Publication | Open Access
Deep Reinforcement Learning for Multi-Resource Multi-Machine Job Scheduling
19
Citations
2
References
2017
Year
Artificial IntelligenceCluster ComputingEngineeringMachine LearningEducationReinforcement Learning (Educational Psychology)Reinforcement Learning (Computer Engineering)Data ScienceJob SchedulerCloud SchedulingComputer EngineeringScheduling (Computing)Computer ScienceData Center NetworksDeep Reinforcement LearningScheduling ProblemEdge ComputingCloud ComputingJob Scheduling TimeResource Optimization
Minimizing job scheduling time is a fundamental issue in data center networks that has been extensively studied in recent years. The incoming jobs require different CPU and memory units, and span different number of time slots. The traditional solution is to design efficient heuristic algorithms with performance guarantee under certain assumptions. In this paper, we improve a recently proposed job scheduling algorithm using deep reinforcement learning and extend it to multiple server clusters. Our study reveals that deep reinforcement learning method has the potential to outperform traditional resource allocation algorithms in a variety of complicated environments.
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