Tvm
Open Machine Learning Compiler Framework
Open Machine Learning Compiler Framework ============================================== [Documentation](https://tvm.apache.org/docs) | [Contributors](CONTRIBUTORS.md) | [Community](https://tvm.apache.org/community) | [Release Notes](NEWS.md) The project is written primarily in Python, distributed under the Apache License 2.0 license, first published in 2016. It has gained significant community traction with 13,402 stars and 3,882 forks on GitHub. Key topics include: compiler, deep-learning, gpu, javascript, machine-learning.
<img src=https://raw.githubusercontent.com/apache/tvm-site/main/images/logo/tvm-logo-small.png width=128/> Open Machine Learning Compiler Framework
Documentation |
Contributors |
Community |
Release Notes
Apache TVM is an open machine learning compilation framework,
following the following principles:
- Python-first development that enables quick customization of machine learning compiler pipelines.
- Universal deployment to bring models into minimum deployable modules.
License
TVM is licensed under the Apache-2.0 license.
Getting Started
Check out the TVM Documentation site for installation instructions, tutorials, examples, and more.
The Getting Started with TVM tutorial is a great
place to start.
Contribute to TVM
TVM adopts the Apache committer model. We aim to create an open-source project maintained and owned by the community.
Check out the Contributor Guide.
History and Acknowledgement
TVM started as a research project for deep learning compilation.
The first version of the project benefited a lot from the following projects:
- Halide: Part of TVM's TIR and arithmetic simplification module
originates from Halide. We also learned and adapted some parts of the lowering pipeline from Halide. - Loopy: use of integer set analysis and its loop transformation primitives.
- Theano: the design inspiration of symbolic scan operator for recurrence.
Since then, the project has gone through several rounds of redesigns.
The current design is also drastically different from the initial design, following the
development trend of the ML compiler community.
The most recent version focuses on a cross-level design with TensorIR as the tensor-level representation
and Relax as the graph-level representation and Python-first transformations.
The project's current design goal is to make the ML compiler accessible by enabling most
transformations to be customizable in Python and bringing a cross-level representation that can jointly
optimize computational graphs, tensor programs, and libraries. The project is also a foundation
infra for building Python-first vertical compilers for domains, such as LLMs.
Contributors
Showing top 12 contributors by commit count.