# Benchmarking tool for the autograd API This folder contain a set of self-contained scripts that allows you to benchmark autograd with different common models. It is designed to run the benchmark before and after your change and will generate a table to share on the PR. To do so, you can use `functional_autograd_benchmark.py` to run the benchmarks before your change (using as output `before.txt`) and after your change (using as output `after.txt`). You can then use `compare.py` to get a markdown table comparing the two runs. The default arguments of `functional_autograd_benchmark.py` should be used in general. You can change them though to force a given device or force running even the (very) slow settings. ### Sample usage ```bash # Make sure you compile pytorch in release mode and with the same flags before/after export DEBUG=0 # When running on CPU, it might be required to limit the number of cores to avoid oversubscription export OMP_NUM_THREADS=10 # Compile pytorch with the base revision git checkout master python setup.py develop # Install dependencies: # Scipy is required by detr pip install scipy # Run the benchmark for the base # This will use the GPU if available. pushd benchmarks/functional_autograd_benchmark python functional_autograd_benchmark.py --output before.txt # Compile pytorch with your change popd git checkout your_feature_branch python setup.py develop # Run the benchmark for the new version pushd benchmarks/functional_autograd_benchmark python functional_autograd_benchmark.py --output after.txt # Get the markdown table that you can paste in your github PR python compare.py popd ``` ### Files in this folder: - `functional_autograd_benchmark.py` is the main entry point to run the benchmark. - `compare.py` is the entry point to run the comparison script that generates a markdown table. - `torchaudio_models.py` and `torchvision_models.py` contains code extracted from torchaudio and torchvision to be able to run the models without having a specific version of these libraries installed. - `ppl_models.py`, `vision_models.py` and `audio_text_models.py` contain all the getter functions used for the benchmark. ### Benchmarking against `functorch` ```bash # Install stable functorch: pip install functorch # or install from source: pip install git+https://github.com/pytorch/functorch # Run the benchmark for the base # This will use the GPU if available. pushd benchmarks/functional_autograd_benchmark python functional_autograd_benchmark.py --output bench-with-functorch.txt ```