31
votes

Using Python3, Pandas 0.12

I'm trying to write multiple csv files (total size is 7.9 GB) to a HDF5 store to process later onwards. The csv files contain around a million of rows each, 15 columns and data types are mostly strings, but some floats. However when I'm trying to read the csv files I get the following error:

Traceback (most recent call last):
  File "filter-1.py", line 38, in <module>
    to_hdf()
  File "filter-1.py", line 31, in to_hdf
    for chunk in reader:
  File "C:\Python33\lib\site-packages\pandas\io\parsers.py", line 578, in __iter__
    yield self.read(self.chunksize)
  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 740, in pandas.parser.TextReader._read_low_memory (pandas\parser.c:7146)
  File "parser.pyx", line 781, in pandas.parser.TextReader._read_rows (pandas\parser.c:7568)
  File "parser.pyx", line 768, in pandas.parser.TextReader._tokenize_rows (pandas\parser.c:7451)
  File "parser.pyx", line 1661, in pandas.parser.raise_parser_error (pandas\parser.c:18744)
pandas.parser.CParserError: Error tokenizing data. C error: EOF inside string starting at line 754991
Closing remaining open files: ta_store.h5... done 

Edit:

I managed to find a file that produced this problem. I think it's reading an EOF character. However I have no clue to overcome this problem. Given the large size of the combined files I think it's too cumbersome to check each single character in each string. (Even then I would still not be sure what to do.) As far as I checked, there are no strange characters in the csv files that could raise the error. I also tried passing error_bad_lines=False to pd.read_csv(), but the error persists.

My code is the following:

# -*- coding: utf-8 -*-

import pandas as pd
import os
from glob import glob


def list_files(path=os.getcwd()):
    ''' List all files in specified path '''
    list_of_files = [f for f in glob('2013-06*.csv')]
    return list_of_files


def to_hdf():
    """ Function that reads multiple csv files to HDF5 Store """
    # Defining path name
    path = 'ta_store.h5'
    # If path exists delete it such that a new instance can be created
    if os.path.exists(path):
        os.remove(path)
    # Creating HDF5 Store
    store = pd.HDFStore(path)

    # Reading csv files from list_files function
    for f in list_files():
        # Creating reader in chunks -- reduces memory load
        reader = pd.read_csv(f, chunksize=50000)
        # Looping over chunks and storing them in store file, node name 'ta_data'
        for chunk in reader:
            chunk.to_hdf(store, 'ta_data', mode='w', table=True)

    # Return store
    return store.select('ta_data')
    return 'Finished reading to HDF5 Store, continuing processing data.'

to_hdf()

Edit

If I go into the CSV file that raises the CParserError EOF... and manually delete all rows after the line that is causing the problem, the csv file is read properly. However all I'm deleting are blank rows anyway. The weird thing is that when I manually correct the erroneous csv files, they are loaded fine into the store individually. But when I again use a list of multiple files the 'false' files still return me errors.

8
don't pass the mode='w'; you are truncating the hdf file on each iterationJeff
you can try catching the CParserError and just skip that file (until you fix it)Jeff
Hi Jeff, how do you suggest I catch the CParserError. It's way too cumbersome to check each of the individual files.Matthijs
first figure out which file it is, don't check, just catch: from pandas.io import parser; try: your read_csv look for file f except (parser.CParserError) as detail: print f, detailJeff
Sorry I don't quite catch your code - I'm rather new to python/pandas. Could you explain a bit further please?Matthijs

8 Answers

114
votes

I had a similar problem. The line listed with the 'EOF inside string' had a string that contained within it a single quote mark. When I added the option quoting=csv.QUOTE_NONE it fixed my problem.

For example:

import csv
df = pd.read_csv(csvfile, header = None, delimiter="\t", quoting=csv.QUOTE_NONE, encoding='utf-8')
22
votes

I have the same problem, and after adding these two params to my code, the problem is gone.

read_csv (...quoting=3, error_bad_lines=False)

10
votes

I realize this is an old question, but I wanted to share some more details on the root cause of this error and why the solution from @Selah works.

From the csv.py docstring:

    * quoting - controls when quotes should be generated by the writer.
    It can take on any of the following module constants:

    csv.QUOTE_MINIMAL means only when required, for example, when a
        field contains either the quotechar or the delimiter
    csv.QUOTE_ALL means that quotes are always placed around fields.
    csv.QUOTE_NONNUMERIC means that quotes are always placed around
        fields which do not parse as integers or floating point
        numbers.
    csv.QUOTE_NONE means that quotes are never placed around fields.

csv.QUOTE_MINIMAL is the default value and " is the default quotechar. If somewhere in your csv file you have a quotechar it will be parsed as a string until another occurrence of the quotechar. If your file has odd number of quotechars the last one will not be closed before reaching the EOF (end of file). Also be aware that anything between the quotechars will be parsed as a single string. Even if there are many line breaks (expected to be parsed as separate rows) it all goes into a single field of the table. So the line number that you get in the error can be misleading. To illustrate with an example consider this:

In[4]: import pandas as pd
  ...: from io import StringIO
  ...: test_csv = '''a,b,c
  ...: "d,e,f
  ...: g,h,i
  ...: "m,n,o
  ...: p,q,r
  ...: s,t,u
  ...: '''
  ...: 
In[5]: test = StringIO(test_csv)
In[6]: pd.read_csv(test)
Out[6]: 
                 a  b  c
0  d,e,f\ng,h,i\nm  n  o
1                p  q  r
2                s  t  u
In[7]: test_csv_2 = '''a,b,c
  ...: "d,e,f
  ...: g,h,i
  ...: "m,n,o
  ...: "p,q,r
  ...: s,t,u
  ...: '''
  ...: test_2 = StringIO(test_csv_2)
  ...: 
In[8]: pd.read_csv(test_2)
Traceback (most recent call last):
...
...
pandas.errors.ParserError: Error tokenizing data. C error: EOF inside string starting at line 2

The first string has 2 (even) quotechars. So each quotechar is closed and the csv is parsed without an error, although probably not what we expected. The other string has 3 (odd) quotechars. The last one is not closed and the EOF is reached hence the error. But line 2 that we get in the error message is misleading. We would expect 4, but since everything between first and second quotechar is parsed as a string our "p,q,r line is actually second.

6
votes

Make your inner loop like this will allow you to detect the 'bad' file (and further investigate)

from pandas.io import parser

def to_hdf():

    .....

    # Reading csv files from list_files function
    for f in list_files():
        # Creating reader in chunks -- reduces memory load

        try:

            reader = pd.read_csv(f, chunksize=50000)

            # Looping over chunks and storing them in store file, node name 'ta_data'
            for chunk in reader:
                chunk.to_hdf(store, 'ta_data', table=True)

        except (parser.CParserError) as detail:
             print f, detail
4
votes

The solution is to use the parameter engine=’python’ in the read_csv function. The Pandas CSV parser can use two different “engines” to parse a CSV file – Python or C (which is also the default).

pandas.read_csv(filepath, sep=',', delimiter=None, 
            header='infer', names=None, 
            index_col=None, usecols=None, squeeze=False, 
            ..., engine=None, ...)

The Python engine is described to be “slower, but is more feature complete” in the Pandas documentation.

engine : {‘c’, ‘python’}
0
votes

For me, the other solutions did not work and caused me quite a headache. error_bad_lines=False still gives the error C error: EOF inside string starting at line. Using a different quoting didn't give the desired results either, since I did not want to have quotes in my text.

I realised that there was a bug in Pandas 0.20. Upgrading to version 0.21 completely solved my issue. More info about this bug, see: https://github.com/pandas-dev/pandas/issues/16559

Note: this may be Windows-related as mentioned in the URL.

0
votes

After looking up for a solution for hours, I have finally come up with a workaround.

The best way to eliminate this C error: EOF inside string starting at line exception without multiprocessing efficiency reduction is to preprocess the input data (if you have such an opportunity).

Replace all of the '\n' entries in the input file on, for instance ', ', or on any other unique symbols sequence (for example, 'aghr21*&'). Then you will be able to read_csv the data into your dataframe.

After you have read the data, you may want to replace all of your unique symbols sequences ('aghr21*&'), back on '\n'.

0
votes

Had similar issue while trying to pull data from a Github repository. Simple mistake, was trying to pull data from the git blob (the html rendered part) instead of the raw csv.

If you're pulling data from a git repo, make sure your link doesn't include a '<repo name>/blob' unless you're specifically interested in html code from the repo