# Networkx : Convert multigraph into simple graph with weighted edges

I have a multigraph object and would like to convert it to a simple graph object with weighted edges. I have looked through the networkx documentation and can't seem to find a built in function to achieve this. I was just wondering if anyone knew of a built-in function in networkx that could achieve this goal. I looked at the to_directed() , to_undirected() functions but they don't serve my goal.

• Does the multigraph have weighted edges? And if so do you want to combine the weights from parallel edges in some way to build a graph? – Aric Mar 23 '13 at 23:41
• Yes thats exactly the situation. – anonuser0428 Mar 23 '13 at 23:56

Here is one way to create a weighted graph from a weighted multigraph by summing the weights:

import networkx as nx
# weighted MultiGraph
M = nx.MultiGraph()

# create weighted graph from M
G = nx.Graph()
for u,v,data in M.edges(data=True):
w = data['weight'] if 'weight' in data else 1.0
if G.has_edge(u,v):
G[u][v]['weight'] += w
else:

print(G.edges(data=True))
# [(1, 2, {'weight': 26}), (2, 3, {'weight': 42})]

• This is a great solution, almost exactly what I was looking for, except my MultiGraph doesn't have a 'weight' attribute on the edges. I suggested a small update to your code, so it defaults the weight to 1.0 if there is no such attribute. – Ulf Aslak Feb 13 '17 at 13:33

One very simple way of doing it is just to pass your multigraph as input to Graph.

import networkx as nx

G = nx.MultiGraph()