AI-native climate modeling with NeuralGCM

GDG AI for Science - Australia

An Earth system model powered by JAX

Oct 3, 12:00 – 1:00 AM (UTC)

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Key Themes

AIDataJAXMachine Learning

About this event

What should Earth system modeling, and computational science more generally, look like in the era of deep learning and generative AI? In this talk, I’ll describe our lessons from building NeuralGCM, our physics- and AI-based atmospheric model written in Python and JAX. I’ll explain the fundamental advantages of AI-based approaches, where they fall short, and how they can be effectively composed with physics-based models. I’ll also show how Google’s JAX framework is an incredibly powerful platform for building computational models.

Speaker

  • Stephan Hoyer

    Google

    Software Engineer

Organizers

  • Susan Wei

    Monash University

    Organizer

  • Pablo Rozas Larraondo

    Haizea Analytics

    Organizer

  • Lifi Huang

    Monash University

    Organizer

  • Mauricio Marrone

    Macquarie University

    Macquarie University

  • David Kainer

    The University of Queensland

    University of Queensland

  • Nathaniel Butterworth

    Google

    Science Catalyst Program Manager

  • Kunal Ostwal

    University of Sydney

    University of Sydney

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