Publication | Closed Access
On the Efficacy of Computation Offloading Decision-Making Strategies
10
Citations
26
References
2008
Year
EngineeringDynamic Resource AllocationOperations ResearchData ScienceManagementComputing SystemsSystems EngineeringParallel ComputingDecision TheoryMechanism DesignRemote CostJob SchedulerNetwork FlowsPredictive AnalyticsCloud SchedulingBayesian ApproachScheduling (Computing)Computer ScienceQueueing SystemsScheduling (Operating Systems)Performance ModelingIntelligent Decision MakingReal-time SystemsExecution TimeScheduling (Project Management)Workload ManagementResource OptimizationDecision Technology
We present a framework for making computation offloading decisions in computational grid settings in which schedulers determine when to move parts of a computation to more capable resources to improve performance. Such schedulers must predict when an offloaded computation will outperform one that is local by forecasting the local cost (execution time for computing locally) and remote cost (execution time for computing remotely and transmission time for the input/output of the computation to/from the remote system). Typically, this decision amounts to predicting the bandwidth between the local and remote systems to estimate these costs. Our framework unifies such decision models by formulating the problem as a statistical decision problem that can either be treated “classically” or using a Bayesian approach. Using an implementation of this framework, we evaluate the efficacy of a number of different decision strategies (several of which have been employed by previous systems). Our results indicate that a Bayesian approach employing automatic change-point detection when estimating the prior distribution is the best performing approach.
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