Overview
🎓 Crack the AWS Certified Machine Learning Engineer – Associate Exam with Confidence! 🤖 Ready to level up your machine learning career and earn a highly respected AWS certification?
This focused, results-driven course is designed to help you master the MLA-C01 exam blueprint, sharpen your skills, and walk into the exam room with clarity and confidence.
✅ Here’s what you’ll gain:
• A clear understanding of the exam scope, structure, and content—no surprises on test day
• Hands-on practice with exam-style questions, so you can test your readiness and fine-tune your strategy
• Deep dives into real-world ML use cases, with guidance on how to differentiate between them in practical and exam contexts
🚀 Whether you’re a data engineer, developer, or ML practitioner looking to validate your AWS ML skills, this course gives you the insight, context, and preparation techniques to succeed.
🧠 Learn smart. Prepare strategically. Certify with confidence.
👉 Enroll now and start your journey toward becoming an AWS Certified Machine Learning Engineer – Associate.
Activities
This course includes subject overview presentations, exam-style questions, use cases, and group discussions and activities.
Course objectives
In this course, you will learn to:
• Identify the scope and content tested by the AWS Certified Machine Learning Engineer - Associate (MLA-C01) exam.
• Practice exam-style questions and evaluate your preparation strategy.
• Examine use cases and differentiate between them.
Intended audience
This course is intended for individuals who are preparing for the AWS Certified Machine Learning Engineer - Associate (MLA-C01) exam
Prerequisites You are not required to take any specific training before taking this course. However, the following prerequisite knowledge is recommended prior to taking the AWS Certified Machine Learning Engineer - Associate (MLA-C01) exam. General IT knowledge
Learners are recommended to have the following:
• Suggested 1 year of experience in a related role such as a backend software developer, DevOps developer, data engineer, or data scientist.
Basic understanding of common ML algorithms and their use cases • Data engineering fundamentals, including knowledge of common data formats, ingestion, and transformation to work with ML data pipelines
• Knowledge of querying and transforming data
• Knowledge of software engineering best practices for modular, reusable code development, deployment, and debugging
• Familiarity with provisioning and monitoring cloud and on-premises ML resources
• Experience with continuous integration and continuous delivery (CI/CD) pipelines and infrastructure as code (IaC)
• Experience with code repositories for version control and CI/CD pipelines Recommended AWS knowledge
Learners are recommended to be able to do the following:
• Suggested 1 year of experience using Amazon SageMaker AI and other AWS services for ML engineering.
• Knowledge of Amazon SageMaker AI capabilities and algorithms for model building and deployment
• Knowledge of AWS data storage and processing services for preparing data for modeling
• Familiarity with deploying applications and infrastructure on AWS
• Knowledge of monitoring tools for logging and troubleshooting ML systems
• Knowledge of AWS services for the automation and orchestration of CI/CD pipelines
• Understanding of AWS security best practices for identity and access management, encryption, and data protection
Course outline
**Introduction
Domain 1: Data Preparation for Machine Learning (ML)**
1.1 Ingest and store data.
1.2 Transform data and perform feature engineering.
1.3 Ensure data integrity and prepare data for modeling.
Domain 2: ML Model Development
2.1 Choose a modeling approach.
2.2 Train and refine models.
2.3 Analyze model performance.
Domain 3: Deployment and Orchestration of ML Workflows
3.1 Select deployment infrastructure based on existing architecture and requirements.
3.2 Create and script infrastructure based on existing architecture and requirements.
3.3 Use automated orchestration tools to set up continuous integration and continuous delivery (CI/CD) pipelines.
Domain 4: ML Solution Monitoring, Maintenance, and Security
4.1 Monitor model interference.
4.2 Monitor and optimize infrastructure costs.
4.3 Secure AWS resources.
Course completion
AWS updates and occasionally retires services and features as part of ongoing development. While Exam Prep content is regularly updated, there are brief periods when our courses may not reflect the current state of AWS services. We recommend checking the latest AWS documentation and announcements for the most accurate and up-to-date information about the current availability of services and features.
Highlights
- Understand the MLA-C01 Exam Blueprint Gain clarity on the key domains, concepts, and skills assessed in the AWS Certified Machine Learning Engineer – Associate exam to better guide your study plan.
- Apply Knowledge to Real-World ML Use Cases Analyze and differentiate between machine learning use cases, improving your ability to select appropriate AWS tools and approaches in practical scenarios.
- Enhance Exam Readiness with Practice Questions Test your knowledge with exam-style questions and assess your preparation strategy to identify and address knowledge gaps.
Details
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