{
"item_title" : "Machine Learning for Astrophysics 2024",
"item_author" : [" Filomena Bufano", "Eva Sciacca", "Simone Riggi "],
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Machine Learning for Astrophysics 2024 : Proceedings of the 2nd Ml4astro International Conference 8-12 July 2024
Overview
This proceedings book reviews the state of the art in the exploitation of machine learning techniques for the astrophysics community and gives the reader a complete overview of the field. The contributed chapters allow the reader to easily digest the material through balanced theoretical and numerical methods and tools with applications in different fields of theoretical and observational astronomy. The book helps the reader to really understand and quantify both the opportunities and limitations of using machine learning in several fields of astrophysics.
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Details
- ISBN-13: 9783032022318
- ISBN-10: 3032022312
- Publisher: Springer
- Publish Date: April 2026
- Page Count: 190
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