Spring 2025 LEAP Research Updates: JAEYOUNG JUNG / YONGQUAN QU

Spring 2025 LEAP Research Updates: JAEYOUNG JUNG / YONGQUAN QU

JOIN THE LEARNING THE EARTH WITH ARTIFICIAL INTELLIGENCE + PHYSICS (LEAP) CENTER AT COLUMBIA FOR A SEMINAR ON CLIMATE DATA SCIENCE.

By LEAP Center

Date and time

Thursday, May 8 · 12 - 1:30pm EDT

Location

Columbia Engineering Innovation Hub

2276 12th Avenue New York, NY 10027

About this event

  • Event lasts 1 hour 30 minutes

LEAP RESEARCH UPDATES

Speakers: Jaeyoung Jung (Columbia University), Yongquan Qu (Columbia University)


Date: May 8, 2025

Time: 12:00 p.m.

Format: Hybrid

Virtual: Zoom link provided upon registration

In-person: Columbia Innovation Hub, 2276 12th Avenue, Second Floor, New York, NY 10027


*Please note that in-person space is limited.*

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JAEYOUNG JUNG (Columbia University)

Abstract: forthcoming

Bio: forthcoming

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YONGQUAN QU (Columbia University)

Abstract: forthcoming

Bio: forthcoming


Learn More: LEAP

JAEYOUNG JUNG
Columbia University

YONGQUAN QU
Columbia University

Tickets

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LEAP’s primary research strategy is to improve near-term climate projections by merging physical modeling with machine learning across a continuum from expertise in climate science and climate modeling to cutting-edge machine learning algorithms. The benefits will be significant for both the climate and data sciences communities. Climate scientists and modelers struggle to fully integrate the wealth of existing datasets into their models, while machine learning algorithms have been good at emulating and interpolating but have difficulties extrapolating or predicting extremes. By combining both approaches, LEAP will trigger a significant advancement for data science algorithms applied to physical problems. LEAP will incorporate physics and causal mechanisms into machine learning algorithms for better generalization and extrapolation, while optimally using the wealth of data available to climate science, in order to better predict the future.