Google, IBM & Meta Certificates – 40% Off
One plan covers every Professional Certificate on Coursera.
Unlock All Certificates
Imagine building systems that react instantly to streams of data—fraud alerts triggered within milliseconds, dashboards pulsing with live updates, and digital platforms scaling to millions of users in real time. In this hands-on course on Apache Kafka, you'll learn the basics of these capabilities to life. Through a dynamic mix of real-world examples, interactive labs, and practical demonstrations, you’ll progress from the basics of event streaming to deploying advanced, production-ready architectures.
Course Outline:
Foundations of Event Streaming
Begin with a solid understanding of event streaming concepts and event-driven architecture, exploring how Apache Kafka powers real-time data flows in industries like finance and beyond. You’ll examine critical use cases, deploy your own Kafka cluster and user interface using Docker, and create your first Kafka topic.
Building Blocks of Kafka
Dive into Kafka’s core architecture, including brokers, topics, partitions, and replication, learning how these elements work together to store, organize, and reliably deliver streaming data.
Kafka Producers & Consumers: The Message Flow
Understand how producers and consumers form the backbone of Kafka's event pipeline. Learn message serialization, the significance of message keys, and reliability strategies like acknowledgments and consumer groups. Reinforce concepts by building and configuring producers and consumers, exploring advanced operations like rebalancing.
This course is designed for software developers, data engineers, and system architects looking to transition from traditional batch processing to real-time event streaming. It is ideal for tech professionals who want to master Event-Driven Architecture and gain hands-on experience deploying scalable, fault-tolerant Kafka clusters. Whether you are building high-speed financial systems or modern microservices, this course provides the practical skills to manage the entire data lifecycle from producer to consumer.