dgerosa/astrostatistics_bicocca_2023
Astrostatistics and Machine Learning class for the MSc degree in Astrophysics at the University of Milan-Bicocca (Italy)
This project offers a comprehensive course in astrostatistics and machine learning, tailored for astrophysics students. It provides practical computational skills for analyzing astronomical data using modern statistical techniques. Users will learn to input raw observational data and apply various statistical and machine learning models to extract meaningful insights and draw scientific conclusions, targeting anyone in physics needing robust data analysis skills.
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Use this if you are an astrophysics student or physics researcher needing to understand and apply advanced statistical and machine learning methods to analyze complex astronomical datasets.
Not ideal if you are looking for a purely theoretical introduction to statistics or machine learning without hands-on coding, or if your primary domain is not astronomy or physics.
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Jupyter Notebook
License
GPL-3.0
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Last pushed
Jan 03, 2024
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