Data engineering professional certificate: New hands-on specialization by DeepLearning.AI and AWS

TutoSartup excerpt from this article:
The course covers the significance of cloud networking, resolving database connection issues, and using message queues and streaming platforms—crucial skills for creating strong and scalable data architectures… This comprehensive program covers a wide range of data engineering concepts, tools, …

Data engineers play a crucial role in the modern data-driven landscape, managing essential tasks from data ingestion and processing to transformation and serving. Their expertise is particularly valuable in the era of generative AI, where harnessing the value of vast datasets is paramount.

To empower aspiring and experienced data professionals, DeepLearning.AI and Amazon Web Services (AWS) have partnered to launch the Data Engineering Specialization, an advanced professional certificate on Coursera. This comprehensive program covers a wide range of data engineering concepts, tools, and techniques relevant to modern organizations. It’s designed for learners with some experience working with data who are interested in learning the fundamentals of data engineering. The specialization comprises four hands-on courses, each culminating in a Coursera course certificate upon completion.

Specialization overview

This Data Engineering Specialization is a joint initiative by AWS and DeepLearning.AI, a leading provider of world-class AI education founded by renowned machine learning (ML) pioneer Andrew Ng.

Joe Reis, a prominent figure in data engineering and coauthor of the bestselling book Fundamentals of Data Engineering, leads the program as a primary instructor. By providing a foundational framework, the curriculum ensures learners gain a holistic understanding of the data engineering lifecycle, while covering key aspect such as data architecture, orchestration, DataOps, and data management.

Further enhancing the learning experience, the program features hands-on labs and technical assessments hosted on the AWS Cloud. These practical, cloud-based exercises were designed in partnership with AWS technical experts, including Gal Heyne, Navnit Shukla, and Morgan Willis. Learners will apply theoretical concepts using AWS services and tools, such as Amazon Kinesis, AWS Glue, Amazon Simple Storage Service (Amazon S3), and Amazon Redshift, equipping them with hands-on skill and experience.

Specialization highlights

Participants will be introduced to several key learning opportunities.

Acquisition of core skills and strategies

The specialization equips data engineers with the ability to design data engineering solutions for various use cases, select the right technologies for their data architecture, and circumvent potential pitfalls. The skills gained universally apply across various platforms and technologies, offering learners a program that is versatile.

Unparalleled approach to data engineering education

Unlike conventional courses focused on specific technologies, this specialization provides a comprehensive understanding of data engineering fundamentals. It emphasizes the importance of aligning data engineering strategies with broader business goals, fostering a more integrated and effective approach to building and maintaining data solutions.

Holistic understanding of data engineering

By using the insights from the Fundamentals of Data Engineering book, the curriculum offers a well-rounded education that prepares professionals for success in the data-driven focused industries.

Practical skills through AWS cloud labs

The hands-on labs hosted by AWS Partner Vocareum let learners apply the techniques directly in an AWS environment provided with the course. This practical experience is crucial for mastering the intricacies of data engineering and developing the skills needed to excel in the industry.

Why choose this specialization?

  • Structured learning path–The specification is thoughtfully structured to provide a step-by-step learning journey, from foundational concepts to advanced applications.
  • Expert insights–Gain insights from the authors of Fundamentals of Data Engineering and other industry experts. Learn how to apply practical knowledge to build modern data architecture on the cloud, using cloud services for data engineering.
  • Hands-on experience–Engage in hands-on labs in the AWS Cloud, where you not only learn but also apply the knowledge in real-world scenarios.
  • Comprehensive curriculum–This program encompasses all aspects of the data engineering lifecycle, including data generation in source systems, ingestion, transformation, storage, and serving. It also addresses key undercurrents of data engineering, such as security, data management, and orchestration.

At the end of this specialization, learners will be well-equipped with the necessary skills and expertise to embark on a career in data engineering, an in-demand role at the core of any organization that is looking to use data to create value. Data-centric ML and analytics would not be possible without the foundation of data engineering.

Course modules

The Data Engineering Specialization comprises four courses:

  • Course 1–Introduction to Data Engineering–This foundational module explores the collaborative nature of data engineering, identifying key stakeholders and understanding their requirements. The course delves into a mental framework for building data engineering solutions, emphasizing holistic ecosystem understanding, critical factors like data quality and scalability, and effective requirements gathering. The course then examines the data engineering lifecycle, illustrating interconnections between stages. By showcasing the AWS data engineering stack, the course teaches how to use the right technologies. By the end of this course, learners will have the skills and mindset to tackle data engineering challenges and make informed decisions.
  • Course 2–Source Systems, Data Ingestion, and Pipelines–In this course, data engineers dive deep into the practical aspects of working with diverse data sources, ingestion patterns, and pipeline construction. Learners explore the characteristics of different data formats and the appropriate source systems for generating each type of data, equipping them with the knowledge to design effective data pipelines. The course covers the fundamentals of relational and NoSQL databases, including ACID compliance and CRUD operations, so that engineers learn to interact with a wide range of data source systems. The course covers the significance of cloud networking, resolving database connection issues, and using message queues and streaming platforms—crucial skills for creating strong and scalable data architectures. By mastering the concepts in this course, data engineers will be able to automate data ingestion processes, optimize connectivity, and establish the foundation for successful data engineering projects.
  • Course 3–Data Storage and Queries–This course equips data engineers with principles and best practices for designing robust, efficient data storage and querying solutions. Learners explore the data lake house concept, implementing a medallion-like architecture and using open table formats to build transactional data lakes. The course enhances SQL proficiency by teaching advanced queries, such as aggregations and joins on streaming data, while also exploring data warehouse and data lake capabilities. Learners compare storage performance and discover optimization strategies, like indexing. Data engineers can achieve high performance and scalability in data services by comprehending query execution and processing.
  • Course 4–Data Modeling, Transformation, and Serving–In this capstone course, data engineers explore advanced data modeling techniques, including data vault and star schemas. Learners differentiate between modeling approaches like Inmon and Kimball, gaining the ability to transform data and structure it for optimal analytical and ML use cases. The course equips data engineers with preprocessing skills for textual, image, and tabular data. Learners understand the distinctions between supervised and unsupervised learning, as well as classification and regression tasks, empowering them to design data solutions supporting a range of predictive applications. By mastering these data modeling, transformation, and serving concepts, data engineers can build robust, scalable, and business-aligned data architectures to deliver maximum value.

Enrollment

Whether you’re new to data engineering or looking to enhance your skills, this specialization provides a balanced mix of theory and hands-on experience through 4 courses, each culminating in a Coursera course certificate.

Embark on your data engineering journey from here:

By enrolling in these courses, you’ll also earn the DeepLearning.AI Data Engineering Professional Certificate upon completing all four courses.

Enroll now and take the first step towards mastering data engineering with this comprehensive and practical program, built on the foundation of Fundamentals of Data Engineering and powered by AWS.

Data engineering professional certificate: New hands-on specialization by DeepLearning.AI and AWS
Author: Betty Zheng (郑予彬)