pytorch/tools
Yujun Zhao f3a79b881f add lcov to oss for beautiful html report (#44568)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/44568

By `lcov`, we can generate beautiful html. It's better than current file report and line report. Therefore in oss gcc, remove `export` code and `file/line level report` code, only use the html report.

But in clang, since such tool is not available, we will still use file-report and line-report generated by ourself.

Test Plan:
Test in docker ubuntu machine.
## Mesurement
1. After running `atest`, it takes about 15 mins to collect code coverage and genrate the report.
```
# gcc code coverage
python oss_coverage.py --run-only=atest
```

## Presentation
**The html result looks like:**

*Top Level:*

{F328330856}

*File Level:*

{F328336709}

Reviewed By: malfet

Differential Revision: D23550784

fbshipit-source-id: 1fff050e7f7d1cc8e86a6a200fd8db04b47f5f3e
2020-09-11 15:29:24 -07:00
..
amd_build [ROCm] update hip library name (#41813) 2020-07-22 09:42:45 -07:00
autograd Fix SmoothL1Loss when target.requires_grad is True. (#44486) 2020-09-11 12:13:36 -07:00
clang_format_hash [PyTorch][tools] Add linux64 clang-format hash 2020-03-13 14:22:17 -07:00
code_analyzer [pytorch] remove code analyzer build folder between builds (#44148) 2020-09-04 10:38:12 -07:00
code_coverage add lcov to oss for beautiful html report (#44568) 2020-09-11 15:29:24 -07:00
codegen Add unary ops: exp and sqrt (#42537) 2020-09-07 19:57:34 -07:00
config Bazel build of pytorch with gating CI (#36011) 2020-04-06 22:50:33 -07:00
docker
jit [pytorch] deprecate static dispatch (#43564) 2020-08-27 14:52:48 -07:00
pyi add typing annotations for a few torch.utils.* modules (#43806) 2020-09-11 10:20:55 -07:00
rules remediation of S205607 2020-07-17 17:19:47 -07:00
setup_helpers Rewrite of ATen code generator (#42629) 2020-08-31 09:00:22 -07:00
shared Rewrite of ATen code generator (#42629) 2020-08-31 09:00:22 -07:00
__init__.py remediation of S205607 2020-07-17 17:19:47 -07:00
aten_mirror.sh
build_libtorch.py
build_pytorch_libs.py
build_variables.bzl [quant][pyper] Support quantization of ops in fork-wait subgraph (#44048) 2020-09-05 12:06:19 -07:00
clang_format_all.py better local command for clang-format check (#37127) 2020-04-24 12:19:57 -07:00
clang_format_ci.sh Removed whitelist reference from tools/clang_format_ci.sh (#41636) 2020-07-21 12:32:14 -07:00
clang_format_utils.py clang-format don't run on master (#37058) 2020-04-22 11:37:22 -07:00
clang_tidy.py
download_mnist.py
flake8_hook.py
generated_dirs.txt
git-clang-format clang-format don't run on master (#37058) 2020-04-22 11:37:22 -07:00
git-pre-commit [ONNX] Utilize ONNX shape inference for ONNX exporter (#40628) 2020-08-30 18:35:46 -07:00
git_add_generated_dirs.sh
git_reset_generated_dirs.sh
nightly.py Nightly Pull (#43294) 2020-08-20 08:34:18 -07:00
pytorch.version
README.md
update_disabled_tests.sh

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.

Legacy infrastructure (we should kill this):

  • cwrap - Implementation of legacy code generation for THNN/THCUNN. This is used by nnwrap.

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.

Developer tools which you might find useful:

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: