How can I use pd.read_csv() to iteratively chunk through a file and retain the dtype and other meta-information as if I read in the entire dataset at once?
I need to read in a dataset that is too large to fit into memory. I would like to import the file using pd.read_csv and then immediately append the chunk into an HDFStore. However, the data type inference knows nothing about subsequent chunks.
If the first chunk stored in the table contains only int and a subsequent chunk contains a float, an exception will be raised. So I need to first iterate through the dataframe using read_csv and retain the highest inferred type. In addition, for object types, I need to retain the maximum length as these will be stored as strings in the table.
Is there a pandonic way of retaining only this information without reading in the entire dataset?