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So I'm reading in a station codes csv file from NOAA which looks like this:

"007005","99999","CWOS 07005","","","","","-99999","-999999","-99999","20120127","20120127"

The first two columns contain codes for weather stations and sometimes they have leading zeros. When pandas imports them without specifying a dtype they turn into integers. It's not really that big of a deal because I can loop through the dataframe index and replace them with something like "%06d" % i since they are always six digits, but you know... that's the lazy mans way.

The csv is obtained using this code:

file = urllib.urlopen(r"")
output = open('Station Codes.csv','wb')

which is all well and good but when I go and try and read it using this:

import pandas as pd
df ="Station Codes.csv",dtype={'USAF': np.str, 'WBAN': np.str})


import pandas as pd
df ="Station Codes.csv",dtype={'USAF': str, 'WBAN': str})

I get a nasty error message:

File "C:\Python27\lib\site-packages\pandas-0.11.0-py2.7-win32.egg\pandas\io\", line 401, in parser
    return _read(filepath_or_buffer, kwds)
  File "C:\Python27\lib\site-packages\pandas-0.11.0-py2.7-win32.egg\pandas\io\", line 216, in _read
  File "C:\Python27\lib\site-packages\pandas-0.11.0-py2.7-win32.egg\pandas\io\", line 633, in read
    ret =
  File "C:\Python27\lib\site-packages\pandas-0.11.0-py2.7-win32.egg\pandas\io\", line 957, in read
    data =
  File "parser.pyx", line 654, in (pandas\src\parser.c:5931)
  File "parser.pyx", line 676, in pandas._parser.TextReader._read_low_memory (pandas\src\parser.c:6148)
  File "parser.pyx", line 752, in pandas._parser.TextReader._read_rows (pandas\src\parser.c:6962)
  File "parser.pyx", line 837, in pandas._parser.TextReader._convert_column_data (pandas\src\parser.c:7898)
  File "parser.pyx", line 887, in pandas._parser.TextReader._convert_tokens (pandas\src\parser.c:8483)
  File "parser.pyx", line 953, in pandas._parser.TextReader._convert_with_dtype (pandas\src\parser.c:9535)
  File "parser.pyx", line 1283, in pandas._parser._to_fw_string (pandas\src\parser.c:14616)
TypeError: data type not understood

It's a pretty big csv (31k rows) so maybe that has something to do with it?

share|improve this question
I found that using object works to keep the leading zeros: dtype={'USAF': object, 'WBAN': object} from this post:… – Radical Edward Jun 4 '13 at 23:31
It's a bit weird that str/np.str doesn't just work... :S I do wonder if it's a bug, may be worth posting as an issue on github. – Andy Hayden Jun 5 '13 at 0:15
Yea I thought it was strange as well since I could use other number data types there. – Radical Edward Jun 5 '13 at 17:35
Here is basically this exact question two months ago: Does not seem like there are plans of fixing it. – Radical Edward Jun 5 '13 at 17:42
I think I remember Wes talking about this, I think he said in many cases it would it most cases be very expensive to use numpys (fixed length) string objects... when you're just passing in regular strings (because it uses the memory for the largest string at every element,). I'll see if I can find it. – Andy Hayden Jun 5 '13 at 17:51

It looks like you have to specify the length of the string if you don't want it to be an object.
For example:

dtype={'USAF': '|S6'}

I can't find the reference for this, but I seem to recall Wes discussing this very issue (perhaps in a talk). He suggested that numpy doesn't allow "proper" variable length strings (see this question/answer), and using the maximum length to populate the array will more often than not be incredibly space inefficient (even if a string is short it'll use as much space as the longest string).

As @Wes points out, this is also a case where:

dtype={'USAF': object}

works just as well.

share|improve this answer
I would suggest just {'USAF': object} – Wes McKinney Jun 6 '13 at 18:56
@WesMcKinney excellent point (as always)! – Andy Hayden Jun 6 '13 at 19:05

This problem caused me all sorts of headaches when parsing a file with serial numbers. For unknown reasons 00794 and 000794 are two distinct serial numbers. I eventually came up with

converters={'serial_number': lambda x: str(x)}
share|improve this answer
Why not just write converters={'serial_number': str}? – 200_success Nov 25 '15 at 3:37
Probably because I did not think of it :) – Lev Landau Nov 25 '15 at 10:23

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