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We present DeepSeek-V2, a strong Mixture-of-Experts (MoE) language model characterized by economical training and efficient inference. It comprises 236B total parameters, of which 21B are activated for each token, and supports a context…

Computation and Language · Computer Science 2024-06-21 DeepSeek-AI , Aixin Liu , Bei Feng , Bin Wang , Bingxuan Wang , Bo Liu , Chenggang Zhao , Chengqi Dengr , Chong Ruan , Damai Dai , Daya Guo , Dejian Yang , Deli Chen , Dongjie Ji , Erhang Li , Fangyun Lin , Fuli Luo , Guangbo Hao , Guanting Chen , Guowei Li , H. Zhang , Hanwei Xu , Hao Yang , Haowei Zhang , Honghui Ding , Huajian Xin , Huazuo Gao , Hui Li , Hui Qu , J. L. Cai , Jian Liang , Jianzhong Guo , Jiaqi Ni , Jiashi Li , Jin Chen , Jingyang Yuan , Junjie Qiu , Junxiao Song , Kai Dong , Kaige Gao , Kang Guan , Lean Wang , Lecong Zhang , Lei Xu , Leyi Xia , Liang Zhao , Liyue Zhang , Meng Li , Miaojun Wang , Mingchuan Zhang , Minghua Zhang , Minghui Tang , Mingming Li , Ning Tian , Panpan Huang , Peiyi Wang , Peng Zhang , Qihao Zhu , Qinyu Chen , Qiushi Du , R. J. Chen , R. L. Jin , Ruiqi Ge , Ruizhe Pan , Runxin Xu , Ruyi Chen , S. S. Li , Shanghao Lu , Shangyan Zhou , Shanhuang Chen , Shaoqing Wu , Shengfeng Ye , Shirong Ma , Shiyu Wang , Shuang Zhou , Shuiping Yu , Shunfeng Zhou , Size Zheng , T. Wang , Tian Pei , Tian Yuan , Tianyu Sun , W. L. Xiao , Wangding Zeng , Wei An , Wen Liu , Wenfeng Liang , Wenjun Gao , Wentao Zhang , X. Q. Li , Xiangyue Jin , Xianzu Wang , Xiao Bi , Xiaodong Liu , Xiaohan Wang , Xiaojin Shen , Xiaokang Chen , Xiaosha Chen , Xiaotao Nie , Xiaowen Sun , Xiaoxiang Wang , Xin Liu , Xin Xie , Xingkai Yu , Xinnan Song , Xinyi Zhou , Xinyu Yang , Xuan Lu , Xuecheng Su , Y. Wu , Y. K. Li , Y. X. Wei , Y. X. Zhu , Yanhong Xu , Yanping Huang , Yao Li , Yao Zhao , Yaofeng Sun , Yaohui Li , Yaohui Wang , Yi Zheng , Yichao Zhang , Yiliang Xiong , Yilong Zhao , Ying He , Ying Tang , Yishi Piao , Yixin Dong , Yixuan Tan , Yiyuan Liu , Yongji Wang , Yongqiang Guo , Yuchen Zhu , Yuduan Wang , Yuheng Zou , Yukun Zha , Yunxian Ma , Yuting Yan , Yuxiang You , Yuxuan Liu , Z. Z. Ren , Zehui Ren , Zhangli Sha , Zhe Fu , Zhen Huang , Zhen Zhang , Zhenda Xie , Zhewen Hao , Zhihong Shao , Zhiniu Wen , Zhipeng Xu , Zhongyu Zhang , Zhuoshu Li , Zihan Wang , Zihui Gu , Zilin Li , Ziwei Xie

Sparsely-gated mixture-of-experts (MoE) has been widely adopted to scale deep learning models to trillion-plus parameters with fixed computational cost. The algorithmic performance of MoE relies on its token routing mechanism that forwards…

Distributed, Parallel, and Cluster Computing · Computer Science 2023-06-06 Changho Hwang , Wei Cui , Yifan Xiong , Ziyue Yang , Ze Liu , Han Hu , Zilong Wang , Rafael Salas , Jithin Jose , Prabhat Ram , Joe Chau , Peng Cheng , Fan Yang , Mao Yang , Yongqiang Xiong

We introduce MiniMax-M1, the world's first open-weight, large-scale hybrid-attention reasoning model. MiniMax-M1 is powered by a hybrid Mixture-of-Experts (MoE) architecture combined with a lightning attention mechanism. The model is…

Computation and Language · Computer Science 2025-06-17 MiniMax , : , Aili Chen , Aonian Li , Bangwei Gong , Binyang Jiang , Bo Fei , Bo Yang , Boji Shan , Changqing Yu , Chao Wang , Cheng Zhu , Chengjun Xiao , Chengyu Du , Chi Zhang , Chu Qiao , Chunhao Zhang , Chunhui Du , Congchao Guo , Da Chen , Deming Ding , Dianjun Sun , Dong Li , Enwei Jiao , Haigang Zhou , Haimo Zhang , Han Ding , Haohai Sun , Haoyu Feng , Huaiguang Cai , Haichao Zhu , Jian Sun , Jiaqi Zhuang , Jiaren Cai , Jiayuan Song , Jin Zhu , Jingyang Li , Jinhao Tian , Jinli Liu , Junhao Xu , Junjie Yan , Junteng Liu , Junxian He , Kaiyi Feng , Ke Yang , Kecheng Xiao , Le Han , Leyang Wang , Lianfei Yu , Liheng Feng , Lin Li , Lin Zheng , Linge Du , Lingyu Yang , Lunbin Zeng , Minghui Yu , Mingliang Tao , Mingyuan Chi , Mozhi Zhang , Mujie Lin , Nan Hu , Nongyu Di , Peng Gao , Pengfei Li , Pengyu Zhao , Qibing Ren , Qidi Xu , Qile Li , Qin Wang , Rong Tian , Ruitao Leng , Shaoxiang Chen , Shaoyu Chen , Shengmin Shi , Shitong Weng , Shuchang Guan , Shuqi Yu , Sichen Li , Songquan Zhu , Tengfei Li , Tianchi Cai , Tianrun Liang , Weiyu Cheng , Weize Kong , Wenkai Li , Xiancai Chen , Xiangjun Song , Xiao Luo , Xiao Su , Xiaobo Li , Xiaodong Han , Xinzhu Hou , Xuan Lu , Xun Zou , Xuyang Shen , Yan Gong , Yan Ma , Yang Wang , Yiqi Shi , Yiran Zhong , Yonghong Duan , Yongxiang Fu , Yongyi Hu , Yu Gao , Yuanxiang Fan , Yufeng Yang , Yuhao Li , Yulin Hu , Yunan Huang , Yunji Li , Yunzhi Xu , Yuxin Mao , Yuxuan Shi , Yuze Wenren , Zehan Li , Zelin Li , Zhanxu Tian , Zhengmao Zhu , Zhenhua Fan , Zhenzhen Wu , Zhichao Xu , Zhihang Yu , Zhiheng Lyu , Zhuo Jiang , Zibo Gao , Zijia Wu , Zijian Song , Zijun Sun

Sliding-window attention offers a hardware-efficient solution to the memory and throughput challenges of Large Language Models (LLMs) in long-context scenarios. Existing methods typically employ a single window length across all attention…

We present DeepSeek-VL2, an advanced series of large Mixture-of-Experts (MoE) Vision-Language Models that significantly improves upon its predecessor, DeepSeek-VL, through two key major upgrades. For the vision component, we incorporate a…

The vanilla self-attention mechanism in Transformers can be viewed as a two-layer fast-weight MLP, whose weights are dynamically induced by inputs and whose hidden dimension is equal to the sequence length $N$. As the context extends, the…

Machine Learning · Computer Science 2026-05-12 Qishuai Wen , Zhiyuan Huang , Xianghan Meng , Wei He , Chun-Guang Li

Despite many recent works on Mixture of Experts (MoEs) for resource-efficient Transformer language models, existing methods mostly focus on MoEs for feedforward layers. Previous attempts at extending MoE to the self-attention layer fail to…

Machine Learning · Computer Science 2024-10-02 Róbert Csordás , Piotr Piękos , Kazuki Irie , Jürgen Schmidhuber

We present DeepSeek-V3, a strong Mixture-of-Experts (MoE) language model with 671B total parameters with 37B activated for each token. To achieve efficient inference and cost-effective training, DeepSeek-V3 adopts Multi-head Latent…

Computation and Language · Computer Science 2025-02-19 DeepSeek-AI , Aixin Liu , Bei Feng , Bing Xue , Bingxuan Wang , Bochao Wu , Chengda Lu , Chenggang Zhao , Chengqi Deng , Chenyu Zhang , Chong Ruan , Damai Dai , Daya Guo , Dejian Yang , Deli Chen , Dongjie Ji , Erhang Li , Fangyun Lin , Fucong Dai , Fuli Luo , Guangbo Hao , Guanting Chen , Guowei Li , H. Zhang , Han Bao , Hanwei Xu , Haocheng Wang , Haowei Zhang , Honghui Ding , Huajian Xin , Huazuo Gao , Hui Li , Hui Qu , J. L. Cai , Jian Liang , Jianzhong Guo , Jiaqi Ni , Jiashi Li , Jiawei Wang , Jin Chen , Jingchang Chen , Jingyang Yuan , Junjie Qiu , Junlong Li , Junxiao Song , Kai Dong , Kai Hu , Kaige Gao , Kang Guan , Kexin Huang , Kuai Yu , Lean Wang , Lecong Zhang , Lei Xu , Leyi Xia , Liang Zhao , Litong Wang , Liyue Zhang , Meng Li , Miaojun Wang , Mingchuan Zhang , Minghua Zhang , Minghui Tang , Mingming Li , Ning Tian , Panpan Huang , Peiyi Wang , Peng Zhang , Qiancheng Wang , Qihao Zhu , Qinyu Chen , Qiushi Du , R. J. Chen , R. L. Jin , Ruiqi Ge , Ruisong Zhang , Ruizhe Pan , Runji Wang , Runxin Xu , Ruoyu Zhang , Ruyi Chen , S. S. Li , Shanghao Lu , Shangyan Zhou , Shanhuang Chen , Shaoqing Wu , Shengfeng Ye , Shengfeng Ye , Shirong Ma , Shiyu Wang , Shuang Zhou , Shuiping Yu , Shunfeng Zhou , Shuting Pan , T. Wang , Tao Yun , Tian Pei , Tianyu Sun , W. L. Xiao , Wangding Zeng , Wanjia Zhao , Wei An , Wen Liu , Wenfeng Liang , Wenjun Gao , Wenqin Yu , Wentao Zhang , X. Q. Li , Xiangyue Jin , Xianzu Wang , Xiao Bi , Xiaodong Liu , Xiaohan Wang , Xiaojin Shen , Xiaokang Chen , Xiaokang Zhang , Xiaosha Chen , Xiaotao Nie , Xiaowen Sun , Xiaoxiang Wang , Xin Cheng , Xin Liu , Xin Xie , Xingchao Liu , Xingkai Yu , Xinnan Song , Xinxia Shan , Xinyi Zhou , Xinyu Yang , Xinyuan Li , Xuecheng Su , Xuheng Lin , Y. K. Li , Y. Q. Wang , Y. X. Wei , Y. X. Zhu , Yang Zhang , Yanhong Xu , Yanhong Xu , Yanping Huang , Yao Li , Yao Zhao , Yaofeng Sun , Yaohui Li , Yaohui Wang , Yi Yu , Yi Zheng , Yichao Zhang , Yifan Shi , Yiliang Xiong , Ying He , Ying Tang , Yishi Piao , Yisong Wang , Yixuan Tan , Yiyang Ma , Yiyuan Liu , Yongqiang Guo , Yu Wu , Yuan Ou , Yuchen Zhu , Yuduan Wang , Yue Gong , Yuheng Zou , Yujia He , Yukun Zha , Yunfan Xiong , Yunxian Ma , Yuting Yan , Yuxiang Luo , Yuxiang You , Yuxuan Liu , Yuyang Zhou , Z. F. Wu , Z. Z. Ren , Zehui Ren , Zhangli Sha , Zhe Fu , Zhean Xu , Zhen Huang , Zhen Zhang , Zhenda Xie , Zhengyan Zhang , Zhewen Hao , Zhibin Gou , Zhicheng Ma , Zhigang Yan , Zhihong Shao , Zhipeng Xu , Zhiyu Wu , Zhongyu Zhang , Zhuoshu Li , Zihui Gu , Zijia Zhu , Zijun Liu , Zilin Li , Ziwei Xie , Ziyang Song , Ziyi Gao , Zizheng Pan

We introduce Kimi K2, a Mixture-of-Experts (MoE) large language model with 32 billion activated parameters and 1 trillion total parameters. We propose the MuonClip optimizer, which improves upon Muon with a novel QK-clip technique to…

Machine Learning · Computer Science 2026-02-04 Kimi Team , Yifan Bai , Yiping Bao , Y. Charles , Cheng Chen , Guanduo Chen , Haiting Chen , Huarong Chen , Jiahao Chen , Ningxin Chen , Ruijue Chen , Yanru Chen , Yuankun Chen , Yutian Chen , Zhuofu Chen , Jialei Cui , Hao Ding , Mengnan Dong , Angang Du , Chenzhuang Du , Dikang Du , Yulun Du , Yu Fan , Yichen Feng , Kelin Fu , Bofei Gao , Chenxiao Gao , Hongcheng Gao , Peizhong Gao , Tong Gao , Yuyao Ge , Shangyi Geng , Qizheng Gu , Xinran Gu , Longyu Guan , Haiqing Guo , Jianhang Guo , Xiaoru Hao , Tianhong He , Weiran He , Wenyang He , Yunjia He , Chao Hong , Hao Hu , Yangyang Hu , Zhenxing Hu , Weixiao Huang , Zhiqi Huang , Zihao Huang , Tao Jiang , Zhejun Jiang , Xinyi Jin , Yongsheng Kang , Guokun Lai , Cheng Li , Fang Li , Haoyang Li , Ming Li , Wentao Li , Yang Li , Yanhao Li , Yiwei Li , Zhaowei Li , Zheming Li , Hongzhan Lin , Xiaohan Lin , Zongyu Lin , Chengyin Liu , Chenyu Liu , Hongzhang Liu , Jingyuan Liu , Junqi Liu , Liang Liu , Shaowei Liu , T. Y. Liu , Tianwei Liu , Weizhou Liu , Yangyang Liu , Yibo Liu , Yiping Liu , Yue Liu , Zhengying Liu , Enzhe Lu , Haoyu Lu , Lijun Lu , Yashuo Luo , Shengling Ma , Xinyu Ma , Yingwei Ma , Shaoguang Mao , Jie Mei , Xin Men , Yibo Miao , Siyuan Pan , Yebo Peng , Ruoyu Qin , Zeyu Qin , Bowen Qu , Zeyu Shang , Lidong Shi , Shengyuan Shi , Feifan Song , Jianlin Su , Zhengyuan Su , Lin Sui , Xinjie Sun , Flood Sung , Yunpeng Tai , Heyi Tang , Jiawen Tao , Qifeng Teng , Chaoran Tian , Chensi Wang , Dinglu Wang , Feng Wang , Hailong Wang , Haiming Wang , Jianzhou Wang , Jiaxing Wang , Jinhong Wang , Shengjie Wang , Shuyi Wang , Si Wang , Xinyuan Wang , Yao Wang , Yejie Wang , Yiqin Wang , Yuxin Wang , Yuzhi Wang , Zhaoji Wang , Zhengtao Wang , Zhengtao Wang , Zhexu Wang , Chu Wei , Qianqian Wei , Haoning Wu , Wenhao Wu , Xingzhe Wu , Yuxin Wu , Chenjun Xiao , Jin Xie , Xiaotong Xie , Weimin Xiong , Boyu Xu , Jinjing Xu , L. H. Xu , Lin Xu , Suting Xu , Weixin Xu , Xinran Xu , Yangchuan Xu , Ziyao Xu , Jing Xu , Jing Xu , Junjie Yan , Yuzi Yan , Hao Yang , Xiaofei Yang , Yi Yang , Ying Yang , Zhen Yang , Zhilin Yang , Zonghan Yang , Haotian Yao , Xingcheng Yao , Wenjie Ye , Zhuorui Ye , Bohong Yin , Longhui Yu , Enming Yuan , Hongbang Yuan , Mengjie Yuan , Siyu Yuan , Haobing Zhan , Dehao Zhang , Hao Zhang , Wanlu Zhang , Xiaobin Zhang , Yadong Zhang , Yangkun Zhang , Yichi Zhang , Yizhi Zhang , Yongting Zhang , Yu Zhang , Yutao Zhang , Yutong Zhang , Zheng Zhang , Haotian Zhao , Yikai Zhao , Zijia Zhao , Huabin Zheng , Shaojie Zheng , Longguang Zhong , Jianren Zhou , Xinyu Zhou , Zaida Zhou , Jinguo Zhu , Zhen Zhu , Weiyu Zhuang , Xinxing Zu

While Mixture of Experts (MoE) models achieve remarkable efficiency by activating only subsets of parameters, they suffer from high memory access costs during inference. Memory-layer architectures offer an appealing alternative with very…

Machine Learning · Computer Science 2025-08-27 Zihao Huang , Yu Bao , Qiyang Min , Siyan Chen , Ran Guo , Hongzhi Huang , Defa Zhu , Yutao Zeng , Banggu Wu , Xun Zhou , Siyuan Qiao

In this paper, we explore a strategy that uses Mixture-of-Experts (MoE) to streamline, rather than augment, vision transformers. Each expert in an MoE layer is a SwiGLU feedforward network, where V and W2 are shared across the layer. No…

Computer Vision and Pattern Recognition · Computer Science 2024-07-26 Jen Hong Tan

The Mixture of Experts (MoE) models are an emerging class of sparsely activated deep learning models that have sublinear compute costs with respect to their parameters. In contrast with dense models, the sparse architecture of MoE offers…

Mixture-of-Experts (MoE) networks have been proposed as an efficient way to scale up model capacity and implement conditional computing. However, the study of MoE components mostly focused on the feedforward layer in Transformer…

Computation and Language · Computer Science 2022-10-12 Xiaofeng Zhang , Yikang Shen , Zeyu Huang , Jie Zhou , Wenge Rong , Zhang Xiong

Scaling depth is a key driver for large language models (LLMs). Yet, as LLMs become deeper, they often suffer from signal degradation: informative features formed in shallow layers are gradually diluted by repeated residual updates, making…

Computation and Language · Computer Science 2026-03-17 Lianghui Zhu , Yuxin Fang , Bencheng Liao , Shijie Wang , Tianheng Cheng , Zilong Huang , Chen Chen , Lai Wei , Yutao Zeng , Ya Wang , Yi Lin , Yu Li , Xinggang Wang

We introduce MiniMax-01 series, including MiniMax-Text-01 and MiniMax-VL-01, which are comparable to top-tier models while offering superior capabilities in processing longer contexts. The core lies in lightning attention and its efficient…

Vision large language models (VLLMs) are focusing primarily on handling complex and fine-grained visual information by incorporating advanced vision encoders and scaling up visual models. However, these approaches face high training and…

Computer Vision and Pattern Recognition · Computer Science 2025-11-18 Yuqi Pang , Bowen Yang , Yun Cao , Rong Fan , Xiaoyu Li , Chen He

Mixture of Experts (MoE) models enhance neural network scalability by dynamically selecting relevant experts per input token, enabling larger model sizes while maintaining manageable computation costs. However, efficient training of…

The quadratic complexity of full attention mechanisms poses a significant bottleneck for Video Diffusion Models (VDMs) aiming to generate long-duration, high-resolution videos. While various sparse attention methods have been proposed, many…

Computer Vision and Pattern Recognition · Computer Science 2025-07-01 Jianzong Wu , Liang Hou , Haotian Yang , Xin Tao , Ye Tian , Pengfei Wan , Di Zhang , Yunhai Tong

In this report, we introduce PLaMo 2, a series of Japanese-focused large language models featuring a hybrid Samba-based architecture that transitions to full attention via continual pre-training to support 32K token contexts. Training…

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