# Computing shortest paths with networkx

I have an edgelist (node1 node2 weight). Attempting to identify the weighted shortest path lengths among all nodes. Here is my data: https://drive.google.com/file/d/1DxSL5lSgsHYdR7kWmauVWA7CW_Q05xPS/view?usp=sharing

Can't get it to produce output.

Not sure if I am reading in the weights correctly or including them in the shortest path production.

``````import networkx as nx
nx.DiGraph())

G=nx.path_graph(48)
len_path = dict(nx.all_pairs_dijkstra(G))
print(len_path[3][0][1])

for node in G:
print('3 - {}: {}'.format(node, len_path[3][0][node]))
``````
• Can you clarify what you mean by "Can't get it to produce output"? Is it just not finishing the calculation? – Joel Jul 8 '19 at 1:31
• The code runs for me (using the path graph, once I indent the final print statement). – Joel Jul 8 '19 at 1:42
• Runs for me. Takes virtually 0 time. – DYZ Jul 8 '19 at 1:48
• The shortest paths in the output are ordered by their lengths, that is why they look like sequential numbers. If you compare the outputs for the graph from your file and for the synthetic unweighted graph, they are very different. So, the weights are definitely taken into account. – DYZ Jul 8 '19 at 2:11
• The first `0` is `node`. The rest is `len_path`. The first part shows you the lengths from `0` The length from `0` to `0` in your unweighted path is `0`. The length from `0` to `1` in the unweighted path is `1`. The length from `0` to `2` is `2`, etc. The part in `...` is probably {1:({0:1, 1:0, 2:1,...` meaning that the length of the path from `1` to `0` is `1`, from `1` to `1` is `0`, from `1` to `2` is `1` etc. Try doing your last `for` loop, which will give the lengths from `3` to each node. – Joel Jul 8 '19 at 9:50