I have a pandas frame similar to this one:

import pandas as pd
import numpy as np

data = {'Col1' : [4,5,6,7], 'Col2' : [10,20,30,40], 'Col3' : [100,50,-30,-50], 'Col4' : ['AAA', 'BBB', 'AAA', 'CCC']}

df = pd.DataFrame(data=data, index = ['R1','R2','R3','R4'])

    Col1  Col2  Col3 Col4
R1     4    10   100  AAA
R2     5    20    50  BBB
R3     6    30   -30  AAA
R4     7    40   -50  CCC

Given an array of targets:

target_array = np.array(['AAA', 'CCC', 'EEE'])

I would like to find the cell elements indices in Col4 which also appear in the target_array.

I have tried to find a documented answer but it seems beyond my skill... Anyone has any advice?

P.S. Incidentally, for this particular case I can input a target array whose elements are the data frame indices names array(['R1', 'R3', 'R5']). Would it be easier that way?

Edit 1:

Thank you very much for all the great replies. Sadly I can only choose one but everyone seems to point @Divakar as the best. Still you should look at piRSquared and MaxU speed comparisons for all the possibilities available

| |

You can use NumPy's in1d -



1) Create a 1D mask corresponding to each row telling us whether there is a match between col4's element and any element in target_array :

mask = np.in1d(df['Col4'],target_array)

2) Use the mask to select valid indices from the dataframe as final output :

out = df.index[np.in1d(df['Col4'],target_array)]
| |
  • @piRSquared Well I was hoping so, being a NumPy thing! ;) – Divakar Jun 28 '16 at 18:24
  • @piRSquared That's what I have figured generally between NumPy and pandas, when talking about built-ins that do similar operations. But with groupby operations, I have seen pandas having an upper hand. – Divakar Jun 28 '16 at 18:29
  • Thank you very much for the solution and the explanation: It is nice to understand each step :) – Delosari Jun 28 '16 at 19:54

This should do it:



I ran three options: from selected answers. Mine, Bruce Pucci, and Divakar

enter image description here

Divakars was faster by a large amount. I'd pick his.

| |
  • Thank you very much for the comparison, it is very neat. Just one question: Do you think the data type (str) is affecting the speed differently on each method? – Delosari Jun 28 '16 at 19:53
  • It changes things marginally. But the order stays the same. – piRSquared Jun 28 '16 at 19:56
  • That is good to know. Thank you very much for the reply again – Delosari Jun 28 '16 at 20:02

For the sake of completeness I've added two (.query() variants) - my timings against 400K rows df:

In [63]: df.shape
Out[63]: (400000, 4)

In [64]:  %timeit df.index[np.in1d(df['Col4'],target_array)]
10 loops, best of 3: 35.1 ms per loop

In [65]: %timeit df.index[df.Col4.isin(target_array)]
10 loops, best of 3: 36.7 ms per loop

In [66]: %timeit df.loc[df.Col4.isin(target_array)].index
10 loops, best of 3: 47.8 ms per loop

In [67]: %timeit df.query('@target_array.tolist() == Col4')
10 loops, best of 3: 45.7 ms per loop

In [68]: %timeit df.query('@target_array in Col4')
10 loops, best of 3: 51.9 ms per loop

Here is a similar comparison for (not in ...) and for different dtypes

| |
  • 1
    Thank you very much for the query options, it is a very nice discovery – Delosari Jun 28 '16 at 19:49
import pandas as pd
import numpy as np

data = {'Col1' : [4,5,6,7], 'Col2' : [10,20,30,40], 'Col3' : [100,50,-30,-50], 'Col4' : ['AAA', 'BBB', 'AAA', 'CCC']}
target_array = np.array(['AAA', 'CCC', 'EEE'])

df = pd.DataFrame(data=data, index = ['R1','R2','R3','R4'])

df['in_col'] = df['Col4'].apply(lambda x: x in target_array)

Is this what you were looking for? Then you can groupby the new column and query the True elements.

| |
  • Thank you very much for reminding my of the lambda: I am rather new to python and this is a very powerful/flexible tool – Delosari Jun 28 '16 at 19:50
| |
  • Thank you for the reply... it is a very neat approach since it uses only pandas functions – Delosari Jun 29 '16 at 15:18

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.