Although the ability to collect, collate, and analyze the vast amount of data generated from cyber-physical systems and Internet of Things devices can be beneficial to both users and industry, this process has led to a number of challenges, including privacy and scalability issues. The authors present a hybrid framework where user-centered edge devices and resources can complement the cloud for providing privacy-aware, accurate, and efficient analytics
The Internet of Things has grown by an enormous amount of devices over the later years. With the upc...
Internet of Things (IoT) is gaining increasing popularity. Overwhelming volumes of data are generate...
Due to increase in IoT devices, the data produced every day are also increasing rapidly. The growth ...
To appear in IEEE Internet of Things JournalTo appear in IEEE Internet of Things JournalTo appear in...
The widespread use of smartphones and camera-coupled Internet of Thing (IoT) devices triggers an exp...
From self-driving cars to smart city sensors, billions of devices will be connected to networks in t...
From self-driving cars to smart city sensors, billions of devices will be connected to networks in t...
We address privacy and latency issues in edge-cloud computing environments where the neural network ...
Massive volumes of sensitive information are being collected for data analytics and machine learning...
With the surging demand for Internet of Things (IoT) healthcare applications, a myriad of data priva...
Cloud computing is the primary carrier of artificial intelligence services and deep learning algorit...
As the efficacy of Internet of Things is expeditiously growing, maintaining privacy with respect use...
With the proliferation of mobile devices, crowdsensing has become an appealing technique to collect ...
Sensors, wearables, mobile and other Internet of Thing (IoT) devices are becoming increasingly integ...
Cloud-edge collaborative inference approach splits deep neural networks (DNNs) into two parts that r...
The Internet of Things has grown by an enormous amount of devices over the later years. With the upc...
Internet of Things (IoT) is gaining increasing popularity. Overwhelming volumes of data are generate...
Due to increase in IoT devices, the data produced every day are also increasing rapidly. The growth ...
To appear in IEEE Internet of Things JournalTo appear in IEEE Internet of Things JournalTo appear in...
The widespread use of smartphones and camera-coupled Internet of Thing (IoT) devices triggers an exp...
From self-driving cars to smart city sensors, billions of devices will be connected to networks in t...
From self-driving cars to smart city sensors, billions of devices will be connected to networks in t...
We address privacy and latency issues in edge-cloud computing environments where the neural network ...
Massive volumes of sensitive information are being collected for data analytics and machine learning...
With the surging demand for Internet of Things (IoT) healthcare applications, a myriad of data priva...
Cloud computing is the primary carrier of artificial intelligence services and deep learning algorit...
As the efficacy of Internet of Things is expeditiously growing, maintaining privacy with respect use...
With the proliferation of mobile devices, crowdsensing has become an appealing technique to collect ...
Sensors, wearables, mobile and other Internet of Thing (IoT) devices are becoming increasingly integ...
Cloud-edge collaborative inference approach splits deep neural networks (DNNs) into two parts that r...
The Internet of Things has grown by an enormous amount of devices over the later years. With the upc...
Internet of Things (IoT) is gaining increasing popularity. Overwhelming volumes of data are generate...
Due to increase in IoT devices, the data produced every day are also increasing rapidly. The growth ...