- A
Availability of labeled training data
Fine-tuning needs labeled data.
- B
Cost of API calls per request
Why wrong: Prompt engineering is cheaper per request.
- C
Latency requirements for the application
Fine-tuning can reduce latency for specific tasks.
- D
Degree of task specialization required
Fine-tuning is better for specialized tasks.
- E
Size of the base model
Why wrong: Model size is not a primary factor.
Quick Answer
The answer is the degree of task specialization required, along with data availability and cost, as the three key factors for choosing between fine-tuning and prompt engineering. This is correct because fine-tuning adjusts model weights through supervised learning on a labeled dataset, making it ideal for highly specialized tasks where the model must learn new patterns, while prompt engineering leverages the model’s existing knowledge without additional training data, suiting general or low-data scenarios. On the Google Cloud Generative AI Leader exam, this question tests your ability to distinguish when to invest in fine-tuning versus using prompt engineering for cost efficiency—a common trap is assuming fine-tuning always yields better results, but without sufficient labeled data, it risks overfitting. A useful memory tip is “Data, Specialization, Cost”: if you lack labeled data or need a quick, cheap solution, choose prompt engineering; if the task demands deep specialization and you have a robust dataset, fine-tuning wins.
Generative AI Leader Fundamentals of Generative AI Practice Question
This Generative AI Leader practice question tests your understanding of fundamentals of generative ai. Read the scenario carefully and evaluate each option against the stated constraints before committing to an answer. After answering, compare your reasoning against the explanation and wrong-answer breakdown below. Once you have made your selection, read the full explanation to reinforce the concept and understand why each distractor is designed to mislead on exam day.
Which THREE factors should be considered when choosing between fine-tuning and prompt engineering for a generative AI task? (Choose three.)
Answer choices
Why each option matters
Answer the question above first, then reveal the full breakdown to understand why each option is right or wrong.
Correct answer & explanation
Availability of labeled training data
Option A is correct because fine-tuning requires a labeled dataset specific to the target task to adjust model weights via supervised learning, whereas prompt engineering relies on the model's existing knowledge without additional training data. Without sufficient labeled data, prompt engineering is often the only viable approach, as fine-tuning would risk overfitting or poor generalization.
Key principle: Answer the scenario, not the keyword: identify the specific constraint before choosing the most familiar-sounding option.
Answer analysis
Option-by-option breakdown
For each option: why learners choose it and why it is or isn't the right answer here.
- ✓
Availability of labeled training data
Why this is correct
Fine-tuning needs labeled data.
Related concept
Read the scenario before looking for a memorised answer.
- ✗
Cost of API calls per request
Why it's wrong here
Prompt engineering is cheaper per request.
- ✓
Latency requirements for the application
Why this is correct
Fine-tuning can reduce latency for specific tasks.
Related concept
Read the scenario before looking for a memorised answer.
- ✓
Degree of task specialization required
Why this is correct
Fine-tuning is better for specialized tasks.
Related concept
Read the scenario before looking for a memorised answer.
- ✗
Size of the base model
Why it's wrong here
Model size is not a primary factor.
Common exam traps
Common exam trap: answer the scenario, not the keyword
Google Cloud often tests the misconception that cost or model size are primary decision factors, when in reality the core trade-off is between data availability (labeled vs. unlabeled) and the degree of task specialization required.
Detailed technical explanation
How to think about this question
Fine-tuning updates model parameters through backpropagation on a task-specific dataset, effectively creating a specialized version of the base model, while prompt engineering uses carefully crafted input templates to steer the pre-trained model's output without weight changes. In practice, fine-tuning can achieve higher accuracy on narrow, domain-specific tasks (e.g., legal document classification) but requires significant labeled data and compute, whereas prompt engineering is lightweight and ideal for rapid prototyping or when data is scarce. A subtle behavior is that prompt engineering may fail on tasks requiring deep domain knowledge not present in the pre-training corpus, whereas fine-tuning can inject that knowledge directly.
KKey Concepts to Remember
- Read the scenario before looking for a memorised answer.
- Find the constraint that changes the correct option.
- Eliminate answers that are true in general but not in this case.
TExam Day Tips
- Watch for words such as best, first, most likely and least administrative effort.
- Review why wrong options are wrong, not only why the correct option is correct.
Key takeaway
Answer the scenario, not the keyword: identify the specific constraint before choosing the most familiar-sounding option.
Real-world example
How this comes up in practice
A startup's cloud architect reviews their monthly bill and notices costs are higher than expected for a long-running batch job. Switching from on-demand instances to Reserved Instances — or using Spot/Preemptible VMs — can reduce compute costs by up to 72 %. Questions like this test whether you understand the tradeoffs between commitment, flexibility, and cost across cloud pricing models.
What to study next
Got this wrong? Here's your next step.
Identify which exam domain this question belongs to, review the core concept, then practise similar questions from the same domain.
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FAQ
Questions learners often ask
What does this Generative AI Leader question test?
Fundamentals of Generative AI — This question tests Fundamentals of Generative AI — Read the scenario before looking for a memorised answer..
What is the correct answer to this question?
The correct answer is: Availability of labeled training data — Option A is correct because fine-tuning requires a labeled dataset specific to the target task to adjust model weights via supervised learning, whereas prompt engineering relies on the model's existing knowledge without additional training data. Without sufficient labeled data, prompt engineering is often the only viable approach, as fine-tuning would risk overfitting or poor generalization.
What should I do if I get this Generative AI Leader question wrong?
Identify which exam domain this question belongs to, review the core concept, then practise similar questions from the same domain.
What is the key concept behind this question?
Read the scenario before looking for a memorised answer.
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Last reviewed: Jun 30, 2026
This Generative AI Leader practice question is part of Courseiva's free Google Cloud certification practice question bank. Courseiva provides original exam-style practice questions with explanations, topic-based practice, mock exams, readiness tracking, and study analytics to help learners prepare for the Generative AI Leader exam.
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