ENTRA: Whole-Systems Energy Transparency
June 13, 2016 ยท Declared Dead ยท ๐ Microprocessors and microsystems
"No code URL or promise found in abstract"
Evidence collected by the PWNC Scanner
Authors
Kerstin Eder, John P. Gallagher, Pedro Lopez-Garcia, Henk Muller, Zorana Bankovic, Kyriakos Georgiou, Remy Haemmerle, Manuel V. Hermenegildo, Bishoksan Kafle, Steve Kerrison, Maja Kirkeby, Maximiliano Klemen, Xueliang Li, Umer Liqat, Jeremy Morse, Morten Rhiger, Mads Rosendahl
arXiv ID
1606.04074
Category
cs.AR: Hardware Architecture
Cross-listed
cs.DC,
cs.PL
Citations
19
Venue
Microprocessors and microsystems
Last Checked
3 months ago
Abstract
Promoting energy efficiency to a first class system design goal is an important research challenge. Although more energy-efficient hardware can be designed, it is software that controls the hardware; for a given system the potential for energy savings is likely to be much greater at the higher levels of abstraction in the system stack. Thus the greatest savings are expected from energy-aware software development, which is the vision of the EU ENTRA project. This article presents the concept of energy transparency as a foundation for energy-aware software development. We show how energy modelling of hardware is combined with static analysis to allow the programmer to understand the energy consumption of a program without executing it, thus enabling exploration of the design space taking energy into consideration. The paper concludes by summarising the current and future challenges identified in the ENTRA project.
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