{"id":1170822,"date":"2026-05-06T10:27:51","date_gmt":"2026-05-06T17:27:51","guid":{"rendered":"https:\/\/cm-edgetun.pages.dev\/en-us\/research\/publication\/unifying-sparse-attention-with-hierarchical-memory-for-scalable-long-context-llm-serving\/"},"modified":"2026-05-07T14:24:19","modified_gmt":"2026-05-07T21:24:19","slug":"unifying-sparse-attention-with-hierarchical-memory-for-scalable-long-context-llm-serving","status":"publish","type":"msr-research-item","link":"https:\/\/cm-edgetun.pages.dev\/en-us\/research\/publication\/unifying-sparse-attention-with-hierarchical-memory-for-scalable-long-context-llm-serving\/","title":{"rendered":"Unifying Sparse Attention with Hierarchical Memory for Scalable Long-Context LLM Serving"},"content":{"rendered":"<p>Long-context LLM serving is bottlenecked by the cost of attending over ever-growing KV caches. Dynamic sparse attention promises relief by accessing only a small, query-dependent subset of the KV state per decoding step and extending the KV storage to CPU memory. In practice, however, these algorithmic savings rarely translate into end-to-end system-level gains because sparse methods typically operate at different granularities and thus rely on ad hoc, per-algorithm implementations. At the same time, hierarchical KV storage introduces a new systems bottleneck: retrieving fine-grained, irregular KV subsets across the GPU-CPU boundary can easily erase the benefits of sparsity. We present SPIN, a sparse-attention-aware inference framework that co-designs the execution pipeline with hierarchical KV storage through three techniques: (1) a unified partition abstraction that maps different sparsity granularities onto a shared page-based KV substrate; (2) a locality-aware KV cache manager that dynamically sizes per-request HBM budgets and uses a GPU-friendly bucketed LRU policy to cut PCIe round-trips; and (3) a two-level hierarchical metadata layout sized to the active working set rather than the worst-case address space. Built on vLLM with three representative sparse attention algorithms, SPIN delivers 1.66-5.66x higher end-to-end throughput and 7-9x lower TTFT than vLLM, and reduces TPOT by up to 58% over the original sparse-attention implementations.<\/p>\n","protected":false},"excerpt":{"rendered":"<p>Long-context LLM serving is bottlenecked by the cost of attending over ever-growing KV caches. Dynamic sparse attention promises relief by accessing only a small, query-dependent subset of the KV state per decoding step and extending the KV storage to CPU memory. In practice, however, these algorithmic savings rarely translate into end-to-end system-level gains because sparse 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