Data Streaming and Real Time Data Processing Training Course
Course Overview
This course offers a practical and structured introduction to constructing real-time data streaming systems. It explores core concepts, architectural patterns, and industry-standard tools utilised to process continuous data at scale. Participants will learn to design, implement, and optimise streaming pipelines using modern frameworks. The curriculum progresses from foundational principles to hands-on applications, empowering learners to confidently develop production-ready real-time solutions.
Training Format
• Instructor-led sessions with guided explanations
• Concept walkthroughs featuring real-world examples
• Hands-on demonstrations and coding exercises
• Progressive labs aligned with daily topics
• Interactive discussions and Q&A
Course Objectives
• Understand real-time data streaming concepts and system architecture
• Differentiate between batch and streaming data processing models
• Design scalable and fault-tolerant streaming pipelines
• Work with distributed streaming tools and frameworks
• Apply event time processing, windowing, and stateful operations
• Build and optimise real-time data solutions for business use cases
This course is available as onsite live training in Australia or online live training.Course Outline
Course Outline - Day 1
• Introduction to data streaming concepts
• Batch vs real-time processing fundamentals
• Event-driven architecture basics
• Common industry use cases
• Overview of the streaming ecosystem
Day 2
• Streaming architecture design patterns
• Fundamentals of distributed messaging systems
• Producers and consumers
• Topics, partitions, and data flow
• Data ingestion strategies
Day 3
• Stream processing concepts and frameworks
• Event time vs processing time
• Windowing techniques and use cases
• Stateful stream processing
• Fault tolerance and checkpointing basics
Day 4
• Data transformation in streaming pipelines
• ETL and ELT in real-time systems
• Schema management and evolution
• Stream joins and enrichment
• Introduction to cloud-based streaming services
Day 5
• Monitoring and observability in streaming systems
• Security and access control basics
• Performance tuning and optimization
• End-to-end pipeline design review
• Real-world use cases such as fraud detection and IoT processing
Open Training Courses require 5+ participants.
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Testimonials (1)
Hands on exercises. Class should have been 5 days, but the 3 days helped to clear up a lot of questions that I had from working with NiFi already
James - BHG Financial
Course - Apache NiFi for Administrators
Provisional Upcoming Courses (Require 5+ participants)
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