8

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
6

try this bro:

mylist = []

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

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! – Mitchapp Jul 21 '18 at 22:16
1

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)

Your Answer

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.