Author : Prof. Samleti Sandeep Dwarkanath 1
Date of Publication :3rd August 2020
Abstract: Inline of vast growth of Internet based uses in recent years, necessity for the security of computer based applications have increased manifolds. As a major source of defense against all the attacks coming its way that needs to adopt to the ever changing threats coming its way. Techniques like machine learning and deep learning can be employed to recognize the reliable detection of anomalies. Anomalies can affect the performance of wireless sensor networks
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