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Amazon MLS-C01 Exam - Topic 7 Question 47 Discussion

A manufacturing company wants to use machine learning (ML) to automate quality control in its facilities. The facilities are in remote locations and have limited internet connectivity. The company has 20 of training data that consists of labeled images of defective product parts. The training data is in the corporate on-premises data center.The company will use this data to train a model for real-time defect detection in new parts as the parts move on a conveyor belt in the facilities. The company needs a solution that minimizes costs for compute infrastructure and that maximizes the scalability of resources for training. The solution also must facilitate the company's use of an ML model in the low-connectivity environments.Which solution will meet these requirements?
A) Move the training data to an Amazon S3 bucket. Train and evaluate the model by using Amazon SageMaker. Optimize the model by using SageMaker Neo. Deploy the model on a SageMaker hosting services endpoint.
B) Train and evaluate the model on premises. Upload the model to an Amazon S3 bucket. Deploy the model on an Amazon SageMaker hosting services endpoint.
C) Move the training data to an Amazon S3 bucket. Train and evaluate the model by using Amazon SageMaker. Optimize the model by using SageMaker Neo. Set up an edge device in the manufacturing facilities with AWS IoT Greengrass. Deploy the model on the edge device.
D) Train the model on premises. Upload the model to an Amazon S3 bucket. Set up an edge device in the manufacturing facilities with AWS IoT Greengrass. Deploy the model on the edge device.

Amazon MLS-C01 Exam - Topic 7 Question 47 Discussion

Actual exam question for Amazon's MLS-C01 exam
Question #: 47
Topic #: 7
[All MLS-C01 Questions]

A manufacturing company wants to use machine learning (ML) to automate quality control in its facilities. The facilities are in remote locations and have limited internet connectivity. The company has 20 of training data that consists of labeled images of defective product parts. The training data is in the corporate on-premises data center.

The company will use this data to train a model for real-time defect detection in new parts as the parts move on a conveyor belt in the facilities. The company needs a solution that minimizes costs for compute infrastructure and that maximizes the scalability of resources for training. The solution also must facilitate the company's use of an ML model in the low-connectivity environments.

Which solution will meet these requirements?

Show Suggested Answer Hide Answer
Suggested Answer: A

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Anna
8 months ago
C also maximizes scalability with SageMaker and edge deployment.
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Karima
8 months ago
Not sure if edge devices are reliable enough for real-time detection.
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James
8 months ago
Wow, I didn't know AWS IoT Greengrass could be used like that!
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Omer
8 months ago
I disagree, B could work too since it keeps everything on-premises.
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Ilene
9 months ago
Option C seems like the best fit for low connectivity.
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Antonio
9 months ago
Okay, let's see. The question is asking about a problem with the clientless SSLVPN connection, so I'm guessing the solution has to do with the group policy or interface settings.
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Jamal
9 months ago
This question seems straightforward, but I want to make sure I understand the key points about block media recovery before selecting my answers.
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Giuseppe
9 months ago
Okay, let me see here. I know forecasting is about predicting the future, so I'm guessing it's either A or D. I'll have to read the options carefully to decide which one best fits.
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Tish
9 months ago
This seems like a straightforward question about model evaluation. I'm going to go with "Probabilistically" since that aligns with the need to provide both qualitative and quantitative insights about risk.
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