AENEID: A generic lithography-friendly detailed router based on post-RET data learning and hotspot detection

DAC(2011)

引用 32|浏览17
暂无评分
摘要
In the era of deep sub-wavelength lithography for nanometer VLSI designs, manufacturability and yield issues are critical and need to be addressed during the key physical design implementation stage, in particular detailed routing. However, most existing studies for lithography-friendly routing suffer from either huge run-time due to the intensive lithographic computations involved, or severe loss of quality of results because of the inaccurate predictive models. In this paper, we propose AENEID - a fast, generic and high performance lithography-friendly detailed router for enhanced manufacturability. AENEID combines novel hotspot detection and routing path prediction techniques through modern data learning methods and applies them at the detailed routing stage to drive high delity lithography-friendly routing. Compared with existing litho-friendly routing works, AENEID demonstrates 26% to 66% (avg. 50%) of lithography hotspot reduction at the cost of only 18%-38% (avg. 30%) of run-time overhead.
更多
查看译文
关键词
high fidelity lithography-friendly routing,network routing,nanometer vlsi designs,high performance lithography-friendly,lithography-friendly routing,design for manufacturability,yield issue,litho-friendly routing work,litho-friendly routing works,enhanced manufacturability,run-time,detailed routing stage,particular detailed routing,hotpost detection,lithography,generic lithography-friendly detailed router,deep sub-wavelength lithography,vlsi,detailed router,post-ret data,post-ret data learning,integrated circuit yield,inaccurate predictive models,lithographic computations,data learning,hotspot detection,existing study,detailed routing,aeneid,physical design,databases,vlsi design,kernel,layout,predictive models,prediction model,design for manufacture,routing
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要