# KeyError when writing NumPy values to GEXF with NetworkX

Hi everyone I 'd like to compute node coordinates and then export graph to GEXF and process it with Gephi. However when I run the following code

``````import networkx as nx
import numpy as np
....
area_ratios = [np.sum(new[:,0])/Stotal, np.sum(new[:,1])/Stotal, np.sum(new[:,2])/Stotal]
X = np.array([0, -sqrt(3)/2 * area_ratios[1] , sqrt(3)/2 * area_ratios[2]])
Y = np.array([ area_ratios[0], -1/2 * area_ratios[1] , -1/2 * area_ratios[2]])

point = (np.sum(X), np.sum(Y))

'y-coord': np.asscalar(point[1]*SCALE_FACTOR), 'size': Stotal*3})

nx.write_gexf(graph, PATH + 'mygraph.gexf')
``````

it gives me a `KeyError: <type 'numpy.float64'>` even though `np.asscalar` is meant to convert the relevant attributes to the compatible python type.

Any ideas?

• What is the type of `Stotal`? It works ok for me when I try using `np.asscalar` on all three values. (or just defining Stotal as an int) Feb 26, 2014 at 10:41
• Right! I saw it a bit after I wrote the post. Need to convert this as well. Thanks for the answer Feb 26, 2014 at 12:03
• Could you maybe accept the answer to mark the question as solved, even when it is five years later? Feb 22, 2019 at 18:25

Looks like this was solved a long time ago but I found that my code was having a similar problem using float values from a pandas data frame. The solution was in the comments but it took me a while to figure it out so I thought I might clarify.

If you are making your nodes from a dataframe like this:

``````G.add_node(df2.loc[row,door_col],
attr_dict={'dropoff':df2.loc[row,'A'],
'pageviews':df2.loc[row,'C'],
'sessions':df2.loc[row,'D'],
'entrances':df2.loc[row,'E'],
'exits':df2.loc[row,'F'],
'timeOnPage':df2.loc[row,'G'],
'classesB':df2.loc[row,'H']})
``````

Assuming cols a-g are floats, they are np.float64 values, not float values. nx.write_gexf() will crash. However the easy fix is to coerce them into simple values using something like this:

``````G.add_node(df2.loc[row,door_col],
attr_dict={'dropoff':float(df2.loc[row,'A']),
'pageviews':float(df2.loc[row,'C']),
'sessions':float(df2.loc[row,'D']),
'entrances':float(df2.loc[row,'E']),
'exits':float(df2.loc[row,'F']),
'timeOnPage':float(df2.loc[row,'G']),
'classesB':str(df2.loc[row,'H'])})
``````

There are a lot of tools that struggle with np.float64 types. Converting them is always the easy option.