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Vanakamamidi et al., 2023 - Google Patents

IoT Security Based on Machine Learning

Vanakamamidi et al., 2023

Document ID
9303781196603854938
Author
Vanakamamidi R
Ramalingam L
Abirami N
Priyanka S
Kumar C
Murugan S
Publication year
Publication venue
2023 Second International Conference On Smart Technologies For Smart Nation (SmartTechCon)

External Links

Snippet

The protection of user privacy and mitigation of threats like spoofing, DoS, jamming, and eavesdropping are essential for the Internets of Things (IoT) to fulfill its promise of bringing improved and intelligent services to users via the integration of diverse devices into …
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