FBGEMM (Facebook GEneral Matrix Multiplication) is a low-precision, high-performance matrix-matrix multiplications and convolution library for server-side inference.
The library provides efficient low-precision general matrix multiplication for small batch sizes and support for accuracy-loss minimizing techniques such as row-wise quantization and outlier-aware quantization. FBGEMM also exploits fusion opportunities in order to overcome the unique challenges of matrix multiplication at lower precision with bandwidth-bound operations.
FBGEMM is used as a backend of Caffe2 and PyTorch quantized operators for x86 machines:
- Caffe2: https://github.com/pytorch/pytorch/tree/master/caffe2/quantization/server
- PyTorch: https://github.com/pytorch/pytorch/tree/master/aten/src/ATen/native/quantized/cpu
The general instructions for building with Cmake are as follows:
# Clone the repo
git clone --recursive https://github.com/pytorch/FBGEMM.git
cd FBGEMM
# Pull down the submodules
git submodule sync
git submodule update --init --recursive
# Create a build directory
mkdir build
cd build
# Set up the build
cmake -DUSE_SANITIZER=address -DFBGEMM_LIBRARY_TYPE=shared -DPYTHON_EXECUTABLE=/usr/bin/python3 ..
# Run the build
make -j VERBOSE=1
# Run all tests
make test
# Install the package
make install
As of time of writing, compilation of FBGEMM on GCC 12 will fail due to a known compiler regression. To work around the issue, simply add the following exports prior to running CMake:
export CFLAGS+=" -Wno-error=maybe-uninitialized -Wno-error=uninitialized -Wno-error=restrict"
export CXXFLAGS+=" -Wno-error=maybe-uninitialized -Wno-error=uninitialized -Wno-error=restrict"
Please see GitHub issues 77939, 1094, and 1666 for more details.
The tests in the test/
directory and benchmarks in the bench/
directory are
some great examples of using FBGEMM. For instance, the SpMDMTest
test in
test/PackedRequantizeAcc16Test.cc
shows how to combine row offset calculations
with packing of A (PackAWithRowOffset
), how to pack B matrix (PackBMatrix
)
and construct output pipeline (sparse_matrix*dense_matrix --> requantization --> nop)
fused with inner GEMM macro kernel.
FBGEMM requires gcc 8+ and a CPU with support for AVX2 instruction set or higher. It has been tested on Mac OS X and Linux.
With inner kernels, FBGEMM takes a “one size doesn't fit all” approach, so the implementation dynamically generates efficient matrix-shape specific vectorized code using a third-party library called asmjit. asmjit is required to build FBGEMM.
FBGEMM detects CPU instruction set support at runtime using cpuinfo library and dispatches optimized kernels for the detected instruction set. Therefore, cpuinfo is required to detect CPU type.
googletest is required to build and run FBGEMM's tests. googletest is not required if you don't want to run FBGEMM tests. By default, building of tests is on. Turn it off by setting FBGEMM_BUILD_TESTS to off.
You can download asmjit, cpuinfo, googletest and set ASMJIT_SRC_DIR, CPUINFO_SRC_DIR, GOOGLETEST_SOURCE_DIR respectively for cmake to find these libraries. If any of these variables is not set, cmake will build the git submodules found in the third_party directory.
FBGEMM, in general, does not have any dependency on Intel MKL. However, for performance comparison, some benchmarks use MKL functions. If MKL is found or MKL path is provided with INTEL_MKL_DIR benchmarks are built with MKL and performance numbers are reported for MKL functions as well. However, if MKL is not found, the benchmarks are not built.
For a high-level overview, design philosophy and brief descriptions of various parts of FBGEMM please see our blog post.
- New Features and Recent Improvements (January, 2020)
We have extensively used comments in our source files. The best and up-do-date documentation is available in the source files.
You can also turn on the option to generate the documentation (using Doxygen
and Sphinx by setting the -DFBGEMM_BUILD_DOCS=ON
flag when invoking CMake.
For those looking for the appropriate article to cite regarding FBGEMM, we recommend citing our paper:
@article{fbgemm,
title={FBGEMM: Enabling High-Performance Low-Precision Deep Learning Inference},
author={Khudia, Daya and Huang, Jianyu and Basu, Protonu and Deng, Summer and Liu, Haixin and Park, Jongsoo and Smelyanskiy, Mikhail},
journal={arXiv preprint arXiv:2101.05615},
year={2021}
}
For questions, support, news updates, or feature requests, please feel free to:
- File a ticket in GitHub Issues
- Post a discussion in GitHub Discussions
- Reach out to us on the
#fbgemm
channel in PyTorch Slack
For contributions, please see the CONTRIBUTING
file for
ways to help out.
FBGEMM is BSD licensed, as found in the LICENSE
file.