I have a pandas DataFrame that I want to upload to a new CSV file. The problem is that I don't want to save the file locally before transferring it to s3. Is there any method like to_csv for writing the dataframe to s3 directly? I am using boto3.
Here is what I have so far:

import boto3
s3 = boto3.client('s3', aws_access_key_id='key', aws_secret_access_key='secret_key')
read_file = s3.get_object(Bucket, Key)
df = pd.read_csv(read_file['Body'])

# Make alterations to DataFrame

# Then export DataFrame to CSV through direct transfer to s3

11 Answers 11


You can use:

from io import StringIO # python3; python2: BytesIO 
import boto3

bucket = 'my_bucket_name' # already created on S3
csv_buffer = StringIO()
s3_resource = boto3.resource('s3')
s3_resource.Object(bucket, 'df.csv').put(Body=csv_buffer.getvalue())
  • 15
    If this is a large file, what does this do to memory...?
    – citynorman
    Jan 3 '18 at 22:33
  • 3
    If the file is bigger then the RAM you have available the action will fail and will except an Exception (don't know which one). This should be accepted as answer
    – Eran Moshe
    Jan 9 '18 at 12:16
  • 7
    I got TypeError: unicode argument expected, got 'str' error while using StringIO. I used BytesIO and it worked perfectly fine. Note: this was in Python 2.7 Feb 1 '18 at 17:42
  • 2
    what is bucket object? how did you create that? Jun 7 '19 at 23:27
  • 1
    bucket is where you store objects on S3. The code assumes you have already created the destination (think: directory) where to store this. See S3 docs
    – Stefan
    Jun 8 '19 at 14:42

You can directly use the S3 path. I am using Pandas 0.24.1

In [1]: import pandas as pd

In [2]: df = pd.DataFrame( [ [1, 1, 1], [2, 2, 2] ], columns=['a', 'b', 'c'])

In [3]: df
   a  b  c
0  1  1  1
1  2  2  2

In [4]: df.to_csv('s3://experimental/playground/temp_csv/dummy.csv', index=False)

In [5]: pd.__version__
Out[5]: '0.24.1'

In [6]: new_df = pd.read_csv('s3://experimental/playground/temp_csv/dummy.csv')

In [7]: new_df
   a  b  c
0  1  1  1
1  2  2  2

Release Note:

S3 File Handling

pandas now uses s3fs for handling S3 connections. This shouldn’t break any code. However, since s3fs is not a required dependency, you will need to install it separately, like boto in prior versions of pandas. GH11915.

  • 9
    this is definitely the easiest answer now, it uses s3fs behind the scenes so you need to add that to your requirements.txt
    – JD D
    Jun 3 '19 at 18:34
  • 3
    I like it is easy, but it seems it's not really working since I keep getting the following error NoCredentialsError: Unable to locate credentials. Any suggestions?
    – CathyQian
    Aug 9 '19 at 18:43
  • 2
    I can confirm this does not work with pandas <= 0.23.4, so be sure to upgrade to pandas 0.24
    – Guido
    Aug 13 '19 at 8:31
  • 1
    This is the error i see when i try to use to_csv command TypeError: write() argument 1 must be unicode, not str
    – Raj
    Sep 1 '19 at 10:27
  • 14
    I'm using pandas 0.24.2 and what I get is NotImplementedError: Text mode not supported, use mode='wb' and manage bytes. any suggestions? Oct 28 '19 at 9:33

I like s3fs which lets you use s3 (almost) like a local filesystem.

You can do this:

import s3fs

bytes_to_write = df.to_csv(None).encode()
fs = s3fs.S3FileSystem(key=key, secret=secret)
with fs.open('s3://bucket/path/to/file.csv', 'wb') as f:

s3fs supports only rb and wb modes of opening the file, that's why I did this bytes_to_write stuff.

  • Great! How can I get the file url using same s3fs module?
    – M.Zaman
    Oct 13 '17 at 12:09
  • I was looking for the URL from where I can download the written file, anyways I get that via S3FileSystem. Thanks
    – M.Zaman
    Oct 17 '17 at 6:26
  • this is what i use; thanks. I am curious why pd.read_csv(<s3path>) works as expected but for writing we have to use this work around.. except in the case that i'm writing directly to the s3 bucket my jupyter is in.
    – Renée
    Aug 29 '18 at 10:44
  • 1
    @michcio1234 how can i do the same in append mode ? I need to append the data in existing csv on s3
    – j '
    Dec 5 '19 at 7:21
  • 1
    @j' s3fs doesn't seem to support append mode. Dec 6 '19 at 10:35

This is a more up to date answer:

import s3fs

s3 = s3fs.S3FileSystem(anon=False)

# Use 'w' for py3, 'wb' for py2
with s3.open('<bucket-name>/<filename>.csv','w') as f:

The problem with StringIO is that it will eat away at your memory. With this method, you are streaming the file to s3, rather than converting it to string, then writing it into s3. Holding the pandas dataframe and its string copy in memory seems very inefficient.

If you are working in an ec2 instant, you can give it an IAM role to enable writing it to s3, thus you dont need to pass in credentials directly. However, you can also connect to a bucket by passing credentials to the S3FileSystem() function. See documention:https://s3fs.readthedocs.io/en/latest/

  • 1
    For some reason when I did this every line was skipped in the output CSV
    – kjmerf
    Aug 20 '19 at 22:40
  • hmm. not sure why that would happen. perhaps try with another pandas df to see if you still get the problem? If your version of pandas supports it, try @amit-kushwaha 's answer, where you pass the s3 url directly to to_csv(). seems like a cleaner implementation.
    – erncyp
    Sep 4 '19 at 9:38
  • @erncyp I seem to be getting there error: botocore.exceptions.ClientError: An error occurred (AccessDenied) when calling the PutObject operation: Access Denied ... I have even made the bucket PUBLIC READ and I have added the following Actions, under my specific account IAM user, in the Bucket Policy:"Action": [ "s3:PutObject", "s3:PutObjectAcl", "s3:GetObject", "s3:GetObjectAcl", "s3:DeleteObject" ]
    – ajoros
    Apr 29 '20 at 9:46
  • seems like you are lacking the permissions? Make sure to attach S3 read write permissions to the IAM role you are using
    – erncyp
    Apr 29 '20 at 10:15
  • @erncyp I have AdministratorAccess policy attached to my IAM user, so in theory I should be able to read/write just fine... Oddly, I am able to write just fine when I use the following function I made, using another StackOverflow user's advice (fyi semi-colons are end-of-line since i dont know how to format in comment section): def send_to_bucket(df, fn_out, bucketname): csv_buffer = StringIO(); df.to_csv(csv_buffer); s3_resource = boto3.resource('s3'); s3_resource.Object(bucketname, fn_out).put(Body=csv_buffer.getvalue());
    – ajoros
    May 1 '20 at 8:12

If you pass None as the first argument to to_csv() the data will be returned as a string. From there it's an easy step to upload that to S3 in one go.

It should also be possible to pass a StringIO object to to_csv(), but using a string will be easier.

  • Will be easier in which way? What is the correct way to do it ?
    – Eran Moshe
    Jan 9 '18 at 13:24
  • @EranMoshe: either way will work correctly, but obviously it's easier to pass None to to_csv() and use the returned string than it is to create a StringIO object and then read the data back out.
    – mhawke
    Jan 10 '18 at 0:26
  • As a lazy programmer that's what I did. And you meant easier for the programmer who writes less code :>
    – Eran Moshe
    Jan 10 '18 at 6:06

You can also use the AWS Data Wrangler:

import awswrangler as wr

Note that it will handle multipart upload for you to make the upload faster.


I found this can be done using client also and not just resource.

from io import StringIO
import boto3
s3 = boto3.client("s3",\
csv_buf = StringIO()
df.to_csv(csv_buf, header=True, index=False)
s3.put_object(Bucket=bucket, Body=csv_buf.getvalue(), Key='path/test.csv')

I use AWS Data Wrangler. For example:

import awswrangler as wr
import pandas as pd

# read a local dataframe
df = pd.read_parquet('my_local_file.gz')

# upload to S3 bucket
wr.s3.to_parquet(df=df, path='s3://mys3bucket/file_name.gz')

The same applies to csv files. Instead of read_parquet and to_parquet, use read_csv and to_csv with the proper file extension.


since you are using boto3.client(), try:

import boto3
from io import StringIO #python3 
s3 = boto3.client('s3', aws_access_key_id='key', aws_secret_access_key='secret_key')
def copy_to_s3(client, df, bucket, filepath):
    csv_buf = StringIO()
    df.to_csv(csv_buf, header=True, index=False)
    client.put_object(Bucket=bucket, Body=csv_buf.getvalue(), Key=filepath)
    print(f'Copy {df.shape[0]} rows to S3 Bucket {bucket} at {filepath}, Done!')

copy_to_s3(client=s3, df=df_to_upload, bucket='abc', filepath='def/test.csv')

I found a very simple solution that seems to be working :

s3 = boto3.client("s3")


Hope that helps !


I read a csv with two columns from bucket s3, and the content of the file csv i put in pandas dataframe.



  "credential": {


#!/usr/bin/env python
# -*- coding: utf-8 -*-

import os
import json

class cls_config(object):

    def __init__(self,filename):

        self.filename = filename

    def getConfig(self):

        fileName = os.path.join(os.path.dirname(__file__), self.filename)
        with open(fileName) as f:
        config = json.load(f)
        return config


#!/usr/bin/env python
# -*- coding: utf-8 -*-

import pandas as pd
import io

class cls_pandas(object):

    def __init__(self):

    def read(self,stream):

        df = pd.read_csv(io.StringIO(stream), sep = ",")
        return df


#!/usr/bin/env python
# -*- coding: utf-8 -*-

import boto3
import json

class cls_s3(object):

    def  __init__(self,access_key,secret_key):

        self.s3 = boto3.client('s3', aws_access_key_id=access_key, aws_secret_access_key=secret_key)

    def getObject(self,bucket,key):

        read_file = self.s3.get_object(Bucket=bucket, Key=key)
        body = read_file['Body'].read().decode('utf-8')
        return body


#!/usr/bin/env python
# -*- coding: utf-8 -*-

from cls_config import *
from cls_s3 import *
from cls_pandas import *

class test(object):

    def __init__(self):
        self.conf = cls_config('config.json')

    def process(self):

        conf = self.conf.getConfig()

        bucket = conf['s3']['bucket']
        key = conf['s3']['key']

        access_key = conf['credential']['access_key']
        secret_key = conf['credential']['secret_key']

        s3 = cls_s3(access_key,secret_key)
        ob = s3.getObject(bucket,key)

        pa = cls_pandas()
        df = pa.read(ob)

        print df

if __name__ == '__main__':
    test = test()
  • 4
    please don't just post the solution, add an explanation of it too.
    – sjaustirni
    Nov 15 '17 at 18:22
  • Is there any advantage on making such a complex (for a newbie in Python) solution? Mar 13 '19 at 13:00
  • 1
    This reads a file from s3, the question was how to write a df to s3. Mar 15 '19 at 22:35

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