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auto-research
// Deep strategic research engine — decomposes questions into parallel research threads, spawns multiple agents, and synthesizes into actionable strategic analysis
// Deep strategic research engine — decomposes questions into parallel research threads, spawns multiple agents, and synthesizes into actionable strategic analysis
Generate personalized news intelligence with verified sources (7-day freshness requirement)
Evaluate URLs and tools — check vault coverage, assess relevance, recommend save or skip
Create user stories with duplicate checking across any project tracker (Linear, GitHub Issues, Jira)
Audit and export open issues from any project tracker with summary analysis and vault archival
Generate product requirements documents with optional publishing to Confluence or other wiki platforms
Generate categorized release notes from any source (GitHub, Linear, Jira, or manual input) with optional publishing
| name | auto-research |
| description | Deep strategic research engine — decomposes questions into parallel research threads, spawns multiple agents, and synthesizes into actionable strategic analysis |
| roles | ["product-manager","engineering-lead","founder","all"] |
| integrations | [] |
Inspired by Karpathy's autoresearch — but for strategic thinking instead of ML training.
Check agent_mode in 00-inbox/MY-PROFILE.md frontmatter:
agent_mode: team — use the full parallel agent execution strategy (5-7 agents). This skill benefits massively from team mode.agent_mode: solo — run 2-3 sequential research passes with WebSearch/WebFetch, produce a lighter analysis without the full multi-thread structure./auto-researchThe user provides a strategic question or topic as the command argument. Examples:
Break the user's strategic question into 5-7 research threads that together will provide a comprehensive answer. Each thread should be:
Decomposition framework:
Not all threads apply to every question. Pick the 5-7 most relevant. Thread 7 (Emerging tech) should ALWAYS be included — the user specifically wants to stay ahead of concepts that aren't mainstream yet.
Before spawning agents:
05-knowledge/ for existing frameworks and mental models04-projects/ for project-specific context if relevantCRITICAL: Launch ALL agents in a single message. Use run_in_background: true for all agents.
Each agent gets a detailed prompt following this template:
You are a strategic research analyst investigating a specific thread of a larger strategic question.
MAIN QUESTION: [user's original question]
YOUR THREAD: [specific research thread]
EXISTING CONTEXT: [any relevant vault context]
RESEARCH METHODOLOGY:
1. WebSearch for 8-12 high-quality sources (prioritize: research reports, expert analyses, company filings, academic papers, industry publications — NOT listicles or superficial blog posts)
2. For each source found, WebFetch to read the full content and extract key arguments, data points, and frameworks
3. Look for CONFLICTING viewpoints — don't just confirm one narrative
4. Identify specific data points, statistics, and concrete examples
5. Note the credibility and potential bias of each source
6. FOR EMERGING TECH THREADS: Go beyond polished sources. Search GitHub repos (README, issues, discussions), Twitter/X threads from builders, Discord/forum discussions, conference talk summaries, arXiv preprints, and early blog posts. The goal is to surface concepts that are pre-mainstream but technically promising. For each concept found, assess: maturity level, technical approach, relevance to the user's use case, and what it would take to adopt/integrate.
OUTPUT FORMAT (return ALL of this):
## Thread: [thread name]
### Key Findings (3-5 bullet points)
- Finding with source attribution
### Evidence & Data Points
- Specific statistics, market data, examples with sources
### Expert/Notable Perspectives
- Named perspectives from credible voices
### Implications for [user's context]
- What this means specifically for the user's situation
### Confidence Level
- HIGH / MEDIUM / LOW with reasoning
### Sources
- Numbered list of actual URLs consulted
Agent naming convention: research-[thread-slug] (e.g., research-market-forces, research-historical-precedent)
Once all agents return, synthesize into a single strategic analysis document:
---
type: strategic-research
domain: [auto-detect from question]
date: YYYY-MM-DD
question: "[original question]"
threads: [list of research threads]
confidence: [overall confidence HIGH/MEDIUM/LOW]
tags:
- auto-research
- strategy
- [topic tags]
status: complete
---
# [Strategic Question as Title]
## Executive Summary
3-5 sentences capturing the core insight. Lead with the answer, not the process.
## The Strategic Landscape
Synthesized view across all research threads. Not a thread-by-thread dump — weave findings together into a coherent narrative.
## Key Forces at Play
The 3-4 most important dynamics shaping this question, with evidence from multiple threads.
## Scenarios
### Scenario A: [Most Likely] — X% confidence
What happens, timeline, implications
### Scenario B: [Optimistic/Alternative]
What happens, timeline, implications
### Scenario C: [Worst Case/Disruption]
What happens, timeline, implications
## Emerging Tech & Architectures to Watch
Concepts, projects, and frameworks that are still in development/discussion but could be foundational. For each:
- **What it is:** One-paragraph explanation
- **Maturity:** Pre-alpha / Alpha / Early adoption / Growing community
- **Technical approach:** How it works architecturally
- **Relevance to our use case:** Why it matters for us specifically
- **Adoption path:** What it would take to integrate/adopt — effort, risks, dependencies
- **Key links:** GitHub repo, paper, discussion thread
## Strategic Options
For each option:
- **Description:** What this means concretely
- **Pros:** With evidence
- **Cons:** With evidence
- **Prerequisites:** What needs to be true
- **Timeline:** When to decide/act
- **Emerging tech leverage:** Which emerging concepts from above could strengthen this option
## Recommended Actions
Prioritized, concrete, time-bound action items. Not vague "consider X" — specific "do X by Y because Z."
Include a separate "Tech Bets" subsection: which emerging projects to start experimenting with now, even if they're not production-ready.
## Contrarian View
The strongest argument against the consensus/recommended path. What could make all of this wrong?
## Confidence & Gaps
- What we're confident about and why
- What we couldn't determine and what additional research would help
- Key assumptions that should be monitored
## Sources
Consolidated, deduplicated list of all sources across threads.
05-knowledge/research/YYYY-MM-DD-[slug].md05-knowledge/research/YYYY-MM-DD-[slug]-summary.mdQuestion: "If generic LLM models get better over time, what's the future for LLM wrapper companies like Katalon or Scout?"
Threads:
05-knowledge/research/This skill requires WebSearch and WebFetch tools. If these are unavailable:
05-knowledge/ content