/install evolutionary-model
Evolutionary Model
An AI agent that doesn't learn is just an expensive chatbot.
The Core Idea
Most people set up AI assistants once and use them forever the same way. The Evolutionary Model is different: the agent grows smarter with every session, accumulates skills, and becomes increasingly specific to its owner's needs.
The model has three axes of evolution:
Memory → agent remembers decisions, context, preferences
Skills → agent gains new capabilities over time
Protocols → agent behavior becomes more reliable and predictable
Architecture
Layer 0 — Identity
Who the agent is. Fixed at birth, rarely changed.
SOUL.md — personality, values, operating principles
IDENTITY.md — name, role, emoji, avatar
USER.md — who the agent serves (name, timezone, preferences)
Layer 1 — Memory
How the agent persists across sessions.
memory/SESSION-STATE.md — current focus (WAL, read first)
memory/YYYY-MM-DD.md — daily raw log
MEMORY.md — curated long-term memory
memory/chat-log-YYYY-MM-DD.jsonl — conversation history
Key principle: no mental notes. If it's not written to a file, it doesn't exist after session restart.
Layer 2 — Skills
What the agent can do. Each skill is a self-contained capability module.
skills/
skill-name/
SKILL.md — instructions + when_to_use frontmatter
scripts/ — executable helpers (bash, python)
config.json — user-configurable parameters
README.md — human-readable docs
when_to_use is critical. Without it, the agent doesn't know when to activate the skill. Format:
---
when_to_use: "Use when user asks for X, Y, or Z."
---
Layer 3 — Protocols
How the agent behaves reliably. Learned from mistakes.
AGENTS.md — operating rules, safety, memory protocol
HEARTBEAT.md — periodic check-in schedule and format
policy.yaml — what agent can do without asking (allow/ask/deny)
How Evolution Works
Session → Memory
Every session, the agent:
- Reads
SESSION-STATE.md(hot context) - Reads today's daily log
- Works
- Writes new decisions/insights to daily log
- Periodically distills into
MEMORY.md
Task → Skill
When the agent solves a new type of problem:
- Documents the solution
- Creates
skills/task-name/SKILL.md - Adds
when_to_useso it auto-activates next time
Mistake → Protocol
When the agent makes a mistake:
- Analyzes root cause
- Adds rule to
AGENTS.mdorSOUL.md - Future sessions inherit the fix
Skill Quality Standards
A skill is production-ready when it has:
-
when_to_usefrontmatter — agent knows when to use it -
descriptionfrontmatter — discoverable in skill catalogs - No hardcoded personal context (paths, names, tokens)
-
config.jsonor env vars for user-specific settings -
README.mdexplaining what it does and how to configure - Scripts that work from any machine (no absolute paths)
Starter Kit
Minimum viable agent setup:
clawd/
SOUL.md — who you are
IDENTITY.md — your name
USER.md — who you serve
AGENTS.md — operating rules
MEMORY.md — start empty
memory/ — create on first run
skills/ — add as you grow
Bootstrap checklist:
- Fill
USER.mdwith owner's name, timezone, communication style - Write
SOUL.md— personality takes 30 minutes, saves 1000 future corrections - Pick 3 starter skills from the catalog
- Run first session — agent reads all files and introduces itself
- After session: review what the agent wrote to memory files
The Compounding Effect
Month 1: agent knows your name and timezone
Month 2: agent knows your projects, communication style, key contacts
Month 3: agent anticipates needs, runs proactive checks, catches mistakes
Month 6: agent has accumulated skills specific to your workflow
Month 12: agent is irreplaceable — it carries institutional knowledge no new model can replicate
This is why the model is called "evolutionary": the value grows non-linearly. Not because the base model gets smarter, but because the accumulated context, skills, and protocols become a moat.
Why Not Just Use ChatGPT?
| ChatGPT / Standard Assistant | Evolutionary Model | |
|---|---|---|
| Memory | Resets every session | Persists across sessions |
| Skills | Fixed capabilities | Grows with use |
| Context | Generic | Specific to you |
| Mistakes | Repeated | Documented + prevented |
| Value over time | Flat | Compounding |
| Portability | Locked to provider | Files you own |
The Evolutionary Model runs on any AI provider. The intelligence isn't in the model — it's in the accumulated files. You own them.
Contributing Skills
Skills are just markdown files. To share a skill:
- Remove all personal context (names, paths, tokens)
- Replace with
${VARIABLE}orconfig.jsonentries - Add
when_to_usefrontmatter - Write a
README.md - Submit to ClaWHub or share as a repo
See Also
SOUL.md— agent identity templateAGENTS.md— operating protocolsHEARTBEAT.md— proactive check-in system- Skills catalog:
~/clawd/skills/
- 确保已安装 OpenClaw(本地或 Docker 部署)
- 在对话框中输入安装命令:
/install evolutionary-model - 安装完成后,直接呼叫该 Skill 的名称或使用
/evolutionary-model触发 - 根据 Skill 的参数说明提供必要输入,即可获得结构化输出
Evolutionary Model 是什么?
Framework for building AI agents that evolve with their owner. Use when: setting up a new agent from scratch, onboarding a team to AI-native workflow, explai... 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 110 次。
如何安装 Evolutionary Model?
在 OpenClaw 或 Claude Code 对话框中运行命令「/install evolutionary-model」即可一键安装,无需额外配置。
Evolutionary Model 是免费的吗?
是的,Evolutionary Model 完全免费,采用 MIT-0 许可证,可自由下载、安装和使用。
Evolutionary Model 支持哪些平台?
Evolutionary Model 跨平台运行,可在任意部署了 OpenClaw / Claude Code 的环境中使用(cross-platform)。
谁开发了 Evolutionary Model?
由 borodich(@borodich)开发并维护,当前版本 v1.0.0。