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AWS Certified Machine Learning - Specialty Exam Prep

457+ practice questions

The AWS Certified Machine Learning - Specialty (MLS-C01) exam validates Data engineering, exploratory data analysis, modeling, machine learning implementation, and operations on AWS. ExamPal publishes 457 premium questions and a 40-question free practice exam for this AWS certification, with pages mapped to 4 blueprint domains. The local official-details index records: 180 minutes; 65 total: 50 scored + 15 unscored; Multiple choice / multiple response.

Exam Details

Exam Overview

Administered by

AWS Certification

Exam Format

65 total: 50 scored + 15 unscored; 180 minutes; Multiple choice / multiple response

Passing Score

750 / 1000

Exam Fee

$300

Prerequisite

Machine learning experience plus practical AWS data and ML service experience are recommended.

Topics Covered

ExamPal covers all major topics tested on the AWS Certified Machine Learning - Specialty exam. Our questions are grounded in official study materials.

Content Domain 1: Data Engineering

This domain covers the data engineering work needed to support machine learning solutions, including creating repositories, ingesting data, and transforming data for ML workloads. It emphasizes selecting appropriate storage, orchestration, and processing services for batch and streaming pipelines.

Content Domain 2: Exploratory Data Analysis

This domain covers preparing data for machine learning, engineering useful features, and analyzing data to understand patterns before modeling. It includes data sanitation, feature extraction, visualization, descriptive statistics, and cluster analysis.

Content Domain 3: Modeling

Covers how to frame business problems as machine learning problems, choose appropriate models, train and tune models, and evaluate model performance. This domain emphasizes both classical ML and modern foundation/LLM approaches, along with the practical tradeoffs involved in model selection and evaluation.

Content Domain 4: Machine Learning Implementation and Operations

Covers building, securing, deploying, and operating machine learning solutions in AWS. This domain emphasizes operational qualities such as performance, availability, scalability, resiliency, and fault tolerance, along with service selection and security practices.

Exam Blueprint

What the AWS Certified Machine Learning - Specialty Exam Tests

The exam is divided into 4 domains. Here is what each domain covers and how much weight it carries on the test.

Content Domain 1: Data Engineering

20% of exam

This domain covers the data engineering work needed to support machine learning solutions, including creating repositories, ingesting data, and transforming data for ML workloads. It emphasizes selecting appropriate storage, orchestration, and processing services for batch and streaming pipelines.

  • Task 1.1: Create data repositories for ML
  • Identify data sources
  • Determine storage mediums
  • Task 1.2: Identify and implement a data ingestion solution
  • Identify data job styles and job types
  • Orchestrate data ingestion pipelines
  • Task 1.3: Identify and implement a data transformation solution

Key references: AWS MLS-C01 official exam guide · ExamPal shared topic tree

Content Domain 2: Exploratory Data Analysis

24% of exam

This domain covers preparing data for machine learning, engineering useful features, and analyzing data to understand patterns before modeling. It includes data sanitation, feature extraction, visualization, descriptive statistics, and cluster analysis.

  • Task 2.1: Sanitize and prepare data for modeling
  • Identify and handle missing data, corrupt data, and stop words
  • Format, normalize, augment, and scale data
  • Task 2.2: Perform feature engineering
  • Identify and extract features from datasets, including from data sources such as text, speech, images, and public datasets
  • Analyze and evaluate feature engineering concepts
  • Task 2.3: Analyze and visualize data for ML

Key references: AWS MLS-C01 official exam guide · ExamPal shared topic tree

Content Domain 3: Modeling

36% of exam

Covers how to frame business problems as machine learning problems, choose appropriate models, train and tune models, and evaluate model performance. This domain emphasizes both classical ML and modern foundation/LLM approaches, along with the practical tradeoffs involved in model selection and evaluation.

  • Task 3.1: Frame business problems as ML problems
  • Determine when to use and when not to use ML
  • Know the difference between supervised and unsupervised learning
  • Task 3.2: Select the appropriate model(s) for a given ML problem
  • XGBoost, logistic regression, k-means, linear regression, decision trees, random forests, RNN, CNN, ensemble, transfer learning, and large language models (LLMs)
  • Express the intuition behind models
  • Task 3.3: Train ML models

Key references: AWS MLS-C01 official exam guide · ExamPal shared topic tree

Content Domain 4: Machine Learning Implementation and Operations

20% of exam

Covers building, securing, deploying, and operating machine learning solutions in AWS. This domain emphasizes operational qualities such as performance, availability, scalability, resiliency, and fault tolerance, along with service selection and security practices.

  • Task 4.1: Build ML solutions for performance, availability, scalability, resiliency, and fault tolerance
  • Log and monitor AWS environments
  • AWS CloudTrail and Amazon CloudWatch
  • Task 4.2: Recommend and implement the appropriate ML services and features for a given problem
  • ML on AWS (application services), for example:
  • Amazon Polly
  • Task 4.3: Apply basic AWS security practices to ML solutions

Key references: AWS MLS-C01 official exam guide · ExamPal shared topic tree

Why study with ExamPal

Everything you need to prepare for and pass the AWS Certified Machine Learning - Specialty exam, in one app.

  • 457 MLS-C01 premium practice questions
  • Free 40-question interactive practice exam
  • 4 official AWS blueprint domains covered
  • 37 glossary terms loaded from the shared terminology pack
  • Detailed explanations and per-option rationales for study review
  • Domain-level review paths with study guide, glossary, and static question pages

AWS Certified Machine Learning - Specialty Exam — Common Questions

What is the MLS-C01 exam?
MLS-C01 is AWS Certified Machine Learning - Specialty. The ExamPal page is built from the shared AWS release pack and maps practice questions to the AWS exam guide domains.
How many MLS-C01 questions are in ExamPal?
The current shared release pack includes 457 premium questions and a 40-question free practice exam.
What domains does MLS-C01 cover?
Data Engineering 20%; Exploratory Data Analysis 24%; Modeling 36%; ML Implementation and Operations 20%.
Does the free MLS-C01 practice exam include explanations?
Yes. The free practice exam includes the correct answer, an explanation summary, and per-option rationales where the shared pack provides them.
Where do the MLS-C01 website pages get their data?
The website pages are generated from the ExamPal shared release pack: official materials, syllabus, topic tree, terminology JSON, free-pack questions, and premium-pack questions.

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