This repository provides the official implementation of FlashAttention and FlashAttention-2 from the following papers.
FlashAttention: Fast and Memory-Efficient Exact Attention with IO-Awareness
Tri Dao, Daniel Y. Fu, Stefano Ermon, Atri Rudra, Christopher Ré
Paper: https://arxiv.org/abs/2205.14135
IEEE Spectrum article about our submission to the MLPerf 2.0 benchmark using FlashAttention.
FlashAttention-2: Faster Attention with Better Parallelism and Work Partitioning
Tri Dao
Paper: https://tridao.me/publications/flash2/flash2.pdf
We've been very happy to see FlashAttention being widely adopted in such a short time after its release. This page contains a partial list of places where FlashAttention is being used.
FlashAttention and FlashAttention-2 are free to use and modify (see LICENSE). Please cite and credit FlashAttention if you use it.
Requirements:
- CUDA 11.6 and above.
- PyTorch 1.12 and above.
- Linux. Might work for Windows starting v2.3.2 (we've seen a few positive reports) but Windows compilation still requires more testing. If you have ideas on how to set up prebuilt CUDA wheels for Windows, please reach out via Github issue.
We recommend the Pytorch container from Nvidia, which has all the required tools to install FlashAttention.
To install:
- Make sure that PyTorch is installed.
- Make sure that
packaging
is installed (pip install packaging
) - Make sure that
ninja
is installed and that it works correctly (e.g.ninja --version
thenecho $?
should return exit code 0). If not (sometimesninja --version
thenecho $?
returns a nonzero exit code), uninstall then reinstallninja
(pip uninstall -y ninja && pip install ninja
). Withoutninja
, compiling can take a very long time (2h) since it does not use multiple CPU cores. Withninja
compiling takes 3-5 minutes on a 64-core machine. - Then:
pip install flash-attn --no-build-isolation
Alternatively you can compile from source:
python setup.py install
If your machine has less than 96GB of RAM and lots of CPU cores, ninja
might
run too many parallel compilation jobs that could exhaust the amount of RAM. To
limit the number of parallel compilation jobs, you can set the environment
variable MAX_JOBS
:
MAX_JOBS=4 pip install flash-attn --no-build-isolation
Interface: src/flash_attention_interface.py
FlashAttention-2 currently supports:
- Ampere, Ada, or Hopper GPUs (e.g., A100, RTX 3090, RTX 4090, H100). Support for Turing GPUs (T4, RTX 2080) is coming soon, please use FlashAttention 1.x for Turing GPUs for now.
- Datatype fp16 and bf16 (bf16 requires Ampere, Ada, or Hopper GPUs).
- All head dimensions up to 256. Head dim > 192 backward requires A100/A800 or H100/H800.
The main functions implement scaled dot product attention (softmax(Q @ K^T * softmax_scale) @ V):
from flash_attn import flash_attn_qkvpacked_func, flash_attn_func
flash_attn_qkvpacked_func(qkv, dropout_p=0.0, softmax_scale=None, causal=False, window_size=(-1, -1)):
"""dropout_p should be set to 0.0 during evaluation
If Q, K, V are already stacked into 1 tensor, this function will be faster than
calling flash_attn_func on Q, K, V since the backward pass avoids explicit concatenation
of the gradients of Q, K, V.
If window_size != (-1, -1), implements sliding window local attention. Query at position i
will only attend to keys between [i - window_size[0], i + window_size[1]] inclusive.
Arguments:
qkv: (batch_size, seqlen, 3, nheads, headdim)
dropout_p: float. Dropout probability.
softmax_scale: float. The scaling of QK^T before applying softmax.
Default to 1 / sqrt(headdim).
causal: bool. Whether to apply causal attention mask (e.g., for auto-regressive modeling).
window_size: (left, right). If not (-1, -1), implements sliding window local attention.
Return:
out: (batch_size, seqlen, nheads, headdim).
"""
flash_attn_func(q, k, v, dropout_p=0.0, softmax_scale=None, causal=False, window_size=(-1, -1)):
"""dropout_p should be set to 0.0 during evaluation
Supports multi-query and grouped-query attention (MQA/GQA) by passing in KV with fewer heads
than Q. Note that the number of heads in Q must be divisible by the number of heads in KV.
For example, if Q has 6 heads and K, V have 2 heads, head 0, 1, 2 of Q will attention to head
0 of K, V, and head 3, 4, 5 of Q will attention to head 1 of K, V.
If window_size != (-1, -1), implements sliding window local attention. Query at position i
will only attend to keys between
[i + seqlen_k - seqlen_q - window_size[0], i + seqlen_k - seqlen_q + window_size[1]] inclusive.
Arguments:
q: (batch_size, seqlen, nheads, headdim)
k: (batch_size, seqlen, nheads_k, headdim)
v: (batch_size, seqlen, nheads_k, headdim)
dropout_p: float. Dropout probability.
softmax_scale: float. The scaling of QK^T before applying softmax.
Default to 1 / sqrt(headdim).
causal: bool. Whether to apply causal attention mask (e.g., for auto-regressive modeling).
window_size: (left, right). If not (-1, -1), implements sliding window local attention.
Return:
out: (batch_size, seqlen, nheads, headdim).
"""
def flash_attn_with_kvcache(
q,
k_cache,
v_cache,
k=None,
v=None,
rotary_cos=None,
rotary_sin=None,
cache_seqlens: Optional[Union[(int, torch.Tensor)]] = None,
cache_batch_idx: Optional[torch.Tensor] = None,
softmax_scale=None,
causal=False,
window_size=(-1, -1), # -1 means infinite context window
rotary_interleaved=True,
):
"""
If k and v are not None, k_cache and v_cache will be updated *inplace* with the new values from
k and v. This is useful for incremental decoding: you can pass in the cached keys/values from
the previous step, and update them with the new keys/values from the current step, and do
attention with the updated cache, all in 1 kernel.
Also apply rotary embedding if rotary_cos and rotary_sin are passed in. The key @k will be
rotated by rotary_cos and rotary_sin at indices cache_seqlens, cache_seqlens + 1, etc.
If causal or local (i.e., window_size != (-1, -1)), the query @q will be rotated by rotary_cos
and rotary_sin at indices cache_seqlens, cache_seqlens + 1, etc.
If not causal and not local, the query @q will be rotated by rotary_cos and rotary_sin at
indices cache_seqlens only (i.e. we consider all tokens in @q to be at position cache_seqlens).
See tests/test_flash_attn.py::test_flash_attn_kvcache for examples of how to use this function.
Note: Does not support backward pass.
Arguments:
q: (batch_size, seqlen, nheads, headdim)
k_cache: (batch_size_cache, seqlen_cache, nheads_k, headdim)
v_cache: (batch_size_cache, seqlen_cache, nheads_k, headdim)
k [optional]: (batch_size, seqlen_new, nheads_k, headdim). If not None, we concatenate
k with k_cache, starting at the indices specified by cache_seqlens.
v [optional]: (batch_size, seqlen_new, nheads_k, headdim). Similar to k.
rotary_cos [optional]: (seqlen_ro, rotary_dim / 2). If not None, we apply rotary embedding
to k and q. Only applicable if k and v are passed in. rotary_dim must be divisible by 16.
rotary_sin [optional]: (seqlen_ro, rotary_dim / 2). Similar to rotary_cos.
cache_seqlens: int, or (batch_size,), dtype torch.int32. The sequence lengths of the
KV cache.
cache_batch_idx: (batch_size,), dtype torch.int32. The indices used to index into the KV cache.
If None, we assume that the batch indices are [0, 1, 2, ..., batch_size - 1].
If the indices are not distinct, and k and v are provided, the values updated in the cache
might come from any of the duplicate indices.
softmax_scale: float. The scaling of QK^T before applying softmax.
Default to 1 / sqrt(headdim).
causal: bool. Whether to apply causal attention mask (e.g., for auto-regressive modeling).
window_size: (left, right). If not (-1, -1), implements sliding window local attention.
rotary_interleaved: bool. Only applicable if rotary_cos and rotary_sin are passed in.
If True, rotary embedding will combine dimensions 0 & 1, 2 & 3, etc. If False,
rotary embedding will combine dimensions 0 & rotary_dim / 2, 1 & rotary_dim / 2 + 1
(i.e. GPT-NeoX style).
num_splits: int. If > 1, split the key/value into this many chunks along the sequence.
If num_splits == 1, we don't split the key/value. If num_splits == 0, we use a heuristic
to automatically determine the number of splits.
Don't change this unless you know what you are doing.
Return:
out: (batch_size, seqlen, nheads, headdim).
"""
To see how these functions are used in a multi-head attention layer (which includes QKV projection, output projection), see the MHA implementation.
Upgrading from FlashAttention (1.x) to FlashAttention-2
These functions have been renamed:
flash_attn_unpadded_func
->flash_attn_varlen_func
flash_attn_unpadded_qkvpacked_func
->flash_attn_varlen_qkvpacked_func
flash_attn_unpadded_kvpacked_func
->flash_attn_varlen_kvpacked_func
If the inputs have the same sequence lengths in the same batch, it is simpler and faster to use these functions:
flash_attn_qkvpacked_func(qkv, dropout_p=0.0, softmax_scale=None, causal=False)
flash_attn_func(q, k, v, dropout_p=0.0, softmax_scale=None, causal=False)
If seqlen_q != seqlen_k and causal=True, the causal mask is aligned to the bottom right corner of the attention matrix, instead of the top-left corner.
For example, if seqlen_q = 2 and seqlen_k = 5, the causal mask (1 = keep, 0 =
masked out) is:
v2.0:
1 0 0 0 0
1 1 0 0 0
v2.1:
1 1 1 1 0
1 1 1 1 1
If seqlen_q = 5 and seqlen_k = 2, the causal mask is:
v2.0:
1 0
1 1
1 1
1 1
1 1
v2.1:
0 0
0 0
0 0
1 0
1 1
If the row of the mask is all zero, the output will be zero.
Optimize for inference (iterative decoding) when query has very small sequence length (e.g., query sequence length = 1). The bottleneck here is to load KV cache as fast as possible, and we split the loading across different thread blocks, with a separate kernel to combine results.
See the function flash_attn_with_kvcache
with more features for inference
(perform rotary embedding, updating KV cache inplace).
Thanks to the xformers team, and in particular Daniel Haziza, for this collaboration.
Implement sliding window attention (i.e., local attention). Thanks to Mistral AI and in particular Timothée Lacroix for this contribution. Sliding window was used in the Mistral 7B model.
We present expected speedup (combined forward + backward pass) and memory savings from using FlashAttention against PyTorch standard attention, depending on sequence length, on different GPUs (speedup depends on memory bandwidth - we see more speedup on slower GPU memory).
We currently have benchmarks for these GPUs:
We display FlashAttention speedup using these parameters:
- Head dimension 64 or 128, hidden dimension 2048 (i.e. either 32 or 16 heads).
- Sequence length 512, 1k, 2k, 4k, 8k, 16k.
- Batch size set to 16k / seqlen.
We show memory savings in this graph (note that memory footprint is the same no matter if you use dropout or masking). Memory savings are proportional to sequence length -- since standard attention has memory quadratic in sequence length, whereas FlashAttention has memory linear in sequence length. We see 10X memory savings at sequence length 2K, and 20X at 4K. As a result, FlashAttention can scale to much longer sequence lengths.
We have released the full GPT model implementation. We also provide optimized implementations of other layers (e.g., MLP, LayerNorm, cross-entropy loss, rotary embedding). Overall this speeds up training by 3-5x compared to the baseline implementation from Huggingface, reaching up to 225 TFLOPs/sec per A100, equivalent to 72% model FLOPs utilization (we don't need any activation checkpointing).
We also include a training script to train GPT2 on Openwebtext and GPT3 on The Pile.
Phil Tillet (OpenAI) has an experimental implementation of FlashAttention in Triton: https://github.com/openai/triton/blob/master/python/tutorials/06-fused-attention.py
As Triton is a higher-level language than CUDA, it might be easier to understand and experiment with. The notations in the Triton implementation are also closer to what's used in our paper.
We also have an experimental implementation in Triton that support attention bias (e.g. ALiBi): https://github.com/Dao-AILab/flash-attention/blob/main/flash_attn/flash_attn_triton.py
We test that FlashAttention produces the same output and gradient as a reference implementation, up to some numerical tolerance. In particular, we check that the maximum numerical error of FlashAttention is at most twice the numerical error of a baseline implementation in Pytorch (for different head dimensions, input dtype, sequence length, causal / non-causal).
To run the tests:
pytest -q -s tests/test_flash_attn.py
This new release of FlashAttention-2 has been tested on several GPT-style models, mostly on A100 GPUs.
If you encounter bugs, please open a GitHub Issue!
If you use this codebase, or otherwise found our work valuable, please cite:
@inproceedings{dao2022flashattention,
title={Flash{A}ttention: Fast and Memory-Efficient Exact Attention with {IO}-Awareness},
author={Dao, Tri and Fu, Daniel Y. and Ermon, Stefano and Rudra, Atri and R{\'e}, Christopher},
booktitle={Advances in Neural Information Processing Systems},
year={2022}
}
@article{dao2023flashattention2,
title={Flash{A}ttention-2: Faster Attention with Better Parallelism and Work Partitioning},
author={Dao, Tri},
year={2023}
}