when I do curl to a API call link http://example.com/passkey=wedsmdjsjmdd

curl 'http://example.com/passkey=wedsmdjsjmdd'

I get the employee output data on a csv file format, like:


how can parse through this using python.

I tried:

import csv 
cr = csv.reader(open('http://example.com/passkey=wedsmdjsjmdd',"rb"))
for row in cr:
    print row

but it didn't work and I got an error

http://example.com/passkey=wedsmdjsjmdd No such file or directory:


  • Can you access that domain directly? – brbcoding Apr 29 '13 at 16:37
  • 1
    you need to open the url and read it in as a big text string (see urllib/requests) , then I assume you can initialize the csv reader with a string instead of a file object, but I dont know, Ive always used it with an open filehandle. – Joran Beasley Apr 29 '13 at 16:39
  • @brbcoding, yes. I can get csv file when I put the link on the browser. – mongotop Apr 29 '13 at 16:42
  • @JoranBeasley, I think that your method is correct, maybe I need something like this http://processing.org/reference/loadStrings_.html but using python – mongotop Apr 29 '13 at 16:43
  • 5
    FYI: the read_csv function in the pandas library (pandas.pydata.org) accepts URLs. See pandas.pydata.org/pandas-docs/stable/generated/… – Warren Weckesser Apr 29 '13 at 17:35

You need to replace open with urllib.urlopen or urllib2.urlopen.


import csv
import urllib2

url = 'http://winterolympicsmedals.com/medals.csv'
response = urllib2.urlopen(url)
cr = csv.reader(response)

for row in cr:
    print row

This would output the following

Year,City,Sport,Discipline,NOC,Event,Event gender,Medal
1924,Chamonix,Skating,Figure skating,AUT,individual,M,Silver
1924,Chamonix,Skating,Figure skating,AUT,individual,W,Gold
  • 1
    can you pass that to csv_reader ? I guess so ... its pretty "file-like", but I've never done it or even thought to do that – Joran Beasley Apr 29 '13 at 16:45
  • 1
    lol I dunno that I was right I was just asking ... hadn't ever seen that done before – Joran Beasley Apr 29 '13 at 16:47
  • I just assumed that it worked to be honest. Which is crazy as I have used this hundred of times. :D – eandersson Apr 29 '13 at 16:50
  • I think urllib2.urlopen returns a file-like object, so you can probably just remove the .read(), and pass response to the csv.reader. – Dave Challis Apr 29 '13 at 16:50
  • 1
    @mongotop that means it is working... That shows you where the object is in memory. Looks like it only reads a line at a time, so maybe cr.next() inside a loop is what you are looking for. (haven't used csv reader myself...) – brbcoding Apr 29 '13 at 16:55

Using pandas it is very simple to read a csv file directly from a url

import pandas as pd
data = pd.read_csv('https://example.com/passkey=wedsmdjsjmdd')

This will read your data in tabular format, which will be very easy to process

  • This is one of the simplest approach I have come across so far! – Jawairia May 17 '18 at 6:21
  • So long as your CSV file fits into memory, this is okay. – JeffHeaton Apr 20 at 22:23

You could do it with the requests module as well:

url = 'http://winterolympicsmedals.com/medals.csv'
r = requests.get(url)
text = r.iter_lines()
reader = csv.reader(text, delimiter=',')
  • 1
    Works like charm! Thank you for submitting you answer! – mongotop Mar 22 '16 at 18:47
  • 3
    One question. The reader variable is a _csv.reader object. When i iterate through this object to print the contents, I get the following error. Error: iterator should return strings, not bytes (did you open the file in text mode?). How do i read contents of the csvreader object and say load it to a pandas dataframe? – Harikrishna Jan 17 '18 at 21:04
  • 1
    @Harikrishna this is probably problem in Python 3 and this case is answered here: stackoverflow.com/questions/18897029/… – Michal Skop Apr 12 '18 at 1:22

To increase performance when downloading a large file, the below may work a bit more efficiently:

import requests
from contextlib import closing
import csv

url = "http://download-and-process-csv-efficiently/python.csv"

with closing(requests.get(url, stream=True)) as r:
    reader = csv.reader(r.iter_lines(), delimiter=',', quotechar='"')
    for row in reader:
        # Handle each row here...
        print row   

By setting stream=True in the GET request, when we pass r.iter_lines() to csv.reader(), we are passing a generator to csv.reader(). By doing so, we enable csv.reader() to lazily iterate over each line in the response with for row in reader.

This avoids loading the entire file into memory before we start processing it, drastically reducing memory overhead for large files.

  • 1
    This is one great solution! Thank you @The Aelfinn! – mongotop Jul 31 '16 at 21:57
  • 7
    Great solution, but I had to also import codecs and wrap the r.iter_lines() within codecs.iterdecode() like so: codecs.iterdecode(r.iterlines(), 'utf-8') ... in order to solve byte vs str issues, unicode decoding problems and universal new line problems. – Irvin H. Mar 23 '17 at 15:22
import pandas as pd
data = pd.read_csv(url,sep=";") # use sep="," for coma separation. 

enter image description here


what you were trying to do with the curl command was to download the file to your local hard drive(HD). You however need to specify a path on HD

curl http://example.com/passkey=wedsmdjsjmdd -o ./example.csv
cr = csv.reader(open('./example.csv',"r"))
for row in cr:
    print row

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