Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I would like to completely remove a level from a MultiIndex

import pandas as pd
tuples = [(0, 100, 1000),(0, 100, 1001),(0, 100, 1002), (1, 101, 1001)]
index_3levels=pd.MultiIndex.from_tuples(tuples,names=["l1","l2","l3"])
print index_3levels.levels
[Int64Index([0, 1], dtype=int64), Int64Index([100, 101], dtype=int64), Int64Index([1000, 1001, 1002], dtype=int64)]

I would like to extract the first 2 levels, to achieve:

print index_2levels
MultiIndex
[(0, 100), (1, 101)]

droplevel drops the level but keeps the duplicates:

print index_3levels.droplevel("l3")
MultiIndex
[(0, 100), (0, 100), (0, 100), (1, 101)]

I could in principle call unique to remove them. However it does not look the right approach. Is there a more direct method?

share|improve this question

1 Answer 1

up vote 4 down vote accepted

This could be an enhancement to droplevel, maybe by passing uniquify=True

In [77]: MultiIndex.from_tuples(index_3levels.droplevel('l3').unique())
Out[77]: 
MultiIndex
[(0, 100), (1, 101)]

Here's another way to do this

First create some data

In [226]: def f(i):
            return [(i,100,1000),(i,100,1001),(i,100,1002),(i+1,101,1001)]

In [227]: l = []

In [228]: for i in range(1000000):
             l.extend(f(i))

In [229]: index_3levels=pd.MultiIndex.from_tuples(l,names=["l1","l2","l3"])

In [230]: len(index_3levels)
Out[230]: 4000000

The method shown above

In [238]: %timeit MultiIndex.from_tuples(index_3levels.droplevel(level='l3').unique())
1 loops, best of 3: 2.26 s per loop

Let's split the index apart to 2 components, l1, and l2 and uniquify, much faster to unique these as these are Int64Index

In [249]: l2 = index_3levels.droplevel(level='l3').droplevel(level='l1').unique()

In [250]: %timeit index_3levels.droplevel(level='l3').droplevel(level='l1').unique()
10 loops, best of 3: 35.3 ms per loop

In [251]: l1 = index_3levels.droplevel(level='l3').droplevel(level='l2').unique()

In [252]: %timeit index_3levels.droplevel(level='l3').droplevel(level='l2').unique()
10 loops, best of 3: 52.2 ms per loop

In [253]: len(l1)
Out[253]: 1000001

In [254]: len(l2)
Out[254]: 2

Reassemble

In [255]: %timeit MultiIndex.from_arrays([ np.repeat(l1,len(l2)), np.repeat(l2,len(l1)) ])
10 loops, best of 3: 183 ms per loop

Total time about 270ms, pretty good speedup. Note that I think the ordering may be different, but I think some combination of np.repeate/np.tile will work

share|improve this answer
    
Another idea could be an enhancement to unique to return object of same class. –  Andy Hayden Jul 4 '13 at 19:57
    
Thanks, however I wonder if there is a better solution, that does not require running unique which is pretty expensive. Afterall I just want to somehow extract 2 levels of the 3 in the MultiIndex, not create a new object. –  Andrea Zonca Jul 4 '13 at 21:10
    
unique is actually pretty fast here; what is your final goal? –  Jeff Jul 4 '13 at 21:22
    
On a large dataset of few million samples, unique is very slow. This solution gets exactly what I want, but I am looking for a more efficient method. –  Andrea Zonca Jul 4 '13 at 22:14

Your Answer

 
discard

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.