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Is there a preferred way to keep the data type of a NumPy array fixed as int (or int64 or whatever), while still having an element inside listed as numpy.NaN?

In particular, I am converting an in-house data structure to a Pandas DataFrame. In our structure, we have integer-type columns that still have NaN's (but the dtype of the column is int). It seems to recast everything as a float if we make this a DataFrame, but we'd really like to be int.


Things tried:

I tried using the from_records() function under pandas.DataFrame, with coerce_float=False and this did not help. I also tried using NumPy masked arrays, with NaN fill_value, which also did not work. All of these caused the column data type to become a float.

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Could you use a numpy masked array? –  mgilson Jul 18 '12 at 18:32
I'll give it a try. I also tried the from_records function under pandas.DataFrame, with coerce_float=False, but no luck... it still makes the new data have type float64. –  EMS Jul 18 '12 at 18:36
Yeah, no luck. Even with masked array, it still converts to float. It's looking like Pandas goes like this: "Is there a NaN anywhere? ... Then everything's a float." Hopefully there is a way around this. –  EMS Jul 18 '12 at 18:42

1 Answer 1

up vote 12 down vote accepted

NaN can't be stored in an integer array. This is a known limitation of pandas at the moment; I have been waiting for progress to be made with NA values in NumPy (similar to NAs in R), but it will be at least 6 months to a year before NumPy gets these features, it seems:


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Hi Wes, is there any update on this? We run into issues that join columns are converted into either ints or floats, based on the existence of a NA value in the original list. (Creating issues later on when trying to merge these dataframes) –  Carst Jul 23 '13 at 21:36

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