A high-performance virtual machine filesystem monitor in cloud-assisted cognitive IoT
Dongyang Zhan, Lin Ye, Hongli Zhang, Binxing Fang, Huhua Li, Yang Liu,, Xiaojiang Du, Mohsen Guizani

TL;DR
This paper introduces a high-performance, agentless filesystem monitor for cloud virtual machines that reduces scanning overhead by focusing only on modified files, enhancing security and efficiency.
Contribution
The paper presents a novel framework that minimizes scanning scope in agentless VM filesystem monitoring by detecting and only scanning modified files, applicable to various disk image formats.
Findings
Reduces scanning time and number of files checked.
Effective for both Windows and Linux VMs.
Applicable to different disk image formats.
Abstract
Cloud-assisted Cognitive Internet of Things has powerful data analytics abilities based on the computing and data storage capabilities of cloud virtual machines, which makes protecting virtual machine filesystem very important for the whole system security. Agentless periodic filesystem monitors are optimal solutions to protect cloud virtual machines because of the secure and low-overhead features. However, most of the periodic monitors usually scan all of the virtual machine filesystem or protected files in every scanning poll, so lots of secure files are scanned again and again even though they are not corrupted. In this paper, we propose a novel agentless periodic filesystem monitor framework for virtual machines with different image formats to improve the performance of agentless periodic monitors. Our core idea is to minimize the scope of the scanning files in both file integrity…
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Taxonomy
TopicsAdvanced Data Storage Technologies · Brain Tumor Detection and Classification · Advanced Neural Network Applications
