I have a large csv file of 3.5 go and I want to read it using pandas.

This is my code:

import pandas as pd
tp = pd.read_csv('train_2011_2012_2013.csv', sep=';', iterator=True, chunksize=20000000, low_memory = False)
df = pd.concat(tp, ignore_index=True)

I get this error:

pandas/parser.pyx in pandas.parser.TextReader.read (pandas/parser.c:8771)()

pandas/parser.pyx in pandas.parser.TextReader._read_rows (pandas/parser.c:9731)()

pandas/parser.pyx in pandas.parser.TextReader._tokenize_rows (pandas/parser.c:9602)()

pandas/parser.pyx in pandas.parser.raise_parser_error (pandas/parser.c:23325)()

CParserError: Error tokenizing data. C error: out of 

The capacity of my ram is 8 Go.

  • what about just pd.read_csv('train_2011_2012_2013.csv', sep=';') ? – Boud Dec 23 '16 at 14:35
  • In addition to any other suggestions, you should also specify dtypes. – 3novak Dec 23 '16 at 14:49
  • @Boud my computer don't support it – Amal Kostali Targhi Dec 23 '16 at 21:42
  • Noobie's answer above is using even more memory because you are loading a chunk and appending it to mylist (creating a second copy of the data). You should read in a chunk , process it, store the result , then continue reading next chunk. Also , setting dtype for columns will reduce memory. – marneezy May 23 '17 at 18:55

try this bro:

mylist = []

for chunk in  pd.read_csv('train_2011_2012_2013.csv', sep=';', chunksize=20000):

big_data = pd.concat(mylist, axis= 0)
del mylist
  • Thanks for your help but there an error in big_data = pd.concat(mylist, axis=0) out = np.empty(out_shape, dtype=dtype, order='F') 929 else: --> 930 out = np.empty(out_shape, dtype=dtype) 931 932 func = _get_take_nd_function(arr.ndim, arr.dtype, out.dtype, axis=axis, MemoryError: – Amal Kostali Targhi Dec 23 '16 at 16:53
  • Loaded 3G CVS successfully! Thanks! – hzitoun Jul 21 '18 at 22:16

You may try setting error_bad_lines = False when calling the csv file i.e.

import pandas as pd
df = pd.read_csv('my_big_file.csv', error_bad_lines = False)

This error could also be caused by the chunksize=20000000. Decreasing that fixed the issue in my case. In ℕʘʘḆḽḘ's solution chunksize is also decreased which might have done the trick.

  • If it is already answered in ℕʘʘḆḽḘ's solution then just comment this. No need to put it as an answer. – Mark Mar 5 at 8:13
  • 1
    I wanted to do that but didn't have enough reputation. Just wanted to leave this info for future reference, I haven't found it when I was googling for this error – Justas Mar 5 at 10:58

This site is temporarily in read only mode and not accepting new answers.

Not the answer you're looking for? Browse other questions tagged .