codex-specialized-subagents
Artifact-first sub-agent delegation for Codex CLI, enabling multi-step parallel work with durable logging via specialized sub-agents.
README
codex-specialized-subagents
Artifact-first sub-agent delegation for Codex CLI (MCP server).
This repo provides a local (stdio) MCP server that exposes:
delegate_autopilot— decide whether to delegate and, if yes, orchestrate one or morecodex execsub-agent runsdelegate_run— run a single specialist sub-agent viacodex execdelegate_resume— resume a prior sub-agent thread viacodex exec resume
Each tool call writes a run directory under ${CODEX_HOME:-$HOME/.codex}/delegator/runs/<run_id>/ containing the prompt, selected skills, event stream, and structured results (artifact-first debugging).
When to use
- You want parallelism and specialization for multi-step / cross-cutting work.
- You want durable artifacts (logs + outputs) to debug and review what happened.
Requirements
- Node.js
>=20(seepackage.json#engines) npmmise(recommended): installs the pinned runtime frommise.tomlcodexCLI on your PATH and authenticated (required for real delegation runs)
Optional:
- Python 3 (only for helper scripts under
.agent/)
Install & quickstart (from source)
From the repo root (installs deps + builds dist/):
# Recommended: install the pinned runtime (see mise.toml)
mise install
# Drift check (lockfiles + pins)
./toolchain-check.sh
# Install deps from lockfile
npm ci
# Build
npm run build
Configure Codex (recommended, prevents timeouts)
Delegated runs can take minutes. Set this server’s MCP tool timeout to 1200 seconds (20 minutes) in your Codex config ($HOME/.codex/config.toml):
mkdir -p "$HOME/.codex"
cat >> "$HOME/.codex/config.toml" <<'EOF'
[mcp_servers.codex-specialized-subagents]
tool_timeout_sec = 1200
EOF
If you already have a [mcp_servers.codex-specialized-subagents] section, edit the existing tool_timeout_sec instead of appending a duplicate.
Common gotcha: tool_timeout_sec is not an env var. If you put it under mcp_servers.codex-specialized-subagents.env.*, Codex will error with “expected a string” (env values must be strings).
If you see a TOML parse error about a “duplicate key” for [mcp_servers.codex-specialized-subagents], you have that table declared twice — keep only one header and put tool_timeout_sec = 1200 inside it.
Register with Codex (recommended defaults)
From the repo root (includes per-job reasoning-effort overrides for delegate_autopilot):
codex mcp add codex-specialized-subagents \
--env CODEX_AUTOPILOT_REASONING_EFFORT_LOW=low \
--env CODEX_AUTOPILOT_REASONING_EFFORT_MEDIUM=medium \
--env CODEX_AUTOPILOT_REASONING_EFFORT_HIGH=high \
-- node "$(pwd)/dist/cli.js"
Verify:
codex mcp get codex-specialized-subagents
Remove:
codex mcp remove codex-specialized-subagents
Usage
Interactive autopilot (recommended)
In Codex interactive mode, delegate_autopilot can split a request into jobs (scan / implement / verify) and run specialist sub-agents.
To make delegation feel automatic in interactive mode, install the included delegation-autopilot skill globally:
mkdir -p "${CODEX_HOME:-$HOME/.codex}/skills/delegation-autopilot"
cp .codex/skills/delegation-autopilot/SKILL.md \
"${CODEX_HOME:-$HOME/.codex}/skills/delegation-autopilot/SKILL.md"
Then try prompts like:
- “Refactor the MCP server and update tests + README.”
- “Audit the repo docs and propose improvements.”
Optional: delegate_autopilot assigns each job a thinking_level (low | medium | high). You can set CODEX_AUTOPILOT_REASONING_EFFORT_LOW|MEDIUM|HIGH on the MCP server process to override Codex model_reasoning_effort per job (see docs/usage.md). (Legacy/advanced: CODEX_AUTOPILOT_MODEL_LOW|MEDIUM|HIGH overrides model name.)
Manual tool calls
If you prefer explicit tool usage, tell Codex to call one of:
delegate_autopilot(multi-agent orchestration)delegate_run(single sub-agent run)delegate_resume(resume a prior sub-agent thread)
Optional (advanced): for delegate_run / delegate_resume, you can pass reasoning_effort (maps to codex exec -c model_reasoning_effort="...") or raw config_overrides (maps to codex exec -c <override>). If you want a default for manual runs, set CODEX_DELEGATE_REASONING_EFFORT on the MCP server process (only applies when reasoning_effort is omitted and config_overrides does not already set model_reasoning_effort).
Skills
Sub-agent runs can load Codex skills from:
- repo-local
.codex/skills(nearest ancestor of the delegatedcwd) - global
${CODEX_HOME:-$HOME/.codex}/skills
Note: this repo’s delegation-autopilot skill is marked delegator_exclude: true (parent-only) to prevent delegation recursion.
Artifacts (run directories)
Each tool call writes a run directory under ${CODEX_HOME:-$HOME/.codex}/delegator/runs/<run_id>/.
Documentation
Start with docs/README.md (index), then:
docs/usage.md— how to use the tools effectivelydocs/troubleshooting.md— common failure modes (timeouts, missingcodex, etc.)docs/development.md— local development and test matrixdocs/reference/tools.md— full tool schemas (inputs/outputs)docs/reference/run-directories.md— run directory layout and artifact meaning
Development
npm test
npm run lint
npm run dev
Integration tests (requires Codex CLI + auth):
RUN_CODEX_INTEGRATION_TESTS=1 npm test
Contributing: CONTRIBUTING.md.
Security
- Don’t commit secrets (
.envis gitignored; use.env.exampleas a template). - Run directories can contain sensitive prompts/output; treat
${CODEX_HOME:-$HOME/.codex}/delegator/runsas sensitive.
Reporting: SECURITY.md.
License
MIT
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