ISO: Overlap of Computation and Communication within Seqenence For LLM Inference

Bin Xiao, Lei Su
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Abstract

In the realm of Large Language Model (LLM) inference, the inherent structure of transformer models coupled with the multi-GPU tensor parallelism strategy leads to a sequential execution of computation and communication. This results in substantial underutilization of computing resources during the communication phase. To mitigate this inefficiency, various techniques have been developed to optimize the use of computational power throughout the communication process. These strategies primarily involve overlapping matrix computations and communications, as well as interleaving micro-batches across different requests. Nonetheless, these approaches either fall short of achieving ideal overlap or impose certain limitations on their application. To overcome these challenges, this paper introduces a novel strategy for computation-communication overlap that operates at the sequence level. This method not only enhances the degree of overlap but also minimizes the constraints on its applicability. Experimental evaluations conducted using 30b/70b models have demonstrated significant improvements in efficiency. Specifically, the proposed technique has been shown to reduce time consumption by approximately 35% on 4090 GPU and by roughly 15% on A800 GPU during the prefill stage of LLM inference.
ISO:用于 LLM 推断的序列内计算与通信的重叠
在大型语言模型(LLM)推理领域,变压器模型的固有结构与多 GPU 张量并行策略导致计算和通信的顺序执行。这导致在通信阶段计算资源利用率严重不足。这些策略主要涉及矩阵计算和通信的重叠,以及不同请求之间微批处理的交错。然而,这些方法要么无法实现理想的重叠,要么在应用上存在一定的局限性。为了克服这些挑战,本文介绍了一种在序列级运行的新型计算-通信重叠策略。这种方法不仅提高了重叠度,而且最大限度地减少了对其应用的限制。使用 30b/70b 模型进行的实验评估表明,该方法显著提高了效率。具体来说,在 LLM 推理的填充阶段,所提出的技术在 4090 GPU 上减少了约 35% 的时间消耗,在 A800 GPU 上减少了约 15%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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