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Presentations
And posters
Inductive Bias in Deep Probabilistic Modelling
PhD Dissertation - University of Liège
November 2022
Link to the slidesThe Symbiosis between Deep Probabilistic and Scientific Models
Presentation - HES Geneva
October 2022
Link to the slidesThe Symbiosis between Deep Probabilistic and Scientific Models
Presentation - Gen U 2022, Copenhagen
September 2022
Link to the slidesNormalizing Flows and Bayesian networks
Presentation - CogSys seminar, DTU
October 2020
Link to the slides Link to the videoNormalizing Flows for Probabilistic Modeling and Inference
Presentation - ML Journal Club, ULiège
April 2020
Link to the slidesUnconstrained Monotonic Neural Networks
Poster - NeurIPS 2019 @ Vancouver
December 2019
Link to the poster Link to the paperNeural Likelihood-Free Inference
Presentation - Grappa, UvA in Amsterdam
November 2019
Link to the slidesUnconstrained Monotonic Neural Networks
Presentation - Benelearn 2019 @ Brussels
November 2019
Link to the slidesUnconstrained Monotonic Neural Networks
Poster - Prairie AI Summer School 2019 @ Paris
October 2019
Link to the posterRecurrent Machines For Likelihood Free Inference
Poster - MetaLearn Workshop @ NeurIPS 2018, Montreal
December 2018
Link to the posterReadings
PREVIOUS JOBS
When I find the time, I like reading fiction books. In particular, I often prefer books that treat
about Science, Geopolitics and/or History in an accessible way.
Over the last years my thoughts about Nature have been influenced by two books from José Rodrigues
dos Santos:
The Einstein Enigma: A Novel
and
Spinoza - L'homme qui a tué Dieu
(I cannot find the english version).
I also highly recommend these books to anyone seeking for brain entertainment, in decreasing
chronological order of reading:
- Black-out, by Marc Elsberg;
- Antifragile: Things That Gain From Disorder, by Nassim Nicholas Taleb;
- La Peste, by Albert Camus.
