Home Strategy Activities Grants Publications People Sponsors Blog Contact Us 
  

RhJwShCsSzJzJv15PCS

Rui Han, Junwei Wang, Siguang Huang, Chenrong Shao, Shulin Zhan, Jianfeng Zhan, J.L. Vazquez-Poletti. PCS: Predictive Component-level Scheduling for Reducing Tail Latency in Cloud Online Services. In 44th International Conference on Parallel Processing (ICPP 2015), Pages 490-499, 2015.

Abstract

Modern latency-critical online services often rely on composing results from a large number of server components. Hence the tail latency (e.g. the 99th percentile of response time), rather than the average, of these components determines the overall service performance. When hosted on a cloud environment, the components of a service typically co-locate with short batch jobs to increase machine utilizations, and share and contend resources such as caches and I/O bandwidths with them. The highly dynamic nature of batch jobs in terms of their workload types and input sizes causes continuously changing performance interference to individual components, hence leading to their latency variability and high tail latency. However, existing techniques either ignore such fine-grained component latency variability when managing service performance, or rely on executing redundant requests to reduce the tail latency, which adversely deteriorate the service performance when load gets heavier. In this paper, we propose PCS, a predictive and component-level scheduling framework to reduce tail latency for large-scale, parallel online services. It uses an analytical performance model to simultaneously predict the component latency and the overall service performance on different nodes. Based on the predicted performance, the scheduler identifies straggling components and conducts near-optimal component-node allocations to adapt to the changing performance interferences from batch jobs. We demonstrate that, using realistic workloads, the proposed scheduler reduces the component tail latency by an average of 67.05\% and the average overall service latency by 64.16\% compared with the state-of-the-art techniques on reducing tail latency

Keywords

[ Tin2012-31518 ] [ Cloud ]

Contact

Jose Luis Vazquez-Poletti

BibTex Reference

@InProceedings{RhJwShCsSzJzJv15PCS,
   Author = {Han, Rui and Wang, Junwei and Huang, Siguang and Shao, Chenrong and Zhan, Shulin and Zhan, Jianfeng and Vazquez-Poletti, J.L.},
   Title = {PCS: Predictive Component-level Scheduling for Reducing Tail Latency in Cloud Online Services},
   BookTitle = {44th International Conference on Parallel Processing (ICPP 2015)},
   Pages = {490--499},
   Publisher = {IEEE Computer Society Press},
   Year = {2015}
}

Admin · Log In