I'm running a program which is processing 30,000 similar files. A random number of them are stopping and producing this error...

   File "C:\Importer\src\dfman\importer.py", line 26, in import_chr
     data = pd.read_csv(filepath, names=fields)
   File "C:\Python33\lib\site-packages\pandas\io\parsers.py", line 400, in parser_f
     return _read(filepath_or_buffer, kwds)
   File "C:\Python33\lib\site-packages\pandas\io\parsers.py", line 205, in _read
     return parser.read()
   File "C:\Python33\lib\site-packages\pandas\io\parsers.py", line 608, in read
     ret = self._engine.read(nrows)
   File "C:\Python33\lib\site-packages\pandas\io\parsers.py", line 1028, in read
     data = self._reader.read(nrows)
   File "parser.pyx", line 706, in pandas.parser.TextReader.read (pandas\parser.c:6745)
   File "parser.pyx", line 728, in pandas.parser.TextReader._read_low_memory (pandas\parser.c:6964)
   File "parser.pyx", line 804, in pandas.parser.TextReader._read_rows (pandas\parser.c:7780)
   File "parser.pyx", line 890, in pandas.parser.TextReader._convert_column_data (pandas\parser.c:8793)
   File "parser.pyx", line 950, in pandas.parser.TextReader._convert_tokens (pandas\parser.c:9484)
   File "parser.pyx", line 1026, in pandas.parser.TextReader._convert_with_dtype (pandas\parser.c:10642)
   File "parser.pyx", line 1046, in pandas.parser.TextReader._string_convert (pandas\parser.c:10853)
   File "parser.pyx", line 1278, in pandas.parser._string_box_utf8 (pandas\parser.c:15657)
 UnicodeDecodeError: 'utf-8' codec can't decode byte 0xda in position 6: invalid    continuation byte

The source/creation of these files all come from the same place. What's the best way to correct this to proceed with the import?


read_csv takes an encoding option to deal with files in different formats. I mostly use read_csv('file', encoding = "ISO-8859-1"), or alternatively encoding = "utf-8" for reading, and generally utf-8 for to_csv.

You can also use one of several alias options like 'latin' instead of 'ISO-8859-1' (see python docs, also for numerous other encodings you may encounter).

See relevant Pandas documentation, python docs examples on csv files, and plenty of related questions here on SO.

To detect the encoding (assuming the file contains non-ascii characters), you can use enca (see man page) or file -i (linux) or file -I (osx) (see man page).

  • 34
    Thank you, Stefan! I added encoding = "ISO-8859-1" and they imported perfectly. – TravisVOX Aug 11 '13 at 14:36
  • 2
    Since this is a Windows issue, cp1252 might be preferrable to iso-8859-1. – tzot Jun 7 '17 at 9:28
  • 3
    Encoding = "ISO-8859-1" worked for me as well. Thanks. – Anonymous Person Jul 2 '17 at 12:00
  • 1
    Thanks pd.read_csv('immigration.csv', encoding = "ISO-8859-1", engine='python') worked for me – Mona Jalal Apr 1 '18 at 19:03
  • 1
    Don't blindly assume a certain encoding is the right one just because no exception is thrown. You need to look at the strings and figure out whether the interpretation makes sense. For example, if you get "hors d’½uvre" instead of "hors d’œuvre" you probably need to switch from ISO-8859-1 to ISO-8859-15. – Joachim Wagner May 14 '18 at 8:03

Simplest of all Solutions:

  • Open the csv file in Sublime text editor.
  • Save the file in utf-8 format.

In sublime, Click File -> Save with encoding -> UTF-8

Then, you can read your file as usual:

import pandas as pd
data = pd.read_csv('file_name.csv', encoding='utf-8')


If there are many files, then you can skip the sublime step.

Just read the file using

data = pd.read_csv('file_name.csv', encoding='utf-8')

and the other different encoding types are:

encoding = "cp1252"
encoding = "ISO-8859-1"
  • 5
    The question explains that there are 30,000 such files. Opening each file manually would not be practical. – Keith Jan 2 '18 at 20:06
  • 1
    well at least for one file, this seemed to work for me! – apil.tamang May 31 '18 at 14:43

Pandas allows to specify encoding, but does not allow to ignore errors not to automatically replace the offending bytes. So there is no one size fits all method but different ways depending on the actual use case.

  1. You know the encoding, and there is no encoding error in the file. Great: you have just to specify the encoding:

    file_encoding = 'cp1252'        # set file_encoding to the file encoding (utf8, latin1, etc.)
    pd.read_csv(input_file_and_path, ..., encoding=file_encoding)
  2. You do not want to be bothered with encoding questions, and only want that damn file to load, no matter if some text fields contain garbage. Ok, you only have to use Latin1 encoding because it accept any possible byte as input (and convert it to the unicode character of same code):

    pd.read_csv(input_file_and_path, ..., encoding='latin1')
  3. You know that most of the file is written with a specific encoding, but it also contains encoding errors. A real world example is an UTF8 file that has been edited with a non utf8 editor and which contains some lines with a different encoding. Pandas has no provision for a special error processing, but Python open function has (assuming Python3), and read_csv accepts a file like object. Typical errors parameter to use here are 'ignore' which just suppresses the offending bytes or (IMHO better) 'backslashreplace' which replaces the offending bytes by their Python’s backslashed escape sequence:

    file_encoding = 'utf8'        # set file_encoding to the file encoding (utf8, latin1, etc.)
    input_fd = open(input_file_and_path, encoding=file_encoding, errors = 'backslashreplace')
    pd.read_csv(input_fd, ...)

Struggled with this a while and thought I'd post on this question as it's the first search result. Adding the encoding='iso-8859-1" tag to pandas read_csv didn't work, nor did any other encoding, kept giving a UnicodeDecodeError.

If you're passing a file handle to pd.read_csv(), you need to put the encoding= attribute on the file open, not in read_csv. Obvious in hindsight, but a subtle error to track down.

with open('filename.csv') as f:

after executing this code you will find encoding of 'filename.csv' then execute code as following

data=pd.read_csv('filename.csv', encoding="encoding as you found earlier"

there you go


This answer seems to be the catch-all for CSV encoding issues. If you are getting a strange encoding problem with your header like this:

>>> f = open(filename,"r")
>>> reader = DictReader(f)
>>> next(reader)
OrderedDict([('\ufeffid', '1'), ... ])

Then you have a byte order mark (BOM) character at the beginning of your CSV file. This answer addresses the issue:

Python read csv - BOM embedded into the first key

The solution is to load the CSV with encoding="utf-8-sig":

>>> f = open(filename,"r", encoding="utf-8-sig")
>>> reader = DictReader(f)
>>> next(reader)
OrderedDict([('id', '1'), ... ])

Hopefully this helps someone.


In my case, a file has "USC-2 LE BOM" encoding, according to Notepad++. It is encoding="utf_16_le" for python.

Hope, it helps to find an answer a bit faster for someone.


I am posting an update to this old thread. I found one solution that worked, but requires opening each file. I opened my csv file in LibreOffice, chose Save As > edit filter settings. In the drop-down menu I chose UTF8 encoding. Then I added encoding="utf-8-sig" to the data = pd.read_csv(r'C:\fullpathtofile\filename.csv', sep = ',', encoding="utf-8-sig").

Hope this helps someone.

  • Nisse, thanks for the edit. Can you please explain what you changed? I don't see a difference. – tshirtdr1 Jan 1 at 15:32

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