Deep Learning Training in Facebook Data Centers: Design of Scale-up and Scale-out Systems
Large-scale training is important to ensure high performance and accuracy of machine-learning models. At Facebook we use many different models, including computer vision, video and language models. However, in this paper we focus on the deep learning recommendation models (DLRMs), which are responsi...
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Zusammenfassung: | Large-scale training is important to ensure high performance and accuracy of
machine-learning models. At Facebook we use many different models, including
computer vision, video and language models. However, in this paper we focus on
the deep learning recommendation models (DLRMs), which are responsible for more
than 50% of the training demand in our data centers. Recommendation models
present unique challenges in training because they exercise not only compute
but also memory capacity as well as memory and network bandwidth. As model size
and complexity increase, efficiently scaling training becomes a challenge. To
address it we design Zion - Facebook's next-generation large-memory training
platform that consists of both CPUs and accelerators. Also, we discuss the
design requirements of future scale-out training systems. |
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DOI: | 10.48550/arxiv.2003.09518 |