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To be more specific I would like to calculate the following properties of the graph: Number of node and edges, Mean Degree, Assortativity, Clustering Coefficient.

Thanks in advance.

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could you give more information on your edgelist format? Does it include other data besides the 2 nodes per edge? Is it compressed in any way? These things could give an indication of the size of your graph and the scale the code/program/tool should be able to handle –  Origin Oct 8 '12 at 23:42
    
nodeA nodeB is the format of every line in the file. It is not compressed and it may include duplicates. –  Giannis H. Oct 15 '12 at 11:26

1 Answer 1

With graphs that size, you need specialised software to do the required operations, but 80 GB is really a lot (what kind of data is it?). As memory is probably going to be an important issue, you could write your own code. Determining the number of nodes and edges should be fairly simple. For the other operations, you should probably look at some distributed algorithms.

If you're familiar with Python, you could try NetworkX. I'm not completely sure if it's gonna be able to support your graph as I still can't estimate the number of nodes. It should however give you a nice starting point.

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The data represents a small portion of twitter. Around 100 million nodes and unkown number of edges. NetworkX uses a lot of memory. Are there any tools that do not require RAM utilization. I was thinking of a tool that store nodes or clusters in small files. However I cannot imagine that this has not been done at all. –  Giannis H. Oct 16 '12 at 12:28
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Most graph libraries are not optimised for such large datasets. What you could try is first reducing your dataset. You said you dataset can contain duplicate edges. Depending on how many duplicates, you could take advantage of this. Consider each edge to have weigt = 1 and merge duplicate edges by adding up their weights. If it were me, I'd write my own code that just works on the data (for now) and avoid external tools as with that amount of data, you'll have too much trouble getting it into your tool. After you reduce the size, then you could try some tools. –  Origin Oct 16 '12 at 19:27
    
Thanks for the help. –  Giannis H. Oct 17 '12 at 7:48

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