Requirements
- Target platform
- OpenClaw
- Install method
- Manual import
- Extraction
- Extract archive
- Prerequisites
- OpenClaw
- Primary doc
- SKILL.md
This skill should be used when analyzing sector and industry performance charts to assess market positioning and rotation patterns. Use this skill when the user provides performance chart images (1-week or 1-month timeframes) for sectors or industries and requests market cycle assessment, sector rotation analysis, or strategic positioning recommendations based on performance data. All analysis and output are conducted in English.
This skill should be used when analyzing sector and industry performance charts to assess market positioning and rotation patterns. Use this skill when the user provides performance chart images (1-week or 1-month timeframes) for sectors or industries and requests market cycle assessment, sector rotation analysis, or strategic positioning recommendations based on performance data. All analysis and output are conducted in English.
Hand the extracted package to your coding agent with a concrete install brief instead of figuring it out manually.
I downloaded a skill package from Yavira. Read SKILL.md from the extracted folder and install it by following the included instructions. Tell me what you changed and call out any manual steps you could not complete.
I downloaded an updated skill package from Yavira. Read SKILL.md from the extracted folder, compare it with my current installation, and upgrade it while preserving any custom configuration unless the package docs explicitly say otherwise. Summarize what changed and any follow-up checks I should run.
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: User provides sector performance charts (typically 1-week and 1-month timeframes) User provides industry performance charts showing relative performance data User requests analysis of current market cycle positioning User asks for sector rotation assessment or predictions User needs probability-weighted scenarios for market positioning Example user requests: "Analyze these sector performance charts and tell me where we are in the market cycle" "Based on these performance charts, what sectors should outperform next?" "What's the probability of a defensive rotation based on this data?" "Review these sector and industry charts and provide scenario analysis"
Follow this structured workflow when analyzing sector/industry performance charts:
First, carefully examine all provided chart images to extract: Sector-level performance: Identify which sectors (Technology, Financials, Consumer Discretionary, etc.) are outperforming/underperforming Industry-level performance: Note specific industries showing strength or weakness Timeframe comparison: Compare 1-week vs 1-month performance to identify trend consistency or divergence Magnitude of moves: Assess the size of relative performance differences Breadth of movement: Determine if performance is concentrated or broad-based 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: Read references/sector_rotation.md to access market cycle and sector rotation frameworks Compare observed performance patterns against expected patterns for each cycle phase: Early Cycle Recovery Mid Cycle Expansion Late Cycle Recession Identify which cycle phase best matches current observations by: Mapping outperforming sectors to typical cycle leaders Mapping underperforming sectors to typical cycle laggards Assessing consistency across multiple sectors Evaluating alignment with defensive vs cyclical sector performance
Synthesize observations into an objective assessment: State which market cycle phase current performance most closely resembles Highlight supporting evidence (which sectors/industries confirm this view) Note any contradictory signals or unusual patterns Assess confidence level based on consistency of signals 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: Describe the market cycle transition Identify which sectors would likely outperform Identify which sectors would likely underperform Specify the catalysts or conditions that would confirm this scenario Assign a probability (see Probability Assessment Framework in sector_rotation.md) Scenarios should range from most likely (highest probability) to alternative/contrarian scenarios.
Create a structured Markdown document with the following sections: Required Sections: Executive Summary: 2-3 sentence overview of key findings Current Situation: Detailed analysis of current performance patterns and market cycle positioning Supporting Evidence: Specific sector and industry performance data supporting the cycle assessment Scenario Analysis: 2-4 scenarios with descriptions and probability assignments Recommended Positioning: Strategic and tactical positioning recommendations based on scenario probabilities Key Risks: Notable risks or contradictory signals to monitor
When conducting analysis: Objectivity First: Let the data guide conclusions, not preconceptions Probabilistic Thinking: Express uncertainty through probability ranges Multiple Timeframes: Compare 1-week and 1-month data for trend confirmation Relative Performance: Focus on relative strength, not absolute returns Breadth Matters: Broad-based moves are more significant than isolated movements No Absolutes: Markets rarely follow textbook patterns exactly Historical Context: Reference typical rotation patterns but acknowledge uniqueness
Apply these probability ranges based on evidence strength: 70-85%: Strong evidence with multiple confirming signals across sectors and timeframes 50-70%: Moderate evidence with some confirming signals but mixed indicators 30-50%: Weak evidence with limited or conflicting signals 15-30%: Speculative scenario contrary to current indicators but possible 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 frameworks
Sample 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.
All analysis thinking should be conducted in English Output Markdown files must be in English Reference the sector rotation knowledge base for each analysis Maintain objectivity and avoid confirmation bias Update probability assessments if new data becomes available Charts typically show performance over 1-week and 1-month periods
Data access, storage, extraction, analysis, reporting, and insight generation.
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