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# FlashAttention |
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This repository provides the official implementation of FlashAttention and |
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FlashAttention-2 from the |
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following papers. |
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**FlashAttention: Fast and Memory-Efficient Exact Attention with IO-Awareness** |
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Tri Dao, Daniel Y. Fu, Stefano Ermon, Atri Rudra, Christopher Ré |
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Paper: https://arxiv.org/abs/2205.14135 |
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IEEE Spectrum [article](https://spectrum.ieee.org/mlperf-rankings-2022) about our submission to the MLPerf 2.0 benchmark using FlashAttention. |
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**FlashAttention-2: Faster Attention with Better Parallelism and Work Partitioning** |
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Tri Dao |
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Paper: https://tridao.me/publications/flash2/flash2.pdf |
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## Usage |
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We've been very happy to see FlashAttention being widely adopted in such a short |
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time after its release. This [page](https://github.com/Dao-AILab/flash-attention/blob/main/usage.md) |
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contains a partial list of places where FlashAttention is being used. |
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FlashAttention and FlashAttention-2 are free to use and modify (see LICENSE). |
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Please cite and credit FlashAttention if you use it. |
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## FlashAttention-3 beta release |
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FlashAttention-3 is optimized for Hopper GPUs (e.g. H100). |
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Blogpost: https://tridao.me/blog/2024/flash3/ |
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Paper: https://tridao.me/publications/flash3/flash3.pdf |
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This is a beta release for testing / benchmarking before we integrate that with |
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the rest of the repo. |
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Currently released: |
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- FP16 forward and backward |
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Coming soon in the next couple of days / next week: |
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- BF16 |
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- Variable length (FP16, BF16) |
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- FP8 forward. |
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Requirements: H100 / H800 GPU, CUDA >= 12.3. |
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To install: |
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```sh |
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cd hopper |
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python setup.py install |
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``` |
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To run the test: |
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```sh |
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export PYTHONPATH=$PWD |
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pytest -q -s test_flash_attn.py |
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``` |
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## Installation and features |
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Requirements: |
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- CUDA 11.6 and above. |
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- PyTorch 1.12 and above. |
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- Linux. Might work for Windows starting v2.3.2 (we've seen a few positive [reports](https://github.com/Dao-AILab/flash-attention/issues/595)) 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. |
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We recommend the |
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[Pytorch](https://catalog.ngc.nvidia.com/orgs/nvidia/containers/pytorch) |
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container from Nvidia, which has all the required tools to install FlashAttention. |
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To install: |
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1. Make sure that PyTorch is installed. |
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2. Make sure that `packaging` is installed (`pip install packaging`) |
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3. Make sure that `ninja` is installed and that it works correctly (e.g. `ninja |
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--version` then `echo $?` should return exit code 0). If not (sometimes `ninja |
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--version` then `echo $?` returns a nonzero exit code), uninstall then reinstall |
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`ninja` (`pip uninstall -y ninja && pip install ninja`). Without `ninja`, |
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compiling can take a very long time (2h) since it does not use multiple CPU |
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cores. With `ninja` compiling takes 3-5 minutes on a 64-core machine. |
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4. Then: |
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```sh |
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pip install flash-attn --no-build-isolation |
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``` |
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Alternatively you can compile from source: |
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```sh |
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python setup.py install |
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``` |
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If your machine has less than 96GB of RAM and lots of CPU cores, `ninja` might |
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run too many parallel compilation jobs that could exhaust the amount of RAM. To |
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limit the number of parallel compilation jobs, you can set the environment |
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variable `MAX_JOBS`: |
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```sh |
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MAX_JOBS=4 pip install flash-attn --no-build-isolation |
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``` |
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Interface: `src/flash_attention_interface.py` |
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FlashAttention-2 currently supports: |
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1. Ampere, Ada, or Hopper GPUs (e.g., A100, RTX 3090, RTX 4090, H100). Support for Turing |
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GPUs (T4, RTX 2080) is coming soon, please use FlashAttention 1.x for Turing |
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GPUs for now. |
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2. Datatype fp16 and bf16 (bf16 requires Ampere, Ada, or Hopper GPUs). |
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3. All head dimensions up to 256. ~~Head dim > 192 backward requires A100/A800 or H100/H800~~. Head dim 256 backward now works on consumer GPUs (if there's no dropout) as of flash-attn 2.5.5. |
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## How to use FlashAttention |
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The main functions implement scaled dot product attention (softmax(Q @ K^T * |
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softmax_scale) @ V): |
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```python |
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from flash_attn import flash_attn_qkvpacked_func, flash_attn_func |
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``` |
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```python |
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flash_attn_qkvpacked_func(qkv, dropout_p=0.0, softmax_scale=None, causal=False, |
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window_size=(-1, -1), alibi_slopes=None, deterministic=False): |
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"""dropout_p should be set to 0.0 during evaluation |
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If Q, K, V are already stacked into 1 tensor, this function will be faster than |
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calling flash_attn_func on Q, K, V since the backward pass avoids explicit concatenation |
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of the gradients of Q, K, V. |
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If window_size != (-1, -1), implements sliding window local attention. Query at position i |
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will only attend to keys between [i - window_size[0], i + window_size[1]] inclusive. |
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Arguments: |
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qkv: (batch_size, seqlen, 3, nheads, headdim) |
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dropout_p: float. Dropout probability. |
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softmax_scale: float. The scaling of QK^T before applying softmax. |
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Default to 1 / sqrt(headdim). |
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causal: bool. Whether to apply causal attention mask (e.g., for auto-regressive modeling). |
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window_size: (left, right). If not (-1, -1), implements sliding window local attention. |
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alibi_slopes: (nheads,) or (batch_size, nheads), fp32. A bias of (-alibi_slope * |i - j|) is added to |
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the attention score of query i and key j. |
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deterministic: bool. Whether to use the deterministic implementation of the backward pass, |
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which is slightly slower and uses more memory. The forward pass is always deterministic. |
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Return: |
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out: (batch_size, seqlen, nheads, headdim). |
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""" |
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``` |
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```python |
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flash_attn_func(q, k, v, dropout_p=0.0, softmax_scale=None, causal=False, |
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window_size=(-1, -1), alibi_slopes=None, deterministic=False): |
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"""dropout_p should be set to 0.0 during evaluation |
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Supports multi-query and grouped-query attention (MQA/GQA) by passing in KV with fewer heads |
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than Q. Note that the number of heads in Q must be divisible by the number of heads in KV. |
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For example, if Q has 6 heads and K, V have 2 heads, head 0, 1, 2 of Q will attention to head |
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0 of K, V, and head 3, 4, 5 of Q will attention to head 1 of K, V. |
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If window_size != (-1, -1), implements sliding window local attention. Query at position i |
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will only attend to keys between |
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[i + seqlen_k - seqlen_q - window_size[0], i + seqlen_k - seqlen_q + window_size[1]] inclusive. |
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Arguments: |
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q: (batch_size, seqlen, nheads, headdim) |
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k: (batch_size, seqlen, nheads_k, headdim) |
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v: (batch_size, seqlen, nheads_k, headdim) |
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dropout_p: float. Dropout probability. |
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softmax_scale: float. The scaling of QK^T before applying softmax. |
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Default to 1 / sqrt(headdim). |
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causal: bool. Whether to apply causal attention mask (e.g., for auto-regressive modeling). |
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window_size: (left, right). If not (-1, -1), implements sliding window local attention. |
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alibi_slopes: (nheads,) or (batch_size, nheads), fp32. A bias of |
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(-alibi_slope * |i + seqlen_k - seqlen_q - j|) |
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is added to the attention score of query i and key j. |
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deterministic: bool. Whether to use the deterministic implementation of the backward pass, |
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which is slightly slower and uses more memory. The forward pass is always deterministic. |
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Return: |
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out: (batch_size, seqlen, nheads, headdim). |
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""" |
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``` |
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```python |
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def flash_attn_with_kvcache( |
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q, |
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k_cache, |
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v_cache, |
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k=None, |
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v=None, |
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rotary_cos=None, |
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rotary_sin=None, |
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cache_seqlens: Optional[Union[(int, torch.Tensor)]] = None, |
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cache_batch_idx: Optional[torch.Tensor] = None, |
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block_table: Optional[torch.Tensor] = None, |
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softmax_scale=None, |
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causal=False, |
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window_size=(-1, -1), # -1 means infinite context window |
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rotary_interleaved=True, |
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alibi_slopes=None, |
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): |
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""" |
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If k and v are not None, k_cache and v_cache will be updated *inplace* with the new values from |
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k and v. This is useful for incremental decoding: you can pass in the cached keys/values from |
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the previous step, and update them with the new keys/values from the current step, and do |
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attention with the updated cache, all in 1 kernel. |
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If you pass in k / v, you must make sure that the cache is large enough to hold the new values. |
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For example, the KV cache could be pre-allocated with the max sequence length, and you can use |
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cache_seqlens to keep track of the current sequence lengths of each sequence in the batch. |
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Also apply rotary embedding if rotary_cos and rotary_sin are passed in. The key @k will be |
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rotated by rotary_cos and rotary_sin at indices cache_seqlens, cache_seqlens + 1, etc. |
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If causal or local (i.e., window_size != (-1, -1)), the query @q will be rotated by rotary_cos |
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and rotary_sin at indices cache_seqlens, cache_seqlens + 1, etc. |
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If not causal and not local, the query @q will be rotated by rotary_cos and rotary_sin at |
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indices cache_seqlens only (i.e. we consider all tokens in @q to be at position cache_seqlens). |
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See tests/test_flash_attn.py::test_flash_attn_kvcache for examples of how to use this function. |
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Supports multi-query and grouped-query attention (MQA/GQA) by passing in KV with fewer heads |
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than Q. Note that the number of heads in Q must be divisible by the number of heads in KV. |
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For example, if Q has 6 heads and K, V have 2 heads, head 0, 1, 2 of Q will attention to head |
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0 of K, V, and head 3, 4, 5 of Q will attention to head 1 of K, V. |
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If causal=True, the causal mask is aligned to the bottom right corner of the attention matrix. |
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For example, if seqlen_q = 2 and seqlen_k = 5, the causal mask (1 = keep, 0 = masked out) is: |
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1 1 1 1 0 |
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1 1 1 1 1 |
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If seqlen_q = 5 and seqlen_k = 2, the causal mask is: |
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0 0 |
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0 0 |
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0 0 |
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1 0 |
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1 1 |
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If the row of the mask is all zero, the output will be zero. |
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If window_size != (-1, -1), implements sliding window local attention. Query at position i |
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will only attend to keys between |
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[i + seqlen_k - seqlen_q - window_size[0], i + seqlen_k - seqlen_q + window_size[1]] inclusive. |
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Note: Does not support backward pass. |
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Arguments: |
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q: (batch_size, seqlen, nheads, headdim) |
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k_cache: (batch_size_cache, seqlen_cache, nheads_k, headdim) if there's no block_table, |
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or (num_blocks, page_block_size, nheads_k, headdim) if there's a block_table (i.e. paged KV cache) |
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page_block_size must be a multiple of 256. |
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v_cache: (batch_size_cache, seqlen_cache, nheads_k, headdim) if there's no block_table, |
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or (num_blocks, page_block_size, nheads_k, headdim) if there's a block_table (i.e. paged KV cache) |
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k [optional]: (batch_size, seqlen_new, nheads_k, headdim). If not None, we concatenate |
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k with k_cache, starting at the indices specified by cache_seqlens. |
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v [optional]: (batch_size, seqlen_new, nheads_k, headdim). Similar to k. |
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rotary_cos [optional]: (seqlen_ro, rotary_dim / 2). If not None, we apply rotary embedding |
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to k and q. Only applicable if k and v are passed in. rotary_dim must be divisible by 16. |
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rotary_sin [optional]: (seqlen_ro, rotary_dim / 2). Similar to rotary_cos. |
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cache_seqlens: int, or (batch_size,), dtype torch.int32. The sequence lengths of the |
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KV cache. |
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block_table [optional]: (batch_size, max_num_blocks_per_seq), dtype torch.int32. |
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cache_batch_idx: (batch_size,), dtype torch.int32. The indices used to index into the KV cache. |
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If None, we assume that the batch indices are [0, 1, 2, ..., batch_size - 1]. |
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If the indices are not distinct, and k and v are provided, the values updated in the cache |
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might come from any of the duplicate indices. |
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softmax_scale: float. The scaling of QK^T before applying softmax. |
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Default to 1 / sqrt(headdim). |
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causal: bool. Whether to apply causal attention mask (e.g., for auto-regressive modeling). |
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window_size: (left, right). If not (-1, -1), implements sliding window local attention. |
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rotary_interleaved: bool. Only applicable if rotary_cos and rotary_sin are passed in. |
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If True, rotary embedding will combine dimensions 0 & 1, 2 & 3, etc. If False, |
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rotary embedding will combine dimensions 0 & rotary_dim / 2, 1 & rotary_dim / 2 + 1 |
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(i.e. GPT-NeoX style). |
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alibi_slopes: (nheads,) or (batch_size, nheads), fp32. A bias of |
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(-alibi_slope * |i + seqlen_k - seqlen_q - j|) |
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is added to the attention score of query i and key j. |
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Return: |
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out: (batch_size, seqlen, nheads, headdim). |
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""" |
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``` |
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To see how these functions are used in a multi-head attention layer (which |
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includes QKV projection, output projection), see the MHA [implementation](https://github.com/Dao-AILab/flash-attention/blob/main/flash_attn/modules/mha.py). |
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## Changelog |
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### 2.0: Complete rewrite, 2x faster |
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Upgrading from FlashAttention (1.x) to FlashAttention-2 |
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These functions have been renamed: |
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- `flash_attn_unpadded_func` -> `flash_attn_varlen_func` |
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- `flash_attn_unpadded_qkvpacked_func` -> `flash_attn_varlen_qkvpacked_func` |
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- `flash_attn_unpadded_kvpacked_func` -> `flash_attn_varlen_kvpacked_func` |
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If the inputs have the same sequence lengths in the same batch, it is simpler |
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and faster to use these functions: |
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```python |
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flash_attn_qkvpacked_func(qkv, dropout_p=0.0, softmax_scale=None, causal=False) |
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``` |
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```python |
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flash_attn_func(q, k, v, dropout_p=0.0, softmax_scale=None, causal=False) |
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``` |
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### 2.1: Change behavior of causal flag |
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If seqlen_q != seqlen_k and causal=True, the causal mask is aligned to the |
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bottom right corner of the attention matrix, instead of the top-left corner. |
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For example, if seqlen_q = 2 and seqlen_k = 5, the causal mask (1 = keep, 0 = |
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masked out) is: |
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v2.0: |
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1 0 0 0 0 |
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1 1 0 0 0 |
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v2.1: |
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1 1 1 1 0 |
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1 1 1 1 1 |
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If seqlen_q = 5 and seqlen_k = 2, the causal mask is: |
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v2.0: |
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1 0 |
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1 1 |
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1 1 |
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1 1 |
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1 1 |
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v2.1: |
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0 0 |
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0 0 |
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0 0 |
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1 0 |
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1 1 |
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If the row of the mask is all zero, the output will be zero. |
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### 2.2: Optimize for inference |
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Optimize for inference (iterative decoding) when query has very small sequence |
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length (e.g., query sequence length = 1). The bottleneck here is to load KV |
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cache as fast as possible, and we split the loading across different thread |
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blocks, with a separate kernel to combine results. |
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See the function `flash_attn_with_kvcache` with more features for inference |
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(perform rotary embedding, updating KV cache inplace). |
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Thanks to the xformers team, and in particular Daniel Haziza, for this |
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collaboration. |
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### 2.3: Local (i.e., sliding window) attention |
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Implement sliding window attention (i.e., local attention). Thanks to [Mistral |
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AI](https://mistral.ai/) and in particular Timothée Lacroix for this |
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contribution. Sliding window was used in the [Mistral 7B](https://mistral.ai/news/announcing-mistral-7b/) model. |
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### 2.4: ALiBi (attention with linear bias), deterministic backward pass. |
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Implement ALiBi (Press et al., 2021). Thanks to Sanghun Cho from Kakao Brain for this contribution. |
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Implement deterministic backward pass. Thanks to engineers from [Meituan](www.meituan.com) for this contribution. |
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### 2.5: Paged KV cache. |
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Support paged KV cache (i.e., [PagedAttention](https://arxiv.org/abs/2309.06180)). |
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Thanks to @beginlner for this contribution. |
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### 2.6: Softcapping. |
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Support attention with softcapping, as used in Gemma-2 and Grok models. |
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Thanks to @Narsil and @lucidrains for this contribution. |
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## Performance |
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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). |
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We currently have benchmarks for these GPUs: |
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* [A100](#a100) |
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* [H100](#h100) |
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<!-- * [RTX 3090](#rtx-3090) --> |
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<!-- * [T4](#t4) --> |
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### A100 |
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We display FlashAttention speedup using these parameters: |
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* Head dimension 64 or 128, hidden dimension 2048 (i.e. either 32 or 16 heads). |
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* Sequence length 512, 1k, 2k, 4k, 8k, 16k. |
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* Batch size set to 16k / seqlen. |
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#### Speedup |
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 |
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#### Memory |
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 |
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We show memory savings in this graph (note that memory footprint is the same no matter if you use dropout or masking). |
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Memory savings are proportional to sequence length -- since standard attention has memory quadratic in sequence length, whereas FlashAttention has memory linear in sequence length. |
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We see 10X memory savings at sequence length 2K, and 20X at 4K. |
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As a result, FlashAttention can scale to much longer sequence lengths. |
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### H100 |
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## Full model code and training script |
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We have released the full GPT model |
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[implementation](https://github.com/Dao-AILab/flash-attention/blob/main/flash_attn/models/gpt.py). |
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We also provide optimized implementations of other layers (e.g., MLP, LayerNorm, |
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cross-entropy loss, rotary embedding). Overall this speeds up training by 3-5x |
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compared to the baseline implementation from Huggingface, reaching up to 225 |
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TFLOPs/sec per A100, equivalent to 72% model FLOPs utilization (we don't need |
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any activation checkpointing). |
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We also include a training |
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[script](https://github.com/Dao-AILab/flash-attention/tree/main/training) to |
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train GPT2 on Openwebtext and GPT3 on The Pile. |
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## Triton implementation of FlashAttention |
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Phil Tillet (OpenAI) has an experimental implementation of FlashAttention in Triton: |
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https://github.com/openai/triton/blob/master/python/tutorials/06-fused-attention.py |
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As Triton is a higher-level language than CUDA, it might be easier to understand |
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and experiment with. The notations in the Triton implementation are also closer |
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to what's used in our paper. |
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We also have an experimental implementation in Triton that support attention |
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bias (e.g. ALiBi): |
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https://github.com/Dao-AILab/flash-attention/blob/main/flash_attn/flash_attn_triton.py |
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## Tests |
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We test that FlashAttention produces the same output and gradient as a reference |
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implementation, up to some numerical tolerance. In particular, we check that the |
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maximum numerical error of FlashAttention is at most twice the numerical error |
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of a baseline implementation in Pytorch (for different head dimensions, input |
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dtype, sequence length, causal / non-causal). |
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|
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To run the tests: |
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```sh |
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pytest -q -s tests/test_flash_attn.py |
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``` |
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## When you encounter issues |
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This new release of FlashAttention-2 has been tested on several GPT-style |
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models, mostly on A100 GPUs. |
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If you encounter bugs, please open a GitHub Issue! |
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## AMD GPU/ROCm Support |
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ROCm version use [composable_kernel](https://github.com/ROCm/composable_kernel) as backend. It provides the implementation of FlashAttention-2. |
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## Installation and features |
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Requirements: |
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- ROCm 6.0+ |
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- PyTorch 1.12.1+ |
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|
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We recommend the |
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[Pytorch](https://hub.docker.com/r/rocm/pytorch) |
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container from ROCm, which has all the required tools to install FlashAttention. |
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|
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To compile from source: |
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```sh |
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python setup.py install |
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``` |
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|
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FlashAttention-2 on ROCm currently supports: |
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1. MI200 or MI300 GPUs. |
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2. Datatype fp16 and bf16 |
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3. Forward's head dimensions up to 256. Backward head dimensions up to 128. |
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|
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## Tests |
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To run the tests: |
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```sh |
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pytest tests/test_flash_attn_ck.py |
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``` |
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|
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## Citation |
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If you use this codebase, or otherwise found our work valuable, please cite: |
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``` |
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@inproceedings{dao2022flashattention, |
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title={Flash{A}ttention: Fast and Memory-Efficient Exact Attention with {IO}-Awareness}, |
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author={Dao, Tri and Fu, Daniel Y. and Ermon, Stefano and Rudra, Atri and R{\'e}, Christopher}, |
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booktitle={Advances in Neural Information Processing Systems (NeurIPS)}, |
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year={2022} |
|
} |
|
@inproceedings{dao2023flashattention2, |
|
title={Flash{A}ttention-2: Faster Attention with Better Parallelism and Work Partitioning}, |
|
author={Dao, Tri}, |
|
booktitle={International Conference on Learning Representations (ICLR)}, |
|
year={2024} |
|
} |
|
``` |