Fdaytalk Homework Help: Questions and Answers: A news agency wants to use Al to create unique news articles based on a given topic. This is an example for which kind of generative Al use case?
a) Question and Answers Generation
b) Content Generation
c) Content Summarization
d) All the above
Answer:
First, let’s understand what the question is about “Generative Al use case”. For this we need to identify which generative AI use case best fits to given scenario: a news agency wants to use AI to create unique news articles based on a given topic.
Given Options: Step by step analysis
a) Question and Answers Generation:
Question and Answers Generation involves creating questions and corresponding answers based on input data. This is commonly used in customer service, educational tools, and knowledge bases.
So, creating unique news articles does not primarily involve generating questions and answers. This is not the correct use case.
b) Content Generation:
Content Generation involves creating new, original content from a given prompt or topic. This is common in writing articles, blog posts, creative writing, and other forms of text generation.
Creating unique news articles based on a given topic is a direct example of content generation, as it involves producing new written content. This is the correct use case.
c) Content Summarization:
Content Summarization involves condensing existing content into shorter versions while preserving key information. This is useful for creating summaries, abstracts, and concise reports.
So, summarizing content does not align with the task of creating unique, original news articles. This is not the correct use case.
d) All the above
Based on the above analysis, the correct options is:
Correct answer: Content Generation (Option B)
Generative Al use case- based on the analysis, the scenario where a news agency wants to use AI to create unique news articles based on a given topic is an example of Content Generation (Option B).
Learn More: Fdaytalk Homework Help
Q. Generative Al models are statistical models that learn to generate new data