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Hardware-Aligned and Natively Trainable Sparse Attention
The latest paper from DeepSeek introduces a new attention mechanism — NSA, a locally trainable sparse attention mechanism for ultra-fast long-context training and inference.
YiFan Zhang,Shanglin Lei,Runqi Qiao,Zhuoma GongQue,Xiaoshuai Song,Guanting Dong, Qiuna Tan, Zhe Wei, Peiqing Yang, Ye Tian, Yadong Xue, Xiaofei Wang,
CoRR (2024)
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Computing Research Repository (2024)
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Mixture of Block Attention for Long-Context LLMs
Kimi proposed a new attention mechanism, MoBA, which combines the principles of MoE and improves the efficiency of LLMs in long-text scenarios without sacrificing performance.
Minghao Xu, Lichuan Xiang,Xu Cai,Hongkai Wen
CoRR (2024)
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Benjamin Warner, Antoine Chaffin,Benjamin Clavié,Orion Weller, Oskar Hallström, Said Taghadouini, Alexis Gallagher, Raja Biswas,Faisal Ladhak, Tom Aarsen,Nathan Cooper,Griffin Adams,
CoRR (2024)
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Frank F. Xu, Yufan Song, Boxuan Li, Yuxuan Tang, Kritanjali Jain, Mengxue Bao, Zora Z. Wang,Xuhui Zhou, Zhitong Guo, Murong Cao, Mingyang Yang, Hao Yang Lu,
Computing Research Repository (2024)
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This paper introduces a new technique called SparQ Attention, which can significantly reduce the memory bandwidth requirements of generative large language models during inference, thereby improving the throughput of LLM inference.
Luka Ribar,Ivan Chelombiev, Luke Hudlass-Galley,Charlie Blake, Carlo Luschi, Douglas Orr
CoRR (2023)
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Scaling up the size of vision models has become a practical trend to obtain more powerful visual representations. But is "bigger" always "better" in the future? This paper discusses the aspects of larger vision models that may not be necessary.
Baifeng Shi, Ziyang Wu, Maolin Mao,Xin Wang,Trevor DarrellTop Scholar
arXiv (2024)
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Ziyin Zhang, Chaoyu Chen,Bingchang Liu, Cong Liao, Zi Gong,Hang Yu,Jianguo Li,Rui Wang
CoRR (2023)
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Minghua Liu,Ruoxi Shi,Linghao Chen, Zhuoyang Zhang,Chao Xu,Xinyue Wei,Hansheng Chen, Chong Zeng, Jiayuan Gu,Hao SuTop Scholar
CVPR 2024 (2023)
Cited41Views7404
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CoRR (2023)
Cited15Views5112
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Hongxuan Zhang,Zhining Liu, Jiaqi Zheng ,Chenyi Zhuang, Jinjie Gu,Guihai ChenTop Scholar
CoRR (2023)
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