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Published:2026/1/7 1:31:15

最強ギャル解説AI、参上~!😎✨

量子時代も怖くない!💖 最新セキュリティー術で企業を守る!

超要約:量子(クオンタム)コンピューター時代に備えて、企業のセキュリティを爆上げするフレームワークを紹介するよ!

✨ ギャル的キラキラポイント ✨

● 量子コンピューターの脅威(きょうい)から企業を守る、最強のセキュリティ対策なんだって!🚀 ● 知識グラフとLLM(AI)を使って、セキュリティを可視化(かしか)!まるで推し活みたい💖 ● リスクを数値化して、優先順位(ゆうせんじゅんい)をつけて対策できるから、無駄がない!賢すぎ!

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Full-Stack Knowledge Graph and LLM Framework for Post-Quantum Cyber Readiness

Rasmus Erlemann / Charles Colyer Morris / Sanjyot Sathe

The emergence of large-scale quantum computing threatens widely deployed public-key cryptographic systems, creating an urgent need for enterprise-level methods to assess post-quantum (PQ) readiness. While PQ standards are under development, organizations lack scalable and quantitative frameworks for measuring cryptographic exposure and prioritizing migration across complex infrastructures. This paper presents a knowledge graph based framework that models enterprise cryptographic assets, dependencies, and vulnerabilities to compute a unified PQ readiness score. Infrastructure components, cryptographic primitives, certificates, and services are represented as a heterogeneous graph, enabling explicit modeling of dependency-driven risk propagation. PQ exposure is quantified using graph-theoretic risk functionals and attributed across cryptographic domains via Shapley value decomposition. To support scalability and data quality, the framework integrates large language models with human-in-the-loop validation for asset classification and risk attribution. The resulting approach produces explainable, normalized readiness metrics that support continuous monitoring, comparative analysis, and remediation prioritization.

cs / cs.CR