I am using docker-compose to set up a scalable airflow cluster. I based my approach off of this Dockerfile https://hub.docker.com/r/puckel/docker-airflow/

My problem is getting the logs set up to write/read from s3. When a dag has completed I get an error like this

*** Log file isn't local.
*** Fetching here: http://ea43d4d49f35:8793/log/xxxxxxx/2017-06-26T11:00:00
*** Failed to fetch log file from worker.

*** Reading remote logs...
Could not read logs from s3://buckets/xxxxxxx/airflow/logs/xxxxxxx/2017-06-

I set up a new section in the airflow.cfg file like this

aws_access_key_id = xxxxxxx
aws_secret_access_key = xxxxxxx
aws_default_region = xxxxxxx

And then specified the s3 path in the remote logs section in airflow.cfg

remote_base_log_folder = s3://buckets/xxxx/airflow/logs
remote_log_conn_id = MyS3Conn

Did I set this up properly and there is a bug? Is there a recipe for success here that I am missing?

-- Update

I tried exporting in URI and JSON formats and neither seemed to work. I then exported the aws_access_key_id and aws_secret_access_key and then airflow started picking it up. Now I get his error in the worker logs

6/30/2017 6:05:59 PMINFO:root:Using connection to: s3
6/30/2017 6:06:00 PMERROR:root:Could not read logs from s3://buckets/xxxxxx/airflow/logs/xxxxx/2017-06-30T23:45:00
6/30/2017 6:06:00 PMERROR:root:Could not write logs to s3://buckets/xxxxxx/airflow/logs/xxxxx/2017-06-30T23:45:00
6/30/2017 6:06:00 PMLogging into: /usr/local/airflow/logs/xxxxx/2017-06-30T23:45:00

-- Update

I found this link as well https://www.mail-archive.com/dev@airflow.incubator.apache.org/msg00462.html

I then shelled into one of my worker machines (separate from the webserver and scheduler) and ran this bit of code in python

import airflow
s3 = airflow.hooks.S3Hook('s3_conn')
s3.load_string('test', airflow.conf.get('core', 'remote_base_log_folder'))

I receive this error.

boto.exception.S3ResponseError: S3ResponseError: 403 Forbidden

I tried exporting several different types of AIRFLOW_CONN_ envs as explained here in the connections section https://airflow.incubator.apache.org/concepts.html and by other answers to this question.




I have also exported AWS_ACCESS_KEY_ID and AWS_SECRET_ACCESS_KEY with no success.

These credentials are being stored in a database so once I add them in the UI they should be picked up by the workers but they are not able to write/read logs for some reason.

  • At this point I will take any strategy to get logging to work. I can't get them locally, on s3, or using rfs – JackStat Jul 7 '17 at 14:04
  • Does the folder 'logs' exist at the path? At least the local logs should work without any problems if the folder exists. If they don't work even locally, the only other reason I can think of is incorrect permissions on the airflow folder. – Him Jul 8 '17 at 9:14
  • We might have something here.github.com/puckel/docker-airflow/pull/100 – JackStat Jul 9 '17 at 15:15
up vote 12 down vote accepted

You need to set up the s3 connection through airflow UI. For this, you need to go to the Admin -> Connections tab on airflow UI and create a new row for your S3 connection.

An example configuration would be:

Conn Id: my_conn_S3

Conn Type: S3

Extra: {"aws_access_key_id":"your_aws_key_id", "aws_secret_access_key": "your_aws_secret_key"}

  • 1
    Ok I will try that as well. The issue with it is that we have everything dockerized so every time we upgraded the image we would have a manual step – JackStat Jun 28 '17 at 12:03
  • You can export an environment variable through dockerfile, which is picked up by airflow as connection parameter stackoverflow.com/a/44708691/2879084 – Him Jun 28 '17 at 12:06
  • 1
    Did these settings work from UI? If yes, I can add more details on automatically configuring it. – Him Jul 3 '17 at 13:05
  • I added more edits to the question. Let me know if that provides more clarity. This is a frustrating one haha – JackStat Jul 3 '17 at 16:19
  • 1
    It feels a bit wrong that the connection requires entering a key id and secret key. I suppose it makes it more portable that way. Another option is that the boto3 library is able to create an S3Client without specifying the keyid & secret on a machine that has had the aws configure setup performed. Getting that to work would involve changing the s3 hook though, probably not worth it. boto3.readthedocs.io/en/latest/guide/… – Davos Aug 24 '17 at 8:00

NOTE: As of Airflow 1.9.0 remote logging has been significantly altered. There are plans to make logging easier in future - e.g. autodetect cloud provider from a bucket string. These changes are not live yet, but keep a close eye on releases. If you are using 1.9.0, read on.

Reference here

Complete Instructions:

  1. Create a directory to store configs and place this so that it can be found in PYTHONPATH. One example is $AIRFLOW_HOME/config

  2. Create empty files called $AIRFLOW_HOME/config/log_config.py and $AIRFLOW_HOME/config/__init__.py

  3. Copy the contents of airflow/config_templates/airflow_local_settings.py into the log_config.py file that was just created in the step above.

  4. Customize the following portions of the template:

    #Add this variable to the top of the file. Note the trailing slash.
    S3_LOG_FOLDER = 's3://<bucket where logs should be persisted>/'
    Add a S3TaskHandler to the 'handlers' block of the LOGGING_CONFIG variable
    's3.task': {
        'class': 'airflow.utils.log.s3_task_handler.S3TaskHandler',
        'formatter': 'airflow.task',
        'base_log_folder': os.path.expanduser(BASE_LOG_FOLDER),
        's3_log_folder': S3_LOG_FOLDER,
        'filename_template': FILENAME_TEMPLATE,
     Update the airflow.task and airflow.task_runner blocks to be 's3.task' instead >of 'file.task'.
    'loggers': {
        'airflow.task': {
            'handlers': ['s3.task'],
        'airflow.task_runner': {
            'handlers': ['s3.task'],
        'airflow': {
            'handlers': ['console'],
  5. Make sure a s3 connection hook has been defined in Airflow, as per the above answer. The hook should have read and write access to the s3 bucket defined above in S3_LOG_FOLDER.

  6. Update $AIRFLOW_HOME/airflow.cfg to contain:

    task_log_reader = s3.task
    logging_config_class = log_config.LOGGING_CONFIG
    remote_log_conn_id = <name of the s3 platform hook>
  7. Restart the Airflow webserver and scheduler, and trigger (or wait for) a new task execution.

  8. Verify that logs are showing up for newly executed tasks in the bucket you’ve defined.

  9. Verify that the s3 storage viewer is working in the UI. Pull up a newly executed task, and verify that you see something like:

    *** Reading remote log from gs://<bucket where logs should be persisted>/example_bash_operator/run_this_last/2017-10-03T00:00:00/16.log.
    [2017-10-03 21:57:50,056] {cli.py:377} INFO - Running on host chrisr-00532
    [2017-10-03 21:57:50,093] {base_task_runner.py:115} INFO - Running: ['bash', '-c', u'airflow run example_bash_operator run_this_last 2017-10-03T00:00:00 --job_id 47 --raw -sd DAGS_FOLDER/example_dags/example_bash_operator.py']
    [2017-10-03 21:57:51,264] {base_task_runner.py:98} INFO - Subtask: [2017-10-03 21:57:51,263] {__init__.py:45} INFO - Using executor SequentialExecutor
    [2017-10-03 21:57:51,306] {base_task_runner.py:98} INFO - Subtask: [2017-10-03 21:57:51,306] {models.py:186} INFO - Filling up the DagBag from /airflow/dags/example_dags/example_bash_operator.py
  • 1
    Shouldn't it be $AIRFLOW_HOME/config/__init__.py.? – andresp Jan 17 at 21:36
  • 1
    There's another typo s3TaskHandler should be S3TaskHandler – pyCthon Feb 25 at 19:29
  • 2
    This was super helpful! If you want to upload to a "sub folder" in s3, make sure that the these two vars are set in your airflow.cfgremote_log_conn_id = s3://$AWS_ACCESS_KEY:$AWS_SECRET_KEY@$REMOTE_BASE_LOG_FOLDER and set remote_base_log_folder = "s3://$REMOTE_BASE_LOG_FOLDER" In this case: REMOTE_BASE_LOG_FOLDER = top-level-bucket/airflow/logs – sebradloff Mar 4 at 5:17
  • 3
    I am getting ImportError: Unable to load custom logging from log_config.LOGGING_CONFIG even though I added path into python path. – Kppatel Patel Mar 20 at 19:36
  • 2
    The template you are pointing to is at HEAD and no longer works. You need to copy it from the 1.9.0 version: github.com/apache/incubator-airflow/blob/1.9.0/airflow/… – nbarraille Jun 26 at 17:43

Here's a solution if you don't want to use the admin UI.

My deployment process is Dockerized, and I never touch the admin UI. I also like setting Airflow-specific environment variables in a bash script, which overrides the .cfg file.


First of all, you need the s3 subpackage installed to write your Airflow logs to S3. (boto3 works fine for the Python jobs within your DAGs, but the S3Hook depends on the s3 subpackage.)

One more side note: conda install doesn't handle this yet, so I have to do pip install airflow[s3].

Environment variables

In a bash script, I set these core variables. Starting from these instructions but using the naming convention AIRFLOW__{SECTION}__{KEY} for environment variables, I do:

export AIRFLOW__CORE__REMOTE_BASE_LOG_FOLDER=s3://bucket/key

S3 connection ID

s3_uri is a connection ID that I made up. In Airflow, it corresponds to another environment variable, AIRFLOW_CONN_S3_URI. The value of that is your S3 path, which has to be in URI form. That's


Store this however you handle other sensitive environment variables.

With this configuration, Airflow will write your logs to S3. They will follow the path of s3://bucket/key/dag/task_id.

  • 1
    Will this still work with airflow 1.9.0? – Alex Feb 23 at 20:29

Just a side note to anyone following the very useful instructions in the above answer: If you stumble upon this issue: "ModuleNotFoundError: No module named 'airflow.utils.log.logging_mixin.RedirectStdHandler'" as referenced here (which happens when using airflow 1.9), the fix is simple - use rather this base template: https://github.com/apache/incubator-airflow/blob/v1-9-stable/airflow/config_templates/airflow_local_settings.py (and follow all other instructions in the above answer)

The current template incubator-airflow/airflow/config_templates/airflow_local_settings.py present in master branch contains a reference to the class "airflow.utils.log.s3_task_handler.S3TaskHandler", which is not present in apache-airflow==1.9.0 python package. Hope this helps!

To complete Arne's answer with the recent Airflow updates, you do not need to set task_log_reader to another value than the default one : task

As if you follow the default logging template airflow/config_templates/airflow_local_settings.py you can see since this commit (note the handler's name changed to's3': {'task'... instead of s3.task) that's the value on the remote folder(REMOTE_BASE_LOG_FOLDER) will replace the handler with the right one:

REMOTE_LOGGING = conf.get('core', 'remote_logging')

if REMOTE_LOGGING and REMOTE_BASE_LOG_FOLDER.startswith('s3://'):
elif REMOTE_LOGGING and REMOTE_BASE_LOG_FOLDER.startswith('gs://'):
elif REMOTE_LOGGING and REMOTE_BASE_LOG_FOLDER.startswith('wasb'):

More details on how to log to/read from S3 : https://github.com/apache/incubator-airflow/blob/master/docs/howto/write-logs.rst#writing-logs-to-amazon-s3

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