Publication | Closed Access
Two Sides of a Coin: Optimizing the Schedule of MapReduce Jobs to Minimize Their Makespan and Improve Cluster Performance
97
Citations
22
References
2012
Year
Unknown Venue
Cluster ComputingEngineeringComputer ArchitectureImprove Cluster PerformanceMap-reduceCluster TechnologyData ScienceData-intensive PlatformParallel ComputingData ManagementJob ScheduleTheir MakespanJob SchedulerMapreduce JobsCloud SchedulingComputer ScienceLarge-scale Mapreduce ClustersScalable ComputingProduction WorkloadEdge ComputingCloud ComputingParallel ProgrammingMassive Data ProcessingBig Data
Large-scale MapReduce clusters that routinely process petabytes of unstructured and semi-structured data represent a new entity in the changing landscape of clouds. A key challenge is to increase the utilization of these MapReduce clusters. In this work, we consider a subset of the production workload that consists of MapReduce jobs with no dependencies. We observe that the order in which these jobs are executed can have a significant impact on their overall completion time and the cluster resource utilization. Our goal is to automate the design of a job schedule that minimizes the completion time (makespan) of such a set of MapReduce jobs. We offer a novel abstraction framework and a heuristic, called BalancedPools, that efficiently utilizes performance properties of MapReduce jobs in a given workload for constructing an optimized job schedule. Simulations performed over a realistic workload demonstrate that 15%-38% makespan improvements are achievable by simply processing the jobs in the right order.
| Year | Citations | |
|---|---|---|
Page 1
Page 1