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I'm trying to read a csv file that holds several values in every cell and I want to encode them to a single int formatted byte to be stored in a pandas cell, (e.g. (1, 1) -> 771). For that I would like to use the converters parameter of the read_csv function. The problem is that I don't know the names of the columns before hand and the value to be passed to the converters should be a dict with the column names as keys. In fact I want to convert all columns with the same converter function. For that it would be better to write:

read_csv(fhand, converter=my_endocing_function)


read_csv(fhand, converters={'col1':my_endocing_function,

Is something like that possible? Right now to solve the issue I'm doing:

dataframe = read_csv(fhand)
enc_func = numpy.vectorize(encoder.encode_genotype)
dataframe = dataframe.apply(enc_func, axis=1)

But I guess that this approach might be less efficient. By the way I have similar doubts with the formatters used by the to_string method.

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1 Answer 1

up vote 2 down vote accepted

You can pass integers (0, 1, 2) instead of the names. From the docstring:

converters : dict. optional
    Dict of functions for converting values in certain columns. Keys can either
    be integers or column labels
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That's OK, although it has the problem that I don't even know the number of columns beforehand. I think I will continue converting the dataframe after loading with the apply method. –  Jose Blanca Mar 8 '12 at 7:25
@JoseBlanca: then first read it into a text-buffer, parse the header line to determine the number of cols, now you can construct the dict of converters and read_csv from the text-buffer. –  smci Apr 18 '14 at 3:49

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