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I have a list of value


df = DataFrame({'key1' : ['a', 'a', 'b', 'b', 'a'],
   ....:                 'key2' : ['one', 'two', 'one', 'two', 'one'],
   ....:                 'data1' : abs(np.random.randn(5)*100),
   ....:                 'data2' : np.random.randn(5)})

So if Here's my data ,

I want to return only top 3 value of data1 and return all 4 columns

what would be the best way to do this other than a lot of if statement that I have in mind.

I was looking into nlargest , but not sure how could I do this


========================update =========================

so if run above would get this result enter image description here

I would like to get return df that only have rowindex of 1,2,3 because they have highest top 3 rank of data1 ( 98,94,95 )

share|improve this question
I understand that you want to write a function that returns only the top 3 values, but I'm not quite sure which top 3 values. Can you give an example where you fully specify (all numbers/strings, no calls to numpy) the input to this function and the output? –  Sam Mussmann Oct 13 '13 at 20:47

2 Answers 2

up vote 3 down vote accepted
In [271]: df
      data1     data2 key1 key2
0 -1.318436  0.829593    a  one
1  0.172596 -0.541057    a  two
2 -2.071856 -0.181943    b  one
3  0.183276 -1.889666    b  two
4  0.558144 -1.016027    a  one

In [272]: df.ix[df['data1'].argsort()[-3:]]
      data1     data2 key1 key2
1  0.172596 -0.541057    a  two
3  0.183276 -1.889666    b  two
4  0.558144 -1.016027    a  one

Although heapq.nlargest may be theoretically more efficient, in practice even for fairly large DataFrames, argsort tends to be quicker:

import heapq
import pandas as pd
df = pd.DataFrame({'key1' : ['a', 'a', 'b', 'b', 'a']*10000,
                 'key2' : ['one', 'two', 'one', 'two', 'one']*10000,
                 'data1' : np.random.randn(50000),
                 'data2' : np.random.randn(50000)})

In [274]: %timeit df.ix[df['data1'].argsort()[-3:]]
100 loops, best of 3: 5.62 ms per loop

In [275]: %timeit df.iloc[heapq.nlargest(3, df.index, key=lambda x: df['data1'].iloc[x])]
1 loops, best of 3: 1.03 s per loop
share|improve this answer
Yes !! thank you , it took me two hours to get figure this out. –  JPC Oct 13 '13 at 20:56
I'm not 100% those are fair comparisons, though – isn't iloc doing a linear search? (I know very little about pandas.) –  kojiro Oct 13 '13 at 21:27
@kojiro: iloc is doing integer indexing of an array, so it should be O(1), not O(n). –  unutbu Oct 13 '13 at 21:37

Sort in descending order by the value of the data1 column:

df.sort(['data1'], ascending=False)[:3]
share|improve this answer
A sort would be O(n lg(n)) in the average case. heapq.nsmallest would be a more efficient way to get the n smallest values. (There's a heapq.nlargest, too, of course.) –  kojiro Oct 13 '13 at 21:06
@kojiro: I did'nt know about it. Thanks a lot! :) –  user278064 Oct 13 '13 at 21:09

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