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wifi-densepose/vendor/ruvector/.claude/commands/training/neural-patterns.md

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Neural Pattern Training

Purpose

Continuously improve coordination through neural network learning.

How Training Works

1. Automatic Learning

Every successful operation trains the neural networks:

  • Edit patterns for different file types
  • Search strategies that find results faster
  • Task decomposition approaches
  • Agent coordination patterns

2. Manual Training

Tool: mcp__claude-flow__neural_train
Parameters: {
  "pattern_type": "coordination",
  "training_data": "successful task patterns",
  "epochs": 50
}

3. Pattern Types

Cognitive Patterns:

  • Convergent: Focused problem-solving
  • Divergent: Creative exploration
  • Lateral: Alternative approaches
  • Systems: Holistic thinking
  • Critical: Analytical evaluation
  • Abstract: High-level design

4. Improvement Tracking

Tool: mcp__claude-flow__neural_status
Result: {
  "patterns": {
    "convergent": 0.92,
    "divergent": 0.87,
    "lateral": 0.85
  },
  "improvement": "5.3% since last session",
  "confidence": 0.89
}

Pattern Analysis

Tool: mcp__claude-flow__neural_patterns
Parameters: {
  "action": "analyze",
  "operation": "recent_edits"
}

Benefits

  • 🧠 Learns your coding style
  • 📈 Improves with each use
  • 🎯 Better task predictions
  • Faster coordination

CLI Usage

# Train neural patterns via CLI
npx claude-flow neural train --type coordination --epochs 50

# Check neural status
npx claude-flow neural status

# Analyze patterns
npx claude-flow neural patterns --analyze