I'm trying to use pandas to manipulate a .csv file but I get this error:

pandas.parser.CParserError: Error tokenizing data. C error: Expected 2 fields in line 3, saw 12

I have tried to read the pandas docs, but found nothing.

My code is simple:

path = 'GOOG Key Ratios.csv'
data = pd.read_csv(path)

How can I resolve this? Should I use the csv module or another language ?

File is from Morningstar

  • 11
    If this error arises when reading a file written by pandas.to_csv(), it MIGHT be because there is a '\r' in a column names, in which case to_csv() will actually write the subsequent column names into the first column of the data frame, causing a difference between the number of columns in the first X rows. This difference is one cause of the C error. – user0 Jan 23 '17 at 0:56
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    Sometime just explicitly giving the "sep" parameter helps. Seems to be a parser issue. – gilgamash May 23 '18 at 12:30
  • 3
    This error may arise also when you're using comma as a delimiter and you have more commas then expected (more fields in the error row then defined in the header). So you need to either remove the additional field or remove the extra comma if it's there by mistake. You can fix this manually and then you don't need to skip the error lines. – tsveti_iko Aug 22 '18 at 9:44
  • 3
    Comment from gilgamash helped me. Open csv file in a text editor (like the windows editor or notepad++) so see which character is used for separation. If it's a semicolon e.g. try pd.read_csv("<path>", sep=";"). Do not use Excel for checking as it sometimes puts the data into columns by default and therefore removes the separator. – Julian Jun 19 '19 at 13:05
  • Regarding comment by @gilgamash -- this sent me in the right direction, however in my case it was resolved by explicitly not giving the "sep" parameter. – TheLoneDeranger Aug 5 '19 at 23:41

39 Answers 39


you could also try;

data = pd.read_csv('file1.csv', error_bad_lines=False)

Do note that this will cause the offending lines to be skipped.

  • 165
    Do note that using error_bad_lines=False will cause the offending lines to be skipped. – biobirdman May 20 '14 at 7:27
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    Stumbled on this answer, is there a way to fill missing columns on lines that outputs something like expected 8 fields, saw 9? – Petra Barus Sep 24 '14 at 10:11
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    The better solution is to investigate the offending file and to correct the bad lines so that they can be read by read_csv. @PetraBarus, why not just add columns to the CSV files that are missing them (with null values as needed)? – dbliss Oct 6 '14 at 22:57
  • 4
    Yes, I just did that. It's much easier by adding columns. Opening CSV in a spreadsheet does this. – Petra Barus Oct 7 '14 at 2:17
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    Passing in names=["col1", "col2", ...] for the max number of expected columns also works, and this is how I solved this issue when I came across it. See: stackoverflow.com/questions/18039057/… – Steven Rouk Jan 8 '19 at 18:58

It might be an issue with

  • the delimiters in your data
  • the first row, as @TomAugspurger noted

To solve it, try specifying the sep and/or header arguments when calling read_csv. For instance,

df = pandas.read_csv(fileName, sep='delimiter', header=None)

In the code above, sep defines your delimiter and header=None tells pandas that your source data has no row for headers / column titles. Thus saith the docs: "If file contains no header row, then you should explicitly pass header=None". In this instance, pandas automatically creates whole-number indices for each field {0,1,2,...}.

According to the docs, the delimiter thing should not be an issue. The docs say that "if sep is None [not specified], will try to automatically determine this." I however have not had good luck with this, including instances with obvious delimiters.

  • Yes, sometimes delimiter may be the cause of this issue. I faced the same issue where delimiter was a semicolon(;) – Anurag Sharma Feb 15 '20 at 6:11

The parser is getting confused by the header of the file. It reads the first row and infers the number of columns from that row. But the first two rows aren't representative of the actual data in the file.

Try it with data = pd.read_csv(path, skiprows=2)


Your CSV file might have variable number of columns and read_csv inferred the number of columns from the first few rows. Two ways to solve it in this case:

1) Change the CSV file to have a dummy first line with max number of columns (and specify header=[0])

2) Or use names = list(range(0,N)) where N is the max number of columns.

  • names=range(N) should suffice (using pandas=1.1.2 here) – rvf Dec 3 '20 at 9:11

This is definitely an issue of delimiter, as most of the csv CSV are got create using sep='/t' so try to read_csv using the tab character (\t) using separator /t. so, try to open using following code line.

data=pd.read_csv("File_path", sep='\t')
  • 5
    @MichaelQueue : This is incorrect. A CSV, although commonly delimited by a comma, may be delimited by other characters as well. See CSV specifications. It may be a comma, a tab ('\t'), semicolon, and possibly additional spaces. :) – DJGrandpaJ Apr 13 '16 at 19:54
  • in my case it was a separator issue. read_csv apparently defaults to commas, and i have text fields which include commas (and the data was stored with a different separator anyway) – user108569 Jul 17 '18 at 16:41
  • If commas are used in the values but tab is the delimiter and sep is not used (or as suggested above the delimiters whatever it is assumed to be occurs in the values) then this error will arise. Make sure that the delimiter does not occur in any of the values else some rows will appear to have the incorrect number of columns – demongolem Mar 11 '20 at 11:10
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    I'm using excel 2016 while creating the CSV, and using sep=';' work for me – lone_coder Mar 20 '20 at 6:34

I had this problem, where I was trying to read in a CSV without passing in column names.

df = pd.read_csv(filename, header=None)

I specified the column names in a list beforehand and then pass them into names, and it solved it immediately. If you don't have set column names, you could just create as many placeholder names as the maximum number of columns that might be in your data.

col_names = ["col1", "col2", "col3", ...]
df = pd.read_csv(filename, names=col_names)
  • 1
    This answer better because the row doesn't get deleted compared to if using the error_bad_line=False. Additionally, you can easily figure out which lines were the problem ones once making a dataframe from this solution. – zipline86 Mar 27 '20 at 21:47
  • I agree with @zipline86. This answer is safe and intelligent. – Monica Heddneck Apr 23 '20 at 0:09
  • this solution its too hackish to me, but it works. I solved my issue passing engine='python' in read_csv to deal with variable columns size – Savrige Sep 18 '20 at 15:49

I had this problem as well but perhaps for a different reason. I had some trailing commas in my CSV that were adding an additional column that pandas was attempting to read. Using the following works but it simply ignores the bad lines:

data = pd.read_csv('file1.csv', error_bad_lines=False)

If you want to keep the lines an ugly kind of hack for handling the errors is to do something like the following:

line     = []
expected = []
saw      = []     
cont     = True 

while cont == True:     
        data = pd.read_csv('file1.csv',skiprows=line)
        cont = False
    except Exception as e:    
        errortype = e.message.split('.')[0].strip()                                
        if errortype == 'Error tokenizing data':                        
           cerror      = e.message.split(':')[1].strip().replace(',','')
           nums        = [n for n in cerror.split(' ') if str.isdigit(n)]
           cerror      = 'Unknown'
           print 'Unknown Error - 222'

if line != []:
    # Handle the errors however you want

I proceeded to write a script to reinsert the lines into the DataFrame since the bad lines will be given by the variable 'line' in the above code. This can all be avoided by simply using the csv reader. Hopefully the pandas developers can make it easier to deal with this situation in the future.


I've had this problem a few times myself. Almost every time, the reason is that the file I was attempting to open was not a properly saved CSV to begin with. And by "properly", I mean each row had the same number of separators or columns.

Typically it happened because I had opened the CSV in Excel then improperly saved it. Even though the file extension was still .csv, the pure CSV format had been altered.

Any file saved with pandas to_csv will be properly formatted and shouldn't have that issue. But if you open it with another program, it may change the structure.

Hope that helps.


The following worked for me (I posted this answer, because I specifically had this problem in a Google Colaboratory Notebook):

df = pd.read_csv("/path/foo.csv", delimiter=';', skiprows=0, low_memory=False)
  • 1
    I experimented problems when not setting | as the delimiter for my .csv. I rather to try this approach first, instead of skipping lines, or bad lines. – ivanleoncz Sep 2 '19 at 16:16
  • I also had the same problem, I assumed "\t" would be detected as a delimiter by default. It worked when I explicitly set the delimiter to "\t". – Rahul Jha Sep 20 '19 at 17:39

I came across the same issue. Using pd.read_table() on the same source file seemed to work. I could not trace the reason for this but it was a useful workaround for my case. Perhaps someone more knowledgeable can shed more light on why it worked.

Edit: I found that this error creeps up when you have some text in your file that does not have the same format as the actual data. This is usually header or footer information (greater than one line, so skip_header doesn't work) which will not be separated by the same number of commas as your actual data (when using read_csv). Using read_table uses a tab as the delimiter which could circumvent the users current error but introduce others.

I usually get around this by reading the extra data into a file then use the read_csv() method.

The exact solution might differ depending on your actual file, but this approach has worked for me in several cases


I've had a similar problem while trying to read a tab-delimited table with spaces, commas and quotes:

1115794 4218    "k__Bacteria", "p__Firmicutes", "c__Bacilli", "o__Bacillales", "f__Bacillaceae", ""
1144102 3180    "k__Bacteria", "p__Firmicutes", "c__Bacilli", "o__Bacillales", "f__Bacillaceae", "g__Bacillus", ""
368444  2328    "k__Bacteria", "p__Bacteroidetes", "c__Bacteroidia", "o__Bacteroidales", "f__Bacteroidaceae", "g__Bacteroides", ""

import pandas as pd
# Same error for read_table
counts = pd.read_csv(path_counts, sep='\t', index_col=2, header=None, engine = 'c')

pandas.io.common.CParserError: Error tokenizing data. C error: out of memory

This says it has something to do with C parsing engine (which is the default one). Maybe changing to a python one will change anything

counts = pd.read_table(path_counts, sep='\t', index_col=2, header=None, engine='python')

Segmentation fault (core dumped)

Now that is a different error.
If we go ahead and try to remove spaces from the table, the error from python-engine changes once again:

1115794 4218    "k__Bacteria","p__Firmicutes","c__Bacilli","o__Bacillales","f__Bacillaceae",""
1144102 3180    "k__Bacteria","p__Firmicutes","c__Bacilli","o__Bacillales","f__Bacillaceae","g__Bacillus",""
368444  2328    "k__Bacteria","p__Bacteroidetes","c__Bacteroidia","o__Bacteroidales","f__Bacteroidaceae","g__Bacteroides",""

_csv.Error: '   ' expected after '"'

And it gets clear that pandas was having problems parsing our rows. To parse a table with python engine I needed to remove all spaces and quotes from the table beforehand. Meanwhile C-engine kept crashing even with commas in rows.

To avoid creating a new file with replacements I did this, as my tables are small:

from io import StringIO
with open(path_counts) as f:
    input = StringIO(f.read().replace('", ""', '').replace('"', '').replace(', ', ',').replace('\0',''))
    counts = pd.read_table(input, sep='\t', index_col=2, header=None, engine='python')

Change parsing engine, try to avoid any non-delimiting quotes/commas/spaces in your data.


The dataset that I used had a lot of quote marks (") used extraneous of the formatting. I was able to fix the error by including this parameter for read_csv():

quoting=3 # 3 correlates to csv.QUOTE_NONE for pandas
  • 3
    stumbled across the exact same thing. As far as I'm concerned, this is the correct answer. The accepted one just hides the error. – lhk Aug 18 '19 at 13:40
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    Correct answer for me too. +1 – Taha Jirjees Jun 4 '20 at 11:11

You can try;

data = pd.read_csv('file1.csv', sep='\t')
  • While this code may solve the question, including an explanation of how and why this solves the problem would really help to improve the quality of your post, and probably result in more up-votes. Remember that you are answering the question for readers in the future, not just the person asking now. Please edit your answer to add explanations and give an indication of what limitations and assumptions apply. From Review – double-beep Sep 8 '20 at 18:04

Although not the case for this question, this error may also appear with compressed data. Explicitly setting the value for kwarg compression resolved my problem.

result = pandas.read_csv(data_source, compression='gzip')

Use delimiter in parameter

pd.read_csv(filename, delimiter=",", encoding='utf-8')

It will read.


For those who are having similar issue with Python 3 on linux OS.

pandas.errors.ParserError: Error tokenizing data. C error: Calling
read(nbytes) on source failed. Try engine='python'.


df.read_csv('file.csv', encoding='utf8', engine='python')

An alternative that I have found to be useful in dealing with similar parsing errors uses the CSV module to re-route data into a pandas df. For example:

import csv
import pandas as pd
path = 'C:/FileLocation/'
file = 'filename.csv'
f = open(path+file,'rt')
reader = csv.reader(f)

#once contents are available, I then put them in a list
csv_list = []
for l in reader:
#now pandas has no problem getting into a df
df = pd.DataFrame(csv_list)

I find the CSV module to be a bit more robust to poorly formatted comma separated files and so have had success with this route to address issues like these.


following sequence of commands works (I lose the first line of the data -no header=None present-, but at least it loads):

df = pd.read_csv(filename, usecols=range(0, 42)) df.columns = ['YR', 'MO', 'DAY', 'HR', 'MIN', 'SEC', 'HUND', 'ERROR', 'RECTYPE', 'LANE', 'SPEED', 'CLASS', 'LENGTH', 'GVW', 'ESAL', 'W1', 'S1', 'W2', 'S2', 'W3', 'S3', 'W4', 'S4', 'W5', 'S5', 'W6', 'S6', 'W7', 'S7', 'W8', 'S8', 'W9', 'S9', 'W10', 'S10', 'W11', 'S11', 'W12', 'S12', 'W13', 'S13', 'W14']

Following does NOT work:

df = pd.read_csv(filename, names=['YR', 'MO', 'DAY', 'HR', 'MIN', 'SEC', 'HUND', 'ERROR', 'RECTYPE', 'LANE', 'SPEED', 'CLASS', 'LENGTH', 'GVW', 'ESAL', 'W1', 'S1', 'W2', 'S2', 'W3', 'S3', 'W4', 'S4', 'W5', 'S5', 'W6', 'S6', 'W7', 'S7', 'W8', 'S8', 'W9', 'S9', 'W10', 'S10', 'W11', 'S11', 'W12', 'S12', 'W13', 'S13', 'W14'], usecols=range(0, 42))

CParserError: Error tokenizing data. C error: Expected 53 fields in line 1605634, saw 54 Following does NOT work:

df = pd.read_csv(filename, header=None)

CParserError: Error tokenizing data. C error: Expected 53 fields in line 1605634, saw 54

Hence, in your problem you have to pass usecols=range(0, 2)


In my case the separator was not the default "," but Tab.

pd.read_csv(file_name.csv, sep='\\t',lineterminator='\\r', engine='python', header='infer')

Note: "\t" did not work as suggested by some sources. "\\t" was required.


Sometimes the problem is not how to use python, but with the raw data.
I got this error message

Error tokenizing data. C error: Expected 18 fields in line 72, saw 19.

It turned out that in the column description there were sometimes commas. This means that the CSV file needs to be cleaned up or another separator used.


use pandas.read_csv('CSVFILENAME',header=None,sep=', ')

when trying to read csv data from the link


I copied the data from the site into my csvfile. It had extra spaces so used sep =', ' and it worked :)


I had a similar case as this and setting

train = pd.read_csv('input.csv' , encoding='latin1',engine='python') 



I had a dataset with prexisting row numbers, I used index_col:

pd.read_csv('train.csv', index_col=0)

This is what I did.

sep='::' solved my issue:

data=pd.read_csv('C:\\Users\\HP\\Downloads\\NPL ASSINGMENT 2 imdb_labelled\\imdb_labelled.txt',engine='python',header=None,sep='::')

I have the same problem when read_csv: ParserError: Error tokenizing data. I just saved the old csv file to a new csv file. The problem is solved!


The issue for me was that a new column was appended to my CSV intraday. The accepted answer solution would not work as every future row would be discarded if I used error_bad_lines=False.

The solution in this case was to use the usecols parameter in pd.read_csv(). This way I can specify only the columns that I need to read into the CSV and my Python code will remain resilient to future CSV changes so long as a header column exists (and the column names do not change).

usecols : list-like or callable, optional 

Return a subset of the columns. If list-like, all elements must either
be positional (i.e. integer indices into the document columns) or
strings that correspond to column names provided either by the user in
names or inferred from the document header row(s). For example, a
valid list-like usecols parameter would be [0, 1, 2] or ['foo', 'bar',
'baz']. Element order is ignored, so usecols=[0, 1] is the same as [1,
0]. To instantiate a DataFrame from data with element order preserved
use pd.read_csv(data, usecols=['foo', 'bar'])[['foo', 'bar']] for
columns in ['foo', 'bar'] order or pd.read_csv(data, usecols=['foo',
'bar'])[['bar', 'foo']] for ['bar', 'foo'] order.


my_columns = ['foo', 'bar', 'bob']
df = pd.read_csv(file_path, usecols=my_columns)

Another benefit of this is that I can load way less data into memory if I am only using 3-4 columns of a CSV that has 18-20 columns.


Simple resolution: Open the csv file in excel & save it with different name file of csv format. Again try importing it spyder, Your problem will be resolved!


I have encountered this error with a stray quotation mark. I use mapping software which will put quotation marks around text items when exporting comma-delimited files. Text which uses quote marks (e.g. ' = feet and " = inches) can be problematic when then induce delimiter collisions. Consider this example which notes that a 5-inch well log print is poor:

UWI_key,Latitude,Longitude,Remark US42051316890000,30.4386484,-96.4330734,"poor 5""

Using 5" as shorthand for 5 inch ends up throwing a wrench in the works. Excel will simply strip off the extra quote mark, but Pandas breaks down without the error_bad_lines=False argument mentioned above.


As far as I can tell, and after taking a look at your file, the problem is that the csv file you're trying to load has multiple tables. There are empty lines, or lines that contain table titles. Try to have a look at this Stackoverflow answer. It shows how to achieve that programmatically.

Another dynamic approach to do that would be to use the csv module, read every single row at a time and make sanity checks/regular expressions, to infer if the row is (title/header/values/blank). You have one more advantage with this approach, that you can split/append/collect your data in python objects as desired.

The easiest of all would be to use pandas function pd.read_clipboard() after manually selecting and copying the table to the clipboard, in case you can open the csv in excel or something.


Additionally, irrelevant to your problem, but because no one made mention of this: I had this same issue when loading some datasets such as seeds_dataset.txt from UCI. In my case, the error was occurring because some separators had more whitespaces than a true tab \t. See line 3 in the following for instance

14.38   14.21   0.8951  5.386   3.312   2.462   4.956   1
14.69   14.49   0.8799  5.563   3.259   3.586   5.219   1
14.11   14.1    0.8911  5.42    3.302   2.7     5       1

Therefore, use \t+ in the separator pattern instead of \t.

data = pd.read_csv(path, sep='\t+`, header=None)

In my case, it is because the format of the first and last two lines of the csv file is different from the middle content of the file.

So what I do is open the csv file as a string, parse the content of the string, then use read_csv to get a dataframe.

import io
import pandas as pd

file = open(f'{file_path}/{file_name}', 'r')
content = file.read()

# change new line character from '\r\n' to '\n'
lines = content.replace('\r', '').split('\n')

# Remove the first and last 2 lines of the file
# StringIO can be considered as a file stored in memory
df = pd.read_csv(StringIO("\n".join(lines[2:-2])), header=None)

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