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inno-idea-eval
Multi-persona idea evaluation with quality gate.
Codex または Claude でインストール この Prompt をコピーして Codex、Claude、または他のアシスタントに貼り付けると、Skill ページを確認してインストールできます。
メニュー
Multi-persona idea evaluation with quality gate.
Codex または Claude でインストール この Prompt をコピーして Codex、Claude、または他のアシスタントに貼り付けると、Skill ページを確認してインストールできます。
SOC 職業分類に基づく
Search traceable academic papers, download legally accessible PDFs from arXiv and open-access sources, convert PDFs or page images to Markdown with a PaddleOCR layout-parsing API (or local pdfminer fallback), and organize the results into an AI-readable literature library. Use when Claude Code needs to build a paper corpus, batch OCR PDFs to Markdown, ingest real literature into a knowledge base, fetch arXiv or Hugging Face paper leads, or turn a directory of papers into structured Markdown plus metadata.
Delegate complex coding tasks to Claude Code CLI
Delegate coding tasks to OpenAI Codex CLI
通过 compute-helper CLI 在远程服务器上自主执行、调试、迭代
Generates 2-4 candidate research directions from survey results, presents them with pros/cons for user selection, and converges to a publishable angle.
Academic research assistant for literature reviews, paper analysis, and scholarly writing.
| id | inno-idea-eval |
| name | inno-idea-eval |
| version | 1.0.0 |
| description | Multi-persona idea evaluation with quality gate. |
| stages | ["ideation"] |
| tools | ["read_file","search_project","write_file"] |
| summary | Multi-persona idea evaluation with quality gate. Evaluates ideas across 5 InnoEval dimensions (Clarity, Novelty, Validity, Feasibility, Significance) using 3 reviewer personas and a meta-review. Sits between inno-idea-generation and inno-c... |
| primaryIntent | ideation |
| intents | ["ideation","evaluation"] |
| capabilities | ["research-planning"] |
| domains | ["general"] |
| keywords | ["inno-idea-eval","idea evaluation","research-planning","inno","idea","eval","multi","persona","evaluation","quality","gate","evaluates"] |
| source | builtin |
| status | verified |
| upstream | {"repo":"dr-claw","path":"skills/inno-idea-eval","revision":"8322dc4ef575affaa374aa7922c0a0971c6db7d7"} |
| resourceFlags | {"hasReferences":true,"hasScripts":false,"hasTemplates":false,"hasAssets":false,"referenceCount":3,"scriptCount":0,"templateCount":0,"assetCount":0,"optionalScripts":false} |
Multi-persona idea evaluation with quality gate. Evaluates ideas across 5 InnoEval dimensions (Clarity, Novelty, Validity, Feasibility, Significance) using 3 reviewer personas and a meta-review. Sits between inno-idea-generation and inno-c...
Use this skill when the user request matches its research workflow scope. Prefer the bundled resources instead of recreating templates or reference material. Keep outputs traceable to project files, citations, scripts, or upstream evidence.
references/ only when the current task needs the extra detail.skills/inno-idea-eval/
├── SKILL.md ← this file
├── prompts/
│ ├── build_eval_query.md ← Per-persona evaluation query (all 5 dims)
│ ├── build_evidence_assembly.md ← How to compose evidence from pipeline artifacts
│ ├── build_meta_review_query.md ← Area-chair aggregation of 3 persona reviews
│ ├── build_novelty_queries.md ← Query extraction for novelty verification (Step 0.5a)
│ ├── build_novelty_analysis.md ← Similarity analysis for novelty verification (Step 0.5c)
│ └── build_refinement_feedback_query.md ← Structured feedback for refinement loop
└── references/
├── eval_agent_instructions.md ← Full eval agent system prompt + scoring rubrics
├── novelty_verification_config.md ← Novelty search config, threat levels, fast-fail protocol
└── reviewer_personas.md ← 3 persona definitions + evidence filter logic
How to use the resource files: Each prompt template in
prompts/documents the exact parameters, the full text template, and usage notes (when it is a new conversation vs. appended message, how to format evidence blocks, etc.). Thereferences/directory contains the Eval Agent's complete system instructions including its scoring rubrics, persona definitions, and evidence filter logic. Consult these files for the authoritative details; the steps below provide a summary.
Paths for Ideation/ideas and Ideation/references come from instance.json (instance.Ideation.ideas, instance.Ideation.references). They are absolute in Dr. Claw-created projects; use as-is. If relative, resolve with path.join(project_path, value).
| Parameter | Required | Description |
|---|---|---|
selected_idea | Yes | The idea to evaluate, read from Ideation/ideas/selected_idea.txt |
references | No* | Pre-formatted string listing all source papers (from inno-prepare-resources) |
prepare_res | No* | Full text response from the Prepare Agent (selected repositories and reasoning) |
download_res | No* | Result log from downloading arXiv paper sources |
data_module | No* | The imported metaprompt module (provides TASK field describing the ML task) |
context_variables | Yes | Shared context dictionary (must contain final_selected_idea_data) |
*Standalone mode: only selected_idea required; evaluation proceeds ungrounded with a noted limitation.
| Output | Description |
|---|---|
eval_report | Full markdown evaluation report (meta-review) |
eval_scores | Structured JSON: per-dimension, per-persona, aggregated |
eval_decision | One of: strong_accept / accept / borderline_accept / borderline_reject / reject |
eval_feedback | Strengths/weaknesses/suggestions (for refinement or downstream) |
context_variables["idea_evaluation_result"] | Complete structured result dict |
Each step produces two kinds of files:
.txt files (primary) -- the full markdown content of each review, written directly to Ideation/ideas/.json files (derived) -- structured metadata under Ideation/ideas/logs/, whose text fields must be copied verbatim from the corresponding .txt files (never summarized)Ideation/ideas/
├── novelty_grounding_report.txt ← Step 0.5: Active Novelty Verification report
├── eval_report.txt ← Step 4: full meta-review report (markdown)
├── eval_persona_1_review.txt ← Step 1: Senior ML Researcher review
├── eval_persona_2_review.txt ← Step 2: Domain Expert review
├── eval_persona_3_review.txt ← Step 3: Methods Specialist review
└── logs/
├── idea_eval_agent_novelty.json ← Step 0.5: Novelty search + analysis structured data
├── idea_eval_agent_persona_1.json ← Step 1: Persona 1 structured scores
├── idea_eval_agent_persona_2.json ← Step 2: Persona 2 structured scores
├── idea_eval_agent_persona_3.json ← Step 3: Persona 3 structured scores
└── idea_eval_agent_meta_review.json ← Step 4: Aggregated decision + full report
For every step, always write the .txt file first, then build the .json file by copying the .txt content into the appropriate field:
For the novelty verification step:
novelty_grounding_report.txt with the full novelty analysis reportreport_textlogs/idea_eval_agent_novelty.jsonFor each persona review:
eval_persona_{N}_review.txt with the agent's full reviewreview_textlogs/idea_eval_agent_persona_{N}.jsonFor the meta-review step:
eval_report.txt with the agent's full meta-review reportreport_textlogs/idea_eval_agent_meta_review.json.txt file naming| Step | File name | Content |
|---|---|---|
| Novelty verification | novelty_grounding_report.txt | Active Novelty Verification report |
| Persona 1 review | eval_persona_1_review.txt | Full markdown review from Senior ML Researcher |
| Persona 2 review | eval_persona_2_review.txt | Full markdown review from Domain Expert |
| Persona 3 review | eval_persona_3_review.txt | Full markdown review from Methods Specialist |
| Meta-review | eval_report.txt | Full markdown meta-review report |
.json file naming| Step | File name | Key fields |
|---|---|---|
| Novelty | idea_eval_agent_novelty.json | search_config, queries, novelty_threat_level, report_text |
| Persona 1 | idea_eval_agent_persona_1.json | persona, scores, review_text |
| Persona 2 | idea_eval_agent_persona_2.json | persona, scores, review_text |
| Persona 3 | idea_eval_agent_persona_3.json | persona, scores, review_text |
| Meta-review | idea_eval_agent_meta_review.json | aggregated_scores, decision, report |
.json file format (each persona)Each file contains context_variables only (no messages). The review_text field holds the full text copied from the corresponding .txt file:
{
"context_variables": {
"ideas_path": "<instance.Ideation.ideas>",
"references_path": "<instance.Ideation.references>",
"persona": "senior_ml_researcher | domain_expert | methods_specialist",
"scores": {
"clarity": { "score": 0, "reason": "...", "references": [] },
"novelty": { "score": 0, "reason": "...", "references": [] },
"validity": { "score": 0, "reason": "...", "references": [] },
"feasibility": { "score": 0, "reason": "...", "references": [] },
"significance": { "score": 0, "reason": "...", "references": [] }
},
"strengths": [],
"weaknesses": [],
"suggestions": [],
"recommendation": "Accept|Reject|...",
"review_text": "<FULL text from eval_persona_{N}_review.txt>"
}
}
.json file format (meta-review){
"context_variables": {
"ideas_path": "<instance.Ideation.ideas>",
"references_path": "<instance.Ideation.references>",
"aggregated_scores": {
"clarity": { "avg": 0, "scores": [0, 0, 0] },
"novelty": { "avg": 0, "scores": [0, 0, 0] },
"validity": { "avg": 0, "scores": [0, 0, 0] },
"feasibility": { "avg": 0, "scores": [0, 0, 0] },
"significance": { "avg": 0, "scores": [0, 0, 0] }
},
"overall_avg": 0,
"decision": "strong_accept|accept|borderline_accept|borderline_reject|reject",
"report_text": "<FULL text from eval_report.txt>",
"strengths": [],
"weaknesses": [],
"suggestions": [],
"idea_evaluation_result": { "...complete structured result..." }
}
}
.json file format (novelty verification){
"context_variables": {
"step": "novelty_verification",
"search_config": {
"num_queries": 4,
"sources": ["arxiv", "semantic_scholar", "openalex"],
"max_results_per_query": 10,
"year_from": "<current_year - 3>"
},
"queries": [
{ "type": "core_method", "query": "...", "rationale": "..." },
{ "type": "problem_domain", "query": "...", "rationale": "..." },
{ "type": "key_component", "query": "...", "rationale": "..." },
{ "type": "broad_approach", "query": "...", "rationale": "..." }
],
"idea_summary": "...",
"search_results": { "total_raw": 0, "total_unique": 0 },
"triage": [
{ "title": "...", "year": 0, "relevance": "high|medium|low|irrelevant", "is_inspiration_source": false, "assessment": "..." }
],
"detailed_analysis": [
{ "title": "...", "year": 0, "overlap": "...", "differences": "...", "threat_level": "..." }
],
"novelty_threat_level": "critical_overlap|high_overlap|moderate_overlap|low_overlap|novel",
"genuine_novel_contributions": ["..."],
"report_text": "<FULL text from novelty_grounding_report.txt>",
"fast_fail_triggered": false,
"user_decision": null
}
}
review_text and report_text must contain the complete markdown from the .txt file -- never a summary or abbreviation..json grows independently; the meta-review .json aggregates all three.Full template:
prompts/build_evidence_assembly.md
Read existing pipeline artifacts and compose 3 evidence blocks (one per persona knowledge level):
| Persona Knowledge | Evidence Included |
|---|---|
high (Senior ML) | All papers + LaTeX sources + all repos + full task context |
medium (Domain Expert) | Paper titles/abstracts + repo descriptions + task context |
medium (Methods Specialist) | Repo code + paper titles + implementation details |
Sources: Ideation/references/papers/, Experiment/code_references/, references string, prepare_res, data_module.TASK. No new search needed.
If running in standalone mode (no pipeline artifacts), note this limitation in each review and proceed with ungrounded evaluation.
Query template:
prompts/build_novelty_queries.mdAnalysis template:prompts/build_novelty_analysis.mdConfiguration:references/novelty_verification_config.md
Proactively search the literature to verify whether the idea (or key components) already exists. This step runs before persona reviews so all 3 reviewers have the prior art report as evidence.
Sub-steps:
0.5a — Extract search queries (LLM call using build_novelty_queries.md):
selected_idea + known source_papers (inspiration)0.5b — Execute searches (4 invocations of search_ai_papers.py):
python3 ~/.claude/skills/searching-ai-papers/scripts/search_ai_papers.py \
--query "<query>" --sources arxiv,semantic_scholar,openalex \
--max-results 10 --year-from <current_year-3> --format json
unverified)0.5c — Analyze similarity (LLM call using build_novelty_analysis.md):
selected_idea + deduplicated search results + source_papers + idea_summary + key_terms[INSPIRATION_SOURCE]0.5d — Fast-fail check:
critical_overlap on a non-inspiration paper AND CRITICAL_OVERLAP_FAST_FAIL is true:
0.5e — Inject report into evidence:
Save (txt first, then json):
Ideation/ideas/novelty_grounding_report.txtreport_text copied verbatim from the .txt fileIdeation/ideas/logs/idea_eval_agent_novelty.jsonFor refinement re-runs, save as novelty_grounding_report_v{N}.txt and idea_eval_agent_novelty_v{N}.json.
Full template:
prompts/build_eval_query.mdAgent system prompt:references/eval_agent_instructions.mdPersona definitions:references/reviewer_personas.md
For each persona (1=Senior ML Researcher, 2=Domain Expert, 3=Methods Specialist):
prompts/build_eval_query.md template with persona-specific evidence block from Step 0Scoring Calibration (from InnoEval):
Self-Discovery Check (Novelty only): If a found paper appears identical to the idea, assume it IS the idea's inspiration source -- don't penalize.
Save (txt first, then json) after each persona:
Ideation/ideas/eval_persona_{N}_review.txtIdeation/ideas/logs/idea_eval_agent_persona_{N}.jsonFull template:
prompts/build_meta_review_query.md
Aggregate all 3 reviews. The agent acts as Area Chair:
Decision Thresholds:
| Average Score | Decision | Action |
|---|---|---|
| >= 7.0 | strong_accept | Proceed to code survey |
| >= 6.0 | accept | Proceed to code survey |
| >= 5.0 | borderline_accept | Present report, ask user whether to proceed or refine |
| >= 4.0 | borderline_reject | Suggest refinement, ask user |
| < 4.0 | reject | Trigger refinement loop automatically |
Save (txt first, then json):
Ideation/ideas/eval_report.txtIdeation/ideas/logs/idea_eval_agent_meta_review.jsonstrong_accept or accept): Pipeline continues to inno-code-survey. selected_idea passes through unchanged.borderline_accept or borderline_reject): Present evaluation report to user. Ask whether to proceed, refine, or abandon.reject): Build structured feedback via prompts/build_refinement_feedback_query.md. Trigger refinement loop.Full template:
prompts/build_refinement_feedback_query.md
inno-idea-generation)Ideation/ideas/refined_idea_v{N}.txtselected_idea.txt and final_selected_idea_dataSet context_variables["idea_evaluation_result"] with complete structured data:
{
"decision": "strong_accept|accept|...",
"overall_avg": 0.0,
"aggregated_scores": { "..." },
"persona_reviews": [ "..." ],
"report": "<full report text>",
"novelty_verification": {
"threat_level": "critical_overlap|high_overlap|moderate_overlap|low_overlap|novel",
"genuine_novel_contributions": ["..."],
"search_coverage": { "total_raw": 0, "total_unique": 0, "sources": ["..."] },
"fast_fail_triggered": false,
"user_decision": null
},
"refinement_iterations": 0,
"grounded": true
}
If refinement occurred, also update:
Ideation/ideas/selected_idea.txt with the refined ideacontext_variables["final_selected_idea_data"] with updated text| Constant | Default | Description |
|---|---|---|
NUM_PERSONAS | 3 | Number of reviewer personas |
ACCEPT_THRESHOLD | 6.0 | Minimum avg score for automatic accept |
STRONG_ACCEPT_THRESHOLD | 7.0 | Minimum avg score for strong accept |
BORDERLINE_THRESHOLD | 5.0 | Minimum avg score before auto-reject |
REJECT_THRESHOLD | 4.0 | Below this triggers automatic refinement |
MAX_REFINEMENT_ITERATIONS | 2 | Maximum refinement attempts before user decision |
NUM_QUERIES | 4 | Search queries extracted from idea (Step 0.5) |
MAX_RESULTS_PER_QUERY | 10 | Results per query per source (Step 0.5) |
DEFAULT_SOURCES | arxiv,semantic_scholar,openalex | Search sources for novelty verification |
YEAR_WINDOW | 3 | Years back to search from current year |
CRITICAL_OVERLAP_FAST_FAIL | true | User checkpoint on critical overlap detection |
novelty_grounding_report.txt, then full text copied into logs/idea_eval_agent_novelty.jsoneval_persona_1_review.txt, then full text copied into logs/idea_eval_agent_persona_1.jsoneval_persona_2_review.txt, then full text copied into logs/idea_eval_agent_persona_2.jsoneval_persona_3_review.txt, then full text copied into logs/idea_eval_agent_persona_3.jsoneval_report.txt, then full text copied into logs/idea_eval_agent_meta_review.jsoncontext_variables["idea_evaluation_result"] set with complete structured data (including novelty_verification)selected_idea.txt updated, final_selected_idea_data updated.txt files written to Ideation/ideas/, all .json files written to Ideation/ideas/logs/