AWS Certified Generative AI Developer - Professional (AIP-C01) Domain 1
Foundation Model Integration, Data Management, and Compliance
Official Exam Guide: Domain 1: Foundation Model Integration, Data Management, and Compliance
Skill Builder: AWS Certified Generative AI Developer - Professional Exam Prep
Domain Overview
Domain 1 is the largest domain (31% of exam) focusing on architecting GenAI solutions, selecting and configuring foundation models (FMs), implementing data pipelines, designing vector stores, creating retrieval systems, and implementing prompt engineering with governance.
Task 1.1: Analyze requirements and design GenAI solutions
Key Skills:
- Create comprehensive architectural designs aligned with business needs
- Develop technical proof-of-concept implementations
- Create standardized technical components using Well-Architected Framework
Essential Documentation:
- AWS Well-Architected Framework
- Generative AI Lens - Well-Architected Framework
- What is Amazon Bedrock?
Task 1.2: Select and configure FMs
Key Skills:
- Assess and choose FMs for specific business use cases
- Create flexible architecture patterns for dynamic model selection
- Design resilient AI systems with circuit breakers and fallback
- Implement FM customization deployment and lifecycle management
Essential Documentation:
- Supported Foundation Models in Amazon Bedrock
- Amazon Bedrock Cross-Region Inference
- SageMaker Model Registry
- Amazon Bedrock Model Customization
Task 1.3: Implement data validation and processing pipelines for FM consumption
Key Skills:
- Create comprehensive data validation workflows
- Create data processing workflows for multimodal data (text, image, audio, tabular)
- Format input data for FM inference
- Enhance input data quality for better FM responses
Essential Documentation:
Task 1.4: Design and implement vector store solutions
Key Skills:
- Create advanced vector database architectures for FM augmentation
- Develop comprehensive metadata frameworks for search precision
- Implement high-performance vector database architectures
- Design data maintenance systems for current information
Essential Documentation:
- Amazon Bedrock Knowledge Bases
- OpenSearch k-NN Plugin
- Amazon Aurora PostgreSQL with pgvector
- OpenSearch Neural Plugin
Task 1.5: Design retrieval mechanisms for FM augmentation
Key Skills:
- Develop effective document segmentation approaches
- Select and configure optimal embedding solutions
- Deploy vector search solutions
- Create advanced search architectures (hybrid search, reranking)
- Develop sophisticated query handling systems
Essential Documentation:
- Amazon Bedrock Chunking Strategies
- Amazon Titan Embedding Models
- Set up Knowledge Bases
- Amazon Bedrock Reranker Models
Task 1.6: Implement prompt engineering strategies and governance
Key Skills:
- Create effective model instruction frameworks
- Build interactive AI systems with context maintenance
- Implement comprehensive prompt management and governance
- Develop quality assurance systems for prompts
- Enhance FM performance with advanced prompting techniques
- Design complex prompt systems (chains, conditional branching)
Essential Documentation:
- Amazon Bedrock Prompt Management
- Amazon Bedrock Guardrails
- Amazon Bedrock Prompt Flows
- AWS Step Functions
AWS Service FAQs
Study Tips
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Master Amazon Bedrock comprehensively - Bedrock is central to this domain and exam. Understand all capabilities: foundation models, Knowledge Bases, Agents, Guardrails, Prompt Management, Flows, and model customization.
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Practice vector database implementations - Hands-on experience with OpenSearch, Aurora pgvector, and Bedrock Knowledge Bases is essential for understanding retrieval augmentation patterns.
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Learn prompt engineering systematically - Go beyond basic prompting to understand chain-of-thought, few-shot learning, prompt flows, and governance with Bedrock Prompt Management.
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Understand RAG architecture deeply - Retrieval Augmented Generation is heavily tested. Know chunking strategies, embedding selection, hybrid search, and reranking.
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Study model selection criteria - Understand how to evaluate FMs based on performance benchmarks, capability analysis, cost, latency, and context window requirements.
Note: This is Domain 1 of 5. Master this domain thoroughly as it represents 31% of the exam content.