Improving Simulation Speed And Accuracy For Many-Core Embedded Platforms With Ensemble Models

Proceedings of the Conference on Design, Automation and Test in Europe(2013)

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摘要
In this paper, we introduce a novel modeling technique to reduce the time associated with cycle-accurate simulation of parallel applications deployed on many-core embedded platforms. We introduce an ensemble model based on artificial neural networks that exploits (in the training phase) multiple levels of simulation abstraction, from cycle-accurate to cycle-approximate, to predict the cycle-accurate results for unknown application configurations.We show that high-level modeling can be used to significantly reduce the number of low-level model evaluations provided that a suitable artificial neural network is used to aggregate the results. We propose a methodology for the design and optimization of such an ensemble model and we assess the proposed approach for an industrial simulation framework based on STMicroelectronics STHORM (P2012) many-core computing fabric.
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关键词
ensemble model,cycle-accurate result,cycle-accurate simulation,industrial simulation framework,low-level model evaluation,simulation abstraction,artificial neural network,high-level modeling,many-core computing fabric,many-core embedded platform,Improving simulation speed
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