self-improving-agent-1-0-5Captures learnings, errors, and corrections to enable continuous improvement. Use when: (1) A command or operation fails unexpectedly, (2) User corrects Clau...
Install via ClawdBot CLI:
clawdbot install czubi1928/self-improving-agent-1-0-5Log learnings and errors to markdown files for continuous improvement. Coding agents can later process these into fixes, and important learnings get promoted to project memory.
| Situation | Action |
|-----------|--------|
| Command/operation fails | Log to .learnings/ERRORS.md |
| User corrects you | Log to .learnings/LEARNINGS.md with category correction |
| User wants missing feature | Log to .learnings/FEATURE_REQUESTS.md |
| API/external tool fails | Log to .learnings/ERRORS.md with integration details |
| Knowledge was outdated | Log to .learnings/LEARNINGS.md with category knowledge_gap |
| Found better approach | Log to .learnings/LEARNINGS.md with category best_practice |
| Similar to existing entry | Link with See Also, consider priority bump |
| Broadly applicable learning | Promote to CLAUDE.md, AGENTS.md, and/or .github/copilot-instructions.md |
| Workflow improvements | Promote to AGENTS.md (OpenClaw workspace) |
| Tool gotchas | Promote to TOOLS.md (OpenClaw workspace) |
| Behavioral patterns | Promote to SOUL.md (OpenClaw workspace) |
OpenClaw is the primary platform for this skill. It uses workspace-based prompt injection with automatic skill loading.
Via ClawdHub (recommended):
clawdhub install self-improving-agent
Manual:
git clone https://github.com/peterskoett/self-improving-agent.git ~/.openclaw/skills/self-improving-agent
OpenClaw injects these files into every session:
~/.openclaw/workspace/
āāā AGENTS.md # Multi-agent workflows, delegation patterns
āāā SOUL.md # Behavioral guidelines, personality, principles
āāā TOOLS.md # Tool capabilities, integration gotchas
āāā MEMORY.md # Long-term memory (main session only)
āāā memory/ # Daily memory files
ā āāā YYYY-MM-DD.md
āāā .learnings/ # This skill's log files
āāā LEARNINGS.md
āāā ERRORS.md
āāā FEATURE_REQUESTS.md
mkdir -p ~/.openclaw/workspace/.learnings
Then create the log files (or copy from assets/):
LEARNINGS.md ā corrections, knowledge gaps, best practicesERRORS.md ā command failures, exceptionsFEATURE_REQUESTS.md ā user-requested capabilitiesWhen learnings prove broadly applicable, promote them to workspace files:
| Learning Type | Promote To | Example |
|---------------|------------|---------|
| Behavioral patterns | SOUL.md | "Be concise, avoid disclaimers" |
| Workflow improvements | AGENTS.md | "Spawn sub-agents for long tasks" |
| Tool gotchas | TOOLS.md | "Git push needs auth configured first" |
OpenClaw provides tools to share learnings across sessions:
For automatic reminders at session start:
# Copy hook to OpenClaw hooks directory
cp -r hooks/openclaw ~/.openclaw/hooks/self-improvement
# Enable it
openclaw hooks enable self-improvement
See references/openclaw-integration.md for complete details.
For Claude Code, Codex, Copilot, or other agents, create .learnings/ in your project:
mkdir -p .learnings
Copy templates from assets/ or create files with headers.
Append to .learnings/LEARNINGS.md:
## [LRN-YYYYMMDD-XXX] category
**Logged**: ISO-8601 timestamp
**Priority**: low | medium | high | critical
**Status**: pending
**Area**: frontend | backend | infra | tests | docs | config
### Summary
One-line description of what was learned
### Details
Full context: what happened, what was wrong, what's correct
### Suggested Action
Specific fix or improvement to make
### Metadata
- Source: conversation | error | user_feedback
- Related Files: path/to/file.ext
- Tags: tag1, tag2
- See Also: LRN-20250110-001 (if related to existing entry)
---
Append to .learnings/ERRORS.md:
## [ERR-YYYYMMDD-XXX] skill_or_command_name
**Logged**: ISO-8601 timestamp
**Priority**: high
**Status**: pending
**Area**: frontend | backend | infra | tests | docs | config
### Summary
Brief description of what failed
### Error
Actual error message or output
### Context
- Command/operation attempted
- Input or parameters used
- Environment details if relevant
### Suggested Fix
If identifiable, what might resolve this
### Metadata
- Reproducible: yes | no | unknown
- Related Files: path/to/file.ext
- See Also: ERR-20250110-001 (if recurring)
---
Append to .learnings/FEATURE_REQUESTS.md:
## [FEAT-YYYYMMDD-XXX] capability_name
**Logged**: ISO-8601 timestamp
**Priority**: medium
**Status**: pending
**Area**: frontend | backend | infra | tests | docs | config
### Requested Capability
What the user wanted to do
### User Context
Why they needed it, what problem they're solving
### Complexity Estimate
simple | medium | complex
### Suggested Implementation
How this could be built, what it might extend
### Metadata
- Frequency: first_time | recurring
- Related Features: existing_feature_name
---
Format: TYPE-YYYYMMDD-XXX
LRN (learning), ERR (error), FEAT (feature)001, A7B)Examples: LRN-20250115-001, ERR-20250115-A3F, FEAT-20250115-002
When an issue is fixed, update the entry:
Status: pending ā Status: resolved### Resolution
- **Resolved**: 2025-01-16T09:00:00Z
- **Commit/PR**: abc123 or #42
- **Notes**: Brief description of what was done
Other status values:
in_progress - Actively being worked onwont_fix - Decided not to address (add reason in Resolution notes)promoted - Elevated to CLAUDE.md, AGENTS.md, or .github/copilot-instructions.mdWhen a learning is broadly applicable (not a one-off fix), promote it to permanent project memory.
| Target | What Belongs There |
|--------|-------------------|
| CLAUDE.md | Project facts, conventions, gotchas for all Claude interactions |
| AGENTS.md | Agent-specific workflows, tool usage patterns, automation rules |
| .github/copilot-instructions.md | Project context and conventions for GitHub Copilot |
| SOUL.md | Behavioral guidelines, communication style, principles (OpenClaw workspace) |
| TOOLS.md | Tool capabilities, usage patterns, integration gotchas (OpenClaw workspace) |
Status: pending ā Status: promotedPromoted: CLAUDE.md, AGENTS.md, or .github/copilot-instructions.mdLearning (verbose):
Project uses pnpm workspaces. Attempted npm install but failed.
Lock file ispnpm-lock.yaml. Must usepnpm install.
In CLAUDE.md (concise):
## Build & Dependencies
- Package manager: pnpm (not npm) - use `pnpm install`
Learning (verbose):
When modifying API endpoints, must regenerate TypeScript client.
Forgetting this causes type mismatches at runtime.
In AGENTS.md (actionable):
## After API Changes
1. Regenerate client: `pnpm run generate:api`
2. Check for type errors: `pnpm tsc --noEmit`
If logging something similar to an existing entry:
grep -r "keyword" .learnings/See Also: ERR-20250110-001 in MetadataReview .learnings/ at natural breakpoints:
# Count pending items
grep -h "Status\*\*: pending" .learnings/*.md | wc -l
# List pending high-priority items
grep -B5 "Priority\*\*: high" .learnings/*.md | grep "^## \["
# Find learnings for a specific area
grep -l "Area\*\*: backend" .learnings/*.md
Automatically log when you notice:
Corrections (ā learning with correction category):
Feature Requests (ā feature request):
Knowledge Gaps (ā learning with knowledge_gap category):
Errors (ā error entry):
| Priority | When to Use |
|----------|-------------|
| critical | Blocks core functionality, data loss risk, security issue |
| high | Significant impact, affects common workflows, recurring issue |
| medium | Moderate impact, workaround exists |
| low | Minor inconvenience, edge case, nice-to-have |
Use to filter learnings by codebase region:
| Area | Scope |
|------|-------|
| frontend | UI, components, client-side code |
| backend | API, services, server-side code |
| infra | CI/CD, deployment, Docker, cloud |
| tests | Test files, testing utilities, coverage |
| docs | Documentation, comments, READMEs |
| config | Configuration files, environment, settings |
Keep learnings local (per-developer):
.learnings/
Track learnings in repo (team-wide):
Don't add to .gitignore - learnings become shared knowledge.
Hybrid (track templates, ignore entries):
.learnings/*.md
!.learnings/.gitkeep
Enable automatic reminders through agent hooks. This is opt-in - you must explicitly configure hooks.
Create .claude/settings.json in your project:
{
"hooks": {
"UserPromptSubmit": [{
"matcher": "",
"hooks": [{
"type": "command",
"command": "./skills/self-improvement/scripts/activator.sh"
}]
}]
}
}
This injects a learning evaluation reminder after each prompt (~50-100 tokens overhead).
{
"hooks": {
"UserPromptSubmit": [{
"matcher": "",
"hooks": [{
"type": "command",
"command": "./skills/self-improvement/scripts/activator.sh"
}]
}],
"PostToolUse": [{
"matcher": "Bash",
"hooks": [{
"type": "command",
"command": "./skills/self-improvement/scripts/error-detector.sh"
}]
}]
}
}
| Script | Hook Type | Purpose |
|--------|-----------|---------|
| scripts/activator.sh | UserPromptSubmit | Reminds to evaluate learnings after tasks |
| scripts/error-detector.sh | PostToolUse (Bash) | Triggers on command errors |
See references/hooks-setup.md for detailed configuration and troubleshooting.
When a learning is valuable enough to become a reusable skill, extract it using the provided helper.
A learning qualifies for skill extraction when ANY of these apply:
| Criterion | Description |
|-----------|-------------|
| Recurring | Has See Also links to 2+ similar issues |
| Verified | Status is resolved with working fix |
| Non-obvious | Required actual debugging/investigation to discover |
| Broadly applicable | Not project-specific; useful across codebases |
| User-flagged | User says "save this as a skill" or similar |
./skills/self-improvement/scripts/extract-skill.sh skill-name --dry-run
./skills/self-improvement/scripts/extract-skill.sh skill-name
promoted_to_skill, add Skill-PathIf you prefer manual creation:
skills//SKILL.md assets/SKILL-TEMPLATE.mdname and descriptionWatch for these signals that a learning should become a skill:
In conversation:
In learning entries:
See Also links (recurring issue)best_practice with broad applicabilityBefore extraction, verify:
This skill works across different AI coding agents with agent-specific activation.
Activation: Hooks (UserPromptSubmit, PostToolUse)
Setup: .claude/settings.json with hook configuration
Detection: Automatic via hook scripts
Activation: Hooks (same pattern as Claude Code)
Setup: .codex/settings.json with hook configuration
Detection: Automatic via hook scripts
Activation: Manual (no hook support)
Setup: Add to .github/copilot-instructions.md:
## Self-Improvement
After solving non-obvious issues, consider logging to `.learnings/`:
1. Use format from self-improvement skill
2. Link related entries with See Also
3. Promote high-value learnings to skills
Ask in chat: "Should I log this as a learning?"
Detection: Manual review at session end
Activation: Workspace injection + inter-agent messaging
Setup: See "OpenClaw Setup" section above
Detection: Via session tools and workspace files
Regardless of agent, apply self-improvement when you:
For Copilot users, add this to your prompts when relevant:
After completing this task, evaluate if any learnings should be logged to .learnings/ using the self-improvement skill format.
Or use quick prompts:
Generated Mar 1, 2026
A development team uses this skill to log coding errors and user corrections, enabling continuous improvement of their AI coding assistant. It helps capture recurring bugs, outdated knowledge, and best practices to refine agent performance over time.
An AI-powered customer support agent employs this skill to record failed API calls and user feedback, improving response accuracy. It logs feature requests and knowledge gaps to enhance support workflows and reduce manual intervention.
Content creators use this skill to track corrections and better approaches for writing tasks, optimizing AI-generated content. It captures stylistic improvements and tool failures to streamline production and maintain quality standards.
An online learning platform integrates this skill to log student corrections and missing capabilities in tutoring AI. It helps identify knowledge gaps and errors, promoting learnings to improve educational content and interaction patterns.
Data analysts utilize this skill to record errors in data processing commands and user-requested features for analysis tools. It enables logging of best practices and API failures to enhance data accuracy and automation efficiency.
Offer this skill as part of a subscription-based AI agent platform, charging monthly fees for access to continuous improvement features. Revenue comes from tiered plans based on usage volume and promotion capabilities.
Provide consulting to integrate this skill into existing AI workflows, offering customization and training for teams. Revenue is generated through project-based fees and ongoing support contracts.
Release the core skill as open source to build community adoption, while monetizing advanced features like cross-session communication and analytics. Revenue streams include paid add-ons and enterprise support.
š¬ Integration Tip
Start by setting up the .learnings directory in your project and use the provided templates to log errors and learnings consistently.
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