Publication | Open Access
PerfIso: performance isolation for commercial latency-sensitive services
57
Citations
26
References
2018
Year
Cluster ComputingProvisioning (Technology)EngineeringComputer ArchitectureMicrosoft BingCloud Resource ManagementParallel ComputingJob SchedulerPerformance IsolationReal-time Operating SystemCloud SchedulingLow LatencyComputer SciencePerformance ScalabilityEdge ComputingCloud ComputingPeak LoadParallel ProgrammingPerformance PortabilitySystem Software
Large commercial latency-sensitive services, such as web search, run on dedicated clusters provisioned for peak load to ensure responsiveness and tolerate data center outages. As a result, the average load is far lower than the peak load used for provisioning, leading to resource under-utilization. The idle resources can be used to run batch jobs, completing useful work and reducing overall data center provisioning costs. However, this is challenging in practice due to the complexity and stringent tail-latency requirements of latency-sensitive services. Left unmanaged, the competition for machine resources can lead to severe response-time degradation and unmet service-level objectives (SLOs). This work describes PerfIso, a performance isolation framework which has been used for nearly three years in Microsoft Bing, a major search engine, to colocate batch jobs with production latency-sensitive services on over 90,000 servers. We discuss the design and implementation of PerfIso, and conduct an experimental evaluation in a production environment. We show that colocating CPU-intensive jobs with latency-sensitive services increases average CPU utilization from 21% to 66% for off-peak load without impacting tail latency.
| Year | Citations | |
|---|---|---|
Page 1
Page 1