Say I have a pandas DataFrame with the format:

```
Month Thing1 Thing2 Tot
0 Jan-12 A Z 0.005880
1 Jan-12 A Z 0.024500
...
20 Jan-12 B Y 0.001533
21 Jan-12 C X 0.003892
22 Jan-12 C X 0.001680
23 Jan-12 C X 0.001680
24 Jan-12 C X 0.001680
25 Jan-12 C X 0.001680
26 Jan-12 A W 0.001680
27 Jan-12 D V 0.013440
28 Jan-12 E U 0.001680
...
```

The Month column goes unitl Apr-14. I am trying to plot line graphs for the monthly totals for each item in `Thing1`

and `Thing2`

.

I am attempting this using `groupby`

:

```
a=pd.read_csv('all2.csv')
sums=a.groupby([u'Month',u'Thing1',u'Thing2']).sum()
```

which gives me:

```
Apr-12 A W 6.427773
Z 4.347471
B T 7.062425
Y 17.183562
C X 14.583337
D V 0.114450
E U 0.008050
F Q 0.000490
R 0.004468
G P 0.010932
...
```

However the months come up alphabetically. My questions are:

How can I get Pandas to consider the month column as a datetime object?

How can I iterate through `Thing1`

column and plot time series monthly totals for each item in `Thing2`

?

I imagine there is a way to reorganise the Dataframe such that a simple call to `plot()`

will do the job?