Automatic IR-Drop ECO Using Machine Learning
Journal
Proceedings - 2020 IEEE International Test Conference in Asia, ITC-Asia 2020
Pages
7-12
Date Issued
2020
Author(s)
Abstract
This paper proposes an automatic flow to repair IR-drop violations by Engineering Change Order (ECO). Our ECO technique provides cell move and downsize solutions. We use machine learning to predict IR-drop so that we can prevent over-fixing. We use a commercial tool to predict timing so that this is a timing-aware ECO. With the above two predictions, we propose a novel multi-round bipartite matching to optimize the ECO resource utilization. Experimental results show that for a 5M gate real design, our proposed method repairs 2,504 (22%) violation cells out of the original 11,555 violation cells and repairs 36,272mV (37%) total excessive IR out of the original 98,674mV total excessive IR. We are able to perform ECO on seven thousand cells within 13 hours, so our ECO flow is practical and can be applied to large industrial designs. ? 2020 IEEE.
Subjects
Cells; Cytology; Drops; Forecasting; Automatic flow; Bipartite matchings; Commercial tools; Engineering change orders; IR drop; Resource utilizations; Machine learning
Type
conference paper
