research-review

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Get a deep critical review of research from GPT using a secondary Codex agent. Use when user says "review my research", "help me review", "get external review", or wants critical feedback on research ideas, papers, or experimental results.

wanshuiyin By wanshuiyin schedule Updated 6/4/2026

name: "research-review" description: "Get a deep critical review of research from GPT using a secondary Codex agent. Use when user says "review my research", "help me review", "get external review", or wants critical feedback on research ideas, papers, or experimental results."

Research Review via a secondary Codex agent (xhigh reasoning)

Get a multi-round critical review of research work from an external LLM with maximum reasoning depth.

Constants

  • REVIEWER_MODEL = gpt-5.5 — Model used via a secondary Codex agent. Must be an OpenAI model (e.g., gpt-5.5, o3, gpt-4o)
  • REVIEWER_BACKEND = codex — Default: Codex xhigh reviewer. Use --reviewer: oracle-pro only when explicitly requested; if Oracle is unavailable, warn and fall back to Codex xhigh. Same-family note: this default reviewer is a second Codex/GPT agent — valid for Type-A completeness/drive review, but not a cross-family Type-B verdict; install a skills-codex-claude-review / skills-codex-gemini-review overlay for a cross-family acquittal (see shared-references/reviewer-routing.md).

Context: $ARGUMENTS

Prerequisites

  • Use spawn_agent and send_input when the user has explicitly allowed delegation or subagents.
  • If delegation is not allowed, run the same review loop locally and preserve the same deliverable structure.

Workflow

Step 1: Gather Research Context

Before calling the external reviewer, compile a comprehensive briefing:

  1. Read project narrative documents (e.g., STORY.md, README.md, paper drafts)
  2. Read any memory/notes files for key findings and experiment history
  3. Identify: core claims, methodology, key results, known weaknesses

Step 2: Initial Review (Round 1)

Send a detailed prompt with xhigh reasoning:

spawn_agent:
  reasoning_effort: xhigh
  message: |
    [Full research context + specific questions]
    Please act as a senior ML reviewer (NeurIPS/ICML level). Identify:
    1. Logical gaps or unjustified claims
    2. Missing experiments that would strengthen the story
    3. Narrative weaknesses
    4. Whether the contribution is sufficient for a top venue
    Please be brutally honest.

Step 3: Iterative Dialogue (Rounds 2-N)

Use send_input with the returned agent id to continue the conversation:

send_input:
  target: [saved reviewer id from Step 2]
  message: |
    Please continue the review using the revised materials below.

    Revised files:
    - /absolute/path/to/file1
    - /absolute/path/to/file2

    Focus on unresolved weaknesses and whether the revision actually fixed them.

For each round:

  1. Respond to criticisms with evidence/counterarguments
  2. Ask targeted follow-ups on the most actionable points
  3. Request specific deliverables: experiment designs, paper outlines, claims matrices

Key follow-up patterns:

  • "If we reframe X as Y, does that change your assessment?"
  • "What's the minimum experiment to satisfy concern Z?"
  • "Please design the minimal additional experiment package (highest acceptance lift per GPU week)"
  • "Please write a mock NeurIPS/ICML review with scores"
  • "Give me a results-to-claims matrix for possible experimental outcomes"

Step 4: Convergence

Stop iterating when:

  • Both sides agree on the core claims and their evidence requirements
  • A concrete experiment plan is established
  • The narrative structure is settled

Step 5: Document Everything

Save the full interaction and conclusions to a review document in the project root:

  • Round-by-round summary of criticisms and responses
  • Final consensus on claims, narrative, and experiments
  • Claims matrix (what claims are allowed under each possible outcome)
  • Prioritized TODO list with estimated compute costs
  • Paper outline if discussed

Update project memory/notes with key review conclusions.

Step 6: Review Tracing

Save a trace for every spawn_agent, send_input, or oracle-pro review call following ../shared-references/review-tracing.md. Record the reviewer route, saved agent id, prompt summary, raw response path, decisions, and action items. This preserves the Claude mainline Review Tracing semantics while using Codex-native reviewer calls.

Key Rules

  • ALWAYS use reasoning_effort: xhigh for reviews
  • Send comprehensive context in Round 1 — the external model cannot read your files
  • Be honest about weaknesses — hiding them leads to worse feedback
  • Push back on criticisms you disagree with, but accept valid ones
  • Focus on ACTIONABLE feedback — "what experiment would fix this?"
  • Document the agent id for potential future resumption
  • The review document should be self-contained (readable without the conversation)

Prompt Templates

For initial review:

"I'm going to present a complete ML research project for your critical review. Please act as a senior ML reviewer (NeurIPS/ICML level)..."

For experiment design:

"Please design the minimal additional experiment package that gives the highest acceptance lift per GPU week. Our compute: [describe]. Be very specific about configurations."

For paper structure:

"Please turn this into a concrete paper outline with section-by-section claims and figure plan."

For claims matrix:

"Please give me a results-to-claims matrix: what claim is allowed under each possible outcome of experiments X and Y?"

For mock review:

"Please write a mock NeurIPS review with: Summary, Strengths, Weaknesses, Questions for Authors, Score, Confidence, and What Would Move Toward Accept."

Install via CLI
npx skills add https://github.com/wanshuiyin/Auto-claude-code-research-in-sleep --skill research-review
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