We have hosted the application amazon sagemaker examples in order to run this application in our online workstations with Wine or directly.


Quick description about amazon sagemaker examples:

Welcome to Amazon SageMaker. This projects highlights example Jupyter notebooks for a variety of machine learning use cases that you can run in SageMaker. If you�re new to SageMaker we recommend starting with more feature-rich SageMaker Studio. It uses the familiar JupyterLab interface and has seamless integration with a variety of deep learning and data science environments and scalable compute resources for training, inference, and other ML operations. Studio offers teams and companies easy on-boarding for their team members, freeing them up from complex systems admin and security processes. Administrators control data access and resource provisioning for their users. Notebook Instances are another option. They have the familiar Jupyter and JuypterLab interfaces that work well for single users, or small teams where users are also administrators. Advanced users also use SageMaker solely with the AWS CLI and Python scripts using boto3 and/or the SageMaker Python SDK.

Features:
  • Example Jupyter notebooks that demonstrate how to build, train, and deploy machine learning models using Amazon SageMaker
  • Amazon SageMaker is a fully managed service for data science and machine learning (ML) workflows
  • You can use Amazon SageMaker to simplify the process of building, training, and deploying ML models
  • The SageMaker example notebooks are Jupyter notebooks that demonstrate the usage of Amazon SageMaker
  • These example notebooks are automatically loaded into SageMaker Notebook Instances
  • Pre-built machine learning framework containers


.

Page navigation:

©2024. Winfy. All Rights Reserved.

By OD Group OU – Registry code: 1609791 -VAT number: EE102345621.