MoSKA: Mixture of Shared KV Attention for Efficient Long-Sequence LLM Inference

November 08, 2025 ยท Declared Dead ยท ๐Ÿ› IEEE computer architecture letters

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Authors Myunghyun Rhee, Sookyung Choi, Euiseok Kim, Joonseop Sim, Youngpyo Joo, Hoshik Kim arXiv ID 2511.06010 Category cs.LG: Machine Learning Cross-listed cs.AI, cs.DC Citations 1 Venue IEEE computer architecture letters Last Checked 4 months ago
Abstract
The escalating context length in Large Language Models (LLMs) creates a severe performance bottleneck around the Key-Value (KV) cache, whose memory-bound nature leads to significant GPU under-utilization. This paper introduces Mixture of Shared KV Attention (MoSKA), an architecture that addresses this challenge by exploiting the heterogeneity of context data. It differentiates between per-request unique and massively reused shared sequences. The core of MoSKA is a novel Shared KV Attention mechanism that transforms the attention on shared data from a series of memory-bound GEMV operations into a single, compute-bound GEMM by batching concurrent requests. This is supported by an MoE-inspired sparse attention strategy that prunes the search space and a tailored Disaggregated Infrastructure that specializes hardware for unique and shared data. This comprehensive approach demonstrates a throughput increase of up to 538.7x over baselines in workloads with high context sharing, offering a clear architectural path toward scalable LLM inference.
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