1

Let's say I have a dataframe that looks like this:

idx  city           pop
A1   New York City  600
A2   Los Angeles    500
B1   Chicago        300
B2   Miami          200

and another dataframe that looks like this

idx  city           pop
A1   (-1.05, 3.45)  6.5
A2   (-1.15, 3.55)  6.3
B1   (-1.25, 3.65)  5.7
B2   (-1.35, 3.75)  4.8

I would like to perform a merge operation to achieve the following:

idx  city_x         city_y         pop_x  pop_y
A1   New York City  (-1.05, 3.45)  600    6.5
A2   Los Angeles    (-1.15, 3.55)  500    6.3
B1   Chicago        (-1.25, 3.65)  300    5.7
B2   Miami          (-1.35, 3.75)  200    4.8

Note that it is important for me to preserve this data column structure... I would like for it to merge as it belongs in the x, y, x, y, x, y format

The merge I am currently performing (to other data - not this dummy data):

result = pd.merge(df1, df2, left_on='idx', right_on='idx', how='left', suffixes=('_x', '_y'))

but this is resulting in a dataframe that has _x on one side, and y_ on another making it difficult for me to test against + make sure accuracy.

Am I performing merge properly?

  • If the ordering of the prefixes isn't important, you can probably get away with:.sort_index(axis=1), perhaps set idx as the index beforehand if you want it to be the leftmost. – ALollz Mar 11 at 19:38
3

This only needs some simple sorting logic:

v = df1.merge(df2, on='idx')
result = v[sorted(v.columns, key=lambda x: df1.columns.get_loc(x.split('_')[0]))]
result

  idx         city_x         city_y  pop_x  pop_y
0  A1  New York City  (-1.05, 3.45)    600    6.5
1  A2    Los Angeles  (-1.15, 3.55)    500    6.3
2  B1        Chicago  (-1.25, 3.65)    300    5.7
3  B2          Miami  (-1.35, 3.75)    200    4.8

This reorders the result columns based on the position of the column name less suffix in the original DataFrames.


If the column names are different, use

def sorter(x):
    df = df1 if x in df1.columns else df2
    return df.columns.get_loc(x.split('_')[0])

v = df1.merge(df2, ...)
result = v[sorted(v.columns, key=sorter)
  • Hi @coldspeed, any chance you can help me with edits above? – sgerbhctim Mar 12 at 17:21
  • @sgerbhctim Please include the full error message. I would also like to know the list of columns of both dataframes. Additionally, please follow suit as my answer shows and use left.merge(right, ...) and not pd.merge(left, right, ...) because there's a difference. – cs95 Mar 12 at 19:13
  • Edits above. Thanks a bunch! – sgerbhctim Mar 12 at 20:31
  • @sgerbhctim Thanks, have edited. Please let me know if you're having any more trouble. – cs95 Mar 12 at 20:36

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