pytorch/benchmarks
Aaron Gokaslan 1562dae62c [BE]: Apply RUF025 dict.fromkeys preview rule (#118637)
Simplifies and optimizes dict construction using the `fromkeys` classmethod ctor. This also makes it really obvious when all the keys will have the same static value, which could be a bug if unintentional. It is also significantly faster than using a dict comprehension. The rule is in preview, but I am adding a forward fix for when it becomes stable.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/118637
Approved by: https://github.com/albanD
2024-01-30 20:46:54 +00:00
..
distributed [BE]: Apply FURB118 (prev): replaces unnecessary lambdas with operator. (#116027) 2023-12-20 19:35:08 +00:00
dynamo Move skip sets into a new file. (#118032) 2024-01-24 19:22:01 +00:00
fastrnns
framework_overhead_benchmark [BE]: Enable F821 and fix bugs (#116579) 2024-01-01 08:40:46 +00:00
functional_autograd_benchmark [BE]: Enable F821 and fix bugs (#116579) 2024-01-01 08:40:46 +00:00
fuser
inference Allow more backend worker threads with each using a separate cuda stream (#116190) 2023-12-20 22:08:29 +00:00
instruction_counts Use strict to toggle strict options in MYPYSTRICT (#118479) 2024-01-28 19:22:22 +00:00
nested
operator_benchmark More efficient multi-threading in Softmax & LogSoftmax CPU kernels (#116367) 2024-01-17 02:26:29 +00:00
overrides_benchmark
profiler_benchmark
record_function_benchmark
serialization
sparse [BE]: Enable F821 and fix bugs (#116579) 2024-01-01 08:40:46 +00:00
static_runtime
tensorexpr [BE]: Enable F821 and fix bugs (#116579) 2024-01-01 08:40:46 +00:00
transformer [BE]: Apply RUF025 dict.fromkeys preview rule (#118637) 2024-01-30 20:46:54 +00:00
compare-fastrnn-results.py
compare.sh
README.md
upload_scribe.py

PyTorch Benchmarks

This folder contains scripts that produce reproducible timings of various PyTorch features.

It also provides mechanisms to compare PyTorch with other frameworks.

Setup environment

Make sure you're on a machine with CUDA, torchvision, and pytorch installed. Install in the following order:

# Install torchvision. It comes with the pytorch stable release binary
conda install pytorch torchvision -c pytorch

# Install the latest pytorch master from source.
# It should supersede the installation from the release binary.
cd $PYTORCH_HOME
python setup.py build develop

# Check the pytorch installation version
python -c "import torch; print(torch.__version__)"

Benchmark List

Please refer to each subfolder to discover each benchmark suite. Links are provided where descriptions exist: