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Montage Notebooks: Jupyter notebooks illustrating the use of the Python version of Montage

Montage is a general astronomical image toolkit with facilities for reprojection, background matching, mosaicking and visualization. It can be used as a set of command-line tools (Linux, OS X and Windows), C library calls (Linux and OS X) and as Python binary extension modules. These use cases are all covered by the Jupyter notebooks.

All of the core Montage functionality is available through a Python binary extension ("pip install MontagePy") and can be used from within Jupyter notebooks. Most of the notebooks shown here are focused on illustrating the use of a single Montage function but there are a couple that illustrate end-to-end Montage processing.

The Montage source distribution is available through GitHub at https://github.com/Caltech-IPAC/Montage but you don't need this if you are just running the Python version of Montage.

This document set (notebooks and HTML pages) is a available through GitHub at https://github.com/Caltech-IPAC/MontageNotebooks. If you just want to view the notebook pages without downloading, go to http://montage.ipac.caltech.edu/MontageNotebooks.

The data needed to actually run the notebooks comes in two files.

http://montage.ipac.caltech.edu/data/montage_datacubes.tar.gz (3 GByte uncompressed) has the data for the datacube examples (because of the third dimension, datacubes tend to be large files). If you are not interested in datacubes you can save time and space by not downloading this file. http://montage.ipac.caltech.edu/data/montage_data.tar.gz (1 GByte uncompressed) has the data for all the other notebooks.

Both of these tarballs should be taken apart in the same directories as the Montage (http://montage.ipac.caltech.edu) is an Open Source toolkit, distributed with a BSD 3-clause license, for assembling Flexible Image Transport System (FITS) images into mosaics according to the user's custom specifications of coordinates, projection, spatial sampling and rotation.

The Montage toolkit contains utilities for reprojecting and background matching images, assembling them into mosaics, visualizing the results, and discovering, analyzing and understanding image metadata from archives or the user's images.

Montage is written in ANSI-C and is portable across all common Unix-like platforms, including Linux, Solaris, Mac OSX and Cygwin on Windows. The package provides both stand-alone executables and the same functionality in library form. It has been cross-compiled to provide native Windows executables and packaged as a binary Python extension (available via "pip install MontagePy").

The source distribution contains all libraries needed to build the toolkit from a single simple "make" command, including CFITSIO and the WCS library (which has been extended to support HEALPix and World-Wide Telescope TOAST projections. The toolkit is in wide use in astronomy to support research projects, and to support pipeline development, product generation and image visualization for major projects and missions; e.g. Spitzer Space Telescope, Herschel, Kepler, AKARI and others. Montage is used as an exemplar application by the computer science community in developing next-generation cyberinfrastructure, especially workflow frameworks on distributed platforms, including multiple clouds.

Montage provides multiple reprojection algorithms optimized for different needs, maximizing alternately flux conservation, range of projections, and speed.

The visualization module supports full (three-color) display of FITS images and publication quality overlays of catalogs (scaled symbols), image metadata, and coordinate grids. It fits in equally well in pipelines or as the basis for interactive image exploration and there is Python support for the latter (It has also been used in web/Javascript applications).

Montage is funded by the National Science Foundation under Grant Numbers ACI-1440620 and ACI-1642453., and was previously funded by the National Aeronautics and Space Administration's Earth Science Technology Office, Computation Technologies Project, under Cooperative Agreement Number NCC5-626 between NASA and the California Institute of Technology.