Word count: 2500 words
Objectives to cover:
Introduction: Overview of cloud computing growth and rising need for security.
Background of Cloud Security: Fundamentals and importance of protecting cloud environments.
Cloud Security Challenges and Risks: Key vulnerabilities, threats, and compliance concerns.
Role of Machine Learning in Cybersecurity: How ML enhances detection and prediction of risks.
Machine Learning Algorithms for Risk Assessment: Common techniques like SVM, Random Forest, and Neural Networks.
Proposed Framework for Cloud Security Risk Assessment: Structured approach integrating ML models.
Data Collection and Preprocessing: Gathering and preparing relevant cloud security datasets.
Implementation and Evaluation: Applying ML models with metrics like accuracy, precision, and recall.
Conclusion: Summary of findings, limitations, and future research directions.
Reference: IEEE Style