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I read data from a .csv file to a Pandas dataframe as below. For one of the columns, namely id, I want to specify the column type as int. The problem is the id series has missing/empty values.

When I try to cast the id column to integer while reading the .csv, I get:

df= pd.read_csv("data.csv", dtype={'id': int}) 
error: Integer column has NA values

Alternatively, I tried to convert the column type after reading as below, but this time I get:

df= pd.read_csv("data.csv") 
df[['id']] = df[['id']].astype(int)
error: Cannot convert NA to integer

How can I tackle this?

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Could you post the content of your file? –  xndrme Jan 22 at 15:56
    
@xndrme, the file itself is too large. I will see if I can create a small test case. But essentially the situation is that the id column has many integer values and some empty/missing cells. –  Zhubarb Jan 22 at 16:00
2  
I think that integer values cannot be converted or stored in a series/dataframe if there are missing/NaN values. This I think is to do with numpy compatibility (I'm guessing here), if you want missing value compatibility then I would store the values as floats –  EdChum Jan 22 at 16:14
1  
see here: pandas.pydata.org/pandas-docs/dev/…; you must have a float dtype when u have missing values (or technically object dtype but that is inefficient); what is your goal of using int type? –  Jeff Jan 22 at 16:16
1  
I believe this is a NumPy issue, not specific to Pandas. It's a shame since there are so many cases when having an int type that allows for the possibility of null values is much more efficient than a large column of floats. –  prpl.mnky.dshwshr Jan 22 at 17:44

1 Answer 1

up vote 4 down vote accepted

The lack of NaN rep in integer columns is a pandas "gotcha".

The usual workaround is to simply use floats (if you don't specify the dtype this is what will be used).

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