9

I need to import function from different python scripts, which will used inside preprocessing.py file. I was not able to find a way to pass the dependent files to SKLearnProcessor Object, due to which I am getting ModuleNotFoundError.

Code:

from sagemaker.sklearn.processing import SKLearnProcessor
from sagemaker.processing import ProcessingInput, ProcessingOutput

sklearn_processor = SKLearnProcessor(framework_version='0.20.0',
                                     role=role,
                                     instance_type='ml.m5.xlarge',
                                     instance_count=1)


sklearn_processor.run(code='preprocessing.py',
                      inputs=[ProcessingInput(
                        source=input_data,
                        destination='/opt/ml/processing/input')],
                      outputs=[ProcessingOutput(output_name='train_data',
                                                source='/opt/ml/processing/train'),
                               ProcessingOutput(output_name='test_data',
                                                source='/opt/ml/processing/test')],
                      arguments=['--train-test-split-ratio', '0.2']
                     )

I would like to pass, dependent_files = ['file1.py', 'file2.py', 'requirements.txt']. So, that preprocessing.py have access to all the dependent modules.

And also need to install libraries from requirements.txt file.

Can you share any work around or a right way to do this?

Update-25-11-2021:

Q1.(Answered but looking to solve using FrameworkProcessor)

Here, the get_run_args function, is handling dependencies, source_dir and code parameters by using FrameworkProcessor. Is there any way that we can set this parameters from ScriptProcessor or SKLearnProcessor or any other Processor to set them?

Q2.

Can you also please show some reference to use our Processor as sagemaker.workflow.steps.ProcessingStep and then use in sagemaker.workflow.pipeline.Pipeline?

For having Pipeline, do we need sagemaker-project as mandatory or can we create Pipeline directly without any Sagemaker-Project?

5
  • have you tried to add extra ProcessingInput to download the source code? Sep 6, 2021 at 22:41
  • @AbdelrahmanMaharek Yes, I tried that. For that we need to add source code to s3 and pass that path to ProcessingInput. In this case, I'm not able to install dependent modules. Sep 16, 2021 at 5:25
  • @AbdelrahmanMaharek Can you please check the updated question? Is there any direction you can provide to resolve this? Nov 24, 2021 at 8:00
  • sorry, I've just seen this. I can see that you have managed to find a workaround by @tulio-casagrande Dec 2, 2021 at 12:11
  • @AbdelrahmanMaharek Yes, using ScriptProcessor we can add custom image_uri which will be having libraries installed present in requirements.txt. Dec 3, 2021 at 5:07

2 Answers 2

16
+50

There are a couple of options for you to accomplish that.

One that is really simple is adding all additional files to a folder, example:

.
├── my_package
│   ├── file1.py
│   ├── file2.py
│   └── requirements.txt
└── preprocessing.py

Then send this entire folder as another input under the same /opt/ml/processing/input/code/, example:

from sagemaker.sklearn.processing import SKLearnProcessor
from sagemaker.processing import ProcessingInput, ProcessingOutput

sklearn_processor = SKLearnProcessor(
    framework_version="0.20.0",
    role=role,
    instance_type="ml.m5.xlarge",
    instance_count=1,
)

sklearn_processor.run(
    code="preprocessing.py",  # <- this gets uploaded as /opt/ml/processing/input/code/preprocessing.py
    inputs=[
        ProcessingInput(source=input_data, destination='/opt/ml/processing/input'),
        # Send my_package as /opt/ml/processing/input/code/my_package/
        ProcessingInput(source='my_package/', destination="/opt/ml/processing/input/code/my_package/")
    ],
    outputs=[
        ProcessingOutput(output_name="train_data", source="/opt/ml/processing/train"),
        ProcessingOutput(output_name="test_data", source="/opt/ml/processing/test"),
    ],
    arguments=["--train-test-split-ratio", "0.2"],
)

What happens is that sagemaker-python-sdk is going to put your argument code="preprocessing.py" under /opt/ml/processing/input/code/ and you will have my_package/ under the same directory.

Edit:

For the requirements.txt, you can add to your preprocessing.py:

import sys
import subprocess

subprocess.check_call([
    sys.executable, "-m", "pip", "install", "-r",
    "/opt/ml/processing/input/code/my_package/requirements.txt",
])
5
  • Thanks for the detailed explanation. Can I assume that input_data as a folder in s3 bucket? I mean input_data contains multiple folders and data files that needed for preprocessing.py file and I will pass root folder will all the data as input i.e., input_data. Nov 25, 2021 at 4:46
  • Can you also please show some reference to use .run(... as sagemaker.workflow.steps.ProcessingStep and then use in sagemaker.workflow.pipeline.Pipeline? Nov 25, 2021 at 5:02
  • Exactly as you said, if your input_data is pointing to an s3 prefix (folder), such as s3://my_bucket/data/, all files from data/ are sent to the job. Here's a reference on how to use a ProcessingStep instead of manually calling .run(...), most arguments are basically the same. Nov 26, 2021 at 18:21
  • This is great. Is there a reference/documentation that states that the code goes to "/opt/ml/processing/input/code/"? Haven't been able to find it, only some vague hints in some examples.
    – oW_
    Mar 15 at 17:57
  • 1
    hey @oW_, not really a documentation, but you can check here in the SDK where the code argument is handled. Mar 15 at 20:44
0

This isn't supported in SKLearnProcessor. You'd need to package your dependencies in docker image and create a custom Processor (e.g. a ScriptProcessor with the image_uri of the docker image you created.)

1
  • Here, the get_run_args function, is handling dependencies, source_dir and code parameters. Is there any way that we can set this parameters from ScriptProcessor or any other Processor to set them? Nov 24, 2021 at 7:56

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