mirror of
https://github.com/zebrajr/pytorch.git
synced 2025-12-06 12:20:52 +01:00
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/72865
Fixes #72636
Test Plan: Imported from OSS
Reviewed By: zou3519
Differential Revision: D34286183
Pulled By: cpuhrsch
fbshipit-source-id: 9cf81bfed6ba8c82593f6a1d9e0b20d0a083310d
(cherry picked from commit
|
||
|---|---|---|
| .. | ||
| amd_build | ||
| autograd | ||
| clang_format_hash | ||
| code_analyzer | ||
| code_coverage | ||
| codegen | ||
| config | ||
| coverage_plugins_package | ||
| fast_nvcc | ||
| gdb | ||
| iwyu | ||
| jit | ||
| linter | ||
| lite_interpreter | ||
| lldb | ||
| pyi | ||
| rules | ||
| setup_helpers | ||
| shared | ||
| stats | ||
| test | ||
| testing | ||
| __init__.py | ||
| actions_local_runner.py | ||
| bazel.bzl | ||
| build_libtorch.py | ||
| build_pytorch_libs.py | ||
| build_variables.bzl | ||
| download_mnist.py | ||
| extract_scripts.py | ||
| gen_flatbuffers.sh | ||
| generate_torch_version.py | ||
| generated_dirs.txt | ||
| git_add_generated_dirs.sh | ||
| git_reset_generated_dirs.sh | ||
| git-pre-commit | ||
| nightly.py | ||
| nvcc_fix_deps.py | ||
| pytorch.version | ||
| README.md | ||
| render_junit.py | ||
| update_masked_docs.py | ||
| vscode_settings.py | ||
This folder contains a number of scripts which are used as
part of the PyTorch build process. This directory also doubles
as a Python module hierarchy (thus the __init__.py).
Overview
Modern infrastructure:
- autograd - Code generation for autograd. This includes definitions of all our derivatives.
- jit - Code generation for JIT
- shared - Generic infrastructure that scripts in
tools may find useful.
- module_loader.py - Makes it easier to import arbitrary Python files in a script, without having to add them to the PYTHONPATH first.
Build system pieces:
- setup_helpers - Helper code for searching for third-party dependencies on the user system.
- build_pytorch_libs.py - cross-platform script that builds all of the constituent libraries of PyTorch, but not the PyTorch Python extension itself.
- build_libtorch.py - Script for building libtorch, a standalone C++ library without Python support. This build script is tested in CI.
- fast_nvcc - Mostly-transparent wrapper over nvcc that
parallelizes compilation when used to build CUDA files for multiple
architectures at once.
- fast_nvcc.py - Python script, entrypoint to the fast nvcc wrapper.
Developer tools which you might find useful:
- linter/clang_tidy - Script for running clang-tidy on lines of your script which you changed.
- extract_scripts.py - Extract scripts from
.github/workflows/*.ymlinto a specified dir, on which linters such as linter/run_shellcheck.sh can be run. Assumes that everyrunscript hasshell: bashunless a different shell is explicitly listed on that specific step (sodefaultsdoesn't currently work), but also has some rules for other situations such as actions/github-script. Exits with nonzero status if any of the extracted scripts contain GitHub Actions expressions:${{<expression> }} - git_add_generated_dirs.sh and git_reset_generated_dirs.sh - Use this to force add generated files to your Git index, so that you can conveniently run diffs on them when working on code-generation. (See also generated_dirs.txt which specifies the list of directories with generated files.)
- linter/mypy_wrapper.py - Run
mypyon a single file using the appropriate subset of ourmypy*.iniconfigs. - linter/run_shellcheck.sh - Find
*.shfiles (recursively) in the directories specified as arguments, and run ShellCheck on all of them. - stats/test_history.py - Query S3 to display history of a single test across multiple jobs over time.
- linter/trailing_newlines.py - Take names of UTF-8 files from stdin, print names of nonempty files whose contents don't end in exactly one trailing newline, exit with status 1 if no output printed or 0 if some filenames were printed.
- linter/translate_annotations.py - Read Flake8 or
clang-tidy warnings (according to a
--regex) from a--file, convert to the JSON format accepted by pytorch/add-annotations-github-action, and translate line numbers fromHEADback in time to the given--commitby runninggit diff-index --unified=0appropriately. - vscode_settings.py - Merge
.vscode/settings_recommended.jsoninto your workspace-local.vscode/settings.json, preferring the former in case of conflicts but otherwise preserving the latter as much as possible.
Important if you want to run on AMD GPU:
- amd_build - HIPify scripts, for transpiling CUDA
into AMD HIP. Right now, PyTorch and Caffe2 share logic for how to
do this transpilation, but have separate entry-points for transpiling
either PyTorch or Caffe2 code.
- build_amd.py - Top-level entry point for HIPifying our codebase.
Tools which are only situationally useful:
- docker - Dockerfile for running (but not developing) PyTorch, using the official conda binary distribution. Context: https://github.com/pytorch/pytorch/issues/1619
- download_mnist.py - Download the MNIST dataset; this is necessary if you want to run the C++ API tests.
- run-clang-tidy-in-ci.sh - Responsible for checking that C++ code is clang-tidy clean in CI on Travis