Abstract
This year’s exponential growth of digital links has resulted in a rise in cyber strikes, many of which have tragic and severe repercussions. Malware is the most common phenomenon used to achieve malevolent aims on the Internet, whether it is by exploiting new vulnerabilities or experimenting with new technologies and concepts. Customers identify the implementation of more robust and inventive pathogen parasitic breaches as a pressing need. In order to help them (Maxmen in Nature 555(7696):293–294, 2018), we will walk through the most common and easy problems that exist on old platforms, programming, and infrastructure layers. They serve as one of the most viable solutions after criticizing the present state requirements for change. Afterward, we analyze evolving assault techniques in areas such as Facebook, virtualization, mobile devices, and power grids. Finally, we discuss our hypothesis. We make a few observations regarding potential key findings coming up.
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Thakral, M., Singh, R.R., Kalghatgi, B.V. (2022). Cybersecurity and Ethics for IoT System: A Massive Analysis. In: Saxena, S., Pradhan, A.K. (eds) Internet of Things. Transactions on Computer Systems and Networks. Springer, Singapore. https://doi.org/10.1007/978-981-19-1585-7_10
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