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AWS: ML Workflows with SageMaker, Storage & Security

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AWS: ML Workflows with SageMaker, Storage & Security

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Gain insight into a topic and learn the fundamentals.
Intermediate level

Recommended experience

1 week to complete
at 10 hours a week
Flexible schedule
Learn at your own pace

What you'll learn

  • Compare AWS storage options and select the appropriate solution for ML data management.

  • Explore the end-to-end capabilities of Amazon SageMaker for building and managing ML workflows.

  • Secure sensitive data using AWS KMS and Secrets Manager for encryption and credential management.

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Assessments

8 assignments

Taught in English

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This course is part of the Exam Prep MLA-C01: AWS Machine Learning Engineer Associate Specialization
When you enroll in this course, you'll also be enrolled in this Specialization.
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There are 4 modules in this course

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.

Welcome to Week 1 of the AWS: End-to-End ML Workflows with SageMaker, Storage & Security course. This week, you’ll explore the core data infrastructure and streaming services that power scalable machine learning workflows on AWS. We’ll start by reviewing storage options such as Amazon S3, EBS, EFS, and FSx for NetApp ONTAP, and discuss how to select the right storage service based on performance and ML use case requirements. Next, you’ll examine database options for ML, followed by an in-depth look at real-time data ingestion and streaming using services like Amazon Kinesis, Amazon Managed Streaming for Apache Kafka, and Amazon Managed Service for Apache Flink. You’ll also complete a hands-on activity where you’ll create a data streaming pipeline using Kinesis Streams, Amazon S3, and AWS Lambda, enabling real-time data collection and processing for machine learning applications.

What's included

10 videos2 readings2 assignments

10 videosTotal 82 minutes
  • Amazon S37 minutes
  • Amazon EBS7 minutes
  • Amazon EFS6 minutes
  • Amazon FSx for NetApp ONTAP9 minutes
  • Database options for ML8 minutes
  • Amazon Kinesis10 minutes
  • Create Kinesis Streams - S3 Bucket – Lambda : Hands On10 minutes
  • Building Realtime Data Streaming System – Kinesis Data Stream12 minutes
  • Amazon Managed Service for Apache Flink11 minutes
  • Amazon Managed Streaming for Apache Kafka3 minutes
2 readingsTotal 60 minutes
  • Welcome to the Course30 minutes
  • Overview of Data Storage & Real-Time Streaming on AWS30 minutes
2 assignmentsTotal 70 minutes
  • Data Storage & Real-Time Streaming on AWS - Assessment35 minutes
  • Scalable Data Storage & Streaming Architectures on AWS - Knowledge Check35 minutes

Welcome to Week 2 of the AWS: Model Training, Optimization & Deployment course. This week, you'll explore the broader capabilities of Amazon SageMaker and how it supports the full machine learning lifecycle. We’ll begin with an introduction and demo of SageMaker, highlighting its core services and development environment. You’ll then take a deeper dive into SageMaker Data Wrangler for efficient data preparation, followed by a detailed walkthrough of the SageMaker Feature Store, which enables consistent feature reuse across training and inference. As we move forward, you'll learn how to monitor model performance using SageMaker Model Monitor, helping ensure reliability and detect data drift in production. We’ll wrap up the week by using SageMaker JumpStart to quickly deploy pre-built models and solution templates, accelerating your ML experimentation and deployment process.

What's included

6 videos1 reading2 assignments

6 videosTotal 40 minutes
  • Introduction to Amazon Sagemaker4 minutes
  • Amazon Sagemaker - Demo11 minutes
  • Amazon Sagemaker Data Wrangler - Deep Dive7 minutes
  • Amazon Sagemaker Feature Store - Deep Dive8 minutes
  • Amazon Sagemaker Model Monitor - Deep Dive5 minutes
  • Amazon Sagemaker Jumpstart5 minutes
1 readingTotal 30 minutes
  • Overview of Data Preparation & ML Model Development with Amazon SageMaker30 minutes
2 assignmentsTotal 45 minutes
  • Data Preparation & ML Model Development with Amazon SageMaker - Assessment20 minutes
  • ML Data Engineering & Rapid Model Development with SageMaker - Knowledge Check25 minutes

Welcome to Week 3 of the AWS: End-to-End ML Workflows with SageMaker, Storage & Security course. This week, you'll focus on securing and governing your machine learning workloads on AWS. We’ll start by exploring AWS Key Management Service (KMS) and AWS Secrets Manager, which help you securely store, manage, and encrypt sensitive data such as API keys and credentials. Next, we’ll cover AWS WAF and AWS Shield, two essential services for protecting ML applications from web threats and Distributed Denial of Service (DDoS) attacks. You’ll also learn how to use Amazon Macie to detect and protect sensitive data within S3 buckets, ensuring compliance with data privacy standards. We’ll wrap up the week with AWS Trusted Advisor, a powerful tool that provides real-time recommendations to improve security, performance, and fault tolerance across your AWS environment—enabling you to maintain a secure and cost-efficient ML infrastructure.

What's included

6 videos1 reading2 assignments

6 videosTotal 41 minutes
  • AWS KMS8 minutes
  • AWS Secret Manager4 minutes
  • AWS WAF7 minutes
  • AWS Shield7 minutes
  • AWS Macie7 minutes
  • AWS Trusted Advisor8 minutes
1 readingTotal 30 minutes
  • Overview of Security, Identity & Data Protection on AWS30 minutes
2 assignmentsTotal 50 minutes
  • Security, Identity & Data Protection on AWS - Assessment25 minutes
  • Securing Machine Learning Workloads on AWS - Knowledge Check25 minutes

Welcome to Week 4 of the AWS: End-to-End ML Workflows with SageMaker, Storage & Security course. This week, you’ll explore tools that help you monitor, visualize, and optimize your machine learning workflows in production. We’ll begin with Amazon QuickSight, where you’ll learn how to analyze and visualize ML outputs for better business insights. You’ll then dive into SageMaker Model Monitor to detect anomalies in deployed models and ensure ongoing performance. To strengthen observability, you’ll work with AWS X-Ray and CloudWatch Logs to trace model behavior, debug issues, and gain insights into operational metrics. We’ll wrap up by using AWS Cost Explorer and Trusted Advisor to monitor usage and cost, and explore SageMaker Inference Recommender to choose optimal instance types for model deployment—ensuring cost-effective and high-performance inference at scale.

What's included

6 videos3 readings2 assignments

6 videosTotal 45 minutes
  • Amazon QuickSight: Analyze and visualize data for machine learning13 minutes
  • Using SageMaker Model Monitor for Anomaly Detection5 minutes
  • AWS X-Ray7 minutes
  • Amazon CloudWatch Logs7 minutes
  • AWS Cost Explorer9 minutes
  • SageMaker Inference Recommender4 minutes
3 readingsTotal 90 minutes
  • Overview of Monitoring, Visualization & Operational Insights30 minutes
  • Course Conclusion30 minutes
  • What's Next ?30 minutes
2 assignmentsTotal 40 minutes
  • Monitoring, Visualization & Operational Insights - Assessment20 minutes
  • Observability, Insights & Optimization in AWS ML Environments - Knowledge Check20 minutes

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Whizlabs
166 Courses125,579 learners

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