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| """The pipeline context for workflow""" |
| from __future__ import absolute_import |
|
|
| import warnings |
| import inspect |
| from functools import wraps |
| from typing import Dict, Optional |
|
|
| from sagemaker.session import Session, SessionSettings |
| from sagemaker.local import LocalSession |
|
|
|
|
| class _StepArguments: |
| """Step arguments entity for `Step`""" |
|
|
| def __init__(self, caller_name: str = None): |
| """Create a `_StepArguments` |
| |
| Args: |
| caller_name (str): The name of the caller function which is intercepted by the |
| PipelineSession to get the step arguments. |
| """ |
| self.caller_name = caller_name |
|
|
|
|
| class _JobStepArguments(_StepArguments): |
| """Step arguments entity for job step types |
| |
| Job step types include: TrainingStep, ProcessingStep, TuningStep, TransformStep |
| """ |
|
|
| def __init__(self, caller_name: str, args: dict): |
| """Create a `_JobStepArguments` |
| |
| Args: |
| caller_name (str): The name of the caller function which is intercepted by the |
| PipelineSession to get the step arguments. |
| args (dict): The arguments to be used for composing the SageMaker API request. |
| """ |
| super(_JobStepArguments, self).__init__(caller_name) |
| self.args = args |
|
|
|
|
| class _ModelStepArguments(_StepArguments): |
| """Step arguments entity for `ModelStep`""" |
|
|
| def __init__(self, model): |
| """Create a `_ModelStepArguments` |
| |
| Args: |
| model (Model or PipelineModel): A `sagemaker.model.Model` |
| or `sagemaker.pipeline.PipelineModel` instance |
| """ |
| super(_ModelStepArguments, self).__init__() |
| self.model = model |
| self.create_model_package_request = None |
| self.create_model_request = None |
| self.need_runtime_repack = set() |
| self.runtime_repack_output_prefix = None |
|
|
|
|
| class PipelineSession(Session): |
| """Managing interactions with SageMaker APIs and AWS services needed under Pipeline Context |
| |
| This class inherits the SageMaker session, it provides convenient methods |
| for manipulating entities and resources that Amazon SageMaker uses, |
| such as training jobs, endpoints, and input datasets in S3. When composing |
| SageMaker Model-Building Pipeline, PipelineSession is recommended over |
| regular SageMaker Session |
| """ |
|
|
| def __init__( |
| self, |
| boto_session=None, |
| sagemaker_client=None, |
| default_bucket=None, |
| settings=SessionSettings(), |
| ): |
| """Initialize a ``PipelineSession``. |
| |
| Args: |
| boto_session (boto3.session.Session): The underlying Boto3 session which AWS service |
| calls are delegated to (default: None). If not provided, one is created with |
| default AWS configuration chain. |
| sagemaker_client (boto3.SageMaker.Client): Client which makes Amazon SageMaker service |
| calls other than ``InvokeEndpoint`` (default: None). Estimators created using this |
| ``Session`` use this client. If not provided, one will be created using this |
| instance's ``boto_session``. |
| default_bucket (str): The default Amazon S3 bucket to be used by this session. |
| This will be created the next time an Amazon S3 bucket is needed (by calling |
| :func:`default_bucket`). |
| If not provided, a default bucket will be created based on the following format: |
| "sagemaker-{region}-{aws-account-id}". |
| Example: "sagemaker-my-custom-bucket". |
| settings (sagemaker.session_settings.SessionSettings): Optional. Set of optional |
| parameters to apply to the session. |
| """ |
| super().__init__( |
| boto_session=boto_session, |
| sagemaker_client=sagemaker_client, |
| default_bucket=default_bucket, |
| settings=settings, |
| ) |
| self._context = None |
|
|
| @property |
| def context(self): |
| """Hold contextual information useful to the session""" |
| return self._context |
|
|
| @context.setter |
| def context(self, value: Optional[_StepArguments] = None): |
| self._context = value |
|
|
| def _intercept_create_request(self, request: Dict, create, func_name: str = None): |
| """This function intercepts the create job request |
| |
| Args: |
| request (dict): the create job request |
| create (functor): a functor calls the sagemaker client create method |
| func_name (str): the name of the function needed intercepting |
| """ |
| if func_name == self.create_model.__name__: |
| self.context.create_model_request = request |
| self.context.caller_name = func_name |
| elif func_name == self.create_model_package_from_containers.__name__: |
| self.context.create_model_package_request = request |
| self.context.caller_name = func_name |
| else: |
| self.context = _JobStepArguments(func_name, request) |
|
|
| def init_model_step_arguments(self, model): |
| """Create a `_ModelStepArguments` (if not exist) as pipeline context |
| |
| Args: |
| model (Model or PipelineModel): A `sagemaker.model.Model` |
| or `sagemaker.pipeline.PipelineModel` instance |
| """ |
| if not isinstance(self._context, _ModelStepArguments): |
| self._context = _ModelStepArguments(model) |
|
|
|
|
| class LocalPipelineSession(LocalSession, PipelineSession): |
| """Managing a session that executes Sagemaker pipelines and jobs locally in a pipeline context. |
| |
| This class inherits from the LocalSession and PipelineSession classes. |
| When running Sagemaker pipelines locally, this class is preferred over LocalSession. |
| """ |
|
|
| def __init__( |
| self, boto_session=None, default_bucket=None, s3_endpoint_url=None, disable_local_code=False |
| ): |
| """Initialize a ``LocalPipelineSession``. |
| |
| Args: |
| boto_session (boto3.session.Session): The underlying Boto3 session which AWS service |
| calls are delegated to (default: None). If not provided, one is created with |
| default AWS configuration chain. |
| default_bucket (str): The default Amazon S3 bucket to be used by this session. |
| This will be created the next time an Amazon S3 bucket is needed (by calling |
| :func:`default_bucket`). |
| If not provided, a default bucket will be created based on the following format: |
| "sagemaker-{region}-{aws-account-id}". |
| Example: "sagemaker-my-custom-bucket". |
| s3_endpoint_url (str): Override the default endpoint URL for Amazon S3, |
| if set (default: None). |
| disable_local_code (bool): Set to True to override the default AWS configuration chain |
| to disable the `local.local_code` setting, which may not be supported for some SDK |
| features (default: False). |
| """ |
|
|
| super().__init__( |
| boto_session=boto_session, |
| default_bucket=default_bucket, |
| s3_endpoint_url=s3_endpoint_url, |
| disable_local_code=disable_local_code, |
| ) |
|
|
|
|
| def runnable_by_pipeline(run_func): |
| """A convenient Decorator |
| |
| This is a decorator designed to annotate, during pipeline session, |
| the methods that downstream managed to |
| 1. preprocess user inputs, outputs, and configurations |
| 2. generate the create request |
| 3. start the job. |
| For instance, `Processor.run`, `Estimator.fit`, or `Transformer.transform`. |
| This decorator will essentially run 1, and capture the request shape from 2, |
| then instead of starting a new job in 3, it will return request shape from 2 |
| to `sagemaker.workflow.steps.Step`. The request shape will be used to construct |
| the arguments needed to compose that particular step as part of the pipeline. |
| The job will be started during pipeline execution. |
| """ |
|
|
| @wraps(run_func) |
| def wrapper(*args, **kwargs): |
| self_instance = args[0] |
| if isinstance(self_instance.sagemaker_session, PipelineSession): |
| run_func_params = inspect.signature(run_func).parameters |
| arg_list = list(args) |
|
|
| override_wait, override_logs = False, False |
| for i, (arg_name, _) in enumerate(run_func_params.items()): |
| if i >= len(arg_list): |
| break |
| if arg_name == "wait": |
| override_wait = True |
| arg_list[i] = False |
| elif arg_name == "logs": |
| override_logs = True |
| arg_list[i] = False |
|
|
| args = tuple(arg_list) |
|
|
| if not override_wait and "wait" in run_func_params.keys(): |
| kwargs["wait"] = False |
| if not override_logs and "logs" in run_func_params.keys(): |
| kwargs["logs"] = False |
|
|
| warnings.warn( |
| "Running within a PipelineSession, there will be No Wait, " |
| "No Logs, and No Job being started.", |
| UserWarning, |
| ) |
| if run_func.__name__ in ["register", "create"]: |
| self_instance.sagemaker_session.init_model_step_arguments(self_instance) |
| run_func(*args, **kwargs) |
| context = self_instance.sagemaker_session.context |
| self_instance.sagemaker_session.context = None |
| return context |
|
|
| run_func(*args, **kwargs) |
| return self_instance.sagemaker_session.context |
|
|
| return run_func(*args, **kwargs) |
|
|
| return wrapper |
|
|