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arxiv: 2402.04925 · v1 · pith:DLY2RBIH · submitted 2024-01-15 · cs.DC · cs.LG

TP-Aware Dequantization

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classification cs.DC cs.LG
keywords deploymentinferencemethodspeedupa100accessaddresscommunication
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In this paper, we present a novel method that reduces model inference latency during distributed deployment of Large Language Models (LLMs). Our contribution is an optimized inference deployment scheme that address the current limitations of state-of-the-art quantization kernels when used in conjunction with Tensor Parallel (TP). Our method preserves data locality in GPU memory access patterns and exploits a priori knowledge of TP to reduce global communication. We demonstrate an up to 1.81x speedup over existing methods for Llama-70B and up to 1.78x speedup for IBM WatsonX's Granite-20B MLP layer problem sizes on A100 and H100 NVIDIA DGX Systems for a variety of TP settings.

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