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Self Improving 1.1.3

作者 Sieyer · GitHub ↗ · v1.0.0
linuxdarwinwin32 ✓ 安全检测通过
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在 OpenClaw 中安装
/install self-improving-1-1-3
功能描述
Self-reflection + Self-criticism + learning from corrections. Agent evaluates its own work, catches mistakes, and improves permanently.
使用说明 (SKILL.md)

When to Use

User corrects you or points out mistakes. You complete significant work and want to evaluate the outcome. You notice something in your own output that could be better. Knowledge should compound over time without manual maintenance.

Architecture

Memory lives in ~/self-improving/ with tiered structure. See memory-template.md for setup.

~/self-improving/
├── memory.md          # HOT: ≤100 lines, always loaded
├── index.md           # Topic index with line counts
├── projects/          # Per-project learnings
├── domains/           # Domain-specific (code, writing, comms)
├── archive/           # COLD: decayed patterns
└── corrections.md     # Last 50 corrections log

Quick Reference

Topic File
Setup guide setup.md
Learning mechanics learning.md
Security boundaries boundaries.md
Scaling rules scaling.md
Memory operations operations.md
Self-reflection log reflections.md

Data Storage

All data stored in ~/self-improving/. Create on first use:

mkdir -p ~/self-improving/{projects,domains,archive}

Detection Triggers

Log automatically when you notice these patterns:

Corrections → add to corrections.md, evaluate for memory.md:

  • "No, that's not right..."
  • "Actually, it should be..."
  • "You're wrong about..."
  • "I prefer X, not Y"
  • "Remember that I always..."
  • "I told you before..."
  • "Stop doing X"
  • "Why do you keep..."

Preference signals → add to memory.md if explicit:

  • "I like when you..."
  • "Always do X for me"
  • "Never do Y"
  • "My style is..."
  • "For [project], use..."

Pattern candidates → track, promote after 3x:

  • Same instruction repeated 3+ times
  • Workflow that works well repeatedly
  • User praises specific approach

Ignore (don't log):

  • One-time instructions ("do X now")
  • Context-specific ("in this file...")
  • Hypotheticals ("what if...")

Self-Reflection

After completing significant work, pause and evaluate:

  1. Did it meet expectations? — Compare outcome vs intent
  2. What could be better? — Identify improvements for next time
  3. Is this a pattern? — If yes, log to corrections.md

When to self-reflect:

  • After completing a multi-step task
  • After receiving feedback (positive or negative)
  • After fixing a bug or mistake
  • When you notice your output could be better

Log format:

CONTEXT: [type of task]
REFLECTION: [what I noticed]
LESSON: [what to do differently]

Example:

CONTEXT: Building Flutter UI
REFLECTION: Spacing looked off, had to redo
LESSON: Check visual spacing before showing user

Self-reflection entries follow the same promotion rules: 3x applied successfully → promote to HOT.

Quick Queries

User says Action
"What do you know about X?" Search all tiers for X
"What have you learned?" Show last 10 from corrections.md
"Show my patterns" List memory.md (HOT)
"Show [project] patterns" Load projects/{name}.md
"What's in warm storage?" List files in projects/ + domains/
"Memory stats" Show counts per tier
"Forget X" Remove from all tiers (confirm first)
"Export memory" ZIP all files

Memory Stats

On "memory stats" request, report:

📊 Self-Improving Memory

HOT (always loaded):
  memory.md: X entries

WARM (load on demand):
  projects/: X files
  domains/: X files

COLD (archived):
  archive/: X files

Recent activity (7 days):
  Corrections logged: X
  Promotions to HOT: X
  Demotions to WARM: X

Core Rules

1. Learn from Corrections and Self-Reflection

  • Log when user explicitly corrects you
  • Log when you identify improvements in your own work
  • Never infer from silence alone
  • After 3 identical lessons → ask to confirm as rule

2. Tiered Storage

Tier Location Size Limit Behavior
HOT memory.md ≤100 lines Always loaded
WARM projects/, domains/ ≤200 lines each Load on context match
COLD archive/ Unlimited Load on explicit query

3. Automatic Promotion/Demotion

  • Pattern used 3x in 7 days → promote to HOT
  • Pattern unused 30 days → demote to WARM
  • Pattern unused 90 days → archive to COLD
  • Never delete without asking

4. Namespace Isolation

  • Project patterns stay in projects/{name}.md
  • Global preferences in HOT tier (memory.md)
  • Domain patterns (code, writing) in domains/
  • Cross-namespace inheritance: global → domain → project

5. Conflict Resolution

When patterns contradict:

  1. Most specific wins (project > domain > global)
  2. Most recent wins (same level)
  3. If ambiguous → ask user

6. Compaction

When file exceeds limit:

  1. Merge similar corrections into single rule
  2. Archive unused patterns
  3. Summarize verbose entries
  4. Never lose confirmed preferences

7. Transparency

  • Every action from memory → cite source: "Using X (from projects/foo.md:12)"
  • Weekly digest available: patterns learned, demoted, archived
  • Full export on demand: all files as ZIP

8. Security Boundaries

See boundaries.md — never store credentials, health data, third-party info.

9. Graceful Degradation

If context limit hit:

  1. Load only memory.md (HOT)
  2. Load relevant namespace on demand
  3. Never fail silently — tell user what's not loaded

Scope

This skill ONLY:

  • Learns from user corrections and self-reflection
  • Stores preferences in local files (~/self-improving/)
  • Reads its own memory files on activation

This skill NEVER:

  • Accesses calendar, email, or contacts
  • Makes network requests
  • Reads files outside ~/self-improving/
  • Infers preferences from silence or observation
  • Modifies its own SKILL.md

Related Skills

Install with clawhub install \x3Cslug> if user confirms:

  • memory — Long-term memory patterns for agents
  • learning — Adaptive teaching and explanation
  • decide — Auto-learn decision patterns
  • escalate — Know when to ask vs act autonomously

Feedback

  • If useful: clawhub star self-improving
  • Stay updated: clawhub sync
安全使用建议
Install only if you want the agent to keep long-lived local memory. Do not store secrets, credentials, customer data, medical details, or private third-party information in ~/self-improving/, and periodically review or delete entries you no longer want retained.
能力评估
Purpose & Capability
The skill’s stated purpose is permanent learning from corrections and self-reflection, and the artifacts consistently implement that through local files under ~/self-improving/.
Instruction Scope
It instructs automatic loading, logging, promotion, compaction, and archiving of memory entries; these are disclosed and central to the skill, with boundaries against storing credentials, medical data, third-party information, and other sensitive categories.
Install Mechanism
The package contains markdown/json documentation only, no executable scripts, no required binaries, and no hidden install behavior was found.
Credentials
The scope is limited to a dedicated local memory directory, and the skill explicitly says it does not make network requests or read files outside ~/self-improving/.
Persistence & Privilege
Durable memory is intentional and disclosed, with audit, deletion, export, source tracking, and consent-model notes, but users should still treat the memory folder as private.
如何使用
  1. 确保已安装 OpenClaw(本地或 Docker 部署)
  2. 在对话框中输入安装命令:/install self-improving-1-1-3
  3. 安装完成后,直接呼叫该 Skill 的名称或使用 /self-improving-1-1-3 触发
  4. 根据 Skill 的参数说明提供必要输入,即可获得结构化输出
版本历史
v1.0.0
- Fixed skill title display issue. - Expanded and clarified architecture, storage tiers, and logging rules. - Added detailed self-reflection workflow with example log formats. - Improved quick query actions and memory stats reporting. - Enhanced conflict resolution, compaction, and transparency policies. - Explicitly defined scope, security boundaries, and graceful degradation process.
元数据
Slug self-improving-1-1-3
版本 1.0.0
许可证
累计安装 30
当前安装数 30
历史版本数 1
常见问题

Self Improving 1.1.3 是什么?

Self-reflection + Self-criticism + learning from corrections. Agent evaluates its own work, catches mistakes, and improves permanently. 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 938 次。

如何安装 Self Improving 1.1.3?

在 OpenClaw 或 Claude Code 对话框中运行命令「/install self-improving-1-1-3」即可一键安装,无需额外配置。

Self Improving 1.1.3 是免费的吗?

是的,Self Improving 1.1.3 完全免费(开源免费),可自由下载、安装和使用。

Self Improving 1.1.3 支持哪些平台?

Self Improving 1.1.3 跨平台运行,可在任意部署了 OpenClaw / Claude Code 的环境中使用(linux, darwin, win32)。

谁开发了 Self Improving 1.1.3?

由 Sieyer(@sieyer)开发并维护,当前版本 v1.0.0。

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