Important Amazon MLS-C01 AWS ML Specialty Exam Questions

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Amazon AWS Certified Machine Learning - Specialty AWS ML Specialty MLS-C01 Exam

Attempt the Amazon Specialty practice test and solve real exam-like AWS ML Specialty MLS-C01 questions to prepare efficiently and increase your chances of success. Our Amazon MLS-C01 practice questions match the actual AWS Certified Machine Learning - Specialty exam format, helping you enhance confidence and improve performance. With our AWS ML Specialty MLS-C01 practice exam software, you can analyze your performance, identify weak areas, and work on them effectively to boost your final Amazon Specialty exam score.

Vendor: Amazon
Exam Name: AWS Certified Machine Learning - Specialty
Registration Code: MLS-C01
Related Certification: Amazon Specialty, Amazon AWS Certified Machine Learning Certifications
Exam Audience: Data Scientists, Machine Learning Developers,

Total Questions

330

Last Updated

18-05-2026

Exam Duration

180 MINUTES

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Question: 1

[Modeling]

A web-based company wants to improve its conversion rate on its landing page Using a large historical dataset of customer visits, the company has repeatedly trained a multi-class deep learning network algorithm on Amazon SageMaker However there is an overfitting problem training data shows 90% accuracy in predictions, while test data shows 70% accuracy only

The company needs to boost the generalization of its model before deploying it into production to maximize conversions of visits to purchases

Which action is recommended to provide the HIGHEST accuracy model for the company's test and validation data?

Question: 2

[Modeling]

A data scientist at a financial services company used Amazon SageMaker to train and deploy a model that predicts loan defaults. The model analyzes new loan applications and predicts the risk of loan default. To train the model, the data scientist manually extracted loan data from a database. The data scientist performed the model training and deployment steps in a Jupyter notebook that is hosted on SageMaker Studio notebooks. The model's prediction accuracy is decreasing over time. Which combination of slept in the MOST operationally efficient way for the data scientist to maintain the model's accuracy? (Select TWO.)

Question: 3

[Data Engineering]

A machine learning specialist stores IoT soil sensor data in Amazon DynamoDB table and stores weather event data as JSON files in Amazon S3. The dataset in DynamoDB is 10 GB in size and the dataset in Amazon S3 is 5 GB in size. The specialist wants to train a model on this data to help predict soil moisture levels as a function of weather events using Amazon SageMaker.

Which solution will accomplish the necessary transformation to train the Amazon SageMaker model with the LEAST amount of administrative overhead?

Question: 4

[Data Engineering]

A data scientist is building a linear regression model. The scientist inspects the dataset and notices that the mode of the distribution is lower than the median, and the median is lower than the mean.

Which data transformation will give the data scientist the ability to apply a linear regression model?

Question: 5

[Modeling]

A Machine Learning Specialist prepared the following graph displaying the results of k-means for k =

[1:10]

 Exam Question 5 Exhibit 1

Considering the graph, what is a reasonable selection for the optimal choice of k?

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