Deep Research Agent
/install deep-research-agent
Research Agent — Deep Investigation on Any Topic
A structured research workflow that turns a vague question into a comprehensive analysis. 5 research modes, each with a clear output format. Supports web search, source evaluation, and structured reporting.
Research Modes
| Mode | Trigger | Output |
|---|---|---|
| Quick | "What is X?" / "Tell me about X" | 1-paragraph summary + 3 key facts |
| Deep Dive | "Research X" / "Deep dive into X" | Full analysis report |
| Compare | "Compare X vs Y" / "X or Y?" | Comparison matrix + recommendation |
| Landscape | "What's out there for X?" / "Alternatives to X" | Market map + positioning |
| Evaluate | "Should we use X?" / "Is X worth it?" | Decision framework with scoring |
How to Use
Quick Research (30 seconds)
"What is gstack?"
"Tell me about Claude Code skills"
→ Web search, extract key facts, 1-paragraph summary. No fluff.
Deep Dive (2-5 minutes)
"Research the AI coding agent landscape"
"Deep dive into Agent Skills standard"
→ Spawn subagent (Sonnet) with the Deep Dive prompt. Searches multiple sources, cross-references, identifies patterns, writes RESEARCH.md.
Compare (1-3 minutes)
"Claude Code vs Cursor vs Codex"
"RICE vs Kano vs ICE for prioritization"
"Notion vs Linear vs Jira"
→ Side-by-side comparison table with scoring across key dimensions. Includes a recommendation with reasoning.
Landscape Analysis (3-5 minutes)
"What open source projects exist for X?"
"Map the competitive landscape for X"
"What tools do PMs use for X?"
→ Categorized map of existing solutions. For each: what it does, what it misses, where the gap is.
Evaluate (2-3 minutes)
"Should we build on X or Y?"
"Is it worth adopting X?"
"Pros and cons of using X for our case"
→ Decision matrix scoring across dimensions (cost, effort, risk, fit, longevity). Recommendation with confidence level.
Phase Details
Deep Dive Prompt
Spawn a subagent (Sonnet) with this research methodology:
-
Define the question. Restate the research question. What specifically are we trying to find out?
-
Source gathering. Search for:
- Official docs / primary sources (most reliable)
- Community discussions (Reddit, HN, Discord — real user opinions)
- Technical analysis (blog posts, benchmarks, comparisons)
- GitHub metrics (stars, activity, issues, contributors)
- Commercial context (funding, team, business model)
-
Source evaluation. For each source:
- Credibility: official vs community vs opinion
- Recency: when was this published/updated?
- Bias: does the author have a stake in the outcome?
-
Pattern extraction. What themes emerge across sources?
- Points of agreement (high confidence)
- Points of disagreement (needs further investigation)
- Gaps in available information
-
Structured output. Write
RESEARCH.mdwith:- Executive summary (3-5 sentences)
- Key findings (numbered, with sources)
- Detailed analysis (organized by theme)
- Gaps and caveats (what we couldn't verify)
- Recommendation (if applicable)
- Sources (with URLs)
Compare Prompt
For comparing N items across M dimensions:
-
Define comparison axis. What dimensions matter for this decision?
- Functional: what can it do?
- Performance: how fast/reliable?
- Cost: pricing model, free tier?
- Ecosystem: integrations, community, docs?
- Maturity: how battle-tested?
-
Score each item (1-5 per dimension):
| Dimension | Option A | Option B | Option C | |---------------|----------|----------|----------| | Feature set | ⭐⭐⭐⭐ | ⭐⭐⭐ | ⭐⭐⭐⭐⭐ | | Ease of use | ⭐⭐⭐⭐⭐ | ⭐⭐⭐ | ⭐⭐ | -
Context-specific recommendation. Not "A is best" but "A is best IF you need X, B if you need Y."
Landscape Prompt
For mapping a space:
-
Categorize solutions:
- Direct competitors (same approach, same users)
- Adjacent tools (different approach, overlapping use case)
- Workarounds (not products, but how people solve it today)
- Emerging (new, not proven yet)
-
For each solution:
- What it does (1 sentence)
- What it does well (strength)
- What it misses (gap)
- Who should use it (ideal user)
-
Identify the gap. Where is nobody doing a good job? That's the opportunity.
Output Files
RESEARCH.md— Deep dive report (full analysis with sources)- Comparison results go to stdout (capture in conversation)
- Landscape maps go to stdout or
LANDSCAPE.mdif long
Model Selection
| Mode | Model | Why |
|---|---|---|
| Quick | Haiku | Simple lookup, fast answer |
| Deep Dive | Sonnet | Needs reasoning, source evaluation |
| Compare | Sonnet | Needs judgment for scoring |
| Landscape | Sonnet | Needs categorization and pattern recognition |
| Evaluate | Sonnet | Needs decision-making framework |
Tips
- Be specific. "Research AI" is too broad. "Research AI coding agents for solo developers" is actionable.
- State your goal. "I need to decide between X and Y" gives the research direction.
- Time-box it. "Give me the top 5, not top 50" keeps it focused.
- Ask for sources. "Show me where you found this" for verification.
- Make sure OpenClaw is installed (local or Docker)
- Run the install command in chat:
/install deep-research-agent - After installation, invoke the skill by name or use
/deep-research-agent - Provide required inputs per the skill's parameter spec and get structured output
What is Deep Research Agent?
Deep research and analysis agent for any topic. Use when the user wants to research a topic, analyze competitors, evaluate technologies, compare tools, inves... It is an AI Agent Skill for Claude Code / OpenClaw, with 813 downloads so far.
How do I install Deep Research Agent?
Run "/install deep-research-agent" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.
Is Deep Research Agent free?
Yes, Deep Research Agent is completely free, licensed under MIT-0. You can download, install and use it at no cost.
Which platforms does Deep Research Agent support?
Deep Research Agent is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).
Who created Deep Research Agent?
It is built and maintained by Jahonn Ding (@jahonn); the current version is v1.0.0.