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2026 NVIDIA NCA-GENL: Perfect NVIDIA Generative AI LLMs Actual Tests
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NVIDIA NCA-GENL Exam Syllabus Topics:| Topic | Details | | Topic 1 | - This section of the exam measures skills of AI Product Developers and covers how to strategically plan experiments that validate hypotheses, compare model variations, or test model responses. It focuses on structure, controls, and variables in experimentation.
| | Topic 2 | - Fundamentals of Machine Learning and Neural Networks: This section of the exam measures the skills of AI Researchers and covers the foundational principles behind machine learning and neural networks, focusing on how these concepts underpin the development of large language models (LLMs). It ensures the learner understands the basic structure and learning mechanisms involved in training generative AI systems.
| | Topic 3 | - Alignment: This section of the exam measures the skills of AI Policy Engineers and covers techniques to align LLM outputs with human intentions and values. It includes safety mechanisms, ethical safeguards, and tuning strategies to reduce harmful, biased, or inaccurate results from models.
| | Topic 4 | - Data Analysis and Visualization: This section of the exam measures the skills of Data Scientists and covers interpreting, cleaning, and presenting data through visual storytelling. It emphasizes how to use visualization to extract insights and evaluate model behavior, performance, or training data patterns.
| | Topic 5 | - LLM Integration and Deployment: This section of the exam measures skills of AI Platform Engineers and covers connecting LLMs with applications or services through APIs, and deploying them securely and efficiently at scale. It also includes considerations for latency, cost, monitoring, and updates in production environments.
| | Topic 6 | | | Topic 7 | - Experimentation: This section of the exam measures the skills of ML Engineers and covers how to conduct structured experiments with LLMs. It involves setting up test cases, tracking performance metrics, and making informed decisions based on experimental outcomes.:
| | Topic 8 | - Data Preprocessing and Feature Engineering: This section of the exam measures the skills of Data Engineers and covers preparing raw data into usable formats for model training or fine-tuning. It includes cleaning, normalizing, tokenizing, and feature extraction methods essential to building robust LLM pipelines.
| | Topic 9 | - Software Development: This section of the exam measures the skills of Machine Learning Developers and covers writing efficient, modular, and scalable code for AI applications. It includes software engineering principles, version control, testing, and documentation practices relevant to LLM-based development.
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NVIDIA Generative AI LLMs Sample Questions (Q64-Q69):NEW QUESTION # 64
In the context of language models, what does an autoregressive model predict?
- A. The next token solely using recurrent network or LSTM cells.
- B. The probability of the next token in a text given the previous tokens.
- C. The probability of the next token by looking at the previous and future input tokens.
- D. The probability of the next token using a Monte Carlo sampling of past tokens.
Answer: B
Explanation:
Autoregressive models are a cornerstone of modern language modeling, particularly in large language models (LLMs) like those discussed in NVIDIA's Generative AI and LLMs course. These models predict the probability of the next token in a sequence based solely on the preceding tokens, making them inherently sequential and unidirectional. This process is often referred to as "next-token prediction," where the model learns to generate text by estimating the conditional probability distribution of the next token given the context of all previous tokens. For example, given the sequence "The cat is," the model predicts the likelihood of the next word being "on," "in," or another token. This approach is fundamental to models like GPT, which rely on autoregressive decoding to generate coherent text. Unlike bidirectional models (e.g., BERT), which consider both previous and future tokens, autoregressive models focus only on past tokens, making option D incorrect. Options B and C are also inaccurate, as Monte Carlo sampling is not a standard method for next- token prediction in autoregressive models, and the prediction is not limited to recurrent networks or LSTM cells, as modern LLMs often use Transformer architectures. The course emphasizes this concept in the context of Transformer-based NLP: "Learn the basic concepts behind autoregressive generative models, including next-token prediction and its implementation within Transformer-based models." References: NVIDIA Building Transformer-Based Natural Language Processing Applications course; NVIDIA Introduction to Transformer-Based Natural Language Processing.
NEW QUESTION # 65
Which technology will allow you to deploy an LLM for production application?
- A. Pandas
- B. Git
- C. Falcon
- D. Triton
Answer: D
Explanation:
NVIDIA Triton Inference Server is a technology specifically designed for deploying machine learning models, including large language models (LLMs), in production environments. It supports high-performance inference, model management, and scalability across GPUs, making it ideal for real-time LLM applications.
According to NVIDIA's Triton Inference Server documentation, it supports frameworks like PyTorch and TensorFlow, enabling efficient deployment of LLMs with features like dynamic batching and model ensemble. Option A (Git) is a version control system, not a deployment tool. Option B (Pandas) is a data analysis library, irrelevant to model deployment. Option C (Falcon) refers to a specific LLM, not a deployment platform.
References:
NVIDIA Triton Inference Server Documentation: https://docs.nvidia.com/deeplearning/triton-inference-server
/user-guide/docs/index.html
NEW QUESTION # 66
What is a foundation model in the context of Large Language Models (LLMs)?
- A. Any model based on the foundation paper "Attention is all you need," that uses recurrent neural networks and convolution layers.
- B. A model that sets the state-of-the-art results for any of the tasks that compose the General Language Understanding Evaluation (GLUE) benchmark.
- C. Any model validated by the artificial intelligence safety institute as the foundation for building transformer-based applications.
- D. Any model trained on vast quantities of data at scale whose goal is to serve as a starter that can be adapted to a variety of downstream tasks.
Answer: D
Explanation:
In the context of Large Language Models (LLMs), a foundation model refers to a large-scale model trained on vast quantities of diverse data, designed to serve as a versatile starting point that can be fine-tuned or adapted for a variety of downstream tasks, such as text generation, classification, or translation. As covered in NVIDIA's Generative AI and LLMs course, foundation models like BERT, GPT, or T5 are pre-trained on massive datasets and can be customized for specific applications, making them highly flexible and efficient.
Option A is incorrect, as achieving state-of-the-art results on GLUE is not a defining characteristic of foundation models, though some may perform well on such benchmarks. Option C is wrong, as there is no specific validation by an AI safety institute required to define a foundation model. Option D is inaccurate, as the "Attention is All You Need" paper introduced Transformers, which rely on attention mechanisms, not recurrent neural networks or convolution layers. The course states: "Foundation models are large-scale models trained on broad datasets, serving as a base for adaptation to various downstream tasks in NLP." References: NVIDIA Building Transformer-Based Natural Language Processing Applications course; NVIDIA Introduction to Transformer-Based Natural Language Processing.
NEW QUESTION # 67
What is 'chunking' in Retrieval-Augmented Generation (RAG)?
- A. A technique used in RAG to split text into meaningful segments.
- B. Rewrite blocks of text to fill a context window.
- C. A method used in RAG to generate random text.
- D. A concept in RAG that refers to the training of large language models.
Answer: A
Explanation:
Chunking in Retrieval-Augmented Generation (RAG) refers to the process of splitting large text documents into smaller, meaningful segments (or chunks) to facilitate efficient retrieval and processing by the LLM.
According to NVIDIA's documentation on RAG workflows (e.g., in NeMo and Triton), chunking ensures that retrieved text fits within the model's context window and is relevant to the query, improving the quality of generated responses. For example, a long document might be divided into paragraphs or sentences to allow the retrieval component to select only the most pertinent chunks. Option A is incorrect because chunking does not involve rewriting text. Option B is wrong, as chunking is not about generating random text. Option C is unrelated, as chunking is not a training process.
References:
NVIDIA NeMo Documentation: https://docs.nvidia.com/deeplear ... /docs/en/stable/nlp
/intro.html
Lewis, P., et al. (2020). "Retrieval-Augmented Generation for Knowledge-Intensive NLP Tasks."
NEW QUESTION # 68
Which aspect in the development of ethical AI systems ensures they align with societal values and norms?
- A. Ensuring AI systems have explicable decision-making processes.
- B. Achieving the highest possible level of prediction accuracy in AI models.
- C. Developing AI systems with autonomy from human decision-making.
- D. Implementing complex algorithms to enhance AI's problem-solving capabilities.
Answer: A
Explanation:
Ensuring explicable decision-making processes, often referred to as explainability or interpretability, is critical for aligning AI systems with societal values and norms. NVIDIA's Trustworthy AI framework emphasizes that explainable AI allows stakeholders to understand how decisions are made, fostering trust and ensuring compliance with ethical standards. This is particularly important for addressing biases and ensuring fairness. Option A (prediction accuracy) is important but does not guarantee ethical alignment. Option B (complex algorithms) may improve performance but not societal alignment. Option C (autonomy) can conflict with ethical oversight, making it less desirable.
References:
NVIDIA Trustworthy AI:https://www.nvidia.com/en-us/ai-data-science/trustworthy-ai/
NEW QUESTION # 69
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