Master scalable data engineering with RabbitMQ, Apache Airflow, and specialized databases. Learn queue management and data pipeline optimization.
Master scalable data engineering with RabbitMQ, Apache Airflow, and specialized databases. Learn queue management and data pipeline optimization.
This course cannot be purchased separately - to access the complete learning experience, graded assignments, and earn certificates, you'll need to enroll in the full Large Language Model Operations (LLMOps) Specialization program. You can audit this specific course for free to explore the content, which includes access to course materials and lectures. This allows you to learn at your own pace without any financial commitment.
2,163 already enrolled
Instructors:
English
What you'll learn
Create and optimize data pipelines with Apache Airflow
Implement message queues using RabbitMQ and Celery
Work with vector and graph databases for scalable data storage
Build real-world data engineering solutions
Develop AWS-based data architectures
Skills you'll gain
This course includes:
4.1 Hours PreRecorded video
14 quizzes
Access on Mobile, Tablet, Desktop
FullTime access
Shareable certificate
Get a Completion Certificate
Share your certificate with prospective employers and your professional network on LinkedIn.
Created by
Provided by

Top companies offer this course to their employees
Top companies provide this course to enhance their employees' skills, ensuring they excel in handling complex projects and drive organizational success.





There are 4 modules in this course
This comprehensive course focuses on advanced data engineering techniques for handling large-scale data systems. Students learn to implement and manage data pipelines using modern tools like RabbitMQ, Celery, and Apache Airflow. The curriculum covers specialized databases including vector and graph databases, along with practical experience in AWS services. Through hands-on projects, students develop skills in optimizing workflows, managing queues, and building scalable data architectures.
Queues and Databases-RabbitMQ and MySQL
Module 1 · 6 Hours to complete
Optimizing Workflow Management at Scale with Apache Airflow
Module 2 · 5 Hours to complete
Achieving Scalability with Vector, Graph, and Key/Value Databases
Module 3 · 5 Hours to complete
Real-world Advanced Data Engineering Projects
Module 4 · 5 Hours to complete
Fee Structure
Instructors
Executive in Residence and Founder of Pragmatic AI Labs at Duke University
Noah Gift is the founder of Pragmatic AI Labs and serves as an Executive in Residence at Duke University, where he lectures in the Master of Interdisciplinary Data Science (MIDS) program. He specializes in designing and teaching graduate-level courses on machine learning, MLOps, artificial intelligence, and data science, while also consulting on machine learning and cloud architecture for students and faculty. A recognized expert in the field, Gift is a Python Software Foundation Fellow and an AWS Machine Learning Hero, holding multiple AWS certifications, including AWS Certified Solutions Architect and AWS Certified Machine Learning Specialist. He has authored several influential books, such as Practical MLOps, Python for DevOps, and Pragmatic AI, and has published over 100 technical articles across various platforms, including Forbes and O'Reilly. His extensive industry experience includes roles as CTO and Chief Data Scientist for notable companies like Disney Feature Animation, Sony Imageworks, and AT&T, contributing to major films like Avatar and Spider-Man 3. Gift's work has generated millions in revenue through product development on a global scale. He actively consults startups on machine learning and cloud architecture while leading initiatives to enhance data science education.
Adjunct Assistant Professor at Duke University
Dr. Alfredo Deza is an Adjunct Assistant Professor in the Pratt School of Engineering at Duke University, where he teaches courses on machine learning, programming, and data engineering. He has been involved in academia for several years, focusing on innovative teaching methods and practical applications of technology. Dr. Deza co-authored the book Practical MLOps and has published several other works related to Python and machine learning. His teaching includes courses such as Python Bootcamp and advanced data engineering topics, and he actively develops online courses available on platforms like Coursera. In addition to his academic role, Dr. Deza works in developer relations at Microsoft, leveraging his extensive experience in software engineering and cloud computing to enhance educational content and support for students and faculty. He collaborates with various universities worldwide, including Georgia Tech and Carnegie Mellon University, to promote knowledge sharing in the field of technology and data science.
Testimonials
Testimonials and success stories are a testament to the quality of this program and its impact on your career and learning journey. Be the first to help others make an informed decision by sharing your review of the course.
Frequently asked questions
Below are some of the most commonly asked questions about this course. We aim to provide clear and concise answers to help you better understand the course content, structure, and any other relevant information. If you have any additional questions or if your question is not listed here, please don't hesitate to reach out to our support team for further assistance.