📄️ Selection Criteria to Choose Pre-Trained Models
Learn the key criteria for selecting pre-trained foundation models, including performance, cost, size, and architecture, for the AWS AI Practitioner exam.
📄️ Effect of Inference Parameters on Model Responses
Understand how inference parameters like temperature, top-k, and top-p affect generative AI model responses for the AWS AI Practitioner exam.
📄️ Retrieval-Augmented Generation (RAG)
Explore the concept of Retrieval-Augmented Generation (RAG), its architecture, benefits, and use cases for the AWS AI Practitioner exam.
📄️ AWS Services for Storing Embeddings in Vector Databases
Learn about AWS services for storing and searching embeddings in vector databases, including OpenSearch and RDS with pgvector, for the AWS AI Practitioner exam.
📄️ Cost Tradeoffs of Foundation Model Customization Approaches
Discover the cost, complexity, and flexibility tradeoffs of different foundation model customization methods for the AWS AI Practitioner exam.
📄️ Understanding the Role of Agents in Multi-Step Tasks
Learn what agents are, their role in multi-step tasks, and how they interact with LLMs, APIs, and data sources for the AWS AI Practitioner exam.