I have a csv file that has a few hundred rows and 26 columns, but the last few columns only have a value in a few rows and they are towards the middle or end of the file. When I try to read it in using read_csv() I get the following error. "ValueError: Expecting 23 columns, got 26 in row 64"

I can't see where to explicitly state the number of columns in the file, or how it determines how many columns it thinks the file should have. The dump is below

In [3]:

infile =open(easygui.fileopenbox(),"r")
pledge = read_csv(infile,parse_dates='true')

ValueError                                Traceback (most recent call last)
<ipython-input-3-b35e7a16b389> in <module>()
      1 infile =open(easygui.fileopenbox(),"r")
----> 3 pledge = read_csv(infile,parse_dates='true')

C:\Python27\lib\site-packages\pandas-0.8.1-py2.7-win32.egg\pandas\io\parsers.pyc in read_csv(filepath_or_buffer, sep, dialect, header, index_col, names, skiprows, na_values, thousands, comment, parse_dates, keep_date_col, dayfirst, date_parser, nrows, iterator, chunksize, skip_footer, converters, verbose, delimiter, encoding, squeeze)
    234         kwds['delimiter'] = sep
--> 236     return _read(TextParser, filepath_or_buffer, kwds)
    238 @Appender(_read_table_doc)

C:\Python27\lib\site-packages\pandas-0.8.1-py2.7-win32.egg\pandas\io\parsers.pyc in _read(cls, filepath_or_buffer, kwds)
    189         return parser
--> 191     return parser.get_chunk()
    193 @Appender(_read_csv_doc)

C:\Python27\lib\site-packages\pandas-0.8.1-py2.7-win32.egg\pandas\io\parsers.pyc in get_chunk(self, rows)
    779             msg = ('Expecting %d columns, got %d in row %d' %
    780                    (col_len, zip_len, row_num))
--> 781             raise ValueError(msg)
    783         data = dict((k, v) for k, v in izip(self.columns, zipped_content))

ValueError: Expecting 23 columns, got 26 in row 64
  • Thank you Roman, I was in the middle of figuring out how to make it more readable myself and you beat me to it. :) – chrisfs Nov 22 '13 at 20:57
  • 1
    np, about your question, do you have header in your file? – Roman Pekar Nov 22 '13 at 20:58
  • No, no header, looks like that or the answer below would be the way to go. – chrisfs Nov 22 '13 at 21:13

You can use names parameter. For example, if you have csv file like this:


And try to read it, you'll receive and error

>>> pd.read_csv(r'D:/Temp/tt.csv')
Traceback (most recent call last):
Expected 5 fields in line 4, saw 6

But if you pass names parameters, you'll get result:

>>> pd.read_csv(r'D:/Temp/tt.csv', names=list('abcdef'))
   a  b  c   d   e   f
0  1  2  1 NaN NaN NaN
1  2  3  4   2   3 NaN
2  1  2  3   3 NaN NaN
3  1  2  3   4   5   6

Hope it helps.

| improve this answer | |
  • What can I do if I have the names in the first column only with a-c, how can I help to give dummy names? – PV8 Sep 23 '19 at 13:45

you can also load the CSV with separator '^', to load the entire string to a column, then use split to break the string into required delimiters. After that, you do a concat to merge with the original dataframe (if needed).

del temp['X0']
| improve this answer | |

Suppose you have a file like this:


You could use csv.reader to clean the file first,

header, values = lines[0], lines[1:]    
data = {h:v for h,v in zip (header, zip(*values))}

and get:

{'a' : ('1','1'), 'b': ('2','2'), 'c': ('3', '3')}

If you don't have header you could use:

data = {h:v for h,v in zip (str(xrange(number_of_columns)), zip(*values))}

and then you can convert dictionary to dataframe with

import pandas as pd
df = pd.DataFrame.from_dict(data)
| improve this answer | |
  • if you have the header row you can use csv.DictReader – Tjorriemorrie May 17 '16 at 11:06

The problem with the given solution is that you have to know the max number of columns required. I couldn't find a direct function for this problem, but you can surely write a def which can:

  1. read all the lines
  2. split it
  3. count the number of words/elements in each row
  4. store the max number of words/elements
  5. place that max value in the names option (as suggested by Roman Pekar)

Here is the def (function) I wrote for my files:

def ragged_csv(filename):
    for line in f.readlines():
        words = len(line.split(' '))
        if words > max_n:
    lines=pd.read_csv(filename,sep=' ',names=range(max_n))
    return lines
| improve this answer | |
  • In my particular case, I did know the max number of columns, but this may be useful if you are using external data where that's not immediately available. – chrisfs Jan 19 '17 at 10:21

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