VOILA! Neural Operators: a Framework for Scalable Scientific Computing

Title

VOILA! Neural Operators: a Framework for Scalable Scientific Computing

Lecturer

Dr. Jean Kossaifi,

Content and organization

Date and time:  23 October 2025, 4:30-5:30 PM CEST

Speaker: Dr. Jean Kossaifi

Affiliation: NVIDIA

Title: Neural Operators: a Framework for Scalable Scientific Computing

Topic: AI & Scientific Discovery

Abstract: Traditional deep learning typically involves learning mappings between finite-dimensional vector spaces. Scientific and Engineering applications such as weather forecasting and aerodynamics, by contrast, involve modeling complex spatiotemporal processes governed by partial differential equations (PDEs) defined on continuous domains and at multiple scales. In other words, they involve learning mappings between infinite-dimensional function spaces.

Neural operators enable this by generalizing deep learning to learn mappings directly between function spaces, while offering substantial speed improvements over traditional PDE solvers, often several orders of magnitude faster. In this talk, I will introduce the fundamental concepts behind neural operators, illustrate their effectiveness on practical problems such as weather forecasting. Finally, I will touch on computational efficiency and practical implementation aspects in Python, demonstrating how these concepts can be applied in practice using open-source software.

Speaker’s BIO: Dr. Jean Kossaifi is a Senior Research Scientist at NVIDIA, where he focuses on AI for scientific applications and efficient learning via tensor methods. His research centers on developing foundational algorithms for learning on function spaces using neural operators, as well as integrating tensor algebra with deep learning to create scalable models that are more memory and computation efficient.

Jean is actively working to democratize the state-of-the-art and make it accessible through his open-source software work. He leads several efforts, including TensorLy, a high-level Python library for tensor methods, and NeuralOperator, which implements state-of-the-art algorithms for neural operator learning in PyTorch.

Prior to joining NVIDIA, Jean was a founding Research Scientist at the Samsung AI Center in Cambridge. He earned his PhD and MSc from Imperial College London under the supervision of Prof. Maja Pantic, and holds a French engineering diploma (MEng) in Applied Mathematics, Computing, and Finance, as well as a parallel BSc in Advanced Mathematics.

Course Duration

1.5

Course Type

Short Course

Participation terms

Free and mandatory registration via course link.

Schedule

23 October 2025, 4:30-5:30 PM CEST

Language

English

Modality (online/in person):

Online

Host Institution
Université Côte d'Azur

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