Skip to main content

The CDK Construct Library for AWS::SageMaker

Project description

Amazon SageMaker Construct Library

---

cdk-constructs: Experimental

The APIs of higher level constructs in this module are experimental and under active development. They are subject to non-backward compatible changes or removal in any future version. These are not subject to the Semantic Versioning model and breaking changes will be announced in the release notes. This means that while you may use them, you may need to update your source code when upgrading to a newer version of this package.


Amazon SageMaker provides every developer and data scientist with the ability to build, train, and deploy machine learning models quickly. Amazon SageMaker is a fully-managed service that covers the entire machine learning workflow to label and prepare your data, choose an algorithm, train the model, tune and optimize it for deployment, make predictions, and take action. Your models get to production faster with much less effort and lower cost.

Model

To create a machine learning model with Amazon Sagemaker, use the Model construct. This construct includes properties that can be configured to define model components, including the model inference code as a Docker image and an optional set of separate model data artifacts. See the AWS documentation to learn more about SageMaker models.

Single Container Model

In the event that a single container is sufficient for your inference use-case, you can define a single-container model:

import aws_cdk.aws_sagemaker_alpha as sagemaker
import path as path


image = sagemaker.ContainerImage.from_asset(path.join("path", "to", "Dockerfile", "directory"))
model_data = sagemaker.ModelData.from_asset(path.join("path", "to", "artifact", "file.tar.gz"))

model = sagemaker.Model(self, "PrimaryContainerModel",
    containers=[sagemaker.ContainerDefinition(
        image=image,
        model_data=model_data
    )
    ]
)

Inference Pipeline Model

An inference pipeline is an Amazon SageMaker model that is composed of a linear sequence of multiple containers that process requests for inferences on data. See the AWS documentation to learn more about SageMaker inference pipelines. To define an inference pipeline, you can provide additional containers for your model:

import aws_cdk.aws_sagemaker_alpha as sagemaker

# image1: sagemaker.ContainerImage
# model_data1: sagemaker.ModelData
# image2: sagemaker.ContainerImage
# model_data2: sagemaker.ModelData
# image3: sagemaker.ContainerImage
# model_data3: sagemaker.ModelData


model = sagemaker.Model(self, "InferencePipelineModel",
    containers=[sagemaker.ContainerDefinition(image=image1, model_data=model_data1), sagemaker.ContainerDefinition(image=image2, model_data=model_data2), sagemaker.ContainerDefinition(image=image3, model_data=model_data3)
    ]
)

Container Images

Inference code can be stored in the Amazon EC2 Container Registry (Amazon ECR), which is specified via ContainerDefinition's image property which accepts a class that extends the ContainerImage abstract base class.

Asset Image

Reference a local directory containing a Dockerfile:

import aws_cdk.aws_sagemaker_alpha as sagemaker
import path as path


image = sagemaker.ContainerImage.from_asset(path.join("path", "to", "Dockerfile", "directory"))

ECR Image

Reference an image available within ECR:

import aws_cdk.aws_ecr as ecr
import aws_cdk.aws_sagemaker_alpha as sagemaker


repository = ecr.Repository.from_repository_name(self, "Repository", "repo")
image = sagemaker.ContainerImage.from_ecr_repository(repository, "tag")

DLC Image

Reference a deep learning container image:

import aws_cdk.aws_sagemaker_alpha as sagemaker


repository_name = "huggingface-pytorch-training"
tag = "1.13.1-transformers4.26.0-gpu-py39-cu117-ubuntu20.04"

image = sagemaker.ContainerImage.from_dlc(repository_name, tag)

Model Artifacts

If you choose to decouple your model artifacts from your inference code (as is natural given different rates of change between inference code and model artifacts), the artifacts can be specified via the modelData property which accepts a class that extends the ModelData abstract base class. The default is to have no model artifacts associated with a model.

Asset Model Data

Reference local model data:

import aws_cdk.aws_sagemaker_alpha as sagemaker
import path as path


model_data = sagemaker.ModelData.from_asset(path.join("path", "to", "artifact", "file.tar.gz"))

S3 Model Data

Reference an S3 bucket and object key as the artifacts for a model:

import aws_cdk.aws_s3 as s3
import aws_cdk.aws_sagemaker_alpha as sagemaker


bucket = s3.Bucket(self, "MyBucket")
model_data = sagemaker.ModelData.from_bucket(bucket, "path/to/artifact/file.tar.gz")

Model Hosting

Amazon SageMaker provides model hosting services for model deployment. Amazon SageMaker provides an HTTPS endpoint where your machine learning model is available to provide inferences.

Endpoint Configuration

By using the EndpointConfig construct, you can define a set of endpoint configuration which can be used to provision one or more endpoints. In this configuration, you identify one or more models to deploy and the resources that you want Amazon SageMaker to provision. You define one or more production variants, each of which identifies a model. Each production variant also describes the resources that you want Amazon SageMaker to provision. If you are hosting multiple models, you also assign a variant weight to specify how much traffic you want to allocate to each model. For example, suppose that you want to host two models, A and B, and you assign traffic weight 2 for model A and 1 for model B. Amazon SageMaker distributes two-thirds of the traffic to Model A, and one-third to model B:

import aws_cdk.aws_sagemaker_alpha as sagemaker

# model_a: sagemaker.Model
# model_b: sagemaker.Model


endpoint_config = sagemaker.EndpointConfig(self, "EndpointConfig",
    instance_production_variants=[sagemaker.InstanceProductionVariantProps(
        model=model_a,
        variant_name="modelA",
        initial_variant_weight=2
    ), sagemaker.InstanceProductionVariantProps(
        model=model_b,
        variant_name="variantB",
        initial_variant_weight=1
    )
    ]
)

Endpoint

When you create an endpoint from an EndpointConfig, Amazon SageMaker launches the ML compute instances and deploys the model or models as specified in the configuration. To get inferences from the model, client applications send requests to the Amazon SageMaker Runtime HTTPS endpoint. For more information about the API, see the InvokeEndpoint API. Defining an endpoint requires at minimum the associated endpoint configuration:

import aws_cdk.aws_sagemaker_alpha as sagemaker

# endpoint_config: sagemaker.EndpointConfig


endpoint = sagemaker.Endpoint(self, "Endpoint", endpoint_config=endpoint_config)

AutoScaling

To enable autoscaling on the production variant, use the autoScaleInstanceCount method:

import aws_cdk.aws_sagemaker_alpha as sagemaker

# model: sagemaker.Model


variant_name = "my-variant"
endpoint_config = sagemaker.EndpointConfig(self, "EndpointConfig",
    instance_production_variants=[sagemaker.InstanceProductionVariantProps(
        model=model,
        variant_name=variant_name
    )
    ]
)

endpoint = sagemaker.Endpoint(self, "Endpoint", endpoint_config=endpoint_config)
production_variant = endpoint.find_instance_production_variant(variant_name)
instance_count = production_variant.auto_scale_instance_count(
    max_capacity=3
)
instance_count.scale_on_invocations("LimitRPS",
    max_requests_per_second=30
)

For load testing guidance on determining the maximum requests per second per instance, please see this documentation.

Metrics

To monitor CloudWatch metrics for a production variant, use one or more of the metric convenience methods:

import aws_cdk.aws_sagemaker_alpha as sagemaker

# endpoint_config: sagemaker.EndpointConfig


endpoint = sagemaker.Endpoint(self, "Endpoint", endpoint_config=endpoint_config)
production_variant = endpoint.find_instance_production_variant("my-variant")
production_variant.metric_model_latency().create_alarm(self, "ModelLatencyAlarm",
    threshold=100000,
    evaluation_periods=3
)

Project details


Release history Release notifications | RSS feed

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

aws-cdk.aws-sagemaker-alpha-2.94.0a0.tar.gz (132.4 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

aws_cdk.aws_sagemaker_alpha-2.94.0a0-py3-none-any.whl (131.6 kB view details)

Uploaded Python 3

File details

Details for the file aws-cdk.aws-sagemaker-alpha-2.94.0a0.tar.gz.

File metadata

File hashes

Hashes for aws-cdk.aws-sagemaker-alpha-2.94.0a0.tar.gz
Algorithm Hash digest
SHA256 bb8074b7555b6c32e9d2db420fca303f481369ee09a1b24bb65b1902c89310dd
MD5 bcf8aea919119b2f23f6d8c5cb55b28b
BLAKE2b-256 de83a32f21aa98060a9f35db484835eee36476141452e58b2aa8d673694b6ff9

See more details on using hashes here.

File details

Details for the file aws_cdk.aws_sagemaker_alpha-2.94.0a0-py3-none-any.whl.

File metadata

File hashes

Hashes for aws_cdk.aws_sagemaker_alpha-2.94.0a0-py3-none-any.whl
Algorithm Hash digest
SHA256 e18641b47372393bf83b8d79e7a2d6aae5cb4267d9be3fb2dc273f8270e945ea
MD5 b8d14717aad9a3cbfed991be76545bec
BLAKE2b-256 0707e36d83c94193292abcf1583d92d31ac84b094006d6092350c67e199f7cb5

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page