Publication | Closed Access
Reliability Enhancement Strategies for Workflow Scheduling Under Energy Consumption Constraints in Clouds
27
Citations
43
References
2023
Year
Cluster ComputingEngineeringEnergy EfficiencyComputer ArchitectureEnergy Consumption ConstraintsCloud Resource ManagementEffective WorkflowReliability EngineeringSystems EngineeringParallel ComputingPower-aware SoftwareJob SchedulerPower-aware ComputingCloud SchedulingComputer EngineeringScheduling (Computing)Computer ScienceWorkflow ExecutionReliability Enhancement StrategiesSmart GridEnergy ManagementEdge ComputingCloud ComputingWorkflow DeadlineWorkflow SchedulingPower-efficient Computing
As the demand for Big Data analysis and artificial intelligence technology continues to surge, a significant amount of research has been conducted on cloud computing services. An effective workflow scheduling strategy stands as the pivotal factor in ensuring the quality of cloud services. Dynamic voltage and frequency scaling (DVFS) is an effective energy-saving technology that is extensively used in the development of workflow scheduling algorithms. However, DVFS reduces the processor's running frequency, which increases the possibility of soft errors in workflow execution, thereby lowering the workflow execution reliability. This study proposes an energy-aware reliability enhancement scheduling (EARES) method with a checkpoint mechanism to improve system reliability while meeting the workflow deadline and the energy consumption constraints. The proposed EARES algorithm consists of three phases, namely, workflow application initialization, deadline partitioning, and energy partitioning and virtual machine selection. Numerous experiments are conducted to assess the performance of the EARES algorithm using three real-world scientific workflows. Experimental results demonstrate that the EARES algorithm remarkably improves reliability in comparison with other state-of-the-art algorithms while meeting the deadline and satisfying the energy consumption requirement.
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