Memory problems while code is running (Python, Networkx)

Posted by MIN SU PARK on Stack Overflow See other posts from Stack Overflow or by MIN SU PARK
Published on 2011-11-24T06:25:21Z Indexed on 2011/11/24 9:53 UTC
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I made a code for generate a graph with 379613734 edges.

But the code couldn't be finished because of memory. It takes about 97% of server memory when it go through 62 million lines. So I killed it.

Do you have any idea to solve this problem?

My code is like this:

import os, sys
import time
import networkx as nx


G = nx.Graph()

ptime = time.time()
j = 1

for line in open("./US_Health_Links.txt", 'r'):
#for line in open("./test_network.txt", 'r'):
    follower = line.strip().split()[0]
    followee = line.strip().split()[1]

    G.add_edge(follower, followee)

    if j%1000000 == 0:
        print j*1.0/1000000, "million lines done", time.time() - ptime
        ptime = time.time()
    j += 1

DG = G.to_directed()
#       P = nx.path_graph(DG)
Nn_G = G.number_of_nodes()
N_CC = nx.number_connected_components(G)
LCC = nx.connected_component_subgraphs(G)[0]
n_LCC = LCC.nodes()
Nn_LCC = LCC.number_of_nodes()
inDegree = DG.in_degree()
outDegree = DG.out_degree()
Density = nx.density(G)
#       Diameter = nx.diameter(G)
#       Centrality = nx.betweenness_centrality(PDG, normalized=True, weighted_edges=False)
#       Clustering = nx.average_clustering(G)

print "number of nodes in G\t" + str(Nn_G) + '\n' + "number of CC in G\t" + str(N_CC) + '\n' + "number of nodes in LCC\t" + str(Nn_LCC) + '\n' + "Density of G\t" + str(Density) + '\n'
#       sys.exit()
#   j += 1

The edge data is like this:

1000    1001
1000245    1020191
1000    10267352
1000653    10957902
1000    11039092
1000    1118691
10346    11882
1000    1228281
1000    1247041
1000    12965332
121340    13027572
1000    13075072
1000    13183162
1000    13250162
1214    13326292
1000    13452672
1000    13844892
1000    14061830
12340    1406481
1000    14134703
1000    14216951
1000    14254402
12134   14258044
1000    14270791
1000    14278978
12134    14313332
1000    14392970
1000    14441172
1000    14497568
1000    14502775
1000    14595635
1000    14620544
1000    14632615
10234    14680596
1000    14956164
10230    14998341
112000    15132211
1000    15145450
100    15285998
1000    15288974
1000    15300187
1000    1532061
1000    15326300

Lastly, is there anybody who has an experience to analyze Twitter link data? It's quite hard to me to take a directed graph and calculate average/median indegree and outdegree of nodes. Any help or idea?

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