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self-improving-agent

by @charon-fanv
4.6(836)

A general self-improving agent that continuously learns and evolves from all skill experiences through semantic, episodic, and working memory architectures.

reinforcement-learningmeta-learningadaptive-aiautonomous-agentsllm-fine-tuningGitHub
Installation
npx skills add charon-fan/agent-playbook --skill self-improving-agent
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Before / After Comparison

1
Before

Traditional agents lack the ability to learn from experience, requiring retraining or manual adjustment for each task. They cannot accumulate knowledge, leading to low efficiency and difficulty adapting to new situations.

After

Self-improving agents continuously learn and evolve from all skill experiences through semantic and working memory architectures. They can continuously optimize their performance, adapt to complex tasks, and achieve true intelligent growth.

SKILL.md

Self-Improving Agent

"An AI agent that learns from every interaction, accumulating patterns and insights to continuously improve its own capabilities." — Based on 2025 lifelong learning research

Overview

This is a universal self-improvement system that learns from ALL skill experiences, not just PRDs. It implements a complete feedback loop with:

  • Multi-Memory Architecture: Semantic + Episodic + Working memory
  • Self-Correction: Detects and fixes skill guidance errors
  • Self-Validation: Periodically verifies skill accuracy
  • Hooks Integration: Auto-triggers on skill events (before_start, after_complete, on_error)
  • Evolution Markers: Traceable changes with source attribution

Research-Based Design

Based on 2025 research:

ResearchKey InsightApplication
SimpleMemEfficient lifelong memoryPattern accumulation system
Multi-Memory SurveySemantic + Episodic memoryWorld knowledge + experiences
Lifelong LearningContinuous task stream learningLearn from every skill use
Evo-MemoryTest-time lifelong learningReal-time adaptation

The Self-Improvement Loop

┌─────────────────────────────────────────────────────────────────┐
│                    UNIVERSAL SELF-IMPROVEMENT                    │
├─────────────────────────────────────────────────────────────────┤
│                                                                 │
│   Skill Event → Extract Experience → Abstract Pattern → Update  │
│        │                  │                │         │          │
│        ▼                  ▼                ▼         ▼          │
│   ┌─────────────────────────────────────────────────────┐       │
│   │              MULTI-MEMORY SYSTEM                      │       │
│   ├─────────────────────────────────────────────────────┤       │
│   │  Semantic Memory   │  Episodic Memory  │ Working Memory │  │
│   │  (Patterns/Rules)  │  (Experiences)    │  (Current)     │  │
│   │  memory/semantic/  │  memory/episodic/ │  memory/working/│  │
│   └─────────────────────────────────────────────────────┘       │
│                                                                 │
│   ┌─────────────────────────────────────────────────────┐       │
│   │              FEEDBACK LOOP                            │       │
│   │  User Feedback → Confidence Update → Pattern Adapt   │       │
│   └─────────────────────────────────────────────────────┘       │
│                                                                 │
└─────────────────────────────────────────────────────────────────┘

When This Activates

Automatic Triggers (via hooks)

EventTriggerAction
before_startAny skill startsLog session start
after_completeAny skill completesExtract patterns, update skills
on_errorBash returns non-zero exitCapture error context, trigger self-correction

Manual Triggers

  • User says "自我进化", "self-improve", "从经验中学习"
  • User says "分析今天的经验", "总结教训"
  • User asks to improve a specific skill

Evolution Priority Matrix

Trigger evolution when new reusable knowledge appears:

TriggerTarget SkillPriorityAction
New PRD pattern discoveredprd-plannerHighAdd to quality checklist
Architecture tradeoff clarifiedarchitecting-solutionsHighAdd to decision patterns
API design rule learnedapi-designerHighUpdate template
Debugging fix discovereddebuggerHighAdd to anti-patterns
Review checklist gapcode-reviewerHighAdd checklist item
Perf/security insightperformance-engineer, security-auditorHighAdd to patterns
UI/UX spec issueprd-planner, architecting-solutionsHighAdd visual spec requirements
React/state patterndebugger, refactoring-specialistMediumAdd to patterns
Test strategy improvementtest-automator, qa-expertMediumUpdate approach
CI/deploy fixdeployment-engineerMediumAdd to troubleshooting

Multi-Memory Architecture

1. Semantic Memory (memory/semantic-patterns.json)

Stores abstract patterns and rules reusable across contexts:

{
  "patterns": {
    "pattern_id": {
      "id": "pat-2025-01-11-001",
      "name": "Pattern Name",
      "source": "user_feedback|implementation_review|retrospective",
      "confidence": 0.95,
      "applications": 5,
      "created": "2025-01-11",
      "category": "prd_structure|react_patterns|async_patterns|...",
      "pattern": "One-line summary",
      "problem": "What problem does this solve?",
      "solution": { ... },
      "quality_rules": [ ... ],
      "target_skills": [ ... ]
    }
  }
}

2. Episodic Memory (memory/episodic/)

Stores specific experiences and what happened:

memory/episodic/
├── 2025/
│   ├── 2025-01-11-prd-creation.json
│   ├── 2025-01-11-debug-session.json
│   └── 2025-01-12-refactoring.json
{
  "id": "ep-2025-01-11-001",
  "timestamp": "2025-01-11T10:30:00Z",
  "skill": "debugger",
  "situation": "User reported data not refreshing after form submission",
  "root_cause": "Empty callback in onRefresh prop",
  "solution": "Implement actual refresh logic in callback",
  "lesson": "Always verify callbacks are not empty functions",
  "related_pattern": "callback_verification",
  "user_feedback": {
    "rating": 8,
    "comments": "This was exactly the issue"
  }
}

3. Working Memory (memory/working/)

Stores current session context:

memory/working/
├── current_session.json   # Active session data
├── last_error.json        # Error context for self-correction
└── session_end.json       # Session end marker

Self-Improvement Process

Phase 1: Experience Extraction

After any skill completes, extract:

What happened:
  skill_used: {which skill}
  task: {what was being done}
  outcome: {success|partial|failure}

Key Insights:
  what_went_well: [what worked]
  what_went_wrong: [what didn't work]
  root_cause: {underlying issue if applicable}

User Feedback:
  rating: {1-10 if provided}
  comments: {specific feedback}

Phase 2: Pattern Abstraction

Convert experiences to reusable patterns:

Concrete ExperienceAbstract PatternTarget Skill
"User forgot to save PRD notes""Always persist thinking to files"prd-planner
"Code review missed SQL injection""Add security checklist item"code-reviewer
"Callback was empty, didn't work""Verify callback implementations"debugger
"Net APY position ambiguous""UI specs need exact relative positions"prd-planner

Abstraction Rules:

If experience_repeats 3+ times:
  pattern_level: critical
  action: Add to skill's "Critical Mistakes" section

If solution_was_effective:
  pattern_level: best_practice
  action: Add to skill's "Best Practices" section

If user_rating >= 7:
  pattern_level: strength
  action: Reinforce this approach

If user_rating <= 4:
  pattern_level: weakness
  action: Add to "What to Avoid" section

Phase 3: Skill Updates

Update the appropriate skill files with evolution markers:

<!-- Evolution: 2025-01-12 | source: ep-2025-01-12-001 | skill: debugger -->

## Pattern Added (2025-01-12)

**Pattern**: Always verify callbacks are not empty functions

**Source**: Episode ep-2025-01-12-001

**Confidence**: 0.95

### Updated Checklist
- [ ] Verify all callbacks have implementations
- [ ] Test callback execution paths

Correction Markers (when fixing wrong guidance):

<!-- Correction: 2025-01-12 | was: "Use callback chain" | reason: caused stale refresh -->

## Corrected Guidance

Use direct state monitoring instead of callback chains:
```typescript
// ✅ Do: Direct state monitoring
const prevPendingCount = usePrevious(pendingCount);

### Phase 4: Memory Consolidation

1. **Update semantic memory** (`memory/semantic-patterns.json`)
2. **Store episodic memory** (`memory/episodic/YYYY-MM-DD-{skill}.json`)
3. **Update pattern confidence** based on applications/feedback
4. **Prune outdated patterns** (low confidence, no recent applications)

## Self-Correction (on_error hook)

Triggered when:
- Bash command returns non-zero exit code
- Tests fail after following skill guidance
- User reports the guidance produced incorrect results

**Process:**

```markdown
## Self-Correction Workflow

1. Detect Error
   - Capture error context from working/last_error.json
   - Identify which skill guidance was followed

2. Verify Root Cause
   - Was the skill guidance incorrect?
   - Was the guidance misinterpreted?
   - Was the guidance incomplete?

3. Apply Correction
   - Update skill file with corrected guidance
   - Add correction marker with reason
   - Update related patterns in semantic memory

4. Validate Fix
   - Test the corrected guidance
   - Ask user to verify

Example:

<!-- Correction: 2025-01-12 | was: "useMemo for claimable ids" | reason: stale data at click time -->

## Self-Correction: Click-Time Computation

**Issue**: Using useMemo for claimable IDs caused stale data
**Fix**: Compute at click time for always-fresh data
**Pattern**: click_time_vs_open_time_computation

Self-Validation

Use the validation template in references/appendix.md when reviewing updates.

Hooks Integration

Wiring Hooks in Claude Code Settings

Add to Claude Code settings (~/.claude/settings.json):

{
  "hooks": {
    "PreToolUse": [
      {
        "matcher": "Bash|Write|Edit",
        "hooks": [
          {
            "type": "command",
            "command": "bash ${SKILLS_DIR}/self-improving-agent/hooks/pre-tool.sh \"$TOOL_NAME\" \"$TOOL_INPUT\""
          }
        ]
      }
    ],
    "PostToolUse": [
      {
        "matcher": "Bash",
        "hooks": [
          {
            "type": "command",
            "command": "bash ${SKILLS_DIR}/self-improving-agent/hooks/post-bash.sh \"$TOOL_OUTPUT\" \"$EXIT_CODE\""
          }
        ]
      }
    ],
    "Stop": [
      {
        "matcher": "",
        "hooks": [
          {
            "type": "command",
            "command": "bash ${SKILLS_DIR}/self-improving-agent/hooks/session-end.sh"
          }
        ]
      }
    ]
  }
}

Replace ${SKILLS_DIR} with your actual skills path.

Additional References

See references/appendix.md for memory structure, workflow diagrams, metrics, feedback templates, and research links.

Best Practices

DO

  • ✅ Learn from EVERY skill interaction
  • ✅ Extract patterns at the right abstraction level
  • ✅ Update multiple related skills
  • ✅ Track confidence and apply counts
  • ✅ Ask for user feedback on improvements
  • ✅ Use evolution/correction markers for traceability
  • ✅ Validate guidance before applying broadly

DON'T

  • ❌ Over-generalize from single experiences
  • ❌ Update skills without confidence tracking
  • ❌ Ignore negative feedback
  • ❌ Make changes that break existing functionality
  • ❌ Create contradictory patterns
  • ❌ Update skills without understanding context

Quick Start

After any skill completes, this agent automatically:

  1. Analyzes what happened
  2. Extracts patterns and insights
  3. Updates relevant skill files
  4. Logs to memory for future reference
  5. Reports summary to user

References

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Installs28.6K
Rating4.6 / 5.0
Version
Updated2026年5月23日
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Compatible Platforms

🔧Claude Code
🔧OpenClaw
🔧OpenCode
🔧Codex
🔧Gemini CLI
🔧GitHub Copilot
🔧Amp
🔧Kimi CLI

Timeline

Created2026年3月14日
Last Updated2026年5月23日