14

I have something that looks like this. How do I go from this:

    0             d
0   The         DT
1   Skoll       ORGANIZATION
2   Foundation  ORGANIZATION
3   ,           ,
4   based       VBN
5   in          IN
6   Silicon     LOCATION
7   Valley      LOCATION

to this:

    0                       d
0   The                     DT
1   Skoll Foundation        ORGANIZATION
3   ,                       ,
4   based                   VBN
5   in                      IN
6   Silicon Valley          LOCATION

2 Answers 2

13

@rfan's answer of course works, as an alternative, here's an approach using pandas groupby.

The .groupby() groups the data by the 'b' column - the sort=False is necessary to keep the order intact. The .apply() applies a function to each group of b data, in this case joining the string together separated by spaces.

In [67]: df.groupby('b', sort=False)['a'].apply(' '.join)
Out[67]: 

b
DT                       The
Org         Skoll Foundation
,                          ,
VBN                    based
IN                        in
Location      Silicon Valley
Name: a, dtype: object

EDIT:

To handle the more general case (repeated non-consecutive values) - an approach would be to first add a sentinel column that tracks which group of consecutive data each row applies to, like this:

df['key'] = (df['b'] != df['b'].shift(1)).astype(int).cumsum()

Then add the key to the groupby and it should work even with repeated values. For example, with this dummy data with repeats:

df = DataFrame({'a': ['The', 'Skoll', 'Foundation', ',', 
                      'based', 'in', 'Silicon', 'Valley', 'A', 'Foundation'], 
                'b': ['DT', 'Org', 'Org', ',', 'VBN', 'IN', 
                      'Location', 'Location', 'Org', 'Org']})

Applying the groupby:

In [897]: df.groupby(['key', 'b'])['a'].apply(' '.join)
Out[897]: 
key  b       
1    DT                       The
2    Org         Skoll Foundation
3    ,                          ,
4    VBN                    based
5    IN                        in
6    Location      Silicon Valley
7    Org             A Foundation
Name: a, dtype: object
8
  • You do not need the lambda there.
    – ari
    Aug 5, 2014 at 20:18
  • I considered this, but wouldn't this also concatenate non-consecutive but repeated values in the second column? If the second column is unique besides consecutive repeats then it would be fine.
    – Roger Fan
    Aug 5, 2014 at 20:18
  • Thanks ari. @rfan - good point, this will join any repeated data so your answer handles that case correctly while this doesn't
    – chrisb
    Aug 5, 2014 at 20:23
  • @rfan you are right, if the data is repeated it would be a problem. But you should be able to use a second key column to further split up the groupby in many cases.
    – ari
    Aug 5, 2014 at 20:24
  • @ari Right. I think that, with the addition of creating another key column to track non-consecutive repeats, this method probably scales better than my solution to larger or more complex problems.
    – Roger Fan
    Aug 5, 2014 at 20:28
2

I actually think the groupby solution by @chrisb is better, but you would need to create another groupby key variable to track non-consecutive repeated values if those are potentially present. This works as a quick-and-dirty for smaller problems though.


I think this is a situation where it's easier to work with basic iterators, rather than try to use pandas functions. I can imagine a situation using groupby, but it seems difficult to maintain the consecutive condition if the second variable repeats.

This can probably be cleaned up, but a sample:

df = DataFrame({'a': ['The', 'Skoll', 'Foundation', ',', 
                      'based', 'in', 'Silicon', 'Valley'], 
                'b': ['DT', 'Org', 'Org', ',', 'VBN', 'IN', 
                      'Location', 'Location']})

# Initialize result lists with the first row of df
result1 = [df['a'][0]]  
result2 = [df['b'][0]]

# Use zip() to iterate over the two columns of df simultaneously,
# making sure to skip the first row which is already added
for a, b in zip(df['a'][1:], df['b'][1:]):
    if b == result2[-1]:        # If b matches the last value in result2,
        result1[-1] += " " + a  # add a to the last value of result1
    else:  # Otherwise add a new row with the values
        result1.append(a)
        result2.append(b)

# Create a new dataframe using these result lists
df = DataFrame({'a': result1, 'b': result2})
2
  • could you explain your process a bit? it seems to be working for me Aug 5, 2014 at 20:06
  • Something you could do to speed it up would be to boolean mask on those rows where you have duplicate values: df[df.d.isin((df.d.value_counts() > 1).index[df.d.value_counts() > 1])] this returns a dataframe containing just the duplicate rows
    – EdChum
    Aug 5, 2014 at 20:14

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