CyberAId: AI-Driven Cybersecurity for Financial Service Providers

arXiv cs.AI / 5/5/2026

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Key Points

  • European financial institutions are under increasing regulatory pressure while their SOCs are limited by reasoning/triage capacity: SIEM coverage is incomplete, alert volumes outpace staffing, and many breaches begin with alerts that never get investigated.
  • Although frontier LLMs perform strongly on isolated cybersecurity tasks, the paper argues there is still no “narrow win” that becomes a full platform across functions, maintains multi-tenant state, and remains auditable and regulation-aligned.
  • The proposal is CyberAId, a model-agnostic, on-premise deployable platform built around a hybrid multi-agent architecture where specialized LLM subagents reason over existing SIEM/XDR telemetry rather than replacing it.
  • CyberAId coordinates a Main Agent plus reporting and specialist subagents in a shared runtime with bounded human-in-the-loop autonomy, supports privacy-preserving state federation across institutions, and plans integration with complementary capability packs.
  • Validation is planned across four financial use cases (client impersonation, AML for payment providers, retail-banking incident response, and HFT resilience), and the authors identify skill-based agent adaptation as key to evolving each deployment into an ongoing collective defense contribution.

Abstract

European financial institutions face mounting regulatory pressure while their security operations centres remain constrained not by data or staffing but by reasoning capacity: enterprise SIEMs cover only a fraction of MITRE ATT&CK techniques, two thirds of SOC teams cannot keep pace with alert volumes, and the majority of breaches are preceded by alerts that are generated but never investigated. Frontier large language models now achieve state-of-the-art results on isolated cybersecurity tasks (one-day vulnerability exploitation, code-level patching, intrusion detection) yet no narrow win constitutes a platform that can compose across functions, persist multi-tenant state, map findings to regulatory regimes and survive an audit. This position paper argues that the right unit of construction is a hybrid multi-agent system in which specialised LLM subagents reason over classical SIEM/XDR telemetry rather than replacing it, share accumulated agent state across institutions through privacy-preserving federation, and can connect to complementary capability packs such as quantum-based authentication, digital twins for adversarial validation, and eBPF-based kernel telemetry. We present CyberAId, a model-agnostic, on-premise-deployable platform in which a Main Agent coordination layer, a Reporting capability, and specialist subagents operate within a shared runtime under bounded human-in-the-loop autonomy, organised around four falsifiable design principles, and aligned with relevant regulations. CyberAId will be validated at four representative financial use cases (client impersonation, anti-money-laundering for payment service providers, retail-banking incident response, and high-frequency-trading resilience) and propose skill-based agent adaptation as the most promising research direction for turning each deployment into a contribution to a continuously refined collective defence.