Analysis of Large-Scale Multi-Tenant {GPU} Clusters for {DNN} Training Workloads

  • Myeongjae Jeon ,
  • Shivaram Venkataraman ,
  • Amar Phanishayee ,
  • Junjie Qian ,
  • Wencong Xiao ,

2019 USENIX Annual Technical Conference |

Organized by USENIX

Publication

With widespread advances in machine learning, a number of large enterprises are beginning to incorporate machine learning models across a number of products. These models are typically trained on shared, multi-tenant GPU clusters. Similar to existing cluster computing workloads, scheduling frameworks aim to provide features like high efficiency, resource isolation, fair sharing across users, etc. However Deep Neural Network (DNN) based workloads, predominantly trained on GPUs, differ in two significant ways from traditional big data analytics workloads. First, from a cluster utilization perspective, GPUs represent a monolithic resource that cannot be shared at a fine granularity across users. Second, from a workload perspective, deep learning frameworks require gang scheduling reducing the flexibility of scheduling and making the jobs themselves inelastic to failures at runtime. In this paper we present a detailed workload characterization of a two-month long trace from a multi-tenant GPU cluster in a large enterprise. By correlating scheduler logs with logs from individual jobs, we study three distinct issues that affect cluster utilization for DNN training workloads on multi-tenant clusters: (1) the effect of gang scheduling and locality constraints on queuing, (2) the effect of locality on GPU utilization, and (3) failures during training. Based on our experience running a large-scale operation, we provide design guidelines pertaining to next-generation cluster schedulers for DNN training workloads. Traces used in the paper are now available!

Publication Downloads

Philly Traces

June 15, 2020

This repository contains a representative subset of the first-party DNN training workloads on Microsoft's internal Philly clusters. The trace is a sanitized subset of the workload described in "Analysis of Large-Scale Multi-Tenant GPU Clusters for DNN Training Workloads" in ATC’19. This work was done as part of Microsoft Research's Project Fiddle.