Green Internet of Things and Machine Learning. Группа авторов
Читать онлайн книгу.Green Security and Servicing Provisioning
Privacy and security is the crucial factor of IoT deployment. Really, a significant amount of processing is required from devices to implement the security algorithms [43].
1.12 Future of G-IoT
IoT has changed our lives in a big manner. We can feel it everywhere. It has brought a digital revolution around the globe. It collects the real-time data with the help of smart sensors then this data is analyzed to extract valuable information from it which indeed helps in the decision making. In this way, it has improved transparency and reduced the processing time. It has created a wide and new market for sensors, and day by day, it is booming. IoT is improving our lives every day whether it is home, workplace, or playground. Soon, we will see automated door locks, intelligent street lights, industrial robots, smart cars, artificial hearts, etc. The upcoming generation is the world of IoT.
1.13 Conclusion
Ecological issues are obtaining more devotion as the universal public come to be more aware of the significances that atmosphere deprivation causes. We need to focus on the field of authority, safety, and standardization for the smooth operation of IoT which can help the people entirely. This research highlights several related tools, technologies, and worries about G-IoT for a smarter sphere. IoT characterizes an important pattern change in ICT which gives smooth growth of smart cities around the globe. The G-IoT is likely to take in remarkable revolutions in daily routine and would assist the dream of a green ambient world. This research also focused on ML and its various applications which give the ability to the machines to think logically, using training data. A remarkable contribution to the various areas has been made by the AI techniques from the last some decades. This article is focused on various applications based on AI and ML with IoT, that lead to providing various facilities to human lives. Some areas where AI algorithm used to detect intrusion in the network to defend our private network from invaders, AI also focused on the field of medicine, where medical image classification helps to predict disease in advance. AI algorithms are also involved to design the various level of computer gaming where people enjoyed a loT. It is also used to control the traffic with smart devices and dropped misshaping on the road, etc. Such latest technologies are offered more easiness, reliability, effectiveness, and efficiency in human life.
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