Abstract—Studying the energy efficiency of large-scale computer systems requires models of the relationship between resource utilization and power consumption. Prior work on power modeling assumes that models built for a single node will scale to larger groups of machines. However, we find that inter-node variability in homogeneous clusters leads to substantially different models for different nodes. Moreover, ignoring this variability will result in significant prediction errors when scaled to the cluster level. We report on inter-node variation for four homogeneous five-node clusters using embedded, laptop, desktop, and server processors. The variation is manifested quantitatively in the prediction error and qualitatively on the resource ...
Future large scale high performance supercomputer systems require high energy efficiency to achieve ...
If cluster C1 consists of computers with a faster mean speed than the computers in cluster C2, does ...
Abstract—Although users of high-performance computing are most interested in raw performance, both e...
Presented in March, 2011 at the Exascale Evaluation and Research Techniques Workshop (EXERT), held a...
Abstract-Models of computers' power consumption enable a variety of energy-efficiency optimizat...
This dissertation describes a utilization-based power modeling approach that makes use of the /proc ...
This dissertation describes a utilization-based power modeling approach that makes use of the /proc ...
The data center industry is responsible for 1.5–2% of the world energy consumption. Energy managemen...
International audienceData centers are energy-hungry facilities. Building energy consumption predict...
Data centers as a cost-effective infrastructure for hosting Cloud and Grid applications incur tremen...
Power consumption and process variability are two important, interconnected, challenges of future ge...
Future large scale high performance supercomputer systems require high energy efficiency to achieve ...
Recently, energy has become an important issue in high-performance computing. For example, supercomp...
Energy systems research strongly relies on large modeling frameworks. Many of them use linear optimi...
Supercomputers, nowadays, aggregate a large number of nodes featuring the same nominal HW components...
Future large scale high performance supercomputer systems require high energy efficiency to achieve ...
If cluster C1 consists of computers with a faster mean speed than the computers in cluster C2, does ...
Abstract—Although users of high-performance computing are most interested in raw performance, both e...
Presented in March, 2011 at the Exascale Evaluation and Research Techniques Workshop (EXERT), held a...
Abstract-Models of computers' power consumption enable a variety of energy-efficiency optimizat...
This dissertation describes a utilization-based power modeling approach that makes use of the /proc ...
This dissertation describes a utilization-based power modeling approach that makes use of the /proc ...
The data center industry is responsible for 1.5–2% of the world energy consumption. Energy managemen...
International audienceData centers are energy-hungry facilities. Building energy consumption predict...
Data centers as a cost-effective infrastructure for hosting Cloud and Grid applications incur tremen...
Power consumption and process variability are two important, interconnected, challenges of future ge...
Future large scale high performance supercomputer systems require high energy efficiency to achieve ...
Recently, energy has become an important issue in high-performance computing. For example, supercomp...
Energy systems research strongly relies on large modeling frameworks. Many of them use linear optimi...
Supercomputers, nowadays, aggregate a large number of nodes featuring the same nominal HW components...
Future large scale high performance supercomputer systems require high energy efficiency to achieve ...
If cluster C1 consists of computers with a faster mean speed than the computers in cluster C2, does ...
Abstract—Although users of high-performance computing are most interested in raw performance, both e...