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"We research. For you." IV: Understanding machine learning – a physical perspective

Can physical systems embody new types of artificial intelligence?

Machine learning (ML) algorithms are increasingly permeating our lives. They make predictions, but their decisions often remain opaque, i.e., inaccessible or incomprehensible. Guidelines and experts are calling for more transparency and explanations, as if ML algorithms were communication partners. We view them as physical systems that interact with their environment. This opens up new perspectives for our understanding: machine learning is a type of adaptive behavior. Opacity arises from complexity, which may or may not be reduced depending on the level of abstraction. Understanding then arises not through greater transparency or explanations, nor through less complexity, but through a meaningful change in the level of abstraction. The physical perspective also provides impetus for a new generation of AI: if ML algorithms can simulate physical systems, this is also reversible, and thus physical systems can embody new types of artificial intelligence.

About the individuals: Dr. Miriam Klopotek studied physics in Berlin and Tübingen and received her doctorate from the University of Tübingen in 2021. Since 2022, she has been a group leader at the Stuttgart Center for Simulation Sciences (SimTech Cluster of Excellence). Since 2023, she has been co-leader (with Eric Raidl) of the WIN project "Complexity Reduction, Explainability, and Interpretability" at the Heidelberg Academy of Sciences. She is interested in the interactions and analogies between artificial intelligence and physical dynamics, especially those underlying condensed matter.

PD Dr. Eric Raidl studied philosophy, computer science, and mathematical logic in Berlin and Paris. He received his doctorate from Paris Sorbonne University in 2014 and his habilitation from the University of Konstanz in 2022. He has worked at the École Normale Supérieure Paris, the University of Konstanz, and University College Freiburg. Since 2019, he has been working at the University of Tübingen as co-PI of the Philosophy and Ethics Lab in the Cluster of Excellence "Machine Learning for Science." His areas of interest are epistemology, philosophy of science, logic, and AI.

About the lecture series: This public lecture series has been taking place for over 20 years now, featuring scientists from the Heidelberg Academy of Sciences and Humanities as well as from its seven sister academies. The lectures are aimed at a broad audience and provide insights into the research work being carried out. Afterwards, there is an opportunity to talk to the scientists over pretzels and wine in the Academy's courtyard garden.

The series is held in cooperation with vhs Heidelberg.

Date: July 22 , 2026

Location: Lecture hall of the Heidelberg Academy of Sciences, Karlstr. 4, 69117 Heidelberg

Start: 6:15 p.m.

Speakers: PD Dr. Eric Raidl (Tübingen) and Dr. Miriam Klopotek (Stuttgart)

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