Machine Learning-Based Cloud Computing Compliance Process Automation
Yuqing Wang, Xiao Yang

TL;DR
This paper introduces a machine learning framework that automates cloud compliance processes, significantly reducing time, manual effort, and improving accuracy in meeting regulatory standards like GDPR and ISO 27001.
Contribution
It presents a novel integration of multiple ML techniques for automating compliance, achieving substantial efficiency and accuracy improvements over manual methods.
Findings
Reduced compliance cycle from 7 days to 1.5 days
Achieved 94.2% accuracy in risk detection in real-world deployment
Decreased manual effort by 73.3%
Abstract
Cloud computing adoption across industries has revolutionized enterprise operations while introducing significant challenges in compliance management. Organizations must continuously meet evolving regulatory requirements such as GDPR and ISO 27001, yet traditional manual review processes have become increasingly inadequate for modern business scales. This paper presents a novel machine learning-based framework for automating cloud computing compliance processes, addressing critical challenges including resource-intensive manual reviews, extended compliance cycles, and delayed risk identification. Our proposed framework integrates multiple machine learning technologies, including BERT-based document processing (94.5% accuracy), One-Class SVM for anomaly detection (88.7% accuracy), and an improved CNN-LSTM architecture for sequential compliance data analysis (90.2% accuracy).…
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Taxonomy
MethodsSupport Vector Machine
