Agent skill
perplexity
Web search and research using Perplexity AI. Use when user says "search", "find", "look up", "ask", "research", or "what's the latest" for generic queries. NOT for library/framework docs (use Context7) or workspace questions.
Install this agent skill to your Project
npx add-skill https://github.com/davila7/claude-code-templates/tree/main/cli-tool/components/skills/ai-research/perplexity
SKILL.md
Perplexity Tools
Use ONLY when user says "search", "find", "look up", "ask", "research", or "what's the latest" for generic queries. NOT for library/framework docs (use Context7), gt CLI (use Graphite MCP), or workspace questions (use Nx MCP).
Quick Reference
Which Perplexity tool?
- Need search results/URLs? → Perplexity Search
- Need conversational answer? → Perplexity Ask
- Need deep research? → Researcher agent (
/research <topic>)
NOT Perplexity - use these instead:
- Library/framework docs → Context7 MCP
- Graphite
gtCLI → Graphite MCP - THIS workspace → Nx MCP
- Specific URL → URL Crawler
Perplexity Search
When to use:
- Generic searches, finding resources
- Current best practices, recent information
- Tutorial/blog post discovery
- User says "search for...", "find...", "look up..."
Default parameters (ALWAYS USE):
mcp__perplexity__perplexity_search({
query: "your search query",
max_results: 3, // Default is 10 - too many!
max_tokens_per_page: 512 // Reduce per-result content
})
When to increase limits: Only if:
- User explicitly needs comprehensive results
- Initial search found nothing useful
- Complex topic needs multiple sources
// Increased limits (use sparingly)
mcp__perplexity__perplexity_search({
query: "complex topic",
max_results: 5,
max_tokens_per_page: 1024
})
Perplexity Ask
When to use:
- Need conversational explanation, not search results
- Synthesize information from web
- Explain concepts with current context
Usage:
mcp__perplexity__perplexity_ask({
messages: [
{
role: "user",
content: "Explain how postgres advisory locks work"
}
]
})
NOT for:
- Library documentation (use Context7)
- Deep multi-source research (use researcher agent)
Prohibited Tool
NEVER use: mcp__perplexity__perplexity_research
Use instead: Researcher agent (/research <topic>)
- Token cost: 30-50k tokens
- Provides multi-source synthesis with citations
- Use sparingly for complex questions only
Tool Selection Chain
Priority order:
- Context7 MCP - Library/framework docs
- Graphite MCP - Any
gtCLI mention - Nx MCP - THIS workspace questions
- Perplexity Search - Generic searches
- Perplexity Ask - Conversational answers
- Researcher agent - Deep multi-source research
- WebSearch - Last resort (after Perplexity exhausted)
Examples
✅ CORRECT - Use Perplexity Search:
- "Find postgres migration best practices"
- "Search for React testing tutorials"
- "Look up latest trends in microservices"
✅ CORRECT - Use Perplexity Ask:
- "Explain how postgres advisory locks work"
- "What are the trade-offs of microservices?"
❌ WRONG - Use Context7 instead:
- "Search for React hooks documentation" → Context7 MCP
- "Find Next.js routing docs" → Context7 MCP
- "Look up Temporal workflow API" → Context7 MCP
❌ WRONG - Use Graphite MCP instead:
- "Search for gt stack commands" → Graphite MCP
- "Find gt branch workflow" → Graphite MCP
❌ WRONG - Use Nx MCP instead:
- "Search for build config" (in THIS workspace) → Nx MCP
- "Find project dependencies" (in THIS workspace) → Nx MCP
Key Points
- Default to limited results - avoid context bloat
- Library docs = Context7 - ALWAYS try Context7 first
- "gt" = Graphite MCP - ANY "gt" mention uses Graphite
- Deep research = /research - NOT perplexity_research tool
- Fallback chain - Search → Ask → WebSearch (last resort)
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