Apache NiFi Training in Hong Kong

  • Learn via: Classroom
  • Duration: 16 Hours
  • Price: Please contact for booking options
We can host this training at your preferred location. Contact us!

Apache NiFi that helps you master various aspects of automating dataflow, managing flow of information between systems, streaming analytics, the concepts of data lake and constructs, various methods of data ingestion and real-world Apache NiFi projects.

Apache NiFi is finding rapid adoption among enterprises that want to make the best use of Big Data and transform it into business insights. NiFi is more used in sourcing and transforming data from databases and big data lakes. It works with disparate and distributed data sources. Taking the classroom training in Apache NiFi will give you industry-relevant experience with hands-on Apache NiFi projects and skills to take on the best jobs in this domain.

There are no prerequisites for learning Apache NiFi. However, having a basic knowledge of Linux command line can help.


  • Big Data Hadoop Developers, Architects and other professionals
  • Testing Professionals, Project Managers, Messaging and Queuing System Professionals

  • Introduction to Big Data, Apache Hadoop and NiFi
  • High-level architecture of HDFS and MapReduce
  • Installation and cluster integration of NiFi
  • FlowFile Processor and Flow Controller in Apache NiFi
  • Database aggregating, splitting and transforming
  • Best practices in Apache NiFi configuration

Introduction to Big Data and Hadoop and an overview of various components of the Hadoop ecosystem



The detailed architecture of Big Data Hadoop and the high-level architecture of Hadoop Distributed File System and MapReduce



Introduction to the concept of data lake, its attributes, support for colocation of data in various formats and overcoming the problem of data silos



The Data ingestion layer in data lakes which is used to transfer data from source to destination and varieties of data ingestion



NiFi Processor, the data ingestion tools available for importing, transferring, loading and processing of data and introduction to Apache NiFi for data ingestion



The fundamental concepts of Apache NiFi, the concepts of FlowFile, FlowFile Processor, Flow Controller and their attributes and functions in dataflow



Introduction to the architecture of Apache NiFi, various components including FlowFile Repository, Content Repository, Provenance Repository and web-based user interface



Apache NiFi installation requirements, cluster integration, successfully running Apache NiFi, adding a processor, scaling up and down and working with attributes



Important features of Apache NiFi, the dataflow function, various aspects of FlowFile, File Professor, Flow Controller, Processor group and connection



Data buffering in Apache NiFi, the concept of queuing, latency and recovery, working with directed graphs, controller services, data routing and transformation and Processor configuration, connection and addition



Connecting NiFi to database, transforming, splitting and aggregating data, the process of data egress, monitoring of NiFi, reporting, data lineage, NiFi administration and expression language



Various best practices in Apache NiFi configuration, ZooKeeper access and properties, encryption, the custom properties, guidelines for developers, NiFi Kerberos interface and data security in Hadoop



Installation of Apache NiFi, configuration, deploying the toolbar, building a dataflow using NiFi, working with various templates by creating, exporting and importing them to construct a dataflow and deploying batch ingestion and real-time ingestion in Apache NiFi




Contact us for more detail about our trainings and for all other enquiries!

Upcoming Trainings

Join our public courses in our Hong Kong facilities. Private class trainings will be organized at the location of your preference, according to your schedule.

19 March 2025 (16 Hours)
Hong Kong, Kowloon, Tsuen Wan
Classroom / Virtual Classroom
04 April 2025 (16 Hours)
Hong Kong, Kowloon, Tsuen Wan
Classroom / Virtual Classroom
05 April 2025 (16 Hours)
Hong Kong, Kowloon, Tsuen Wan
Classroom / Virtual Classroom
19 March 2025 (16 Hours)
Hong Kong, Kowloon, Tsuen Wan
Classroom / Virtual Classroom
04 April 2025 (16 Hours)
Hong Kong, Kowloon, Tsuen Wan
Classroom / Virtual Classroom
05 April 2025 (16 Hours)
Hong Kong, Kowloon, Tsuen Wan
Classroom / Virtual Classroom
24 May 2025 (16 Hours)
Hong Kong, Kowloon, Tsuen Wan
Classroom / Virtual Classroom
15 June 2025 (16 Hours)
Hong Kong, Kowloon, Tsuen Wan
Classroom / Virtual Classroom
Apache NiFi Training Course in Hong Kong

Hong Kong is officially known as the Hong Kong Special Administrative Region of the People's Republic of China (HKSAR) and is a city and special administrative region of China on the eastern Pearl River Delta in South China. Hong Kong is one of the most densely populated places in the world, with over 7.5 million population. The official languages of the HKSAR are Chinese and English. Hong Kong is a highly developed territory and ranks fourth on the United Nations Human Development Index and the residents of Hong Kong have the highest life expectancies in the world.

The best time to visit Hong Kong is from September to December, since the temperatures, averaging between 19 to 28 degree Celsius. During this outdoor activities-friendly travelling season, you can take a walk along Victoria Harbour, visit the islands of Lantau, Lamma and Cheung Chau and participate in the Mid-Autumn Festival. Top choices of the tourists to visit in Hong Kong are Big Buddha statue, Wong Tai Sin Temple, Repulse Bay and the Beaches and Hong Kong Disneyland.

Explore our diverse range of IT courses, encompassing programming, software development, cyber security, data science, business skills, and Agile/Scrum. Wherever you are in Hong Kong, our seasoned instructors will bring practical training and expert knowledge to your preferred training venue.
By using this website you agree to let us use cookies. For further information about our use of cookies, check out our Cookie Policy.