1. Optimized deep neural network based vulnerability detection enabled secured testing for cloud SaaS.
- Author
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Vallabhaneni, Rohith, Vadakkethi, Sanjaikanth E., Pillai, Somanathan, Vaddadi, Srinivas A., Addula, Santosh Reddy, and Ananthan, Bhuvanesh
- Subjects
ARTIFICIAL neural networks ,INFORMATION technology ,OPTIMIZATION algorithms ,SCIENTIFIC community ,SOFTWARE as a service - Abstract
Based on the information technology service model, an on-demand services towards user becomes cost effective, which is provided with cloud computing. The network attack is detected with research community that pays huge interest. The novel proposed framework is intended with the combination of mitigation and detection of attack. While enormous traffic is obtainable, extract the relevant fields decide with Software-as-a-service (SaaS) provider. According to the network vulnerability and mitigation procedure, perform deep learning-based attack detection model. The golf optimization algorithm (GOA) done the selection of features followed by deep neural network (DNN) detect the attacks from the selected features. The correntropy variational features validates the level of risk and performs vulnerability assessment. Perform the process of bait-oriented mitigation during the phase of attack mitigation. The proposed approach demonstrates 0.97kbps throughput with 0.2% packet loss ratio than traditional methods. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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