deep-research-suite

Deep Research Suite - One command to aggregate, analyze, and synthesize research from multiple sources. Search → Extract → Summarize → Report.

Safety Notice

This listing is from the official public ClawHub registry. Review SKILL.md and referenced scripts before running.

Copy this and send it to your AI assistant to learn

Install skill "deep-research-suite" with this command: npx skills add aptratcn/deep-research-suite

Deep Research Suite 🔬

One command to aggregate, analyze, and synthesize research from multiple sources.

What It Does

Input: "Research AI agent memory management trends 2026"

Output:
1. Search 5+ sources
2. Extract key findings
3. Identify patterns
4. Generate structured report
5. Save to file for reference

Research Pipeline

Stage 1: Multi-Source Search

Sources to check:
- Web search (general)
- GitHub (code/examples)
- Hacker News (discussions)
- ArXiv (papers, if relevant)
- Reddit (community opinions)
- News sites (recent articles)

Stage 2: Content Extraction

For each source:
1. Fetch content
2. Extract main points
3. Identify key facts/statistics
4. Note source credibility
5. Tag by topic relevance

Stage 3: Synthesis

Combine findings:
- Group by theme
- Identify consensus views
- Note contradictions
- Highlight emerging trends
- Flag outdated info

Stage 4: Report Generation

Output format:

# Research Report: [Topic]
**Date**: YYYY-MM-DD
**Sources**: X sources analyzed

## Executive Summary
[2-3 sentence overview]

## Key Findings

### Trend 1: [Name]
- Source: X, Y, Z
- Evidence: ...
- Implications: ...

### Trend 2: [Name]
...

## Contradictions / Debates
- View A says: ... (Source: X)
- View B says: ... (Source: Y)
- Assessment: ...

## Actionable Insights
1. ...
2. ...

## Sources
- [Source 1](url) - relevance: high
- [Source 2](url) - relevance: medium

Usage Examples

Quick Research

User: "What's new in LLM context window management?"

Agent:
[Searching 5 sources...]
[Extracting key findings...]
[Synthesizing...]

## LLM Context Window Management - 2026 Update

### Key Trends
1. **Dynamic Context Sizing** - Models now auto-adjust context based on task complexity
2. **Semantic Chunking** - Replace fixed-size chunks with meaning-based segments
3. **Context Compression** - 10x compression with minimal info loss

[Full report saved to memory/research/llm-context-2026-04-21.md]

Deep Dive

User: "Deep research on AI agent subagent architecture patterns"

Agent:
[This will take 5-10 minutes for comprehensive analysis]

Stage 1/4: Multi-source search...
- GitHub: 15 repos found
- Papers: 3 relevant
- Discussions: 12 threads

Stage 2/4: Content extraction...
- Analyzing top 10 GitHub repos...
- Extracting paper findings...
- Summarizing discussions...

Stage 3/4: Synthesis...
- Identified 4 architecture patterns
- Found 2 debates
- 3 emerging trends

Stage 4/4: Report generation...

[Report saved to memory/research/subagent-architecture-2026-04-21.md]

Competitive Analysis

User: "Compare popular AI agent memory solutions"

Agent:
[Generating comparison matrix...]

| Solution | Approach | Pros | Cons | Stars |
|----------|----------|------|------|-------|
| Mem0 | Persistent memory | Easy integration | Limited context | 25k |
| Letta | Stateful agents | Full state | Complex setup | 15k |
| LangGraph | Graph memory | Flexible | Learning curve | 100k |

[Full comparison saved to memory/research/memory-solutions-comparison.md]

Output Files

All research saved to memory/research/:

memory/research/
├── llm-context-2026-04-21.md
├── subagent-architecture-2026-04-21.md
└── memory-solutions-comparison.md

Integration with Other Skills

  • Workflow Checkpoint - Research is a multi-step workflow
  • Memory Guard - Save key findings to long-term memory
  • Content Creator - Generate polished reports

Anti-Patterns

❌ Don't rely on single source ❌ Don't skip source credibility check ❌ Don't present outdated info as current ❌ Don't fabricate sources or statistics

License

MIT

Source Transparency

This detail page is rendered from real SKILL.md content. Trust labels are metadata-based hints, not a safety guarantee.

Related Skills

Related by shared tags or category signals.

Research

Deep Research Suite

Deep Research Suite - One command to aggregate, analyze, and synthesize research from multiple sources. Search → Extract → Summarize → Report.

Registry SourceRecently Updated
880Profile unavailable
Research

Expert Role

动态思考的领域专家角色扮演技能。当用户需要深度专业分析时使用。自动识别问题领域,扮演该领域顶尖专家,通过内部思考框架、自我批判、多质量标准迭代,提供兼具深度、广度和实用性的专家级见解。

Registry SourceRecently Updated
1331Profile unavailable
Research

financial-report-analysis

上市公司财务报表智能分析 - 自动解析资产负债表、利润表、现金流量表,生成专业财务分析报告

Registry SourceRecently Updated
5700Profile unavailable
Research

McKinsey-style Decision Memo Writer

Turn long documents, reports, proposals, and email threads into decision-ready memos with key points, risks, open questions, and next steps.

Registry Source
3650Profile unavailable