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HuggingFace Paper

Fast-weight Product Key Memory

Tianyu Zhao, Llion JonesJanuary 2, 2026

Summary

Fast-weight Product Key Memory adds a dynamic, almost "scratchpad" store alongside the usual attention in language models. It aims to keep the efficiency of linear attention while recovering much of softmax attention’s ability to remember rare, long-range details.

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