7

I have the following toy code:

 import pandas as pd
 df = pd.DataFrame()
 df["foo"] = [1,2,3,4]

 df2 = pd.DataFrame()
 df2["bar"]=[4,5,6,7]  

 df = pd.concat([df,df2], ignore_index=True,axis=1)
 print(list(df))

Output: [0,1]
Expected Output: [foo,bar] (order is not important)
Is there any way to concatenate two dataframes without losing the original column headers, if I can guarantee that the headers will be unique?
Iterating through the columns and then adding them to one of the DataFrames comes to mind, but is there a pandas function, or concat parameter that I am unaware of?

Thanks!

  • 1
    Passing ignore_index=True will drop all name references. do you need to pass ignore_index? – umutto Apr 14 '17 at 3:51
  • As @umutto said... leave ignore_index=True or don't pass it at all. – piRSquared Apr 14 '17 at 3:55
  • 1
    Alright that seems to work! If you would be kind enough to post that as an answer, I would be glad to accept it! – Priyank Apr 14 '17 at 4:01
11

As stated in merge, join, and concat documentation, ignore index will remove all name references and use a range (0...n-1) instead. So it should give you the result you want once you remove ignore_index argument or set it to false (default).

df = pd.concat([df, df2], axis=1)

This will join your df and df2 based on indexes (same indexed rows will be concatenated, if other dataframe has no member of that index it will be concatenated as nan).

If you have different indexing on your dataframes, and want to concatenate it this way. You can either create a temporary index and join on that, or set the new dataframe's columns after using concat(..., ignore_index=True).

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