Open-Source Differentiable Lithography Imaging Framework
Guojin Chen, Hao Geng, Bei Yu, and David Z. Pan

TL;DR
This paper presents an open-source differentiable lithography imaging framework that uses GPU acceleration and differentiable programming to improve modeling precision and optimize semiconductor manufacturing processes.
Contribution
It introduces a novel open-source framework that models lithography components as differentiable segments, enabling enhanced resolution optimization and collaboration in semiconductor manufacturing.
Findings
Improved lithography modeling accuracy.
Enhanced resolution optimization capabilities.
Open-source framework facilitates collaboration.
Abstract
The rapid evolution of the electronics industry, driven by Moore's law and the proliferation of integrated circuits, has led to significant advancements in modern society, including the Internet, wireless communication, and artificial intelligence (AI). Central to this progress is optical lithography, a critical technology in semiconductor manufacturing that accounts for approximately 30\% to 40\% of production costs. As semiconductor nodes shrink and transistor numbers increase, optical lithography becomes increasingly vital in current integrated circuit (IC) fabrication technology. This paper introduces an open-source differentiable lithography imaging framework that leverages the principles of differentiable programming and the computational power of GPUs to enhance the precision of lithography modeling and simplify the optimization of resolution enhancement techniques (RETs). The…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Advancements in Photolithography Techniques
