We detail a platform-scale security intelligence architecture extending credential aliasing to encompass privacy-preserving cross-customer threat correlation, edge-embedded machine learning, and predictive attack trajectory modeling. The system uses a two-layer alias structure to maintain tenant privacy guarantees across shared threat data, while deploying a compact machine learning model within the client SDK to achieve localized, low-latency threat classification entirely within the application boundary. The architecture also introduces multi-hop trust chains for AI agents and probabilistic predictive models to deploy pre-emptive countermeasures against multi-stage attacks. This paper presents the high-level theoretical framework and architectural design. Full technical specifications are outside the scope of this paper. These technologies are subject to pending patent applications.
Duncan Ndungu Ndegwa (Fri,) studied this question.
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