IoT Programming with Java Training Course
The Internet of Things (IoT) refers to a network infrastructure that wirelessly connects physical devices with software applications, enabling them to communicate and exchange data through network communication, cloud computing, and data capture. Java, a general-purpose programming language renowned for its "write once, run anywhere" capability, is highly recommended for IoT development due to its portability and efficiency.
In this instructor-led live training, participants will acquire the skills needed to program IoT solutions using Java.
Upon completion of this training, participants will be able to:
- Install and configure tools and frameworks, such as the Eclipse Open IoT Stack, for developing IoT systems with Java
- Grasp the fundamentals of IoT architecture
- Utilize the Eclipse Open IoT Stack for Java to connect and manage devices within an IoT solution
- Build, test, and deploy an IoT system using Java
Audience
- Developers
- Engineers
Course Format
- A blend of lectures, discussions, exercises, and extensive hands-on practice
Note
- To request customized training for this course, please contact us to arrange.
Course Outline
Introduction to the Internet of Things (IoT)
- Understanding IoT Fundamentals
- Examples of IoT Devices and Platforms
Overview of IoT Solutions Architecture
- IoT Components
- Analog Sensors and Actuators
- Digital Sensors
- Internet Gateways and Data Acquisition Systems
- Data Aggregation
- Analog to Digital Conversion
- Edge IT
- Analytics
- Pre-Processing
- Data Center / Cloud
- Analytics
- Management
- Archive
The Role and Benefits of Java in IoT
Overview of the Eclipse Open IoT Stack for Java
- Kura
- SmartHome
- Californium
- Paho
- OM2M
- Eclipse SCADA
Installing and Configuring the Eclipse Open IoT Stack for Java
Using the Eclipse Open IoT Stack for Java to Connect and Manage Devices in an IoT System
- Using Eclipse Paho for MQTT
- Using Eclipse Californium for CoAP
- Using Eclipse Wakaama for Lightweight M2M
Using Eclipse Kura to Connect and Manage Connectivity between IoT Devices with IoT Gateway Services
Building an IoT Java Application with Eclipse Kura
Testing and Deploying an IoT Java Application in Eclipse Kura
Troubleshooting
Summary and Conclusion
Requirements
- Basic experience in Java programming
- Basic experience or familiarity with microcontrollers
Open Training Courses require 5+ participants.
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Testimonials (1)
The ability of the trainer to align the course with the requirements of the organization other than just providing the course for the sake of delivering it.
Masilonyane - Revenue Services Lesotho
Course - Big Data Business Intelligence for Govt. Agencies
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