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


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?

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)
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]]

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