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AWS: ML Workflows with SageMaker, Storage & Security
AWS: ML Workflows with SageMaker, Storage & Security is the fourth course in the Exam Prep (MLA-C01): AWS Certified Machine Learning Engineer – Associate Specialization. This course enables learners to design secure, scalable, and efficient machine learning workflows on AWS, focusing on key pillars: data storage, model development, and security.
Learners will begin by exploring how to collect, store, and stream ML data using services like Amazon S3, Amazon Kinesis, and Amazon Redshift. The course then transitions into hands-on model development with Amazon SageMaker, including data preparation, training, and deployment processes. In the final module, learners are introduced to the critical aspects of security and data protection, learning how to secure ML pipelines using IAM, KMS, encryption, and network controls.
This course prepares learners to build production-grade ML systems that not only scale efficiently but also meet enterprise-level compliance and security requirements.
This course consists of three comprehensive modules, each divided into focused lessons and practical demonstrations. Learners will gain approximately 3–3.5 hours of video content, featuring step-by-step tutorials using AWS services and real-world ML pipeline examples. Graded and Ungraded Quizzes are included in every module to test knowledge and practical readiness.
Module 1: Data Storage & Real-Time Streaming on AWS
Module 2: Data Preparation & ML Model Development with Amazon SageMaker
Module 3: Security, Identity & Data Protection on AWS
By the end of this course, learners will be able to:
Design end-to-end ML workflows using AWS storage, compute, and ML services
Process streaming and batch data sources for ML model development
Secure ML pipelines using IAM, encryption, and network controls
Build compliance-ready ML solutions using Amazon SageMaker and supporting services
This course is ideal for cloud developers, ML engineers, and data professionals with hands-on experience in AWS who are looking to master the integration of machine learning workflows with enterprise-grade data management and security. It is especially valuable for those preparing for the AWS Certified Machine Learning Engineer – Associate (MLA-C01) exam, with a focus on storage, model development, and secure deployment practices.
Duration
7 Months
Institution
Whizlabs
Format
Online
Eligibility Criteria
school
Academic Foundation
A recognized Bachelor’s degree or high school equivalent required for admission into Whizlabs.
language
Language Proficiency
English proficiency required. IELTS, TOEFL, or standard medium-of-instruction certificates accepted.
Detailed Fees Breakdown
Base Tuition Fee
$393
Total Est. Investment
$393
Scholarships and early-bird waivers may apply. Contact admissions for exact institutional fees.
Academic Trajectory
Program Outcome
Graduates of the AWS: ML Workflows with SageMaker, Storage & Security program at Whizlabs are equipped with global perspectives, ready to excel in international markets and top-tier career opportunities.