Recurrent Context Compression: Efficiently Expanding the Context Window of LLM
Papers Read on AI

Recurrent Context Compression: Efficiently Expanding the Context Window of LLM

2024-06-24
To extend the context length of Transformer-based large language models (LLMs) and improve comprehension capabilities, we often face limitations due to computational resources and bounded memory storage capacity. This work introduces a method called Recurrent Context Compression (RCC), designed to efficiently expand the context window length of LLMs within constrained storage space. We also investigate the issue of poor model responses when both instructions and context are compressed in downstream...
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