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Superbo GenAI Fabric — agentic threat model

8.0AIVSS 8.0 · High

Superbo GenAI Fabric presents a moderate-to-high risk profile due to its multi-agent collaboration model ('μAssistants') and deployment in sensitive sectors like Energy & Utilities. Its support for transactional GenAI and skill assembly increases the potential blast radius if orchestration or tool-calling mechanisms are compromised.

OWASP AIVSS score rationale

AIVSS = (CVSS_Base + AARS) × Mitigation_Factor, where AARS = (10 − CVSS_Base) × (Factor_Sum / 10) × ThM
CVSS base 7.5AARS uplift 1.34Factor sum 5.1/10Threat ×1.05Mitigation ×0.9
Autonomy of Action
0.60
Goal-Driven Planning
0.50
Self-Modification
0.10
Dynamic Tool Use
0.60
Persistent Memory
0.40
Contextual Awareness
0.70
Dynamic Identity
0.30
Multi-Agent Interactions
0.80
Non-Determinism
0.60
Opacity & Reflexivity
0.50

Scored with the canonical OWASP AIVSS formula (AIVSS calculator reference); agentic risk factors estimated from the agent’s described capabilities.

MAESTRO 7-layer threat model

Per-layer threats for this agent. Layers tagged “not certain from listing” are general, caveated commentary where the public description didn’t pin that layer.

L1 · Foundation Models✓ mapped

Pre-integrated with a series of LLMs/SLMs. Vulnerable to standard foundation model threats such as adversarial prompt injection, which could disrupt the conversational flow or hijack transactional capabilities.

L2 · Data Operations⚠ not certain from listing

Not certain from the listing — mentions 'safe retrieval' which implies a RAG architecture, but specific vector databases, data pipelines, or ingestion security controls are not detailed.

L3 · Agent Frameworks✓ mapped

Utilizes a modular architecture to assemble 'skills' (microassistants). This orchestration layer is susceptible to insecure tool binding or state manipulation across interconnected agentic setups.

L4 · Deployment & Infrastructure⚠ not certain from listing

Not certain from the listing — no details are provided regarding hosting environments, API gateway security, containerization, or credential isolation for the integrated LLMs.

L5 · Evaluation & Observability⚠ not certain from listing

Not certain from the listing — claims a focus on 'accuracy, performance, cost efficiency and security' but does not specify the presence of real-time guardrails, logging, or drift monitoring.

L6 · Security & Compliance (cross-cutting)⚠ not certain from listing

Not certain from the listing — while 'security' is highlighted as a design focus, specific compliance standards (e.g., SOC2, ISO) or identity and access management (IAM) controls are not defined.

L7 · Agent Ecosystem✓ mapped

Highly relevant as the platform is built on 'collaboration of LLM μAssistants™'. This multi-agent ecosystem is vulnerable to cascading failures, trust abuse between microassistants, and privilege escalation across interconnected skills.

MAESTRO — the 7-layer agentic threat-modeling framework (Cloud Security Alliance / Ken Huang).