Energy model for low-power cluster.
CCGrid(2017)
摘要
Energy efficiency in high performance computing (HPC) systems is a relevant issue nowadays, which is approached from multiple edges and components (network, I/O, resource management, etc). HPC industry turned its focus towards embedded and low-power computational infrastructures (of RISC architecture processors) to improve energy efficiency, therefore, we use an ARM-based cluster, known as millicluster, designed to achieve high energy efficiency with low power. We provide a model for energy consumption estimation based on experimental data, obtained of measurements performed during a benchmarking process that represents a real-world workload, such as scientific computing algorithms of artificial intelligence. The energy model enables power prediction of tasks in low-power nodes with high accuracy, and its implementation in a job scheduling algorithm of HPC, facilitates the optimization of energy consumption and performance metrics at the same time.
更多查看译文
关键词
high performance computing systems, modeling, benchmarking, energy efficiency, millicluster
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络