Miles Cranmer - Effective Use of Machine Learning in Astrophysics
Duration: 60 mins
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About this item
Description: | (No description) |
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Created: | 2023-11-28 15:33 | ||
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Collection: | New Frontiers in Astrophysics: A KICC Perspective | ||
Publisher: | University of Cambridge | ||
Copyright: | Miles Cranmer | ||
Language: | eng (English) | ||
Distribution: | World (not downloadable) | ||
Keywords: | Astrophysics; Machine Learning; | ||
Credits: |
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Explicit content: | No | ||
Aspect Ratio: | 4:3 | ||
Screencast: | No | ||
Bumper: | UCS Default | ||
Trailer: | UCS Default |
Abstract: | The field of machine learning (ML) offers a powerful set of frameworks for addressing complex problems in astrophysics, ranging from emulating expensive simulations to performing anomaly detection in large datasets. This talk explores a diverse range of ML applications within astrophysics, highlighting the role of these methods in extracting insights from multidimensional and multimodal datasets. I will also discuss the major challenges of ML, such as model robustness, interpretability, uncertainty estimation, and incorporation of physical priors. In all, this presentation will provide astronomers with a pragmatic overview of machine learning’s capabilities and limitations, and how these techniques will continue to shape astrophysical discovery. |
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