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Objective Discovery of Dominant Dynamical Regimes - Bryan Kaiser - Climate-C21

Offered By: Kavli Institute for Theoretical Physics via YouTube

Tags

Climate Science Courses Big Data Courses Machine Learning Courses Climate Change Courses Causal Inference Courses

Course Description

Overview

Explore an in-depth conference talk on the objective discovery of dominant dynamical regimes in climate science. Delivered by Bryan Kaiser at the Machine Learning for Climate conference hosted by the Kavli Institute for Theoretical Physics, this 44-minute presentation delves into advanced techniques for understanding Earth's complex climate systems. Gain insights into how big data and machine learning algorithms are revolutionizing climate research, enabling scientists to uncover previously elusive multi-scale processes across physical, chemical, and biological domains. Learn about the potential for descriptive inference to drive new theories, validate existing ones, and provide data-driven answers to challenging climate questions. Understand how this interdisciplinary approach combines expertise from earth system and computational sciences to address critical issues in climate change research and modeling.

Syllabus

Objective discovery of dominant dynamical regimes ▸ Bryan Kaiser #CLIMATE-C21


Taught by

Kavli Institute for Theoretical Physics

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