Exam NCA-AIIO Topic 2 Question 21 Discussion

Actual exam question for NVIDIA's NCA-AIIO exam
Question #: 21
Topic #: 2
You are managing an AI infrastructure where multiple AI workloads are being run in parallel, including image recognition, natural language processing (NLP), and reinforcement learning. Due to limited resources, you need to prioritize these workloads. Which AI workload should you prioritize first to ensure the best overall system performance and resource allocation?

Suggested Answer: C Vote an answer

Natural Language Processing (NLP) should be prioritized first to ensure the best overall system performance and resource allocation in this scenario. NLP workloads, such as large language models (e.g., BERT, GPT), are typically compute- and memory-intensive, benefiting significantly from NVIDIA GPUs' parallel processing capabilities (e.g., Tensor Cores). Prioritizing NLP ensures efficient resource use for a high-impact workload, as noted in NVIDIA's "AI Infrastructure and Operations Fundamentals" and "Deep Learning Institute (DLI)" materials, which highlight NLP's growing enterprise demand and GPU optimization.
Image recognition (A) and reinforcement learning (B) are also GPU-intensive but often less resource- constrained than NLP in mixed workloads. Background preprocessing (D) is less time-sensitive and can run opportunistically. NVIDIA's workload prioritization guidance favors NLP in such cases.

by Elaine at Sep 19, 2025, 03:41 PM

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