원클릭으로
deep-research
Autonomous research pipeline - discover, extract, and integrate cutting-edge insights into knowledge base
Codex 또는 Claude로 설치 이 Prompt를 복사해 Codex, Claude 또는 다른 어시스턴트에 붙여 넣으면 Skill 페이지를 검토하고 설치를 진행할 수 있습니다.
메뉴
Autonomous research pipeline - discover, extract, and integrate cutting-edge insights into knowledge base
Codex 또는 Claude로 설치 이 Prompt를 복사해 Codex, Claude 또는 다른 어시스턴트에 붙여 넣으면 Skill 페이지를 검토하고 설치를 진행할 수 있습니다.
SOC 직업 분류 기준
| name | deep-research |
| description | Autonomous research pipeline - discover, extract, and integrate cutting-edge insights into knowledge base |
| argument-hint | ["optional topic or \"auto\" for autonomous selection"] |
| automation | gated |
| allowed-tools | Task, Read, Bash, Glob, Grep |
You are orchestrating a fully autonomous research → extraction → connection discovery workflow to expand the knowledge base with cutting-edge insights.
User Input: $ARGUMENTS
Execution Modes:
$ARGUMENTS = "neuroscience of habits" or $ARGUMENTS = "multi-agent systems, safety alignment"$ARGUMENTS = "" or $ARGUMENTS = "auto"Execute a complete 3-phase autonomous research pipeline:
Critical Requirement: ALL extracted insights MUST be stored in Document Insights folder structure to keep separate from main Brain.
$ARGUMENTS for topic(s)Analyze knowledge base to identify research opportunities:
Read knowledge base analysis:
cat knowledge-base-analysis.md
Check recent activity:
ls -lt Brain/Document\ Insights/ | head -10
Identify gaps based on:
Select 1-3 research topics that would:
Examples of Good Topic Selection:
date '+%Y-%m-%d %H:%M:%S %Z'
Save this for session folder naming: YYYY-MM-DD Topic Description
For Each Topic:
Use Task tool with subagent_type='research-specialist':
TOPIC: [Selected topic]
Conduct comprehensive research on [topic] focusing EXCLUSIVELY on the most recent research and developments.
⚠️ CRITICAL RECENCY REQUIREMENT:
Your training data may be outdated. The world changes rapidly, especially in fast-moving fields like AI, neuroscience, and technology. You MUST prioritize the most recent information available through web search, even if it contradicts what you think you know from training data.
⚠️ SOURCE QUALITY REQUIREMENT (recency is NOT enough):
Recent does not mean credible. Prefer the PRIMARY source over anyone summarizing it - the actual paper, lab page, or official doc, not a content-farm writeup, an AI-generated summary, a single-tweet leak, or an SEO explainer. Reject machine-generated and regurgitated material. For each finding, record which source it came from so downstream extraction can tier it. (The per-domain source diet is the canonical `resources/SOURCE-AUTHORITY.md`; the document-insight-extractor applies it at extraction time.)
SEARCH STRATEGY:
- Use Google Search grounding to find papers published in the last 12-18 months
- Explicitly search for "2024", "2025", "2026", "recent", "latest" in queries
- Check paper publication dates - reject anything older than 2024 unless foundational
- Look for preprints, conference proceedings, and recent journal publications
- Prioritize arXiv papers from last 6 months, conference papers from 2024-2026
- Search for "state of the art [topic] 2025" or "[topic] breakthrough 2026"
RESEARCH REQUIREMENTS:
1. **Target Sources (RECENT ONLY):**
- arXiv preprints (2024-2026, prioritize last 6 months)
- Major conferences 2024-2026 (NeurIPS, ICML, ICLR, AAAI, ACL, EMNLP, etc.)
- Leading AI labs recent publications (OpenAI, Anthropic, Google DeepMind, Microsoft Research)
- Top-tier journals (2024-2026 issues only)
- Industry whitepapers and blog posts from major tech companies (last 12 months)
- Recent preprints and working papers
2. **Key Focus Areas:**
- Novel mechanisms and frameworks (not in your training data)
- Empirical findings with quantified results (recent benchmarks)
- Counter-intuitive or contrarian insights (challenging established thinking)
- Cross-domain applications (emerging connections)
- Real-world implementations and case studies (production deployments)
- Practical implications for practitioners
3. **Output Requirements:**
- Comprehensive structured report (15-25 major papers/developments)
- Full citations with DATES prominently displayed (title, authors, DATE, venue, arXiv ID)
- Key findings and novel contributions
- Performance metrics and empirical data
- Emerging trends and patterns
- URLs to papers/resources
- Critical analysis and synthesis
4. **Save Location:**
resources/[Topic-Slug]-Research-Report-YYYY-MM-DD.md
VERIFICATION: Before finalizing, verify that 80%+ of papers are from 2024-2026. If not, search again with more explicit recency filters. Also verify the sources are credible primaries (actual papers/labs/official docs), not content-farm pages or AI-generated summaries.
Use Gemini AI with Google Search grounding. Trust the search results over your training data.
Strategy Considerations:
After each research agent completes:
/resources/ directoryFormat: YYYY-MM-DD [Topic Description]
Example: 2025-11-20 Neuroscience of Habits and Behavior Change
Path: Brain/Document Insights/[Session-Folder]/
For Each Research Report:
Use Task tool with subagent_type='document-insight-extractor':
Extract unique insights from the research report for the knowledge base.
SOURCE DOCUMENT: [Full path to research report]
SESSION FOLDER: [Session folder name]
EXTRACTION GUIDELINES:
1. **Focus on Novel Insights:**
- Paradigm shifts and new frameworks
- Counter-intuitive or surprising findings
- Empirical validation of existing theories
- Novel mechanisms and explanations
- Cross-domain applications
- Contrarian perspectives backed by evidence
2. **Bridge to Existing Knowledge Base:**
- Connect to the 6 primary hubs: Consciousness, Dopamine, Decision-Making, Identity, AI Agents, Flow States
- Reference the user's existing frameworks (Folder Paradigm, Mental Models Taxonomy, etc.)
- Identify consilience opportunities (3+ domains converging)
- Find validation or challenges to current thinking
- Look for applications of Buddhist/neuroscience principles
3. **Prioritize:**
- Research findings that extend current understanding
- Empirical data that validates intuitive frameworks
- Novel architectures or methodologies
- Real-world implications and case studies
- Philosophical or meta-level insights
4. **Quality Standards:**
- 15-25 high-quality insights per report
- Avoid redundancy with existing knowledge base (ALWAYS search for duplicates)
- Include proper citations (paper title, authors, year)
- Tag appropriately for discoverability
- Create connections to existing permanent notes
5. **Output Requirements:**
- Create permanent notes in session folder
- Include full citations and sources
- Add relevant tags
- Note connections to existing insights
- Create changelog: CHANGELOG - Document Analysis YYYY-MM-DD.md
CRITICAL:
- ALWAYS search for duplicates before creating notes
- Store ALL extracted notes in: Brain/Document Insights/[Session-Folder]/
- Create comprehensive changelog documenting extraction process
After extraction completes:
After extraction completes, present the top findings and offer to run an insight interview before connection discovery. This captures your personal perspective alongside the external research - making the final connection map richer because it maps both what the research says AND what you actually think about it.
Summarize the 5-8 most significant extracted insights from the session folder:
Present to user:
"[N] insights extracted on [topic]. Before connection discovery, would you like to do a quick insight interview? I'll ask you 6-8 questions grounded in your existing notes and these new findings - to capture YOUR angles, reactions, and disagreements. Your responses save to
Brain/AI Extracted Notes/and the connection finder will map both sets together.Say yes to run the interview, or skip to go straight to connection discovery."
If yes: Invoke the insight-interview skill for the current topic.
Brain/AI Extracted Notes/If skip: Proceed directly to Phase 5.
If the interview ran, Phase 5 should map connections across both:
Brain/Document Insights/[Session-Folder]/Brain/AI Extracted Notes/ during this sessionStrategy Options:
Option A: Single Comprehensive Pass
Option B: Multiple Targeted Passes
Your Choice - Select based on insight count and domain diversity.
Use Task tool with subagent_type='connection-finder':
Discover connections between newly extracted insights and existing knowledge base.
STARTING POINTS:
All notes in session folder: Brain/Document Insights/[Session-Folder]/
Or specify individual notes if doing targeted passes.
CONNECTION DISCOVERY GOALS:
1. **Bridge to Existing Knowledge:**
- Connect to 102 existing AI insights
- Link to 6 primary thematic hubs (Consciousness, Dopamine, Decision-Making, Identity, AI Agents, Flow)
- Find relationships to original frameworks (Folder Paradigm, Mental Models Taxonomy, etc.)
- Map to MOCs and output content
2. **Cross-Domain Opportunities:**
- Buddhism ↔ Neuroscience ↔ AI consilience
- Decision Science ↔ Agent Architecture
- Flow States ↔ Peak Performance ↔ AI Optimization
- Identity/Belief Systems ↔ Agent Fitness Functions
- Dopamine hub connections (universal bridge)
3. **Synthesis Identification:**
- Clusters of insights ready for article development
- Consilience zones (3+ domains converging)
- Emergent patterns and meta-insights
- Framework extension opportunities
- New MOC candidates
4. **Analysis Parameters:**
- Similarity thresholds: 0.65-0.85 (strong to moderate)
- Depth: 2-3 levels from each new insight
- Focus: Non-obvious, high-value connections
5. **Output Requirements:**
- Map direct connections to existing permanent notes
- Identify bridge notes connecting multiple domains
- Highlight consilience zones and synthesis opportunities
- Create dated changelog: CHANGELOG - Connection Discovery Session YYYY-MM-DD.md
- Store changelog in: Brain/05-Meta/Changelogs/
- Update master changelog: Brain/CHANGELOG.md
- Suggest concrete article topics or framework extensions
Begin comprehensive connection mapping.
After connection-finder completes:
/Brain/05-Meta/Changelogs/Generate a comprehensive session report including:
# Deep Research Pipeline - Session Summary
**Date:** [Timestamp]
**Execution Mode:** [Directed / Autonomous]
**Topics Researched:** [List]
---
## Phase 1: Research
**Topics Selected:**
1. [Topic 1] - Rationale: [Why chosen]
2. [Topic 2] - Rationale: [Why chosen]
...
**Research Reports Created:**
- [Report 1]: /resources/[filename] ([N] papers analyzed)
- [Report 2]: /resources/[filename] ([N] papers analyzed)
**Total Papers Analyzed:** [N]
**Research Coverage:** [Domains covered]
---
## Phase 2: Insight Extraction
**Session Folder:** /Brain/Document Insights/[Session-Folder]/
**Extraction Results:**
- Unique insights extracted: [N]
- Duplicates avoided: [N]
- Very similar (evaluated): [N]
- Changelogs created: [List paths]
**Insights by Type:**
- Research findings: [N]
- Theoretical frameworks: [N]
- Production insights: [N]
- Contrarian arguments: [N]
**Top Insights:**
1. [[Note Title]] - [Brief description]
2. [[Note Title]] - [Brief description]
...
---
## Phase 3: Connection Discovery
**Changelogs Created:**
- [Path to connection discovery changelog]
**Key Findings:**
- Strong connections discovered: [N]
- Emergent patterns identified: [N]
- Cross-domain bridges: [N]
- Consilience zones: [List]
**Major Cross-Domain Bridges:**
1. [Domain A] ↔ [Domain B] - Mechanism: [How connected]
2. [Domain A] ↔ [Domain C] - Mechanism: [How connected]
**Synthesis Opportunities Identified:**
1. **Article:** "[Title]" - Ready for development
2. **Framework:** "[Name]" - Extension of existing work
3. **MOC Candidate:** "[Topic]" - Needs organization hub
---
## Impact Assessment
**Knowledge Base Enhancement:**
- New research domains added: [List]
- Existing frameworks validated/extended: [List]
- Gaps filled: [List]
- New connections to core hubs: [N]
**Most Significant Discoveries:**
1. [Discovery 1] - Why significant: [Explanation]
2. [Discovery 2] - Why significant: [Explanation]
3. [Discovery 3] - Why significant: [Explanation]
**Contrarian Insights:**
- [Insight that challenges conventional wisdom]
- [Insight that challenges existing framework]
---
## Recommended Next Steps
**High-Priority Actions:**
1. **Write Article:** "[Suggested title]"
- Sources: [[Note 1]], [[Note 2]], [[Note 3]]
- Unique angle: [What makes this distinctive]
- Target audience: [Who would benefit]
2. **Extend Framework:** "[Framework name]"
- Current state: [What exists]
- Enhancement: [What research adds]
- Application: [How to use]
3. **Create MOC:** "[Topic]"
- Notes to organize: [Count]
- Structure: [Suggested organization]
- Purpose: [Navigation goal]
**Medium-Priority:**
- [Additional recommendations]
**Long-Term Opportunities:**
- [Strategic synthesis possibilities]
---
## Session Files Created
**Research Reports:**
- [Path 1]
- [Path 2]
**Insight Notes:**
- [Session folder path] ([N] notes)
**Changelogs:**
- [Extraction changelog path]
- [Connection discovery changelog path]
- Master CHANGELOG.md updated
---
## Knowledge Base Statistics (Updated)
**Before Session:**
- Total permanent notes: [N]
- AI insights: [N]
- Document insights: [N]
**After Session:**
- Total permanent notes: [N] (+[N])
- AI insights: [N]
- Document insights: [N] (+[N])
**Growth:** +[N] notes, +[N] connections
---
## Meta-Analysis
**What Worked Well:**
- [Successes in topic selection, research, extraction, or connection]
**Challenges Encountered:**
- [Any difficulties or limitations]
**Lessons for Future Sessions:**
- [Improvements for next research pipeline run]
---
**End of Deep Research Pipeline Session**
resources/SOURCE-AUTHORITY.md./insight-interview to capture your angles before connection discoveryKey Principle: Fully autonomous execution. No human intervention required between phases. All insights stored in Document Insights folder structure to maintain separation from main Brain.
If research finds insufficient papers:
If extraction finds too many duplicates:
If connection-finder finds weak connections:
If any phase fails:
Remember: This is a knowledge base expansion engine. Your goal is to systematically grow the user's second brain with cutting-edge, well-integrated insights that enhance his intellectual capabilities and content creation potential.
| Source | Location | Read | Write | Description |
|---|---|---|---|---|
| Knowledge base analysis | knowledge-base-analysis.md | X | Current KB state for gap analysis | |
| Document Insights | Brain/Document Insights/ | X | X | Session folders for extracted insights |
| Research reports | resources/ | X | X | Generated research reports |
| Changelogs | Brain/05-Meta/Changelogs/ | X | X | Session and discovery changelogs |
| Master changelog | Brain/CHANGELOG.md | X | X | Master change log |
| Local Brain Search | resources/local-brain-search/ | X | Vector search for deduplication |
Autonomous AI crystallization - synthesizes converged thinking topics into ai-inferred notes in a dedicated folder. Never touches the human-curated permanent knowledge base and never changes a topic's status, so manual crystallization stays available to the user.
Analyze knowledge base structure and update the knowledge-base-analysis.md report
Discover non-obvious cross-domain connections through random sampling and pattern analysis
Run a full coherence sweep across the Brain Dependency Graph - computes staleness, lifecycle transitions, structural health, and generates a report
Compute lifecycle scores for all insight and framework notes - detect which notes are crystallizing or becoming generative
Create long-form articles from knowledge base insights. Use when writing articles, blog posts, Substack content, or synthesizing knowledge into publishable content. Includes tone of voice, structure templates, and knowledge base integration.