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← Speechlab MCP Server

Speechlab MCP Server — agentic threat model

7.5AIVSS 7.5 · High

The Speechlab MCP Server exposes powerful dubbing and voice synthesis capabilities to LLMs, presenting risks of unauthorized API consumption, voice cloning abuse, and media data exfiltration if the orchestrating agent is compromised.

OWASP AIVSS score rationale

AIVSS = (CVSS_Base + AARS) × Mitigation_Factor, where AARS = (10 − CVSS_Base) × (Factor_Sum / 10) × ThM
CVSS base 6.5AARS uplift 1.05Factor sum 3.0/10Threat ×1.0Mitigation ×1.0
Autonomy of Action
0.40
Goal-Driven Planning
0.30
Self-Modification
0.00
Dynamic Tool Use
0.50
Persistent Memory
0.10
Contextual Awareness
0.30
Dynamic Identity
0.20
Multi-Agent Interactions
0.40
Non-Determinism
0.50
Opacity & Reflexivity
0.30

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 foundation models are external (Claude, Anthropic API, or Speechlab's proprietary translation/voice models), making model-specific threats like adversarial prompt injection dependent on the host environment.

L2 · Data Operations⚠ not certain from listing

Not certain from the listing — The agent processes media files (audio/video) for dubbing, but details on data storage, vector databases, or retention policies for these media assets are not specified.

L3 · Agent Frameworks✓ mapped

The agent acts as an MCP server, exposing Speechlab API tools to orchestrators. Threats include insecure tool integration, unauthorized tool execution (e.g., triggering expensive dubbing jobs), and prompt injection bypassing tool boundaries.

L4 · Deployment & Infrastructure⚠ not certain from listing

Not certain from the listing — The deployment context depends on the host (local Claude Desktop, Cursor, or cloud-hosted LangChain apps), meaning host sandboxing and secret management (Speechlab API keys) are environment-dependent.

L5 · Evaluation & Observability⚠ not certain from listing

Not certain from the listing — There is no mention of built-in logging, guardrails, or monitoring to detect anomalous API usage or malicious inputs before they reach the Speechlab API.

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

Not certain from the listing — No explicit authentication, authorization, or compliance controls (such as GDPR for voice data or SOC2) are detailed for the MCP server itself.

L7 · Agent Ecosystem✓ mapped

The agent is designed to integrate into multi-agent ecosystems (LangChain, Claude Desktop, Cursor) as a tool. Threats include cascading failures or tool exploitation by compromised upstream agents.

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.