AI1-C01 Exam Question 6

A research company implemented a chatbot by using a foundation model (FM) from Amazon Bedrock. The chatbot searches for answers to questions from a large database of research papers.
After multiple prompt engineering attempts, the company notices that the FM is performing poorly because of the complex scientific terms in the research papers.
How can the company improve the performance of the chatbot?
  • AI1-C01 Exam Question 7

    A company is building an ML model to analyze archived data. The company must perform inference on large datasets that are multiple GBs in size. The company does not need to access the model predictions immediately.
    Which Amazon SageMaker inference option will meet these requirements?
  • AI1-C01 Exam Question 8

    A large retailer receives thousands of customer support inquiries about products every day. The customer support inquiries need to be processed and responded to quickly. The company wants to implement Agents for Amazon Bedrock.
    What are the key benefits of using Amazon Bedrock agents that could help this retailer?
  • AI1-C01 Exam Question 9

    An AI practitioner trained a custom model on Amazon Bedrock by using a training dataset that contains confidential data. The AI practitioner wants to ensure that the custom model does not generate inference responses based on confidential data.
    How should the AI practitioner prevent responses based on confidential data?
  • AI1-C01 Exam Question 10

    A company has a foundation model (FM) that was customized by using Amazon Bedrock to answer customer queries about products. The company wants to validate the model's responses to new types of queries. The company needs to upload a new dataset that Amazon Bedrock can use for validation.
    Which AWS service meets these requirements?