Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I'm working on a collaborative scientific project that is made up by a handful of Python scripts (1M max) and a relatively large dataset (1.5 GB). The datasets are tightly linked to the python scripts since the datasets themselves are the science and the scripts are a simple interface to them.

I'm using Mercurial as my source control tool, but I am not clear on a good mechanism to define the repository. Logistically it makes sense to bundle these together so that by cloning the repository you'd get the entire package. On the other hand, I'm concerned about the source control tool dealing with large amounts of data.

Is there a clean mechanism to handle this?

share|improve this question
up vote 7 down vote accepted

If the data files change rarely and you normally need all of them anyway, then just add them to Mercurial and be done with it. All your clones will be 1.5 GB, but that is just the way it has to be with that amount of data.

if the data is binary data and changed often, then you might try to avoid downloading all the old data. One way to do this is to use a Subversion subrepository. You will have a .hgsub file with

data = [svn]

which tells Mercurial to make a svn checkout from the right-hand side URL and put the Subversion working copy into your Mercurial clone as data. Mercurial will maintain an additional file for you called .hgsubstate, in which it records the SVN revision number to checkout for any given Mercurial changeset. By using Subversion like this, you only end up with the latest version of the data on your machine, but Mercurial will know how to get older versions of the data when needed. Please see this guide to subrepositories if you go down this route.

share|improve this answer

There is an article on the official wiki about large binary files. But the proposition of @MartinGeisler is a really nice new alternative.

share|improve this answer

My first inclination is to separate the python scripts out into their own repository, but I really need more domain information to make the "right" call.

On the one hand, if new datasets will be created then you would want a core set of tools to be able to handle all of them, right? But I can also see how new datasets may introduce cases that the scripts may not have previously handled... although it seems like in an ideal world you would want scripts that are written in a general way so they can handle future data and existing datasets??

share|improve this answer
Generally the scientists roll a new tool for each dataset which is out of my hands. The scripts are relatively light and tightly linked to the quirks of each dataset. It's easier for me to customize a small script than force a data exchange protocol on everybody else. – Rich Apr 10 '11 at 18:50

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.