AWS Certified AI Practitioner AIF-C01 Practice Question

Within Amazon Bedrock, which statement best describes how Retrieval Augmented Generation (RAG) works when building a knowledge-base chatbot?

  • The application only adjusts temperature and top-p settings to influence creativity, without consulting any external data sources.

  • The application retrains all model parameters on company documents before every inference request to guarantee domain knowledge.

  • After the model answers, the response is saved to Amazon S3 and later indexed by Amazon OpenSearch Service for future searches.

  • The application retrieves relevant text fragments from a vector store, adds them to the user's prompt, and sends the expanded prompt to a foundation model for response generation.

AWS Certified AI Practitioner AIF-C01
Applications of Foundation Models
Your Score:
Settings & Objectives
Random Mixed
Questions are selected randomly from all chosen topics, with a preference for those you haven’t seen before. You may see several questions from the same objective or domain in a row.
Rotate by Objective
Questions cycle through each objective or domain in turn, helping you avoid long streaks of questions from the same area. You may see some repeat questions, but the distribution will be more balanced across topics.

Check or uncheck an objective to set which questions you will receive.

Bash, the Crucial Exams Chat Bot
AI Bot