loading
loading
loading
⭐⭐⭐⭐⭐ LIMITED-TIME SALE: Enroll in the course for only $12.99, which is 95% off compared to the $199 initial price (comes with a 30-day 100% money-back guarantee): https://links.datacumulus.com/apache-kafka-coupon Course Description: ★★★★★ #1 Best Selling Apache Kafka for Beginners Course! Welcome to the most RECENT & COMPLETE course, authored by Stephane Maarek, the best-selling Apache Kafka Instructor on Udemy! I am a member of the Kafka Summit Program Committee, a guest author for the Confluent blog, and a Kafka Expert with years of experience in Kafka and Big Data! I've already taught 100,000+ students and received 30,000+ reviews! You are in good hands! I guarantee that this is THE most thorough Apache Kafka for Beginners course available ANYWHERE on the market - or you can get your money back. This is the highest-rated course, with over 20,000+ ratings, for an average of 4.7 out of 5! I've decided it's time for students to properly learn Apache Kafka and big data streaming! Beginners are welcome: no need to know anything about Kafka! This course is packed with theoretical & practical knowledge, explained with time, clearness, and accuracy! Do you have what it takes to complete this 7+ hours comprehensive Apache Kafka for Beginners course and start tackling your Kafka projects? I'll see you in the course! What will you learn in this course? The Apache Kafka Ecosystem Architecture The Kafka Core Concepts: Topics, Partitions, Brokers, Replicas, Producers, Consumers, and more! Launch your own Kafka cluster in no time using native Kafka binaries – Windows / MacOS X / Linux Learn and Practice using the Kafka Command Line Interface (CLI) Code Producer and Consumers using the Java API Real-world project using Twitter as a source of data for a producer and ElasticSearch as a sink for our consumer Overview of Advanced APIs (Kafka Connect, Kafka Streams) Real-world Case Studies and Big Use cases Overview of Advanced Kafka for Administrators Advanced Topic Configurations Annexes (starting a Kafka cluster locally, using Docker, etc...)