I am trying to accomplish the following logical operation in Python but getting into memory and time issues. Since, I am very new to python, guidance on how and where to optimize the problem would be appreciated ! ( I do understand that the following question is somewhat abstract )

```
import networkx as nx
dic_score = {}
G = nx.watts_strogatz_graph(10000,10,.01) # Generate 2 graphs with 10,000 nodes using Networkx
H = nx.watts_strogatz_graph(10000,10,.01)
for Gnodes in G.nodes()
for Hnodes in H.nodes () # i.e. For all the pair of nodes in both the graphs
score = SomeOperation on (Gnodes,Hnodes) # Calculate a metric
dic_score.setdefault(Gnodes,[]).append([Hnodes, score, -1 ]) # Store the metric in the form a Key: value, where value become a list of lists, pair in a dictionary
```

Then Sort the lists in the generated dictionary according to the criterion mentioned here sorting_criterion

My problems/questions are:

1) Is there a better way of approaching this than using the for loops for iteration?

2) What should be the most optimized (fastest) method of approaching the above mentioned problem ? Should I consider using another data structure than a dictionary ? or possibly file operations ?

3) Since I need to sort the lists inside this dictionary, which has 10,000 keys each corresponding to a list of 10,000 values, memory requirements become huge quite quickly and I run out of it.

3) Is there a way to integrate the sorting process within the calculation of dictionary itself i.e. avoid doing a separate loop to sort?

Any inputs would be appreciated ! Thanks !