
|
||||
PyTorch,HalfToFloatTensorConversionBenchmark,HalfToFloatTensorConversionBenchmark_M16_N64_cpu,short,FALSE,5.4119
|
||||
PyTorch,HalfToFloatTensorConversionBenchmark,HalfToFloatTensorConversionBenchmark_M16_N128_cpu,short,FALSE,5.5583
|
||||
PyTorch,HalfToFloatTensorConversionBenchmark,HalfToFloatTensorConversionBenchmark_M32_N16_cpu,short,FALSE,5.3818
|
||||
PyTorch,HalfToFloatTensorConversionBenchmark,HalfToFloatTensorConversionBenchmark_M32_N64_cpu,short,FALSE,5.5742
|
||||
PyTorch,HalfToFloatTensorConversionBenchmark,HalfToFloatTensorConversionBenchmark_M32_N128_cpu,short,FALSE,6.8414
|
||||
PyTorch,relu,"relu_dims(3,4,5)_contigFALSE_inplaceFALSE_dtypetorch.quint8",short,FALSE,9.4657
|
||||
PyTorch,relu,"relu_dims(3,4,5)_contigFALSE_inplaceFALSE_dtypetorch.qint8",short,FALSE,9.4625
|
||||
PyTorch,relu,"relu_dims(3,4,5)_contigFALSE_inplaceFALSE_dtypetorch.qint32",short,FALSE,9.4165
|
||||
|
||||
|
@ -52,18 +52,19 @@ def test_sparse_coo_and_csr(m, n, k, nnz, test_count):
|
||||
start.record()
|
||||
coo.matmul(mat)
|
||||
stop.record()
|
||||
|
||||
times.append(start.elapsed_time(stop))
|
||||
|
||||
coo_mean_time = sum(times) / len(times)
|
||||
coo_mean_time = sum(times) / len(times)
|
||||
|
||||
times = []
|
||||
for _ in range(test_count):
|
||||
start.record()
|
||||
csr.matmul(mat)
|
||||
stop.record()
|
||||
times.append(start.elapsed_time(stop))
|
||||
times = []
|
||||
for _ in range(test_count):
|
||||
start.record()
|
||||
csr.matmul(mat)
|
||||
stop.record()
|
||||
times.append(start.elapsed_time(stop))
|
||||
|
||||
csr_mean_time = sum(times) / len(times)
|
||||
csr_mean_time = sum(times) / len(times)
|
||||
|
||||
return coo_mean_time, csr_mean_time
|
||||
|
||||
@ -83,13 +84,10 @@ if __name__ == "__main__":
|
||||
|
||||
if args.outfile == "stdout":
|
||||
outfile = sys.stdout
|
||||
need_close = False
|
||||
elif args.outfile == "stderr":
|
||||
outfile = sys.stderr
|
||||
need_close = False
|
||||
else:
|
||||
outfile = open(args.outfile, "a")
|
||||
need_close = True
|
||||
|
||||
test_count = args.test_count
|
||||
m = args.m
|
||||
@ -150,5 +148,3 @@ if __name__ == "__main__":
|
||||
time,
|
||||
file=outfile,
|
||||
)
|
||||
if need_close:
|
||||
outfile.close()
|
||||
|
||||
@ -82,13 +82,10 @@ if __name__ == "__main__":
|
||||
|
||||
if args.outfile == "stdout":
|
||||
outfile = sys.stdout
|
||||
need_close = False
|
||||
elif args.outfile == "stderr":
|
||||
outfile = sys.stderr
|
||||
need_close = False
|
||||
else:
|
||||
outfile = open(args.outfile, "a")
|
||||
need_close = True
|
||||
|
||||
test_count = args.test_count
|
||||
m = args.m
|
||||
@ -135,5 +132,3 @@ if __name__ == "__main__":
|
||||
time_csr,
|
||||
file=outfile,
|
||||
)
|
||||
if need_close:
|
||||
outfile.close()
|
||||
|
||||
Some files were not shown because too many files have changed in this diff Show More
Reference in New Issue
Block a user