skills/ruvnet/claude-flow/neural-training

neural-training

SKILL.md

Neural Training Skill

Purpose

Train and optimize neural patterns using SONA, MoE, and EWC++ systems.

When to Trigger

  • Training new patterns
  • Optimizing agent routing
  • Knowledge consolidation
  • Pattern recognition tasks

Intelligence Pipeline

  1. RETRIEVE — Fetch relevant patterns via HNSW (150x-12,500x faster)
  2. JUDGE — Evaluate with verdicts (success$failure)
  3. DISTILL — Extract key learnings via LoRA
  4. CONSOLIDATE — Prevent catastrophic forgetting via EWC++

Components

Component Purpose Performance
SONA Self-optimizing adaptation <0.05ms
MoE Expert routing 8 experts
HNSW Pattern search 150x-12,500x
EWC++ Prevent forgetting Continuous
Flash Attention Speed 2.49x-7.47x

Commands

Train Patterns

npx claude-flow neural train --model-type moe --epochs 10

Check Status

npx claude-flow neural status

View Patterns

npx claude-flow neural patterns --type all

Predict

npx claude-flow neural predict --input "task description"

Optimize

npx claude-flow neural optimize --target latency

Best Practices

  1. Use pretrain hook for batch learning
  2. Store successful patterns after completion
  3. Consolidate regularly to prevent forgetting
  4. Route based on task complexity
Weekly Installs
24
GitHub Stars
21.2K
First Seen
Feb 8, 2026
Installed on
claude-code22
opencode22
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github-copilot20
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cline19