We are using aws sagemaker that is using ecs container, Is there a way, we can setup environment variable (e.g. stage or prod) in container when calling sagemaker api using low level python sdk

4 Answers 4


Even invoking the API directly (which is lower level than using the python SDK) you cannot directly set environment arbitrary variables inside the container. You can however pass arbitrary hyperparameters in as configuration for a TrainingJob, for example pass in a hyperparameter like {"mystage": "prod"}. Hyperparameters show up in the container in a file called /opt/ml/input/config/hyperparameters.json which is a simple key-value map as a JSON object. You can use this to set the environment variable in a launching script like this:


export STAGE=$(jq -r ".mystage" /opt/ml/input/config/hyperparameters.json)

# Now run your code...

You can get SageMaker to invoke this script either by making it the ENTRYPOINT in your Dockerfile, or by calling it train and making sure it's on the PATH for the shell if you're not setting an ENTRYPOINT.

  • 1
    we ended up doing this hack only, unless find a better way.
    – rajnish
    Jul 17, 2018 at 23:03

You can configure environment variables for an ECS Task, this is a common one to differentiate between dev/prod mode.

environment - The environment variables to pass to a container. This parameter maps to Env in the Create a container section of the Docker Remote API and the --env option to docker run.

My answer isn't related Sagemaker, since I think the question refers only to ECS.


If you're using the low-level Boto SageMaker client, it might work for you to set environment variables for your models using the create_model method. This method lets you define environment variables as part of the PrimaryContainer that will be available alongside the model artifacts in an instance of your container.


In the high-level sagemaker Python package, environment variables can be set as well, f.e. through the Estimator.deploy() and Estimator.create_model() methods (as additional args will be passed to Model).


Note: It seems that this approach is only working at inference time, not during a training job.


An extension to @leopd 's answer is to parse the EnvVar SM_TRAINING_ENV that Sagemaker sets and use it directly from your Python code (train.py):

import json
import os

if __name__ == '__main__':
    envs = dict(os.environ)
    sm_training_env = envs.get('SM_TRAINING_ENV')
    sm_training_env = json.loads(sm_training_env)
    hyperparameters = sm_training_env.get('hyperparameters')

Also, just realized that the hyperparameters passed to the Estimator get set as SM_HP_NAMEOFPARAMETER and can be accessed directly.

Your Answer

Reminder: Answers generated by Artificial Intelligence tools are not allowed on Stack Overflow. Learn more

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

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