Title
Energy-Aware High-Performance Computing: Survey of State-of-the-Art Tools, Techniques, and Environments.
Abstract
The paper presents state of the art of energy-aware high-performance computing (HPC), in particular identification and classification of approaches by system and device types, optimization metrics, and energy/power control methods. System types include single device, clusters, grids, and clouds while considered device types include CPUs, GPUs, multiprocessor, and hybrid systems. Optimization goals include various combinations of metrics such as execution time, energy consumption, and temperature with consideration of imposed power limits. Control methods include scheduling, DVFS/DFS/DCT, power capping with programmatic APIs such as Intel RAPL, NVIDIA NVML, as well as application optimizations, and hybrid methods. We discuss tools and APIs for energy/power management as well as tools and environments for prediction and/or simulation of energy/power consumption in modern HPC systems. Finally, programming examples, i.e., applications and benchmarks used in particular works are discussed. Based on our review, we identified a set of open areas and important up-to-date problems concerning methods and tools for modern HPC systems allowing energy-aware processing.
Year
DOI
Venue
2019
10.1155/2019/8348791
SCIENTIFIC PROGRAMMING
Field
DocType
Volume
Distributed File System,Power management,Supercomputer,Scheduling (computing),Computer science,Power control,Parallel computing,Multiprocessing,Hybrid system,Energy consumption,Distributed computing
Journal
2019
ISSN
Citations 
PageRank 
1058-9244
0
0.34
References 
Authors
0
3
Name
Order
Citations
PageRank
Pawel Czarnul112121.11
Jerzy Proficz2318.24
Adam Krzywaniak301.01