name: "auto-review-loop" description: "Autonomous multi-round research review loop. Repeatedly reviews using a secondary Codex agent, implements fixes, and re-reviews until positive assessment or max rounds reached. Use when user says "auto review loop", "review until it passes", or wants autonomous iterative improvement."
Auto Review Loop: Autonomous Research Improvement
Autonomously iterate: review → implement fixes → re-review, until the external reviewer gives a positive assessment or MAX_ROUNDS is reached.
Context: $ARGUMENTS
Constants
- MAX_ROUNDS = 4
- POSITIVE_THRESHOLD: score >= 6/10, or verdict contains "accept", "sufficient", "ready for submission"
- REVIEW_DOC:
review-stage/AUTO_REVIEW.md(cumulative log) (fall back to./AUTO_REVIEW.mdfor legacy projects) - OUTPUT_DIR =
review-stage/— All review-stage outputs go here. Create the directory if it doesn't exist. - REVIEWER_MODEL =
gpt-5.4— Model used via a secondary Codex agent. Must be an OpenAI model (e.g.,gpt-5.4,o3,gpt-4o) - REVIEWER_BACKEND =
codex— Default: Codex reviewer agent at xhigh reasoning. Override with--reviewer: oracle-proonly when the user explicitly requests Oracle; if Oracle is unavailable, warn and fall back to Codex xhigh. - HUMAN_CHECKPOINT = false — When
true, pause after each round's review (Phase B) and present the score + weaknesses to the user. Wait for user input before proceeding to Phase C. The user can: approve the suggested fixes, provide custom modification instructions, skip specific fixes, or stop the loop early. Whenfalse(default), the loop runs fully autonomously. - COMPACT = false — When
true, (1) readEXPERIMENT_LOG.mdandfindings.mdinstead of parsing full logs on session recovery, (2) append key findings tofindings.mdafter each round. - REVIEWER_DIFFICULTY = medium — Controls adversarial depth:
mediumuses normal Codex xhigh review throughspawn_agent/send_input;hardadds Reviewer Memory and Debate Protocol;nightmareadds direct repository-reading adversarial verification by an independent reviewer.
💡 Override:
/auto-review-loop "topic" — compact: true, human checkpoint: true, difficulty: hard
Claude-Aligned Reviewer Memory and Debate
For difficulty: hard and difficulty: nightmare, maintain review-stage/REVIEWER_MEMORY.md.
- Before each reviewer call, prepend the full
REVIEWER_MEMORY.mdcontents under## Your Reviewer Memory (persistent across rounds). - Tell the reviewer to check whether prior suspicions were genuinely addressed or merely sidestepped.
- Require a
Memory updatesection in the reviewer response. - After Phase B, copy the
Memory updateintoREVIEWER_MEMORY.mdbefore writingREVIEW_STATE.json. - In
nightmare, launch an additional fresh adversarial reviewer with direct repository/file-reading instructions. It should readNARRATIVE_REPORT.mdorreview-stage/AUTO_REVIEW.mdfor the author's claims, then verify those claims against code, logs, result files, and paper drafts instead of trusting executor summaries.
Instructions
In hard and nightmare modes, the reviewer must actively look for omissions, unsupported claims, cherry-picked evidence, metric mistakes, and weaknesses the executor may have downplayed.
For difficulty: hard and nightmare, use the Debate Protocol after a critical review:
- Codex writes a concise rebuttal with evidence, not spin.
- Send the rebuttal to the same reviewer via
send_input. - The reviewer rules which objections are resolved, unresolved, or newly discovered.
- Only mark a concern resolved when the reviewer accepts the rebuttal.
State Persistence (Compact Recovery)
Long-running loops may hit the context window limit, triggering automatic compaction. To survive this, persist state to review-stage/REVIEW_STATE.json after each round:
{
"round": 2,
"agent_id": "019cd392-...",
"status": "in_progress",
"last_score": 5.0,
"last_verdict": "not ready",
"pending_experiments": ["screen_name_1"],
"timestamp": "2026-03-13T21:00:00"
}
Write this file at the end of every Phase E (after documenting the round). Overwrite each time — only the latest state matters.
On completion (positive assessment or max rounds), set "status": "completed" so future invocations don't accidentally resume a finished loop.
Workflow
Initialization
- Check for
review-stage/REVIEW_STATE.json(fall back to./REVIEW_STATE.jsonif not found — legacy path):- If neither path exists: fresh start (normal case, identical to behavior before this feature existed)
- If it exists AND
statusis"completed": fresh start (previous loop finished normally) - If it exists AND
statusis"in_progress"ANDtimestampis older than 24 hours: fresh start (stale state from a killed/abandoned run — delete the file and start over) - If it exists AND
statusis"in_progress"ANDtimestampis within 24 hours: resume- Read the state file to recover
round,agent_id,last_score,pending_experiments - Read
review-stage/AUTO_REVIEW.mdto restore full context of prior rounds (fall back to./AUTO_REVIEW.md) - If
pending_experimentsis non-empty, check if they have completed (e.g., check screen sessions) - Resume from the next round (round = saved round + 1)
- Log: "Recovered from context compaction. Resuming at Round N."
- Read the state file to recover
- Read project narrative documents, memory files, and any prior review documents. When
COMPACT = trueand compact files exist, preferfindings.md+EXPERIMENT_LOG.mdover full raw logs. - Read recent experiment results (check output directories, logs)
- Identify current weaknesses and open TODOs from prior reviews
- Initialize round counter = 1 (unless recovered from state file)
- Create/update
review-stage/AUTO_REVIEW.mdwith header and timestamp
Loop (repeat up to MAX_ROUNDS)
Phase A: Review
Route by REVIEWER_DIFFICULTY:
Medium (default) — Codex Review
Send comprehensive context to the external reviewer:
spawn_agent:
reasoning_effort: xhigh
message: |
[Round N/MAX_ROUNDS of autonomous review loop]
[Full research context: claims, methods, results, known weaknesses]
[Changes since last round, if any]
Please act as a senior ML reviewer (NeurIPS/ICML level).
1. Score this work 1-10 for a top venue
2. List remaining critical weaknesses (ranked by severity)
3. For each weakness, specify the MINIMUM fix (experiment, analysis, or reframing)
4. State clearly: is this READY for submission? Yes/No/Almost
Be brutally honest. If the work is ready, say so clearly.
If this is round 2+, use send_input with the saved agent id to maintain continuity.
Hard — Codex Review + Reviewer Memory
Use the same spawn_agent / send_input route as medium, but prepend the full review-stage/REVIEWER_MEMORY.md contents under ## Your Reviewer Memory (persistent across rounds) and require a Memory update section in the reviewer response.
Nightmare — Independent Repository Review
Use everything in hard mode, then ask an additional fresh adversarial reviewer to verify claims against repository files, logs, result files, and paper drafts instead of trusting executor summaries. Preserve the fresh review as a separate raw response and trace.
Phase B: Parse Assessment
CRITICAL: Save the FULL raw response from the external reviewer verbatim (store in a variable for Phase E). Do NOT discard or summarize — the raw text is the primary record.
Then extract structured fields:
- Score (numeric 1-10)
- Verdict ("ready" / "almost" / "not ready")
- Action items (ranked list of fixes)
STOP CONDITION: If score >= 6 AND verdict contains "ready" or "almost" → stop loop, document final state.
Phase B.5: Reviewer Memory Update (hard + nightmare only)
Skip entirely if REVIEWER_DIFFICULTY = medium.
After parsing the assessment, update review-stage/REVIEWER_MEMORY.md:
Your Reviewer Memory (persistent across rounds)
Pass this file back to the reviewer in the next round so it can track its own suspicions.
# Reviewer Memory
## Round 1 — Score: X/10
- **Suspicion**: [what the reviewer flagged]
- **Unresolved**: [concerns not yet addressed]
- **Patterns**: [recurring issues the reviewer noticed]
## Round 2 — Score: X/10
- **Previous suspicions addressed?**: [yes/no for each, with reviewer judgment]
- **New suspicions**: [...]
- **Unresolved**: [carried forward + new]
Rules:
- Append each round; never delete prior rounds.
- If the reviewer response includes a
Memory updatesection, copy it verbatim. - This file is passed back to the reviewer in the next round's Phase A.
Phase B.6: Debate Protocol (hard + nightmare only)
Skip entirely if REVIEWER_DIFFICULTY = medium.
After parsing the review, Codex writes a structured rebuttal for up to three high-impact weaknesses:
### Rebuttal to Weakness #1: [title]
- **Accept / Partially Accept / Reject**
- **Argument**: [why this criticism is valid, invalid, already addressed, or out of scope]
- **Evidence**: [specific code, result file, log, prior-round fix, or paper section]
Send the rebuttal to the same reviewer via send_input:
send_input:
target: [saved reviewer id]
message: |
Please rule on the author's rebuttal below.
For each contested weakness, decide: accepted / partially accepted / rejected.
If rejected, state the minimum evidence or change required.
[paste rebuttal + evidence]
Record a ### Debate Transcript (hard + nightmare only) section in review-stage/AUTO_REVIEW.md. Only mark a weakness resolved if the reviewer accepts the rebuttal.
Debate Transcript (hard + nightmare only)
In the round log, preserve the rebuttal, reviewer ruling, accepted objections, rejected objections, and any required follow-up evidence.
Human Checkpoint (if enabled)
Skip this step entirely if HUMAN_CHECKPOINT = false.
When HUMAN_CHECKPOINT = true, present the review results and wait for user input:
📋 Round N/MAX_ROUNDS review complete.
Score: X/10 — [verdict]
Top weaknesses:
1. [weakness 1]
2. [weakness 2]
3. [weakness 3]
Suggested fixes:
1. [fix 1]
2. [fix 2]
3. [fix 3]
Options:
- Reply "go" or "continue" → implement all suggested fixes
- Reply with custom instructions → implement your modifications instead
- Reply "skip 2" → skip fix #2, implement the rest
- Reply "stop" → end the loop, document current state
Wait for the user's response. Parse their input:
- Approval ("go", "continue", "ok", "proceed"): proceed to Phase C with all suggested fixes
- Custom instructions (any other text): treat as additional/replacement guidance for Phase C. Merge with reviewer suggestions where appropriate
- Skip specific fixes ("skip 1,3"): remove those fixes from the action list
- Stop ("stop", "enough", "done"): terminate the loop, jump to Termination
Feishu Notification (if configured)
After parsing the score, check if ~/.codex/feishu.json exists and mode is not "off":
- Send a
review_scorednotification: "Round N: X/10 — [verdict]" with top 3 weaknesses - If interactive mode and verdict is "almost": send as checkpoint, wait for user reply on whether to continue or stop
- If config absent or mode off: skip entirely (no-op)
Phase C: Implement Fixes (if not stopping)
For each action item (highest priority first):
- Code changes: Write/modify experiment scripts, model code, analysis scripts
- Run experiments: Deploy to GPU server via SSH + screen/tmux
- Analysis: Run evaluation, collect results, update figures/tables
- Documentation: Update project notes and review document
Prioritization rules:
- Skip fixes requiring excessive compute (flag for manual follow-up)
- Skip fixes requiring external data/models not available
- Prefer reframing/analysis over new experiments when both address the concern
- Always implement metric additions (cheap, high impact)
Phase D: Wait for Results
If experiments were launched:
- Monitor remote sessions for completion
- Collect results from output files and logs
- Training quality check — if W&B is configured, invoke
/training-checkto verify training was healthy (no NaN, no divergence, no plateau). If W&B is not available, skip silently.
Phase E: Document Round
Append to review-stage/AUTO_REVIEW.md:
## Round N (timestamp)
### Assessment (Summary)
- Score: X/10
- Verdict: [ready/almost/not ready]
- Key criticisms: [bullet list]
### Reviewer Raw Response
<details>
<summary>Click to expand full reviewer response</summary>
[Paste the COMPLETE raw response from the external reviewer here — verbatim, unedited.
This is the authoritative record. Do NOT truncate or paraphrase.]
</details>
### Actions Taken
- [what was implemented/changed]
### Results
- [experiment outcomes, if any]
### Status
- [continuing to round N+1 / stopping]
Write review-stage/REVIEW_STATE.json with current round, agent id, score, verdict, and any pending experiments.
Append to findings.md (when COMPACT = true): one-line entry per key finding this round.
- [Round N] [positive/negative/unexpected]: [one-sentence finding] (metric: X.XX → Y.YY)
Increment round counter → back to Phase A.
Review Tracing
Review Tracing
After every spawn_agent, send_input, oracle-pro, or nightmare adversarial verification call, save a trace following ../shared-references/review-tracing.md. Include prompt summary, reviewer route, saved agent id, raw response path, score/verdict, accepted fixes, rejected rebuttals, and the Reviewer Memory update if present.
Termination
When loop ends (positive assessment or max rounds):
- Update
review-stage/REVIEW_STATE.jsonwith"status": "completed" - Write final summary to
review-stage/AUTO_REVIEW.md - Update project notes with conclusions
- Write method/pipeline description to
review-stage/AUTO_REVIEW.mdunder a## Method Descriptionsection — a concise 1-2 paragraph summary of the final method, architecture, and data flow. This serves as direct input for/paper-illustration. - Generate claims from results — invoke
/result-to-claimto convert experiment results fromreview-stage/AUTO_REVIEW.mdinto structured paper claims. Output:CLAIMS_FROM_RESULTS.md. If/result-to-claimis unavailable, skip silently. - If stopped at max rounds without positive assessment:
- List remaining blockers
- Estimate effort needed for each
- Suggest whether to continue manually or pivot
- Feishu notification (if configured): Send
pipeline_donewith final score progression table
Output Protocols
Follow these shared protocols for all output files:
- Output Versioning Protocol — write timestamped file first, then copy to fixed name
- Output Manifest Protocol — log every output to MANIFEST.md
- Output Language Protocol — respect the project's language setting
Key Rules
-
Large file handling: If the Write tool fails due to file size, immediately retry using Bash (
cat << 'EOF' > file) to write in chunks. Do NOT ask the user for permission — just do it silently. -
ALWAYS use
reasoning_effort: xhighfor maximum reasoning depth -
Save agent id from first call, use
send_inputfor subsequent rounds -
Be honest — include negative results and failed experiments
-
Do NOT hide weaknesses to game a positive score
-
Implement fixes BEFORE re-reviewing (don't just promise to fix)
-
If an experiment takes > 30 minutes, launch it and continue with other fixes while waiting
-
Document EVERYTHING — the review log should be self-contained
-
Update project notes after each round, not just at the end
Prompt Template for Round 2+
send_input:
id: [saved from round 1]
reasoning_effort: xhigh
message: |
[Round N update]
Since your last review, we have:
1. [Action 1]: [result]
2. [Action 2]: [result]
3. [Action 3]: [result]
Updated results table:
[paste metrics]
Please re-score and re-assess. Are the remaining concerns addressed?
Same format: Score, Verdict, Remaining Weaknesses, Minimum Fixes.