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updated at

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Open Graph

title

About

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site name

Thomas Möllenhoff

author

Thomas Möllenhoff

updated

2026-02-04 17:43:18

raw text

Thomas Möllenhoff | About about papers code Thomas Möllenhoff Research Scientist Approximate Bayesian Inference Team RIKEN Center for Advanced Intelligence Project Tokyo, Japan   thomas.moellenhoff (at) riken (dot) jp CV – Scholar – github – Twitter About I’m a tenured research scientist at the RIKEN Center for Advanced Intelligence Project , affiliated with the Approximate Bayesian Inference team and a core member of the Bayes Duality project. Before that, I was a postdoctoral researcher working with Emtiyaz Khan . I completed my PhD in the Computer Vision Group at TU Munich under the guidance of Daniel Cremers . My current research focuses on the design and analysis of new algorithms to improve deep learning via Bayesian principles, with the aim to develop methods that are robust, adaptable and more interpretable. News December 4–5, 2024 . Invited talk at OCAMI Workshop , Osaka, Japan. November 7, 2024 . Invited talk at the IBIS 202...

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