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autosolutionsai-didac

Deep Research

by autosolutionsai-didac · GitHub ↗ · v1.0.0 · MIT-0
cross-platform ✓ Security Clean
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Install in OpenClaw
/install autosolutions-deep-research
Description
Conduct deep multi-phase research using parallel subagents and iterative search. Use for deep research requests, comprehensive analysis, competitive intellig...
README (SKILL.md)

Deep Research Skill

Overview

This skill conducts thorough, multi-phase research using parallel subagents and iterative search methodology. It simulates ChatGPT Deep Research and Anthropic Deep Search by breaking complex topics into sub-questions, distributing work across 6-10 parallel research agents, and synthesizing findings into a structured report.

When to Use

Use this skill when the user requests:

  • Deep research on a topic
  • Comprehensive analysis
  • Competitive intelligence
  • Market research
  • Thorough investigation (not quick facts)
  • Multi-angle exploration of complex subjects

Research Methodology

Core Principles

  1. Multi-pass queries — Never one-and-done; iterate based on findings
  2. Source triangulation — Verify claims across 3-5 independent sources
  3. Primary source hunting — Find original studies, docs, not just blog posts
  4. Contradiction spotting — Flag where sources disagree; don't hide uncertainty
  5. Synthesis over summary — Connect dots, identify patterns, surface insights

Parallel Agent Architecture

For deep research, spawn 6-10 subagents to explore different angles simultaneously:

Research Lead (you)
├── Agent 1: Background & definitions
├── Agent 2: Market/industry landscape
├── Agent 3: Key players/competitors
├── Agent 4: Technology/trends
├── Agent 5: Challenges/risks
├── Agent 6: Opportunities/future outlook
├── Agent 7: Case studies/examples
├── Agent 8: Data/statistics
└── Agent 9-10: Specialized deep-dives (as needed)

Search Tool Strategy

Use web_search with different modes per phase:

Mode Use Case
deep-reasoning Initial exploration, complex queries
deep Broad topic coverage, 20-30 results
neural Semantic matching, finding relevant pages
fast Quick fact-checks, specific lookups
instant Verifying names, dates, basic facts

Use web_fetch to:

  • Extract full article content from promising URLs
  • Read primary sources, studies, documentation
  • Get details that search snippets miss

Workflow

Phase 1: Scoping (5 min)

  1. Clarify the topic — Ask user if the request is ambiguous
  2. Identify sub-questions — Break the topic into 6-10 research angles
  3. Define success — What does a good answer look like?

Example sub-question breakdown for "AI agent platforms":

  • What are AI agent platforms and how do they work?
  • What's the market size and growth trajectory?
  • Who are the major players (established + startups)?
  • What technologies power these platforms?
  • What are the main use cases?
  • What challenges/limitations exist?
  • What's the competitive landscape?
  • What trends are emerging?

Phase 2: Parallel Research (15-25 min)

Spawn subagents with sessions_spawn for each research angle:

# Example subagent spawn
sessions_spawn(
  task="Research [specific angle]. Use web_search with mode=deep-reasoning, 20-30 results. Fetch full content from 5-10 key sources. Return: key findings, statistics, quotes with sources, contradictions spotted.",
  runtime="subagent",
  mode="run"
)

Each subagent should:

  • Use appropriate web_search mode for their angle
  • Fetch 5-10 full articles with web_fetch
  • Return structured findings with source citations
  • Flag uncertainties or conflicting information

Phase 3: Synthesis (10-15 min)

As research lead, consolidate findings:

  1. Aggregate results — Collect all subagent outputs
  2. Identify patterns — What themes emerge across angles?
  3. Spot contradictions — Where do sources disagree?
  4. Fill gaps — Run targeted searches for missing pieces
  5. Verify claims — Cross-check key statistics across sources

Phase 4: Report Writing (10 min)

Structure the final report as follows:

Output Format

# [Research Topic]

## Executive Brief

[150-250 words: The 3-5 most important takeaways. Lead with the answer. What should the reader know after finishing this report?]

---

## 1. Background & Context

[Foundational information, definitions, why this matters]

## 2. [Key Theme 1]

[Deep dive with supporting evidence]

## 3. [Key Theme 2]

[Deep dive with supporting evidence]

## 4. [Key Theme 3]

[Deep dive with supporting evidence]

## 5. Challenges & Risks

[What could go wrong, limitations, open questions]

## 6. Opportunities & Outlook

[Future trends, emerging developments, what to watch]

## Key Takeaways

- [Bulleted summary of 5-7 most important points]

---

## Sources

[Numbered list with full URLs, titles, and 1-line context for each source]

1. [Title](URL) — [Brief context: what this source contributed]
2. [Title](URL) — [Brief context]
...

Citation Guidelines

  • In-text — Use numbered brackets: [1], [2-4], [5, 7]
  • Sources section — Full URL, title, and 1-line context
  • Minimum sources — 20-30 for deep research
  • Quality over quantity — Prefer primary sources, industry reports, reputable publications

Tool Usage

web_search

# Broad exploration
web_search query="[topic]" type="deep-reasoning" count=30 freshness="year"

# Targeted lookup
web_search query="[specific fact]" type="fast" count=10

# Recent developments
web_search query="[topic]" type="neural" count=20 freshness="month"

web_fetch

# Extract full content
web_fetch url="https://example.com/article" extractMode="markdown" maxChars=5000

sessions_spawn (for parallel research)

# Spawn research subagent
sessions_spawn(
  task="Research [specific angle]. Search with mode=deep-reasoning, 25 results. Fetch 8-10 full articles. Return structured findings with citations.",
  runtime="subagent",
  mode="run"
)

Quality Checks

Before delivering the report, verify:

  • Executive brief captures the 3-5 most important takeaways
  • All major claims have 2+ source citations
  • Contradictions/uncertainties are flagged, not hidden
  • Sources section has 20-30 entries with full URLs
  • Report answers the original question thoroughly
  • No obvious gaps in coverage

Adaptation

For Quick Research (\x3C10 min)

  • Skip subagent spawning
  • Run 3-5 targeted searches yourself
  • Aim for 10-15 sources
  • Condense report structure

For Ultra-Deep Research (60+ min)

  • Spawn 10-15 subagents
  • Include primary source documents, academic papers
  • Add data tables, comparisons, timelines
  • Include appendix with raw findings

Notes

  • Context efficiency — Subagents run in isolated sessions; only their findings load into your context
  • Parallelism — Spawn all subagents at once, then sessions_yield to wait for completion
  • Iterative — If initial findings reveal new angles, spawn follow-up agents
  • Time boxing — Set runTimeoutSeconds on subagents to prevent runaway research
Usage Guidance
This skill appears to do what it says: orchestrate parallel subagents to perform deep web research. Before installing, consider operational and policy implications: the workflow calls for fetching a large number of full articles (potentially from paywalled or copyrighted sources) and spawning multiple parallel subagents, which can increase API usage, generate rate-limit errors, or violate source terms of service. Confirm that your platform's web_fetch respects robots.txt and paywalls, and that you are comfortable with the volume of external data being retrieved and returned to users. If you need stricter limits, ask the developer or adjust the skill to limit subagents, lower the minimum source count, or require an approval step before large-scale fetches.
Capability Analysis
Type: OpenClaw Skill Name: autosolutions-deep-research Version: 1.0.0 The skill bundle provides a structured framework for an AI agent to perform multi-phase deep research by orchestrating sub-agents and utilizing web search tools. The instructions in SKILL.md are well-aligned with the stated purpose of information gathering and synthesis, and there is no evidence of malicious intent, data exfiltration, or unauthorized command execution.
Capability Assessment
Purpose & Capability
Name/description match the content of SKILL.md. The skill's requests (spawn subagents, run web_search and web_fetch, synthesize findings) are coherent with a multi-phase deep research workflow. No unrelated binaries, env vars, or config paths are requested.
Instruction Scope
Instructions explicitly direct spawning 6–10 subagents and fetching many sources (20–30 minimum, 5–10 full articles per subagent). This is consistent with 'deep research' but grants the agent broad discretion to perform heavy web crawling and content extraction. There are potential operational/privacy considerations (rate limits, copyright/paywall scraping, volume of data retrieved), but no instructions to access local files or unrelated credentials.
Install Mechanism
No install spec and no code files — instruction-only. Nothing is downloaded or written to disk by the skill itself, which minimizes installation risk.
Credentials
The skill requires no environment variables, credentials, or config paths. There is no disproportionate request for secrets or unrelated tokens.
Persistence & Privilege
always:false and default autonomous invocation are used. The skill does not request permanent presence or modify other skills. Autonomous use combined with heavy external fetching is notable operationally but not a privilege escalation.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install autosolutions-deep-research
  3. After installation, invoke the skill by name or use /autosolutions-deep-research
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v1.0.0
Initial release - parallel subagent research methodology
Metadata
Slug autosolutions-deep-research
Version 1.0.0
License MIT-0
All-time Installs 0
Active Installs 0
Total Versions 1
Frequently Asked Questions

What is Deep Research?

Conduct deep multi-phase research using parallel subagents and iterative search. Use for deep research requests, comprehensive analysis, competitive intellig... It is an AI Agent Skill for Claude Code / OpenClaw, with 103 downloads so far.

How do I install Deep Research?

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

Is Deep Research free?

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

Which platforms does Deep Research support?

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

Who created Deep Research?

It is built and maintained by autosolutionsai-didac (@autosolutionsai-didac); the current version is v1.0.0.

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