I have a pandas dataframe of the the following form, **df**,

```
A B C D
A 0 0.5 0.5 0
B 1 0 0 0
C 0.8 0 0 0.2
D 0 0 1 0
```

I am trying to create a networkx graph from this. I have tried the following variations of code:

A)

```
G=networkx.from_pandas_adjacency(df)
G=networkx.DiGraph(G)
```

B)

```
G=networkx.from_pandas_adjacency(df, create_using=networkx.DiGraph())
```

However, what ends up happening is that the graph object either:

(For option A) basically just takes one of the values among the two parallel edges between any two given nodes, and **deletes the other one**.

(For option B) takes one of the values among the two parallel edges between any two given nodes, **as the value for both edges**.

For example,

```
print( list ( filter ( lambda x: x[0]=='A' and x[1] == 'B', list(G.edges.data()) ) ) )
```

and

```
print( list ( filter ( lambda x: x[0]=='B' and x[1] == 'A', list(G.edges.data()) ) ) )
```

prints 1 and [] for option A. prints two 1s for option B.

How do i resolve this issue?

`networkx`

2.1 - In [132]: list(G.edges.data()) [('C', 'D', {'weight': 0.2}), ('C', 'A', {'weight': 0.8}), ('D', 'C', {'weight': 1.0}), ('A', 'C', {'weight': 0.5}), ('A', 'B', {'weight': 0.5}), ('B', 'A', {'weight': 1.0})] – Charles Pehlivanian Jan 16 at 4:18