LGJul 3, 2025

HGCA: Hybrid GPU-CPU Attention for Long Context LLM Inference

arXiv:2507.03153v13 citationsh-index: 4
AI Analysis

This addresses memory constraints for deploying large language models in long-context applications, though it is incremental as it builds on existing offloading and sparse attention methods.

HGCA tackles the GPU memory bottleneck in long-context LLM inference by using a hybrid GPU-CPU attention mechanism, achieving near-full attention quality with superior scalability and outperforming sparse attention baselines on commodity hardware.

Scaling inference for large language models (LLMs) is increasingly constrained by limited GPU memory, especially due to growing key-value (KV) caches required for long-context generation. While existing approaches offload KV caches to CPU memory or apply sparse attention to reduce GPU load, they often underutilize CPU compute resources and compromise accuracy. We present HGCA, a hybrid CPU-GPU attention mechanism that enables scalable, high-throughput LLM inference with near-full attention quality. HGCA performs dense attention on recently generated KV entries retained in GPU memory and parallel sparse attention on selected, salient KV entries in CPU memory. The attention outputs are efficiently merged using log-sum-exp fusion, minimizing PCIe transfer overhead. HGCA also introduces a finegrained, per-head sparsification strategy optimized for CPU execution, preserving contextual relevance while reducing computation. Our implementation seamlessly integrates into existing LLM frameworks without requiring model retraining. Experiments across diverse models and workloads show that HGCA achieves superior scalability, supports longer sequences and larger batch sizes, and outperforms existing sparse attention baselines in both performance and accuracy -- all on commodity GPU hardware.

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