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NVIDIA-Certified Associate AI Infrastructure and Operations Sample Questions (Q17-Q22):
NEW QUESTION # 17
A healthcare provider is deploying an AI-driven diagnostic system that analyzes medical images to detect diseases. The system must operate with high accuracy and speed to support doctors in real-time. During deployment, it was observed that the system's performance degrades when processing high-resolution images in real-time, leading to delays and occasional misdiagnoses. What should be the primary focus to improve the system's real-time processing capabilities?
Answer: D
Explanation:
Real-time medical image analysis demands high accuracy and speed, which degrade with high-resolution images due to computational complexity. Optimizing the AI model's architecture for better parallel processing on GPUs-using techniques like pruning, quantization, or TensorRT optimization-reduces latency while maintaining accuracy. NVIDIA GPUs (e.g., A100) and TensorRT are designed to accelerate such workloads, making this the primary focus for improvement in DGX or healthcare-focused deployments.
More memory (Option A) helps with batching but doesn't address processing speed. Switching to CPUs (Option C) slows performance, as they lack GPU parallelism. Lowering resolution (Option D) risks accuracy loss, undermining diagnostics. Model optimization aligns with NVIDIA's real-time AI strategy.
NEW QUESTION # 18
Which of the following statements is true about Kubernetes orchestration?
Answer: A,D
Explanation:
Kubernetes excels in container orchestration with advanced scheduling (assigning workloads based on resource needs and availability) and load balancing (distributing traffic across pods via Services). It's not inherently bare-metal (it runs on various platforms), and inferencing capability depends on applications, not Kubernetes itself, making B and D the true statements.
(Reference: NVIDIA AI Infrastructure and Operations Study Guide, Section on Kubernetes Orchestration)
NEW QUESTION # 19
How is out-of-band management utilized by network operators in an AI environment?
Answer: C
Explanation:
Out-of-band management provides a dedicated channel, separate from the production network, for remotely managing and troubleshooting devices (e.g., switches, servers) in an AI environment. This ensures control and recovery even if the primary network fails, unlike options tied to model training, compute power, or traffic prioritization.
(Reference: NVIDIA AI Infrastructure and Operations Study Guide, Section on Out-of-Band Management)
NEW QUESTION # 20
Which of the following NVIDIA compute platforms is best suited for deploying AI workloads at the edge with minimal latency?
Answer: C
Explanation:
NVIDIA Jetson (D) is best suited for deploying AI workloads at the edge with minimal latency. The Jetson family (e.g., Jetson Nano, AGX Xavier) is designed for compact, power-efficient edge computing, delivering real-time AI inference for applications like IoT, robotics, and autonomous systems. It integrates GPU, CPU, and I/O in a single module, optimized for low-latency processing on-site.
* NVIDIA GRID(A) is for virtualized GPU sharing, not edge deployment.
* NVIDIA Tesla(B) is a data center GPU, too power-hungry for edge use.
* NVIDIA RTX(C) targets gaming/workstations, not edge-specific needs.
Jetson's edge focus is well-documented by NVIDIA (D).
NEW QUESTION # 21
Which components are essential parts of the NVIDIA software stack in an AI environment? (Select two)
Answer: B,C
Explanation:
The NVIDIA software stack for AI environments includes:
* NVIDIA CUDA Toolkit(A), a foundational platform for GPU-accelerated computing, enabling developers to program GPUs for AI tasks like training and inference.
* NVIDIA TensorRT(B), a high-performance inference library that optimizes deep learning models for deployment on NVIDIA GPUs, critical for AI workloads.
* NVIDIA JetPack SDK(C) is for edge devices (e.g., Jetson), not a core AI data center component.
* NVIDIA Nsight Systems(D) is a profiling tool, useful but not essential to the runtime stack.
* NVIDIA GameWorks(E) is for gaming, unrelated to AI.
CUDA and TensorRT are pillars of NVIDIA's AI ecosystem (A and B).
NEW QUESTION # 22
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