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Fast State Restoration in LLM Serving with HCache

S.Y. Gao, Youmin Chen, Jiwu Shu

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Abstract

The growing complexity of LLM usage today, e.g., multi-round conversation and retrieval-augmented generation (RAG), makes contextual states (i.e., KV cache) reusable across user requests. Given the capacity constraints of GPU memory, only a limited number of contexts can be cached on GPU for reusing. Existing inference systems typically evict part of the KV cache and restore it by recomputing it from the original tokens or offloading it to host storage for later retrieval, both of which introduce substantial computational or I/O overheads.

Topics & Concepts

State (computer science)Computer scienceProgramming languageAdvanced MRI Techniques and ApplicationsAdvanced Data Storage TechnologiesMagnetic properties of thin films