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Amazon Exam AIF-C01 Topic 4 Question 2 Discussion

Actual exam question for Amazon's AIF-C01 exam
Question #: 2
Topic #: 4
[All AIF-C01 Questions]

A company is using an Amazon Bedrock base model to summarize documents for an internal use case. The company trained a custom model to improve the summarization quality.

Which action must the company take to use the custom model through Amazon Bedrock?

Show Suggested Answer Hide Answer
Suggested Answer: B

Contribute your Thoughts:

Han
2 months ago
Wait, I thought Amazon Bedrock was a new superhero team. I'm so confused right now. Anyway, I'm guessing C is the right answer. Register that model, baby!
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Alida
2 months ago
Haha, did they really think they could just buy 'Provisioned Throughput' and call it a day? That's like trying to power a rocket with a hamster on a wheel. Option B all the way!
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Devorah
22 days ago
Definitely, using Amazon SageMaker endpoint for real-time inference is the way to go.
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Jacquelyne
1 months ago
I agree, trying to power a rocket with a hamster on a wheel won't get you far.
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Nathan
1 months ago
Option B) Deploy the custom model in an Amazon SageMaker endpoint for real-time inference.
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Shawnda
2 months ago
I'm going with D. Granting access to the custom model in Amazon Bedrock is the crucial step, right? I mean, that's where the magic happens.
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Micah
25 days ago
That's correct. Registering the model with the Amazon SageMaker Model Registry is also important for managing the custom model.
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Elroy
1 months ago
I think we also need to deploy the custom model in an Amazon SageMaker endpoint for real-time inference.
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Gennie
2 months ago
Yes, you're right. Granting access to the custom model in Amazon Bedrock is essential for using it.
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Myra
2 months ago
Definitely option C. Gotta get that custom model registered with the SageMaker Model Registry, that's the key step here.
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Maryrose
25 days ago
Exactly, it's a crucial step in the process of using the custom model effectively within the Amazon Bedrock environment.
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Chun
1 months ago
Once it's registered, the company can easily access and manage the custom model for document summarization.
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Jacklyn
2 months ago
Agreed, that's the first step to take. It will make it easier to use the custom model through Amazon Bedrock.
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Roosevelt
2 months ago
Option C is the way to go. Registering the custom model with the SageMaker Model Registry is essential.
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Rosio
2 months ago
I think granting access to the custom model in Amazon Bedrock is also important for integration with the company's existing systems.
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Rosio
2 months ago
That's a good point, Carli. Maybe both deploying in an endpoint and registering the model are needed.
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Carli
3 months ago
But wouldn't registering the model with the Amazon SageMaker Model Registry also be necessary for tracking and versioning?
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Artie
3 months ago
Hmm, I'm not sure. Registering the model with the Amazon SageMaker Model Registry seems like it could be the right answer, but I'm not 100% certain.
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Kanisha
1 months ago
C: Yeah, that way they can improve the summarization quality for their internal use case.
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Dawne
1 months ago
B: That makes sense. It would allow them to use the custom model through Amazon Bedrock.
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Otis
2 months ago
A: I think the company should deploy the custom model in an Amazon SageMaker endpoint for real-time inference.
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Rosio
3 months ago
I agree with Rosio, deploying the custom model in an endpoint makes sense for real-time use.
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Floyd
3 months ago
I think option B is the way to go. Deploying the custom model in an Amazon SageMaker endpoint for real-time inference seems like the logical choice here.
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Gracia
1 months ago
D) Grant access to the custom model in Amazon Bedrock.
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Belen
2 months ago
That makes sense, registering the model would be important.
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Justine
2 months ago
C) Register the model with the Amazon SageMaker Model Registry.
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Pansy
2 months ago
B) Deploy the custom model in an Amazon SageMaker endpoint for real-time inference.
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Rosio
3 months ago
I think the company should deploy the custom model in an Amazon SageMaker endpoint for real-time inference.
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