Litcius/Paper detail

Performance-Aware Speculative Resource Oversubscription for Large-Scale Clusters

Renyu Yang, Chunming Hu, Xiaoyang Sun, Peter Garraghan, Tianyu Wo, Zhenyu Wen, Hao Peng, Jie Xu, Chao Li

2020IEEE Transactions on Parallel and Distributed Systems30 citationsDOIOpen Access PDF

Abstract

It is a long-standing challenge to achieve a high degree of resource utilization in cluster scheduling. Resource oversubscription has become a common practice in improving resource utilization and cost reduction. However, current centralized approaches to oversubscription suffer from the issue with resource mismatch and fail to take into account other performance requirements, e.g., tail latency. In this article we present ROSE, a new resource management platform capable of conducting performance-aware resource oversubscription. ROSE allows latency-sensitive long-running applications (LRAs) to co-exist with computation-intensive batch jobs. Instead of waiting for resource allocation to be confirmed by the centralized scheduler, job managers in ROSE can independently request to launch speculative tasks within specific machines according to their suitability for oversubscription. Node agents of those machines can however, avoid any excessive resource oversubscription by means of a mechanism for admission control using multi-resource threshold control and performance-aware resource throttle. Experiments show that in case of mixed co-location of batch jobs and latency-sensitive LRAs, the CPU utilization and the disk utilization can reach 56.34 and 43.49 percent, respectively, but the 95th percentile of read latency in YCSB workloads only increases by 5.4 percent against the case of executing the LRAs alone.

Topics & Concepts

Computer scienceLatency (audio)Scheduling (production processes)Job schedulerResource (disambiguation)Computer networkOperating systemQueueOperations managementEngineeringTelecommunicationsCloud Computing and Resource ManagementDistributed and Parallel Computing SystemsAdvanced Data Storage Technologies
Performance-Aware Speculative Resource Oversubscription for Large-Scale Clusters | Litcius