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 "Dynamic Explainability through Dynamic Causal Modeling" ( 2024 )

Sunday at 12:30, 15 minutes, UB2.252A (Lameere), UB2.252A (Lameere), AI and Machine Learning devroom William Jones , slides , video

Dynamic Causal Modeling is a uncertainty aware, explainable AI technique that uses physics inspired "dynamical systems" to explore time series data.

In this talk we discuss the theory and practice of Dynamic Causal Modeling, and the work we've done to take this code outside of it's research rooted MATLAB implementation into a robust, general piece of software under a FOSS license.

Sojourner FOSDEM
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  •  0.48 "Open Discussion on AI and Machine Learning"
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Last updated: 2026-03-20

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