AI-Driven Predictive Analytics for Real-Time Cyber Risk Scoring in Insurance and Enterprise Security

Authors

  • Svetlana Kovač Machine Learning Operations Manager, Comtrade, Serbia Author

Keywords:

cyber risk scoring, predictive analytics, artificial intelligence, machine learning

Abstract

Threat complexity and frequency need advanced risk rating algorithms for proactive cybersecurity. Insurance underwriting and organizational security may employ AI-driven predictive analytics real-time cyber risk assessment models. Cyber risks, vulnerabilities, and threats are assessed using machine learning, real-time data streams, and sophisticated analytics. Article discusses AI-driven predictive analytics in risk scoring, insurance, and corporate security, implementation issues, and cybersecurity advances. These models improve case studies and real-world risk management. Results suggest model accuracy and dependability require continual development and data governance.

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References

Madupati, Bhanuprakash. "Comprehensive Approaches to API Security and Management in Large-Scale Microservices Environments." Available at SSRN 5076630 (2023).

Yadulla, A. R., et al. "A time-aware LSTM model for detecting criminal activities in blockchain transactions." International Journal of Communication and Information Technology 4.2 (2023): 33-39.

Kalluri, Kartheek. "Exploring Zero-Shot and Few-Shot Learning Capabilities in LLMS for Complex Query Handling." 2022,

Vududala, Santosh Kumar. "QA role and challenges in Robotics Automation Testing."

Shankeshi, Raghu Murthy. "Optimizing IoT Data Pipelines Using Oracle Autonomous Databases and AI Analytics." American Journal of Autonomous Systems and Robotics Engineering 3 (2023): 35-56.

Madupati, Bhanuprakash. "Serverless Architectures and Function-As-A-Service (Faas): Scalability, Cost Efficiency, And Security Challenges." Cost Efficiency, And Security Challenges (April 05, 2023) (2023).

Yadulla, Akhila Reddy, et al. "Enhancing Cybersecurity with AI: Implementing a Deep Learning-Based Intrusion Detection System Using Convolutional Neural Networks." European Journal of Advances in Engineering and Technology 10.12 (2023): 89-98.

Vududala, Santosh Kumar. "International Journal of Multidisciplinary Research and Growth Evaluation."

Shankeshi, Raghu Murthy. "The Role of AI in Enhancing Data Security and Compliance in Oracle Cloud Infrastructures." American Journal of Data Science and Artificial Intelligence Innovations 3 (2023): 53-67.

Madupati, Bhanuprakash. "Kubernetes for Multi-Cloud and Hybrid Cloud: Orchestration, Scaling, and Security Challenges." Scaling, and Security Challenges (June 30, 2023) (2023).

Kalluri, Kartheek. "Enhancing Credit Union Operations: Utilizing Pega's Workflow Automation for Member Management." INTERANTIONAL JOURNAL OF SCIENTIFIC RESEARCH IN ENGINEERING AND MANAGEMENT 7 (2023): 1-7.

Madupati, Bhanuprakash. "Observability in Microservices Architectures: Leveraging Logging, Metrics, and Distributed Tracing in Large-Scale Systems." Metrics, and Distributed Tracing in Large-Scale Systems (November 30, 2023) (2023).

Yenugula, Mounica, et al. "Enhancing Mobile Data Security with Zero-Trust Architecture and Federated Learning: A Comprehensive Approach to Prevent Data Leakage on Smart Terminals." JOURNAL OF RECENT TRENDS IN COMPUTER SCIENCE AND ENGINEERING (JRTCSE) 11.1 (2023): 52-64.

Kalluri, Kartheek. "Adapting LLMs for Low Resource Languages-Techniques and Ethical Considerations." (2023).

Madupati, Bhanuprakash. "Kubernetes for Multi-Cloud and Hybrid Cloud: Orchestration, Scaling, and Security Challenges." Scaling, and Security Challenges (June 30, 2023) (2023).

Kalluri, Kartheek. "Assessing the Impact of Pega's Robotic Process Automation on Supply Chain Management Efficiency." Methodology 7.06 (2023).

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Published

27-12-2023

How to Cite

[1]
Svetlana Kovač, “AI-Driven Predictive Analytics for Real-Time Cyber Risk Scoring in Insurance and Enterprise Security”, J. Artif. Intell. Mach. Learn. Stud., vol. 7, pp. 1–6, Dec. 2023, Accessed: May 28, 2026. [Online]. Available: https://jaimls.org/index.php/publication/article/view/1