Facebook的应用机器学习:数据中心基础设施的视角

K. Hazelwood, Sarah Bird, D. Brooks, Soumith Chintala, Utku Diril, Dmytro Dzhulgakov, Mohamed Fawzy, Bill Jia, Yangqing Jia, Aditya Kalro, James Law, Kevin Lee, Jason Lu, P. Noordhuis, M. Smelyanskiy, Liang Xiong, Xiaodong Wang
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引用次数: 493

摘要

机器学习是Facebook许多重要产品和服务的核心。本文描述了支持全球范围内机器学习的硬件和软件基础设施。Facebook的机器学习工作负载非常多样化:服务在实践中需要许多不同类型的模型。这种多样性对系统堆栈中的所有层都有影响。此外,Facebook存储的所有数据中有相当大一部分是通过机器学习管道流动的,这对将数据交付给高性能分布式训练流提出了重大挑战。计算要求也很高,需要同时利用GPU和CPU平台进行训练,并利用丰富的CPU容量进行实时推理。解决这些和其他新出现的挑战仍然需要不同的努力,包括机器学习算法、软件和硬件设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applied Machine Learning at Facebook: A Datacenter Infrastructure Perspective
Machine learning sits at the core of many essential products and services at Facebook. This paper describes the hardware and software infrastructure that supports machine learning at global scale. Facebook's machine learning workloads are extremely diverse: services require many different types of models in practice. This diversity has implications at all layers in the system stack. In addition, a sizable fraction of all data stored at Facebook flows through machine learning pipelines, presenting significant challenges in delivering data to high-performance distributed training flows. Computational requirements are also intense, leveraging both GPU and CPU platforms for training and abundant CPU capacity for real-time inference. Addressing these and other emerging challenges continues to require diverse efforts that span machine learning algorithms, software, and hardware design.
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