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DeepSeek Open Source FlashMLA β MLA Decoding Kernel for Hopper GPUs
FlashMLA
FlashMLA is an efficient MLA decoding kernel for Hopper GPUs, optimized for variable-length sequences serving.
Currently released:
- BF16, FP16
- Paged kvcache with block size of 64
Quick start
Install
python setup.py install
Benchmark
python tests/test_flash_mla.py
Achieving up to 3000 GB/s in memory-bound configuration and 580 TFLOPS in computation-bound configuration on H800 SXM5, using CUDA 12.8.
Usage
from flash_mla import get_mla_metadata, flash_mla_with_kvcache
tile_scheduler_metadata, num_splits = get_mla_metadata(cache_seqlens, s_q * h_q // h_kv, h_kv)
for i in range(num_layers):
...
o_i, lse_i = flash_mla_with_kvcache(
q_i, kvcache_i, block_table, cache_seqlens, dv,
tile_scheduler_metadata, num_splits, causal=True,
)
...
Requirements
- Hopper GPUs
- CUDA 12.3 and above
- But we highly recommend 12.8 or above for the best performance
- PyTorch 2.0 and above
Acknowledgement
FlashMLA is inspired by FlashAttention 2&3 and cutlass projects.
Community Support
MetaX
For MetaX GPUs, visit the official website: MetaX.
The corresponding FlashMLA version can be found at: MetaX-MACA/FlashMLA
Moore Threads
For the Moore Threads GPU, visit the official website: Moore Threads.
The corresponding FlashMLA version is available on GitHub: MooreThreads/MT-flashMLA.
Hygon DCU
For the Hygon DCU, visit the official website: Hygon Developer.
The corresponding FlashMLA version is available here: OpenDAS/MLAttention.
Intellifusion
For the Intellifusion NNP, visit the official website: Intellifusion.
The corresponding FlashMLA version is available on Gitee: Intellifusion/tyllm.
Iluvatar Corex
For Iluvatar Corex GPUs, visit the official website: Iluvatar Corex.
The corresponding FlashMLA version is available on GitHub: Deep-Spark/FlashMLA
Citation
@misc{flashmla2025,
title={FlashMLA: Efficient MLA decoding kernels},
author={Jiashi Li},
year={2025},
publisher = {GitHub},
howpublished = {\url{https://github.com/deepseek-ai/FlashMLA}},
}