# pandas rolling computation with window based on values instead of counts

I'm looking for a way to do something like the various `rolling_*` functions of `pandas`, but I want the window of the rolling computation to be defined by a range of values (say, a range of values of a column of the DataFrame), not by the number of rows in the window.

As an example, suppose I have this data:

``````>>> print d
RollBasis  ToRoll
0          1       1
1          1       4
2          1      -5
3          2       2
4          3      -4
5          5      -2
6          8       0
7         10     -13
8         12      -2
9         13      -5
``````

If I do something like `rolling_sum(d, 5)`, I get a rolling sum in which each window contains 5 rows. But what I want is a rolling sum in which each window contains a certain range of values of `RollBasis`. That is, I'd like to be able to do something like `d.roll_by(sum, 'RollBasis', 5)`, and get a result where the first window contains all rows whose `RollBasis` is between 1 and 5, then the second window contains all rows whose `RollBasis` is between 2 and 6, then the third window contains all rows whose `RollBasis` is between 3 and 7, etc. The windows will not have equal numbers of rows, but the range of `RollBasis` values selected in each window will be the same. So the output should be like:

``````>>> d.roll_by(sum, 'RollBasis', 5)
1    -4    # sum of elements with 1 <= Rollbasis <= 5
2    -4    # sum of elements with 2 <= Rollbasis <= 6
3    -6    # sum of elements with 3 <= Rollbasis <= 7
4    -2    # sum of elements with 4 <= Rollbasis <= 8
# etc.
``````

I can't do this with `groupby`, because `groupby` always produces disjoint groups. I can't do it with the rolling functions, because their windows always roll by number of rows, not by values. So how can I do it?

-

I think this does what you want:

``````In [1]: df
Out[1]:
RollBasis  ToRoll
0          1       1
1          1       4
2          1      -5
3          2       2
4          3      -4
5          5      -2
6          8       0
7         10     -13
8         12      -2
9         13      -5

In [2]: def f(x):
...:     ser = df.ToRoll[(df.RollBasis >= x) & (df.RollBasis < x+5)]
...:     return ser.sum()
``````

The above function takes a value, in this case RollBasis, and then indexes the data frame column ToRoll based on that value. The returned series consists of ToRoll values that meet the RollBasis + 5 criterion. Finally, that series is summed and returned.

``````In [3]: df['Rolled'] = df.RollBasis.apply(f)

In [4]: df
Out[4]:
RollBasis  ToRoll  Rolled
0          1       1      -4
1          1       4      -4
2          1      -5      -4
3          2       2      -4
4          3      -4      -6
5          5      -2      -2
6          8       0     -15
7         10     -13     -20
8         12      -2      -7
9         13      -5      -5
``````

Code for the toy example DataFrame in case someone else wants to try:

``````In [1]: from pandas import *

In [2]: import io

In [3]: text = """\
...:    RollBasis  ToRoll
...: 0          1       1
...: 1          1       4
...: 2          1      -5
...: 3          2       2
...: 4          3      -4
...: 5          5      -2
...: 6          8       0
...: 7         10     -13
...: 8         12      -2
...: 9         13      -5
...: """

``````
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Thanks, that seems to do it. I added my own answer with a more generalized version of this, but I'm accepting your answer. –  BrenBarn Jan 13 '13 at 20:46

Based on Zelazny7's answer, I created this more general solution:

``````def rollBy(what, basis, window, func):
def applyToWindow(val):
chunk = what[(val<=basis) & (basis<val+window)]
return func(chunk)
return basis.apply(applyToWindow)

>>> rollBy(d.ToRoll, d.RollBasis, 5, sum)
0    -4
1    -4
2    -4
3    -4
4    -6
5    -2
6   -15
7   -20
8    -7
9    -5
Name: RollBasis
``````

It's still not ideal as it is very slow compared to `rolling_apply`, but perhaps this is inevitable.

-
This is much quicker if instead of filtering on the value of a second column, you filter on the value of an index. Pandas indexes currently support non-unique entries, so you solution could be sped up by setting the basis column as the index and then filtering on that. –  Ian Sudbery Jan 16 at 13:36

Based on BrenBarns's answer, but speeded up by using label based indexing rather than boolean based indexing:

``````def rollBy(what,basis,window,func,*args,**kwargs):
#note that basis must be sorted in order for this to work properly
indexed_what = pd.Series(what.values,index=basis.values)
def applyToWindow(val):
# using slice_indexer rather that what.loc [val:val+window] allows
# window limits that are not specifically in the index
indexer = indexed_what.index.slice_indexer(val,val+window,1)
chunk = indexed_what[indexer]
return func(chunk,*args,**kwargs)
rolled = basis.apply(applyToWindow)
return rolled
``````

This is much faster than not using an indexed column:

``````In [46]: df = pd.DataFrame({"RollBasis":np.random.uniform(0,1000000,100000), "ToRoll": np.random.uniform(0,10,100000)})

In [47]: df = df.sort("RollBasis")

In [48]: timeit("rollBy_Ian(df.ToRoll,df.RollBasis,10,sum)",setup="from __main__ import rollBy_Ian,df", number =3)
Out[48]: 67.6615059375763

In [49]: timeit("rollBy_Bren(df.ToRoll,df.RollBasis,10,sum)",setup="from __main__ import rollBy_Bren,df", number =3)
Out[49]: 515.0221037864685
``````

Its worth noting that the index based solution is O(n), while the logical slicing version is O(n^2) in the average case (I think).

I find it more useful to do this over evenly spaced windows from the min value of Basis to the max value of Basis, rather than at every value of basis. This means altering the function thus:

``````def rollBy(what,basis,window,func,*args,**kwargs):
#note that basis must be sorted in order for this to work properly
windows_min = basis.min()
windows_max = basis.max()
window_starts = np.arange(windows_min, windows_max, window)
window_starts = pd.Series(window_starts, index = window_starts)
indexed_what = pd.Series(what.values,index=basis.values)
def applyToWindow(val):
# using slice_indexer rather that what.loc [val:val+window] allows
# window limits that are not specifically in the index
indexer = indexed_what.index.slice_indexer(val,val+window,1)
chunk = indexed_what[indexer]
return func(chunk,*args,**kwargs)
rolled = window_starts.apply(applyToWindow)
return rolled
``````
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