# Are there functions to retrieve the histogram counts of a Series in pandas?

There is a method to plot Series histograms, but is there a function to retrieve the histogram counts to do further calculations on top of it?

I keep using numpy's functions to do this and converting the result to a DataFrame or Series when I need this. It would be nice to stay with pandas objects the whole time.

-

If your Series was discrete you could use `value_counts`:

``````In [11]: s = pd.Series([1, 1, 2, 1, 2, 2, 3])

In [12]: s.value_counts()
Out[12]:
2    3
1    3
3    1
dtype: int64
``````

You can see that `s.hist()` is essentially equivalent to `s.value_counts().plot()`.

If it was of floats an awful hacky solution could be to use groupby:

``````s.groupby(lambda i: np.floor(2*s[i]) / 2).count()
``````
-
I have floating point numbers. :( Most of those counts will be 1. This may still useful for cumulative distributions though, thanks. Can I resample somehow like I can do with TimeSeries? –  Rafael S. Calsaverini Jun 17 '13 at 13:41
@RafaelS.Calsaverini ah, I see! –  Andy Hayden Jun 17 '13 at 13:43
@RafaelS.Calsaverini well, I have a hacky way, it seems likely there is a better way (pandas-foo isn't with me today). –  Andy Hayden Jun 17 '13 at 13:54

Since `hist` and `value_counts` don't use the Series' index, you may as well treat the Series like an ordinary array and use `np.histogram` directly. Then build a Series from the result.

``````In [4]: s = Series(randn(100))

In [5]: counts, bins = np.histogram(s)

In [6]: Series(counts, index=bins[:-1])
Out[6]:
-2.968575     1
-2.355032     4
-1.741488     5
-1.127944    26
-0.514401    23
0.099143    23
0.712686    12
1.326230     5
1.939773     0
2.553317     1
dtype: int32
``````

This is a really convenient way to organize the result of a histogram for subsequent computation.

To index by the center of each bin instead of the left edge, you could use `bins[:-1] + np.diff(bins)/2`.

-
this is just so much nicer :) –  Andy Hayden Jun 17 '13 at 15:19
This is close to what I usually do. I was just curious if there was a built in pandas function for that. –  Rafael S. Calsaverini Jun 18 '13 at 12:05
–  Dan Allan Jun 18 '13 at 12:39