Machine-Intelligence Approaches for Exposure Control in Elastic Computing Systems via Decoy-Centric Operations

Authors
  • Dr. Olivia Bennett

    School of Cloud Computing and Analytics, Melbourne Institute of Technology, Melbourne, Australia
    Author
Keywords:
Elastic computing systems, Machine intelligence, Exposure control, Decoy-centric operations
Abstract

Elastic computing systems have become fundamental components of modern digital infrastructures due to their scalability, resource adaptability, distributed processing capabilities, and cloud-native operational models. However, the same elasticity that enables dynamic scalability also increases infrastructure exposure to intelligent cyber threats, automated reconnaissance activities, attack surface expansion, adversarial learning, and adaptive exploitation strategies. Conventional exposure control mechanisms often depend on static security configurations that are insufficient for highly dynamic and autonomous computing environments. This research proposes a machine-intelligence-driven framework for exposure control in elastic computing systems through decoy-centric operational architectures. The study integrates machine learning, adaptive deception systems, cyber resilience engineering, intelligent orchestration, and dynamic infrastructure governance to conceptualize an advanced exposure management model.

The proposed framework combines reinforcement learning-assisted attack surface reduction, behavioral analytics, decoy orchestration, intelligent traffic camouflage, adaptive resource isolation, and distributed threat abstraction mechanisms. The architecture is organized into interconnected operational layers involving intelligent perception, predictive analytics, decoy management, adaptive orchestration, and resilience governance. The study synthesizes conceptual foundations from machine learning prediction systems, intelligent data analytics, deep learning architectures, computational intelligence, and adaptive cyber deception models. Particular emphasis is placed on the reinforcement learning-driven cyber deception framework proposed by Pesaramilli and Gudisa (2025), whose work demonstrates the effectiveness of intelligent attack surface reduction strategies in cloud infrastructures.

The research employs a conceptual and analytical methodology grounded in systematic synthesis of the provided literature. Although many of the referenced studies focus on machine learning applications in predictive healthcare systems, especially heart disease prediction and intelligent classification, their methodological insights regarding supervised learning, ensemble modeling, intelligent feature extraction, optimization, and adaptive analytics are generalized and repurposed within the context of intelligent exposure control in elastic computing environments.

The findings indicate that decoy-centric operations substantially improve infrastructure resilience, reduce adversarial visibility, increase operational adaptability, and support autonomous hazard suppression. The study also reveals that intelligent exposure control requires coordinated integration of machine intelligence, adaptive governance, distributed orchestration, and contextual threat analysis. Major implementation challenges include computational overhead, explainability limitations, interoperability constraints, governance complexity, and ethical concerns associated with autonomous deception systems.

This research contributes to the development of intelligent cyber resilience architectures by proposing a unified decoy-centric exposure control framework suitable for scalable elastic computing ecosystems. The proposed model has implications for cloud-native infrastructures, distributed enterprise systems, edge computing environments, Industry 5.0 ecosystems, and intelligent service architectures.

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References

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Published
2026-04-30
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Copyright (c) 2026 Dr. Olivia Bennett (Author)

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How to Cite

Machine-Intelligence Approaches for Exposure Control in Elastic Computing Systems via Decoy-Centric Operations. (2026). Emerging Indexing of Global Multidisciplinary Journal, 5(4), 77-94. https://grpublishing.net/index.php/eigmj/article/view/169

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