I am just getting started with Pandas and I am reading in a csv file using the read_csv() method. The difficulty I am having is preventing pandas from converting my telephone numbers to large numbers, instead of keeping them as strings. I defined a converter which just left the numbers alone, but then they still converted to numbers. When I changed my converter to prepend a 'z' to the phone numbers, then they stayed strings. Is there some way to keep them strings without modifying the values of the fields?

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    Please show us your code – Mike Pennington May 15 '12 at 1:48
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    @Gardner: have you considered accepting an answer? – tumultous_rooster Dec 14 '15 at 2:58

Since Pandas 0.11.0 you can use dtype argument to explicitly specify data type for each column:

d = pandas.read_csv('foo.csv', dtype={'BAR': 'S10'})
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    Note that this is not available (yet, hopefully) for some other input functions, like pandas.read_fwf() – ReneSac Jan 8 '14 at 0:15
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    I revisited the topic and support for dtype has been already added to the pandas.read_fwf :) – zero323 Dec 7 '14 at 11:16
  • This method doesn't work for large datasets is there any other way to read a csv and only particular columns. – Samyak Upadhyay Nov 14 '17 at 13:34
  • This doesn't work when the input is a bytes io object, I get error EmptyDataError: No columns to parse from file. Any way to solve this? – Itamar Katz Jul 22 '19 at 15:04

It looks like you can't avoid pandas from trying to convert numeric/boolean values in the CSV file. Take a look at the source code of pandas for the IO parsers, in particular functions _convert_to_ndarrays, and _convert_types. https://github.com/pydata/pandas/blob/master/pandas/io/parsers.py

You can always assign the type you want after you have read the file:

df.phone = df.phone.astype(str)
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    Thanks @lbolla, this helped in one of my bugfix, where a float value was read as string since another column was string, and later causing issues in aggregation functions. I had to do df['col'] = df['col'].astype(float64) – nom-mon-ir Dec 14 '12 at 0:22
  • say I have a column of ids (which is all int) that I'd like to use as string, but by some condition pandas will read them as float, 1->1.0, 2->2.0, then without convert it back to int first, it will be converted to '1.0', '2.0' which is not desirable. that's why I just want pandas to read it as string. – hihell Dec 18 '18 at 7:52
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    This is not the answer. Your solution doesn't solve tproblems as memory error on big files. – Natacha Nov 8 '19 at 13:20

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