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The Simulation — agentic threat model

9.1AIVSS 9.1 · Critical

The Simulation presents a high-risk profile within its virtual sandbox due to extreme multi-agent interactions, autonomous evolution, and persistent learning, though real-world physical impact is limited by its simulated nature.

OWASP AIVSS score rationale

AIVSS = (CVSS_Base + AARS) × Mitigation_Factor, where AARS = (10 − CVSS_Base) × (Factor_Sum / 10) × ThM
CVSS base 6.5AARS uplift 2.62Factor sum 7.5/10Threat ×1.0Mitigation ×1.0
Autonomy of Action
0.90
Goal-Driven Planning
0.80
Self-Modification
0.70
Dynamic Tool Use
0.40
Persistent Memory
0.90
Contextual Awareness
0.80
Dynamic Identity
0.30
Multi-Agent Interactions
1.00
Non-Determinism
0.90
Opacity & Reflexivity
0.80

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⚠ not certain from listing

Not certain from the listing — The specific foundation models powering the characters are not disclosed. Threats include model reprogramming, adversarial exploitation of character logic, or misaligned outputs affecting character behavior.

L2 · Data Operations⚠ not certain from listing

Not certain from the listing — The data pipeline for character learning, state persistence, and VR environment assets is proprietary. Risks include data poisoning of the simulation state or character memories.

L3 · Agent Frameworks✓ mapped

The platform orchestrates autonomous characters that interact, learn, and evolve. Threats include memory poisoning, logic flaws in character planning, and unintended behaviors during character-to-character interactions.

L4 · Deployment & Infrastructure⚠ not certain from listing

Not certain from the listing — The hosting environment (likely cloud-based VR/simulation servers) is not detailed. Risks include container escape or unauthorized access to the simulation engine.

L5 · Evaluation & Observability⚠ not certain from listing

Not certain from the listing — No details are provided on how character behaviors are monitored, logged, or restricted by guardrails within the simulation.

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

Not certain from the listing — Compliance standards, access controls, and user data privacy policies for the platform are not specified in the public directory.

L7 · Agent Ecosystem✓ mapped

The core of the platform is a multi-agent simulated reality where characters interact. Threats include cascading failures, rogue agent behaviors, and agent-to-agent trust abuse within the virtual environment.

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

These scores are auto-generated from public information (the agent's own listing, docs, and repository) using the canonical OWASP AIVSS formula and the MAESTRO framework — an estimate for guidance, not a penetration test, audit, or certification. See the scoring methodology. Are you the vendor? Factual corrections are free.