

Trustworthiness and Energy Efficiency in AI for Science
Wednesday, June 11, 2025 9:00 AM to 10:00 AM · 1 hr. (Europe/Berlin)
Hall 4 - Ground floor
Panel
AI Applications powered by HPC TechnologiesDigital Twins and MLHW and SW Design for Scalable Machine LearningOptimizing for Energy and PerformanceSustainability and Energy Efficiency
Information
This panel will convene leading experts to address critical challenges in developing reliable and efficient AI systems for scientific applications. Panelists will examine methodological innovations required for validating complex scientific models under uncertainty constraints, alongside architectural optimizations that reduce computational footprint without sacrificing performance. Discussion will focus on emerging hardware and software frameworks, energy-aware training paradigms, and domain-specific benchmarking necessary for deploying AI systems that scientists can both trust and deploy responsibly within constrained computing environments.
Format
On DemandOn Site
Intermediate Level
50%
Advanced Level
50%
Speakers
PB
Prasanna Balaprakash
Director of AI ProgramsOak Ridge National Laboratory
Manish Parashar
DirectorUniversity of Utah
Pekka Manninen
Director of Science and TechnologyCSC FinlandCP
Chris Porter
Director HPC and AI InfrastructureNVIDIA
Jeffrey Vetter
Section Head, Advanced Computing Systems ResearchOak Ridge National Laboratory
