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Amazon Web Services MLS-C01 Exam With Confidence Using Practice Dumps

Exam Code:
MLS-C01
Exam Name:
AWS Certified Machine Learning - Specialty
Certification:
Questions:
330
Last Updated:
Apr 19, 2026
Exam Status:
Stable
Amazon Web Services MLS-C01

MLS-C01: AWS Certified Specialty Exam 2025 Study Guide Pdf and Test Engine

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AWS Certified Machine Learning - Specialty Questions and Answers

Question 1

A machine learning (ML) specialist must develop a classification model for a financial services company. A domain expert provides the dataset, which is tabular with 10,000 rows and 1,020 features. During exploratory data analysis, the specialist finds no missing values and a small percentage of duplicate rows. There are correlation scores of > 0.9 for 200 feature pairs. The mean value of each feature is similar to its 50th percentile.

Which feature engineering strategy should the ML specialist use with Amazon SageMaker?

Options:

A.

Apply dimensionality reduction by using the principal component analysis (PCA) algorithm.

B.

Drop the features with low correlation scores by using a Jupyter notebook.

C.

Apply anomaly detection by using the Random Cut Forest (RCF) algorithm.

D.

Concatenate the features with high correlation scores by using a Jupyter notebook.

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Question 2

A company supplies wholesale clothing to thousands of retail stores. A data scientist must create a model that predicts the daily sales volume for each item for each store. The data scientist discovers that more than half of the stores have been in business for less than 6 months. Sales data is highly consistent from week to week. Daily data from the database has been aggregated weekly, and weeks with no sales are omitted from the current dataset. Five years (100 MB) of sales data is available in Amazon S3.

Which factors will adversely impact the performance of the forecast model to be developed, and which actions should the data scientist take to mitigate them? (Choose two.)

Options:

A.

Detecting seasonality for the majority of stores will be an issue. Request categorical data to relate new stores with similar stores that have more historical data.

B.

The sales data does not have enough variance. Request external sales data from other industries to improve the model's ability to generalize.

C.

Sales data is aggregated by week. Request daily sales data from the source database to enable building a daily model.

D.

The sales data is missing zero entries for item sales. Request that item sales data from the source database include zero entries to enable building the model.

E.

Only 100 MB of sales data is available in Amazon S3. Request 10 years of sales data, which would provide 200 MB of training data for the model.

Question 3

A Machine Learning Specialist has built a model using Amazon SageMaker built-in algorithms and is not getting expected accurate results The Specialist wants to use hyperparameter optimization to increase the model's accuracy

Which method is the MOST repeatable and requires the LEAST amount of effort to achieve this?

Options:

A.

Launch multiple training jobs in parallel with different hyperparameters

B.

Create an AWS Step Functions workflow that monitors the accuracy in Amazon CloudWatch Logs and relaunches the training job with a defined list of hyperparameters

C.

Create a hyperparameter tuning job and set the accuracy as an objective metric.

D.

Create a random walk in the parameter space to iterate through a range of values that should be used for each individual hyperparameter