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InfiniPot: Infinite Context Processing on Memory-Constrained LLMs

About

Handling long input contexts remains a significant challenge for Large Language Models (LLMs), particularly in resource-constrained environments such as mobile devices. Our work aims to address this limitation by introducing InfiniPot, a novel KV cache control framework designed to enable pre-trained LLMs to manage extensive sequences within fixed memory constraints efficiently, without requiring additional training. InfiniPot leverages Continual Context Distillation (CCD), an iterative process that compresses and retains essential information through novel importance metrics, effectively maintaining critical data even without access to future context. Our comprehensive evaluations indicate that InfiniPot significantly outperforms models trained for long contexts in various NLP tasks, establishing its efficacy and versatility. This work represents a substantial advancement toward making LLMs applicable to a broader range of real-world scenarios.

Minsoo Kim, Kyuhong Shim, Jungwook Choi, Simyung Chang• 2024

Related benchmarks

TaskDatasetResultRank
Long-context Question AnsweringLocomo
F1 (Multi Hop)27.7
171
Long-context Question AnsweringLongMemEval LongConvQA
SH Score90.3
84
Long-term Conversation Question AnsweringREALTALK
Multi-hop Score38.3
84
Long-context Conversational Question AnsweringLocomo
Multi-Hop F133.1
59
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