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Using Python and Astropy for Astronomical Data Analysis

Workshop at Queens University Belfast

DATE: Wednesday & Thursday, November 20-21, 2019

TIME: 9:00-12:00 (Wed), 9:00-12:00 (Thurs)

LOCATION: 69-71 University Street, Room 0G/007 (Wed), Peter Froggatt Centre Room 02/013 (Thurs)

PRE-WORKSHOP SETUP

Please be sure your laptop is properly configured before the workshop by following the installation and setup instructions.

This could take as long as one hour depending on your current configuration and internet speeds.
DO NOT WAIT UNTIL THE DAY OF THE WORKSHOP.

Schedule

Wednesday, Nov 20

Time Topic
09:00 - 09:30 Install and config
09:30 - 09:35 Intake Survey
09:35 - 10:45 Introduction to Python
10:45 - 11:30 Astropy Units, Quantities, and Constants
11:30 - 12:00 Coordinates

Thursday, Nov 21

Time Topic
09:00 - 09:30 I/O: FITS and ASCII
09:30 - 10:00 Astropy Tables
10:00 - 10:15 Contributing to Astropy
10:15 - 11:30 Packaging, Object Oriented Programming
11:30 - 12:00 Q&A, Outgoing Survey

Description

This workshop covers the use of Python tools for astronomical data analysis and visualization, with the focus primarily on UV, Optical, and IR data. Data analysis tools for JWST are being written in Python and distributed as part of Astropy, a community developed Python library for astronomy, and its affiliated packages.

The workshop goals introduce you to the variety of tools which are already available inside the Astropy library as well as provide ample hands-on time during which you’ll be able to explore the science analysis capabilities which the greater Python environment and community provide.

We plan on accomplishing this with brief overview talks on the main tools followed by extended instructor guided tutorials where you’ll be able to try them out for yourself and ask questions in the company of expert users and developers.

Some basic Python experience is highly recommended to be able to effectively participate in the exercises, but those without Python experience will still get much useful information about the capabilities for data analysis in Python and perhaps pick up some pointers on where they can get started learning more scientific Python and integrating it into their work flow.

If you would like to get a head start with the tools we will be concentrating on you can check out their documentation on readthedocs:

Past Workshops

Materials from other astropy workshops can be found here: https://github.com/astropy/astropy-workshop

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