A Thermal Machine Learning Solver For Chip Simulation

Thermal analysis provides deeper insights into electronic chips' behavior under different temperature scenarios and enables faster design exploration. However, obtaining detailed and accurate thermal profile on chip is very time-consuming using FEM or CFD. Therefore, there is an urgent need for speeding up the on-chip thermal solution to address various system scenarios. In this paper, we propose a thermal machine-learning (ML) solver to speed-up thermal simulations of chips.

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Rishikesh Ranade, Haiyang He, Jay Pathak, Norman Chang, Akhilesh Kumarc, Jimin Wen (2024). Dataset: A Thermal Machine Learning Solver For Chip Simulation. https://doi.org/10.57702/wyun1nnb

DOI retrieved: December 2, 2024

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Created December 2, 2024
Last update December 2, 2024
Author Rishikesh Ranade
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Haiyang He
Jay Pathak
Norman Chang
Akhilesh Kumarc
Jimin Wen