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I have a data frame and I want to create a new column whose values are defined by values located in other columns (in the same row). It is very simple if I use simple operations (+, -, * and even abs). For example:

df['new_col'] = abs(df['col1']*df['col2'] - df['col3'])

Then I defined my own function in Python and tried to do the following:

df['new_col'] = my_func(df['col1'], df['col2'], df['col3'], df['col4']).

Unfortunately it did not work. I think the reason why it did no work is because my_func contains asin, atan and other functions that cannot be applied to series. For example if I try abs(df['col1']) I get no complains but if I try asin(df['col1']) I got error message:

TypeError: only length-1 arrays can be converted to Python scalars

Is there a trick that will let me use asin (or my own function my_func) in the same way as abs or + are used?

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1 Answer 1

up vote 2 down vote accepted

Use numpy's universal functions.

For your case, use numpy.arcsin instead of math.asin.

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Thank you. It looks like a good way to go. In my particular case I take values from different columns, compare them and use trigonometric functions. I read about universal functions on the site that you linked. There I can find universal functions for comparison as well as trigonometric functions. However, I do not see an universal if-function. Does such thing exist. –  Roman May 17 '13 at 9:55
    
Perhaps you are looking for some_series.where(condition, other_series). –  Dan Allan Jun 17 '13 at 17:11

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