AI Native Asset Intelligence
Gal Engelberg, Leon Goldberg, Konstantin Koutsyi, Boris Plotnikov, Tiltan Gilat, Ben Benhemo

TL;DR
This paper presents AI-native asset intelligence, a structured framework that transforms fragmented security signals into consistent, contextual asset prioritization to enhance proactive security management.
Contribution
It introduces a novel framework combining modeling and scoring layers to normalize and contextualize heterogeneous security data for better asset prioritization.
Findings
The scoring system effectively separates intrinsic exposure from contextual importance.
AI severity adjustment refines asset prioritization accuracy.
Attack-vector scoring responds to rare exploitability evidence.
Abstract
Modern security environments generate fragmented signals across cloud resources, identities, configurations, and third-party security tools. Although AI-native security assistants improve access to this data, they remain largely reactive: users must ask the right questions and interpret disconnected findings. This does not scale in enterprise environments, where signal importance depends on exposure, exploitability, dependencies, and business context. Repeated AI queries may therefore produce unstable prioritization without a structured basis for comparing assets. This paper introduces AI-native asset intelligence, a framework that transforms heterogeneous security data into a structured intelligence layer for consistent, contextual, and proactive asset-level reasoning. The framework combines a modeling layer, representing assets, identities, relationships, controls, attack vectors, and…
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