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?