Fast max-flow min-cut library for Python

Is there a reliable and well-documented Python library with a fast implementation of an algorithm that finds maximum flows and minimum cuts in directed graphs?

pygraph.algorithms.minmax.maximum_flow from python-graph solves the problem but it is painfully slow: finding max-flows and min-cuts in a directed graph with something like 4000 nodes and 11000 edges takes > 1 minute. I am looking for something that is at least an order of magnitude faster.

Bounty: I'm offering a bounty on this question to see if the situation has changed since when this question was asked. Bonus points if you have personal experience with the library you recommend!

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Have you tried using Psyco(psyco.sourceforge.net) with it? The code for maximum_flow here is all written in pure Python so Psyco could give a huge speed-up. –  Justin Peel Oct 24 '10 at 16:51

I have used graph-tool for similar tasks.

Graph-tool is an efficient python module for manipulation and statistical analysis of graphs (a.k.a. networks). They even have superb documentation about max-flow algorithms.

Currently graph-tool supports given algorithms:

• Edmonds-Karp - Calculate maximum flow on the graph with the Edmonds-Karp algorithm.
• Push relabel - Calculate maximum flow on the graph with the push-relabel algorithm.
• Boykov Kolmogorov - Calculate maximum flow on the graph with the Boykov-Kolmogorov algorithm.

Example taken from docs: find maxflow using Boykov-Kolmogorov:

``````>>> g = gt.load_graph("flow-example.xml.gz") #producing example is in doc
>>> cap = g.edge_properties["cap"]
>>> src, tgt = g.vertex(0), g.vertex(1)
>>> res = gt.boykov_kolmogorov_max_flow(g, src, tgt, cap)
>>> res.a = cap.a - res.a  # the actual flow
>>> max_flow = sum(res[e] for e in tgt.in_edges())
>>> print max_flow
6.92759897841
>>> pos = g.vertex_properties["pos"]
>>> gt.graph_draw(g, pos=pos, pin=True, penwidth=res, output="example-kolmogorov.png")
``````

I executed this example with random directed graph(nodes=4000, vertices = 23964), all process took just 11seconds.

alternative libraries:

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I don't know if it is faster, you'll need to check that, but have you tried networkx ? Seems like it offers the functionality you're looking for and from my experience it is a very easy to use library for handling graphs.

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If networkx is too slow, you could try and get it working in pypy as it seems that it almost does. –  jterrace Aug 28 '11 at 23:32