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 utilized for processing continuous data at scale. Participants will learn how to design, implement, and optimize streaming pipelines using modern frameworks. The curriculum advances from foundational principles to hands-on applications, empowering learners to confidently develop production-ready real-time solutions.
Format of Training
• 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 optimize real-time data solutions for business use cases
This course is available as onsite live training in Taiwan 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 use cases in industry
• Overview of 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.
Data Streaming and Real Time Data Processing Training Course - Booking
Data Streaming and Real Time Data Processing Training Course - Enquiry
Data Streaming and Real Time Data Processing - Consultancy Enquiry
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
Upcoming Courses
Related Courses
Administrator Training for Apache Hadoop
35 HoursTarget Audience:
This course is designed for IT professionals seeking to implement solutions for storing and processing large-scale datasets within a distributed system environment.
Course Objectives:
To provide in-depth knowledge regarding Hadoop cluster administration.
Big Data Analytics with Google Colab and Apache Spark
14 HoursThis instructor-led live training in Taiwan (online or onsite) is tailored for intermediate-level data scientists and engineers who wish to utilize Google Colab and Apache Spark for big data processing and analytics.
By the conclusion of this training, participants will be able to:
- Set up a big data environment using Google Colab and Spark.
- Process and analyze large datasets efficiently with Apache Spark.
- Visualize big data in a collaborative environment.
- Integrate Apache Spark with cloud-based tools.
Big Data Analytics in Health
21 HoursBig data analytics entails the process of scrutinizing extensive and diverse datasets to uncover correlations, hidden patterns, and other valuable insights.
The healthcare sector generates massive volumes of complex, heterogeneous medical and clinical data. Leveraging big data analytics on this health data holds significant potential for deriving insights that can enhance healthcare delivery. However, the sheer scale of these datasets presents substantial challenges for analysis and practical application within clinical environments.
In this instructor-led, live training (delivered remotely), participants will learn how to conduct big data analytics in health by engaging in a series of hands-on, live-lab exercises.
Upon completion of this training, participants will be able to:
- Install and configure big data analytics tools such as Hadoop MapReduce and Spark
- Understand the unique characteristics of medical data
- Apply big data techniques to manage and analyze medical data
- Study big data systems and algorithms within the context of health applications
Audience
- Developers
- Data Scientists
Format of the Course
- A combination of lectures, discussions, exercises, and intensive hands-on practice.
Note
- To request customized training for this course, please contact us to arrange.
Hadoop For Administrators
21 HoursApache Hadoop stands as the leading framework for processing Big Data across server clusters. This three-day course (with an optional fourth day) enables participants to understand the business advantages and practical use cases of Hadoop and its ecosystem. Attendees will learn to plan cluster deployment and scalability, as well as install, maintain, monitor, troubleshoot, and optimize Hadoop environments. The curriculum includes hands-on practice with bulk data loading, exploration of various Hadoop distributions, and management of Hadoop ecosystem tools. The course concludes with a discussion on securing the cluster using Kerberos.
“The materials were very well prepared and covered thoroughly. The Lab was very helpful and well organized.”
— Andrew Nguyen, Principal Integration DW Engineer, Microsoft Online Advertising
Audience
Hadoop administrators
Format
A combination of lectures and hands-on labs, with an approximate balance of 60% lectures and 40% labs.
Hadoop for Developers (4 days)
28 HoursApache Hadoop stands as the most widely adopted framework for processing Big Data across server clusters. This course provides developers with an introduction to the various components within the Hadoop ecosystem, including HDFS, MapReduce, Pig, Hive, and HBase.
Advanced Hadoop for Developers
21 HoursApache Hadoop stands out as one of the most widely adopted frameworks for processing Big Data across server clusters. This course explores data management within HDFS, alongside advanced techniques for Pig, Hive, and HBase. These sophisticated programming strategies are designed to be particularly valuable for seasoned Hadoop developers.
Audience: developers
Duration: three days
Format: lectures (50%) and hands-on labs (50%).
Hadoop Administration on MapR
28 HoursTarget Audience:
This course is designed to demystify big data and Hadoop technologies, demonstrating that they are accessible and not overly complex to grasp.
Hadoop and Spark for Administrators
35 HoursThis instructor-led, live training in Taiwan (online or on-site) is aimed at system administrators who wish to learn how to set up, deploy, and manage Hadoop clusters within their organization.
By the end of this training, participants will be able to:
- Install and configure Apache Hadoop.
- Understand the four major components of the Hadoop ecosystem: HDFS, MapReduce, YARN, and Hadoop Common.
- Use the Hadoop Distributed File System (HDFS) to scale a cluster to hundreds or thousands of nodes.
- Set up HDFS to operate as a storage engine for on-premise Spark deployments.
- Set up Spark to access alternative storage solutions such as Amazon S3 and NoSQL database systems such as Redis, Elasticsearch, Couchbase, Aerospike, etc.
- Carry out administrative tasks such as provisioning, management, monitoring, and securing an Apache Hadoop cluster.
HBase for Developers
21 HoursThis course introduces HBase, a NoSQL database built on top of Hadoop. It is designed for developers who plan to build applications using HBase, as well as administrators responsible for managing HBase clusters.
The curriculum guides developers through HBase’s architecture, data modeling techniques, and application development processes. It also covers the integration of MapReduce with HBase and addresses administrative topics related to performance optimization. The course is highly practical, featuring numerous hands-on lab exercises.
Duration : 3 days
Audience : Developers & Administrators
Apache NiFi for Administrators
21 HoursApache NiFi is an open-source, flow-based data integration and event-processing platform. It enables automated, real-time data routing, transformation, and system mediation between disparate systems, with a web-based UI and fine-grained control.
This instructor-led, live training (onsite or remote) is aimed at intermediate-level administrators and engineers who wish to deploy, manage, secure, and optimize NiFi dataflows in production environments.
By the end of this training, participants will be able to:
- Install, configure, and maintain Apache NiFi clusters.
- Design and manage dataflows from varied sources and sinks.
- Implement flow automation, routing, and transformation logic.
- Optimize performance, monitor operations, and troubleshoot issues.
Format of the Course
- Interactive lecture with real-world architecture discussion.
- Hands-on labs: building, deploying, and managing flows.
- Scenario-based exercises in a live-lab environment.
Course Customization Options
- To request a customized training for this course, please contact us to arrange.
Apache NiFi for Developers
7 HoursIn this instructor-led live training held in Taiwan, participants will master the fundamentals of flow-based programming by developing numerous demo extensions, components, and processors using Apache NiFi.
By the end of this training, participants will be able to:
- Understand NiFi's architecture and dataflow concepts.
- Develop extensions using NiFi and third-party APIs.
- Custom develop their own Apache Nifi processor.
- Ingest and process real-time data from disparate and uncommon file formats and data sources.
PySpark and Machine Learning
21 HoursThis training offers a hands-on introduction to developing scalable data processing and Machine Learning workflows using PySpark. Participants will gain insight into how Apache Spark functions within contemporary Big Data ecosystems and learn to process extensive datasets efficiently by applying distributed computing principles.
Python and Spark for Big Data (PySpark)
21 HoursIn this instructor-led, live training in Taiwan, participants will learn how to combine Python and Spark to analyze big data through hands-on exercises.
By the end of this training, participants will be able to:
- Learn how to use Spark with Python to analyze Big Data.
- Work on exercises that mimic real world cases.
- Use different tools and techniques for big data analysis using PySpark.
Python, Spark, and Hadoop for Big Data
21 HoursThis instructor-led, live training in Taiwan (online or onsite) is aimed at developers who wish to use and integrate Spark, Hadoop, and Python to process, analyze, and transform large and complex data sets.
By the end of this training, participants will be able to:
- Set up the necessary environment to start processing big data with Spark, Hadoop, and Python.
- Understand the features, core components, and architecture of Spark and Hadoop.
- Learn how to integrate Spark, Hadoop, and Python for big data processing.
- Explore the tools in the Spark ecosystem (Spark MlLib, Spark Streaming, Kafka, Sqoop, Kafka, and Flume).
- Build collaborative filtering recommendation systems similar to Netflix, YouTube, Amazon, Spotify, and Google.
- Use Apache Mahout to scale machine learning algorithms.
Stratio: Rocket and Intelligence Modules with PySpark
14 HoursStratio is a data-centric platform that integrates big data, AI, and governance into a single solution. Its Rocket and Intelligence modules enable rapid data exploration, transformation, and advanced analytics in enterprise environments.
This instructor-led, live training (online or onsite) is aimed at intermediate-level data professionals who wish to use the Rocket and Intelligence modules in Stratio effectively with PySpark, focusing on looping structures, user-defined functions, and advanced data logic.
By the end of this training, participants will be able to:
- Navigate and work within the Stratio platform using Rocket and Intelligence modules.
- Apply PySpark in the context of data ingestion, transformation, and analysis.
- Use loops and conditional logic to control data workflows and feature engineering tasks.
- Create and manage user-defined functions (UDFs) for reusable data operations in PySpark.
Format of the Course
- Interactive lecture and discussion.
- Lots of exercises and practice.
- Hands-on implementation in a live-lab environment.
Course Customization Options
- To request a customized training for this course, please contact us to arrange.