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# Copyright Amazon.com, Inc. or its affiliates. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License"). You
# may not use this file except in compliance with the License. A copy of
# the License is located at
#
# http://aws.amazon.com/apache2.0/
#
# or in the "license" file accompanying this file. This file is
# distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF
# ANY KIND, either express or implied. See the License for the specific
# language governing permissions and limitations under the License.
"""Placeholder docstring"""
from __future__ import absolute_import
import logging
import os
import platform
from datetime import datetime
import boto3
from botocore.exceptions import ClientError
from sagemaker.local.image import _SageMakerContainer
from sagemaker.local.utils import get_docker_host
from sagemaker.local.entities import (
_LocalEndpointConfig,
_LocalEndpoint,
_LocalModel,
_LocalProcessingJob,
_LocalTrainingJob,
_LocalTransformJob,
_LocalPipeline,
)
from sagemaker.session import Session
from sagemaker.utils import get_config_value, _module_import_error
logger = logging.getLogger(__name__)
class LocalSagemakerClient(object): # pylint: disable=too-many-public-methods
"""A SageMakerClient that implements the API calls locally.
Used for doing local training and hosting local endpoints. It still needs access to
a boto client to interact with S3 but it won't perform any SageMaker call.
Implements the methods with the same signature as the boto SageMakerClient.
Args:
Returns:
"""
_processing_jobs = {}
_training_jobs = {}
_transform_jobs = {}
_models = {}
_endpoint_configs = {}
_endpoints = {}
_pipelines = {}
def __init__(self, sagemaker_session=None):
"""Initialize a LocalSageMakerClient.
Args:
sagemaker_session (sagemaker.session.Session): a session to use to read configurations
from, and use its boto client.
"""
self.sagemaker_session = sagemaker_session or LocalSession()
def create_processing_job(
self,
ProcessingJobName,
AppSpecification,
ProcessingResources,
Environment=None,
ProcessingInputs=None,
ProcessingOutputConfig=None,
**kwargs
):
"""Creates a processing job in Local Mode
Args:
ProcessingJobName(str): local processing job name.
AppSpecification(dict): Identifies the container and application to run.
ProcessingResources(dict): Identifies the resources to use for local processing.
Environment(dict, optional): Describes the environment variables to pass
to the container. (Default value = None)
ProcessingInputs(dict, optional): Describes the processing input data.
(Default value = None)
ProcessingOutputConfig(dict, optional): Describes the processing output
configuration. (Default value = None)
**kwargs: Keyword arguments
Returns:
"""
Environment = Environment or {}
ProcessingInputs = ProcessingInputs or []
ProcessingOutputConfig = ProcessingOutputConfig or {}
container_entrypoint = None
if "ContainerEntrypoint" in AppSpecification:
container_entrypoint = AppSpecification["ContainerEntrypoint"]
container_arguments = None
if "ContainerArguments" in AppSpecification:
container_arguments = AppSpecification["ContainerArguments"]
if "ExperimentConfig" in kwargs:
logger.warning("Experiment configuration is not supported in local mode.")
if "NetworkConfig" in kwargs:
logger.warning("Network configuration is not supported in local mode.")
if "StoppingCondition" in kwargs:
logger.warning("Stopping condition is not supported in local mode.")
container = _SageMakerContainer(
ProcessingResources["ClusterConfig"]["InstanceType"],
ProcessingResources["ClusterConfig"]["InstanceCount"],
AppSpecification["ImageUri"],
sagemaker_session=self.sagemaker_session,
container_entrypoint=container_entrypoint,
container_arguments=container_arguments,
)
processing_job = _LocalProcessingJob(container)
logger.info("Starting processing job")
processing_job.start(
ProcessingInputs, ProcessingOutputConfig, Environment, ProcessingJobName
)
LocalSagemakerClient._processing_jobs[ProcessingJobName] = processing_job
def describe_processing_job(self, ProcessingJobName):
"""Describes a local processing job.
Args:
ProcessingJobName(str): Processing job name to describe.
Returns: (dict) DescribeProcessingJob Response.
Returns:
"""
if ProcessingJobName not in LocalSagemakerClient._processing_jobs:
error_response = {
"Error": {
"Code": "ValidationException",
"Message": "Could not find local processing job",
}
}
raise ClientError(error_response, "describe_processing_job")
return LocalSagemakerClient._processing_jobs[ProcessingJobName].describe()
def create_training_job(
self,
TrainingJobName,
AlgorithmSpecification,
OutputDataConfig,
ResourceConfig,
InputDataConfig=None,
Environment=None,
**kwargs
):
"""Create a training job in Local Mode.
Args:
TrainingJobName(str): local training job name.
AlgorithmSpecification(dict): Identifies the training algorithm to use.
InputDataConfig(dict, optional): Describes the training dataset and the location where
it is stored. (Default value = None)
OutputDataConfig(dict): Identifies the location where you want to save the results of
model training.
ResourceConfig(dict): Identifies the resources to use for local model training.
Environment(dict, optional): Describes the environment variables to pass
to the container. (Default value = None)
HyperParameters(dict) [optional]: Specifies these algorithm-specific parameters to
influence the quality of the final model.
**kwargs:
Returns:
"""
InputDataConfig = InputDataConfig or {}
Environment = Environment or {}
container = _SageMakerContainer(
ResourceConfig["InstanceType"],
ResourceConfig["InstanceCount"],
AlgorithmSpecification["TrainingImage"],
sagemaker_session=self.sagemaker_session,
)
training_job = _LocalTrainingJob(container)
hyperparameters = kwargs["HyperParameters"] if "HyperParameters" in kwargs else {}
logger.info("Starting training job")
training_job.start(
InputDataConfig, OutputDataConfig, hyperparameters, Environment, TrainingJobName
)
LocalSagemakerClient._training_jobs[TrainingJobName] = training_job
def describe_training_job(self, TrainingJobName):
"""Describe a local training job.
Args:
TrainingJobName(str): Training job name to describe.
Returns: (dict) DescribeTrainingJob Response.
Returns:
"""
if TrainingJobName not in LocalSagemakerClient._training_jobs:
error_response = {
"Error": {
"Code": "ValidationException",
"Message": "Could not find local training job",
}
}
raise ClientError(error_response, "describe_training_job")
return LocalSagemakerClient._training_jobs[TrainingJobName].describe()
def create_transform_job(
self,
TransformJobName,
ModelName,
TransformInput,
TransformOutput,
TransformResources,
**kwargs
):
"""Create the transform job.
Args:
TransformJobName:
ModelName:
TransformInput:
TransformOutput:
TransformResources:
**kwargs:
Returns:
"""
transform_job = _LocalTransformJob(TransformJobName, ModelName, self.sagemaker_session)
LocalSagemakerClient._transform_jobs[TransformJobName] = transform_job
transform_job.start(TransformInput, TransformOutput, TransformResources, **kwargs)
def describe_transform_job(self, TransformJobName):
"""Describe the transform job.
Args:
TransformJobName:
Returns:
"""
if TransformJobName not in LocalSagemakerClient._transform_jobs:
error_response = {
"Error": {
"Code": "ValidationException",
"Message": "Could not find local transform job",
}
}
raise ClientError(error_response, "describe_transform_job")
return LocalSagemakerClient._transform_jobs[TransformJobName].describe()
def create_model(
self, ModelName, PrimaryContainer, *args, **kwargs
): # pylint: disable=unused-argument
"""Create a Local Model Object.
Args:
ModelName (str): the Model Name
PrimaryContainer (dict): a SageMaker primary container definition
*args:
**kwargs:
Returns:
"""
LocalSagemakerClient._models[ModelName] = _LocalModel(ModelName, PrimaryContainer)
def describe_model(self, ModelName):
"""Describe the model.
Args:
ModelName:
Returns:
"""
if ModelName not in LocalSagemakerClient._models:
error_response = {
"Error": {"Code": "ValidationException", "Message": "Could not find local model"}
}
raise ClientError(error_response, "describe_model")
return LocalSagemakerClient._models[ModelName].describe()
def describe_endpoint_config(self, EndpointConfigName):
"""Describe the endpoint configuration.
Args:
EndpointConfigName:
Returns:
"""
if EndpointConfigName not in LocalSagemakerClient._endpoint_configs:
error_response = {
"Error": {
"Code": "ValidationException",
"Message": "Could not find local endpoint config",
}
}
raise ClientError(error_response, "describe_endpoint_config")
return LocalSagemakerClient._endpoint_configs[EndpointConfigName].describe()
def create_endpoint_config(self, EndpointConfigName, ProductionVariants, Tags=None):
"""Create the endpoint configuration.
Args:
EndpointConfigName:
ProductionVariants:
Tags: (Default value = None)
Returns:
"""
LocalSagemakerClient._endpoint_configs[EndpointConfigName] = _LocalEndpointConfig(
EndpointConfigName, ProductionVariants, Tags
)
def describe_endpoint(self, EndpointName):
"""Describe the endpoint.
Args:
EndpointName:
Returns:
"""
if EndpointName not in LocalSagemakerClient._endpoints:
error_response = {
"Error": {"Code": "ValidationException", "Message": "Could not find local endpoint"}
}
raise ClientError(error_response, "describe_endpoint")
return LocalSagemakerClient._endpoints[EndpointName].describe()
def create_endpoint(self, EndpointName, EndpointConfigName, Tags=None):
"""Create the endpoint.
Args:
EndpointName:
EndpointConfigName:
Tags: (Default value = None)
Returns:
"""
endpoint = _LocalEndpoint(EndpointName, EndpointConfigName, Tags, self.sagemaker_session)
LocalSagemakerClient._endpoints[EndpointName] = endpoint
endpoint.serve()
def update_endpoint(self, EndpointName, EndpointConfigName): # pylint: disable=unused-argument
"""Update the endpoint.
Args:
EndpointName:
EndpointConfigName:
Returns:
"""
raise NotImplementedError("Update endpoint name is not supported in local session.")
def delete_endpoint(self, EndpointName):
"""Delete the endpoint.
Args:
EndpointName:
Returns:
"""
if EndpointName in LocalSagemakerClient._endpoints:
LocalSagemakerClient._endpoints[EndpointName].stop()
def delete_endpoint_config(self, EndpointConfigName):
"""Delete the endpoint configuration.
Args:
EndpointConfigName:
Returns:
"""
if EndpointConfigName in LocalSagemakerClient._endpoint_configs:
del LocalSagemakerClient._endpoint_configs[EndpointConfigName]
def delete_model(self, ModelName):
"""Delete the model.
Args:
ModelName:
Returns:
"""
if ModelName in LocalSagemakerClient._models:
del LocalSagemakerClient._models[ModelName]
def create_pipeline(
self, pipeline, pipeline_description, **kwargs # pylint: disable=unused-argument
):
"""Create a local pipeline.
Args:
pipeline (Pipeline): Pipeline object
pipeline_description (str): Description of the pipeline
Returns:
Pipeline metadata (PipelineArn)
"""
local_pipeline = _LocalPipeline(
pipeline=pipeline,
pipeline_description=pipeline_description,
local_session=self.sagemaker_session,
)
LocalSagemakerClient._pipelines[pipeline.name] = local_pipeline
return {"PipelineArn": pipeline.name}
def update_pipeline(
self, pipeline, pipeline_description, **kwargs # pylint: disable=unused-argument
):
"""Update a local pipeline.
Args:
pipeline (Pipeline): Pipeline object
pipeline_description (str): Description of the pipeline
Returns:
Pipeline metadata (PipelineArn)
"""
if pipeline.name not in LocalSagemakerClient._pipelines:
error_response = {
"Error": {
"Code": "ResourceNotFound",
"Message": "Pipeline {} does not exist".format(pipeline.name),
}
}
raise ClientError(error_response, "update_pipeline")
LocalSagemakerClient._pipelines[pipeline.name].pipeline_description = pipeline_description
LocalSagemakerClient._pipelines[pipeline.name].pipeline = pipeline
LocalSagemakerClient._pipelines[
pipeline.name
].last_modified_time = datetime.now().timestamp()
return {"PipelineArn": pipeline.name}
def describe_pipeline(self, PipelineName):
"""Describe the pipeline.
Args:
PipelineName (str):
Returns:
Pipeline metadata (PipelineArn, PipelineDefinition, LastModifiedTime, etc)
"""
if PipelineName not in LocalSagemakerClient._pipelines:
error_response = {
"Error": {
"Code": "ResourceNotFound",
"Message": "Pipeline {} does not exist".format(PipelineName),
}
}
raise ClientError(error_response, "describe_pipeline")
return LocalSagemakerClient._pipelines[PipelineName].describe()
def delete_pipeline(self, PipelineName):
"""Delete the local pipeline.
Args:
PipelineName (str):
Returns:
Pipeline metadata (PipelineArn)
"""
if PipelineName in LocalSagemakerClient._pipelines:
del LocalSagemakerClient._pipelines[PipelineName]
return {"PipelineArn": PipelineName}
def start_pipeline_execution(self, PipelineName, **kwargs):
"""Start the pipeline.
Args:
PipelineName (str):
Returns: _LocalPipelineExecution object
"""
if "ParallelismConfiguration" in kwargs:
logger.warning("Parallelism configuration is not supported in local mode.")
if PipelineName not in LocalSagemakerClient._pipelines:
error_response = {
"Error": {
"Code": "ResourceNotFound",
"Message": "Pipeline {} does not exist".format(PipelineName),
}
}
raise ClientError(error_response, "start_pipeline_execution")
return LocalSagemakerClient._pipelines[PipelineName].start(**kwargs)
class LocalSagemakerRuntimeClient(object):
"""A SageMaker Runtime client that calls a local endpoint only."""
def __init__(self, config=None):
"""Initializes a LocalSageMakerRuntimeClient.
Args:
config (dict): Optional configuration for this client. In particular only
the local port is read.
"""
try:
import urllib3
except ImportError as e:
logger.error(_module_import_error("urllib3", "Local mode", "local"))
raise e
self.http = urllib3.PoolManager()
self.serving_port = 8080
self.config = config
self.serving_port = get_config_value("local.serving_port", config) or 8080
def invoke_endpoint(
self,
Body,
EndpointName, # pylint: disable=unused-argument
ContentType=None,
Accept=None,
CustomAttributes=None,
TargetModel=None,
TargetVariant=None,
InferenceId=None,
):
"""Invoke the endpoint.
Args:
Body: Input data for which you want the model to provide inference.
EndpointName: The name of the endpoint that you specified when you
created the endpoint using the CreateEndpoint API.
ContentType: The MIME type of the input data in the request body (Default value = None)
Accept: The desired MIME type of the inference in the response (Default value = None)
CustomAttributes: Provides additional information about a request for an inference
submitted to a model hosted at an Amazon SageMaker endpoint (Default value = None)
TargetModel: The model to request for inference when invoking a multi-model endpoint
(Default value = None)
TargetVariant: Specify the production variant to send the inference request to when
invoking an endpoint that is running two or more variants (Default value = None)
InferenceId: If you provide a value, it is added to the captured data when you enable
data capture on the endpoint (Default value = None)
Returns:
object: Inference for the given input.
"""
url = "http://%s:%d/invocations" % (get_docker_host(), self.serving_port)
headers = {}
if ContentType is not None:
headers["Content-type"] = ContentType
if Accept is not None:
headers["Accept"] = Accept
if CustomAttributes is not None:
headers["X-Amzn-SageMaker-Custom-Attributes"] = CustomAttributes
if TargetModel is not None:
headers["X-Amzn-SageMaker-Target-Model"] = TargetModel
if TargetVariant is not None:
headers["X-Amzn-SageMaker-Target-Variant"] = TargetVariant
if InferenceId is not None:
headers["X-Amzn-SageMaker-Inference-Id"] = InferenceId
# The http client encodes all strings using latin-1, which is not what we want.
if isinstance(Body, str):
Body = Body.encode("utf-8")
r = self.http.request("POST", url, body=Body, preload_content=False, headers=headers)
return {"Body": r, "ContentType": Accept}
class LocalSession(Session):
"""A SageMaker ``Session`` class for Local Mode.
This class provides alternative Local Mode implementations for the functionality of
:class:`~sagemaker.session.Session`.
"""
def __init__(
self, boto_session=None, default_bucket=None, s3_endpoint_url=None, disable_local_code=False
):
"""Create a Local SageMaker Session.
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.
s3_endpoint_url (str): Override the default endpoint URL for Amazon S3, if set
(default: None).
disable_local_code (bool): Set ``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).
"""
self.s3_endpoint_url = s3_endpoint_url
# We use this local variable to avoid disrupting the __init__->_initialize API of the
# parent class... But overwriting it after constructor won't do anything, so prefix _ to
# discourage external use:
self._disable_local_code = disable_local_code
super(LocalSession, self).__init__(boto_session=boto_session, default_bucket=default_bucket)
if platform.system() == "Windows":
logger.warning("Windows Support for Local Mode is Experimental")
def _initialize(
self, boto_session, sagemaker_client, sagemaker_runtime_client, **kwargs
): # pylint: disable=unused-argument
"""Initialize this Local SageMaker Session.
Args:
boto_session:
sagemaker_client:
sagemaker_runtime_client:
kwargs:
Returns:
"""
if boto_session is None:
self.boto_session = boto3.Session()
else:
self.boto_session = boto_session
self._region_name = self.boto_session.region_name
if self._region_name is None:
raise ValueError(
"Must setup local AWS configuration with a region supported by SageMaker."
)
self.sagemaker_client = LocalSagemakerClient(self)
self.sagemaker_runtime_client = LocalSagemakerRuntimeClient(self.config)
self.local_mode = True
if self.s3_endpoint_url is not None:
self.s3_resource = boto_session.resource("s3", endpoint_url=self.s3_endpoint_url)
self.s3_client = boto_session.client("s3", endpoint_url=self.s3_endpoint_url)
sagemaker_config_file = os.path.join(os.path.expanduser("~"), ".sagemaker", "config.yaml")
if os.path.exists(sagemaker_config_file):
try:
import yaml
except ImportError as e:
logger.error(_module_import_error("yaml", "Local mode", "local"))
raise e
self.config = yaml.safe_load(open(sagemaker_config_file, "r"))
if self._disable_local_code and "local" in self.config:
self.config["local"]["local_code"] = False
def logs_for_job(self, job_name, wait=False, poll=5, log_type="All"):
"""A no-op method meant to override the sagemaker client.
Args:
job_name:
wait: (Default value = False)
poll: (Default value = 5)
Returns:
"""
# override logs_for_job() as it doesn't need to perform any action
# on local mode.
pass # pylint: disable=unnecessary-pass
def logs_for_processing_job(self, job_name, wait=False, poll=10):
"""A no-op method meant to override the sagemaker client.
Args:
job_name:
wait: (Default value = False)
poll: (Default value = 10)
Returns:
"""
# override logs_for_job() as it doesn't need to perform any action
# on local mode.
pass # pylint: disable=unnecessary-pass
class file_input(object):
"""Amazon SageMaker channel configuration for FILE data sources, used in local mode."""
def __init__(self, fileUri, content_type=None):
"""Create a definition for input data used by an SageMaker training job in local mode."""
self.config = {
"DataSource": {
"FileDataSource": {
"FileDataDistributionType": "FullyReplicated",
"FileUri": fileUri,
}
}
}
if content_type is not None:
self.config["ContentType"] = content_type