Download files from DSpace systems (because for some reason DSpace won't let you)

Related tags

Deep LearningDSpaceDL
Overview

DSpaceDL

A tool for downloading files from DSpace items.

For some reason, DSpace systems have a dogshit UI, and Universities absolutely LOOOVE to use such software to cause as much pain to the student as humanly possible.

Well, that ends today. No longer will we be chained by the clunky UI of old websites that force you to download each file individually. No longer will we need to open 5000 browser tabs open so we can download files from DSpace systems.

I'm basically running a regex on the XML on DSpace and extracting each file's information so I can download it.

Usage

download.py defines a DSPACE_STEM in it as a safety mechanism. This basically ensures you don't download the wrong files from the wrong link. It's also used for URL verification.

After making sure you have the correct DSPACE_STEM variable set, you can then download files from DSpace items like so:

python ./download.py https://demo.dspace.org/jspui/handle/10673/6.3

This downloads all the files in the given item to a folder with the name of the parent collection since that's usually the categorization you want instead of the item name itself.

Only the first collection's name is used in case the item is in multiple collections.

You can also download files from multiple URLs:

python ./download.py https://demo.dspace.org/jspui/handle/10673/6.3 https://demo.dspace.org/jspui/handle/10673/59 https://demo.dspace.org/jspui/handle/10673/60

There is no limit to how many URLs you can download from.

Why?

pain

Owner
Soumitra Shewale
Self taught backend, wannabe full stack dev. Google Code-in 2018 Finalist for @Catrobat | Google Code-in 2019 Runner up for @JuliaLang
Soumitra Shewale
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