Cryptocurrency Trading Agent Skill
Purpose
Provide production-grade cryptocurrency trading analysis with mathematical rigor, multi-layer validation, and comprehensive risk assessment. Designed for real-world trading application with zero-hallucination tolerance through 6-stage validation pipeline.
When to Use This Skill
Use this skill when users request: - Analysis of specific cryptocurrency trading pairs (e.g., BTC/USDT, ETH/USDT) - Market scanning to find best trading opportunities - Comprehensive risk assessment with probabilistic modeling - Trading signals with advanced pattern recognition - Professional risk metrics (VaR, CVaR, Sharpe, Sortino) - Monte Carlo simulations for scenario analysis - Bayesian probability calculations for signal confidence
Core Capabilities
Validation & Accuracy
- 6-stage validation pipeline with zero-hallucination tolerance
- Statistical anomaly detection (Z-score, IQR, Benford's Law)
- Cross-verification across multiple timeframes
- 14 circuit breakers to prevent invalid signals
Analysis Methods
- Bayesian inference for probability calculations
- Monte Carlo simulations (10,000 scenarios)
- GARCH volatility forecasting
- Advanced chart pattern recognition
- Multi-timeframe consensus (15m, 1h, 4h)
Risk Management
- Value at Risk (VaR) and Conditional VaR (CVaR)
- Risk-adjusted metrics (Sharpe, Sortino, Calmar)
- Kelly Criterion position sizing
- Automated stop-loss and take-profit calculation
Detailed capabilities: See references/advanced-capabilities.md
Prerequisites
Ensure the following before using this skill:
1. Python 3.8+ environment available
2. Internet connection for real-time market data
3. Required packages installed: pip install -r requirements.txt
4. User's account balance known for position sizing
How to Use This Skill
Quick Start Commands
Analyze a specific cryptocurrency:
bash
python skill.py analyze BTC/USDT --balance 10000
Scan market for best opportunities:
bash
python skill.py scan --top 5 --balance 10000
Interactive mode for exploration:
bash
python skill.py interactive --balance 10000
Default Parameters
- Balance: If not specified by user, use
--balance 10000 - Timeframes: 15m, 1h, 4h (automatically analyzed)
- Risk per trade: 2% of balance (enforced by default)
- Minimum risk/reward: 1.5:1 (validated by circuit breakers)
Common Trading Pairs
Major: BTC/USDT, ETH/USDT, BNB/USDT, SOL/USDT, XRP/USDT AI Tokens: RENDER/USDT, FET/USDT, AGIX/USDT Layer 1: ADA/USDT, AVAX/USDT, DOT/USDT Layer 2: MATIC/USDT, ARB/USDT, OP/USDT DeFi: UNI/USDT, AAVE/USDT, LINK/USDT Meme: DOGE/USDT, SHIB/USDT, PEPE/USDT
Workflow
Gather Information
- Ask user for trading pair (if analyzing specific symbol)
- Ask for account balance (or use default $10,000)
- Confirm user wants production-grade analysis
Execute Analysis
- Run appropriate command (analyze, scan, or interactive)
- Wait for comprehensive analysis to complete
- System automatically validates through 6 stages
Present Results
- Display trading signal (LONG/SHORT/NO_TRADE)
- Show confidence level and execution readiness
- Explain entry, stop-loss, and take-profit prices
- Present risk metrics and position sizing
- Highlight validation status (6/6 passed = execution ready)
Interpret Output
- Reference
references/output-interpretation.mdfor detailed guidance - Translate technical metrics into user-friendly language
- Explain risk/reward in simple terms
- Always include risk warnings
- Reference
Handle Edge Cases
- If execution_ready = NO: Explain validation failures
- If confidence <40%: Recommend waiting for better opportunity
- If circuit breakers triggered: Explain specific issue
- If network errors: Suggest retry with exponential backoff
Output Structure
Trading Signal: - Action: LONG/SHORT/NO_TRADE - Confidence: 0-95% (integer only, no false precision) - Entry Price: Recommended entry point - Stop Loss: Risk management exit (always required) - Take Profit: Profit target - Risk/Reward: Minimum 1.5:1 ratio
Probabilistic Analysis: - Bayesian probabilities (bullish/bearish) - Monte Carlo profit probability - Signal strength (WEAK/MODERATE/STRONG) - Pattern bias confirmation
Risk Assessment: - VaR and CVaR (Value at Risk metrics) - Sharpe/Sortino/Calmar ratios - Max drawdown and win rate - Profit factor
Position Sizing: - Standard (2% risk rule) - recommended - Kelly Conservative - mathematically optimal - Kelly Aggressive - higher risk/reward - Trading fees estimate
Validation Status: - Stages passed (must be 6/6 for execution ready) - Circuit breakers triggered (if any) - Warnings and critical failures
Detailed interpretation: See references/output-interpretation.md
Presenting Results to Users
Language Guidelines
Use beginner-friendly explanations: - "LONG" → "Buy now, sell higher later" - "SHORT" → "Sell now, buy back cheaper later" - "Stop Loss" → "Automatic exit to limit loss if wrong" - "Confidence %" → "How certain we are (higher = better)" - "Risk/Reward" → "For every $1 risked, potential $X profit"
Required Risk Warnings
ALWAYS include these reminders: - Markets are unpredictable - perfect analysis can still be wrong - Start with small amounts to learn - Never risk more than 2% per trade (enforced automatically) - Always use stop losses - This is analysis, NOT financial advice - Past performance does NOT guarantee future results - User is solely responsible for all trading decisions
When NOT to Trade
Advise users to avoid trading when: - Validation status <6/6 passed - Execution Ready flag = NO - Confidence <60% for moderate signals, <70% for strong - User doesn't understand the analysis - User can't afford potential loss - High emotional stress or fatigue
Advanced Usage
Programmatic Integration
For custom workflows, import directly: ```python from scripts.trading_agent_refactored import TradingAgent
agent = TradingAgent(balance=10000) analysis = agent.comprehensive_analysis('BTC/USDT') print(analysis['final_recommendation']) ```
See example_usage.py for 5 comprehensive examples.
Configuration
Customize behavior via config.yaml:
- Validation strictness (strict vs normal mode)
- Risk parameters (max risk, position limits)
- Circuit breaker thresholds
- Timeframe preferences
Testing
Verify installation and functionality: ```bash
Run compatibility test
./test_claude_code_compat.sh
Run comprehensive tests
python -m pytest tests/ ```
Reference Documentation
references/advanced-capabilities.md- Detailed technical capabilitiesreferences/output-interpretation.md- Comprehensive output guidereferences/optimization.md- Trading optimization strategiesreferences/protocol.md- Usage protocols and best practicesreferences/psychology.md- Trading psychology principlesreferences/user-guide.md- End-user documentationreferences/technical-docs/- Implementation details and bug reports
Architecture
Core Modules:
- scripts/trading_agent_refactored.py - Main trading agent (production)
- scripts/advanced_validation.py - Multi-layer validation system
- scripts/advanced_analytics.py - Probabilistic modeling engine
- scripts/pattern_recognition_refactored.py - Chart pattern recognition
- scripts/indicators/ - Technical indicator calculations
- scripts/market/ - Data provider and market scanner
- scripts/risk/ - Position sizing and risk management
- scripts/signals/ - Signal generation and recommendation
Entry Points:
- skill.py - Command-line interface (recommended)
- __main__.py - Python module invocation
- example_usage.py - Programmatic usage examples
Version
v2.0.1 - Production Hardened Edition
Recent improvements: - Fixed critical bugs (division by zero, import paths, NaN handling) - Enhanced network retry logic with exponential backoff - Improved logging infrastructure - Comprehensive input validation - UTC timezone consistency - Benford's Law threshold optimization
Status: 🟢 PRODUCTION READY
See references/technical-docs/FIXES_APPLIED.md for complete changelog.
Troubleshooting
Installation issues:
bash
pip install --upgrade pip
pip install -r requirements.txt
Import errors:
Ensure running from skill directory or using skill.py entry point.
Network failures: System automatically retries with exponential backoff (3 attempts).
Validation failures: Check validation report in output - explains which stage failed and why.
For detailed debugging:
Enable logging in config.yaml or check references/technical-docs/BUG_ANALYSIS_REPORT.md