Characterization and prediction of deep learning workloads in large-scale gpu datacenters

Q Hu, P Sun, S Yan, Y Wen, T Zhang - Proceedings of the International …, 2021 - dl.acm.org
Proceedings of the International Conference for High Performance Computing …, 2021dl.acm.org
Modern GPU datacenters are critical for delivering Deep Learning (DL) models and services
in both the research community and industry. When operating a datacenter, optimization of
resource scheduling and management can bring significant financial benefits. Achieving this
goal requires a deep understanding of the job features and user behaviors. We present a
comprehensive study about the characteristics of DL jobs and resource management. First,
we perform a large-scale analysis of real-world job traces from SenseTime. We uncover …
Modern GPU datacenters are critical for delivering Deep Learning (DL) models and services in both the research community and industry. When operating a datacenter, optimization of resource scheduling and management can bring significant financial benefits. Achieving this goal requires a deep understanding of the job features and user behaviors. We present a comprehensive study about the characteristics of DL jobs and resource management. First, we perform a large-scale analysis of real-world job traces from SenseTime. We uncover some interesting conclusions from the perspectives of clusters, jobs and users, which can facilitate the cluster system designs. Second, we introduce a general-purpose framework, which manages resources based on historical data. As case studies, we design (1) a Quasi-Shortest-Service-First scheduling service, which can minimize the cluster-wide average job completion time by up to 6.5×; (2) a Cluster Energy Saving service, which improves overall cluster utilization by up to 13%.
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