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ibdaa 2020 : Workshop on IoT based Big Data Architectures and Applications - in conjunction with IEEE Big Data 2020 | |||||||||||||||
Link: https://sites.google.com/view/ibdaa2020 | |||||||||||||||
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Call For Papers | |||||||||||||||
Due to the increased growth in data analytics and the proliferation of applications accelerating the ubiquity of digital information, the concept of the Internet of Things (IoT) has been materialized. The IoT is representative of an environment comprising of a connected set of individuals, things, or objects that can communicate through the existing network infrastructure and result in improved efficiency, accuracy, and economic benefit. Considering the demand to efficiently process diverse types of big data being generated at a rapid pace by a multitude of devices, the need to develop efficient models has increase manifold. Therefore, the workshop titled “Workshop on IoT based Big Data Architectures and Applications” co-located with the IEEE International Conference on Big Data 2020 encourages the researchers around the world to submit their contributions pertaining to the IoT based architectures and their applications for processing the big data.
-Topics of interest include but are not limited to: Big data storage, distribution, and management Big data applications and models for e-Governance Big data analytics, streaming, and processing in fog environments Industrial big data analytics and Internet of Things (IoT) Machine learning models for the Internet of Things (IoT) on Edge devices Connected Health and IoT Scalable and context-aware remote health monitoring services Leveraging the IoT and big data architectures for smart homes, smart buildings, and smart cities Trust, Security, and privacy in IoT Deep learning and big data applications for the finance industry IoT and Precision Agriculture Edge computing for smart cities and urban surveillance IoT and Cyber-Physical Systems Resource allocation and interoperability in IoT Experimental evaluation of data-intensive frameworks |
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