Here is the information, in a different data structure:

```
In [8]: df = pd.DataFrame({'cat1':[0,3,1], 'cat2':[2,0,1], 'cat3':[2,1,0]})
In [9]: df
Out[9]:
cat1 cat2 cat3
0 0 2 2
1 3 0 1
2 1 1 0
[3 rows x 3 columns]
In [10]: rowmax = df.max(axis=1)
```

The max values are indicated by True values:

```
In [82]: df.values == rowmax[:,None]
Out[82]:
array([[False, True, True],
[ True, False, False],
[ True, True, False]], dtype=bool)
```

`np.where`

returns the indices where the DataFrame above is True.

```
In [84]: np.where(df.values == rowmax[:,None])
Out[84]: (array([0, 0, 1, 2, 2]), array([1, 2, 0, 0, 1]))
```

The first array indicates index values for `axis=0`

, the second array for `axis=1`

. There are 5 values in each array since there are five locations that are True.

You could use `itertools.groupby`

to build the list of lists you posted, though perhaps you don't need this given the data structures above:

```
In [46]: import itertools as IT
In [47]: import operator
In [48]: idx = np.where(df.values == rowmax[:,None])
In [49]: groups = IT.groupby(zip(*idx), key=operator.itemgetter(0))
In [50]: [[df.columns[j] for i, j in grp] for k, grp in groups]
Out[50]: [['cat1', 'cat1'], ['cat2'], ['cat3', 'cat3']]
```