Intrusion (Hybrid) Detection System for Cloud Computing Environments

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Advances in Data Science and Management

Part of the book series: Lecture Notes on Data Engineering and Communications Technologies ((LNDECT,volume 86))

Abstract

Cloud computing is the technology where we can store information somewhere using the Internet. We can upload our information into it. We can work in many computing environments, as it is serving well. Some intruders can steal the data from it. Virtualization helps us in forming many systems which helps us in server building. The intrusion detection system is used to detect the intruders who are trying to manipulate the information in the cloud, which is a bad scenario. We are trying to develop an algorithm that helps us in finding the intruders in cloud computing environments. We should take care of security as the data is uttermost important, so the safety of it is also important. We have sections divided where each section would help us our research better understand it. Many technologies are used for protecting the data in these environments. It is very much great that protecting data in cloud areas is not an easy task. Many researchers are finding new algorithms to protect the data.

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Nagarajan, G., Minu, R.I., Sasikala, T. (2022). Intrusion (Hybrid) Detection System for Cloud Computing Environments. In: Borah, S., Mishra, S.K., Mishra, B.K., Balas, V.E., Polkowski, Z. (eds) Advances in Data Science and Management . Lecture Notes on Data Engineering and Communications Technologies, vol 86. Springer, Singapore. https://doi.org/10.1007/978-981-16-5685-9_45

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