I am creating a network in python using the packages
numpy and networks. Here is the code that I need help with:
def create_rt_network(self): """construct a retweet network from twitter db""" con = mdb.connect(**proper-information**) cur = con.cursor(mdb.cursors.DictCursor) cur.execute("select COUNT(*) from users") N = cur.fetchone()['COUNT(*)'] mat = np.empty((N, N)) #read adjacency table and store data into mat cur.execute("select * from adjacency") rows = cur.fetchall() for row in rows: curRow = row['r'] curCol = row['c'] weight = row['val'] mat[curRow][curCol] = weight cur.close() con.close() g = nx.from_numpy_matrix(mat, create_using=nx.DiGraph()) return g
- Creating this graph takes about an hour
adjacencyholds 212,000 rows
As I am new to python, I do not how much optimization (if any) the interpreter performs. Regardless, I think the error is in actually creating the graph in the line:
g = nx.from_numpy_matrix(mat, create_using=nx.DiGraph())
I believe this because:
- I have ran the code without that line and it was fast (at most 10 seconds)
- I think writing
matis O(nlgn) as we have n rows, reading from a database (btree search) is O(lgn), and writing
I just had the thought that reading the adjacency matrix takes O(n^2) time; perhaps an adjacency list (which is implemented as a dict of dicts in
networkx) would be faster. In that case does anyone know about weighted graphs and adjacency lists in networkx?
Let me know if you would like more information, all help is greatly appreciated! NOTE: For the future: How can I know if an hour is reasonable?