Optimizing Resource Management for Shared Microservices: A Scalable System Design

Author:

Luo Shutian1,Lin Chenyu1,Ye Kejiang2,Xu Guoyao3,Zhang Liping3,Yang Guodong3,Xu Huanle1,Xu Chengzhong1

Affiliation:

1. University of Macau, China

2. Shenzhen Institute of Advanced Technology, CAS, China

3. Alibaba Group, China

Abstract

A common approach to improving resource utilization in data centers is to adaptively provision resources based on the actual workload. One fundamental challenge of doing this in microservice management frameworks, however, is that different components of a service can exhibit significant differences in their impact on end-to-end performance. To make resource management more challenging, a single microservice can be shared by multiple online services that have diverse workload patterns and SLA requirements. We present an efficient resource management system, namely Erms, for guaranteeing SLAs with high probability in shared microservice environments. Erms profiles microservice latency as a piece-wise linear function of the workload, resource usage, and interference. Based on this profiling, Erms builds resource scaling models to optimally determine latency targets for microservices with complex dependencies. Erms also designs new scheduling policies at shared microservices to further enhance resource efficiency. Experiments across microservice benchmarks as well as trace-driven simulations demonstrate that Erms can reduce SLA violation probability by 5 × and more importantly, lead to a reduction in resource usage by 1.6 ×, compared to state-of-the-art approaches.

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science

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