Udemy

Data Engineering on AWS - The complete training

Enroll Now
  • 3,230 Students
  • Updated 5/2025
4.5
(317 Ratings)
CTgoodjobs selects quality courses to enhance professionals' competitiveness. By purchasing courses through links on our site, we may receive an affiliate commission.

Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
18 Hour(s) 51 Minute(s)
Language
English
Taught by
Ashish Prajapati
Rating
4.5
(317 Ratings)

Course Overview

Data Engineering on AWS - The complete training

Build your confidence and credibility as data engineer on AWS Cloud

Data Engineer is in-demand role with a low supply of skilled professionals. This training offer you a means to build your confidence and credibility as data engineer, data architect, and other data-related roles.

In this training you will develop ability to implement data pipelines and to monitor, troubleshoot, and optimize cost and performance issues in accordance with best practices.

The training will enhance your ability to complete the following tasks:

· Ingest and transform data, and orchestrate data pipelines while applying programming concepts.

· Choose an optimal data store, design data models, catalog data schemas, and manage data lifecycles.

· Operationalize, maintain, and monitor data pipelines. Analyze data and ensure data quality.

· Implement appropriate authentication, authorization, data encryption, privacy, and governance. Enable logging.


Though this training is focused towards AWS Certified Data Engineer - Associate (DEA-C01) certification but it is equally useful for learners who want to know more about Data Engineering in AWS Cloud. I have covered following four exam domains in it:

  • Domain 1: Data Ingestion and Transformation

  • Domain 2: Data Store Management

  • Domain 3: Data Operations and Support

  • Domain 4: Data Security and Governance


You will gain skills in:

Data Ingestion and Transformation

  • Perform data ingestion.

  • Transform and process data.

  • Orchestrate data pipelines.

  • Apply programming concepts.

Data Store Management

  • Choose a data store.

  • Understand data cataloging systems.

  • Manage the lifecycle of data.

  • Design data models and schema evolution.

Data Operations and Support

  • Automate data processing by using AWS services.

  • Analyze data by using AWS services.

  • Maintain and monitor data pipelines.

  • Ensure data quality.

Data Security and Governance

  • Apply authentication mechanisms.

  • Apply authorization mechanisms

  • Ensure data encryption and masking.

  • Prepare logs for audit.

  • Understand data privacy and governance.

Course Content

  • 10 section(s)
  • 120 lecture(s)
  • Section 1 Introduction - Data is the new oil
  • Section 2 Know your trainer
  • Section 3 Getting started with Data Analytics
  • Section 4 AWS Glue - Catalog and process your data
  • Section 5 Amazon Redshift - A data warehouse in AWS
  • Section 6 Processing Streaming Data on Amazon Kinesis and Amazon MSK
  • Section 7 Running Big data workloads on Amazon EMR
  • Section 8 Building Datalakes on AWS
  • Section 9 Query your data using Amazon Athena
  • Section 10 Visualize your data using Amazon Quicksight

What You’ll Learn

  • Domain 1: Data Ingestion and Transformation
  • Domain 2: Data Store Management
  • Domain 3: Data Operations and Support
  • Domain 4: Data Security and Governance


Reviews

  • D
    Dilip Chaudhari
    4.5

    Good Course with illustrations.

  • K
    Kayalvizhi J
    4.5

    the content was very useful

  • K
    Kunal Kumar
    1.0

    not engaging course, lacks practice exercise,

  • M
    Minh Pham
    5.0

    The course content is excellent! AWS services for Data Engineering are explained clearly, in a simple to understand with the hands-on. I would like to learn about Data Engineering on AWS and this course helps me to achieve this.

Start FollowingSee all

We use cookies to enhance your experience on our website. Please read and confirm your agreement to our Privacy Policy and Terms and Conditions before continue to browse our website.

Read and Agreed