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I have some data in a DataFrame with an identifier column.

data = DataFrame({'id' : [50,50,30,10,50,50,30]})

For each unique id, I want to come up with a new unique identifier. I'd like the ids to be sequential integers starting at 0. Here's what I have so far:

unique = data[['id']].drop_duplicates()   
unique['group'] = np.arange(len(unique))
data = data.merge(unique, 'inner', on = 'id')

This works but seems a little dirty. Is there a better way?

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1 Answer 1

up vote 6 down vote accepted

That is what pandas.factorize does:

data = pd.DataFrame({'id' : [50,50,30,10,50,50,30]})
print pd.factorize(data.id)[0]

The output:

[0 0 1 2 0 0 1]

numpy.unique can also do this:

import numpy as np
print np.unique([50,50,30,10,50,50,30], return_inverse=True)[1]

the output:

array([2, 2, 1, 0, 2, 2, 1])

the index outputed by numpy.unique is sorted by value, so the smallest value 10 is assigend to index 0. If you want this result by using factorize, set sort argument to True:

pandas.factorize(data.id, sort=True)[0]
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Is there a straightforward way to give the original data frame those new ids? –  John Salvatier Mar 13 '13 at 4:08
Yes. To reproduce your example, John, just do data['group'] = pd.factorize(data.id)[0]. Alternatively, you could replace the old ids by assigning to data[id] = ... instead. (Did I understand your question?) –  Dan Allan Mar 14 '13 at 13:18

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