Part of the book series:Internet of Things ((ITTCC))
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Abstract
In this chapter, we present an artificial intelligence (AI) and Internet of Things (IoT) platform.
The core functions of this platform are an AI data processing pipeline and an IoT data processing pipeline. In the pipelines, all different types of application-specific data are processed. For applications where an AI is needed, e.g., face/object/scene detection/classification/recognition, an AI engine is presented. For applications where large-scale searching is needed, a search engine is presented. For applications where most data are sensor data, the IoT pipeline is used. These two pipelines are parallel to each other with data communication mechanism. In the data processing core part, they work independently processing different types of data. But on the boundary and interface, they share many supporting functions including the web/mobile app API, user management, and device management.
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Authors and Affiliations
Shenzhen Deepcam Information Technologies, Shenzhen, China
Weijun Tan
LinkSprite Technologies, Longmont, CO, USA
Weijun Tan
Shenzhen Deepcam Information Technologies, Shenzhen, China
Yue Zhuo, Xing Chen, Qi Yao & Jingfeng Liu
- Weijun Tan
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- Qi Yao
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- Jingfeng Liu
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Correspondence toWeijun Tan.
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Editors and Affiliations
ICAR-CNR, University of Calabria, Rende, Italy
Carmela Comito
ICAR-CNR, University of Calabria, Rende, Italy
Agostino Forestiero
DIMES, University of Calabria, Rende, Italy
Ester Zumpano
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Tan, W., Zhuo, Y., Chen, X., Yao, Q., Liu, J. (2022). An Artificial Intelligence and Internet of Things Platform for Healthcare and Industrial Applications. In: Comito, C., Forestiero, A., Zumpano, E. (eds) Integrating Artificial Intelligence and IoT for Advanced Health Informatics. Internet of Things. Springer, Cham. https://doi.org/10.1007/978-3-030-91181-2_6
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