Governance of the Internet of Things (IoT)
- URL: http://arxiv.org/abs/2004.03765v1
- Date: Wed, 8 Apr 2020 01:26:16 GMT
- Title: Governance of the Internet of Things (IoT)
- Authors: Lawrence J. Trautman (1), Mohammed T. Hussein (1), Louis Ngamassi (1),
Mason J. Molesky (2) ((1) Prairie View A&M University, (2) The George
Washington University)
- Abstract summary: The daily life of billions of individuals worldwide has been forever changed by technology in just the last few years.
The challenge facing humans as they attempt to govern the process of artificial intelligence, machine learning, and the impact of billions of sensory devices connected to the Internet is the subject of this Article.
We define the Internet of Things (IoT), comment on the explosive growth in sensory devices connected to the Internet, provide examples of IoT devices, and speak to the promise of the IoT.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Today's increasing rate of technological change results from the rapid growth
in computer processing speed, when combined with the cost decline of processing
capacity, and is of historical import. The daily life of billions of
individuals worldwide has been forever changed by technology in just the last
few years. Costly data breaches continue at an alarming rate. The challenge
facing humans as they attempt to govern the process of artificial intelligence,
machine learning, and the impact of billions of sensory devices connected to
the Internet is the subject of this Article.
We proceed in nine sections. First, we define the Internet of Things (IoT),
comment on the explosive growth in sensory devices connected to the Internet,
provide examples of IoT devices, and speak to the promise of the IoT. Second,
we discuss legal requirements for corporate governance as a foundation for
considering the challenge of governing the IoT. Third, we look at potential IoT
threats. Fourth, we discuss the Mirai botnet. Fifth, is a look at the IoT
threat vector vulnerabilities during times of crisis. Sixth, we discuss the
Manufactured Usage Description (MUD) methodology. Seventh, is a discussion of
recent regulatory developments. Next, we look at a few recommendations. And
finally, we conclude. We believe this Article contributes to our understanding
of the widespread exposure to malware associated with IoT and adds to the
nascent but emerging literature on governance of enterprise risk, a subject of
vital societal importance.
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