Predictive power management for multi-core processors

dc.contributor.advisorJohn, Lizy Kurianen
dc.contributor.committeeMemberErez, Mattanen
dc.contributor.committeeMemberKeckler, Steveen
dc.contributor.committeeMemberLefurgy, Charlesen
dc.contributor.committeeMemberMoon, Tessen
dc.contributor.committeeMemberPan, Daviden
dc.creatorBircher, William Lloyden
dc.date.accessioned2011-02-07T21:19:13Zen
dc.date.accessioned2011-02-07T21:19:28Zen
dc.date.accessioned2017-05-11T22:21:14Z
dc.date.available2011-02-07T21:19:13Zen
dc.date.available2011-02-07T21:19:28Zen
dc.date.available2017-05-11T22:21:14Z
dc.date.issued2010-12en
dc.date.submittedDecember 2010en
dc.date.updated2011-02-07T21:19:28Zen
dc.descriptiontexten
dc.description.abstractEnergy consumption by computing systems is rapidly increasing due to the growth of data centers and pervasive computing. In 2006 data center energy usage in the United States reached 61 billion kilowatt-hours (KWh) at an annual cost of 4.5 billion USD [Pl08]. It is projected to reach 100 billion KWh by 2011 at a cost of 7.4 billion USD. The nature of energy usage in these systems provides an opportunity to reduce consumption. Specifically, the power and performance demand of computing systems vary widely in time and across workloads. This has led to the design of dynamically adaptive or power managed systems. At runtime, these systems can be reconfigured to provide optimal performance and power capacity to match workload demand. This causes the system to frequently be over or under provisioned. Similarly, the power demand of the system is difficult to account for. The aggregate power consumption of a system is composed of many heterogeneous systems, each with a unique power consumption characteristic. This research addresses the problem of when to apply dynamic power management in multi-core processors by accounting for and predicting power and performance demand at the core-level. By tracking performance events at the processor core or thread-level, power consumption can be accounted for at each of the major components of the computing system through empirical, power models. This also provides accounting for individual components within a shared resource such as a power plane or top-level cache. This view of the system exposes the fundamental performance and power phase behavior, thus making prediction possible. This dissertation also presents an extensive analysis of complete system power accounting for systems and workloads ranging from servers to desktops and laptops. The analysis leads to the development of a simple, effective prediction scheme for controlling power adaptations. The proposed Periodic Power Phase Predictor (PPPP) identifies patterns of activity in multi-core systems and predicts transitions between activity levels. This predictor is shown to increase performance and reduce power consumption compared to reactive, commercial power management schemes by achieving higher average frequency in active phases and lower average frequency in idle phases.en
dc.description.departmentElectrical and Computer Engineeringen
dc.format.mimetypeapplication/pdfen
dc.identifier.urihttp://hdl.handle.net/2152/ETD-UT-2010-12-2304en
dc.language.isoengen
dc.subjectPower managementen
dc.subjectCPUen
dc.subjectProcessoren
dc.subjectMulti-coreen
dc.subjectDVFSen
dc.subjectPower modelingen
dc.subjectPower adaptationen
dc.subjectProgram phaseen
dc.titlePredictive power management for multi-core processorsen
dc.type.genrethesisen

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