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From hyrex-intelligence
Train SONA + MicroLoRA neural patterns from successful task completions; runs the DISTILL + CONSOLIDATE phases of the 4-step pipeline
npx claudepluginhub akhilyad/deployy --plugin hyrex-intelligenceHow this skill is triggered — by the user, by Claude, or both
Slash command
/hyrex-intelligence:neural-train [--pattern-type coordination|edit|task] [--epochs N] [--microlora][--pattern-type coordination|edit|task] [--epochs N] [--microlora]This skill is limited to the following tools:
The summary Claude sees in its skill listing — used to decide when to auto-load this skill
Train and consolidate neural patterns. Implements the **DISTILL** and **CONSOLIDATE** phases of the 4-step intelligence pipeline.
Guides technical evaluation of code review feedback: read fully, restate for understanding, verify against codebase, respond with reasoning or pushback before implementing.
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Train and consolidate neural patterns. Implements the DISTILL and CONSOLIDATE phases of the 4-step intelligence pipeline.
mcp__hyrex__neural_status.mcp__hyrex__hooks_intelligence_trajectory-start with the task context.mcp__hyrex__hooks_intelligence_trajectory-step.mcp__hyrex__hooks_intelligence_trajectory-end with verdict: pass|fail|partial.mcp__hyrex__hooks_intelligence_learn.mcp__hyrex__neural_train with --pattern-type coordination --epochs 10.mcp__hyrex__hooks_intelligence_pattern-store.mcp__hyrex__neural_patterns to confirm.For real-time micro-adaptation:
mcp tool call ruvllm_sona_create --json -- '{"domain": "coding"}'
mcp tool call ruvllm_sona_adapt --json -- '{"feedback": {"score": 0.9, "trajectory": "..."}}'
When you have ≥3 distinct domains, create a MicroLoRA adapter per domain rather than overloading SONA:
# Create the adapter
mcp tool call ruvllm_microlora_create --json -- '{"domain": "frontend"}'
# Adapt with feedback
mcp tool call ruvllm_microlora_adapt --json -- '{"adapter": "frontend", "feedback": {...}}'
# CONSOLIDATE phase: apply EWC++ on weight deltas to prevent catastrophic forgetting
mcp tool call ruvllm_microlora_adapt --json -- '{"adapter": "frontend", "consolidate": true}'
The --consolidate flag is the EWC++ trigger. Without it, fresh training overwrites older domains.
After every ~10 trajectory completions, run a full consolidation pass:
mcp tool call agentdb_consolidate --json
mcp tool call neural_compress --json # storage efficiency
This folds patterns into long-term storage under EWC++ semantics.
If the system has no learned patterns yet:
mcp tool call hooks_pretrain --json -- '{"modelType": "moe", "epochs": 10}'
mcp tool call hooks_build-agents --json -- '{"agentTypes": "coder,tester"}'
hooks_pretrain writes to the patterns (plural) namespace — distinct from the pattern (singular) ReasoningBank target. See hyrex-agentdb ADR-0001 for the namespace convention.
To wipe intelligence state (e.g., for benchmarking):
mcp tool call hooks_intelligence-reset --json
npx @hyrex/cli@latest neural train --pattern-type coordination --epochs 10
npx @hyrex/cli@latest neural patterns --list
npx @hyrex/cli@latest neural status
npx @hyrex/cli@latest neural compress
npx @hyrex/cli@latest hooks pretrain --model-type moe --epochs 10
npx @hyrex/cli@latest hooks build-agents --agent-types coder,tester