# How to apply condition on level of pandas.multiindex?

My data looks like this: (ch = channel, det = detector)

``````ch det time counts
1   1    0    123
2    0    121
3    0    125
2   1    0    212
2    0    210
3    0    210
1   1    1    124
2    1    125
3    1    123
2   1    1    210
2    1    209
3    1    213
``````

Note, in reality the time column is a float with 12 or so significant digits, still constant for all detectors of 1 measurement, but it's value is not predictable, nor in a sequence.

What I need to create is a dataframe that looks like this:

``````c  time  mean_counts_over_detectors
1   0       xxx
2   0       yyy
1   1       zzz
1   1       www
``````

I.e., I would like to apply np.mean over all counts of the detectors of 1 channel at each time separately. I could write kludgy loops, but I feel that pandas must have something built-in for this? I am still a beginner at pandas, and especially with MultiIndex there are so many concepts, I am not sure what I should be looking for in the docs?

The title contains 'condition' because I thought that maybe the fact that I want the mean over all detectors of one channel for the counts where the time is the same can be expressed as a slicing condition?

-

Same as @meteore but with a MultiIndex.

``````In [55]: df
Out[55]:
counts
ch det time
1  1   0        123
2   0        121
3   0        125
2  1   0        212
2   0        210
3   0        210
1  1   1        124
2   1        125
3   1        123
2  1   1        210
2   1        209
3   1        213

In [56]: df.index
Out[56]:
MultiIndex
[(1L, 1L, 0L) (1L, 2L, 0L) (1L, 3L, 0L) (2L, 1L, 0L) (2L, 2L, 0L)
(2L, 3L, 0L) (1L, 1L, 1L) (1L, 2L, 1L) (1L, 3L, 1L) (2L, 1L, 1L)
(2L, 2L, 1L) (2L, 3L, 1L)]

In [57]: df.index.names
Out[57]: ['ch', 'det', 'time']

In [58]: df.groupby(level=['ch', 'time']).mean()
Out[58]:
counts
ch time
1  0     123.000000
1     124.000000
2  0     210.666667
1     210.666667
``````

Be carefull with floats & groupby (this is independent of a MultiIndex or not), groups can differ due to numerical representation/accuracy-limitations related to floats.

-
Why would having a multi-index before using groupby be helpful? –  Chris Mar 9 at 18:51
a multi-index was used, just because the example dataframe in the question was using multi-index –  Wouter Overmeire Mar 10 at 12:28

Not using MultiIndexes (if you have them, you can get rid of them through `df.reset_index()`):

``````chans = [1,1,1,2,2,2,1,1,1,2,2,2]
df = pd.DataFrame(dict(ch=chans, det=[1,2,3,1,2,3,1,2,3,1,2,3], time=6*[0]+6*[1], counts=np.random.randint(0,500,12)))
``````

Use `groupby` and `mean` as an aggregation function:

``````>>> df.groupby(['time', 'ch'])['counts'].mean()
time  ch
0     1     315.000000
2     296.666667
1     1     178.333333
2     221.666667
Name: counts
``````

Other aggregation functions can be passed via `agg`:

``````>>> df.groupby(['time', 'ch'])['counts'].agg(np.ptp)
``````
-
sorry, as I asked about MultiIndex, and it's a hard choice, I give it to Wouter, ok? Gave you 'UP' of course. –  K.-Michael Aye Oct 29 '12 at 18:25
But of course! We are all students of Wouter! –  meteore Oct 31 '12 at 12:58