Requirements
- Target platform
- OpenClaw
- Install method
- Manual import
- Extraction
- Extract archive
- Prerequisites
- OpenClaw
- Primary doc
- SKILL.md
Instinct-based learning system for OpenClaw. Analyzes sessions, detects patterns, creates atomic learnings with confidence scoring, and suggests optimization...
Instinct-based learning system for OpenClaw. Analyzes sessions, detects patterns, creates atomic learnings with confidence scoring, and suggests optimization...
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An instinct-based learning system that helps AI agents improve themselves through observation and pattern detection.
Analyzes session history - Reviews agent interactions and outputs Detects patterns - Identifies recurring behaviors, preferences, workflows Creates instincts - Atomic learnings with confidence scores Suggests optimizations - Based on observed behavior patterns Enables self-evolution - Converts insights into improvements
Use when: Building self-improving AI agents Want agent to learn from interactions Discovering optimization opportunities Creating adaptive automation Tracking behavioral patterns Skip when: Static, unchanging behavior preferred No session history available Simple, deterministic workflows only
~/.openclaw/agents/ (session .jsonl files) β βΌ βββββββββββββββββββββββββββββββββββββββββββββ β analyze.mjs β β β’ Reads session history β β β’ Extracts tool calls & errors β β β’ Detects patterns β βββββββββββββββββββββββββββββββββββββββββββββ β βΌ βββββββββββββββββββββββββββββββββββββββββββββ β memory/learning/ β β β’ instincts.jsonl (atomic learnings) β β β’ patterns.json (aggregated) β β β’ optimizations.json (suggestions) β βββββββββββββββββββββββββββββββββββββββββββββ
This skill works with agent-self-improvement (ClawHub) for external user feedback capture: Internal Learning: Session analysis (this skill) External Learning: User feedback via SKILL:agent-self-improvement
# Nightly: Internal analysis SKILL:openclaw-continuous-learning --analyze # After any output: Capture feedback SKILL:agent-self-improvement --job <task> --feedback "<user response>" # Daily: Generate combined improvements SKILL:agent-self-improvement --improve all
User Response β agent-self-improvement β Directive Hints β Session Analysis β openclaw-continuous-learning β Internal Patterns β Combined Insights β Agent Optimization Both skills store learnings in memory/learning/ and can reference each other's data.
ScoreMeaningBehavior0.3TentativeSuggested but not enforced0.5ModerateApplied when relevant0.7StrongAuto-approved0.9Core behaviorAlways apply Confidence increases when: Pattern observed repeatedly User doesn't correct behavior Multiple observations agree Confidence decreases when: User explicitly corrects Pattern not observed recently Contradicting evidence appears
Aggregated observations grouped by category: code_style testing git debugging workflow communication
Actionable improvements derived from patterns.
# Analyze sessions (reads agent .jsonl files from ~/.openclaw/agents/) cd ~/.openclaw/workspace/skills/openclaw-continuous-learning node scripts/analyze.mjs # List learned instincts node scripts/analyze.mjs instincts # Show optimizations node scripts/analyze.mjs list # Show error patterns node scripts/analyze.mjs errors
mkdir -p ~/.openclaw/workspace/memory/learning
Add to cron for periodic analysis: { "id": "continuous-learning", "schedule": "0 22 * * *" }
Connect to daily summary for optimization delivery.
~/.openclaw/workspace/ βββ memory/ βββ learning/ βββ instincts.jsonl # Atomic learnings βββ patterns.json # Aggregated patterns βββ optimizations.json # Suggestions
Start simple - Few patterns, low confidence Validate often - Check if patterns still hold Review suggestions - Don't auto-apply everything Track confidence - Update based on results Export/share - Build library of common patterns
How is this different from memory? Memory stores facts. This learns behavioral patterns and preferences. How long to see results? Depends on session volume. Typically 1-2 weeks for meaningful patterns. Is it safe to auto-apply? Only high-confidence (0.7+) patterns. Always review suggestions first.
skill-engineer - Quality-gated skill development compound-engineering - Session review and learning memory-setup - Memory configuration openclaw-daily-tips - Daily optimization tips Version: 1.1.0 Inspired by: Anthropic's continuous learning patterns, Claude Code homunculus
Agent frameworks, memory systems, reasoning layers, and model-native orchestration.
Largest current source with strong distribution and engagement signals.