We use cookies

We use cookies to ensure you get the best experience on our website. For more information on how we use cookies, please see our cookie policy.

Back to home

Articles tagged with "CausalAI, AMSDesign, DAGAnalysis"

Causal Inference for AMS Design (U. of Florida)
News

Causal Inference for AMS Design (U. of Florida)

A new technical paper titled "Causal AI For AMS Circuit Design: Interpretable Parameter Effects Analysis" by the University of Florida introduces a causal-inference framework for Analog-mixed-signal (AMS) circuit design. The framework utilizes a directed-acyclic graph (DAG) from SPICE simulation data to quantify parameter impact through Average Treatment Effect (ATE) estimation. This approach provides human-interpretable rankings of design knobs and 'what-if' predictions, enhancing designers' understanding of trade-offs in sizing and topology. The study evaluates the framework on three operational-amplifier families and demonstrates higher accuracy and explainability compared to a baseline neural network regressor.

SemiEngineering3/31/2026
00

No more articles to load