A collection of example code and resources for AWS AI/ML services, created and maintained by AWS Specialist Solution Architects.
This repository provides AWS users with practical examples and use cases for AI/ML services including Amazon Bedrock and Amazon SageMaker. The code includes Jupyter notebooks for experimental use cases and deployable Infrastructure as Code (IaC) artifacts.
- Jupyter Notebooks: Interactive examples and experiments
- IaC Templates: Deployable infrastructure code
- Code Artifacts: Production-ready implementations
- Use Cases: Real-world AI/ML scenarios
- Amazon Bedrock
- Amazon SageMaker
- Related AWS AI/ML services
- Clone this repository
- Navigate to the specific service folder
- Follow the README instructions in each folder
- Ensure you have appropriate AWS credentials configured
- AWS Account with appropriate permissions
- AWS CLI configured
- Python 3.11+ (for Jupyter notebooks)
- Jupyter Lab/Notebook (for interactive examples)
AWS Specialist Solution Architects
This project is licensed under the MIT License - see the LICENSE file for details.