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What's the most efficient way to drop only consecutive duplicates in pandas?

drop_duplicates gives this:

In [3]: a = pandas.Series([1,2,2,3,2], index=[1,2,3,4,5])

In [4]: a.drop_duplicates()
Out[4]: 
1    1
2    2
4    3
dtype: int64

But I want this:

In [4]: a.something()
Out[4]: 
1    1
2    2
4    3
5    2
dtype: int64
share|improve this question

1 Answer 1

up vote 11 down vote accepted

Use shift:

a.loc[a.shift(-1) != a]

Out[3]:

1    1
3    2
4    3
5    2
dtype: int64

So the above uses boolean critieria, we compare the dataframe against the dataframe shifted by -1 rows to create the mask

Another method is to use diff:

In [82]:

a.loc[a.diff() != 0]
Out[82]:
1    1
2    2
4    3
5    2
dtype: int64

But this is slower than the original method if you have a large number of rows.

Update

Thanks to Bjarke Ebert for pointing out a subtle error, I should actually use shift(1) or just shift() as the default is a period of 1, this returns the first consecutive value:

In [87]:

a.loc[a.shift() != a]
Out[87]:
1    1
2    2
4    3
5    2
dtype: int64

Note the difference in index values, thanks @BjarkeEbert!

share|improve this answer
    
I had the same problem and google'd to find this question. And wow, what a nice and simple solution! :-D –  Bjarke Ebert Jun 19 '14 at 15:09
    
but hm, you may want to say a.loc[a.shift(1) != a], in order to get the first of the consecutive values, as specified in the question :-) –  Bjarke Ebert Jun 19 '14 at 15:12
    
@BjarkeEbert no worries, glad to help, I noted your comment and you are correct, the resulting row values was what the OP wanted but the index values were the wrong rows as you correctly potined out, interestingly using diff was slower for a 50k series, probably due to the value comparison –  EdChum Jun 19 '14 at 15:20
    
Also, df.col != df.col.shift() is much more general. Using diff only works for integers whereas shift works for floats, strings, etc. –  exp1orer Jan 6 at 22:40
    
@exp1orer yes that is true, thanks for pointing that out –  EdChum Jan 6 at 22:41

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