explosion / cython-blis

💥 Fast matrix-multiplication as a self-contained Python library – no system dependencies!
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blas blas-libraries blis cython linear-algebra matrix-multiplication neural-network neural-networks numpy openblas

Cython BLIS: Fast BLAS-like operations from Python and Cython, without the tears

This repository provides the Blis linear algebra routines as a self-contained Python C-extension.

Currently, we only supports single-threaded execution, as this is actually best for our workloads (ML inference).

tests pypi Version conda Python wheels

Installation

You can install the package via pip, first making sure that pip, setuptools, and wheel are up-to-date:

pip install -U pip setuptools wheel
pip install blis

Wheels should be available, so installation should be fast. If you want to install from source and you're on Windows, you'll need to install LLVM.

Building BLIS for alternative architectures

The provided wheels should work on x86_64 and osx/arm64 architectures. Unfortunately we do not currently know a way to provide different wheels for alternative architectures, and we cannot provide a single binary that works everywhere. So if the wheel doesn't work for your CPU, you'll need to specify source distribution, and tell Blis your CPU architecture using the BLIS_ARCH environment variable.

a) Install with auto-detected CPU support

pip install spacy --no-binary blis

b) Install using an existing configuration

Provide an architecture from the supported configurations.

BLIS_ARCH="power9" pip install spacy --no-binary blis

c) Install with generic arch support

⚠️ generic is not optimized for any particular CPU and is extremely slow. Only recommended for testing!

BLIS_ARCH="generic" pip install spacy --no-binary blis

d) Build specific support

In order to compile Blis, cython-blis bundles makefile scripts for specific architectures, that are compiled by running the Blis build system and logging the commands. We do not yet have logs for every architecture, as there are some architectures we have not had access to.

See here for list of architectures. For example, here's how to build support for the Intel architecture knl:

git clone https://github.com/explosion/cython-blis && cd cython-blis
git pull && git submodule init && git submodule update && git submodule status
python3 -m venv venv
source venv/bin/activate
pip install -U pip setuptools wheel
pip install -r requirements.txt
./bin/generate-make-jsonl linux knl
BLIS_ARCH="knl" python setup.py build_ext --inplace
BLIS_ARCH="knl" python setup.py bdist_wheel

Fingers crossed, this will build you a wheel that supports your platform. You could then submit a PR with the blis/_src/make/linux-knl.jsonl and blis/_src/include/linux-knl/blis.h files so that you can run:

BLIS_ARCH="knl" pip install --no-binary=blis

Usage

Two APIs are provided: a high-level Python API, and direct Cython access, which provides fused-type, nogil Cython bindings to the underlying Blis linear algebra library. Fused types are a simple template mechanism, allowing just a touch of compile-time generic programming:

cimport blis.cy
A = <float*>calloc(nN * nI, sizeof(float))
B = <float*>calloc(nO * nI, sizeof(float))
C = <float*>calloc(nr_b0 * nr_b1, sizeof(float))
blis.cy.gemm(blis.cy.NO_TRANSPOSE, blis.cy.NO_TRANSPOSE,
             nO, nI, nN,
             1.0, A, nI, 1, B, nO, 1,
             1.0, C, nO, 1)

Bindings have been added as we've needed them. Please submit pull requests if the library is missing some functions you require.

Development

To build the source package, you should run the following command:

./bin/update-vendored-source

This populates the blis/_src folder for the various architectures, using the flame-blis submodule.

Updating the build files

In order to compile the Blis sources, we use jsonl files that provide the explicit compiler flags. We build these jsonl files by running Blis's build system, and then converting the log. This avoids us having to replicate the build system within Python: we just use the jsonl to make a bunch of subprocess calls. To support a new OS/architecture combination, we have to provide the jsonl file and the header.

Linux

The Linux build files need to be produced from within the manylinux2014 Docker container, so that they will be compatible with the wheel building process.

First, install docker. Then do the following to start the container:

sudo docker run -it quay.io/pypa/manylinux2014_x86_64:latest

Once within the container, the following commands should check out the repo and build the jsonl files for the generic arch:

mkdir /usr/local/repos
cd /usr/local/repos
git clone https://github.com/explosion/cython-blis && cd cython-blis
git pull && git submodule init && git submodule update && git submodule
status
/opt/python/cp36-cp36m/bin/python -m venv env3.6
source env3.6/bin/activate
pip install -r requirements.txt
./bin/generate-make-jsonl linux generic --export
BLIS_ARCH=generic python setup.py build_ext --inplace
# N.B.: don't copy to /tmp, docker cp doesn't work from there.
cp blis/_src/include/linux-generic/blis.h /linux-generic-blis.h
cp blis/_src/make/linux-generic.jsonl /

Then from a new terminal, retrieve the two files we need out of the container:

sudo docker ps -l # Get the container ID
# When I'm in Vagrant, I need to go via cat -- but then I end up with dummy
# lines at the top and bottom. Sigh. If you don't have that problem and
# sudo docker cp just works, just copy the file.
sudo docker cp aa9d42588791:/linux-generic-blis.h - | cat > linux-generic-blis.h
sudo docker cp aa9d42588791:/linux-generic.jsonl - | cat > linux-generic.jsonl