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I have a pandas DataFrame like following.

df = pandas.DataFrame(np.random.randn(5,5),columns=['1','2','3','4','5'])

         1         2         3         4         5
0  0.877455 -1.215212 -0.453038 -1.825135  0.440646
1  1.640132 -0.031353  1.159319 -0.615796  0.763137
2  0.132355 -0.762932 -0.909496 -1.012265 -0.695623
3 -0.257547 -0.844019  0.143689 -2.079521  0.796985
4  2.536062 -0.730392  1.830385  0.694539 -0.654924

I need to get row and column indexes for following three groups. (In my original dataset there are no negative values)

  1. value is greater than 2.0
  2. value is between 1.0 - 2.0
  3. value is less than 1.0

For e.g for "value is greater than 2.0" it should return [1,4]. I have tried using this which gives a boolean result.

df.values > 2
share|improve this question
    
That returns a numpy array, you could just use the mask to perform the dataframe selection like df[df > 2] this returns a dataframe with NaN for values that do not satisfy the boolean criteria and the values that do as a dataframe. Up to you what you then do with NaN values, either set to 0 or drop them using dropna –  EdChum Mar 3 '14 at 10:09
    
@EdChum : Ok, so how to get row and column index pairs? –  Nilani Algiriyage Mar 3 '14 at 10:12

1 Answer 1

up vote 2 down vote accepted

You can use np.where on the boolean result to extract the indices:

import numpy as np
import pandas as pd

df = pd.DataFrame(np.random.randn(5,5),columns=['1','2','3','4','5'])
condition = df.values > 2
print np.column_stack(np.where(condition))

For a df like this,

          1         2         3         4         5
0  0.057347  0.722251  0.263292 -0.168865 -0.111831
1 -0.765375  1.040659  0.272883 -0.834273 -0.126997
2 -0.023589  0.046002  1.206445  0.381532 -1.219399
3  2.290187  2.362249 -0.748805 -1.217048 -0.973749
4  0.100084  0.671120 -0.211070  0.903264 -0.312815

Output:

[[3 0]
 [3 1]]

Or get a list of row-column index pairs if necessary:

print map(list, np.column_stack(np.where(condition)))

Output:

[[3,0], [3,1]]
share|improve this answer
    
Thanks very much! It worked! :) –  Nilani Algiriyage Mar 3 '14 at 10:45

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