/flash-attention-minimal

Primary LanguageCudaApache License 2.0Apache-2.0

flash-attention-minimal

A minimal re-implementation of Flash Attention with CUDA and PyTorch. The official implementation can be quite daunting for a CUDA beginner (like myself), so this repo tries to be small and educational.

  • The entire forward pass is written in ~100 lines in flash.cu.
  • The variable names follow the notations from the original paper.

Usage

Prerequisite

  • PyTorch (with CUDA)
  • Ninja for loading in C++

Benchmark

Compare the wall-clock time between manual attention and minimal flash attention:

python bench.py

Sample output on a T4:

=== profiling manual attention ===
...
Self CPU time total: 52.389ms
Self CUDA time total: 52.545ms

=== profiling minimal flash attention === 
...  
Self CPU time total: 11.452ms
Self CUDA time total: 3.908ms

Speed-up achieved!

I don't have a GPU

Try out this online colab demo.

Caveats

  • No backward pass! To be honest, I found it a lot more complex than the forward pass, which was enough to show the use of shared memory to avoid large N^2 read/writes.
  • In the inner loop, I assign each thread to a row of the output matrix. This differs from the original implementation.
  • This thread-per-row simplification makes the matrix multiplications very slow. This is probably why for longer sequences and larger block sizes, this gets slower than the manual implementation.
  • Q,K,Vs are in float32, unlike the original implementation which uses float16.
  • The block size is fixed at compile time to 32.

Todos

  • Add backward pass
  • Speed up matmults
  • Dynamically set block size