I've been trying to use Airflow to schedule a DAG. One of the DAG includes a task which loads data from s3 bucket.

For the purpose above I need to setup s3 connection. But UI provided by airflow isn't that intutive (http://pythonhosted.org/airflow/configuration.html?highlight=connection#connections). Any one succeeded setting up the s3 connection if so are there any best practices you folks follow?



EDIT: This answer stores your secret key in plain text which can be a security risk and is not recommended. The best way is to put access key and secret key in the login/password fields, as mentioned in other answers below. END EDIT

It's hard to find references, but after digging a bit I was able to make it work.


Create a new connection with the following attributes:

Conn Id: my_conn_S3

Conn Type: S3


{"aws_access_key_id":"_your_aws_access_key_id_", "aws_secret_access_key": "_your_aws_secret_access_key_"}

Long version, setting up UI connection:

  • On Airflow UI, go to Admin > Connections
  • Create a new connection with the following attributes:
  • Conn Id: my_conn_S3
  • Conn Type: S3
  • Extra: {"aws_access_key_id":"_your_aws_access_key_id_", "aws_secret_access_key": "_your_aws_secret_access_key_"}
  • Leave all the other fields (Host, Schema, Login) blank.

To use this connection, below you can find a simple S3 Sensor Test. The idea of this test is to set up a sensor that watches files in S3 (T1 task) and once below condition is satisfied it triggers a bash command (T2 task).


  • Before running the DAG, ensure you've an S3 bucket named 'S3-Bucket-To-Watch'.
  • Add below s3_dag_test.py to airflow dags folder (~/airflow/dags)
  • Start airflow webserver.
  • Go to Airflow UI (http://localhost:8383/)
  • Start airflow scheduler.
  • Turn on 's3_dag_test' DAG on the main DAGs view.
  • Select 's3_dag_test' to show the dag details.
  • On the Graph View you should be able to see it's current state.
  • 'check_s3_for_file_in_s3' task should be active and running.
  • Now, add a file named 'file-to-watch-1' to your 'S3-Bucket-To-Watch'.
  • First tasks should have been completed, second should be started and finish.

The schedule_interval in the dag definition is set to '@once', to facilitate debugging.

To run it again, leave everything as it's, remove files in the bucket and try again by selecting the first task (in the graph view) and selecting 'Clear' all 'Past','Future','Upstream','Downstream' .... activity. This should kick off the DAG again.

Let me know how it went.

s3_dag_test.py ;

S3 Sensor Connection Test

from airflow import DAG
from airflow.operators import SimpleHttpOperator, HttpSensor,   BashOperator, EmailOperator, S3KeySensor
from datetime import datetime, timedelta

default_args = {
    'owner': 'airflow',
    'depends_on_past': False,
    'start_date': datetime(2016, 11, 1),
    'email': ['something@here.com'],
    'email_on_failure': False,
    'email_on_retry': False,
    'retries': 5,
    'retry_delay': timedelta(minutes=5)

dag = DAG('s3_dag_test', default_args=default_args, schedule_interval= '@once')

t1 = BashOperator(
    bash_command='echo "hello, it should work" > s3_conn_test.txt',

sensor = S3KeySensor(


Main References:
  • Thank you so much, definitely helped me – Nikhil Reddy Dec 15 '16 at 12:16
  • 1
    Don't use dots in your bucket name it won't work a known issue with boto. – nono Aug 14 '17 at 21:56
  • 2
    Thanks this was helpful. In version 1.8.1+ the imports have changed, e.g. use from airflow.operators.bash_operator import BashOperator and from airflow.operators.sensors import s3KeySensor I also tried to find the file s3_conn_test.txt on the server and it wasn't there. I checked the logs and it looks like the scripts run in some subdirectory of /tmp/ which is subsequently deleted when the task finishes, so it might be better to write to an explicit path that the airflow user has permission to. – Davos Sep 15 '17 at 0:31
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    @Davos it's a capital S not a lower case s for S3KeySensor. – Kyle Bridenstine May 29 '18 at 17:36
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    I wish Anselmo would edit this answer since this is not the right approach anymore. This exposes the secret key/password in plain text. See @Ash's answers below – Gabe Aug 25 '20 at 16:54

Assuming airflow is hosted on an EC2 server.

just create the connection as per other answers but leave everything blank in the configuration apart from connection type which should stay as S3

The S3hook will default to boto and this will default to the role of the EC2 server you are running airflow on. assuming this role has rights to S3 your task will be able to access the bucket.

this is a much safer way than using and storing credentials.

  • One obvious drawback is that you might not want to use a single role though, right? – Frans May 7 '19 at 11:08
  • this saved me big time! thanks a bunch for this comment. We use MFA and I am pretty sure MFA was messing up our authentication, and we were getting AccessDenied for PutObject. If anyone has any ideas about how to make it work when MFA is required, let me know. – Semih Sezer Sep 12 '19 at 22:37

If you are worried about exposing the credentials in the UI, another way is to pass credential file location in the Extra param in UI. Only the functional user has read privileges to the file. It looks something like below

Extra:  {
    "profile": "<profile_name>", 
    "s3_config_file": "/home/<functional_user>/creds/s3_credentials", 
    "s3_config_format": "aws" }

file "/home/<functional_user>/creds/s3_credentials" has below entries

aws_access_key_id = <access_key_id>
aws_secret_access_key = <secret_key>

Another option that worked for me was to put the access key as the "login" and the secret key as the "password":

Conn Id: <arbitrary_conn_id>
Conn Type: S3
Login: <aws_access_key>
Password: <aws_secret_key>

Leave all other fields blank.


We've added this to our docs a few versions ago:


There is no difference between an AWS connection and an S3 connection.

The accepted answer here has key and secret in the extra/JSON, and while that still works (as of 1.10.10) it is not recommended anymore as it displays the secret in plain text in the UI.


For the new version, change the python code on above sample.



  • What is the Conn Id: my_conn_S3? Is that just like s3://name_of_my_bucket? And for bucket_name='S3-Bucket-To-Watch' what if you don't know the name of the file and just want this to sense any new file added? – Kyle Bridenstine May 29 '18 at 17:23
Conn Id: example_s3_connnection
Conn Type: S3
Extra:{"aws_access_key_id":"xxxxxxxxxx", "aws_secret_access_key": "yyyyyyyyyyy"}

Note: Login and Password fields are left empty.

  • Warning - this will have your secret key available in plaintext and can be a security issue! use the answer by @Pat64 above using the login/pw – Gabe Nov 22 '20 at 4:03

For aws in China, It don't work on airflow==1.8.0 need update to 1.9.0 but airflow 1.9.0 change name to apache-airflow==1.9.0

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