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Delving into Macro Placement with Reinforcement Learning By: Zixuan Jiang, et. Google #54

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QiXuanWang opened this issue Dec 31, 2021 · 0 comments
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Placement One step in Physical Design (see routing too) Reinforcement Learning General RL

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Link: https://arxiv.org/pdf/2109.02587.pdf

Abstract: This is a followup paper for "“A graph placement methodology for fast chip design“

Conclusion:
We extend the original work [1] in three perspectives. First,
we provide more details on the motivation and algorithm
design. Second, DREAMPlace is integrated into the original
framework. Finally, we conduct experiments on public benchmarks and make fair comparisons with academic tools

Yu: Not sure if it's the follow up from an earlier paper (see #49 )though it's for floorplan and this is for placement?

In general it's an partial improvement paper based on 49.

@QiXuanWang QiXuanWang added Reinforcement Learning General RL Placement One step in Physical Design (see routing too) labels Dec 31, 2021
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Labels
Placement One step in Physical Design (see routing too) Reinforcement Learning General RL
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