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I am trying to convert my index in a Pandas dataframe to datetime objects so that I can select ranges of times.

Assuming that my_df is the dataframe that I am working with, I have the following:

# Conversion function:
def convert_times(x): return datetime.strptime(x, '%H:%M:%S.%f')

# Convert every index value in my dataframe
my_df.index = map(convert_times, my_df.index)

but I noticed that

map(convert_times, my_df.index) 

returns a list, so the code above converts an index to a list, which is converted back to an index.

Is there a way to operate directly on an index object?

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1  
Do you really not have year/months/days? Surely these datetimes are going to just be junk (be in 1900)? –  Andy Hayden Jun 12 '13 at 1:09
    
Thanks @Andy, I am afraid I don't, but yes, you are right, I get 1900 - 1- 1. –  Amelio Vazquez-Reina Jun 12 '13 at 1:18
    
What were you hoping for (what do they mean)...? –  Andy Hayden Jun 12 '13 at 1:35

1 Answer 1

up vote 2 down vote accepted

I would use to_datetime directly:

datetime_format = '%H:%M:%S.%f' # tweak depending on format of dates

df.index = pd.to_datetime(df.index, format=format_datetime)

This will be considerably faster than using map (especially python's builtin map).

Note: to_datetime doesn't require the format argument.

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