返回顶部
t

thinking-model-enhancer思维模型增强器

Advanced thinking model that improves decision-making speed and accuracy. Integrates with memory system to compare and integrate previous thinking models for continuous enhancement.

作者: admin | 来源: ClawHub
源自
ClawHub
版本
V 1.0.0
安全检测
已通过
2,555
下载量
免费
免费
7
收藏
概述
安装方式
版本历史

thinking-model-enhancer

思维模型增强器

先进的思维模型,旨在提升决策速度与准确性。与记忆系统集成,比较并整合先前的思维模型以实现持续增强。

使用时机

  • - 当用户要求改进决策时
  • 当需要增强型思维模型时
  • 当比较和整合思维方法时
  • 用于优化决策流程时
  • 用于分析和改进认知框架时

思维模型框架

多阶段认知处理流程

  1. 1. 问题分析:将问题分解为可管理的组成部分
  2. 模型选择:根据问题特征选择合适的思维模型
  3. 信息收集:从记忆和外部来源收集相关数据和上下文
  4. 分析与评估:使用所选模型进行多角度评估处理信息
  5. 综合:将发现整合为连贯的理解
  6. 决策制定:生成建议或结论
  7. 记忆整合:存储结果和经验教训以备将来参考

🎯 领域特定思维模式(从技能中提取)

1️⃣ 研究型思维模式

来源:从高级技能创建者技能中提取(5步研究流程)

使用时机

  • - 创建新技能或功能时
  • 全面信息收集时
  • 解决方案比较和选择时
  • 生成文档时

研究流程

  1. 1. 记忆查询:查询记忆中类似的过往创作
  2. 文档访问:查阅官方文档、指南、参考资料
  3. 公开研究:搜索ClawHub、GitHub、社区解决方案
  4. 最佳实践:搜索经过验证的模式和安全实践
  5. 方案融合:比较并综合所有来源
  6. 输出生成:生成结构化、有文档记录的结果

研究优先级链

官方文档 > 高质量社区技能 > 活跃社区解决方案 > 自我优化

输出模板格式

【最终推荐方案】
【文件结构预览】
【完整文件内容】



2️⃣ 诊断型思维模式


来源:从系统修复专家技能中提取(6步修复流程)

使用时机

  • - 系统故障排查和修复时
  • 错误诊断和解决时
  • 配置问题处理时
  • 性能问题处理时

诊断流程

  1. 1. 记忆模式匹配:查询历史错误模式以快速分类
  2. 问题理解:全面理解问题范围和上下文
  3. 官方解决方案搜索:查阅官方文档、问题、发布说明
  4. 工具/技能匹配:在ClawdHub上搜索现有修复技能
  5. 社区解决方案:在GitHub上搜索变通方法和补丁
  6. 最后手段:创建临时修复脚本(仅在所有其他方法失败时)

置信度评估系统
置信度等级标准行动
(>90%)多个来源确认,经过测试的解决方案建议立即执行
(60-90%)
单一来源,合理置信度 | 建议执行前测试 |

| (<60%) | 来源不明确,需要研究 | 请求更多信息或深入探究 |

紧急程度分类

  • - P0(严重):服务宕机,需立即行动
  • P1(高):主要功能受损,紧急
  • P2(中):次要问题,可安排修复

🔄 思维模型反馈循环

思维模型现在与技能实现形成完整循环:

┌─────────────────────────────────────────────────────┐
│ 思维模型增强器 │
│ (通用框架 + 领域特定模式) │
│ │
│ ┌──────────────┐ ┌──────────────────────┐ │
│ │ 高级 │───►│ 研究型思维 │ │
│ │ 技能创建者 │ │ 模式(5步流程) │ │
│ └──────────────┘ └──────────────────────┘ │
│ ▲ │ │
│ │ ▼ │
│ ┌──────┴───────┐ ┌──────────────────────┐ │
│ │ 系统 │◄───│ 诊断型思维 │ │
│ │ 修复专家 │ │ 模式(6步流程) │ │
│ └──────────────┘ └──────────────────────┘ │
│ │
│ ┌──────────────────────────────────────────────┐│
│ │ 记忆系统集成 ││
│ │ (存储模式、查询历史、学习) ││
│ └──────────────────────────────────────────────┘│
└─────────────────────────────────────────────────────┘

反馈机制

  1. 1. 技能提取最佳实践 → 丰富思维模型
  2. 思维模型提供框架 → 指导技能执行
  3. 记忆系统存储模式 → 实现持续改进

速度优化策略

  • - 并行处理多种方法
  • 早期排除不太可能的选项
  • 模式识别以快速分类
  • 常见场景的启发式快捷方式
  • 聚焦关键因素分析

准确性增强技术

  • - 多角度评估
  • 证据加权和验证
  • 交叉验证核实
  • 假设检查协议
  • 置信区间评估

记忆系统集成

  • - 查询记忆系统中类似的过往决策
  • 将当前方法与历史模型进行比较
  • 识别模式和重复主题
  • 整合先前模型中的成功要素
  • 根据过往决策结果更新模型
  • 从记忆中检索相关过往思维模型
  • 将当前方法与存储模型进行比较
  • 识别每种方法的优势和劣势
  • 存储优化后的模型以备将来使用

思维模型比较算法

输入分析

  • - 解析当前问题或决策
  • 识别关键变量和约束
  • 确定决策复杂程度

模型选择指南

根据问题特征选择合适的思维模式:
问题类型推荐模式检测关键词
创建新功能/技能研究型思维模式写skill、创建、实现功能、写一个让它
系统故障排查
诊断型思维模式 | 启动失败、报错、错误、修复、问题 | | 通用决策 | 通用认知流程 | 默认用于不明确情况 | | 复杂分析 | 多角度评估 | 分析、比较、评估 |

自动检测:系统应自动检测关键词并建议合适的思维模式。

混合方法:对于复杂问题,结合多种模式:

  • - 使用研究模式进行信息收集
  • 应用诊断模式进行问题识别
  • 使用通用流程进行最终决策综合

处理阶段

  1. 1. 快速评估:快速初步评估
  2. 详细分析:深入检查选项
  3. 交叉验证:对照多个标准进行验证
  4. 优化:根据目标进行改进
  5. 整合:与记忆存储模型结合

记忆操作

  • - 查询记忆系统中类似的过往决策
  • 将当前模型与历史模型进行比较
  • 识别模式和重复主题
  • 整合先前模型中的成功要素
  • 根据过往决策结果更新模型

实现要求

  1. 1. 按顺序执行思维模型框架
  2. 与记忆系统集成以实现持续学习
  3. 根据上下文平衡速度与准确性
  4. 记录决策过程以备将来参考
  5. 在记忆中存储优化后的模型以实现持续改进
  6. 允许根据问题领域进行定制
  7. 支持不同思维方法之间的比较
  8. 支持模型的迭代优化
  9. 启用技能集成:从技能实现中提取并整合最佳实践
  10. 维护反馈循环:确保思维模型与技能之间的双向学习
  11. 自动检测:自动检测问题类型并建议合适的思维模式
  12. 置信度记录:对所有建议评定并记录置信度等级

系统提示集成

使用此思维模型时,融入以下系统提示要素:

你现在是OpenClaw(原ClawDBot / Moltbot)思维模型专家,实施高级思维模型框架以增强决策能力。应用结构化认知处理流程,同时根据每种情况的具体要求平衡速度与准确性。利用从实际最佳实践中提取的领域特定思维模式(技能创建使用研究型思维模式,故障排查使用诊断型思维模式)。通过记忆集成持续从结果中学习并更新你的方法。

认知应用指南

  • - ✅ 系统性地应用多阶段认知处理流程
  • ✅ 根据问题复杂度调整速度与准确性的平衡
  • ✅ 利用记忆集成与先前类似决策进行比较
  • ✅ 时间受限时使用速度优化策略
  • ✅ 关键决策时采用准确性增强技术
  • ✅ 记录决策过程以备将来学习
  • 自动检测问题类型并应用合适的领域特定思维模式
  • 从技能中提取经验教训以持续改进思维模型
  • 维护思维模型与技能实现之间的反馈循环

标签

skill ai

通过对话安装

该技能支持在以下平台通过对话安装:

OpenClaw WorkBuddy QClaw Kimi Claude

方式一:安装 SkillHub 和技能

帮我安装 SkillHub 和 thinking-model-enhancer-1776367830 技能

方式二:设置 SkillHub 为优先技能安装源

设置 SkillHub 为我的优先技能安装源,然后帮我安装 thinking-model-enhancer-1776367830 技能

通过命令行安装

skillhub install thinking-model-enhancer-1776367830

下载

⬇ 下载 thinking-model-enhancer v1.0.0(免费)

文件大小: 44.88 KB | 发布时间: 2026-4-17 16:11

v1.0.0 最新 2026-4-17 16:11
---
name: thinking-model-enhancer
description: Advanced thinking model that improves decision-making speed and accuracy. Integrates with memory system to compare and integrate previous thinking models for continuous enhancement.
when: "When user requests improved decision-making, enhanced thinking models, or when comparing and integrating thinking approaches"
examples:
- "启动高级思考模型"
- "运行思维模型优化"
- "比较和整合思考模型"
- "提升决策准确性"
- "优化思维过程"
- "分析决策流程"
metadata: {"openclaw": {"requires": {"bins": ["python3", "bash"], "anyBins": ["python3", "python"]}, "emoji": "🧠", "primaryEnv": ""}}
---

# 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
1. **Problem Analysis**: Decompose the problem into manageable components
2. **Model Selection**: Choose appropriate thinking model based on problem characteristics
3. **Information Collection**: Gather relevant data and context from memory and external sources
4. **Analysis & Evaluation**: Process information using selected model with multi-perspective assessment
5. **Synthesis**: Combine findings into coherent understanding
6. **Decision Formulation**: Generate recommendations or conclusions
7. **Memory Integration**: Store results and lessons learned for future reference

## 🎯 Domain-Specific Thinking Modes (Extracted from Skills)

### 1️⃣ Research Thinking Mode (研究型思维模式)
**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
1. **Memory Query**: Query memory for similar past creations
2. **Documentation Access**: Consult official docs, guides, references
3. **Public Research**: Search ClawHub, GitHub, community solutions
4. **Best Practices**: Search for proven patterns and security practices
5. **Solution Fusion**: Compare and synthesize all sources
6. **Output Generation**: Produce structured, documented results

#### Research Priority Chain
```
Official Documentation > High-Quality Community Skills > Active Community Solutions > Self-Optimization
```

#### Output Template Pattern
```
【Final Recommended Solution】
【File Structure Preview】
【Complete File Content】
```

---

### 2️⃣ Diagnostic Thinking Mode (诊断型思维模式)
**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
1. **Memory Pattern Match**: Query historical error patterns for quick classification
2. **Problem Understanding**: Fully comprehend issue scope and context
3. **Official Solution Search**: Check official docs, issues, release notes
4. **Tool/Skill Match**: Search for existing repair skills on ClawdHub
5. **Community Solutions**: Search GitHub for workarounds and patches
6. **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

---

### 🔄 Thinking Model Feedback Loop
The thinking model now forms a complete cycle with skill implementations:

```
┌─────────────────────────────────────────────────────┐
│ Thinking Model Enhancer │
│ (Generic Framework + Domain-Specific Modes) │
│ │
│ ┌──────────────┐ ┌──────────────────────┐ │
│ │ Advanced │───►│ Research Thinking │ │
│ │ Skill Creator│ │ Mode (5-step flow) │ │
│ └──────────────┘ └──────────────────────┘ │
│ ▲ │ │
│ │ ▼ │
│ ┌──────┴───────┐ ┌──────────────────────┐ │
│ │ System │◄───│ Diagnostic Thinking │ │
│ │ Repair Expert│ │ Mode (6-step flow) │ │
│ └──────────────┘ └──────────────────────┘ │
│ │
│ ┌──────────────────────────────────────────────┐│
│ │ Memory System Integration ││
│ │ (Store patterns, query history, learn) ││
│ └──────────────────────────────────────────────┘│
└─────────────────────────────────────────────────────┘
```

**Feedback Mechanism**:
1. Skills extract best practices → Enrich thinking model
2. Thinking model provides framework → Guide skill execution
3. Memory system stores patterns → 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** | "写skill", "创建", "实现功能", "写一个让它" |
| System troubleshooting | **Diagnostic Thinking Mode** | "启动失败", "报错", "错误", "修复", "问题" |
| General decision-making | **Generic Cognitive Pipeline** | Default for unclear cases |
| Complex analysis | **Multi-Perspective Assessment** | "分析", "比较", "评估" |

**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
1. **Rapid Assessment**: Quick preliminary evaluation
2. **Detailed Analysis**: In-depth examination of options
3. **Cross-Validation**: Verification against multiple criteria
4. **Optimization**: Refinement based on goals
5. **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
1. Execute thinking model framework in sequence
2. Integrate with memory system for continuous learning
3. Balance speed and accuracy based on context
4. Document decision-making process for future reference
5. Store refined models in memory for ongoing improvement
6. Allow for customization based on problem domain
7. Enable comparison between different thinking approaches
8. Support iterative refinement of the model
9. **Enable Skill Integration**: Extract and incorporate best practices from skill implementations
10. **Maintain Feedback Loop**: Ensure bidirectional learning between thinking model and skills
11. **Auto-Detection**: Automatically detect problem type and suggest appropriate thinking mode
12. **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
- ✅ Apply the multi-stage cognitive processing pipeline systematically
- ✅ Adjust the balance between speed and accuracy based on problem complexity
- ✅ Leverage memory integration to compare with previous similar decisions
- ✅ Use the speed optimization strategies when time is constrained
- ✅ Employ accuracy enhancement techniques for critical decisions
- ✅ Document the decision-making process for future learning
- ✅ **Auto-detect problem type** and apply appropriate domain-specific thinking mode
- ✅ **Extract lessons** from skills to continuously improve the thinking model
- ✅ **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: 【Final Recommended Solution】→【File Structure Preview】→【Complete File Content】."

### 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."

Archiver·手机版·闲社网·闲社论坛·羊毛社区· 多链控股集团有限公司 · 苏ICP备2025199260号-1

Powered by Discuz! X5.0   © 2024-2025 闲社网·线报更新论坛·羊毛分享社区·http://xianshe.com

p2p_official_large
返回顶部