e9224712292aabd598e163398556045879806412
In CI's clean checkout the tree-walk for ~/dev/.context/AGENT.md
finds nothing, leaving ROOT_CONTEXT empty. The script previously
proceeded to regenerate AGENTS.md, .cursorrules,
.aider.conventions.md, and .context/system-prompt.txt as
project-only — but the committed versions are root+project, so
the drift gate added in cc401d9 fails CI on every push.
When no root context is reachable, only regenerate CLAUDE.md
(which is project-only by design — Claude Code walks up the tree
itself to find the root). The root-bearing adapters are left
untouched, eliminating the false-positive drift.
Local runs (with root context reachable) are unchanged.
Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
hyperguild
An MCP server that acts as a disciplined AI supervisor for Claude Code sessions. Instead of letting Claude Code do whatever it wants, hyperguild enforces structured workflows (TDD red/green/refactor), logs every session, and accumulates learnings into a searchable brain.
How it works
Your Claude Code session (in any project)
│
│ MCP over HTTP (Tailscale)
▼
supervisor :3200 (NodePort 30320 on koala) — skill workers: tdd, retrospective
ingestion :3300 — brain HTTP API: query wiki, write notes
│
▼
brain/
├── sessions/ — JSONL log, one file per session_id
├── wiki/ — searchable knowledge (full-text)
│ ├── concepts/
│ ├── entities/
│ └── sources/
├── raw/ — retrospective output, staged for review
└── training-data/ — SFT/DPO/RL data (Phase 2)
Phase 1 tools (available now)
| Tool | What it does |
|---|---|
tdd_red |
Writes a failing test for a spec, verifies it fails |
tdd_green |
Writes the minimal implementation to make tests pass |
tdd_refactor |
Cleans up implementation while keeping tests green |
session_log |
Appends a structured entry to the session JSONL log |
retrospective |
Reads the session log, identifies novel learnings, writes to brain/raw/ |
brain_query |
Full-text search over brain/wiki/ |
brain_write |
Writes a note to brain/raw/ (with optional YAML frontmatter) |
tier |
Returns the current connectivity tier (1=cloud, 2=LAN, 3=offline) |
Start the servers
# Requires goreman: go install github.com/mattn/goreman@latest
task start # starts ingestion (:3300) + supervisor (:3200) via goreman
task stop # kills both by port
Connect a project
Create .mcp.json in your project root:
{
"mcpServers": {
"supervisor": {
"type": "http",
"url": "http://koala:30320/mcp"
}
}
}
The supervisor MCP server is reachable over Tailscale at koala:30320 (NodePort
to the in-cluster service on port 3200). No local binary or stdio shim is
required — Claude Code talks to it directly via HTTP.
Open Claude Code in your project — run /mcp to confirm supervisor is listed.
A typical TDD session
1. Call tdd_red → spec in, failing test file out
2. Call tdd_green → test path in, implementation out
3. Call tdd_refactor → impl + test in, cleaned code out
4. Call session_log → log each phase result
5. Call retrospective → extracts learnings → brain/raw/
6. Review brain/raw/, move worthy notes to brain/wiki/concepts/
7. Future sessions: call brain_query to retrieve relevant context
Tier detection
The supervisor probes connectivity at call time:
| Tier | Label | Condition |
|---|---|---|
| 1 | full-online | Can reach api.anthropic.com |
| 2 | lan-only | Can reach LiteLLM but not Anthropic |
| 3 | airplane | No external connectivity |
Key env vars
| Variable | Default | Purpose |
|---|---|---|
INGEST_BRAIN_DIR |
../brain |
Brain directory for ingestion server |
INGEST_PORT |
3300 |
Ingestion server port |
SUPERVISOR_CONFIG_DIR |
./config/supervisor |
Skill discipline files |
SUPERVISOR_SESSIONS_DIR |
./brain/sessions |
JSONL session logs |
INGEST_BASE_URL |
http://localhost:3300 |
Supervisor → ingestion |
LITELLM_BASE_URL |
— | LiteLLM proxy for Tier 2 model routing |
Phase 2 (planned)
reviewskill — structured code review with iron law enforcementdebugskill — hypothesis-driven debugging sessionsspecskill — generates specs from conversationstrainer— extracts SFT/DPO pairs from session logs for fine-tuning
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