I would write a huge graph to neo4j. Using my code would take slightly less than two months.
I took the data from Kaggle's events recommendation challenge, the
user_friends.csv file I am using looks like
user,friends 3197468391,1346449342 3873244116 4226080662, ...
I used the py2neo
batch facility to produce the code. Is it the best I can do or is there another way to significantly reduce the running time?
Here 's the code
#!/usr/bin/env python from __future__ import division from time import time import sqlite3 from py2neo import neo4j graph = neo4j.GraphDatabaseService("http://localhost:7474/db/data/") batch = neo4j.WriteBatch(graph) people = graph.get_or_create_index( neo4j.Node,"people") friends = graph.get_or_create_index( neo4j.Relationship,"friends") con = sqlite3.connect("test.db") c = con.cursor() c.execute("SELECT user, friends FROM user_friends LIMIT 2;") t=time() for u_f in c: u_node = graph.get_or_create_indexed_node("people",'name',u_f) for f in u_f.split(" "): f_node = graph.get_or_create_indexed_node("people",'name', f) if not f_node.is_related_to(u_node, neo4j.Direction.BOTH,"friends"): batch.create((u_node,'friends',f_node)) batch.submit() print time()-t
Also I cannot find a way to create an undirected graph using the high level
py2neo facilities? I know
cypher can do this with someting like
create (node(1) -[:friends]-node(2))
Thanks in advance.