CLJun 17, 2024

Endor: Hardware-Friendly Sparse Format for Offloaded LLM Inference

arXiv:2406.11674v1
Originality Incremental advance
AI Analysis

This addresses the problem of slow inference on resource-constrained platforms for users deploying large language models, representing an incremental improvement in optimization techniques.

The paper tackles the bottleneck of weight transfer latency in offloaded LLM inference by proposing a novel sparse format called Endor, which compresses unstructured sparse patterns to reduce transfer time, achieving speedups of up to 2.37x on models like Llama2-70B.

The increasing size of large language models (LLMs) challenges their usage on resource-constrained platforms. For example, memory on modern GPUs is insufficient to hold LLMs that are hundreds of Gigabytes in size. Offloading is a popular method to escape this constraint by storing weights of an LLM model to host CPU memory and SSD, then loading each weight to GPU before every use. In our case study of offloaded inference, we found that due to the low bandwidth between storage devices and GPU, the latency of transferring large model weights from its offloaded location to GPU memory becomes the critical bottleneck with actual compute taking nearly 0% of runtime. To effectively reduce the weight transfer latency, we propose a novel sparse format that compresses the unstructured sparse pattern of pruned LLM weights to non-zero values with high compression ratio and low decompression overhead. Endor achieves this by expressing the positions of non-zero elements with a bitmap. Compared to offloaded inference using the popular Huggingface Accelerate, applying Endor accelerates OPT-66B by 1.70x and Llama2-70B by 1.78x. When direct weight transfer from SSD to GPU is leveraged, Endor achieves 2.25x speedup on OPT-66B and 2.37x speedup on Llama2-70B.

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