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Deep Researcher

by roboticresults · GitHub ↗ · v1.1.0 · MIT-0
cross-platform ✓ Security Clean
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Install in OpenClaw
/install deep-researcher-rr
Description
Generate comprehensive 30-40 page academic research papers with full citations. Trigger: deep research, generate research paper, academic paper, literature r...
README (SKILL.md)

Deep Researcher — Academic Research Paper Generator

Generate comprehensive, academic-grade research papers (30-40 pages) with 40-80 unique citations, following a rigorous 7-stage workflow. Adapts to any field — AI, medicine, economics, social sciences, engineering, and more.

Workflow Overview

STAGE 1: Topic Analysis      → Decompose topic into sub-questions
STAGE 2: Source Discovery    → Query academic & industry databases
STAGE 3: Content Synthesis  → Extract, summarize, map source relationships
STAGE 4: Cross-Verification  → Triangulate claims, verify facts
STAGE 5: Content Expansion   → Fill gaps, add case studies, data
STAGE 6: Synthesis & Writing → Assemble paper chapter-by-chapter
STAGE 7: Refinement & QA     → Polish, format citations, validate

Stage 1: Topic Analysis

Decompose the research topic into 12-15 subtopics. Identify:

  • Primary research questions
  • Scope boundaries (time period, geography, industry)
  • Feasibility for 30-40 page scope
  • Key theories and seminal works to anchor the paper

Output: Topic Deconstruction Report with subtopics, research questions, and knowledge gaps.


Stage 2: Source Discovery

Query multiple source categories using OpenClaw's native tools:

Category Sources Tool
Academic arXiv, Google Scholar, PubMed, Semantic Scholar batch_web_search
Economic World Bank API, IMF, OECD Stats batch_web_search
Industry McKinsey Insights, Statista, Gartner batch_web_search + extract_content_from_websites
Code/AI GitHub, Hugging Face, arXiv (CS) batch_web_search
News Reuters, BBC, RSS feeds batch_web_search
Patents Google Patents batch_web_search

Tool: batch_web_search (up to 10 concurrent queries)

For each search, extract: title, authors, year, DOI/URL, abstract, key findings.

Output: 40-80 candidate sources organized by category and relevance.


Stage 3: Content Synthesis

For each major source:

  • Extract core contribution, methodology, key findings (3-5 bullet points), limitations
  • Group by theme, methodology, and chapter alignment
  • Identify patterns: recurring themes, contradictions, gaps

Output: Synthesized source notes (150-200 words per source), cross-reference map, draft literature review.


Stage 4: Cross-Verification

  • Every factual claim must be backed by ≥1 source
  • Critical claims (statistics, dates, specific findings) verified against 2-3 independent sources
  • Flag sources with potential bias or industry funding
  • Identify underrepresented perspectives

Output: Verification log, triangulation matrix, bias assessment.


Stage 5: Content Expansion

  • Search for case studies, historical precedents, comparative analyses
  • Add quantitative data from World Bank, IMF, OECD where relevant
  • Include expert viewpoints, industry reports, conference proceedings
  • Aim for 15-20 distinct subtopics covered

Output: Expanded source list (+10-20 sources), comparative analysis, historical timeline.


Stage 6: Synthesis & Writing

Assemble the paper using the Standard Research Paper Structure below. Integrate citations in APA 7th format. Write 15,000-18,000 words targeting 30-40 pages.

Standard Research Paper Structure

1. Title Page          (clear title, keywords, date)
2. Abstract            (300-500 words, 3-5 keywords)
3. Executive Summary   (1-2 pages, key takeaways for decision-makers)
4. Chapter 1: Introduction        (3-4 pages)
   - Background & context
   - Problem statement
   - Research objectives & questions
   - Significance & scope
5. Chapter 2: Literature Review   (6-8 pages)
   - Theoretical framework
   - Key themes (organized thematically)
   - Major studies & seminal works
   - Gaps in existing research
6. Chapter 3: Methodology         (4-5 pages)
   - Research design (qualitative/quantitative/mixed)
   - Data sources & search strategy
   - Inclusion/exclusion criteria
   - Analysis techniques & AI tools used
7. Chapter 4: Data Collection     (3-4 pages)
   - Sample/data description
   - Collection procedures
   - Ethical considerations
8. Chapter 5: Analysis & Findings  (8-10 pages)
   - Descriptive findings
   - Quantitative/qualitative results
   - Comparative and longitudinal analysis
   - Visual elements (tables, figures)
9. Chapter 6: Discussion          (3-4 pages)
   - Interpretation of key findings
   - Theoretical & practical implications
   - Limitations & counterarguments
10. Chapter 7: Conclusion         (2-3 pages)
    - Summary of contributions
    - Actionable recommendations
    - Future research directions
11. References                    (5-8 pages, 40-80 sources)
12. Appendices                    (optional)

Citation style: APA 7th Edition (Author, Year) — default. Also supports MLA 9th and Chicago Notes/Bibliography.


Stage 7: Refinement & QA

Run the quality checklist:

Accuracy

  • 0% hallucinated claims — every claim backed by ≥1 source
  • All statistics cross-checked against primary sources
  • All dates within ±1 day of source
  • All DOIs resolve correctly

Completeness

  • 30-40 page target (15,000-18,000 words)
  • ≥40 unique citations
  • 15-20 distinct subtopics covered
  • All 7 chapters present
  • 5+ figures/tables

Coverage

  • 4+ different source types (academic, industry, news, government)
  • 70%+ sources from last 5 years
  • 3+ distinct viewpoints represented
  • At least 1 counterargument documented

Citation Integrity

  • All in-text citations appear in References
  • All References have in-text citations
  • No orphan URLs
  • APA 7th formatting consistent throughout

Literary Quality

  • Formal academic tone, no slang
  • Third-person perspective
  • Clear transitions between chapters
  • No repetition or redundancy
  • Consistent terminology

Output: Final polished paper + QA report


Output Formats

Format Description Tool
Markdown Default, editable Direct output
PDF Academic submission minimax-pdf skill
DOCX Word processing minimax-docx skill

Request with: "[topic] — output as PDF" or "[topic] — output as DOCX"


APA 7th Citation Quick Reference

In-text: (Author, Year) or Author (Year) showed that...

Reference entry (Journal):

Author, A. A., & Author, B. B. (Year). Title of article. Journal Name, Volume(Issue), Page.Range. https://doi.org/xxxxx

Reference entry (Book):

Author, A. A. (Year). Title of book (Edition ed.). Publisher.

Reference entry (Web):

Author, A. A. (Year, Month Day). Title of page. Website Name. https://url

Citation Density Rule

Target: ≥1 citation per 150-200 words across the full paper. This ensures every claim is evidence-backed and academically rigorous.


Source Priority Matrix

Priority Source Types Cost
HIGH arXiv, PubMed, World Bank, IMF, OECD, Hugging Face, GitHub Free
MEDIUM Google Scholar, IEEE, McKinsey, Gartner, Statista Free/Premium
LOW News feeds, Twitter, Reddit, news blogs Free

Always prioritize free, authoritative, open-access sources first.


Data Sources Registry

Academic

  • arXiv: https://export.arxiv.org/api/query — cutting-edge AI/ML/theory, no API key
  • Google Scholar: batch_web_search — comprehensive peer-reviewed coverage
  • PubMed/PMC: https://eutils.ncbi.nlm.nih.gov/entrez/eutils/ — biomedical, life sciences
  • Semantic Scholar: https://api.semanticscholar.org/ — CS academic sources

Economic & Policy

  • World Bank: https://api.worldbank.org/v2/ — free, no key required
  • IMF: https://api.imf.org/ — macroeconomic data
  • OECD: https://stats.oecd.org/ — comparative policy data

Technology & AI

  • Hugging Face: https://api.huggingface.co/ — ML models, datasets, papers
  • GitHub API: https://api.github.com/ — code trends, repositories
  • Google Patents: https://patents.google.com/ — innovation trends

Industry

  • McKinsey Insights: Public articles and reports
  • Gartner: Industry analysis (subscription)
  • Statista: Statistics and market data (subscription)

Troubleshooting

Issue Solution
"Insufficient sources" Expand keyword list; use Boolean operators (AND/OR/NOT); try alternative databases
"Page count too short" Expand Stage 5 (content expansion); add case studies, comparative data, visual elements
"Citation gaps" Return to Stage 2; search for missing angles; add industry reports and government data
"Hallucination risk" Always verify facts via Cross-Verification stage; cite primary sources only
"Formatting inconsistent" Run APA 7th reference check; ensure all in-text citations match reference list

Iteration Triggers

  • From Stage 4 → Stage 3: Cross-verification reveals hallucination or insufficient evidence
  • From Stage 5 → Stage 2: Expansion search finds critical gaps in core coverage
  • From Stage 6 → Stage 4: Writing reveals missing critical sources
  • Page count \x3C30: Expand Stage 5, then revisit Stage 6

Integration Notes

This skill replaces and significantly extends the knowledge-digest skill's research capabilities. Where knowledge-digest focuses on learning materials from existing documents, deep-researcher generates original academic research from primary and secondary sources across multiple databases.

Both skills can coexist — use deep-researcher for original paper creation, knowledge-digest for study aids from existing materials.

Usage Guidance
Install if you want an agent to perform broad web-based academic research and write long papers. Do not use confidential project names, unpublished research, personal data, or regulated information as topics unless you are comfortable with derived search queries being sent to third-party sites and public APIs.
Capability Tags
requires-sensitive-credentials
Capability Assessment
Purpose & Capability
The artifacts coherently describe a 7-stage workflow for generating long academic research papers, finding sources, checking citations, and producing QA reports.
Instruction Scope
Some triggers such as 'academic paper,' 'literature review,' and 'comprehensive analysis' are broad and could activate the skill for ordinary research requests, but the behavior remains aligned with research generation.
Install Mechanism
The package contains markdown guidance, a small metadata file, and one local QA validator script; there are no install hooks, package dependencies, or automatic execution paths shown.
Credentials
The skill directs external searches and public API lookups across academic, economic, news, and technology sources; this is expected for the stated purpose but users should avoid sensitive or confidential topics.
Persistence & Privilege
No background persistence, privilege escalation, credential harvesting, broad local indexing, or remote mutation authority is present. The Python script reads expected paper/source files and writes a QA report.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install deep-researcher-rr
  3. After installation, invoke the skill by name or use /deep-researcher-rr
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v1.1.0
v1.1.0 (fork of h4gen/deep-researcher): Added _meta.json. Full 7-stage research pipeline for 30-40 page academic papers with APA 7th citations, cross-verification, and QA checklist.
Metadata
Slug deep-researcher-rr
Version 1.1.0
License MIT-0
All-time Installs 0
Active Installs 0
Total Versions 1
Frequently Asked Questions

What is Deep Researcher?

Generate comprehensive 30-40 page academic research papers with full citations. Trigger: deep research, generate research paper, academic paper, literature r... It is an AI Agent Skill for Claude Code / OpenClaw, with 52 downloads so far.

How do I install Deep Researcher?

Run "/install deep-researcher-rr" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is Deep Researcher free?

Yes, Deep Researcher is completely free, licensed under MIT-0. You can download, install and use it at no cost.

Which platforms does Deep Researcher support?

Deep Researcher is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created Deep Researcher?

It is built and maintained by roboticresults (@roboticresults); the current version is v1.1.0.

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