md - rooline:分布式深度学习的训练性能分析模型

Tianhao Miao, Qinghua Wu, Ting Liu, Penglai Cui, Rui Ren, Zhenyu Li, Gaogang Xie
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引用次数: 0

摘要

由于分布式深度学习(DDL)系统的庞大和复杂,它给人工智能研究人员和运营工程师在训练阶段分析、诊断和定位性能瓶颈留下了巨大的挑战。现有的性能模型和框架对性能掉队所导致的性能降低几乎没有了解。本文引入了训练绩效分析模型md - rooline,将传统的训练绩效分析模型扩展到通信维度。该模型在应用程序级别考虑分层属性,在硬件级别考虑一系列可实现的峰值性能指标。在我们的md - rooline的帮助下,AI研究人员和DDL运维工程师可以定位系统瓶颈,这包括三个维度:gpu内部的计算能力,gpu内部的内存访问带宽和gpu之间的通信带宽。在训练12个经典cnn时,我们证明了我们的性能分析模型在瓶颈分析方面提供了很好的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MD-Roofline: A Training Performance Analysis Model for Distributed Deep Learning
Due to the bulkiness and sophistication of the Distributed Deep Learning (DDL) systems, it leaves an enormous challenge for AI researchers and operation engineers to analyze, diagnose and locate the performance bottleneck during the training stage. Existing performance models and frameworks gain little insight on the performance reduction that a performance straggler induces. In this paper, we introduce MD-Roofline, a training performance analysis model, which extends the traditional rooftine model with communication dimension. The model considers the layer-wise attributes at application level, and a series of achievable peak performance metrics at hardware level. With the assistance of our MD-Roofline, the AI researchers and DDL operation engineers could locate the system bottleneck, which contains three dimensions: intra-GPU computation capacity, intra-GPU memory access bandwidth and inter-GPU communication bandwidth. We demonstrate that our performance analysis model provides great insights in bottleneck analysis when training 12 classic CNNs.
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