Causal AI For AMS Circuit Design: Interpretable Parameter Effects Analysis

By: Mohyeu Hussain, David Koblah, Reiner Dizon-Paradis, Domenic Forte

Published: 2026-03-31

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Abstract

Analog-mixed-signal (AMS) circuits are highly non-linear and operate on continuous real-world signals, making them far more difficult to model with data-driven AI than digital blocks. We propose a causal-inference framework that first discovers a directed-acyclic graph (DAG) from SPICE simulation data and then quantifies parameter impact through Average Treatment Effect (ATE) estimation. The approach yields human-interpretable rankings of design knobs and explicit 'what-if' predictions, enabling designers to understand trade-offs in sizing and topology.

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Causal AI For AMS Circuit Design: Interpretable Parameter Effects Analysis | ArXiv Intelligence