You could sort each row of the `Node_1`

and `Node_2`

columns using `np.sort`

:

```
nodes = df.filter(regex='Node')
arr = np.sort(nodes.values, axis=1)
df.loc[:, nodes.columns] = arr
```

which results in `df`

now looking like:

```
Node_1 Node_2 Time
0 A B 6
1 A B 4
2 A B 2
3 B C 5
```

With the `Node`

columns sorted, you can `groupby/agg`

as usual:

```
result = df.groupby(cols).agg('mean').reset_index()
```

```
import numpy as np
import pandas as pd
data = {'Node_1': {0: 'A', 1: 'A', 2: 'B', 3: 'B'},
'Node_2': {0: 'B', 1: 'B', 2: 'A', 3: 'C'},
'Time': {0: 6, 1: 4, 2: 2, 3: 5}}
df = pd.DataFrame(data)
nodes = df.filter(regex='Node')
arr = np.sort(nodes.values, axis=1)
cols = nodes.columns.tolist()
df.loc[:, nodes.columns] = arr
result = df.groupby(cols).agg('mean').reset_index()
print(result)
```

yields

```
Node_1 Node_2 Time
0 A B 4
1 B C 5
```