Publication | Closed Access
Quincy
851
Citations
28
References
2009
Year
Unknown Venue
Job SchedulerCluster ComputingEngineeringEdge ComputingFine-grain ResourceCloud SchedulingCloud ComputingComputer ArchitectureScheduling (Computing)Parallel ProgrammingComputer ScienceScalable ComputingParallel ComputingConcurrent JobsMap-reduceApplication DataBig Data
This paper addresses the problem of scheduling concurrent jobs on clusters where application data is stored on the computing nodes. This setting, in which scheduling computations close to their data is crucial for performance, is increasingly common and arises in systems such as MapReduce, Hadoop, and Dryad as well as many grid-computing environments. We argue that data-intensive computation benefits from a fine-grain resource sharing model that differs from the coarser semi-static resource allocations implemented by most existing cluster computing architectures. The problem of scheduling with locality and fairness constraints has not previously been extensively studied under this resource-sharing model.
| Year | Citations | |
|---|---|---|
Page 1
Page 1