2.1 KiB
2.1 KiB
neural-train
Train neural patterns with SONA (Self-Optimizing Neural Architecture) for adaptive learning and pattern recognition.
Usage
npx claude-flow neural train [options]
Options
-p, --pattern <type>- Pattern type: coordination, optimization, prediction (default: coordination)-e, --epochs <n>- Number of training epochs (default: 50)-d, --data <file>- Training data file (JSON)-m, --model <id>- Model ID to train-l, --learning-rate <rate>- Learning rate (default: 0.001)-b, --batch-size <n>- Batch size (default: 32)
Pattern Persistence
Trained patterns are automatically persisted to disk:
- Location:
.claude-flow/neural/patterns.json - Stats:
.claude-flow/neural/stats.json
Patterns survive process restarts and are loaded automatically on next session.
Examples
# Train coordination patterns (50 epochs)
npx claude-flow neural train -p coordination -e 50
# Train with custom learning rate
npx claude-flow neural train -p optimization -l 0.005
# Train from file
npx claude-flow neural train -d ./training-data.json
# Quick training (10 epochs)
npx claude-flow neural train -e 10
Output
Training produces:
- Patterns Recorded: Number of patterns stored in ReasoningBank
- Trajectories: Complete learning sequences recorded
- SONA Adaptation: Target is <0.05ms per operation
- Persistence Path: Where patterns are saved
List Trained Patterns
# List all persisted patterns
npx claude-flow neural patterns --action list
# Search patterns by query
npx claude-flow neural patterns --action list -q "error handling"
# Analyze patterns
npx claude-flow neural patterns --action analyze -q "coordination"
Performance Targets
| Metric | Target |
|---|---|
| SONA Adaptation | <0.05ms (achieved: ~2μs) |
| Pattern Search | O(log n) with HNSW |
| Memory Efficient | Circular buffers |
Related Commands
neural patterns- List and search patternsneural status- Check neural system statusneural predict- Make predictions using trained models