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I am trying to submit an experiment in Azure Machine Learning service locally on an Azure VM using a ScriptRunConfig object in my workspace ws, as in

from azureml.core import ScriptRunConfig    
from azureml.core.runconfig import RunConfiguration
from azureml.core import Experiment

experiment = Experiment(ws, name='test')
run_local = RunConfiguration()

script_params = {
    '--data-folder': './data',
    '--training-data': 'train.csv'
}

src = ScriptRunConfig(source_directory = './source_dir', 
                      script = 'train.py', 
                      run_config = run_local, 
                      arguments = script_params)

run = experiment.submit(src)

However, this fails with

ExperimentExecutionException: { "error_details": { "correlation": { "operation": "bb12f5b8bd78084b9b34f088a1d77224", "request": "iGfp+sjC34Q=" }, "error": { "code": "UserError", "message": "Failed to deserialize run definition"

Worse, if I set my data folder to use a datastore (which likely I will need to)

script_params = {
    '--data-folder': ds.path('mydatastoredir').as_mount(),
    '--training-data': 'train.csv'
}

the error is

UserErrorException: Dictionary with non-native python type values are not supported in runconfigs.
{'--data-folder': $AZUREML_DATAREFERENCE_d93269a580ec4ecf97be428cd2fe79, '--training-data': 'train.csv'}

I don't quite understand how I should pass my script_params parameters to my train.py (the documentation of ScriptRunConfig doesn't include a lot of details on this unfortunately).

Does anybody know how to properly create src in these two cases?

  • A workaround would be to add defaults to my ArgumentParser in my train.py, but that's not really the solution to this... – Davide Fiocco Apr 9 at 10:00
  • 1
    Can you use an Estimator instead? Asking because this approach works with Estimators, but not with ScriptRunConfig (and I've no idea why they're not accepting the same type of arguments for both). – Vlad Iliescu Apr 9 at 16:41
  • Hey! Thanks for this. So I first tried indeed with Estimator, but I have a bit of a esoteric dependency that I have to handle via pip install git+https://github.com/... as the package is not something I can add in conda_packages AFAIK. Therefore, following the guide I assumed "using RunConfiguration object and ScriptRunConfig object[...] gives you a lot of flexibility and maximum control" and installed that dependency locally on my VM. As this doesn't seem a viable route I might go for Estimator and a custom docker image with my dependency installed, but I still have to try that... – Davide Fiocco Apr 9 at 17:57
0

In the end I abandoned ScriptRunConfig and used Estimator as follows to pass script_params (after having provisioned a compute target):

estimator = Estimator(source_directory='./mysourcedir',
                      script_params=script_params,
                      compute_target='cluster',
                      entry_script='train.py',
                      conda_packages = ["pandas"],
                      pip_packages = ["git+https://github.com/..."], 
                      use_docker=True,
                      custom_docker_image='<mydockeraccount>/<mydockerimage>')

This also allowed me to install my pip_packages dependency by putting on https://hub.docker.com/ a custom_docker_image Docker image created from a Dockerfile like:

FROM continuumio/miniconda
RUN apt-get update
RUN apt-get install git gcc g++ -y

(it worked!)

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