2

I have a large undirected weighted graph with ~375,000 nodes and ~3,400,000 edges represented as adjacency list (dictionary of dictionaries).

e.g.

A --> (B,2), (C,4)
B --> (A,2)
C --> (A,4)

is represented as

{A : {B : 2, C : 4}, B : {A : 2}, C : {A : 4}}

I want to convert this graph to python-igraph graph and subsequently run walktrap community detection algorithm. I have tried following approach:

g = igraph.Graph()

for node in mygrpah.keys():
    g.add_vertex(name=node) # each node is a string

for node,neighbours in mygraph.iteritems():
    g.add_edges([(node,neighbour) for neighbour in neighbours.keys()])
    for neighbour in neighbours.keys():
        # to avoid adding edge while traversing neighbour's dictionary
        del mygraph[neighbour][node]  

I tested this on a subgraph with 150,000 nodes and it took ~11 hours on my computer with 4GB RAM and i5-4200U CPU @ 1.60GHz × 4 processor.

  1. is there a better approach to do the conversion?
  2. is there any other graph library which is faster and provides support for walktrap community detection algorithm?
3

The problem is that you add one edge after another, which is very time consuming due to the underlying data structure. It's much faster to first build a list of vertices and a list of edges and then add all edges with one call to add_edges(...).

mygraph = {"A" : {"B" : 2, "C" : 4}, "B" : {"A" : 2}, "C" : {"A" : 4}, "D":{}}
g = igraph.Graph(directed=False)
g.add_vertices(mygraph.keys())
edges = [(start, end) for start in mygraph.keys() for end in mygraph[start].keys()]
# or if you only want to have undirected links only once:
edges = [edge for edge in edges if edge[0] > edge[1]]
g.add_edges(edges)
igraph.plot(g)

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