I am trying to join two pandas data frames using two columns:

new_df = pd.merge(A_df, B_df,  how='left', left_on='[A_c1,c2]', right_on = '[B_c1,c2]')

but got the following error:

pandas/index.pyx in pandas.index.IndexEngine.get_loc (pandas/index.c:4164)()

pandas/index.pyx in pandas.index.IndexEngine.get_loc (pandas/index.c:4028)()

pandas/src/hashtable_class_helper.pxi in pandas.hashtable.PyObjectHashTable.get_item (pandas/hashtable.c:13166)()

pandas/src/hashtable_class_helper.pxi in pandas.hashtable.PyObjectHashTable.get_item (pandas/hashtable.c:13120)()

KeyError: '[B_1, c2]'

Any idea what should be the right way to do this? Thanks!

  • 83
    left_on and right_on should be a list of strings, not a string that looks like a list.
    – root
    Jan 23, 2017 at 20:34
  • Simple typo: left_on=['A_c1','c2'] instead of '[A_c1,c2]'. It needs a list of string, as @root said. Similarly right_on = ['B_c1','c2'].
    – smci
    Aug 24, 2021 at 6:14
  • By the way it's a bad practice to have the columns of dataframe A_df be named starting with a prefix 'A_', and the columns from B_df named B_.... It's totally unnecessary, and it makes basic operations like joins, merges, groupbys etc. annoying.
    – smci
    Aug 24, 2021 at 6:16

4 Answers 4


Try this

new_df = pd.merge(A_df, B_df,  how='left', left_on=['A_c1','c2'], right_on = ['B_c1','c2'])


left_on : label or list, or array-like Field names to join on in left DataFrame. Can be a vector or list of vectors of the length of the DataFrame to use a particular vector as the join key instead of columns

right_on : label or list, or array-like Field names to join on in right DataFrame or vector/list of vectors per left_on docs

  • 43
    If left_on and right_on are same a and b, can we use on = ['a', 'b']?
    – ah bon
    Dec 13, 2019 at 7:11
  • 17
    Yes that is perfectly valid. Dec 15, 2019 at 4:02
  • 8
    For those wondering like me, it will merge according to the sequence/ordering of left_on and right_on, i.e., the i-th element of left_on will match with the i-th of right_on. It would be nice if the docs state that more explicitly. Dec 2, 2020 at 0:58
  • 2
    Note that whenever the join keys have different names, all names will occur as columns in the merged table. E.g., left_on='[A_c1, c2]', right_on='[B_c1, c2]') will result in three columns: A_c1, B_c1 and c2, where A_c1 and B_c1 are identical columns.
    – DustByte
    Jul 7, 2021 at 15:11

the problem here is that by using the apostrophes you are setting the value being passed to be a string, when in fact, as @Shijo stated from the documentation, the function is expecting a label or list, but not a string! If the list contains each of the name of the columns beings passed for both the left and right dataframe, then each column-name must individually be within apostrophes. With what has been stated, we can understand why this is inccorect:

new_df = pd.merge(A_df, B_df,  how='left', left_on='[A_c1,c2]', right_on = '[B_c1,c2]')

And this is the correct way of using the function:

new_df = pd.merge(A_df, B_df,  how='left', left_on=['A_c1','c2'], right_on = ['B_c1','c2'])

Another way of doing this:

new_df = A_df.merge(B_df, left_on=['A_c1','c2'], right_on = ['B_c1','c2'], how='left')

you can use below which is short and simple to understand:

merged_data= df1.merge(df2, on=["column1","column2"])

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