- Architecting the Industrial Internet
- Shyam Nath Robert Stackowiak Carla Romano
- 190字
- 2021-07-02 23:59:27
Data management
IIoT solutions collect potentially huge volumes of data, typically at high velocity, and can also include data from traditional or legacy systems. This integration of data can consist of time series data from sensors and device data, including logs, and structured and unstructured data. Structured data is typically data from traditional enterprise or departmental software applications with known predefined data structures, or schemas. Unstructured data includes data with unknown or irregular and varying structures. These can include text from social media and digital images. Integrating these data sources can be challenging, but also can provide the basis for more effective monitoring, identification of problem areas, targeted and timely responses, and more effective analysis and decision making.
IIoT data management activities include the following:
- Reduction and analytics
- Publish and subscribe
- Query
- Storage, persistence, and retrieval
- Integration
- Description and presence
- Data framework
- Rights management
Here, the usage and functional viewpoints should provide guidance. IIoT data management needs to provide the users with information, analysis, and cross-functional insights that would not have been available in traditional applications where data may be stored in functional silos and unavailable for cross-functional analysis.
- Google Apps Script for Beginners
- Mastering NetBeans
- Vue.js 3.0源碼解析(微課視頻版)
- Scratch 3.0少兒編程與邏輯思維訓練
- 從Excel到Python:用Python輕松處理Excel數據(第2版)
- RSpec Essentials
- NetBeans IDE 8 Cookbook
- Hadoop 2.X HDFS源碼剖析
- Android Game Programming by Example
- Clojure Web Development Essentials
- SQL Server 2014 Development Essentials
- 從零開始學UI設計·基礎篇
- 面向對象分析與設計(第3版)
- Go語言編程之旅:一起用Go做項目
- 面向對象程序設計教程(C#版)