
The Multi-Order Coverage map (MOC) is a Virtual Observatory method created to specify any kind of sky region in a simple and efficient way. This tutorial explores the usage of MOCPy using different scientific cases. The tutorial is designed to be followed using the web service Google Colab, an easy-to-use Jupyter Notebook environment hosted in Google's cloud (no Python installation required). Requirements: to have a Google account. Please, do it before the tutorial. Link to the latest version of the tutorial: https://colab.research.google.com/drive/1D7e04c2wAoNWZ5RaDiFYhBNiDSqZ7rEf?usp=sharing
MOCPy, SVO, Virtual Observatory, MOC, Python
MOCPy, SVO, Virtual Observatory, MOC, Python
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