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| | """Placeholder docstring""" |
| | from __future__ import absolute_import |
| |
|
| | import logging |
| | from typing import Union, Optional, Dict |
| |
|
| | from sagemaker import image_uris |
| | from sagemaker.deprecations import renamed_kwargs |
| | from sagemaker.estimator import Framework, _TrainingJob |
| | from sagemaker.fw_utils import ( |
| | framework_name_from_image, |
| | framework_version_from_tag, |
| | UploadedCode, |
| | ) |
| | from sagemaker.session import Session |
| | from sagemaker.vpc_utils import VPC_CONFIG_DEFAULT |
| | from sagemaker.workflow.entities import PipelineVariable |
| | from sagemaker.xgboost import defaults |
| | from sagemaker.xgboost.model import XGBoostModel |
| | from sagemaker.xgboost.utils import validate_py_version, validate_framework_version |
| |
|
| | logger = logging.getLogger("sagemaker") |
| |
|
| |
|
| | class XGBoost(Framework): |
| | """Handle end-to-end training and deployment of XGBoost booster training. |
| | |
| | It can also handle training using customer provided XGBoost entry point script. |
| | """ |
| |
|
| | _framework_name = defaults.XGBOOST_NAME |
| |
|
| | def __init__( |
| | self, |
| | entry_point: Union[str, PipelineVariable], |
| | framework_version: str, |
| | source_dir: Optional[Union[str, PipelineVariable]] = None, |
| | hyperparameters: Optional[Dict[str, Union[str, PipelineVariable]]] = None, |
| | py_version: str = "py3", |
| | image_uri: Optional[Union[str, PipelineVariable]] = None, |
| | image_uri_region: Optional[str] = None, |
| | **kwargs |
| | ): |
| | """An estimator that executes an XGBoost-based SageMaker Training Job. |
| | |
| | The managed XGBoost environment is an Amazon-built Docker container thatexecutes functions |
| | defined in the supplied ``entry_point`` Python script. |
| | |
| | Training is started by calling :meth:`~sagemaker.amazon.estimator.Framework.fit` on this |
| | Estimator. After training is complete, calling |
| | :meth:`~sagemaker.amazon.estimator.Framework.deploy` creates a hosted SageMaker endpoint |
| | and returns an :class:`~sagemaker.amazon.xgboost.model.XGBoostPredictor` instance that |
| | can be used to perform inference against the hosted model. |
| | |
| | Technical documentation on preparing XGBoost scripts for SageMaker training and using the |
| | XGBoost Estimator is available on the project home-page: |
| | https://github.com/aws/sagemaker-python-sdk |
| | |
| | Args: |
| | entry_point (str or PipelineVariable): Path (absolute or relative) to |
| | the Python source file which should be executed as the entry point to training. |
| | If ``source_dir`` is specified, then ``entry_point`` must point to |
| | a file located at the root of ``source_dir``. |
| | framework_version (str): XGBoost version you want to use for executing your model |
| | training code. |
| | source_dir (str or PipelineVariable): Path (absolute, relative or an S3 URI) to |
| | a directory with any other training source code dependencies aside from the entry |
| | point file (default: None). If ``source_dir`` is an S3 URI, it must |
| | point to a tar.gz file. Structure within this directory are preserved |
| | when training on Amazon SageMaker. |
| | hyperparameters (dict[str, str] or dict[str, PipelineVariable]): Hyperparameters |
| | that will be used for training (default: None). |
| | The hyperparameters are made accessible as a dict[str, str] to the training code |
| | on SageMaker. For convenience, this accepts other types for keys and values, but |
| | ``str()`` will be called to convert them before training. |
| | py_version (str): Python version you want to use for executing your model |
| | training code (default: 'py3'). |
| | image_uri (str or PipelineVariable): If specified, the estimator will use this image |
| | for training and hosting, instead of selecting the appropriate SageMaker official |
| | image based on framework_version and py_version. It can be an ECR url or |
| | dockerhub image and tag. |
| | Examples: |
| | 123.dkr.ecr.us-west-2.amazonaws.com/my-custom-image:1.0 |
| | custom-image:latest. |
| | image_uri_region (str): If ``image_uri`` argument is None, the image uri |
| | associated with this object will be in this region. |
| | Default: region associated with SageMaker session. |
| | **kwargs: Additional kwargs passed to the |
| | :class:`~sagemaker.estimator.Framework` constructor. |
| | |
| | .. tip:: |
| | |
| | You can find additional parameters for initializing this class at |
| | :class:`~sagemaker.estimator.Framework` and |
| | :class:`~sagemaker.estimator.EstimatorBase`. |
| | """ |
| | instance_type = renamed_kwargs( |
| | "train_instance_type", "instance_type", kwargs.get("instance_type"), kwargs |
| | ) |
| | super(XGBoost, self).__init__( |
| | entry_point, source_dir, hyperparameters, image_uri=image_uri, **kwargs |
| | ) |
| |
|
| | self.py_version = py_version |
| | self.framework_version = framework_version |
| |
|
| | validate_py_version(py_version) |
| | validate_framework_version(framework_version) |
| |
|
| | if image_uri is None: |
| | self.image_uri = image_uris.retrieve( |
| | self._framework_name, |
| | image_uri_region or self.sagemaker_session.boto_region_name, |
| | version=framework_version, |
| | py_version=self.py_version, |
| | instance_type=instance_type, |
| | image_scope="training", |
| | ) |
| |
|
| | def create_model( |
| | self, |
| | model_server_workers=None, |
| | role=None, |
| | vpc_config_override=VPC_CONFIG_DEFAULT, |
| | entry_point=None, |
| | source_dir=None, |
| | dependencies=None, |
| | **kwargs |
| | ): |
| | """Create a SageMaker ``XGBoostModel`` object that can be deployed to an ``Endpoint``. |
| | |
| | Args: |
| | role (str): The ``ExecutionRoleArn`` IAM Role ARN for the ``Model``, which is also used |
| | during transform jobs. If not specified, the role from the Estimator will be used. |
| | model_server_workers (int): Optional. The number of worker processes used by the |
| | inference server. If None, server will use one worker per vCPU. |
| | vpc_config_override (dict[str, list[str]]): Optional override for VpcConfig set on the |
| | model. |
| | Default: use subnets and security groups from this Estimator. |
| | * 'Subnets' (list[str]): List of subnet ids. |
| | * 'SecurityGroupIds' (list[str]): List of security group ids. |
| | entry_point (str): Path (absolute or relative) to the local Python source file which |
| | should be executed as the entry point to training. If ``source_dir`` is specified, |
| | then ``entry_point`` must point to a file located at the root of ``source_dir``. |
| | If not specified, the training entry point is used. |
| | source_dir (str): Path (absolute or relative) to a directory with any other serving |
| | source code dependencies aside from the entry point file. |
| | If not specified, the model source directory from training is used. |
| | dependencies (list[str]): A list of paths to directories (absolute or relative) with |
| | any additional libraries that will be exported to the container. |
| | If not specified, the dependencies from training are used. |
| | This is not supported with "local code" in Local Mode. |
| | **kwargs: Additional kwargs passed to the :class:`~sagemaker.xgboost.model.XGBoostModel` |
| | constructor. |
| | |
| | Returns: |
| | sagemaker.xgboost.model.XGBoostModel: A SageMaker ``XGBoostModel`` object. |
| | See :func:`~sagemaker.xgboost.model.XGBoostModel` for full details. |
| | """ |
| | role = role or self.role |
| | kwargs["name"] = self._get_or_create_name(kwargs.get("name")) |
| |
|
| | if "image_uri" not in kwargs: |
| | kwargs["image_uri"] = self.image_uri |
| |
|
| | return XGBoostModel( |
| | self.model_data, |
| | role, |
| | entry_point or self._model_entry_point(), |
| | framework_version=self.framework_version, |
| | source_dir=(source_dir or self._model_source_dir()), |
| | container_log_level=self.container_log_level, |
| | code_location=self.code_location, |
| | py_version=self.py_version, |
| | model_server_workers=model_server_workers, |
| | sagemaker_session=self.sagemaker_session, |
| | vpc_config=self.get_vpc_config(vpc_config_override), |
| | dependencies=(dependencies or self.dependencies), |
| | **kwargs |
| | ) |
| |
|
| | @classmethod |
| | def attach(cls, training_job_name, sagemaker_session=None, model_channel_name="model"): |
| | """Attach to an existing training job. |
| | |
| | Create an Estimator bound to an existing training job, each subclass |
| | is responsible to implement |
| | ``_prepare_init_params_from_job_description()`` as this method delegates |
| | the actual conversion of a training job description to the arguments |
| | that the class constructor expects. After attaching, if the training job |
| | has a Complete status, it can be ``deploy()`` ed to create a SageMaker |
| | Endpoint and return a ``Predictor``. |
| | |
| | If the training job is in progress, attach will block and display log |
| | messages from the training job, until the training job completes. |
| | |
| | Examples: |
| | >>> my_estimator.fit(wait=False) |
| | >>> training_job_name = my_estimator.latest_training_job.name |
| | Later on: |
| | >>> attached_estimator = Estimator.attach(training_job_name) |
| | >>> attached_estimator.deploy() |
| | |
| | Args: |
| | training_job_name (str): The name of the training job to attach to. |
| | sagemaker_session (sagemaker.session.Session): Session object which |
| | manages interactions with Amazon SageMaker APIs and any other |
| | AWS services needed. If not specified, the estimator creates one |
| | using the default AWS configuration chain. |
| | model_channel_name (str): Name of the channel where pre-trained |
| | model data will be downloaded (default: 'model'). If no channel |
| | with the same name exists in the training job, this option will |
| | be ignored. |
| | |
| | Returns: |
| | Instance of the calling ``Estimator`` Class with the attached |
| | training job. |
| | """ |
| | sagemaker_session = sagemaker_session or Session() |
| |
|
| | job_details = sagemaker_session.sagemaker_client.describe_training_job( |
| | TrainingJobName=training_job_name |
| | ) |
| | init_params = cls._prepare_init_params_from_job_description(job_details, model_channel_name) |
| | tags = sagemaker_session.sagemaker_client.list_tags( |
| | ResourceArn=job_details["TrainingJobArn"] |
| | )["Tags"] |
| | init_params.update(tags=tags) |
| |
|
| | estimator = cls(sagemaker_session=sagemaker_session, **init_params) |
| | estimator.latest_training_job = _TrainingJob( |
| | sagemaker_session=sagemaker_session, job_name=training_job_name |
| | ) |
| | estimator._current_job_name = estimator.latest_training_job.name |
| | estimator.latest_training_job.wait() |
| |
|
| | |
| | |
| | estimator.uploaded_code = UploadedCode( |
| | estimator.source_dir, estimator.entry_point |
| | ) |
| | return estimator |
| |
|
| | @classmethod |
| | def _prepare_init_params_from_job_description(cls, job_details, model_channel_name=None): |
| | """Convert the job description to init params that can be handled by the class constructor |
| | |
| | Args: |
| | job_details: the returned job details from a describe_training_job API call. |
| | |
| | Returns: |
| | dictionary: The transformed init_params |
| | |
| | """ |
| | init_params = super(XGBoost, cls)._prepare_init_params_from_job_description(job_details) |
| |
|
| | image_uri = init_params.pop("image_uri") |
| | framework, py_version, tag, _ = framework_name_from_image(image_uri) |
| | init_params["py_version"] = py_version |
| |
|
| | if framework and framework != cls._framework_name: |
| | raise ValueError( |
| | "Training job: {} didn't use image for requested framework".format( |
| | job_details["TrainingJobName"] |
| | ) |
| | ) |
| | init_params["framework_version"] = framework_version_from_tag(tag) |
| |
|
| | if not framework: |
| | |
| | |
| | init_params["image_uri"] = image_uri |
| | return init_params |
| |
|