Synopsys, Inc.
MACHINE LEARNING-BASED PREDICTION OF METRICS AT EARLY-STAGE CIRCUIT DESIGN

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Abstract:

When designing circuits to meet certain constraint requirements, it is challenging to determine whether a given circuit design will meet the constraints. A designer at an early stage of the circuit design (e.g., synthesis or placement) may have limited information to rely on in order to determine whether the eventual circuit, or some design variation thereof, will satisfy those constraints without fully designing the circuit. The approaches described herein use a machine learning (ML) model to predict, based on features of partial circuit designs at early stages of the design flow, whether the full circuit is likely to meet the constraints. Additionally, the disclosed approaches allow for the ranking of various circuit designs or design implementations to determine best candidates to proceed with the full design.

Status:
Application
Type:

Utility

Filling date:

15 Mar 2021

Issue date:

16 Sep 2021