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Machine Learning in Astronomy (IAU S368): Possibilities and Pitfalls - Proceedings of the International Astronomical Union Symposia and Colloquia Ashish Mahabal-Jess Mciver-Christopher Fluke
Machine Learning in Astronomy (IAU S368): Possibilities and Pitfalls - Proceedings of the International Astronomical Union Symposia and Colloquia
Ashish Mahabal-Jess Mciver-Christopher Fluke
IAU S368 addresses graduate students and professional astronomers who wish to leverage machine learning to unlock the potential of modern data-rich surveys and deep images, as well as archival data. Researchers at the frontiers share best practices in applied machine learning that are relevant to astronomy and other data-rich fields.
| Medios de comunicación | Libros Hardcover Book (Libro con lomo y cubierta duros) |
| Publicado | 16 de octubre de 2025 |
| ISBN13 | 9781009345194 |
| Editores | Cambridge University Press |
| Páginas | 200 |
| Dimensiones | 254 × 178 × 11 mm · 398 g |
| Editor | Fluke, Christopher (Swinburne University of Technology, Victoria) |
| Editor | Mahabal, Ashish (California Institute of Technology) |
| Editor | McIver, Jess (University of British Columbia, Vancouver) |