SkillHub

skill-self-evolution-enhancer

v1.0.0

Enables any skill to gain self-evolution capabilities. Use when: (1) User asks to add self-evolution to a skill, (2) User wants a skill to learn from feedback and errors, (3) Scaling self-improvement to multiple skills with per-skill evolution logic. Outputs domain-specific .learnings/, EVOLUTION.md...

Sourced from ClawHub, Authored by Zhaobudaoyuema

Installation

Please help me install the skill `skill-self-evolution-enhancer` from SkillHub official store. npx skills add Zhaobudaoyuema/skill-self-evolution-enhancer

Skill Self-Evolution Enhancer

This skill enables other skills to gain self-evolution capabilities similar to self-improving-agent. A skill that originally has no self-evolution will, after enhancement, have: logging, learning from user feedback, promotion to rules, and a Review→Apply→Report loop—all tailored to its domain.

Quick Reference

Step Action
User requests evolution for skill X Read target skill's SKILL.md
Deep analysis Identify capabilities, scenarios, evolution directions
Extract domain Name, use cases, triggers, areas, promotion targets
Generate .learnings/ Domain-specific LEARNINGS.md, ERRORS.md, FEATURE_REQUESTS.md
Generate EVOLUTION.md Triggers, Review-Apply-Report, OpenClaw feedback rules
Language Match target skill's user language (infer from SKILL.md)

When to Use

  • User says: "给 skill X 加上自进化能力" / "Add self-evolution to skill X"
  • Scaling self-improvement across many skills (each with its own evolution direction)
  • Target skill is non-coding (e.g., 洗稿能手, 电脑加速) and needs domain-specific triggers

Workflow

Step 1: Read Target Skill

Read(target_skill_path/SKILL.md)

Obtain path from user or infer (e.g., skills/xxx, ~/.cursor/skills/xxx).

Step 2: Deep Capability & Scenario Analysis

Before generating any config, analyze the target skill deeply:

Capabilities (what the skill does): - Primary outputs and workflows - Secondary or edge capabilities - Dependencies (tools, APIs, formats)

Scenarios (when and how it is used): - User personas - Typical tasks (e.g., 科普改写 vs 汇报改写) - Input/output patterns

Evolution directions (what can improve): - User feedback patterns (e.g., "改得不通顺" → style) - Failure modes (e.g., "优化无效" → strategy) - Recurring corrections → domain-specific rules

Use cases → infer from description, Quick Reference, examples

Step 3: Extract Domain Config

When reading the target skill, extract:

Field Where to Find Example
Domain name name in frontmatter, title 洗稿能手, 电脑加速
Use cases / scenarios Description, Quick Reference, examples 科普、汇报、直播
Learning triggers User feedback phrases in examples "改得不通顺", "不像口播", "风格不对"
Error triggers Failure modes "优化无效", "某些电脑不适用", "报错"
Areas Output types, workflow stages 文案/口播/短视频脚本, 或 系统优化/卡顿/报错
Promotion targets Skill-specific rules {skill}-专属进化规则.md, {skill}-最佳实践.md

Language: Infer from SKILL.md content (Chinese vs English). Generate all output files in that language.

Use assets/DOMAIN-CONFIG-TEMPLATE.md to structure the extracted data.

Step 4: Generate .learnings/

Create inside target skill directory: target_skill_path/.learnings/

Structure (same as self-improving-agent): - .learnings/LEARNINGS.md - .learnings/ERRORS.md - .learnings/FEATURE_REQUESTS.md

Use templates from assets/; parameterize with domain areas, categories, promotion targets. Write in the target skill's language.

Step 5: Generate EVOLUTION.md

Create target_skill_path/EVOLUTION.md using assets/EVOLUTION-RULES-TEMPLATE.md.

Must include: - Quick Reference: domain triggers → actions - Review→Apply→Report loop (see below) - Detection triggers (when to log) - Promotion decision tree - Area tags - Domain-specific activation conditions (for hooks) - Experience invalidation / update rules (when user corrects again)

Step 6: Optional – Activator Script

If target skill has scripts/, add scripts/activator.sh with domain-specific reminder text. Adapt from self-improving-agent; replace generic prompts with domain triggers.

Review → Apply → Report Loop

The enhanced skill must use learnings, not only log them. Include this in EVOLUTION.md or the enhanced skill's instructions:

Before Task

  • Load relevant entries from .learnings/LEARNINGS.md (and ERRORS.md if applicable)
  • Filter by area, tags, or keywords
  • Note which entries apply to the current task

During Task

  • Apply learnings when relevant
  • Optionally annotate output: "本次参考了 [LRN-xxx]: ..." (or equivalent in target language)

After Task

  • Summarize for user: which learnings were used, what evolution result, what improvement
  • Let OpenClaw decide: per-use mention vs end-of-task summary

Example (Chinese): "本次改写了口播稿,参考了经验 [LRN-20250115-001](科普场景应避免过于书面),相比之前更口语化。"

Example (English): "Used learning [LRN-20250115-001] (avoid formal tone for科普) in this rewrite; output is more conversational than before."

User Preference vs Domain Best Practice

Type Storage Example
User preference MEMORY.md (user-level) "This user prefers shorter sentences"
Domain best practice .learnings/LEARNINGS.md "科普场景应避免过于书面"

Evolution is driven by user feedback; log and promote based on user corrections and recurring patterns.

OpenClaw Active Feedback

Add to the enhanced skill or SOUL.md/AGENTS.md:

  • When using experience from .learnings/, briefly tell the user
  • At end of task, optionally summarize: evolution used, improvements
  • Let OpenClaw decide when to surface (per-use vs summary)

See references/openclaw-feedback.md for SOUL.md and AGENTS.md snippets.

Experience Invalidation & Update

When user corrects again after a learning was applied:

  • Add Contradicted-By: LRN-YYYYMMDD-XXX to the original entry
  • Mark Last-Valid or Status: superseded if the learning is no longer valid
  • Increment Recurrence-Count if the pattern recurs but the fix is different

Include in LEARNINGS template: Recurrence-Count, Last-Valid, Contradicted-By.

Domain Extraction Framework

Trigger Extraction

Learning triggers (user feedback → log to LEARNINGS.md): - Look for: "用户说", "when user says", example dialogs - Infer: common corrections, style mismatches, scene-specific preferences - Add generic fallbacks: "不对", "不是这样", "改一下"

Error triggers (failures → log to ERRORS.md): - Look for: "失败", "报错", "不适用", "when X fails" - Infer: environment-specific failures, edge cases - Add generic fallbacks: "操作失败", "未达到预期"

Area Mapping

Define 3–6 areas that partition the skill's scope. Use domain-specific areas, not coding areas.

Promotion Target Naming

  • {skill-name}-专属进化规则.md — evolution rules, style preferences
  • {skill-name}-最佳实践.md — best practices
  • {skill-name}-安全规范.md — safety constraints (e.g., 电脑加速)

Use kebab-case for skill name in filenames.

Logging Format (Reuse from Self-Improving-Agent)

ID format: LRN-YYYYMMDD-XXX, ERR-YYYYMMDD-XXX, FEAT-YYYYMMDD-XXX

Statuses: pending | in_progress | resolved | wont_fix | promoted | promoted_to_skill

For full entry formats, see the self-improving-agent skill's Logging Format section.

References

  • assets/DOMAIN-CONFIG-TEMPLATE.md — Schema for domain config
  • assets/EVOLUTION-RULES-TEMPLATE.md — EVOLUTION.md template
  • references/domain-examples.md — 洗稿能手, 电脑加速 examples
  • references/openclaw-feedback.md — SOUL.md, AGENTS.md snippets for active feedback
  • scripts/generate-evolution.sh — Optional scaffold generator

Source

  • Based on: self-improving-agent 3.0.1
  • Purpose: Enable any skill to gain self-evolution capabilities similar to self-improving-agent