195

Anyone know of a simple library or function to parse a csv encoded string and turn it into an array or dictionary?

I don't think I want the built in csv module because in all the examples I've seen that takes filepaths, not strings.

10 Answers 10

277

You can convert a string to a file object using io.StringIO and then pass that to the csv module:

from io import StringIO
import csv

scsv = """text,with,Polish,non-Latin,letters
1,2,3,4,5,6
a,b,c,d,e,f
gęś,zółty,wąż,idzie,wąską,dróżką,
"""

f = StringIO(scsv)
reader = csv.reader(f, delimiter=',')
for row in reader:
    print('\t'.join(row))

simpler version with split() on newlines:

reader = csv.reader(scsv.split('\n'), delimiter=',')
for row in reader:
    print('\t'.join(row))

Or you can simply split() this string into lines using \n as separator, and then split() each line into values, but this way you must be aware of quoting, so using csv module is preferred.

On Python 2 you have to import StringIO as

from StringIO import StringIO

instead.

| improve this answer | |
  • 7
    the split method wouldn't work if his csv file contained strings which contained commas – Carson Myers Jul 22 '10 at 5:21
  • 3
    or quoted strings as values (with or without commas) – adamk Jul 22 '10 at 5:32
  • 28
    Python 3 now uses io.StringIO. (Hopefully save Python 3 users a little time). so import io and io.StringIO. – JStrahl Jul 20 '12 at 10:08
  • 4
    Instead of .split('\n'), you can use .splitlines(). – Denilson Sá Maia Sep 24 '14 at 23:06
  • 1
    No, it works very well with Polish letters with ogonki :-) – Michał Niklas Jul 18 '17 at 5:25
70

Simple - the csv module works with lists, too:

>>> a=["1,2,3","4,5,6"]  # or a = "1,2,3\n4,5,6".split('\n')
>>> import csv
>>> x = csv.reader(a)
>>> list(x)
[['1', '2', '3'], ['4', '5', '6']]
| improve this answer | |
  • 4
    Good to know, but keep in mind that .split('\n') will do odd things if your fields contain newlines. – Inaimathi Apr 15 '13 at 14:52
  • 1
    @Inaimathi, If it's csv, the newlines inside should be escaped. – John La Rooy Dec 15 '15 at 20:55
  • 1
    Newlines don't need to be escaped if the field is quoted. – Jonathan Stray Jan 31 '17 at 17:36
  • 1
    This functionality is not well documented. Thank you. – cowlinator Apr 9 '19 at 20:59
15

The official doc for csv.reader() https://docs.python.org/2/library/csv.html is very helpful, which says

file objects and list objects are both suitable

import csv

text = """1,2,3
a,b,c
d,e,f"""

lines = text.splitlines()
reader = csv.reader(lines, delimiter=',')
for row in reader:
    print('\t'.join(row))
| improve this answer | |
10
>>> a = "1,2"
>>> a
'1,2'
>>> b = a.split(",")
>>> b
['1', '2']

To parse a CSV file:

f = open(file.csv, "r")
lines = f.read().split("\n") # "\r\n" if needed

for line in lines:
    if line != "": # add other needed checks to skip titles
        cols = line.split(",")
        print cols
| improve this answer | |
  • 'Simple is better than complex!' – Abdelouahab Dec 6 '14 at 2:18
  • 10
    -1 The issue with this solution is that it doesn't take into account of "string escaping," i.e. 3, "4,5,6, 6 shall be treated as three fields instead of five. – Zz'Rot Feb 9 '16 at 4:16
  • Simple but only works in some specific cases, this is not generic CSV parsing code – Christophe Roussy May 3 '16 at 11:47
8

As others have already pointed out, Python includes a module to read and write CSV files. It works pretty well as long as the input characters stay within ASCII limits. In case you want to process other encodings, more work is needed.

The Python documentation for the csv module implements an extension of csv.reader, which uses the same interface but can handle other encodings and returns unicode strings. Just copy and paste the code from the documentation. After that, you can process a CSV file like this:

with open("some.csv", "rb") as csvFile: 
    for row in UnicodeReader(csvFile, encoding="iso-8859-15"):
        print row
| improve this answer | |
  • Make sure the Unicode file does not have a BOM (Byte Order Marker) – Pierre Oct 13 '14 at 14:04
  • 1
    Concerning BOM: Python should detect and skip official BOMs in UTF-32, UTF-16 etc. To skip the unofficial Microsoft BOM for UTF-8, use 'utf-8-sig' as codec instead of 'utf-8'. – roskakori Dec 7 '14 at 7:00
7

Per the documentation:

And while the module doesn’t directly support parsing strings, it can easily be done:

import csv
for row in csv.reader(['one,two,three']):
    print row

Just turn your string into a single element list.

Importing StringIO seems a bit excessive to me when this example is explicitly in the docs.

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3

https://docs.python.org/2/library/csv.html?highlight=csv#csv.reader

csvfile can be any object which supports the iterator protocol and returns a string each time its next() method is called

Thus, a StringIO.StringIO(), str.splitlines() or even a generator are all good.

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2

Here's an alternative solution:

>>> import pyexcel as pe
>>> text="""1,2,3
... a,b,c
... d,e,f"""
>>> s = pe.load_from_memory('csv', text)
>>> s
Sheet Name: csv
+---+---+---+
| 1 | 2 | 3 |
+---+---+---+
| a | b | c |
+---+---+---+
| d | e | f |
+---+---+---+
>>> s.to_array()
[[u'1', u'2', u'3'], [u'a', u'b', u'c'], [u'd', u'e', u'f']]

Here's the documentation

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2

Use this to have a csv loaded into a list

import csv

csvfile = open(myfile, 'r')
reader = csv.reader(csvfile, delimiter='\t')
my_list = list(reader)
print my_list
>>>[['1st_line', '0'],
    ['2nd_line', '0']]
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0

Panda is quite powerful and smart library reading CSV in Python

A simple example here, I have example.zip file with four files in it.

EXAMPLE.zip
 -- example1.csv
 -- example1.txt
 -- example2.csv
 -- example2.txt

from zipfile import ZipFile
import pandas as pd


filepath = 'EXAMPLE.zip'
file_prefix = filepath[:-4].lower()

zipfile = ZipFile(filepath)
target_file = ''.join([file_prefix, '/', file_prefix, 1 , '.csv'])

df = pd.read_csv(zipfile.open(target_file))

print(df.head()) # print first five row of csv
print(df[COL_NAME]) # fetch the col_name data

Once you have data you can manipulate to play with a list or other formats.

| improve this answer | |

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