Our Top Courses
Data Wrangling & Data Cleaning – Preparing Data for Analytics & AI
Course Prerequisite(s)
- Please note that this course has the following prerequisites which must be completed before it can be accessed
-
Data Engineering Fundamentals – Building Modern Data Pipelines
-
Data Wrangling & Data Cleaning – Preparing Data for Analytics & AI
About Course
Modern organizations generate massive volumes of data from applications, IoT devices, customer interactions, and digital platforms. To process, store, and analyze this data efficiently, companies rely on scalable cloud data platforms.
This course introduces the core concepts of cloud data engineering, including building data pipelines, processing large datasets, and designing scalable data architectures using cloud services.
Learners will explore how major cloud providers such as AWS, Microsoft Azure, and Google Cloud Platform (GCP) support data engineering through services like data lakes, data warehouses, streaming systems, and managed ETL tools.
Through real-world examples and architecture diagrams, students will learn how to design and implement modern data pipelines capable of handling large-scale analytics and machine learning workloads.
By the end of this course, learners will understand how to build cloud-native data platforms used in modern data-driven organizations.
Benefits of the course
- Understand how cloud platforms support data engineering
- Build scalable data pipelines in the cloud
- Understand cloud-based ETL and ELT workflows
- Design cloud data lake architectures
- Work with cloud data warehouses
- Understand batch and real-time data processing
- Learn how analytics and machine learning platforms integrate with cloud data pipelines
- Design cost-efficient and scalable cloud data architectures
Course Content
Earn a certificate
Add this certificate to your resume to demonstrate your skills & increase your chances of getting noticed.