[100% Off] Aws Certified Machine Learning Engineer Associate - Complete
Theory | Hands-On Labs | Full Practice Exam with Explanations | Downloadable PDF Slides | Pass the certification exam
What you’ll learn
- Master key AWS ML services including SageMaker
- Bedrock
- and Comprehend through hands-on demonstrations and practical implementation.
- Design
- deploy
- and monitor machine learning pipelines on AWS using services like CloudWatch
- CloudTrail
- and SageMaker Model Monitor.
- Implement data preparation workflows using AWS analytics services including Glue
- EMR
- and Athena for effective ML model development.
- Develop secure and cost-effective ML solutions by implementing best practices in IAM policies
- encryption
- and resource optimization.
Requirements
- “Basic cloud computing knowledge is helpful but not required. This course is designed for IT professionals with some programming experience in Python
- Java
- or similar languages. Familiarity with data concepts and AWS fundamentals is beneficial
- but comprehensive hands-on demonstrations will guide you through each service. Youll need an AWS account (free tier is sufficient) and a computer with internet access to follow along with the practical exercises.”
Description
Are you ready to master AWS Machine Learning and earn your certification? This comprehensive course prepares you for the AWS Certified Machine Learning Engineer Associate exam while building practical, hands-on skills you can apply immediately.What This Course Offers
Through a perfect balance of theory and practice, you’ll master all services covered in the MLA-C01 exam. Each section includes conceptual lectures followed by hands-on demonstrations where you’ll implement what you’ve learned in real AWS environments.
Course Highlights
-
Complete Coverage: Learn all essential AWS services required for the certification, including Amazon SageMaker, Bedrock, Comprehend, Rekognition, and many more.
-
Hands-On Learning: Follow along with practical demonstrations for each key service, reinforcing theoretical concepts with real implementation experience.
-
Data Preparation Mastery: Develop expertise in AWS analytics services like Glue, EMR, Athena, and Kinesis to prepare data for machine learning workflows.
-
Deployment & Orchestration: Learn to deploy ML models using various AWS services and build automated CI/CD pipelines for ML workflows.
-
Monitoring & Security: Implement best practices for monitoring ML solutions, optimizing costs, and securing ML infrastructure using IAM, KMS, and other security services.
Beyond Certification
While this course thoroughly prepares you for the AWS Certified Machine Learning Engineer Associate exam, it goes beyond theoretical knowledge. You’ll develop practical skills in designing, implementing, and maintaining ML solutions on AWS that you can apply in real-world projects.Whether you’re new to machine learning on AWS or looking to formalize your knowledge with certification, this course provides everything you need to succeed as an AWS Machine Learning Engineer.
Join now and take the next step in your cloud and machine learning career!