A High-accurate Multi-objective Ensemble Exploration Framework for Design Space of CPU Microarchitecture

GLSVLSI '23: Proceedings of the Great Lakes Symposium on VLSI 2023(2023)

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摘要
To accelerate the time-consuming multi-objective design space exploration of CPU, previous work trains prediction models using a set of cycle per instruction and power performance metrics derived from a few simulations for sampled design points, then exploits the predicted metrics of the rest design points to perform exploration. Unfortunately, the low accuracy of models limits the exploration effect, and how to balance exploitation and exploration while reducing time is challenging. In this paper, we design an open-source high-accurate multi-objective exploration framework. A bagging ensemble prediction model is designed for high-accurate prediction. An upper confidence bound hypervolume improvement optimization method is proposed to approach the Pareto optimal set and balance exploitation and exploration. A Pareto-aware filter algorithm is proposed to reduce the exploration time. Experiments demonstrate that our framework can reduce the distance to the Pareto optimal set by 17.2%, prediction error by 64.8%, and exploration time by 75.1% compared with the state-of-the-art work.
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关键词
Design Space Exploration, Multi-objective Exploration, Prediction Model, Upper Confidence Bound, CPU Microarchitecture
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