LGAICLApr 9

KV Cache Offloading for Context-Intensive Tasks

arXiv:2604.0842672.21 citations
AI Analysis

This addresses a critical bottleneck for long-context LLMs in applications requiring high information extraction, though it is incremental as it builds on existing offloading methods.

The paper tackled the problem of KV-cache offloading degrading performance in context-intensive tasks, where solutions require extensive information lookup from prompts, and found that a simpler alternative strategy significantly improves accuracy across multiple LLM families and benchmarks.

With the growing demand for long-context LLMs across a wide range of applications, the key-value (KV) cache has become a critical bottleneck for both latency and memory usage. Recently, KV-cache offloading has emerged as a promising approach to reduce memory footprint and inference latency while preserving accuracy. Prior evaluations have largely focused on tasks that do not require extracting large amounts of information from the context. In this work, we study KV-cache offloading on context-intensive tasks: problems where the solution requires looking up a lot of information from the input prompt. We create and release the Text2JSON benchmark, a highly context-intensive task that requires extracting structured knowledge from raw text. We evaluate modern KV offloading on Text2JSON and other context-intensive tasks and find significant performance degradation on both Llama 3 and Qwen 3 models. Our analysis identifies two key reasons for poor accuracy: low-rank projection of keys and unreliable landmarks, and proposes a simpler alternative strategy that significantly improves accuracy across multiple LLM families and benchmarks. These findings highlight the need for a comprehensive and rigorous evaluation of long-context compression techniques.

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