BEGIN:VCALENDAR
VERSION:2.0
METHOD:PUBLISH
CALSCALE:GREGORIAN
PRODID:-//WordPress - MECv6.5.6//EN
X-ORIGINAL-URL:https://cmc.deusto.eus/
X-WR-CALNAME:cmc.deusto.eus
X-WR-CALDESC:DeustoCCM - Chair of Computational Mathematics at University of Deusto
REFRESH-INTERVAL;VALUE=DURATION:PT1H
X-PUBLISHED-TTL:PT1H
X-MS-OLK-FORCEINSPECTOROPEN:TRUE
BEGIN:VEVENT
CLASS:PUBLIC
UID:MEC-9b2e864a22f3750ac5d751c90d9a9ef7@cmc.deusto.eus
DTSTART:20230621T140000Z
DTEND:20230621T150000Z
DTSTAMP:20251031T213100Z
CREATED:20251031
LAST-MODIFIED:20251031
PRIORITY:5
TRANSP:OPAQUE
SUMMARY:Differentiable Physics Simulations for Deep Learning
DESCRIPTION:Next Wednesday June 21, 2023:\nOrganized by: FAU DCN-AvH, Chair for Dynamics, Control, Machine Learning and Numerics – Alexander von Humboldt Professorship at FAU, Friedrich-Alexander-Universität Erlangen-Nürnberg (Germany)\nTitle: Differentiable Physics Simulations for Deep Learning\nSpeaker: Prof. Dr. Nils Thürey\nAffiliation: TUM, Technical University of Munich\nAbstract. This talk focuses on the possibilities that arise from recent advances in the area of deep learning for physical simulations. In particular, it will focus on differentiable physics solvers from the larger field of differentiable programming. These solvers provide crucial information for deep learning tasks in the form of gradients, which are especially important for time-dependent processes. Also, existing numerical methods for efficient solvers can be leveraged within learning tasks. This paves the way for hybrid solvers in which traditional methods work alongside pre-trained neural network components. The resulting improvements will be illustrated with examples such as wake flows and turbulence mixing layer cases. From a machine learning perspective, regression problems with physics solvers are a highly interesting class of problems. I will conclude the talk by outlining avenues for probabilistic learning algorithms that leverage recent advance from diffusion models.\nWHERE?\nOnline:\nZoom meeting link\nMeeting ID: 614 4658 1599 | PIN code: 914397\n
URL:https://cmc.deusto.eus/events-calendar/differentiable-physics-simulations-for-deep-learning/
ORGANIZER;CN=FAU DCN-AvH:MAILTO:
CATEGORIES:FAU DCN-AvH Seminar,Seminar/Talk
LOCATION:FAU - Faculty of Sciences
ATTACH;FMTTYPE=image/png:https://cmc.deusto.eus/wp-content/uploads/FAUDCNAvHseminar_nThuerey_21jun2023.png
END:VEVENT
END:VCALENDAR
