Amazon Web Services AWS Certified AI Practitioner Exam AIF-C01 Question # 24 Topic 3 Discussion
AIF-C01 Exam Topic 3 Question 24 Discussion:
Question #: 24
Topic #: 3
A company that streams media is selecting an Amazon Nova foundation model (FM) to process documents and images. The company is comparing Nova Micro and Nova Lite. The company wants to minimize costs.
A.
Nova Micro uses transformer-based architectures. Nova Lite does not use transformer-based architectures.
B.
Nova Micro supports only text data. Nova Lite is optimized for numerical data.
C.
Nova Micro supports only text. Nova Lite supports images, videos, and text.
D.
Nova Micro runs only on CPUs. Nova Lite runs only on GPUs.
The correct answer is C, because Amazon Nova Micro is a smaller, lower-cost foundation model that is text-only, while Nova Lite is a more capable multimodal model that supports images, videos, and text. According to AWS Bedrock documentation, the Nova model family includes variants that differ in capability and cost. Nova Micro is optimized for lightweight text-based tasks, including summarization, question answering, and basic reasoning. This makes it cheaper to operate and well-suited for cost-sensitive workloads. Nova Lite, on the other hand, is a multimodal FM that can analyze documents, screenshots, photographs, charts, and videos, making it ideal for media companies requiring cross-format understanding. AWS clarifies that both Micro and Lite use transformer-based architectures, and run on managed infrastructure that abstracts hardware considerations. Therefore, the main differentiator is capability—and Nova Micro being text-only is the more cost-effective option. Nova Lite is appropriate only when image or video analysis is required.
Referenced AWS Documentation:
Amazon Bedrock – Nova Model Family Overview
AWS Generative AI Model Selection Guide
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