📡Low-Level Networkingarxiv.orgContent type: Academic

SAC: Disaggregated KV Cache System for Sparse Attention LLMs with CXL (opens in new tab)

The scaling of LLMs toward long-context inference has shifted the primary serving system bottleneck from computation to memory capacity. Traditional solutions for dense attention models rely on RDMA-based disaggregated memory pools, which perform coarse-grained fetching of the entire prefix KV cache from remote storage to local memory before decoding. However, this approach is fundamentally inefficient for emerging sparse attention models. While...

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