Log in / Sign Up
  • Home
  • About
  • Training
    • Course Catalog
    • Exams
    • Learning Journeys
  • Calendar
  • Contact

Call us

+(27) 11 568 8065

16th Rd, 400 Randjies Office Park, Block L South, Midrand, 1685
mehacademy.africa
MEH ACADEMY
MEH Academy-01
  • Home
  • About
  • Training
    • Course Catalog
    • Exams
    • Learning Journeys
  • Calendar
  • Contact

Practical Data Science with Amazon SageMaker

Curriculum

  • 1 Section
  • 9 Lessons
  • 1 Day
Expand all sectionsCollapse all sections
  • Topics
    9
    • 1.1
      Module 1: Introduction to machine learning Types of ML Job Roles in ML Steps in the ML pipeline
    • 1.2
      Module 2: Introduction to data prep and SageMaker Training and test dataset defined Introduction to SageMaker Demonstration: SageMaker console Demonstration: Launching a Jupyter notebook
    • 1.3
      Module 3: Problem formulation and dataset preparation Business challenge: Customer churn Review customer churn dataset
    • 1.4
      Module 4: Data analysis and visualization Demonstration: Loading and visualizing your dataset Exercise 1: Relating features to target variables Exercise 2: Relationships between attributes Demonstration: Cleaning the data
    • 1.5
      Module 5: Training and evaluating a model Types of algorithms XGBoost and SageMaker Demonstration: Training the data Exercise 3: Finishing the estimator definition Exercise 4: Setting hyper parameters Exercise 5: Deploying the model Demonstration: hyper parameter tuning with SageMaker Demonstration: Evaluating model performance
    • 1.6
      Module 6: Automatically tune a model Automatic hyper parameter tuning with SageMaker Exercises 6-9: Tuning jobs
    • 1.7
      Module 7: Deployment / production readiness Deploying a model to an endpoint A/B deployment for testing Auto Scaling Demonstration: Configure and test auto scaling Demonstration: Check hyper parameter tuning job Demonstration: AWS Auto Scaling Exercise 10-11: Set up AWS Auto Scaling
    • 1.8
      Module 8: Relative cost of errors Cost of various error types Demo: Binary classification cutoff
    • 1.9
      Module 9: Amazon SageMaker architecture and features Accessing Amazon SageMaker notebooks in a VPC Amazon SageMaker batch transforms Amazon SageMaker Ground Truth Amazon SageMaker Neo
This content is protected, please login and enroll in the course to view this content!
Module 3: Problem formulation and dataset preparation Business challenge: Customer churn Review customer churn dataset
Prev
Module 5: Training and evaluating a model Types of algorithms XGBoost and SageMaker Demonstration: Training the data Exercise 3: Finishing the estimator definition Exercise 4: Setting hyper parameters Exercise 5: Deploying the model Demonstration: hyper parameter tuning with SageMaker Demonstration: Evaluating model performance
Next
MEH Academy-01

Follow us on social media

Training

  • Training Catalog
  • Exams
  • Learning Journeys

CATEGORIES

  • Design
  • Development
  • Marketing
  • Finance & Accounting
  • IT & Software
  • Sales Marketing
  • Photohraphy
  • UX Design
  • Art & Humanities
  • Social Sciences
  • Personal
  • Lifiestyle
  • Seo

SUPPORT

  • Profile
  • Contact
  • Help Center
  • Privacy Policy

GET IN TOUCH

We don’t send spam so don’t worry.

© 2025 MEH Academy. All Rights Reserved.

  • Help
  • Term Conditions
  • Security
  • Privacy Policy
  • Returns Policy