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dc.creatorGaryfallou D., Vagenas A., Antoniadis C., Massoud Y., Stamoulis G.en
dc.date.accessioned2023-01-31T07:39:50Z
dc.date.available2023-01-31T07:39:50Z
dc.date.issued2022
dc.identifier10.1145/3526241.3530343
dc.identifier.isbn9781450393225
dc.identifier.urihttp://hdl.handle.net/11615/71984
dc.description.abstractWith process technology scaling, accurate gate-level timing analysis becomes even more challenging. Highly resistive on-chip interconnects have an ever-increasing impact on timing, signals no longer resemble smooth saturated ramps, while gate-interconnect interdependencies are stronger. Moreover, efficiency is a serious concern since repeatedly invoking a signoff tool during incremental optimization of modern VLSI circuits has become a major bottleneck. In this paper, we introduce a novel machine learning approach for timing estimation of gate-level stages using current source models and the concept of multiple slew and effective capacitance values. First, we exploit a fast iterative algorithm for initial stage timing estimation and feature extraction, and then we employ four artificial neural networks to correlate the initial delay and slew estimates for both the driver and interconnect with golden SPICE results. Contrary to prior works, our method uses fewer and more accurate features to represent the stage, leading to more efficient models. Experimental evaluation on driver-interconnect stages implemented in 7 nm FinFET technology indicates that our method leads to 0.99% (0.90 ps) and 2.54% (2.59 ps) mean error against SPICE for stage delay and slew, respectively. Furthermore, it has a small memory footprint (1.27 MB) and performs 35× faster than a commercial signoff tool. Thus, it may be integrated into timing-driven optimization steps to provide signoff accuracy and expedite timing closure. © 2022 ACM.en
dc.language.isoenen
dc.sourceProceedings of the ACM Great Lakes Symposium on VLSI, GLSVLSIen
dc.source.urihttps://www.scopus.com/inward/record.uri?eid=2-s2.0-85131684909&doi=10.1145%2f3526241.3530343&partnerID=40&md5=582bfcaac5aa5aefab3aa88c8b664fb7
dc.subjectCapacitanceen
dc.subjectComputer aided designen
dc.subjectIntegrated circuit interconnectsen
dc.subjectIterative methodsen
dc.subjectMachine learningen
dc.subjectNeural networksen
dc.subjectSPICEen
dc.subjectVLSI circuitsen
dc.subjectCurrent source modelsen
dc.subjectEffective capacitanceen
dc.subjectGate levelsen
dc.subjectMachine-learningen
dc.subjectMiller effectsen
dc.subjectProcess technology scalingen
dc.subjectResistive shieldingen
dc.subjectSign-offen
dc.subjectTiming Analysisen
dc.subjectTiming estimationen
dc.subjectTiming circuitsen
dc.subjectAssociation for Computing Machineryen
dc.titleLeveraging Machine Learning for Gate-level Timing Estimation Using Current Source Models and Effective Capacitanceen
dc.typeconferenceItemen


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