Semantic Sensor Data Integration Based on Cloud Computing

2012 ◽  
Vol 7 (1) ◽  
pp. 103-106
Author(s):  
Xiaoming Zhang ◽  
Wanzhen Zhou ◽  
Yongqiang Zhang
Author(s):  
Sreekrishnan Venkateswaran

Cloud Computing is rapidly gaining traction today as the preferred platform for deploying both development and production workloads. Every industry has started adopting hybrid hosting models to leverage benefits that accrue from a convergence of technologies; Cloud is being used as a flexible springboard to mount a defense against disruptive digital trends. The use cases and associated gains are industry specific, ranging from leveraging auto-scaling to assuage seasonal spikes in Retail, and creating software-defined network functions in Telecom, to aggregating and analyzing sensor data in Automotive, and deploying multi-site disaster recovery in Government. In this chapter, we will embark on an expedition spanning ten industries, searching for patterns where Cloud enables advantageous solutions to business-specific categories of use cases. The observations are based on actual case studies chosen from hundreds of real Cloud deals across industries.


Sensors ◽  
2017 ◽  
Vol 17 (5) ◽  
pp. 1013 ◽  
Author(s):  
Diego P. Losada ◽  
Joaquín Fernández ◽  
Enrique Paz ◽  
Rafael Sanz
Keyword(s):  

2021 ◽  
Vol 2021 ◽  
pp. 1-9
Author(s):  
Xin Chen

Using big data to promote economic development, improve social governance, and improve service and regulatory capabilities is becoming a trend. However, the current cloud computing for data processing has been difficult to meet the demand, and the server pressure has increased dramatically, so people pay special attention to the big data integration of fog computing. In order to make the application of big data meet people’s needs, we have established relevant mathematical models based on fog calculation, made system big data integration, collected relevant data, designed experiments, and obtained relevant research data by reviewing relevant literature and interviewing professionals. The research shows that big data integration using fog computing modeling has the characteristics of fast response and stable function. Compared with cloud computing and previous computer algorithms, big data integration has obvious advantages, and the computing speed is nearly 20% faster than cloud computing and about 35% higher than other computing methods. This shows that big data integration built by fog computing can have a huge impact on people’s lives.


10.2196/34493 ◽  
2021 ◽  
Vol 23 (11) ◽  
pp. e34493
Author(s):  
Ieuan Clay ◽  
Christian Angelopoulos ◽  
Anne Lord Bailey ◽  
Aaron Blocker ◽  
Simona Carini ◽  
...  

Data integration, the processes by which data are aggregated, combined, and made available for use, has been key to the development and growth of many technological solutions. In health care, we are experiencing a revolution in the use of sensors to collect data on patient behaviors and experiences. Yet, the potential of this data to transform health outcomes is being held back. Deficits in standards, lexicons, data rights, permissioning, and security have been well documented, less so the cultural adoption of sensor data integration as a priority for large-scale deployment and impact on patient lives. The use and reuse of trustworthy data to make better and faster decisions across drug development and care delivery will require an understanding of all stakeholder needs and best practices to ensure these needs are met. The Digital Medicine Society is launching a new multistakeholder Sensor Data Integration Tour of Duty to address these challenges and more, providing a clear direction on how sensor data can fulfill its potential to enhance patient lives.


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