Saved in:
Bibliographic Details
Main Authors: Thorat, Kiran, Meng, Nicole, Karami, Mostafa, Ding, Caiwen, Lao, Yingjie, Shi, Zhijie Jerry
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.09999
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866917400346099712
author Thorat, Kiran
Meng, Nicole
Karami, Mostafa
Ding, Caiwen
Lao, Yingjie
Shi, Zhijie Jerry
author_facet Thorat, Kiran
Meng, Nicole
Karami, Mostafa
Ding, Caiwen
Lao, Yingjie
Shi, Zhijie Jerry
contents IR drop analysis is essential in physical chip design to ensure the power integrity of on-chip power delivery networks. Traditional Electronic Design Automation (EDA) tools have become slow and expensive as transistor density scales. Recent works have introduced machine learning (ML)-based methods that formulate IR drop analysis as an image prediction problem. These existing ML approaches fail to capture both local and long-range dependencies and ignore crucial geometrical and topological information from physical layouts and logical connectivity. To address these limitations, we propose GIF, a Generative IR drop Framework that uses both geometrical and topological information to generate IR drop images. GIF fuses image and graph features to guide a conditional diffusion process, producing high-quality IR drop images. For instance, On the CircuitNet-N28 dataset, GIF achieves 0.78 SSIM, 0.95 Pearson correlation, 21.77 PSNR, and 0.026 NMAE, outperforming prior methods. These results demonstrate that our framework, using diffusion based multimodal conditioning, reliably generates high quality IR drop images. This shows that IR drop analysis can effectively leverage recent advances in generative modeling when geometric layout features and logical circuit topology are jointly modeled. By combining geometry aware spatial features with logical graph representations, GIF enables IR drop analysis to benefit from recent advances in generative modeling for structured image generation.
format Preprint
id arxiv_https___arxiv_org_abs_2604_09999
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle GIF: A Conditional Multimodal Generative Framework for IR Drop Imaging in Chip Layouts
Thorat, Kiran
Meng, Nicole
Karami, Mostafa
Ding, Caiwen
Lao, Yingjie
Shi, Zhijie Jerry
Computer Vision and Pattern Recognition
IR drop analysis is essential in physical chip design to ensure the power integrity of on-chip power delivery networks. Traditional Electronic Design Automation (EDA) tools have become slow and expensive as transistor density scales. Recent works have introduced machine learning (ML)-based methods that formulate IR drop analysis as an image prediction problem. These existing ML approaches fail to capture both local and long-range dependencies and ignore crucial geometrical and topological information from physical layouts and logical connectivity. To address these limitations, we propose GIF, a Generative IR drop Framework that uses both geometrical and topological information to generate IR drop images. GIF fuses image and graph features to guide a conditional diffusion process, producing high-quality IR drop images. For instance, On the CircuitNet-N28 dataset, GIF achieves 0.78 SSIM, 0.95 Pearson correlation, 21.77 PSNR, and 0.026 NMAE, outperforming prior methods. These results demonstrate that our framework, using diffusion based multimodal conditioning, reliably generates high quality IR drop images. This shows that IR drop analysis can effectively leverage recent advances in generative modeling when geometric layout features and logical circuit topology are jointly modeled. By combining geometry aware spatial features with logical graph representations, GIF enables IR drop analysis to benefit from recent advances in generative modeling for structured image generation.
title GIF: A Conditional Multimodal Generative Framework for IR Drop Imaging in Chip Layouts
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2604.09999