I am trying to create a directed graph from a very large data-set (200 million edges) using graph-tool. I am using chunksize in Pandas to work with the data because of memory constraints.

The data (output.csv) looks like:

 195795, 6661384
 195795, 6661990
 195795, 6663066
 195795, 6664808
 195795, 6986059
 195795, 6988290

Shown as an adjacency list of vertices, and I want to create a graph from this data and assign the numbers which describe the vertex as the name of the vertex.

For a small dataset which requires no chunking I do the following:

testdata = pd.read_csv('smalldataset',header=None,engine='python')
vmap = g.add_edge_list(df.values, hashed=True)

However for my large dataset I do the following, I have changed the chunk size to be smaller to show the effect:

for chunk in pd.read_csv('output.csv', header=None, 
    vmap = g.add_edge_list(df.values, hashed=True)

The output of vmap:



[0, 0, 0, 0, 18308712, 195795, 18308713, 18308714]

gives only the final "rowcount" of vertices with the actual vertex names, the first properties are set to 0 for some reason. If I do this step by step I can can see that the first properties get set to zero as the loop iterates through. This therefore means that all of the vertices except those in the last iteration of the loop have their names assigned as '0'.

What is the correct way to loop through a large Pandas dataset like this (in chunks) using add_edge_list?

  • A quick workaround which is working for me is to not use engine='python' when loading in my Pandas dataframe. Using the C engine uses up an order of magnitude less RAM. – Georgeos Hardo Feb 1 at 18:06

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Browse other questions tagged or ask your own question.