I want to use pandas in python to loop through multiple DataFrames and keep only headings from a specified keep_col list. The code results in an error if a DataFrame does not contain a specified heading (KeyError: "['str2'] not in index").

The following pandas code creates 2 example DataFrames with differing column heading names:

import pandas as pd
import numpy as np

df1 = pd.DataFrame(np.random.randn(2,5), columns=('A','B','str1','str2','str3'))
df2 = pd.DataFrame(np.random.randn(2,3), columns=('A','B','str1'))
print df1
print df2

output DataFrames

 A         B         str1      str2      str3
-0.152686  0.189076 -1.079168 -0.823674  1.489668
-1.272144  0.694862  0.036248  0.319550  0.782666

 A         B         str1
 0.310152  1.302962 -0.284632
 1.046044  0.090650  0.861716

The code below results in an error because 'str2' is not in 'df2'.

How can this be modified to ignore a 'keep_col' list string if it is not in a DataFrame heading?

#delete columns
keep_col = ['A','str2'] #need code here to ignore 'str2' when generating 'df2'
new_df1 = df1[keep_col] 
new_df2 = df2[keep_col]

print new_df1
print new_df2

This is the desired output:

 A          str2    
-0.152686  -0.823674
-1.272144   0.319550


This example is for simplicity. I will be looping through 100+ .csv files to keep only specified columns.

| |

you can use filter() function in conjunction with RegEx:

In [79]: mask = r'^(?:A|str2)$'

In [80]: df1.filter(regex=mask)
          A      str2
0 -1.190226 -0.123637
1 -1.782685  0.219820

In [81]: df2.filter(regex=mask)
0  0.207736
1 -0.013273
| |
  • Thanks for the rapid response! Although this solved my posted example, I need the regex to match exactly rather than 'if contains' string. I tried r'(?:)\b(A|str2)\b' but this did not work for my actual application as i have multiple headings that are very similar but differ by only a character or punctuation. – Jordan Christian Jun 16 '16 at 20:21
  • @JordanChristian, i've updated my answer - please check – MaxU Jun 16 '16 at 20:24

You can use a list comprehension to generate a list of all column headers that are in keep_col.

new_df1 = df1[[c for c in df1.columns if c in keep_col]]
new_df2 = df1[[c for c in df2.columns if c in keep_col]]

print new_df1
          A      str2
0  1.480978  0.369485
1 -0.969107  0.767707

print new_df2
0  1.480978
1 -0.969107
| |

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.