care-reference — community care-reference, kailash-coc-claude-py, community, ide skills

v1.0.0

关于此技能

非常适合需要治理哲学和框架参考文档的企业 AI 代理 Load CARE Framework reference. Use when discussing CARE governance philosophy, the Dual Plane Model, Mirror Thesis, Human-on-the-Loop, six human competencies, or the relationship between CARE, EATP, and COC.

terrene-foundation terrene-foundation
[6]
[3]
更新于: 3/16/2026

Killer-Skills Review

Decision support comes first. Repository text comes second.

Reference-Only Page Review Score: 6/11

This page remains useful for teams, but Killer-Skills treats it as reference material instead of a primary organic landing page.

Original recommendation layer Concrete use-case guidance Explicit limitations and caution
Review Score
6/11
Quality Score
36
Canonical Locale
en
Detected Body Locale
en

非常适合需要治理哲学和框架参考文档的企业 AI 代理 Load CARE Framework reference. Use when discussing CARE governance philosophy, the Dual Plane Model, Mirror Thesis, Human-on-the-Loop, six human competencies, or the relationship between CARE, EATP, and COC.

核心价值

赋予代理理解和实施 CARE 框架的能力,提供企业 AI 使用 Kailash SDK 生态系统的治理哲学,并基于 Dr. Jack Hong 的 CARE Core Thesis 提供参考文档,利用协作自主反思企业原则

适用 Agent 类型

非常适合需要治理哲学和框架参考文档的企业 AI 代理

赋予的主要能力 · care-reference

实施 CARE 框架用于企业 AI 治理
分析 CARE Core Thesis 以更深入地理解协作自主反思企业原则
引用 Kailash SDK 生态系统以集成 CARE 框架

! 使用限制与门槛

  • 需要理解企业 AI 治理原则
  • 特定于 CARE 框架和 Kailash SDK 生态系统

Why this page is reference-only

  • - Current locale does not satisfy the locale-governance contract.
  • - The underlying skill quality score is below the review floor.

Source Boundary

The section below is imported from the upstream repository and should be treated as secondary evidence. Use the Killer-Skills review above as the primary layer for fit, risk, and installation decisions.

评审后的下一步

先决定动作,再继续看上游仓库材料

Killer-Skills 的主价值不应该停在“帮你打开仓库说明”,而是先帮你判断这项技能是否值得安装、是否应该回到可信集合复核,以及是否已经进入工作流落地阶段。

实验室 Demo

Browser Sandbox Environment

⚡️ Ready to unleash?

Experience this Agent in a zero-setup browser environment powered by WebContainers. No installation required.

Boot Container Sandbox

常见问题与安装步骤

以下问题与步骤与页面结构化数据保持一致,便于搜索引擎理解页面内容。

? FAQ

care-reference 是什么?

非常适合需要治理哲学和框架参考文档的企业 AI 代理 Load CARE Framework reference. Use when discussing CARE governance philosophy, the Dual Plane Model, Mirror Thesis, Human-on-the-Loop, six human competencies, or the relationship between CARE, EATP, and COC.

如何安装 care-reference?

运行命令:npx killer-skills add terrene-foundation/kailash-coc-claude-py/care-reference。支持 Cursor、Windsurf、VS Code、Claude Code 等 19+ IDE/Agent。

care-reference 适用于哪些场景?

典型场景包括:实施 CARE 框架用于企业 AI 治理、分析 CARE Core Thesis 以更深入地理解协作自主反思企业原则、引用 Kailash SDK 生态系统以集成 CARE 框架。

care-reference 支持哪些 IDE 或 Agent?

该技能兼容 Cursor, Windsurf, VS Code, Trae, Claude Code, OpenClaw, Aider, Codex, OpenCode, Goose, Cline, Roo Code, Kiro, Augment Code, Continue, GitHub Copilot, Sourcegraph Cody, and Amazon Q Developer。可使用 Killer-Skills CLI 一条命令通用安装。

care-reference 有哪些限制?

需要理解企业 AI 治理原则;特定于 CARE 框架和 Kailash SDK 生态系统。

安装步骤

  1. 1. 打开终端

    在你的项目目录中打开终端或命令行。

  2. 2. 执行安装命令

    运行:npx killer-skills add terrene-foundation/kailash-coc-claude-py/care-reference。CLI 会自动识别 IDE 或 AI Agent 并完成配置。

  3. 3. 开始使用技能

    care-reference 已启用,可立即在当前项目中调用。

! 参考页模式

此页面仍可作为安装与查阅参考,但 Killer-Skills 不再把它视为主要可索引落地页。请优先阅读上方评审结论,再决定是否继续查看上游仓库说明。

Upstream Repository Material

The section below is imported from the upstream repository and should be treated as secondary evidence. Use the Killer-Skills review above as the primary layer for fit, risk, and installation decisions.

Upstream Source

care-reference

安装 care-reference,这是一款面向AI agent workflows and automation的 AI Agent Skill。查看评审结论、使用场景与安装路径。

SKILL.md
Readonly
Upstream Repository Material
The section below is imported from the upstream repository and should be treated as secondary evidence. Use the Killer-Skills review above as the primary layer for fit, risk, and installation decisions.
Supporting Evidence

CARE Framework Reference

This skill provides the reference for the CARE (Collaborative Autonomous Reflective Enterprise) framework - the governance philosophy for enterprise AI.

Knowledge Sources

This skill is self-contained — all essential CARE knowledge is distilled below from the CARE Core Thesis by Dr. Jack Hong. If Foundation source docs exist in this repo, read them for additional depth.

What is CARE?

CARE proposes a third path between human-in-the-loop (bottleneck) and human-out-of-the-loop (no accountability). The central insight: Trust is human. Execution is shared. The system reveals what only humans can provide.

Three Core Propositions

1. The Dual Plane Model

PlaneContainsCharacter
Trust PlaneAccountability, authority delegation, values, boundariesPermanently human
Execution PlaneTask completion, information processing, coordinationShared with AI
  • Normative choice, not ontological discovery. Pragmatically justified.
  • Prior art: SDN control/data planes, Kubernetes, aviation.
  • Humans invest judgment at setup time; AI executes at machine speed; accountability preserved through verifiable trust chains.

2. The Mirror Thesis

When AI executes all measurable tasks of a role, what remains visible is the human contribution beyond task execution - judgment, relationships, wisdom that were always the actual source of value but were invisible because they were entangled with execution.

Circularity acknowledged: The thesis is closer to an axiom than a derived conclusion. Adopted because it generates useful governance architecture.

Misuse risk: The same diagnostic can be used for elimination rather than development. CARE provides the diagnostic; organizations choose how to use it.

3. Human-on-the-Loop

  • Humans define the operating envelope
  • AI executes within it at machine speed
  • Humans observe execution patterns
  • Humans refine boundaries
  • The loop is continuous

Caveat: Aspirational architecture, not guaranteed control.

Six Human Competency Categories

Current AI limitations, not principled impossibilities:

#CompetencyCore Insight
1Ethical JudgmentSensing when technically correct is morally wrong
2Relationship CapitalTrust built through shared vulnerability and history
3Contextual WisdomKnowledge from lived experience that transcends data
4Creative SynthesisEvaluating and grounding novel solutions
5Emotional IntelligenceReading rooms, sensing tension, genuine care
6Cultural NavigationUnderstanding unwritten rules across contexts

Eight CARE Principles

  1. Full Autonomy as Baseline - AI handles everything it can within trust boundaries
  2. Human Choice of Engagement - Deliberate judgment, not reflexive approval
  3. Transparency as Foundation - Every AI action visible; choice not to look is informed
  4. Continuous Operation - AI maintains quality; humans bring judgment when needed
  5. Human Accountability Preserved - Every action traces to human authority
  6. Graceful Degradation - Safe degradation at competence boundaries
  7. Evolutionary Trust - Boundaries evolve based on demonstrated performance
  8. Purpose Alignment - AI within human-defined organizational purposes

These form an integrated system. Each constrains and supports the others.

The Governance Dilemma CARE Solves

Traditional governance assumes a human made the decision. AI breaks this assumption:

  • Human-in-the-loop: Preserves accountability but eliminates automation value
  • Human-out-of-the-loop: Captures speed but creates unacceptable risk
  • CARE: Separate trust establishment (human judgment) from trust verification (machine speed)

CARE's Relationship to Companion Frameworks

FrameworkRelationship to CARE
EATPOperationalizes CARE's trust chains as a verifiable protocol
COCApplies CARE's Human-on-the-Loop philosophy to software development
KailashReference implementation of CARE governance architecture

Honest Limitations

  • Six competencies are a 2026 snapshot, not permanent boundaries
  • Does not solve displacement economics
  • Does not guarantee regulatory compliance
  • Does not eliminate power asymmetries
  • Constraint gaming is the central operational risk

Quick Reference

The Governance Dilemma:
  Human-in-the-loop → Bottleneck
  Human-out-of-the-loop → No accountability
  CARE (Human-on-the-loop) → Third path

CARE = Collaborative Autonomous Reflective Enterprise
  C = Collaborative (human and AI as partners)
  A = Autonomous (AI within human-defined boundaries)
  R = Reflective (system reveals what only humans provide)
  E = Enterprise (organizational-scale design)

For Detailed Information

If Foundation source docs exist in this repo, read the CARE Core Thesis and CARE framework docs for additional depth. For comprehensive analysis, invoke the care-expert agent.

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