I uploaded a file to Google spreadsheets (to make a publically accessible example IPython Notebook, with data) I was using the file in it's native form could be read into a Pandas Dataframe. So now I use the following code to read the spreadsheet, works fine but just comes in as string,, and I'm not having any luck trying to get it back into a dataframe (you can get the data)

import requests
r = requests.get('https://docs.google.com/spreadsheet/ccc?key=0Ak1ecr7i0wotdGJmTURJRnZLYlV3M2daNTRubTdwTXc&output=csv')
data = r.content

The data ends up looking like: (1st row headers)


The native pandas code that brings in the disk resident file looks like:

df = pd.io.parsers.read_csv('/home/tom/Dropbox/Projects/annonallanswerswithmaster1012013.csv',index_col=0,parse_dates=['Quradate'])

A "clean" solution would be helpful to many to provide an easy way to share datasets for Pandas use! I tried a bunch of alternative with no success and I'm pretty sure I'm missing something obvious again.

Just a Update note The new Google spreadsheet has a different URL pattern Just use this in place of the URL in the above example and or the below answer and you should be fine here is an example:


see solution below from @Max Ghenis which just used pd.read_csv, no need for StringIO or requests...

  • 1
    how did you get the csv link from drive to begin with?
    – Mugen
    Commented Dec 10, 2018 at 16:03
  • Just open the spreadsheet in your browser and copy the URL
    – dartdog
    Commented Dec 10, 2018 at 21:06
  • the URL ends with /edit?ts=5c0e311e#gid=0 and the sharing link ends with /edit?usp=sharing, none have csv and both give 404 when requested by pandas code
    – Mugen
    Commented Dec 11, 2018 at 6:57
  • use the download as csv on the docs menus
    – dartdog
    Commented Dec 12, 2018 at 22:29

10 Answers 10


Seems to work for me without the StringIO:

test = pd.read_csv('https://docs.google.com/spreadsheets/d/' + 
                   '0Ak1ecr7i0wotdGJmTURJRnZLYlV3M2daNTRubTdwTXc' +
                   # Set first column as rownames in data frame
                   # Parse column values to datetime
test.head(5)  # Same result as @TomAugspurger

BTW, including the ?gid= enables importing different sheets, find the gid in the URL.

  • 1
    Maybe just add comments as to what index_col and parse_dates do? Also, maybe this is obvious, but I think this only works if the Spreadsheet is public; I believe if it's not, you'll have to use the API.
    – getup8
    Commented Sep 7, 2016 at 4:44
  • 4
    Great solution. Works when a sheet is shared as "Anyone on the Internet with this link can view". Note that index_col and parse_dates arguments are optional.
    – Dylan Hogg
    Commented Jul 4, 2020 at 11:24
  • 4
    it only works when the SPREADSHEET IS PUBLIC Commented Sep 9, 2022 at 11:52

You can use read_csv() on a StringIO object:

from io import BytesIO

import requests
import pandas as pd

r = requests.get('https://docs.google.com/spreadsheet/ccc?key=0Ak1ecr7i0wotdGJmTURJRnZLYlV3M2daNTRubTdwTXc&output=csv')
data = r.content
In [10]: df = pd.read_csv(BytesIO(data), index_col=0,parse_dates=['Quradate'])

In [11]: df.head()
          City                                            region     Res_Comm  \
0       Dothan  South_Central-Montgomery-Auburn-Wiregrass-Dothan  Residential   
10       Foley                              South_Mobile-Baldwin  Residential   
12  Birmingham      North_Central-Birmingham-Tuscaloosa-Anniston   Commercial   
38       Brent      North_Central-Birmingham-Tuscaloosa-Anniston  Residential   
44      Athens                 North_Huntsville-Decatur-Florence  Residential   

          mkt_type            Quradate  National_exp  Alabama_exp  Sales_exp  \
0            Rural 2010-01-15 00:00:00             2            2          3   
10  Suburban_Urban 2010-01-15 00:00:00             4            4          4   
12  Suburban_Urban 2010-01-15 00:00:00             2            2          3   
38           Rural 2010-01-15 00:00:00             3            3          3   
44  Suburban_Urban 2010-01-15 00:00:00             4            5          4   

    Inventory_exp  Price_exp  Credit_exp  
0               2          3           3  
10              4          4           3  
12              2          2           3  
38              3          3           2  
44              4          4           4  
  • 1
    I was looking for weeks how to import a spreadsheet into pandas. never heard of requests or StringIO libraries. Thank you!!
    – moldovean
    Commented Apr 19, 2014 at 11:40
  • Note the new URL format in the bottom of the original question above it is needed for the new Google spreadsheet version
    – dartdog
    Commented Jun 6, 2014 at 5:35
  • 5
    To clarify "got moved around in python3 if you're using that": from io import StringIO
    – ezcodr
    Commented Jul 27, 2014 at 5:45
  • Thanks! But I had to use this form of google url for csv output: stackoverflow.com/a/23702001/507544
    – nealmcb
    Commented Jun 3, 2015 at 14:44
  • How can one specify the sheet (i.e. #gid=x in URL)? Adding it to the URL itself after key= didn't work.
    – Max Ghenis
    Commented Feb 6, 2016 at 20:08

Open the specific sheet you want in your browser. Make sure it's at least viewable by anyone with the link. Copy and paste the URL. You'll get something like https://docs.google.com/spreadsheets/d/BLAHBLAHBLAH/edit#gid=NUMBER.

sheet_url = 'https://docs.google.com/spreadsheets/d/BLAHBLAHBLAH/edit#gid=NUMBER'

First we turn that into a CSV export URL, like https://docs.google.com/spreadsheets/d/BLAHBLAHBLAH/export?format=csv&gid=NUMBER:

csv_export_url = sheet_url.replace('/edit#gid=', '/export?format=csv&gid=')

Then we pass it to pd.read_csv, which can take a URL.

df = pd.read_csv(csv_export_url)

This will break if Google changes its API (it seems undocumented), and may give unhelpful errors if a network failure occurs.

  • This code returns a HTML page for download the csv, not the csv file from gsheet.
    – diegodsp
    Commented Jul 15, 2020 at 12:02
  • 16
    I am getting ParserError: Error tokenizing data. C error: Expected 1 fields in line 6, saw 2
    – rsc05
    Commented Jan 31, 2021 at 10:42
  • Did you make sure access is set to "anyone with the link"
    – Raisin
    Commented Apr 16, 2023 at 2:19

My approach is a bit different. I just used pandas.Dataframe() but obviously needed to install and import gspread. And it worked fine!

gsheet = gs.open("Name")
Sheet_name ="today"
wsheet = gsheet.worksheet(Sheet_name)
dataframe = pd.DataFrame(wsheet.get_all_records())
  • Nice..The interface keeps getting cleaner!
    – dartdog
    Commented Jan 2, 2018 at 15:06
  • 5
    just to clarify, gs would be gs = gspread.authorize(credentials)
    – RAbraham
    Commented Mar 4, 2019 at 20:05

I have been using the following utils and it worked so far:

def load_from_gspreadsheet(sheet_name, key):
    url = 'https://docs.google.com/spreadsheets/d/{key}/gviz/tq?tqx=out:csv&sheet={sheet_name}&headers=1'.format(
        key=key, sheet_name=sheet_name.replace(' ', '%20'))

    log.info('Loading google spreadsheet from {}'.format(url))

    df = pd.read_csv(url)
    return df.drop([col for col in df.columns if col.startswith('Unnamed')], axis=1)

You must specify the sheet_name and the key. The key is the string you get from the url in the following path: https://docs.google.com/spreadsheets/d/{key}/edit/.

You can change the value of headers if you have more than one row for the column names but I am not sure if it still work with multi-headers.

It may brake if Google will change their APIs.

Also please bear in mind that your spreadsheet must be public, everyone with the link can read it.



import pandas as pd
  • underrated but simple answer. Commented Jan 20, 2022 at 5:55
  • This worked for me, thanks! But this reads only the first sheet. How could I read all the sheets? Commented Feb 27, 2022 at 15:42

Straight to the point:

  • Get your google URL

https://docs.google.com/spreadsheets/d/ this is your sheet ID number/edit?gid=This will be your tab name, it will be a number. Each tab has its own

I like to make a function(not making here) so I separate my variables

  • sheet_id = "Place your sheet ID here"
  • sheet_name = "Place your sheet # here"

the next URL is the tricky part:

url = f"https://docs.google.com/spreadsheets/d/{sheet_id}/export?gid={sheet_name}&format=csv"

Then just read it in

df = pd.csv(url)

That's it. If you need to select a different row as a header you can do this

df = pd.csv(url, header=1)

  • 2
    use "df = pd.read_csv(url)" instead of "df = pd.csv(url)". Commented Mar 12, 2023 at 16:00
  • Great point @RobbDunlap I can not remember why I used pd.csv and not put "read" in there.
    – JQTs
    Commented Mar 13, 2023 at 17:07

If the csv file was shared via drive and not via spreadsheet then the below change to the url would work

#Derive the id from the google drive shareable link.
#For the file at hand the link is as below
#The final url would be as below:-
df = pd.read_csv(csv_url)

And the dataframe would be (if you just ran the above code)

    a   b   c   d
0   0   1   2   3
1   4   5   6   7
2   8   9   10  11
3   12  13  14  15

See working code here.


This works for me.

import pandas as pd

#Create a public URL

#get spreadsheets key from url
gsheetkey = "0Ak1ecr7i0wotdGJmTURJRnZLYlV3M2daNTRubTdwTXc"

#sheet name
sheet_name = 'Sheet 1'

df = pd.read_excel(url,sheet_name=sheet_name)

In Google Sheets file go to File > Publish to the web > Select .csv (see screenshot) > Copy link

Google Sheets: Publish to web


import pandas as pd

path = 'https://docs.google.com/spreadsheets/d/e/2PACX-1vSvmELTzIjfSmX8GuV3HE2qomN3uRyvPX8RDzpw77JH33DUbj1bjech7H6NYPArvpZFux0DdJ5L5TKy/pub?output=csv'
data = pd.read_csv(path)

Code in Google Colab

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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