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en:iot-reloaded:iot_reference_architecture [2025/01/04 14:22] – [Data Processing Layer: The Intelligence Hub] pczekalskien:iot-reloaded:iot_reference_architecture [2025/01/04 14:42] (current) – [Application Layer] pczekalski
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   - Edge Computing Devices: Localised processing units that enable near-real-time data analysis, reducing latency and bandwidth usage.   - Edge Computing Devices: Localised processing units that enable near-real-time data analysis, reducing latency and bandwidth usage.
   - Fog Computing Devices: Components located between the Edge and Cloud, fog computing devices provide distributed computing services that allow advanced data operations on a limited scale and ensure a more flexible approach to IoT data security and processing. They also optimise data transmission through aggregation and preprocessing for the Cloud Platforms.   - Fog Computing Devices: Components located between the Edge and Cloud, fog computing devices provide distributed computing services that allow advanced data operations on a limited scale and ensure a more flexible approach to IoT data security and processing. They also optimise data transmission through aggregation and preprocessing for the Cloud Platforms.
-  - Cloud Platforms: Centralised systems for large-scale data storage, advanced analytics, and machine learning model training.+  - Cloud Platforms: centralised systems for large-scale data storage, advanced analytics, and extensive AI tasks such as machine learning model training.
   - Data Pipelines: Tools for data ingestion, transformation, and integration with enterprise systems. Examples include Apache Kafka and AWS IoT Core.   - Data Pipelines: Tools for data ingestion, transformation, and integration with enterprise systems. Examples include Apache Kafka and AWS IoT Core.
   - AI and Analytics Engines: Algorithms and tools for predictive analytics, anomaly detection, and decision-making.   - AI and Analytics Engines: Algorithms and tools for predictive analytics, anomaly detection, and decision-making.
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 ===== Application Layer ===== ===== Application Layer =====
  
-The User Interaction and Value Creation Layer +The Application Layer is also known as the User Interaction and Value Creation Layer. 
-The application layer transforms processed data into end-user functionalities and value-driven solutions. It consists of software applications, services, and user interfaces that allow users to interact with and benefit from the IoT system.+The Application Layer transforms processed data into end-user functionalities and value-driven solutions. It consists of software applications, services, and user interfaces that allow users to interact with and benefit from the IoT system.
  
 **Components** **Components**
en/iot-reloaded/iot_reference_architecture.1736000540.txt.gz · Last modified: 2025/01/04 14:22 by pczekalski
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