The course addresses the needs of organizations embarking on their generative AI journey and how to build comprehensive generative AI strategies that align with broader business objectives.
In the course, you will build expertise across the entire generative AI stack - from foundation models to enterprise integration patterns. In addition, you will learn about advanced data processing techniques, vector database implementation and retrieval augmentation, sophisticated prompt engineering and governance, ag2entic AI systems and tool integration, AI safety and security measures, performance optimization and cost management strategies, comprehensive monitoring and observability solutions, testing and validation frameworks.
The course structure follows AWS's proven model for generative AI adoption, progressing from experimentation to production-ready implementations.
Day 1
Module 1: Foundation Model Selection and Configuration
- Enterprise foundation model evaluation framework
- Dynamic model selection architecture patterns
- Resilient foundation model system designs
- Cost optimization and economic modeling
Module 2: Advanced Data Processing for Foundation Models
- Comprehensive data validation and quality assurance
- Multi-modal data processing pipelines
- Input optimization and performance enhancement
Module 3: Vector Databases and Retrieval Augmentation
- Enterprise vector database architecture
- Advanced document processing and chunking strategies
- Sophisticated retrieval system implementation
- Hands-on Lab: Develop Retrieval-Augmented Generation (RAG) Applications with Amazon Bedrock Knowledge Bases
Day 2
Module 4: Prompt Engineering and Governance
- Advanced prompt engineering frameworks
- Complex prompt orchestration systems
- Enterprise prompt governance and management
- Hands-on Lab: Develop conversation pattern with Amazon Bedrock APIs
Module 5: Agentic AI and Tool Integration
- Agentic AI architecture and evolution
- Amazon Bedrock Agents implementation
- AWS Agentic AI service ecosystem
- Tool integration and production observability
Module 6: AI Safety and Security
- Comprehensive content safety implementation
- Privacy-preserving AI architecture
- AI governance and compliance frameworks
Day 3
Module 7: Performance Optimization and Cost Management
- Token efficiency and cost optimization
- High-performance system architecture
- Intelligent caching systems implementation
- Hands-on Lab: Building Secure and Responsible Gen AI with Guardrails for Amazon Bedrock
Module 8: Monitoring and Observability for Generative AI
- Foundation model monitoring systems
- Business impact and value management
- AI-specific troubleshooting and diagnostics
Module 9: Testing, Validation, and Continuous Improvement
- Comprehensive AI evaluation frameworks
- Quality assurance and continuous improvement
- RAG system evaluation and optimization
Module 10: Enterprise Integration Patterns
- Enterprise connectivity and integration architecture
- Secure access and identity management
- Cross-environment and hybrid deployments
Module 11: Course wrap-up
- Next steps and additional resources
- Course summary
Requirements
- 2 or more years of experience building production grade applications on AWS or with opensource technologies, general AI/ML or data engineering experience
- 1 year of hands-on experience implementing generative AI solutions