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I'm trying to find the max since condition was true in a pandas dataframe. I've searched for similar questions and read the documentation but haven't been able to find this problem discussed. To illustrate, I want a function that will return the maxsince column below.

In [84]: df
Out[84]: 
                     a      b  maxsince
2007-04-27 11:00:00  1   True         1
2007-04-27 11:30:00  5  False         5
2007-04-27 12:00:00  3  False         5
2007-04-27 12:30:00  2   True         2
2007-04-27 13:00:00  2  False         2
2007-04-27 13:30:00  7   True         7
2007-04-27 14:00:00  3  False         7
2007-04-27 14:30:00  4  False         7

I'm having trouble calculating this without resorting to looping. What would be the most efficient way? Thanks.

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Is df.groupby('b').max() what your looking for? –  Pedro9 Oct 31 '13 at 19:42
    
No, I'm looking for something like a cummax() that resets on each True in 'b'. –  user2205 Oct 31 '13 at 19:45

1 Answer 1

up vote 8 down vote accepted

How about:

>>> df.groupby(df["b"].cumsum())["a"].cummax()
2007-04-27  11:00:00    1
            11:30:00    5
            12:00:00    5
            12:30:00    2
            13:00:00    2
            13:30:00    7
            14:00:00    7
            14:30:00    7
dtype: int64

This works because

>>> df["b"].cumsum()
2007-04-27  11:00:00    1
            11:30:00    1
            12:00:00    1
            12:30:00    2
            13:00:00    2
            13:30:00    3
            14:00:00    3
            14:30:00    3
Name: b, dtype: int32

gives us a new value whenever we see a True. You might have to patch it a bit depending on what you want to happen when the first value is False, but I'll leave that as an exercise for the reader. ;^)

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Nice one. Cookbook worthy? –  TomAugspurger Oct 31 '13 at 19:48
    
+1 I thought about doing this with pd.rolling_apply and then group, but this one is obviously better –  Roman Pekar Oct 31 '13 at 19:53
    
What version of pandas are you using? Version 0.12.0 gives me ValueError: cannot convert float NaN to integer when I try df["b"].cumsum(). –  user2205 Oct 31 '13 at 20:00
    
Ah. I'm using '0.12.0-559-ga11e143'. You could simply do df["b"].astype(int).cumsum() or (df["b"]*1).cumsum() to get around that. (I don't have 0.12 easily available, unfort., so it's possible you might have to make it a float too-- hard to guess.) –  DSM Oct 31 '13 at 20:05
    
Ok, that got it working. Thanks for the answer. Wish I would've thought of that. –  user2205 Oct 31 '13 at 20:11

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