Publication | Closed Access
Energy-Efficient Run-Time Mapping and Thread Partitioning of Concurrent OpenCL Applications on CPU-GPU MPSoCs
42
Citations
23
References
2017
Year
Cluster ComputingHeterogeneous ComputingEngineeringGpu BenchmarkingThread PartitioningComputer ArchitectureEmbedded SystemsHardware SystemsGpu ComputingCompute KernelComputing SystemsEfficient PartitioningParallel ComputingCompilersManycore ProcessorEnergy-efficient Run-time MappingComputer EngineeringHeterogeneous SystemsComputer ScienceThread Partitioning ApproachGpu ClusterConcurrent Opencl ApplicationsGpu ArchitectureOperating SystemsPartitioning ProcessParallel Performance EvaluationMany-core ArchitectureParallel Programming
Heterogeneous Multi-Processor Systems-on-Chips (MPSoCs) containing CPU and GPU cores are typically required to execute applications concurrently. However, as will be shown in this paper, existing approaches are not well suited for concurrent applications as they are developed either by considering only a single application or they do not exploit both CPU and GPU cores at the same time. In this paper, we propose an energy-efficient run-time mapping and thread partitioning approach for executing concurrent OpenCL applications on both GPU and GPU cores while satisfying performance requirements. Depending upon the performance requirements, for each concurrently executing application, the mapping process finds the appropriate number of CPU cores and operating frequencies of CPU and GPU cores, and the partitioning process identifies an efficient partitioning of the applications’ threads between CPU and GPU cores. We validate the proposed approach experimentally on the Odroid-XU3 hardware platform with various mixes of applications from the Polybench benchmark suite. Additionally, a case-study is performed with a real-world application SLAMBench. Results show an average energy saving of 32% compared to existing approaches while still satisfying the performance requirements.
| Year | Citations | |
|---|---|---|
Page 1
Page 1