Mathematical Models And Control Algorithms For Dynamic Optimization Of Multicore Platforms: A Complex Dynamics Approach

2015 IEEE/ACM International Conference on Computer-Aided Design (ICCAD)(2015)

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摘要
The continuous increase in integration densities contributed to a shift from Dennard's scaling to a parallelization era of multi-/many-core chips. However, for multicores to rapidly percolate the application domain from consumer multimedia to high-end functionality (e.g., security, healthcare, big data), power/energy and thermal efficiency challenges must be addressed. Increased power densities can raise on-chip temperatures, which in turn decrease chip reliability and performance, and increase cooling costs. For a dependable multicore system, dynamic optimization (power / thermal management) has to rely on accurate yet low complexity workload models. Towards this end, we present a class of mathematical models that generalize prior approaches and capture their time dependence and long-range memory with minimum complexity. This modeling framework serves as the basis for defining new efficient control and prediction algorithms for hierarchical dynamic power management of future data-centers-on-a-chip.
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关键词
multicore platform,complex dynamics approach,Dennard scaling,multicore chips,many-core chips,power density,chip reliability,chip performance,on-chip temperature,dynamic optimization,power management,thermal management,control algorithm,prediction algorithm,hierarchical dynamic power management,data-centers-on-a-chip
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