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I have a pandas dataframe like this:

    Balance       Jan       Feb       Mar       Apr
0  9.724135  0.389376  0.464451  0.229964  0.691504
1  1.114782  0.838406  0.679096  0.185135  0.143883
2  7.613946  0.960876  0.220274  0.788265  0.606402
3  0.144517  0.800086  0.287874  0.223539  0.206002
4  1.332838  0.430812  0.939402  0.045262  0.388466

I would like to group the rows by figuring out if the values from Jan through to Apr are monotonically decreasing (as in rows indexed 1 and 3) or not, and then add up the balances for each group, i.e. in the end I would like to end up with two numbers (1.259299 for the decreasing time series, and 18.670919 for the others).

I think if I could add a column "is decreasing" containg booleans I could do the sums using pandas' groupby, but how would I create this column?

Thanks, Anne

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Were you thinking about a column of booleans for each month? You have the switch from decreasing to increasing happening at different rows. –  TomAugspurger Jul 17 '13 at 15:55
    
Ahh nevermind. You mean decreasing month to month. Across the columns. –  TomAugspurger Jul 17 '13 at 16:02

2 Answers 2

up vote 4 down vote accepted

You could use one of the is_monotonic functions from algos:

In [10]: months = ['Jan', 'Feb', 'Mar', 'Apr']

In [11]: df.loc[:, months].apply(lambda x: pd.algos.is_monotonic_float64(-x)[0],
                                       axis=1)
Out[11]:
0    False
1     True
2    False
3     True
4    False
dtype: bool

The is_monotonic checks whether an array it's decreasing hence the -x.values.

(This seems substantially faster than Tom's solution, even using the small DataFrame provided.)

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2  
And this is why my love of pandas is always increasing. –  TomAugspurger Jul 17 '13 at 16:43
    
@TomAugspurger I think the word you are looking for is "pandastic"... *ahem*. –  Andy Hayden Jul 17 '13 at 16:47
    
Thanks Andy, this works beautifully. I have a bit of a stupid question - I have been trying to find documentation on the is_monotonic function and I can't seem to find any online. Do you happen to have a link? –  Anne Jul 18 '13 at 15:02
    
Another question - can't I just write -x instead of -x.values in df.loc[:, months].apply(lambda x: pd.algos.is_monotonic_float64(-x.values)[0],axis=1)? I tried it and it seemed to work. –  Anne Jul 18 '13 at 15:07
    
@Anne apparently so! :) –  Andy Hayden Jul 18 '13 at 17:04
months = ['Jan', 'Feb', 'Mar', 'Apr']

Transpose so that we can use the diff method (which doesn't take an axis argument). We fill in the first row (January) with 0. Otherwise it's NaN.

In [77]: df[months].T.diff().fillna(0) <= 0
Out[77]: 
         0     1      2     3      4
Jan   True  True   True  True   True
Feb  False  True   True  True  False
Mar   True  True  False  True   True
Apr  False  True   True  True  False

To check if it's monotonically decreasing, use the .all() method. By default this goes over axis 0, the rows (months).

In [78]: is_decreasing = (df[months].T.diff().fillna(0) <= 0).all()

In [79]: is_decreasing
Out[79]: 
0    False
1     True
2    False
3     True
4    False
dtype: bool

In [80]: df['is_decreasing'] = is_decreasing

In [81]: df
Out[81]: 
    Balance       Jan       Feb       Mar       Apr is_decreasing
0  9.724135  0.389376  0.464451  0.229964  0.691504         False
1  1.114782  0.838406  0.679096  0.185135  0.143883          True
2  7.613946  0.960876  0.220274  0.788265  0.606402         False
3  0.144517  0.800086  0.287874  0.223539  0.206002          True
4  1.332838  0.430812  0.939402  0.045262  0.388466         False

And like you suggested, we can groupby is_decreasing and sum:

In [83]: df.groupby('is_decreasing')['Balance'].sum()
Out[83]: 
is_decreasing
False            18.670919
True              1.259299
Name: Balance, dtype: float64

It's times like these when I love pandas.

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Thanks Tom, it's great seeing different ways to do this! –  Anne Jul 19 '13 at 9:19

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