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【General】 Generative-AI-Leader Exam Guide Materials, Generative-AI-Leader Actual Test

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Google Generative-AI-Leader Exam Syllabus Topics:
TopicDetails
Topic 1
  • Business Strategies for a Successful Generative AI Solution: This section of the exam measures the skills of Cloud Architects and evaluates the ability to design, implement, and manage enterprise-level generative AI solutions. It covers the decision-making process for selecting the right solution, integrating AI into an organization, and measuring business impact. A strong emphasis is placed on secure AI practices, highlighting Google’s Secure AI Framework and cloud security tools, as well as the importance of responsible AI, including fairness, transparency, privacy, and accountability.
Topic 2
  • Google Cloud’s Generative AI Offerings: This section of the exam measures the skills of Cloud Architects and highlights Google Cloud’s strengths in generative AI. It emphasizes Google’s AI-first approach, enterprise-ready platform, and open ecosystem. Candidates will learn about Google’s AI infrastructure, including TPUs, GPUs, and data centers, and how the platform provides secure, scalable, and privacy-conscious solutions. The section also explores prebuilt AI tools such as Gemini, Workspace integrations, and Agentspace, while demonstrating how these offerings enhance customer experience and empower developers to build with Vertex AI, RAG capabilities, and agent tooling.
Topic 3
  • Techniques to Improve Generative AI Model Output: This section of the exam measures the skills of AI Engineers and focuses on improving model reliability and performance. It introduces best practices to address common foundation model limitations such as bias, hallucinations, and data dependency, using methods like retrieval-augmented generation, prompt engineering, and human-in-the-loop systems. Candidates are also tested on different prompting techniques, grounding approaches, and the ability to configure model settings such as temperature and token count to optimize results.
Topic 4
  • Fundamentals of Generative AI: This section of the exam measures the skills of AI Engineers and focuses on the foundational concepts of generative AI. It covers the basics of artificial intelligence, natural language processing, machine learning approaches, and the role of foundation models. Candidates are expected to understand the machine learning lifecycle, data quality, and the use of structured and unstructured data. The section also evaluates knowledge of business use cases such as text, image, code, and video generation, along with the ability to identify when and how to select the right model for specific organizational needs.

Google Cloud Certified - Generative AI Leader Exam Sample Questions (Q72-Q77):NEW QUESTION # 72
A company is developing a generative AI-powered customer support chatbot. They want to ensure the chatbot can answer a wide range of customer questions accurately, even those related to recently updated product information not present in the model's original training dat a. What is a key benefit of implementing retrieval-augmented generation (RAG) in this chatbot?
  • A. RAG will enable the chatbot to fine-tune its underlying language model on the fly based on customer interactions.
  • B. RAG will enable the chatbot to access and utilize external, up-to-date knowledge sources to provide more accurate and relevant answers.
  • C. RAG will significantly reduce the computational resources required to run the generative AI model.
  • D. RAG will primarily help the chatbot generate more creative and engaging conversational responses.
Answer: B
Explanation:
The central problem is the Large Language Model's (LLM's) knowledge cutoff, where it cannot answer questions about information that appeared after its training data was collected (e.g., recently updated product details).
Retrieval-Augmented Generation (RAG) is specifically designed to overcome this limitation. The process involves:
Retrieval: When a question is asked, the RAG system first searches an external, up-to-date knowledge source (like a vector database of current product docs).
Augmentation: It retrieves the most relevant, recent text snippets (the context).
Generation: This retrieved context is added to the user's prompt (augmentation) and sent to the LLM, forcing the model to ground its response in the current facts.
The key benefit is thus to enable the chatbot to access and utilize external, up-to-date knowledge sources (D). This ensures the answers are accurate and relevant to the most current product information, directly addressing the knowledge cutoff issue without requiring expensive model retraining.
Option B is the function of the Temperature setting, not RAG.
Option C describes an unproven and unscalable model update mechanism (fine-tuning is a separate process).
RAG is a process enhancement that prioritizes accuracy and relevance over merely reducing computation (A).
(Reference: Google Cloud documentation on RAG states that its primary purpose is to address the "knowledge cutoff" and hallucination issues of LLMs by retrieving relevant and up-to-date information from external knowledge sources at inference time and using this retrieved information to ground the LLM's generation, ensuring factual accuracy.)

NEW QUESTION # 73
A company wants to use generative AI to create a chatbot that can answer customer questions about their products and services. They need to ensure that the chatbot only uses information from the company's official documentation. What should the company do?
  • A. Adjust the temperature parameter.
  • B. Use prompt chaining.
  • C. Use role prompting.
  • D. Use grounding.
Answer: D
Explanation:
The core requirement is to guarantee that the chatbot only uses information from the company's official documentation and does not rely on its general knowledge base. This is crucial for ensuring factual accuracy, relevance to the company's specific products, and preventing the generation of fabricated or incorrect information (hallucinations).
The specific technique designed to address this challenge is Grounding. Grounding is the process of connecting the Large Language Model's (LLM's) responses to a trusted, verifiable source of information, such as an organization's internal documents, databases, or live data feeds. When an LLM is grounded, it is forced to base its answers only on the provided context, effectively preventing it from drawing on its broad, generalized training data. Grounding is often implemented using a method called Retrieval-Augmented Generation (RAG), particularly with tools like Google Cloud's Vertex AI Search, which indexes the official documentation and feeds the relevant snippets to the model.
Options A, B, and C address different aspects of model output: Role prompting sets the model's persona, adjusting temperature controls creativity, and prompt chaining manages conversation history, but none of these techniques restrict the model's source of truth to the official documentation. Therefore, Grounding is the correct and most effective technique for this requirement.

NEW QUESTION # 74
A logistics company wants to use a generative AI (gen AI) agent to automatically check real-time inventory levels across its warehouses and adjust delivery schedules. The gen AI agent needs access to internal inventory data. They want the most cost-effective solution. What should the organization do?
  • A. Use pre-built gen AI chatbots for inventory questions.
  • B. Build a custom API instead of using the gen AI agent.
  • C. Use Vertex AI Studio to fine-tune a model with sample inventory data.
  • D. Use Google Cloud databases and Vertex AI for the agent to get live data.
Answer: D
Explanation:
To achieve real-time inventory checks and adjust delivery schedules, the generative AI agent needs live access to the company's internal inventory data. Google Cloud databases provide the structured storage for this data, and Vertex AI offers the platform to build, deploy, and manage the AI agent, including connecting it to these live data sources. This approach allows the agent to make informed decisions based on current information. Building a custom API for every interaction might be less cost-effective in the long run for dynamic inventory data. Pre-built chatbots might not have the direct integration needed for real-time adjustments, and fine-tuning with sample data wouldn't provide the live data access required.

NEW QUESTION # 75
A company is developing a generative AI application to analyze customer feedback collected through online surveys. Stakeholders are concerned about potential privacy risks associated with this data, as the feedback contains personally identifiable information (PII). They need to mitigate these risks before using the data to train the AI model. What action should the company prioritize?
  • A. Applying data anonymization techniques to remove or obscure sensitive data.
  • B. Focusing on collecting only quantitative feedback data in future surveys.
  • C. Ensuring that the AI model is trained on a large and diverse dataset.
  • D. Implementing strong access controls to limit which teams can view the raw survey data.
Answer: A
Explanation:
The problem is the existence of Personally Identifiable Information (PII) within the customer feedback data, which introduces privacy risks for the development and training of the generative AI model. The goal is to mitigate these risks before using the data to train the AI model.
According to Google's Responsible AI and data handling best practices, when sensitive data like PII is present in a dataset intended for model training, the most critical step to prioritize is data minimization and privacy protection at the source. This is often achieved through anonymization or de-identification.
Applying data anonymization techniques (D) directly addresses the risk by removing or obscuring the sensitive data elements. This prevents the PII from being embedded into the model's parameters during training, thereby eliminating the risk of data leakage or privacy violations in the AI application's outputs. This is a crucial early step in the ML lifecycle for datasets containing sensitive information.
Option C, implementing access controls, is a necessary security measure but is a reactive control that protects the raw data; it does not remove the PII risk from the derived model itself. Option A is a long-term change to data collection but doesn't solve the problem for the existing data. Option B relates to bias and accuracy, not specifically PII risk mitigation.
(Reference: Google Cloud's Secure AI Framework (SAIF) and Responsible AI principles emphasize protecting sensitive data at all stages of the ML lifecycle, with de-identification being the primary method before training.)

NEW QUESTION # 76
What is an example of unsupervised machine learning?
  • A. Training a system to recognize product images using labeled categories.
  • B. Forecasting sales figures using historical sales and marketing spend.
  • C. Predicting subscription renewal based on past renewal status data.
  • D. Analyzing customer purchase patterns to identify natural groupings.
Answer: D
Explanation:
Unsupervised learning deals with unlabeled data. Identifying "natural groupings" or clusters in customer purchase patterns (e.g., segmenting customers into different buying behaviors without pre-defined labels) is a classic example of unsupervised learning (clustering). Options B, C, and D are examples of supervised learning, as they involve labeled data for training (product categories, renewal status, sales figures).
________________________________________

NEW QUESTION # 77
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