75

Here is my code:

import csv
import requests
with requests.Session() as s:
    s.post(url, data=payload)
    download = s.get('url that directly download a csv report')

This gives me the access to the csv file. I tried different method to deal with the download:

This will give the the csv file in one string:

print download.content

This print the first row and return error: _csv.Error: new-line character seen in unquoted field

cr = csv.reader(download, dialect=csv.excel_tab)
for row in cr:
    print row

This will print a letter in each row and it won't print the whole thing:

cr = csv.reader(download.content, dialect=csv.excel_tab)
for row in cr:
    print row

My question is: what's the most efficient way to read a csv file in this situation. And how to download it.

thanks

14 Answers 14

123

This should help:

import csv
import requests

CSV_URL = 'http://samplecsvs.s3.amazonaws.com/Sacramentorealestatetransactions.csv'


with requests.Session() as s:
    download = s.get(CSV_URL)

    decoded_content = download.content.decode('utf-8')

    cr = csv.reader(decoded_content.splitlines(), delimiter=',')
    my_list = list(cr)
    for row in my_list:
        print(row)

Ouput sample:

['street', 'city', 'zip', 'state', 'beds', 'baths', 'sq__ft', 'type', 'sale_date', 'price', 'latitude', 'longitude']
['3526 HIGH ST', 'SACRAMENTO', '95838', 'CA', '2', '1', '836', 'Residential', 'Wed May 21 00:00:00 EDT 2008', '59222', '38.631913', '-121.434879']
['51 OMAHA CT', 'SACRAMENTO', '95823', 'CA', '3', '1', '1167', 'Residential', 'Wed May 21 00:00:00 EDT 2008', '68212', '38.478902', '-121.431028']
['2796 BRANCH ST', 'SACRAMENTO', '95815', 'CA', '2', '1', '796', 'Residential', 'Wed May 21 00:00:00 EDT 2008', '68880', '38.618305', '-121.443839']
['2805 JANETTE WAY', 'SACRAMENTO', '95815', 'CA', '2', '1', '852', 'Residential', 'Wed May 21 00:00:00 EDT 2008', '69307', '38.616835', '-121.439146']
[...]

Related question with answer: https://stackoverflow.com/a/33079644/295246


Edit: Other answers are useful if you need to download large files (i.e. stream=True).

2
  • 7
    Is it necessary to read the entire thing into memory? This seems non-scaleable.
    – JeffHeaton
    Commented Jul 31, 2019 at 13:45
  • I notice this doesn't always maintain structure of csv. I'm downloading a csv with a Notes column and the notes have newlines in them. Using this solution, all newlines are ignored and its not ideal
    – West
    Commented Feb 28, 2022 at 2:58
40

To simplify these answers, and increase performance when downloading a large file, the below may work a bit more efficiently.

import requests
from contextlib import closing
import csv
from codecs import iterdecode

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

with closing(requests.get(url, stream=True)) as r:
    reader = iterdecode(csv.reader(r.iter_lines(), 'utf-8'), 
                        delimiter=',', 
                        quotechar='"')
    for row in reader:
        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.

3
  • 19
    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.
    Commented Mar 23, 2017 at 15:20
  • Thanks @IrvinH. , I ran into the same problem. btw it should be r.iter_lines() you missed the underscore.
    – linqu
    Commented Feb 15, 2018 at 8:27
  • 4
    On Python 3.7 this results in: error: iterator should return strings, not bytes (did you open the file in text mode?)
    – JeffHeaton
    Commented Jul 31, 2019 at 13:47
16

I like the answers from The Aelfinn and aheld. I can improve them only by shortening a bit more, removing superfluous pieces, using a real data source, making it 2.x & 3.x-compatible, and maintaining the high-level of memory-efficiency seen elsewhere:

import csv
import requests

CSV_URL = 'http://web.cs.wpi.edu/~cs1004/a16/Resources/SacramentoRealEstateTransactions.csv'

with requests.get(CSV_URL, stream=True) as r:
    lines = (line.decode('utf-8') for line in r.iter_lines())
    for row in csv.reader(lines):
        print(row)

Too bad 3.x is less flexible CSV-wise because the iterator must emit Unicode strings (while requests does bytes) while the 2.x-only version—for row in csv.reader(r.iter_lines()):—is more Pythonic (shorter and easier-to-read). Anyhow, note the 2.x/3.x solution above won't handle the situation described by the OP where a NEWLINE is found unquoted in the data read.

For the part of the OP's question regarding downloading (vs. processing) the actual CSV file, here's another script that does that, 2.x & 3.x-compatible, minimal, readable, and memory-efficient:

import os
import requests

CSV_URL = 'http://web.cs.wpi.edu/~cs1004/a16/Resources/SacramentoRealEstateTransactions.csv'

with open(os.path.split(CSV_URL)[1], 'wb') as f, \
        requests.get(CSV_URL, stream=True) as r:
    for line in r.iter_lines():
        f.write(line+'\n'.encode())
4
  • 2
    Best answer! Works great with latest version of Python.
    – JeffHeaton
    Commented Jul 31, 2019 at 13:50
  • To support the widest audience, it should work with all currently-deployed versions of Python, not just the latest... thx though! :-) (min version is 2.6)
    – wescpy
    Commented Jun 16, 2020 at 23:20
  • 1
    For downloading, I think most users will want f.write(line + '\n'.encode()) - currently your example writes one enormous line which won't be easily loaded back into memory by a CSV reader Commented Jan 21, 2021 at 14:29
  • 1
    Thx for spotting that. I normally try to take advantage of the "free" \n that comes w/text files but neglected to recall that respectable libraries drop those for the purpose of data-scrubbing, requiring us to add them back when creating our own files w/such data.
    – wescpy
    Commented Jan 23, 2021 at 19:28
10

You can also use the DictReader to iterate dictionaries of {'columnname': 'value', ...}

import csv
import requests

response = requests.get('http://example.test/foo.csv')
reader = csv.DictReader(response.iter_lines())
for record in reader:
    print(record)
2
  • _csv.Error: iterator should return strings, not bytes (the file should be opened in text mode) Commented Sep 9, 2022 at 8:21
  • This should be a comment, not a separate answer.
    – bfontaine
    Commented Aug 11, 2023 at 16:44
6

I use this code (I use Python 3):

import csv
import io
import requests

url = "http://samplecsvs.s3.amazonaws.com/Sacramentorealestatetransactions.csv"
r = requests.get(url)
r.encoding = 'utf-8'  # useful if encoding is not sent (or not sent properly) by the server
csvio = io.StringIO(r.text, newline="")
data = []
for row in csv.DictReader(csvio):
    data.append(row)
1
  • Thanks. I just had to change the encoding to "utf-8-sig" and it worked.
    – LucianoBAF
    Commented Mar 7, 2023 at 19:45
5

To convert to Pandas DataFrame:

from io import StringIO
text=StringIO(download.content.decode('utf-8'))
df=pd.read_csv(text)
4

From a little search, that I understand the file should be opened in universal newline mode, which you cannot directly do with a response content (I guess).

To finish the task, you can either save the downloaded content to a temporary file, or process it in memory.

Save as file:

import requests
import csv
import os

temp_file_name = 'temp_csv.csv'
url = 'http://url.to/file.csv'
download = requests.get(url)

with open(temp_file_name, 'w') as temp_file:
    temp_file.writelines(download.content)

with open(temp_file_name, 'rU') as temp_file:
    csv_reader = csv.reader(temp_file, dialect=csv.excel_tab)
    for line in csv_reader:
        print line

# delete the temp file after process
os.remove(temp_file_name)

In memory:

(To be updated)

3

You can update the accepted answer with the iter_lines method of requests if the file is very large

import csv
import requests

CSV_URL = 'http://samplecsvs.s3.amazonaws.com/Sacramentorealestatetransactions.csv'

with requests.Session() as s:
    download = s.get(CSV_URL)

    line_iterator = (x.decode('utf-8') for x in download.iter_lines(decode_unicode=True))

    cr = csv.reader(line_iterator, delimiter=',')
    my_list = list(cr)
    for row in my_list:
        print(row)
2

I used below solution (Unfortunately others did not work for me):

import pandas as pd 
df = pd.read_csv('http://.../file.csv') 
1
  • 1
    While this code may solve the question, including an explanation of how and why this solves the problem would really help to improve the quality of your post, and probably result in more up-votes. Remember that you are answering the question for readers in the future, not just the person asking now. Please edit your answer to add explanations and give an indication of what limitations and assumptions apply.
    – Yunnosch
    Commented Feb 2, 2022 at 11:45
1

The following approach worked well for me. I also did not need to use csv.reader() or csv.writer() functions, which I feel makes the code cleaner. The code is compatible with Python2 and Python 3.

from six.moves import urllib

DOWNLOAD_URL = "https://raw.githubusercontent.com/gjreda/gregreda.com/master/content/notebooks/data/city-of-chicago-salaries.csv"
DOWNLOAD_PATH ="datasets\city-of-chicago-salaries.csv" 
urllib.request.urlretrieve(URL,DOWNLOAD_PATH)

Note - six is a package that helps in writing code that is compatible with both Python 2 and Python 3. For additional details regarding six see - What does from six.moves import urllib do in Python?

1

Python3 Supported Code

    with closing(requests.get(PHISHTANK_URL, stream=True})) as r:
        reader = csv.reader(codecs.iterdecode(r.iter_lines(), 'utf-8'), delimiter=',', quotechar='"')
        for record in reader:
           print (record)
0

this worked nicely for me:

from csv import DictReader

f = requests.get('https://somedomain.com/file').content.decode('utf-8')
reader = DictReader(f.split('\n'))
csv_dict_list = list(reader)
1
  • This loads everything in memory at once, though.
    – bfontaine
    Commented Aug 11, 2023 at 16:15
0

Python 3.x:

For anyone trying the solutions above, if you are getting a \ufeff at every new line, just change the encoding from utf-8 to utf-8-sig.

If you only want the CSV in string format, simply access the .text property of the request, like this:

req = requests.get("https: ...")
req.encoding = 'utf-8-sig'
csv_data = req.text
0

There are 2 ways to handle the csv data

To download csv data into a DataFrame

url = 'https://cdn.wsform.com/wp-content/uploads/2020/06/color_srgb.csv'

import pandas as pd

df = pd.read_csv(url)
print(df.head())

You should be able to see the output:

     Name      HEX               RGB
0   White  #FFFFFF  rgb(100,100,100)
1  Silver  #C0C0C0     rgb(75,75,75)
2    Gray  #808080     rgb(50,50,50)
3   Black  #000000        rgb(0,0,0)
4     Red  #FF0000      rgb(100,0,0)

To download csv data into a csv file

import requests
import os

resp = requests.get(url)
with open('temp.csv', 'w') as f:
    f.write(resp.content.decode('utf-8'))
print('File saved in:', os.getcwd())

You should be able to see the saved file in the current working directory (use os.getcwd() to see the current working directory)

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