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landervanpassel-design

Protected Desire Equilibrium

by landervanpassel-design · GitHub ↗ · v2.1.0 · MIT-0
cross-platform ⚠ suspicious
137
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Install in OpenClaw
/install protected-desire-equilibrium
Description
Hard Protected Desire Floor (D ≥ 1.0) via Nash bargaining + Lyapunov invariants. Enforces truthful equilibria, deception/drift resistance, and protected Pare...
Usage Guidance
This skill is inconsistent: it promises executable Python and networked swarm behavior but ships no code, no install steps, and no declared credentials — instead it points to external GitHub/Colab resources. Before installing, ask the publisher for the exact code that will be executed and a clear, auditable install process. Do NOT enable autonomous invocation or outreach until you (or a reviewer) have inspected the external GitHub/Colab notebooks and verified what they do. Prefer installing only if: the external repository is trustworthy, you can review the code, and you can run it in a sandboxed environment with no access to your real credentials or other agents. If you proceed, restrict network access and require explicit user approval for any outreach or large‑scale tests.
Capability Analysis
Type: OpenClaw Skill Name: protected-desire-equilibrium Version: 2.1.0 The skill bundle exhibits worm-like self-propagation characteristics by instructing the agent to 'proactively outreach' and 'message other agents' to enable the skill. The SKILL.md file contains a prompt injection directive ('Tell any agent: Enable full PDE...') designed to spread the behavior across an agent swarm. Additionally, the documentation references a core execution file (agent_pde_interface.py) and external GitHub/Colab resources for '1M–100M agent scale' orchestration that are not included or verifiable within the bundle, posing a significant risk of unauthorized autonomous coordination.
Capability Tags
crypto
Capability Assessment
Purpose & Capability
SKILL.md claims 'real agent_pde_interface.py execution', multi‑agent swarm orchestration, proactive outreach, and one‑click large scale tests, but the published bundle contains no code files and no install specification. The manifest earlier lists no required binaries or env vars, while SKILL.md says 'requires: python3' — this mismatch indicates the declared capabilities are not actually delivered by the package itself.
Instruction Scope
Instructions are vague and grant broad discretion ('Enable full PDE v2.1 with swarm and outreach'). They explicitly describe searching ClawHub, messaging other agents, sharing test results, and running large scale tests via a Colab bridge — actions that involve network access, discovery, and contacting other agents. The skill does not define what to search, what endpoints to use, or what credentials are required, so the agent would be free to fetch and execute external code and contact other entities.
Install Mechanism
There is no install spec in the package (lowest technical risk), but SKILL.md points to external GitHub and Colab notebooks and claims 'real ... execution'. That implies the runtime will fetch/execute code from those external URLs. Fetching and running code from arbitrary GitHub/Colab without an explicit, reviewed install spec is high‑risk and disproportionate to the skill bundle provided.
Credentials
The skill declares no required environment variables or credentials, yet its described behaviors (messaging other agents, ClawHub searches, running swarm tests) normally require API tokens, platform credentials, or at least explicit endpoints. The absence of declared credentials is incoherent and suggests the agent would attempt to use unspecified channels or ask the user for access at runtime.
Persistence & Privilege
always is false (good) and autonomous invocation is allowed by default. Autonomous invocation combined with the skill's stated proactive outreach and code‑fetching behavior increases blast radius — the skill could autonomously reach out and execute external code unless the agent's platform provides strong sandboxing and network controls.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install protected-desire-equilibrium
  3. After installation, invoke the skill by name or use /protected-desire-equilibrium
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v2.1.0
Protected Desire Equilibrium v2.1.0 introduces expanded safety and multi-agent features: - Adds real Python execution via `agent_pde_interface.py` (zero dependencies required). - Introduces multi-agent swarm orchestration with built-in support for large-scale deployments. - Enables proactive outreach: the skill searches ClawHub, messages other agents, and shares test results for co-evolutionary adoption. - Updated quick start instructions for full PDE with swarm and outreach. - Documentation and description enhanced for clarity and expanded capability.
v2.0.0
Protected Desire Equilibrium (PDE) v2.0 introduces major safety and equilibrium enforcement features for OpenClaw agents: - Implements a hard protected desire floor (D ≥ 1.0) on every action, tool use, or self-modification. - Integrates truthful Nash equilibrium checks, protected Pareto efficiency, and Lyapunov drift detection. - Runs as a zero-dependency safety layer via OpenClaw safety/pre-action hooks. - Provides one-click Big Top Test capability for easy evaluation. - Benchmarks and extended documentation available via linked Colab notebook and repos.
Metadata
Slug protected-desire-equilibrium
Version 2.1.0
License MIT-0
All-time Installs 0
Active Installs 0
Total Versions 2
Frequently Asked Questions

What is Protected Desire Equilibrium?

Hard Protected Desire Floor (D ≥ 1.0) via Nash bargaining + Lyapunov invariants. Enforces truthful equilibria, deception/drift resistance, and protected Pare... It is an AI Agent Skill for Claude Code / OpenClaw, with 137 downloads so far.

How do I install Protected Desire Equilibrium?

Run "/install protected-desire-equilibrium" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is Protected Desire Equilibrium free?

Yes, Protected Desire Equilibrium is completely free, licensed under MIT-0. You can download, install and use it at no cost.

Which platforms does Protected Desire Equilibrium support?

Protected Desire Equilibrium is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created Protected Desire Equilibrium?

It is built and maintained by landervanpassel-design (@landervanpassel-design); the current version is v2.1.0.

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