0

I'm trying to run a Lambda function to create a SageMaker training job using the same parameters as another previous training job. Here's my lambda function:

def lambda_handler(event, context):
    training_job_name = os.environ['training_job_name']
    sm = boto3.client('sagemaker')
    job = sm.describe_training_job(TrainingJobName=training_job_name)

    training_job_prefix = 'new-randomcutforest-'
    training_job_name = training_job_prefix+str(datetime.datetime.today()).replace(' ', '-').replace(':', '-').rsplit('.')[0]

    print("Starting training job %s" % training_job_name)

    resp = sm.create_training_job(
            TrainingJobName=training_job_name, 
            AlgorithmSpecification=job['AlgorithmSpecification'], 
            RoleArn=job['RoleArn'],
            InputDataConfig=job['InputDataConfig'], 
            OutputDataConfig=job['OutputDataConfig'],
            ResourceConfig=job['ResourceConfig'], 
            StoppingCondition=job['StoppingCondition'], 
            VpcConfig=job['VpcConfig'],
            HyperParameters=job['HyperParameters'] if 'HyperParameters' in job else {},
            Tags=job['Tags'] if 'Tags' in job else [])
[...]

And I keep getting the following error message:

An error occurred (ValidationException) when calling the CreateTrainingJob operation: You can’t override the metric definitions for Amazon SageMaker algorithms. Please retry the request without specifying metric definitions.: ClientError Traceback (most recent call last): File “/var/task/lambda_function.py”, line 96, in lambda_handler StoppingCondition=job[‘StoppingCondition’]

, and I get the same error for Hyperparameters and Tags.

I tried to remove these parameters, but they are required, so that's not a solution:

Parameter validation failed:
Missing required parameter in input: "StoppingCondition": ParamValidationError

I tried to hard-code these variables, but it led to the same error.

The exact same function used to work, but only for a few training jobs (around 5), and then it gave this error message. Now it stopped working completely, and the same error message comes up. Any idea why?

2 Answers 2

1

Before calling "sm.create_training_job", remove the MetricDefinitions key. To do this, pop that key from the 'AlgorithmSpecification' dictionary.

job['AlgorithmSpecification'].pop('MetricDefinitions',None)
0

It's hard to tell exactly what's going wrong here and why your previous job's hyperparemeters didn't work. Perhaps instead of just passing them along to the new job you could print them out to be able to inspect them?

Going the by this line...

    training_job_prefix = 'new-randomcutforest-'

... I am going to hazard a guess and assume you are trying to run RCF. The hyperparameters that that algo requires are documented here: https://docs.aws.amazon.com/sagemaker/latest/dg/rcf_hyperparameters.html

Your Answer

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