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In R when you need to retrieve a column index based on the name of the column you could do

idx <- which(names(my_data)==my_colum_name)

Is there a way to do the same with pandas dataframes?

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2 Answers 2

up vote 6 down vote accepted

Sure, you can use .get_loc():

In [45]: df = DataFrame({"pear": [1,2,3], "apple": [2,3,4], "orange": [3,4,5]})

In [46]: df.columns
Out[46]: Index([apple, orange, pear], dtype=object)

In [47]: df.columns.get_loc("pear")
Out[47]: 2

although to be honest I don't often need this myself. Usually access by name does what I want it to (df["pear"], df[["apple", "orange"]], or maybe df.columns.isin(["orange", "pear"])), although I can definitely see cases where you'd want the index number.

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DSM's solution works, but if you wanted a direct equivalent to which you could do (df.columns == name).nonzero()

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It makes sense. Thanks! –  ak3nat0n Oct 23 '12 at 19:30

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