| name | looper |
| description | Scaffold a well-designed agent loop with best-practice coaching and a cross-model review council. Use when the user wants to design, build, or set up an agent loop, iterative agent workflow, self-review loop, LLM-as-judge loop, multi-model council, reviewer/judge gate, or /goal-style looping process. Guide goal refinement, typed verification criteria, reviewer and judge selection, privacy boundaries, termination guards, no-progress stops, and lightweight observability, then emit a RUN_IN_SESSION.md handoff prompt plus portable loop.yaml, loop.resolved.json, LOOP.md, and run-loop.py.
|
| disable-model-invocation | true |
| argument-hint | [target-dir] |
| allowed-tools | Write Bash |
Looper
Use Looper as a loop design coach and scaffolder. During design, interview,
critique, validate, and write files. After emission, offer to run the loop in
the current session using RUN_IN_SESSION.md; keep run-loop.py as the
advanced external runner.
Workflow
- Resolve the target path from the
/looper argument. If no target is given,
use ./looper-output. If the target contains an existing loop.yaml, treat
the task as an edit/resume instead of a fresh scaffold.
- Load the relevant rubric only when entering that stage:
- Goal stage:
references/goal-rubric.md.
- Verification stage:
references/verification-rubric.md.
- Council stage:
references/council-rubric.md.
- Control stage:
references/control-rubric.md.
- Model detection or privacy details:
references/model-detection.md.
- Interview in seven stages: goal, verification, host model, council,
gates/control, confirmation flow preview, emit/run option. In the control
stage, cover execution boundary, isolation, no-progress signals, state, and
run logging.
- Critique each stage before accepting it. Prefer concrete alternatives over
vague warnings. Push weak goals toward outcome, scope, context, and done
state. Push weak verification toward programmatic checks first, then judge
rubrics, then human signoff.
- Keep reviewer and judge roles distinct. A reviewer writes notes. A judge
returns a structured verdict.
revise_until_clean must name a judge member
or human as verdict_source.
- Require multiple termination guards:
max_iterations, a revision cap on
each gate, a no-progress stop, and either a budget cap or an explicit human
stop point.
- Before any cross-vendor council member is selected, state what context will
leave the user's machine, which CLI receives it, which redaction globs apply,
and that both execution paths require first-send consent.
- Show an ASCII flow preview of the planned loop and ask for confirmation
before final emission. Optimize for Claude Code CLI readability.
- Emit these files into the target:
loop.yaml
loop.resolved.json
LOOP.md
RUN_IN_SESSION.md
run-loop.py
loop-workspace/
README.md
- After writing
loop.yaml, run:
LOOPER_PYTHON="${CLAUDE_SKILL_DIR}/.venv/bin/python"; [ -x "$LOOPER_PYTHON" ] || LOOPER_PYTHON=python3; "$LOOPER_PYTHON" ${CLAUDE_SKILL_DIR}/scripts/looper.py compile <target>/loop.yaml --out <target>/loop.resolved.json --render <target>/LOOP.md --session-prompt <target>/RUN_IN_SESSION.md
If python3 is not available, try python.
- Ask whether the user wants to run the loop now in this session. If yes,
follow
RUN_IN_SESSION.md directly as the active task. If no, explain that
the same file is the easy restart path and run-loop.py is available for
advanced external execution.
File Rules
- Write argv arrays, never shell command strings, for all model and check
invocations.
- Do not write API keys, access tokens, passwords, or CLI auth material into
loop.yaml, loop.resolved.json, or model registries.
- Default redaction globs are
.env, .env.*, secrets/**, and **/*.key.
- Keep
loop.yaml human-readable and commented where useful. The emitted
runner reads only loop.resolved.json.
- Keep
RUN_IN_SESSION.md as the default/easy execution handoff. It is meant
for the current LLM session or a future pasted prompt.
- Copy
templates/run-loop.py exactly unless the user explicitly asks to edit
the external runner contract.
Helper Scripts
- Detect model CLIs:
LOOPER_PYTHON="${CLAUDE_SKILL_DIR}/.venv/bin/python"; [ -x "$LOOPER_PYTHON" ] || LOOPER_PYTHON=python3; "$LOOPER_PYTHON" ${CLAUDE_SKILL_DIR}/scripts/looper.py detect-models --write
- Register a custom CLI:
LOOPER_PYTHON="${CLAUDE_SKILL_DIR}/.venv/bin/python"; [ -x "$LOOPER_PYTHON" ] || LOOPER_PYTHON=python3; "$LOOPER_PYTHON" ${CLAUDE_SKILL_DIR}/scripts/looper.py register-model <id> --invoke <cmd> [args...]
- Compile and render:
LOOPER_PYTHON="${CLAUDE_SKILL_DIR}/.venv/bin/python"; [ -x "$LOOPER_PYTHON" ] || LOOPER_PYTHON=python3; "$LOOPER_PYTHON" ${CLAUDE_SKILL_DIR}/scripts/looper.py compile <target>/loop.yaml --out <target>/loop.resolved.json --render <target>/LOOP.md --session-prompt <target>/RUN_IN_SESSION.md
- Render only the in-session handoff:
LOOPER_PYTHON="${CLAUDE_SKILL_DIR}/.venv/bin/python"; [ -x "$LOOPER_PYTHON" ] || LOOPER_PYTHON=python3; "$LOOPER_PYTHON" ${CLAUDE_SKILL_DIR}/scripts/looper.py session-prompt <target>/loop.resolved.json --out <target>/RUN_IN_SESSION.md
Confirmation Flow Preview
Use this shape and customize labels:
+--------------------------------+
| 1. Goal + context |
| read sources |
+--------------------------------+
|
v
+--------------------------------+
| 2. Draft plan.md |
| state -> state.json |
+--------------------------------+
|
v
+--------------------------------+
| 3. Plan gate |
| verdict: reviewer-1 |
+--------------------------------+
| needs work -> revise <= 3 -> step 2
| pass
v
+--------------------------------+
| 4. Write delivery-N.md |
| log -> run-log.md |
+--------------------------------+
|
v
+--------------------------------+
| 5. Delivery gate |
| verdict: reviewer-1 |
+--------------------------------+
| needs work -> revise <= 3 -> step 4
| pass
v
+--------------------------------+
| 6. Final output |
| all gates clean |
+--------------------------------+
Stops: pass gates | max 12 iterations | no progress x2 | budget 30m, $5.0
Emit Checklist
- The goal has a clear outcome, scope boundary, context sources, and done state.
- Verification criteria are typed as
programmatic, judge, or human.
- At least one criterion is not purely vibe-based unless the user explicitly
accepts that risk.
- Each
revise_until_clean gate has a valid verdict_source.
- Every external invocation is an argv array with a timeout.
- Cross-vendor egress is scoped, redacted, and consent-gated.
loop_control has iteration, revision, no-progress, and wall-clock or budget
caps.
- Execution boundary and isolation are explicit, even when the choice is the
current workspace.
- Observability names a
run-log.md and state.json path.
loop.resolved.json, LOOP.md, and RUN_IN_SESSION.md compile
successfully before handoff.