Quantigence: A Multi-Agent AI Framework for Quantum Security Research
Abdulmalik Alquwayfili

TL;DR
Quantigence is a multi-agent AI framework designed to enhance quantum security research by automating analysis, prioritizing vulnerabilities, and reducing research time, thereby aiding the transition to post-quantum cryptography.
Contribution
This paper introduces Quantigence, a novel multi-agent AI system that decomposes quantum security research tasks and integrates external knowledge to improve efficiency and coverage.
Findings
67% reduction in research turnaround time
Superior literature coverage over manual workflows
Effective integration of external knowledge via MCP
Abstract
Cryptographically Relevant Quantum Computers (CRQCs) pose a structural threat to the global digital economy. Algorithms like Shor's factoring and Grover's search threaten to dismantle the public-key infrastructure (PKI) securing sovereign communications and financial transactions. While the timeline for fault-tolerant CRQCs remains probabilistic, the "Store-Now, Decrypt-Later" (SNDL) model necessitates immediate migration to Post-Quantum Cryptography (PQC). This transition is hindered by the velocity of research, evolving NIST standards, and heterogeneous deployment environments. To address this, we present Quantigence, a theory-driven multi-agent AI framework for structured quantum-security analysis. Quantigence decomposes research objectives into specialized roles - Cryptographic Analyst, Threat Modeler, Standards Specialist, and Risk Assessor - coordinated by a supervisory agent.…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Quantum Mechanics and Applications · Quantum Information and Cryptography
