Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

I have a dataframe with several columns of 'actions'. How can I find the last action matching a pattern and return its column index or label?

My data:

name    action_1    action_2    action_3
bill    referred    referred    
bob     introduced  referred    referred
mary    introduced      
june    introduced  referred    
dale    referred        
donna   introduced

What I want:

name    action_1    action_2    action_3    last_referred
bill    referred    referred                action_2
bob     introduced  referred    referred    action_3
mary    introduced                          NA
june    introduced  referred                action_2
dale    referred                            action_1
donna   introduced                          NA
share|improve this question

4 Answers 4

up vote 2 down vote accepted

Just use the apply function along the axis=1 and pass the pattern parameter as an additional argument to the function.

In [3]: def func(row, pattern):
            referrer = np.nan
            for key in row.index:
                if row[key] == pattern:
                    referrer = key
            return referrer
        df['last_referred'] = df.apply(func, pattern='referred', axis=1)
Out[3]:     name    action_1  action_2  action_3 last_referred
        0   bill    referred  referred      None      action_2
        1    bob  introduced  referred  referred      action_3
        2   mary  introduced                               NaN
        3   june  introduced  referred                action_2
        4   dale    referred                          action_1
        5  donna  introduced                               NaN
share|improve this answer
I think u can do this vectorized in several different ways –  Jeff Aug 30 '13 at 20:22
I appreciate the speed of @ecatmur answer, but I don't understand it. I'm not working with a huge dataset (should have noted this in my original question), so I appreciate the somewhat more straight-forward approach here. –  bjornarneson Aug 31 '13 at 13:46
If you evaluate the pieces of @ecatmur's answer you'll grok it fairly quickly, it's just written in a much too terse way. –  Phillip Cloud Sep 1 '13 at 0:03

Vectorized method, using arange to find the last index, max, and concatenation:

df['last_referred'] = np.r_[[np.NaN], df.columns][
        ((df == 'referred') * (np.arange(df.shape[1]) + 1)).max(axis=1).values]


We want to find the rightmost cell in each row that has the value 'referred':

>>> df == 'referred'
    name action_1 action_2 action_3
0  False     True     True    False
1  False    False     True     True
2  False    False    False    False
3  False    False     True    False
4  False     True    False    False
5  False    False    False    False

One option would be DataFrame.idxmax, but that gives the first (i.e. leftmost) occurrence. However, suppose we could replace the True values with their column index, we could just use normal max. Since True is 1 and False is 0, we can do this by multiplying with the integer range [0, 1, 2, ...] broadcast vertically:

>>> np.arange(df.shape[1])
array([0, 1, 2, 3])
>>> (df == 'referred') * np.arange(df.shape[1])
   name  action_1  action_2  action_3
0     0         1         2         0
1     0         0         2         3
2     0         0         0         0
3     0         0         2         0
4     0         1         0         0
5     0         0         0         0
>>> ((df == 'referred') * np.arange(df.shape[1])).max(axis=1)
0    2
1    3
2    0
3    2
4    1
5    0
dtype: int32

One problem, though: we can't tell the difference between 'referred' in the "name" column and not occurring at all. Easy fix; just start the integer range from 1:

>>> ((df == 'referred') * (np.arange(df.shape[1]) + 1)).max(axis=1)
0    3
1    4
2    0
3    3
4    2
5    0
dtype: int32

Now just use this array to index into the column names:

>>> df.columns[((df == 'referred') * (np.arange(df.shape[1]) + 1)).max(axis=1).values]
IndexError: index 4 is out of bounds for size 4

Oops! We need to make 0 come out as NaN and the rest of the columns to shift over. We can do this using np.r_, which concatenates arrays:

>>> np.r_[[np.NaN], df.columns]
array([nan, 'name', 'action_1', 'action_2', 'action_3'], dtype=object)
>>> np.r_[[np.NaN], df.columns][
        ((df == 'referred') * (np.arange(df.shape[1]) + 1)).max(axis=1).values]
array(['action_2', 'action_3', nan, 'action_2', 'action_1', nan], dtype=object)

And there you have it.

share|improve this answer
This is definitely the fastest option :) If you can understand it :D It would be great for the OP to add some explanations. –  Viktor Kerkez Aug 30 '13 at 20:41
+1 Nice. FYI In pandas 0.12 you'll have to access values inside the []. –  Phillip Cloud Aug 30 '13 at 20:44
I was actually thinking of using cumsum but this is nice! –  Jeff Aug 30 '13 at 21:50
Wow, this is fast! FYI in master I get IndexError: unsupported iterator index :( –  Andy Hayden Aug 31 '13 at 16:04
@AndyHayden yes, like @PhillipCloud says you need .values. I've fixed it above as it works for older versions as well. –  ecatmur Sep 1 '13 at 14:19

You can do this with pandas.melt and groupby:

In [123]: molten = pd.melt(df, id_vars='name', var_name='last_referred')

In [124]: molten
     name last_referred       value
0    bill      action_1    referred
1     bob      action_1  introduced
2    mary      action_1  introduced
3    june      action_1  introduced
4    dale      action_1    referred
5   donna      action_1  introduced
6    bill      action_2    referred
7     bob      action_2    referred
8    mary      action_2         NaN
9    june      action_2    referred
10   dale      action_2         NaN
11  donna      action_2         NaN
12   bill      action_3         NaN
13    bob      action_3    referred
14   mary      action_3         NaN
15   june      action_3         NaN
16   dale      action_3         NaN
17  donna      action_3         NaN

In [125]: gb = molten.groupby('name')

In [126]: col = gb.apply(lambda x: x[x.value == 'referred'].tail(1)).last_referred

In [127]: col.index = col.index.droplevel(1)

In [128]: col
bill    action_2
bob     action_3
dale    action_1
june    action_2
Name: last_referred, dtype: object

In [129]: newdf = df.join(col, on='name')

In [130]: newdf
    name    action_1  action_2  action_3 last_referred
0   bill    referred  referred       NaN      action_2
1    bob  introduced  referred  referred      action_3
2   mary  introduced       NaN       NaN           NaN
3   june  introduced  referred       NaN      action_2
4   dale    referred       NaN       NaN      action_1
5  donna  introduced       NaN       NaN           NaN
share|improve this answer
I knew you'll gonna melt my mind again :) –  Viktor Kerkez Aug 30 '13 at 20:19
Once I started to understand melt, I used it a lot more! It's a pretty big hammer :) –  Phillip Cloud Aug 30 '13 at 20:21
Like regexp ;) I agree, I just always give the simplest, predictable in speed solution to the OP, and live the exotic ones to you :) apply should always be O(N) if I'm not wrong. I don't even know how to calculate how melt with groupby behaves? O(?) –  Viktor Kerkez Aug 30 '13 at 20:30
:) My solution is probably too complicated for this case...I'm always in pandas mode! @ecatmur's solution will be the easiest to analyze as far as asymptotic performance goes. –  Phillip Cloud Aug 30 '13 at 20:43
I just timed it on a huge DataFrame: ecatmur: 222ms, yours: 1.33s, mine 5.97s. –  Viktor Kerkez Aug 30 '13 at 20:50

You can also use idxmax, which returns the first index of the maximum value, or the first index otherwise. This does require adding an additional 'NA' column, so it's a little messier.

revcols = df.columns.values.tolist()
tmpdf = df=='referred'
tmpdf['NA'] = False
lastrefer = tmpdf[['NA']+revcols].idxmax(axis=1)
share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.