Deep Unsupervised Learning for Climate Informatics - Claire Monteleoni
Offered By: Kavli Institute for Theoretical Physics via YouTube
Course Description
Overview
Explore deep unsupervised learning techniques applied to climate informatics in this 46-minute conference talk by Claire Monteleoni, recorded as part of the Machine Learning for Climate KITP conference. Delve into how big data and machine learning algorithms are revolutionizing climate science, enabling researchers to gain unprecedented insights into complex Earth system processes. Discover how these advanced techniques are helping scientists address challenges in predicting future climate changes at regional and local scales. Learn about the potential of descriptive inference to generate new theories and validate existing ones in climate science. Examine the intersection of machine learning with modeling experiments and model parameterizations to tackle pressing climate-related questions. Gain insights into the interdisciplinary efforts bringing together experts from earth system and computational sciences to advance climate change research.
Syllabus
Deep Unsupervised Learning for Climate Informatics ▸ Claire Monteleoni #CLIMATE-C21
Taught by
Kavli Institute for Theoretical Physics
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