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npx skills add https://github.com/nicepkg/ai-workflow --skill sector-analyst此技能能够全面分析板块和行业表现图表,以识别市场周期定位并预测可能的轮动情景。该分析将观察到的表现数据与既定的板块轮动原则相结合,提供客观的市场评估和概率情景预测。
在以下情况下使用此技能:
示例用户请求:
在分析板块/行业表现图表时,遵循此结构化工作流程:
首先,仔细检查所有提供的图表图像以提取:
分析图表时用英语思考。记录关键板块和行业的具体数值表现数据。
加载板块轮动知识库以指导分析:
references/sector_rotation.md 以获取市场周期和板块轮动框架广告位招租
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通过以下方式确定与当前观察最匹配的周期阶段:
将观察结果综合成客观评估:
使用数据驱动的语言并具体引用表现数据。
基于板块轮动原则和当前定位,为下一阶段开发2-4个潜在情景:
对于每个情景:
情景范围应从最可能(最高概率)到替代/逆向情景。
创建具有以下章节的结构化 Markdown 文档:
必需章节:
将分析结果保存为 Markdown 文件,命名约定为:sector_analysis_YYYY-MM-DD.md
使用此结构:
# Sector Performance Analysis - [Date]
## Executive Summary
[2-3 sentences summarizing key findings]
## Current Situation
### Market Cycle Assessment
[Which cycle phase and why]
### Performance Patterns Observed
#### 1-Week Performance
[Analysis of recent performance]
#### 1-Month Performance
[Analysis of medium-term trends]
#### Sector-Level Analysis
[Detailed breakdown by sector]
#### Industry-Level Analysis
[Notable industry-specific observations]
## Supporting Evidence
### Confirming Signals
- [List data points supporting cycle assessment]
### Contradictory Signals
- [List any conflicting indicators]
## Scenario Analysis
### Scenario 1: [Name] (Probability: XX%)
**Description**: [What happens]
**Outperformers**: [Sectors/industries]
**Underperformers**: [Sectors/industries]
**Catalysts**: [What would confirm this scenario]
### Scenario 2: [Name] (Probability: XX%)
[Repeat structure]
[Additional scenarios as appropriate]
## Recommended Positioning
### Strategic Positioning (Medium-term)
[Sector allocation recommendations]
### Tactical Positioning (Short-term)
[Specific adjustments or opportunities]
## Key Risks and Monitoring Points
[What to watch that could invalidate the analysis]
---
*Analysis Date: [Date]*
*Data Period: [Timeframe of charts analyzed]*
进行分析时:
根据证据强度应用以下概率范围:
所有情景的总概率之和应约为100%。
sector_rotation.md - 涵盖市场周期阶段、典型板块表现模式和概率评估框架的综合知识库展示预期输入格式的示例图表:
sector_performance.jpeg - 示例板块层面表现图表(1周和1个月)industory_performance_1.jpeg - 示例行业表现图表(表现优异者)industory_performance_2.jpeg - 示例行业表现图表(表现不佳者)这些样本说明了此技能分析的视觉数据类型。用户提供的图表格式可能不同,但应包含类似的相对表现信息。
每周安装次数
50
代码仓库
GitHub 星标数
141
首次出现时间
Jan 24, 2026
安全审计
安装于
opencode35
claude-code32
cursor30
gemini-cli29
codex28
trae22
This skill enables comprehensive analysis of sector and industry performance charts to identify market cycle positioning and predict likely rotation scenarios. The analysis combines observed performance data with established sector rotation principles to provide objective market assessment and probabilistic scenario forecasting.
Use this skill when:
Example user requests:
Follow this structured workflow when analyzing sector/industry performance charts:
First, carefully examine all provided chart images to extract:
Think in English while analyzing the charts. Document specific numerical performance figures for key sectors and industries.
Load the sector rotation knowledge base to inform analysis:
references/sector_rotation.md to access market cycle and sector rotation frameworksIdentify which cycle phase best matches current observations by:
Synthesize observations into an objective assessment:
Use data-driven language and specific references to performance figures.
Based on sector rotation principles and current positioning, develop 2-4 potential scenarios for the next phase:
For each scenario:
Scenarios should range from most likely (highest probability) to alternative/contrarian scenarios.
Create a structured Markdown document with the following sections:
Required Sections:
Save analysis results as a Markdown file with naming convention: sector_analysis_YYYY-MM-DD.md
Use this structure:
# Sector Performance Analysis - [Date]
## Executive Summary
[2-3 sentences summarizing key findings]
## Current Situation
### Market Cycle Assessment
[Which cycle phase and why]
### Performance Patterns Observed
#### 1-Week Performance
[Analysis of recent performance]
#### 1-Month Performance
[Analysis of medium-term trends]
#### Sector-Level Analysis
[Detailed breakdown by sector]
#### Industry-Level Analysis
[Notable industry-specific observations]
## Supporting Evidence
### Confirming Signals
- [List data points supporting cycle assessment]
### Contradictory Signals
- [List any conflicting indicators]
## Scenario Analysis
### Scenario 1: [Name] (Probability: XX%)
**Description**: [What happens]
**Outperformers**: [Sectors/industries]
**Underperformers**: [Sectors/industries]
**Catalysts**: [What would confirm this scenario]
### Scenario 2: [Name] (Probability: XX%)
[Repeat structure]
[Additional scenarios as appropriate]
## Recommended Positioning
### Strategic Positioning (Medium-term)
[Sector allocation recommendations]
### Tactical Positioning (Short-term)
[Specific adjustments or opportunities]
## Key Risks and Monitoring Points
[What to watch that could invalidate the analysis]
---
*Analysis Date: [Date]*
*Data Period: [Timeframe of charts analyzed]*
When conducting analysis:
Apply these probability ranges based on evidence strength:
Total probabilities across all scenarios should sum to approximately 100%.
sector_rotation.md - Comprehensive knowledge base covering market cycle phases, typical sector performance patterns, and probability assessment frameworksSample charts demonstrating the expected input format:
sector_performance.jpeg - Example sector-level performance chart (1-week and 1-month)industory_performance_1.jpeg - Example industry performance chart (outperformers)industory_performance_2.jpeg - Example industry performance chart (underperformers)These samples illustrate the type of visual data this skill analyzes. User-provided charts may vary in format but should contain similar relative performance information.
Weekly Installs
50
Repository
GitHub Stars
141
First Seen
Jan 24, 2026
Security Audits
Gen Agent Trust HubPassSocketPassSnykWarn
Installed on
opencode35
claude-code32
cursor30
gemini-cli29
codex28
trae22
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