I am exploring switching to python and pandas as a long-time SAS user.

However, when running some tests today, I was surprised that python ran out of memory when trying to pandas.read_csv() a 128mb csv file. It had about 200,000 rows and 200 columns of mostly numeric data.

With SAS, I can import a csv file into a SAS dataset and it can be as large as my hard drive.

Is there something analogous in pandas?

I regularly work with large files and do not have access to a distributed computing network.


In principle it shouldn't run out of memory, but there are currently memory problems with read_csv on large files caused by some complex Python internal issues (this is vague but it's been known for a long time: http://github.com/pydata/pandas/issues/407).

At the moment there isn't a perfect solution (here's a tedious one: you could transcribe the file row-by-row into a pre-allocated NumPy array or memory-mapped file--np.mmap), but it's one I'll be working on in the near future. Another solution is to read the file in smaller pieces (use iterator=True, chunksize=1000) then concatenate then with pd.concat. The problem comes in when you pull the entire text file into memory in one big slurp.

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    Say I can read the file and concat all of them together into one DataFrame. Does the DataFrame have to reside in memory? With SAS, I can work with datasets of any size as long as I have the hard-drive space. Is it the same with DataFrames? I get the impression they are constrained by RAM and not hard-drive space. Sorry for the noob question and thanks for you help. I'm enjoying your book. – Zelazny7 Jul 24 '12 at 1:46
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    Right, you're constrained by RAM. SAS indeed has much better support for "out-of-core" big data processing. – Wes McKinney Jul 24 '12 at 4:12
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    @WesMcKinney These workarounds shouldn't be needed any longer, because of the new csv loader you landed in 0.10, right? – Gabriel Grant Jul 29 '13 at 11:44

Wes is of course right! I'm just chiming in to provide a little more complete example code. I had the same issue with a 129 Mb file, which was solved by:

from pandas import *

tp = read_csv('large_dataset.csv', iterator=True, chunksize=1000)  # gives TextFileReader, which is iterable with chunks of 1000 rows.
df = concat(tp, ignore_index=True)  # df is DataFrame. If errors, do `list(tp)` instead of `tp`
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    I think you can just do df = concate(tp, ignore_index=True) ? – Andy Hayden Jun 24 '13 at 12:24
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    @AndyHayden: Of course! Fixed that. – fickludd Oct 15 '13 at 12:25
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    I get this error while using it: AssertionError: first argument must be a list-like of pandas objects, you passed an object of type "TextFileReader". Any idea what is happening here? – Prince Kumar Feb 28 '14 at 23:02
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    This bug will be fixed in 0.14 (release soon), github.com/pydata/pandas/pull/6941; workaround for < 0.14.0 is to do pd.concat(list(tp), ignore_index=True) – Jeff Apr 23 '14 at 16:02
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    what if the values are strings or categorical - i am getting the error: incompatible categories in categorical concat – As3adTintin Jun 22 '15 at 17:26

This is an older thread, but I just wanted to dump my workaround solution here. I initially tried the chunksize parameter (even with quite small values like 10000), but it didn't help much; had still technical issues with the memory size (my CSV was ~ 7.5 Gb).

Right now, I just read chunks of the CSV files in a for-loop approach and add them e.g., to an SQLite database step by step:

import pandas as pd
import sqlite3
from pandas.io import sql
import subprocess

# In and output file paths
in_csv = '../data/my_large.csv'
out_sqlite = '../data/my.sqlite'

table_name = 'my_table' # name for the SQLite database table
chunksize = 100000 # number of lines to process at each iteration

# columns that should be read from the CSV file
columns = ['molecule_id','charge','db','drugsnow','hba','hbd','loc','nrb','smiles']

# Get number of lines in the CSV file
nlines = subprocess.check_output('wc -l %s' % in_csv, shell=True)
nlines = int(nlines.split()[0]) 

# connect to database
cnx = sqlite3.connect(out_sqlite)

# Iteratively read CSV and dump lines into the SQLite table
for i in range(0, nlines, chunksize):

    df = pd.read_csv(in_csv,  
            header=None,  # no header, define column header manually later
            nrows=chunksize, # number of rows to read at each iteration
            skiprows=i)   # skip rows that were already read

    # columns to read        
    df.columns = columns

                index=False, # don't use CSV file index
                index_label='molecule_id', # use a unique column from DataFrame as index
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    Super useful to see a realistic use-case for the chunked reading feature. Thanks. – Alex Kestner Jun 30 '15 at 16:37
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    Just a small remark, to this old topic: pandas.read_csv directly returns (at least on the version I'm currently using) an iterator if you simply provide iterator=True and chunksize=chunksize. Hence, you would just do a for loop over the pd.read_csv call, instead of re-instantiating it every time. However, this costs only the call overhead, there maybe no significant impact. – Joël Dec 8 '15 at 15:19
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    Hi, Joel. Thanks for the note! The iterator=True and chunksize parameters already existed back then if I remember correctly. Maybe there was a bug in an older version which caused the memory blow-up -- I will give it another try next time I read a large DataFrame in Pandas (I am mostly using Blaze now for such tasks) – user2489252 Dec 8 '15 at 18:57

Below is my working flow.

import sqlalchemy as sa
import pandas as pd
import psycopg2

count = 0
con = sa.create_engine('postgresql://postgres:pwd@localhost:00001/r')
#con = sa.create_engine('sqlite:///XXXXX.db') SQLite
chunks = pd.read_csv('..file', chunksize=10000, encoding="ISO-8859-1",
                     sep=',', error_bad_lines=False, index_col=False, dtype='unicode')

Base on your file size, you'd better optimized the chunksize.

 for chunk in chunks:
        chunk.to_sql(name='Table', if_exists='append', con=con)
        count += 1

After have all data in Database, You can query out those you need from database.


If you want to load huge csv files, dask might be a good option. It mimics the pandas api, so it feels quite similar to pandas

link to dask on github

  • Thanks, since I posted this I've been using dask and the parquet format. – Zelazny7 Jun 9 '17 at 2:32

You can use Pytable rather than pandas df. It is designed for large data sets and the file format is in hdf5. So the processing time is relatively fast.

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