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Amazon Exam AIF-C01 Topic 2 Question 17 Discussion

Actual exam question for Amazon's AIF-C01 exam
Question #: 17
Topic #: 2
[All AIF-C01 Questions]

An accounting firm wants to implement a large language model (LLM) to automate document processing. The firm must proceed responsibly to avoid potential harms.

What should the firm do when developing and deploying the LLM? (Select TWO.)

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Suggested Answer: B

Contribute your Thoughts:

Jaime
1 months ago
Adjusting the temperature parameter? Is this model going to be serving up hot takes or crunching numbers?
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Gearldine
7 days ago
Consider the ethical implications of automating document processing.
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Ahmad
1 months ago
Implement safeguards to prevent bias and misinformation.
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Katie
1 months ago
Ensure the LLM is trained on diverse and representative data.
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Lynna
2 months ago
Prompt engineering, huh? Sounds like they're trying to train the model to be a poet. As long as it can crunch those numbers, I'm good.
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Nathan
13 days ago
E) Apply prompt engineering techniques.
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Bernardine
17 days ago
C) Modify the training data to mitigate bias.
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Jeannetta
1 months ago
A) Include fairness metrics for model evaluation.
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Andra
2 months ago
I believe modifying the training data to mitigate bias is also crucial in this case.
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Lili
2 months ago
Whoa, hold up! Modifying the training data? Isn't that like cheating on your homework? I hope they know what they're doing.
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Kelvin
1 months ago
E) Apply prompt engineering techniques.
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Valentin
1 months ago
C) Modify the training data to mitigate bias.
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Mirta
2 months ago
A) Include fairness metrics for model evaluation.
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Raina
2 months ago
Adjusting the temperature parameter? What is this, a cooking class? I'd rather they focus on avoiding overfitting and applying prompt engineering.
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Tiara
2 months ago
Definitely need to include fairness metrics and modify the training data. Bias is a big concern with these models, so they gotta do it right.
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Tayna
2 months ago
I agree with Aimee. It's important to ensure the model is fair and unbiased.
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Aimee
3 months ago
I think the firm should include fairness metrics for model evaluation.
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