選取您的 Cookie 偏好設定

我們使用提供自身網站和服務所需的基本 Cookie 和類似工具。我們使用效能 Cookie 收集匿名統計資料,以便了解客戶如何使用我們的網站並進行改進。基本 Cookie 無法停用,但可以按一下「自訂」或「拒絕」以拒絕效能 Cookie。

如果您同意,AWS 與經核准的第三方也會使用 Cookie 提供實用的網站功能、記住您的偏好設定,並顯示相關內容,包括相關廣告。若要接受或拒絕所有非必要 Cookie,請按一下「接受」或「拒絕」。若要進行更詳細的選擇,請按一下「自訂」。

Features and benefits - MLOps Workload Orchestrator
此頁面尚未翻譯為您的語言。 請求翻譯

Features and benefits

The MLOps Workload Orchestrator solution provides the following features:

Pre-built ML workloads

The solution deploys with AWS CloudFormation templates to provision common ML workloads for Amazon SageMaker AI, such as model training, batch transform, real-time inference, and model monitoring.

Automatically deploy one or more ML workloads

Use the solution-provided API endpoint or an Amazon Simple Storage Service (Amazon S3) bucket to automatically deploy ML workloads at scale.

Multi-account support

Easily deploy and promote ML workloads across different AWS accounts, such as development, staging, and production accounts. Multi-account support is for bring-your-own-model (BYOM) and model monitor pipelines.

Model monitoring

Monitor for deployed ML models and detect deviation in data quality, model quality, model bias, and model explainability.

Track Amazon SageMaker AI resources in a dashboard

Amazon SageMaker AI resources created by the solution, such as models, inference endpoints, models cards, and batch transform jobs, are automatically integrated with Amazon SageMaker AI Model Dashboard.

Notifications

Receive user notifications of pipeline outcomes through SMS or email.

Integration testing

You can run your own integration tests to ensure that the deployed model meets expectations.

Amazon SageMaker AI model registry

The solution provides an option to use Amazon SageMaker AI model registry to deploy versioned models. The model registry allows you to catalog models for production, manage model versions, associate metadata with models, and more.

Extend the solution with custom ML workloads

We designed the solution to be extensible and customizable. You can customize the pre-built CloudFormation templates or provide your own ML workloads templates.

Integration with Service Catalog AppRegistry and AWS Systems Manager Application Manager

This solution includes a Service Catalog AppRegistry resource to register the solution’s CloudFormation template and its underlying resources as an application in both Service Catalog AppRegistry and AWS Systems Manager Application Manager. With this integration, you can centrally manage the solution’s resources and enable application search, reporting, and management actions.

下一個主題:

Use cases

上一個主題:

Solution overview
隱私權網站條款Cookie 偏好設定
© 2025, Amazon Web Services, Inc.或其附屬公司。保留所有權利。