Deep Unsupervised Learning for Climate Informatics with Claire Monteleoni - #497
Published:Jul 1, 2021 18:31
•1 min read
•Practical AI
Analysis
This article from Practical AI discusses a conversation with Claire Monteleoni, an associate professor at the University of Colorado Boulder, focusing on her work in climate informatics. The interview covers her career path, research interests, and the application of machine learning to climate science. A key highlight is her keynote at the EarthVision workshop at CVPR, which centered on deep unsupervised learning for studying extreme climate events. The article provides insights into the intersection of machine learning and climate science, highlighting the potential of unsupervised learning in this field.
Key Takeaways
- •The article highlights the application of machine learning, specifically deep unsupervised learning, to climate science.
- •It showcases the career path of Claire Monteleoni, from environmental activism to a leading climate informatics researcher.
- •The interview discusses the use of machine learning in a data-rich environment for studying climate events.
Reference
“Deep Unsupervised Learning for Climate Informatics”