Machine learning and artificial intelligence (AI) have been prominent on the last few years as methods to enhance the accuracy and efficiency of flow simulations.
From variational auto-encoders (VAEs) to transformers and multi-layer perceptrons (MLPs), these tools among others have revolutionized the way we can extract information from fluid flows coming from both experimental and numerical data.
This seminar will showcase pyLOM, an open-source tool developed at the Barcelona Supercomputing Center (BSC) that integrates “traditional” physical models such as POD and DMD and AI based models such as VAE and MLP in high-performance scenarios. The seminar will also illustrate new architectures developed at BSC that blend traditional and AI approaches. Participants will obtain new perspectives on this hybrid approach in scientific computing.
Sede dell’iniziativa:
Room B004, Engineering Campus, University of Bergamo - Via Marconi 5 (Dalmine)
Periodo di svolgimento dell’iniziativa:
Giugno 27, 2025