MELODI: Exploring Memory Compression for Long Contexts
Chen, Yinpeng, Hutchins, DeLesley, Jansen, Aren, Zhmoginov, Andrey, Racz, David, Andersen, Jesper
–arXiv.org Artificial Intelligence
We present MELODI, a novel memory architecture designed to efficiently process long documents using short context windows. The key principle behind MELODI is to represent short-term and long-term memory as a hierarchical compression scheme across both network layers and context windows. Specifically, the short-term memory is achieved through recurrent compression of context windows across multiple layers, ensuring smooth transitions between windows. In contrast, the long-term memory performs further compression within a single middle layer and aggregates information across context windows, effectively consolidating crucial information from the entire history. Compared to a strong baseline - the Memorizing Transformer employing dense attention over a large long-term memory (64K key-value pairs) - our method demonstrates superior performance on various long-context datasets while remarkably reducing the memory footprint by a factor of 8.
arXiv.org Artificial Intelligence
Oct-4-2024
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