skills$openclaw/research-cog
nitishgargiitd5.3k

by nitishgargiitd

research-cog – OpenClaw Skill

research-cog is an OpenClaw Skills integration for coding workflows. Deep research agent powered by CellCog. Market research, competitive analysis, stock analysis, investment research, academic research with citations. Your AI research analyst.

5.3k stars6.1k forksSecurity L1
Updated Feb 7, 2026Created Feb 7, 2026coding

Skill Snapshot

nameresearch-cog
descriptionDeep research agent powered by CellCog. Market research, competitive analysis, stock analysis, investment research, academic research with citations. Your AI research analyst. OpenClaw Skills integration.
ownernitishgargiitd
repositorynitishgargiitd/research-cog
languageMarkdown
licenseMIT
topics
securityL1
installopenclaw add @nitishgargiitd/research-cog
last updatedFeb 7, 2026

Maintainer

nitishgargiitd

nitishgargiitd

Maintains research-cog in the OpenClaw Skills directory.

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SKILL.md

name: research-cog description: Deep research agent powered by CellCog. Market research, competitive analysis, stock analysis, investment research, academic research with citations. Your AI research analyst. metadata: openclaw: emoji: "🔬"

Research Cog - Deep Research Powered by CellCog

Your AI research analyst for comprehensive, citation-backed research on any topic.


Prerequisites

This skill requires the CellCog mothership skill for SDK setup and API calls.

clawhub install cellcog

Read the cellcog skill first for SDK setup. This skill shows you what's possible.

Quick pattern (v1.0+):

# Fire-and-forget - returns immediately
result = client.create_chat(
    prompt="[your research query]",
    notify_session_key="agent:main:main",
    task_label="research-task",
    chat_mode="agent team"  # Deep research
)
# Daemon notifies you when complete - do NOT poll

What You Can Research

Competitive Analysis

Analyze companies against their competitors with structured insights:

  • Company vs. Competitors: "Compare Stripe vs Square vs Adyen - market positioning, pricing, features, strengths/weaknesses"
  • SWOT Analysis: "Create a SWOT analysis for Shopify in the e-commerce platform market"
  • Market Positioning: "How does Notion position itself against Confluence, Coda, and Obsidian?"
  • Feature Comparison: "Compare the AI capabilities of Salesforce, HubSpot, and Zoho CRM"

Market Research

Understand markets, industries, and trends:

  • Industry Analysis: "Analyze the electric vehicle market in Europe - size, growth, key players, trends"
  • Market Sizing: "What's the TAM/SAM/SOM for AI-powered customer service tools in North America?"
  • Trend Analysis: "What are the emerging trends in sustainable packaging for 2026?"
  • Customer Segments: "Identify and profile the key customer segments for premium pet food"
  • Regulatory Landscape: "Research FDA regulations for AI-powered medical devices"

Stock & Investment Analysis

Financial research with data and analysis:

  • Company Fundamentals: "Analyze NVIDIA's financials - revenue growth, margins, competitive moat"
  • Investment Thesis: "Build an investment thesis for Microsoft's AI strategy"
  • Sector Analysis: "Compare semiconductor stocks - NVDA, AMD, INTC, TSM"
  • Risk Assessment: "What are the key risks for Tesla investors in 2026?"
  • Earnings Analysis: "Summarize Apple's Q4 2025 earnings and forward guidance"

Academic & Technical Research

Deep dives with proper citations:

  • Literature Review: "Research the current state of quantum error correction techniques"
  • Technology Deep Dive: "Explain transformer architectures and their evolution from attention mechanisms"
  • Scientific Topics: "What's the latest research on CRISPR gene editing for cancer treatment?"
  • Historical Analysis: "Research the history and impact of the Bretton Woods system"

Due Diligence

Comprehensive research for decision-making:

  • Startup Due Diligence: "Research [Company Name] - founding team, funding, product, market, competitors"
  • Vendor Evaluation: "Compare AWS, GCP, and Azure for enterprise AI/ML workloads"
  • Partnership Analysis: "Research potential risks and benefits of partnering with [Company]"

Research Output Formats

CellCog can deliver research in multiple formats:

FormatBest For
Interactive HTML ReportExplorable dashboards with charts, expandable sections
PDF ReportShareable, printable professional documents
MarkdownIntegration into your docs/wikis
Plain ResponseQuick answers in chat

Specify your preferred format in the prompt:

  • "Create an interactive HTML report on..."
  • "Generate a PDF research report analyzing..."
  • "Give me a markdown summary of..."

When to Use Agent Team Mode

For research, always use chat_mode="agent team" (the default).

Agent team mode enables:

  • Multi-source research and cross-referencing
  • Citation verification
  • Deeper analysis with multiple reasoning passes
  • Higher quality, more comprehensive outputs

Use chat_mode="agent" only for trivial lookups like "What's Apple's stock ticker?"


Research Quality Features

Citations (On Request)

Citations are NOT automatic. CellCog focuses on delivering accurate, well-researched content by default.

If you need citations:

  • Explicitly request them: "Include citations for all factual claims with source URLs"
  • Specify format: "Provide citations as footnotes" or "Include a references section at the end"
  • Indicate placement: "Citations inline" vs "Citations in appendix"

Without explicit citation requests, CellCog prioritizes delivering accurate information efficiently.

Data Accuracy

CellCog cross-references multiple sources for financial and statistical data, ensuring accuracy even without explicit citations.

Structured Analysis

Complex research is organized with clear sections, executive summaries, and actionable insights.

Visual Elements

Research reports can include:

  • Charts and graphs
  • Comparison tables
  • Timeline visualizations
  • Market maps

Example Research Prompts

Quick competitive intel:

"Compare Figma vs Sketch vs Adobe XD for enterprise UI design teams. Focus on collaboration features, pricing, and Figma's position after the Adobe acquisition failed."

Deep market research:

"Create a comprehensive market research report on the AI coding assistant market. Include market size, growth projections, key players (GitHub Copilot, Cursor, Codeium, etc.), pricing models, and enterprise adoption trends. Deliver as an interactive HTML report."

Investment analysis:

"Build an investment analysis for Palantir (PLTR). Cover business model, government vs commercial revenue mix, AI product strategy, valuation metrics, and key risks. Include relevant charts."

Academic deep dive:

"Research the current state of nuclear fusion energy. Cover recent breakthroughs (NIF, ITER, private companies like Commonwealth Fusion), technical challenges remaining, timeline to commercial viability, and investment landscape."


Tips for Better Research

  1. Be specific: "AI market" is vague. "Enterprise AI automation market in healthcare" is better.

  2. Specify timeframe: "Recent" is ambiguous. "2025-2026" or "last 6 months" is clearer.

  3. Define scope: "Compare everything about X and Y" leads to bloat. "Compare X and Y on pricing, features, and market positioning" is focused.

  4. Request structure: "Include executive summary, key findings, and recommendations" helps organize output.

  5. Mention output format: "Deliver as PDF" or "Create interactive HTML dashboard" gets you the right format.

README.md

No README available.

Permissions & Security

Security level L1: Low-risk skills with minimal permissions. Review inputs and outputs before running in production.

Requirements

This skill requires the CellCog mothership skill for SDK setup and API calls. ```bash clawhub install cellcog ``` **Read the cellcog skill first** for SDK setup. This skill shows you what's possible. **Quick pattern (v1.0+):** ```python

FAQ

How do I install research-cog?

Run openclaw add @nitishgargiitd/research-cog in your terminal. This installs research-cog into your OpenClaw Skills catalog.

Does this skill run locally or in the cloud?

OpenClaw Skills execute locally by default. Review the SKILL.md and permissions before running any skill.

Where can I verify the source code?

The source repository is available at https://github.com/openclaw/skills/tree/main/skills/nitishgargiitd/research-cog. Review commits and README documentation before installing.