pytorch/benchmarks/fastrnns
Xuehai Pan 26f4f10ac8 [5/N][Easy] fix typo for usort config in pyproject.toml (kown -> known): sort torch (#127126)
The `usort` config in `pyproject.toml` has no effect due to a typo. Fixing the typo make `usort` do more and generate the changes in the PR. Except `pyproject.toml`, all changes are generated by `lintrunner -a --take UFMT --all-files`.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/127126
Approved by: https://github.com/kit1980
2024-05-27 14:49:57 +00:00
..
__init__.py
bench.py
cells.py
conftest.py
custom_lstms.py
factory.py
fuser.py
profile.py
README.md
runner.py [5/N][Easy] fix typo for usort config in pyproject.toml (kown -> known): sort torch (#127126) 2024-05-27 14:49:57 +00:00
scratch.py
test.py
test_bench.py [5/N][Easy] fix typo for usort config in pyproject.toml (kown -> known): sort torch (#127126) 2024-05-27 14:49:57 +00:00

Fast RNN benchmarks

Benchmarks for TorchScript models

For most stable results, do the following:

  • Set CPU Governor to performance mode (as opposed to energy save)
  • Turn off turbo for all CPUs (assuming Intel CPUs)
  • Shield cpus via cset shield when running benchmarks.

Some of these scripts accept command line args but most of them do not because I was lazy. They will probably be added sometime in the future, but the default sizes are pretty reasonable.

Test fastrnns (fwd + bwd) correctness

Test the fastrnns benchmarking scripts with the following: python -m fastrnns.test or run the test independently: python -m fastrnns.test --rnns jit

Run benchmarks

python -m fastrnns.bench

should give a good comparison, or you can specify the type of model to run

python -m fastrnns.bench --rnns cudnn aten jit --group rnns

Run model profiling, calls nvprof

python -m fastrnns.profile

should generate nvprof file for all models somewhere. you can also specify the models to generate nvprof files separately:

python -m fastrnns.profile --rnns aten jit

Caveats

Use Linux for the most accurate timing. A lot of these tests only run on CUDA.