research
About
This skill performs multi-source research by launching up to 10 parallel agents (Perplexity, Claude, Gemini) to quickly gather and synthesize information. Use it for any research-related request, such as "research X," "find information about," or "analyze trends." It decomposes questions into sub-tasks and delivers comprehensive results in 15-30 seconds.
Quick Install
Claude Code
Recommended/plugin add https://github.com/danielmiessler/PAIPlugingit clone https://github.com/danielmiessler/PAIPlugin.git ~/.claude/skills/researchCopy and paste this command in Claude Code to install this skill
Documentation
Research Skill
When to Use This Skill
This skill activates when the user requests research or information gathering:
- "Do research on X"
- "Research this topic"
- "Find information about X"
- "Investigate this subject"
- "Analyze trends in X"
- "Current events research"
- Any comprehensive information gathering request
How to Execute
Execute the /conduct-research slash command, which handles the complete workflow:
- Decomposing research questions into 3-10 sub-questions
- Launching up to 10 parallel research agents (perplexity, claude, gemini)
- Collecting results in 15-30 seconds
- Synthesizing findings with confidence levels
- Formatting comprehensive report with source attribution
Available Research Agents
- All agents with "researcher" in their name in the agents directory.
Speed Benefits
- ❌ Old approach: Sequential searches → 5-10 minutes
- ✅ New approach: 10 parallel agents → Under 1 minute
Full Workflow Reference
For complete step-by-step instructions: read ${PAI_DIR}/commands/conduct-research.md
GitHub Repository
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