1

I’m having some issues trying to access a FileDataset created from two http URIs in an Azure ML Pipeline PythonScriptStep.

In the step, I’m only getting a single file named ['https%3A’] when doing an os.listdir() on my mount point. I would have expected two files, with their actual names instead. This happens both when sending the dataset as_upload and as_mount. Even happens when I send the dataset reference to the pipeline step and mount it directly from the step.

The dataset is registered in a notebook, the same notebook that creates and invokes the pipeline, as seen below:

tempFileData = Dataset.File.from_files(
        ['https://vladiliescu.net/images/deploying-models-with-azure-ml-pipelines.jpg',
        'https://vladiliescu.net/images/reverse-engineering-automated-ml.jpg'])
tempFileData.register(ws, name='FileData', create_new_version=True)

#...

read_datasets_step = PythonScriptStep(
    name='The Dataset Reader',
    script_name='read-datasets.py',
    inputs=[fileData.as_named_input('Files'), fileData.as_named_input('Files_mount').as_mount(), fileData.as_named_input('Files_download').as_download()],
    compute_target=compute_target,
    source_directory='./dataset-reader',
    allow_reuse=False,
)

The FileDataset seems to be registered properly, if I examine it within the notebook I get the following result:

{
  "source": [
    "https://vladiliescu.net/images/deploying-models-with-azure-ml-pipelines.jpg",
    "https://vladiliescu.net/images/reverse-engineering-automated-ml.jpg"
  ],
  "definition": [
    "GetFiles"
  ],
  "registration": {
    "id": "...",
    "name": "FileData",
    "version": 4,
    "workspace": "Workspace.create(...)"
  }
}

For reference, the machine running the notebook is using AML SDK v1.24, whereas the node running the pipeline steps is running v1.25.

Has anybody encountered anything like this? Is there a way to make it work?

Note that I'm specifically looking at file datasets created from web uris, and not necessarily interested in getting a FileDataset to work with blob storage or similar.

1 Answer 1

2

The files should've been mounted at path "https%3A/vladiliescu.net/images/deploying-models-with-azure-ml-pipelines.jpg" and "https%3A/vladiliescu.net/images/reverse-engineering-automated-ml.jpg".

We retain the directory structure following the url structure to avoid potential conflicts.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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