Practical Data Science with Amazon SageMaker [GK0630]

Total time
Location
At location, Online
Starting date and place

Practical Data Science with Amazon SageMaker [GK0630]

Global Knowledge Network Training Ltd.
Logo Global Knowledge Network Training Ltd.
Provider rating: starstarstarstarstar_border 7.7 Global Knowledge Network Training Ltd. has an average rating of 7.7 (out of 3 reviews)

Need more information? Get more details on the site of the provider.

Starting dates and places
computer Online: VIRTUAL TRAINING CENTER
30 Mar 2026
place(Virtual Training Centre)
9 Apr 2026
place(Virtual Training Centre)
3 Jun 2026
place(Virtual Training Centre)
4 Sep 2026
computer Online: VIRTUAL TRAINING CENTER
23 Oct 2026
place(Virtual Training Centre)
2 Dec 2026
computer Online: VIRTUAL TRAINING CENTER
16 Mar 2027
computer Online: VIRTUAL TRAINING CENTER
12 Aug 2027
computer Online: VIRTUAL TRAINING CENTER
2 Dec 2027
Description

OVERVIEW

Artificial intelligence and machine learning (AI/ML) are becoming mainstream. In this course, you will spend a day in the life of a data scientist so that you can collaborate efficiently with data scientists and build applications that integrate with ML. You will learn the basic process data scientists use to develop ML solutions on Amazon Web Services (AWS) with Amazon SageMaker. You will experience the steps to build, train, and deploy an ML model through instructor-led demonstrations and labs.

Course level: Intermediate

Duration: 1 day


Activities

This course includes presentations, hands-on labs, and demonstrations.

OBJECTIVES

In this course, you will learn to:

  • Discuss the bene…

Read the complete description

Frequently asked questions

There are no frequently asked questions yet. If you have any more questions or need help, contact our customer service.

Didn't find what you were looking for? See also: Science, Software / System Engineering, English (FCE / CAE / CPE), Teaching Skills, and Biology.

OVERVIEW

Artificial intelligence and machine learning (AI/ML) are becoming mainstream. In this course, you will spend a day in the life of a data scientist so that you can collaborate efficiently with data scientists and build applications that integrate with ML. You will learn the basic process data scientists use to develop ML solutions on Amazon Web Services (AWS) with Amazon SageMaker. You will experience the steps to build, train, and deploy an ML model through instructor-led demonstrations and labs.

Course level: Intermediate

Duration: 1 day


Activities

This course includes presentations, hands-on labs, and demonstrations.

OBJECTIVES

In this course, you will learn to:

  • Discuss the benefits of different types of machine learning for solving business problems
  • Describe the typical processes, roles, and responsibilities on a team that builds and deploys ML systems
  • Explain how data scientists use AWS tools and ML to solve a common business problem
  • Summarize the steps a data scientist takes to prepare data
  • Summarize the steps a data scientist takes to train ML models
  • Summarize the steps a data scientist takes to evaluate and tune ML models
  • Summarize the steps to deploy a model to an endpoint and generate predictions
  • Describe the challenges for operationalizing ML models
  • Match AWS tools with their ML function

AUDIENCE

- Development Operations (DevOps) engineers

- Application developers

CONTENT

Module 1: Introduction to Machine Learning

  • Benefits of machine learning (ML)
  • Types of ML approaches
  • Framing the business problem
  • Prediction quality
  • Processes, roles, and responsibilities for ML projects

Module 2: Preparing a Dataset

  • Data analysis and preparation
  • Data preparation tools
  • Demonstration: Review Amazon SageMaker Studio and Notebooks
  • Hands-On Lab: Data Preparation with SageMaker Data Wrangler

Module 3: Training a Model

  • Steps to train a model
  • Choose an algorithm
  • Train the model in Amazon SageMaker
  • Hands-On Lab: Training a Model with Amazon SageMaker
  • Amazon CodeWhisperer
  • Demonstration: Amazon CodeWhisperer in SageMaker Studio Notebooks

Module 4: Evaluating and Tuning a Model

  • Model evaluation
  • Model tuning and hyperparameter optimization
  • Hands-On Lab: Model Tuning and Hyperparameter Optimization with Amazon SageMaker

Module 5: Deploying a Model

  • Model deployment
  • Hands-On Lab: Deploy a Model to a Real-Time Endpoint and Generate a Prediction

Module 6: Operational Challenges

  • Responsible ML
  • ML team and MLOps
  • Automation
  • Monitoring
  • Updating models (model testing and deployment)

Module 7: Other Model-Building Tools

  • Different tools for different skills and business needs
  • No-code ML with Amazon SageMaker Canvas
  • Demonstration: Overview of Amazon SageMaker Canvas
  • Amazon SageMaker Studio Lab
  • Demonstration: Overview of SageMaker Studio Lab
  • (Optional) Hands-On Lab: Integrating a Web Application with an Amazon SageMaker Model Endpoint
There are no reviews yet.
  • View related products with reviews: Science.
Share your review
Do you have experience with this course? Submit your review and help other people make the right choice. As a thank you for your effort we will donate £1.- to Stichting Edukans.

There are no frequently asked questions yet. If you have any more questions or need help, contact our customer service.