I have a list of nodes and each node has measured the wifi field strength from other points. The list will be in the form:

```
RSSI_list = [[node4, node3, RSSI], [node7, node5, RSSI]] #etc (it will be more populated)
```

The RSSI can be considered equivalent to an estimated distance as it will be replaced with a value interpolated/extrapolated from some empirical data I have recorded.

I want to find and "map" where all the points are in relation to each other so I can calculate angles between them.

To do this I have looked at using `networkx`

which provides the following functions:

```
aGraph.add_nodes_from(aListOfNodes) # Add all the nodes from the list, aListOfNodes
aGraph.add_edge(aNode1, aNode2) # creates an edge from aNode1 to aNode2
edgeData = {"weight": 42} # a dictionary with only one entry
g.add_edge(nodeA, nodeB, edgeData) #create the edge with the given data dictionary
```

Which would allow me to use what I have in my list. I want something that will allow me to add pairs of nodes and will automatically link pairs where an end is common.

Before I go any further down the networkx line of enquiry is there a better function in another python module that would do this better?

`'weight'`

s are proxies for the distance between the nodes. You are still going to have to deal with finding cycles of length 3, not sure if`networkx`

will help with that... – Jaime Apr 25 '13 at 21:12