| .. image:: https://github.com/aws/sagemaker-python-sdk/raw/master/branding/icon/sagemaker-banner.png |
| :height: 100px |
| :alt: SageMaker |
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|
| ==================== |
| SageMaker Python SDK |
| ==================== |
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| .. image:: https://img.shields.io/pypi/v/sagemaker.svg |
| :target: https://pypi.python.org/pypi/sagemaker |
| :alt: Latest Version |
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| .. image:: https://img.shields.io/pypi/pyversions/sagemaker.svg |
| :target: https://pypi.python.org/pypi/sagemaker |
| :alt: Supported Python Versions |
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| .. image:: https://img.shields.io/badge/code_style-black-000000.svg |
| :target: https://github.com/python/black |
| :alt: Code style: black |
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| .. image:: https://readthedocs.org/projects/sagemaker/badge/?version=stable |
| :target: https://sagemaker.readthedocs.io/en/stable/ |
| :alt: Documentation Status |
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| SageMaker Python SDK is an open source library for training and deploying machine learning models on Amazon SageMaker. |
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| With the SDK, you can train and deploy models using popular deep learning frameworks **Apache MXNet** and **TensorFlow**. |
| You can also train and deploy models with **Amazon algorithms**, |
| which are scalable implementations of core machine learning algorithms that are optimized for SageMaker and GPU training. |
| If you have **your own algorithms** built into SageMaker compatible Docker containers, you can train and host models using these as well. |
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| For detailed documentation, including the API reference, see `Read the Docs <https://sagemaker.readthedocs.io>`_. |
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| Table of Contents |
| ----------------- |
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| Installing the SageMaker Python SDK |
| ----------------------------------- |
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| The SageMaker Python SDK is built to PyPI and can be installed with pip as follows: |
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| :: |
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| pip install sagemaker |
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| You can install from source by cloning this repository and running a pip install command in the root directory of the repository: |
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| :: |
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| git clone https://github.com/aws/sagemaker-python-sdk.git |
| cd sagemaker-python-sdk |
| pip install . |
|
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| Supported Operating Systems |
| ~~~~~~~~~~~~~~~~~~~~~~~~~~~ |
|
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| SageMaker Python SDK supports Unix/Linux and Mac. |
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| Supported Python Versions |
| ~~~~~~~~~~~~~~~~~~~~~~~~~ |
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| SageMaker Python SDK is tested on: |
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| - Python 3.7 |
| - Python 3.8 |
| - Python 3.9 |
| - Python 3.10 |
|
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| AWS Permissions |
| ~~~~~~~~~~~~~~~ |
|
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| As a managed service, Amazon SageMaker performs operations on your behalf on the AWS hardware that is managed by Amazon SageMaker. |
| Amazon SageMaker can perform only operations that the user permits. |
| You can read more about which permissions are necessary in the `AWS Documentation <https://docs.aws.amazon.com/sagemaker/latest/dg/sagemaker-roles.html>`__. |
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| The SageMaker Python SDK should not require any additional permissions aside from what is required for using SageMaker. |
| However, if you are using an IAM role with a path in it, you should grant permission for ``iam:GetRole``. |
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| Licensing |
| ~~~~~~~~~ |
| SageMaker Python SDK is licensed under the Apache 2.0 License. It is copyright Amazon.com, Inc. or its affiliates. All Rights Reserved. The license is available at: |
| http://aws.amazon.com/apache2.0/ |
|
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| Running tests |
| ~~~~~~~~~~~~~ |
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| SageMaker Python SDK has unit tests and integration tests. |
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| You can install the libraries needed to run the tests by running :code:`pip install --upgrade .[test]` or, for Zsh users: :code:`pip install --upgrade .\[test\]` |
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| **Unit tests** |
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| We run unit tests with tox, which is a program that lets you run unit tests for multiple Python versions, and also make sure the |
| code fits our style guidelines. We run tox with `all of our supported Python versions < |
| with the same configuration we do, you need to have interpreters for those Python versions installed. |
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| To run the unit tests with tox, run: |
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| :: |
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| tox tests/unit |
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| **Integrations tests** |
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| To run the integration tests, the following prerequisites must be met |
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| 1. AWS account credentials are available in the environment for the boto3 client to use. |
| 2. The AWS account has an IAM role named :code:`SageMakerRole`. |
| It should have the AmazonSageMakerFullAccess policy attached as well as a policy with `the necessary permissions to use Elastic Inference <https://docs.aws.amazon.com/sagemaker/latest/dg/ei-setup.html>`__. |
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| We recommend selectively running just those integration tests you'd like to run. You can filter by individual test function names with: |
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| :: |
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| tox -- -k 'test_i_care_about' |
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| You can also run all of the integration tests by running the following command, which runs them in sequence, which may take a while: |
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| :: |
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| tox -- tests/integ |
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| You can also run them in parallel: |
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| :: |
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| tox -- -n auto tests/integ |
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| Git Hooks |
| ~~~~~~~~~ |
| |
| to enable all git hooks in the .githooks directory, run these commands in the repository directory: |
| |
| :: |
| |
| find .git/hooks -type l -exec rm {} \; |
| find .githooks -type f -exec ln -sf ../../{} .git/hooks/ \; |
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| To enable an individual git hook, simply move it from the .githooks/ directory to the .git/hooks/ directory. |
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| Building Sphinx docs |
| ~~~~~~~~~~~~~~~~~~~~ |
| |
| Setup a Python environment, and install the dependencies listed in ``doc/requirements.txt``: |
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| :: |
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| # conda |
| conda create -n sagemaker python=3.7 |
| conda activate sagemaker |
| conda install sphinx=3.1.1 sphinx_rtd_theme=0.5.0 |
| |
| # pip |
| pip install -r doc/requirements.txt |
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| Clone/fork the repo, and install your local version: |
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| :: |
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| pip install --upgrade . |
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| Then ``cd`` into the ``sagemaker-python-sdk/doc`` directory and run: |
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| :: |
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| make html |
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| You can edit the templates for any of the pages in the docs by editing the .rst files in the ``doc`` directory and then running ``make html`` again. |
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| Preview the site with a Python web server: |
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| :: |
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| cd _build/html |
| python -m http.server 8000 |
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| View the website by visiting http://localhost:8000 |
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| SageMaker SparkML Serving |
| ------------------------- |
| |
| With SageMaker SparkML Serving, you can now perform predictions against a SparkML Model in SageMaker. |
| In order to host a SparkML model in SageMaker, it should be serialized with ``MLeap`` library. |
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| For more information on MLeap, see https://github.com/combust/mleap . |
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| Supported major version of Spark: 2.4 (MLeap version - 0.9.6) |
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| Here is an example on how to create an instance of ``SparkMLModel`` class and use ``deploy()`` method to create an |
| endpoint which can be used to perform prediction against your trained SparkML Model. |
| |
| .. code:: python |
| |
| sparkml_model = SparkMLModel(model_data='s3://path/to/model.tar.gz', env={'SAGEMAKER_SPARKML_SCHEMA': schema}) |
| model_name = 'sparkml-model' |
| endpoint_name = 'sparkml-endpoint' |
| predictor = sparkml_model.deploy(initial_instance_count=1, instance_type='ml.c4.xlarge', endpoint_name=endpoint_name) |
| |
| Once the model is deployed, we can invoke the endpoint with a ``CSV`` payload like this: |
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| .. code:: python |
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| payload = 'field_1,field_2,field_3,field_4,field_5' |
| predictor.predict(payload) |
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| For more information about the different ``content-type`` and ``Accept`` formats as well as the structure of the |
| ``schema`` that SageMaker SparkML Serving recognizes, please see `SageMaker SparkML Serving Container`_. |
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| .. _SageMaker SparkML Serving Container: https://github.com/aws/sagemaker-sparkml-serving-container |
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