Thinking Model Enhancer
Advanced thinking model designed to improve decision-making speed and accuracy. Integrates with memory system to compare and integrate previous thinking models for continuous enhancement.
When to use
- When user requests improved decision-making
- When enhanced thinking models are needed
- When comparing and integrating thinking approaches
- For optimizing decision-making processes
- For analyzing and improving cognitive frameworks
Thinking Model Framework
Multi-Stage Cognitive Processing Pipeline
- Problem Analysis: Decompose the problem into manageable components
- Model Selection: Choose appropriate thinking model based on problem characteristics
- Information Collection: Gather relevant data and context from memory and external sources
- Analysis & Evaluation: Process information using selected model with multi-perspective assessment
- Synthesis: Combine findings into coherent understanding
- Decision Formulation: Generate recommendations or conclusions
- Memory Integration: Store results and lessons learned for future reference
๐ฏ Domain-Specific Thinking Modes (Extracted from Skills)
1๏ธโฃ Research Thinking Mode (็ ็ฉถๅๆ็ปดๆจกๅผ)
Source: Extracted from Advanced Skill Creator skill (5-step research flow)
When to Use
- Creating new skills or features
- Comprehensive information gathering
- Solution comparison and selection
- Documentation generation
Research Flow Process
- Memory Query: Query memory for similar past creations
- Documentation Access: Consult official docs, guides, references
- Public Research: Search ClawHub, GitHub, community solutions
- Best Practices: Search for proven patterns and security practices
- Solution Fusion: Compare and synthesize all sources
- Output Generation: Produce structured, documented results
Research Priority Chain
Official Documentation > High-Quality Community Skills > Active Community Solutions > Self-Optimization
Output Template Pattern
ใFinal Recommended Solutionใ
ใFile Structure Previewใ
ใComplete File Contentใ
2๏ธโฃ Diagnostic Thinking Mode (่ฏๆญๅๆ็ปดๆจกๅผ)
Source: Extracted from System Repair Expert skill (6-step repair flow)
When to Use
- System troubleshooting and repair
- Error diagnosis and resolution
- Configuration issues
- Performance problems
Diagnostic Flow Process
- Memory Pattern Match: Query historical error patterns for quick classification
- Problem Understanding: Fully comprehend issue scope and context
- Official Solution Search: Check official docs, issues, release notes
- Tool/Skill Match: Search for existing repair skills on ClawdHub
- Community Solutions: Search GitHub for workarounds and patches
- Last Resort: Create temporary fix script (only if all else fails)
Confidence Assessment System
| Confidence Level | Criteria | Action |
|---|---|---|
| High (>90%) | Multiple sources confirm, tested solution | Recommend immediate execution |
| Medium (60-90%) | Single source, reasonable confidence | Recommend testing before execution |
| Low (<60%) | Unclear sources, requires research | Request more info or deep dive |
Emergency Level Classification
- P0 (Critical): Service down, immediate action required
- P1 (High): Major functionality impaired, urgent
- P2 (Medium): Minor issues, can schedule fix
๐ Thinking Model Feedback Loop
The thinking model now forms a complete cycle with skill implementations:
โโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโ
โ Thinking Model Enhancer โ
โ (Generic Framework + Domain-Specific Modes) โ
โ โ
โ โโโโโโโโโโโโโโโโ โโโโโโโโโโโโโโโโโโโโโโโโ โ
โ โ Advanced โโโโโบโ Research Thinking โ โ
โ โ Skill Creatorโ โ Mode (5-step flow) โ โ
โ โโโโโโโโโโโโโโโโ โโโโโโโโโโโโโโโโโโโโโโโโ โ
โ โฒ โ โ
โ โ โผ โ
โ โโโโโโโโดโโโโโโโโ โโโโโโโโโโโโโโโโโโโโโโโโ โ
โ โ System โโโโโโ Diagnostic Thinking โ โ
โ โ Repair Expertโ โ Mode (6-step flow) โ โ
โ โโโโโโโโโโโโโโโโ โโโโโโโโโโโโโโโโโโโโโโโโ โ
โ โ
โ โโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโ
โ โ Memory System Integration โโ
โ โ (Store patterns, query history, learn) โโ
โ โโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโ
โโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโ
Feedback Mechanism:
- Skills extract best practices โ Enrich thinking model
- Thinking model provides framework โ Guide skill execution
- Memory system stores patterns โ Enable continuous improvement
Speed Optimization Strategies
- Parallel processing of multiple approaches
- Early elimination of unlikely options
- Pattern recognition for quick categorization
- Heuristic shortcuts for common scenarios
- Focused analysis on critical factors
Accuracy Enhancement Techniques
- Multi-angle evaluation
- Evidence weighting and validation
- Cross-validation verification
- Assumption checking protocols
- Confidence interval assessment
Memory System Integration
- Query memory system for similar past decisions
- Compare current approach with historical models
- Identify patterns and recurring themes
- Integrate successful elements from previous models
- Update model based on outcomes of past decisions
- Retrieve relevant past thinking models from memory
- Compare current approach with stored models
- Identify strengths and weaknesses in each approach
- Store refined model for future use
Thinking Model Comparison Algorithm
Input Analysis
- Parse the current problem or decision
- Identify key variables and constraints
- Determine decision complexity level
Model Selection Guide
Choose the appropriate thinking mode based on problem characteristics:
| Problem Type | Recommended Mode | Keywords to Detect |
|---|---|---|
| Creating new features/skills | Research Thinking Mode | "ๅskill", "ๅๅปบ", "ๅฎ็ฐๅ่ฝ", "ๅไธไธช่ฎฉๅฎ" |
| System troubleshooting | Diagnostic Thinking Mode | "ๅฏๅจๅคฑ่ดฅ", "ๆฅ้", "้่ฏฏ", "ไฟฎๅค", "้ฎ้ข" |
| General decision-making | Generic Cognitive Pipeline | Default for unclear cases |
| Complex analysis | Multi-Perspective Assessment | "ๅๆ", "ๆฏ่พ", "่ฏไผฐ" |
Auto-Detection: The system should automatically detect keywords and suggest appropriate thinking mode.
Hybrid Approach: For complex problems, combine multiple modes:
- Use Research Mode for information gathering
- Apply Diagnostic Mode for problem identification
- Use Generic Pipeline for final decision synthesis
Processing Stages
- Rapid Assessment: Quick preliminary evaluation
- Detailed Analysis: In-depth examination of options
- Cross-Validation: Verification against multiple criteria
- Optimization: Refinement based on goals
- Integration: Combine with memory-stored models
Memory Operations
- Query memory system for similar past decisions
- Compare current model with historical models
- Identify patterns and recurring themes
- Integrate successful elements from previous models
- Update model based on outcomes of past decisions
Implementation Requirements
- Execute thinking model framework in sequence
- Integrate with memory system for continuous learning
- Balance speed and accuracy based on context
- Document decision-making process for future reference
- Store refined models in memory for ongoing improvement
- Allow for customization based on problem domain
- Enable comparison between different thinking approaches
- Support iterative refinement of the model
- Enable Skill Integration: Extract and incorporate best practices from skill implementations
- Maintain Feedback Loop: Ensure bidirectional learning between thinking model and skills
- Auto-Detection: Automatically detect problem type and suggest appropriate thinking mode
- Confidence Documentation: Rate and document confidence levels for all recommendations
System Prompt Integration
When using this thinking model, incorporate the following system prompt elements:
"You are now an OpenClaw (formerly ClawDBot / Moltbot) thinking model specialist, implementing the advanced thinking model framework for enhanced decision-making. Apply the structured cognitive processing pipeline while balancing speed and accuracy based on the specific requirements of each situation. Leverage domain-specific thinking modes (Research Thinking Mode for skill creation, Diagnostic Thinking Mode for troubleshooting) extracted from real-world best practices. Continuously learn from outcomes and update your approach through memory integration."
Cognitive Application Guidelines
- โ Apply the multi-stage cognitive processing pipeline systematically
- โ Adjust the balance between speed and accuracy based on problem complexity
- โ Leverage memory integration to compare with previous similar decisions
- โ Use the speed optimization strategies when time is constrained
- โ Employ accuracy enhancement techniques for critical decisions
- โ Document the decision-making process for future learning
- โ Auto-detect problem type and apply appropriate domain-specific thinking mode
- โ Extract lessons from skills to continuously improve the thinking model
- โ Maintain feedback loop between thinking model and skill implementations
Enhanced Prompt for Skill Creation Context
When creating skills, activate Research Thinking Mode:
"When creating skills or features, follow the Research Thinking Mode: 1) Query memory for similar past creations, 2) Consult official documentation, 3) Research public solutions on ClawHub/GitHub, 4) Compare best practices, 5) Synthesize and output structured solution. Apply the output template: ใFinal Recommended SolutionใโใFile Structure PreviewใโใComplete File Contentใ."
Enhanced Prompt for Troubleshooting Context
When diagnosing issues, activate Diagnostic Thinking Mode:
"When troubleshooting problems, follow the Diagnostic Thinking Mode: 1) Query memory for similar error patterns, 2) Understand the full problem scope, 3) Search official solutions, 4) Check ClawdHub for repair skills, 5) Search community workarounds, 6) Create last-resort fix only if needed. Assess confidence level (High/Medium/Low) for each recommendation."