import numpy as np
import pandas as pd

ind = [0, 1, 2]
cols = ['A','B','C']
df = pd.DataFrame(np.arange(9).reshape((3,3)),columns=cols)

Say you have a pandas dataframe df looking like:

    A  B  C
 0  0  1  2
 1  3  4  5
 2  6  7  8    

If you want to capture a single element from each column in cols at a specific index ind the output should look like a series:

 A  0
 B  4
 C  8

What I've tried so far was:

 df.loc[ind,cols]

which gives the undesired output:

   A  B  C
0  0  1  2
1  3  4  5
2  6  7  8

Any suggestions?

context: The next step would be mapping the output of an df.idxmax() call of one dataframe onto another dataframe with the same column names and indexes, but I can likely figure that out if I know how to do the above mentioned transformation .

  • Can you clarify in this question. Are the values that you need to return always in the same order as the indices and columns? (i.e. you always want the diagonal values) or will order of the values in this df.loc[ind,cols] change? – johnchase Oct 18 '17 at 18:22
  • What did you pass in for ind and cols that gave you that result? Obviously passingind and cols just passes all the indexes and columns as you defined above, so why would you expect a singular value? – A.Kot Oct 18 '17 at 19:11
up vote 8 down vote accepted

you can use DataFrame.lookup():

In [6]: pd.Series(df.lookup(df.index, df.columns), index=df.columns)
Out[6]:
A    0
B    4
C    8
dtype: int32

or:

In [14]: pd.Series(df.lookup(ind, cols), index=df.columns)
Out[14]:
A    0
B    4
C    8
dtype: int32

Explanation:

In [12]: df.lookup(df.index, df.columns)
Out[12]: array([0, 4, 8])
  • Er, wouldn't it just be df.lookup(ind, cols)? – juanpa.arrivillaga Oct 18 '17 at 18:08
  • @juanpa.arrivillaga, unfortunately not - there will be no index values... – MaxU Oct 18 '17 at 18:09
  • This is definitely preferable over list comprehension – johnchase Oct 18 '17 at 18:11
  • Well, I mean you'd still have to wrap it in pd.Series,but i mean instead of using df.index and df.columns, since I think the OP wants those to be arbitrary, i.e. ind = [0, 1, 1] – juanpa.arrivillaga Oct 18 '17 at 18:13
  • 1
    @juanpa.arrivillaga, ah, i've misunderstood you. Sure we can use: df.lookup(ind, cols) as you said – MaxU Oct 18 '17 at 18:14

Here's a vectorized one with NumPy's advanced-indexing to select one element per column, given the row indices ind per col -

pd.Series(df.values[ind, np.arange(len(ind))], df.columns)

Sample run -

In [107]: ind = [0, 2, 1] # different one than sample for variety
     ...: cols = ['A','B','C']
     ...: df = pd.DataFrame(np.arange(9).reshape((3,3)),columns=cols)
     ...: 

In [109]: df
Out[109]: 
   A  B  C
0  0  1  2
1  3  4  5
2  6  7  8

In [110]: pd.Series(df.values[ind, np.arange(len(ind))], df.columns)
Out[110]: 
A    0
B    7
C    5
dtype: int64

Runtime test

Let's compare the propose one against the pandas built-in vectorized lookup method proposed in @MaxU's solution and since we are seeing how good the vectorized ones are, let's have greater number of cols -

In [111]: ncols = 10000
     ...: df = pd.DataFrame(np.random.randint(0,9,(100,ncols)))
     ...: ind = np.random.randint(0,100,(ncols)).tolist()
     ...: 

# @MaxU's solution
In [112]: %timeit pd.Series(df.lookup(ind, df.columns), index=df.columns)
1000 loops, best of 3: 718 µs per loop

# Proposed in this post    
In [113]: %timeit pd.Series(df.values[ind, np.arange(len(ind))], df.columns)
1000 loops, best of 3: 410 µs per loop

In [114]: ncols = 100000
     ...: df = pd.DataFrame(np.random.randint(0,9,(100,ncols)))
     ...: ind = np.random.randint(0,100,(ncols)).tolist()
     ...: 

# @MaxU's solution
In [115]: %timeit pd.Series(df.lookup(ind, df.columns), index=df.columns)
100 loops, best of 3: 8.83 ms per loop

# Proposed in this post
In [116]: %timeit pd.Series(df.values[ind, np.arange(len(ind))], df.columns)
100 loops, best of 3: 5.76 ms per loop

There is another way using mutiIndex, if you like using .loc

df1=df.reset_index().melt('index').set_index(['index','variable'])
df1.loc[list(zip(df.index,df.columns))]
Out[118]: 
                value
index variable       
0     A             0
1     B             4
2     C             8

There should be a more direct way but this is what I could think of,

val = [df.iloc[i,i] for i in df.index]
pd.Series(val, index = df.columns)

A    0
B    4
C    8
dtype: int64

You could zip the column and index values you would like to retrieve the values for and then create a series from that:

pd.Series([df.loc[id_, col] for id_, col in zip(ind, cols)], df.columns)
A    0
B    4
C    8

Or if you always just need the diagonal value:

pd.Series(np.diag(df), df.columns)

Will be much faster

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