DocumentCode
233740
Title
Power Signatures of High-Performance Computing Workloads
Author
Combs, Jacob ; Nazor, Jolie ; Thysell, Rachelle ; Santiago, Fabian ; Hardwick, Matthew ; Olson, Lowell ; Rivoire, S. ; Chung-Hsing Hsu ; Poole, Stephen W.
Author_Institution
Dept. of Comput. Sci., Sonoma State Univ., Rohnert Park, CA, USA
fYear
2014
fDate
16-16 Nov. 2014
Firstpage
70
Lastpage
78
Abstract
Workload-aware power management and scheduling techniques have the potential to save energy while minimizing negative impact on performance. The effectiveness of these techniques depends on the stability of a workload´s power consumption pattern across different input data, resource allocations (e.g. number of cores), and hardware platforms. In this paper, we show that the power consumption behavior of HPC workloads can be accurately captured by concise signatures built from their power traces. We validate this approach using 255 traces collected from 13 high-performance computing workloads on 4 different hardware platforms. First, we use both feature-based and time-series-based distance metrics to cluster our traces, and we quantitatively show that feature-based clusterings segregate traces by workload just as effectively as the more compute- and space-intensive time-series-based clusterings. Second, we demonstrate that unlabeled traces can be classified by workload with over 85% accuracy, based only on these concise statistical signatures.
Keywords
parallel processing; pattern clustering; power aware computing; resource allocation; statistical analysis; time series; HPC workloads; compute-intensive time-series-based clusterings; feature-based clusterings; hardware platforms; high-performance computing workloads; power consumption behavior; power signatures; resource allocations; scheduling techniques; space-intensive time-series-based clusterings; time-series-based distance metrics; workload power consumption pattern stability; workload-aware power management; Hardware; Indexes; Power demand; Power measurement; Time series analysis; Vegetation;
fLanguage
English
Publisher
ieee
Conference_Titel
Energy Efficient Supercomputing Workshop (E2SC), 2014
Conference_Location
New Orleans, LA
Type
conf
DOI
10.1109/E2SC.2014.9
Filename
7016389
Link To Document