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Exam contains 104 questions

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Question 85 🔥

Thank You for Being Our Valued Customer We Hope You Enjoy Your Purchase IBM C1000 -185 Exam Question & Answers IBM watsonx Generative AI Engineer – Associate Exam

Question 86 🔥

In a RAG system, the retriever is responsible for fetching relevant documents or information from a knowledge base based on the input query. Different retriever types can be used depending on the nature of the task. Which retriever type is most suitable for a RAG system that requires efficient large -scale retrieval from a document corpus based on semantic similarity?

Question 87 🔥

commands and reasons for failure." You are working on generating synthetic training data using IBM InstructLab to supplement a small dataset for a question -answering system. Which strategy would most effectively enhance the dataset without introducing biases or artifacts?

Question 88 🔥

You are developing a Retrieval -Augmented Generation (RAG) system using IBM WatsonX LLM and a vector database. Your dataset consists of long legal documents, and you want to ensure the system retrieves the most relevant sections of these documents efficiently. Which of the following best describes the appropriate approach to text chunking for this RAG implementation?

Question 89 🔥

reduce performance degradation. C. Apply a differential privacy mechanism that adds calibrated noise to both the model updates and synthetic data generation process. D. Use synthetic data only, which eliminates the need for differential privacy as it does not contain real user information. IBM Watsonx Tuning Studio allows users to fine -tune pre -trained models for their specific use cases. Which of the following correctly describes the primary benefits of using Tuning Studio for optimizing a generative AI model?

Question 90 🔥

You are generating a list of items using IBM watsonx’s generative AI, but you notice that the model sometimes cuts off mid-sentence when using a stop sequence. What could be the best approach to ensure that the model finishes generating complete sentences while also stopping after a specific sequence is reached?

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