Skip to main content

Tooling for ML in LLVM

Project description

Infrastructure for MLGO - a Machine Learning Guided Compiler Optimizations Framework.

MLGO is a framework for integrating ML techniques systematically in LLVM. It replaces human-crafted optimization heuristics in LLVM with machine learned models. The MLGO framework currently supports two optimizations:

  1. inlining-for-size(LLVM RFC);
  2. register-allocation-for-performance(LLVM RFC)

The compiler components are both available in the main LLVM repository. This repository contains the training infrastructure and related tools for MLGO.

We currently use two different ML algorithms: Policy Gradient and Evolution Strategies to train policies. Currently, this repository only support Policy Gradient training. The release of Evolution Strategies training is on our roadmap.

Check out this demo for an end-to-end demonstration of how to train your own inlining-for-size policy from the scratch with Policy Gradient, or check out this demo for a demonstration of how to train your own regalloc-for-performance policy.

For more details about MLGO, please refer to our paper MLGO: a Machine Learning Guided Compiler Optimizations Framework.

For more details about how to contribute to the project, please refer to contributions.

Pretrained models

We occasionally release pretrained models that may be used as-is with LLVM. Models are released as github releases, and are named as [task]-[major-version].[minor-version].The versions are semantic: the major version corresponds to breaking changes on the LLVM/compiler side, and the minor version corresponds to model updates that are independent of the compiler.

When building LLVM, there is a flag -DLLVM_INLINER_MODEL_PATH which you may set to the path to your inlining model. If the path is set to download, then cmake will download the most recent (compatible) model from github to use. Other values for the flag could be:

# Model is in /tmp/model, i.e. there is a file /tmp/model/saved_model.pb along
# with the rest of the tensorflow saved_model files produced from training.
-DLLVM_INLINER_MODEL_PATH=/tmp/model

# Download the most recent compatible model
-DLLVM_INLINER_MODEL_PATH=download

Prerequisites

Currently, the assumptions for the system are:

  • Recent Ubuntu distro, e.g. 20.04
  • python 3.8.x/3.9.x/3.10.x
  • for local training, which is currently the only supported mode, we recommend a high-performance workstation (e.g. 96 hardware threads).

Training assumes a clang build with ML 'development-mode'. Please refer to:

The model training - specific prerequisites are:

Pipenv:

pip3 install pipenv

The actual dependencies:

pipenv sync --system

Note that the above command will only work from the root of the repository since it needs to have Pipfile.lock in the working directory at the time of execution.

If you plan on doing development work, make sure you grab the development and CI categories of packages as well:

pipenv sync --system --categories "dev-packages ci"

Optionally, to run tests (run_tests.sh), you also need:

sudo apt-get install virtualenv

Note that the same tensorflow package is also needed for building the 'release' mode for LLVM.

Docs

An end-to-end demo using Fuchsia as a codebase from which we extract a corpus and train a model.

How to add a feature guide. Extensibility model.

Project details


Release history Release notifications | RSS feed

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

ml-compiler-opt-0.0.1.dev202308300006.tar.gz (144.7 kB view details)

Uploaded Source

Built Distribution

File details

Details for the file ml-compiler-opt-0.0.1.dev202308300006.tar.gz.

File metadata

File hashes

Hashes for ml-compiler-opt-0.0.1.dev202308300006.tar.gz
Algorithm Hash digest
SHA256 0ae7f374695172a0bcfa01b5bfdd24863ad7706b6a769aa132f31b67203883b0
MD5 e6d18eab1a17505a185ea7cdbdca5cd2
BLAKE2b-256 cdc5428fbb08a830763c6f854a8559c67d238dcf9a5c12603e10a9a0822d0140

See more details on using hashes here.

File details

Details for the file ml_compiler_opt-0.0.1.dev202308300006-py3-none-any.whl.

File metadata

File hashes

Hashes for ml_compiler_opt-0.0.1.dev202308300006-py3-none-any.whl
Algorithm Hash digest
SHA256 4113c1a62fa0346e9759939aa2e31722d5f932764bb9244fd42293cd58ec1919
MD5 917c0a84575afeb4413ef94e6e8771e0
BLAKE2b-256 46b1b5c637bb5778f2c7cedeb266a383f0c83106ca4ec01c3674098b1dbda15d

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page