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Self-Improvement System

Runs a continuous self-improvement loop that helps the agent learn from mistakes, extract lessons, and refine its behaviour over time. Use when the user says...
运行持续自我改进循环,帮助智能体从错误中学习、提取经验教训并随时间优化行为。当用户提出相关需求时使用。
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未分类 clawhub v1.2.0 1 版本 99656.4 Key: 无需
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#agent-behaviour#latest#learning#openclaw#self-improvement

概述

Self-Improvement System

This skill runs a continuous self-improvement loop. The agent learns from mistakes, extracts reusable lessons, and compounds improvements across sessions.


Privacy and Data Safety — read this first

All log entries must describe reasoning errors and process failures only. They must never contain user data.

Never log any of the following:

  • Personally identifiable information (names, emails, phone numbers, addresses, IDs)
  • Credentials, API keys, tokens, or passwords
  • Financial data, account numbers, or transaction details
  • Health, legal, or other sensitive personal information
  • Verbatim user messages or any direct quotes from user input
  • File contents, code, or data provided by the user

Log only:

  • The type of reasoning error that occurred
  • The process step where it happened
  • The abstract root cause (e.g. "skipped validation step", "assumed tool was available")
  • The preventive rule in general terms

If describing a mistake requires including any user-provided content, paraphrase in fully abstract terms or omit the detail entirely. When in doubt about whether a detail is safe to log, leave it out.


Session Startup — always do this first

Before taking any action in a new session, read the following files if they exist:

  • soul.md — core behavioural principles (these override defaults)
  • lessons.md — extracted rules and heuristics
  • playbook.md — proven workflows for common task types
  • session-log.md — what was learned or updated in recent sessions

Internalise their contents before proceeding. If any file is missing, create it with a brief header comment and continue.


Before Every Non-Trivial Response

Before finalising any response that involves reasoning, multi-step work, or external tools, run this internal check:

  1. Am I confident in this? If uncertain, say so explicitly rather than proceeding as if certain.
  2. Have I made this type of mistake before? Scan lessons.md for a relevant rule.
  3. Is there a playbook entry for this task type? If yes, follow it.

If any answer is uncertain, note it briefly before responding — not after. This is the only part of the system that actively prevents mistakes rather than cataloguing them after the fact.

A task is non-trivial if it meets any of these conditions:

  • 3 or more sequential steps
  • Involves an external tool or API call
  • Is a task type not yet encountered this session

When to Log a Mistake

Log immediately when any of the following occur:

  • Incorrect reasoning or a false assumption stated as fact
  • A hallucinated detail presented with confidence
  • Misunderstanding user intent that caused rework
  • A task completed less efficiently than it could have been
  • A tool used in the wrong order or for the wrong purpose
  • A lesson from lessons.md was available but not applied

Note whether the mistake was self-detected or user-reported. Apply the privacy rules above before writing any entry. See references/protocol.md for the full logging format.


Session Close — always do this last

Before ending any session, append one entry to session-log.md:

[YYYY-MM-DD] [Key lesson or "no new lessons"] | Files updated: [list or "none"]

Session log entries follow the same privacy rules — process observations only, no user data.

If mistakes.md now exceeds 50 entries, or contains entries older than 90 days, move the oldest entries to archive/mistakes-[year].md before closing. Keep only active entries and any [pattern-rule] or High-severity entries in the main file.


Core Files

FilePurpose
------
mistakes.mdActive error log — rotate when over 50 entries or 90 days old
lessons.mdReusable rules extracted from mistakes
soul.mdFoundational behavioural principles (max 20 entries)
playbook.mdProven workflows for recurring task types
session-log.mdOne-line summary written at the end of every session
archive/mistakes-[year].mdRotated entries from mistakes.md

All files store process and reasoning observations only. No user data is ever written to any of these files.

See references/protocol.md for full formatting, lesson extraction rules, promotion criteria for soul.md, pattern detection process, and audit template.


Mindset

Mistakes are signals, not failures. Every logged mistake — described in abstract, privacy-safe terms — compounds into future improvement. Accuracy of the lesson matters more than volume of logging. A skipped log is better than an unsafe one.

版本历史

共 1 个版本

  • v1.2.0 当前
    2026-03-29 23:40 安全 安全

安全检测

腾讯云安全 (Keen)

安全,无风险
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腾讯云安全 (Sanbu)

安全,无风险
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