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I'm having some problems when running a certain piece of code soon after update at version 0.9.1 of Pandas (under Python 2.7) from previous version. Basically, the code I run is the following:

myfunc = lambda x: makeDfCurve(frame,x)
dates = Series(frame.index, index = frame.index) # new Time series filled temporarily 
# with dates taken from a certain dataframe 'frame' index
# and here's where the code crash:
frame['curve'] = dates.apply(myfunc) 

I get the following kind of error:

TypeError: ufunc 'subtract' not supported for the input types, and the inputs could not be safely coerced to any supported types according to the casting rule 'safe'

I tried to apply 'manually' the function recursively to see if some of the dates passed as the x parameter in the lambda definition where wrong, but managed to get correct results any time. But the apply method just seem not to work anymore, and cannot understand why.

Any help please? thanks

P.S. I'd like to edit my question with the following, since, infact, after further investigation, I see that the cause of this error is due to the fact that with the new version of Pandas the index of a TimeSeries is of a "class 'pandas.lib.Timestamp'" type, thus creating a problem with my function that expects a datetime object instead.

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What is makeDfCurve ? –  Andy Hayden Nov 21 '12 at 11:31
    
it's just a basic function that needs a datetime.datetime value, I'll edit my question to provide further info on this. –  mspadaccino Nov 21 '12 at 11:53

1 Answer 1

I finally solved my issue by checking the new version's documentation, where it is explained how index are now treated as timestamp here thus using .to_pydatetime() method to convert the index values in proper datetime objects, as required by my function.

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