stanley-druckenmiller-investment

Druckenmiller Strategy Synthesizer - Integrates 8 upstream skill outputs (Market Breadth, Uptrend Analysis, Market Top, Macro Regime, FTD Detector, VCP Screener, Theme Detector, CANSLIM Screener) into a unified conviction score (0-100), pattern classification, and allocation recommendation. Use when user asks about overall market conviction, portfolio positioning, asset allocation, strategy synthesis, or Druckenmiller-style analysis. Triggers on queries like "What is my conviction level?", "How should I position?", "Run the strategy synthesizer", "Druckenmiller analysis", "総合的な市場判断", "確信度スコア", "ポートフォリオ配分", "ドラッケンミラー分析".

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Install skill "stanley-druckenmiller-investment" with this command: npx skills add tradermonty/claude-trading-skills/tradermonty-claude-trading-skills-stanley-druckenmiller-investment

Druckenmiller Strategy Synthesizer

Purpose

Synthesize outputs from 8 upstream analysis skills (5 required + 3 optional) into a single composite conviction score (0-100), classify the market into one of 4 Druckenmiller patterns, and generate actionable allocation recommendations. This is a meta-skill that consumes structured JSON outputs from other skills — it requires no API keys of its own.

When to Use This Skill

English:

  • User asks "What's my overall conviction?" or "How should I be positioned?"
  • User wants a unified view synthesizing breadth, uptrend, top risk, macro, and FTD signals
  • User asks about Druckenmiller-style portfolio positioning
  • User requests strategy synthesis after running individual analysis skills
  • User asks "Should I increase or decrease exposure?"
  • User wants pattern classification (policy pivot, distortion, contrarian, wait)

Japanese:

  • 「総合的な市場判断は?」「今のポジショニングは?」
  • ブレッドス、アップトレンド、天井リスク、マクロの統合判断
  • 「エクスポージャーを増やすべき?減らすべき?」
  • 「ドラッケンミラー分析を実行して」
  • 個別スキル実行後の戦略統合レポート

Input Requirements

Required Skills (5)

#SkillJSON PrefixRole
1Market Breadth Analyzermarket_breadth_Market participation breadth
2Uptrend Analyzeruptrend_analysis_Sector uptrend ratios
3Market Top Detectormarket_top_Distribution / top risk (defense)
4Macro Regime Detectormacro_regime_Macro regime transition (1-2Y structure)
5FTD Detectorftd_detector_Bottom confirmation / re-entry (offense)

Optional Skills (3)

#SkillJSON PrefixRole
6VCP Screenervcp_screener_Momentum stock setups (VCP)
7Theme Detectortheme_detector_Theme / sector momentum
8CANSLIM Screenercanslim_screener_Growth stock setups + M(Market Direction)

Run the required skills first. The synthesizer reads their JSON output from reports/.


Execution Workflow

Phase 1: Verify Prerequisites

Check that the 5 required skill JSON reports exist in reports/ and are recent (< 72 hours). If any are missing, run the corresponding skill first.

Phase 2: Execute Strategy Synthesizer

python3 skills/stanley-druckenmiller-investment/scripts/strategy_synthesizer.py \
  --reports-dir reports/ \
  --output-dir reports/ \
  --max-age 72

The script will:

  1. Load and validate all upstream skill JSON reports
  2. Extract normalized signals from each skill
  3. Calculate 7 component scores (weighted 0-100)
  4. Compute composite conviction score
  5. Classify into one of 4 Druckenmiller patterns
  6. Generate target allocation and position sizing
  7. Output JSON and Markdown reports

Phase 3: Present Results

Present the generated Markdown report, highlighting:

  • Conviction score and zone
  • Detected pattern and match strength
  • Strongest and weakest components
  • Target allocation (equity/bonds/alternatives/cash)
  • Position sizing parameters
  • Relevant Druckenmiller principle

Phase 4: Provide Druckenmiller Context

Load appropriate reference documents to provide philosophical context:

  • High conviction: Emphasize concentration and "fat pitch" principles
  • Low conviction: Emphasize capital preservation and patience
  • Pattern-specific: Apply relevant case study from references/case-studies.md

7-Component Scoring System

#ComponentWeightSource Skill(s)Key Signal
1Market Structure18%Breadth + UptrendMarket participation health
2Distribution Risk18%Market Top (inverted)Institutional selling risk
3Bottom Confirmation12%FTD DetectorRe-entry signal after correction
4Macro Alignment18%Macro RegimeRegime favorability
5Theme Quality12%Theme DetectorSector momentum health
6Setup Availability10%VCP + CANSLIMQuality stock setups
7Signal Convergence12%All 5 requiredCross-skill agreement

4 Pattern Classifications

PatternTrigger ConditionsDruckenmiller Principle
Policy Pivot AnticipationTransitional regime + high transition probability"Focus on central banks and liquidity"
Unsustainable DistortionTop risk >= 60 + contraction/inflationary regime"How much you lose when wrong matters most"
Extreme Sentiment ContrarianFTD confirmed + high top risk + bearish breadth"Most money made in bear markets"
Wait & ObserveLow conviction + mixed signals (default)"When you don't see it, don't swing"

Conviction Zone Mapping

ScoreZoneExposureGuidance
80-100Maximum Conviction90-100%Fat pitch - swing hard
60-79High Conviction70-90%Standard risk management
40-59Moderate Conviction50-70%Reduce position sizes
20-39Low Conviction20-50%Preserve capital, minimal risk
0-19Capital Preservation0-20%Maximum defense

Output Files

  • druckenmiller_strategy_YYYY-MM-DD_HHMMSS.json — Structured analysis data
  • druckenmiller_strategy_YYYY-MM-DD_HHMMSS.md — Human-readable report

API Requirements

None. This skill reads JSON outputs from other skills. No API keys required.

Reference Documents

references/investment-philosophy.md

  • Core Druckenmiller principles: concentration, capital preservation, 18-month horizon
  • Quantitative rules: daily vol targets, max position sizing
  • Load when providing philosophical context for conviction assessment

references/market-analysis-guide.md

  • Signal-to-action mapping framework
  • Macro regime interpretation for allocation decisions
  • Load when explaining component scores or allocation rationale

references/case-studies.md

  • Historical examples: 1992 GBP, 2000 tech bubble, 2008 crisis
  • Pattern classification examples with actual market conditions
  • Load when user asks about historical parallels

references/conviction_matrix.md

  • Quantitative signal-to-action mapping tables
  • Market Top Zone x Macro Regime matrix
  • Load when user needs precise exposure numbers for specific signal combinations

When to Load References

  • First use: Load investment-philosophy.md for framework understanding
  • Allocation questions: Load market-analysis-guide.md + conviction_matrix.md
  • Historical context: Load case-studies.md
  • Regular execution: References not needed — script handles scoring

Relationship to Other Skills

SkillRelationshipTime Horizon
Market Breadth AnalyzerInput (required)Current snapshot
Uptrend AnalyzerInput (required)Current snapshot
Market Top DetectorInput (required)2-8 weeks tactical
Macro Regime DetectorInput (required)1-2 years structural
FTD DetectorInput (required)Days-weeks event
VCP ScreenerInput (optional)Setup-specific
Theme DetectorInput (optional)Weeks-months thematic
CANSLIM ScreenerInput (optional)Setup-specific
This SkillSynthesizerUnified conviction

Source Transparency

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