Feb. 13, 2024, 5:49 a.m. | Jianhui Pang Fanghua Ye Derek F. Wong Longyue Wang

cs.CL updates on arXiv.org arxiv.org

Large language models (LLMs) predominantly employ decoder-only transformer architectures, necessitating the retention of keys/values information for historical tokens to provide contextual information and avoid redundant computation. However, the substantial size and parameter volume of these LLMs require massive GPU memory. This memory demand increases with the length of the input text, leading to an urgent need for more efficient methods of information storage and processing. This study introduces the Anchor-based LLM (AnLLM), which utilizes an innovative anchor-based self-attention network (AnSAN) …

anchor architectures computation cs.ai cs.cl decoder demand gpu information keys language language models large language large language models llms massive memory retention text tokens transformer values

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