ycchen218/EDA-IRdrop-Prediction
This is a deep-learning based model for Electronic Design Automation(EDA), predicting the IR drop location on the chip.
This tool helps integrated circuit (IC) designers quickly identify potential power integrity issues on a chip. By inputting power feature data, it generates an IR drop heatmap, highlighting critical areas where voltage might sag. It's designed for electrical engineers and IC layout specialists who need to perform power integrity analysis during the chip design process.
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Use this if you are an IC designer who needs to perform fast and accurate IR drop analysis to evaluate the power delivery network of your chip.
Not ideal if you are looking for a general-purpose simulation tool or do not have power feature data to input.
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Language
Python
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Last pushed
Aug 04, 2023
Commits (30d)
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