Exa Neural Search MCP is a research claude skill built by Affaan M. Best for: Developers and researchers use this to find current information, code examples, company intelligence, and professional profiles without leaving Claude..

What it does
Search web, code, companies, and people using Exa's neural search engine via MCP.
Category
research
Created by
Affaan M
Last updated
Claude Skillresearch GitHub-backed CuratedintermediateClaude Code

Exa Neural Search MCP

Search web, code, companies, and people using Exa's neural search engine via MCP.

Skill instructions


name: exa-search description: Neural search via Exa MCP for web, code, and company research. Use when the user needs web search, code examples, company intel, people lookup, or AI-powered deep research with Exa's neural search engine.

Exa Search

Neural search for web content, code, companies, and people via the Exa MCP server.

When to Activate

  • User needs current web information or news
  • Searching for code examples, API docs, or technical references
  • Researching companies, competitors, or market players
  • Finding professional profiles or people in a domain
  • Running background research for any development task
  • User says "search for", "look up", "find", or "what's the latest on"

MCP Requirement

Exa MCP server must be configured. Add to ~/.claude.json:

"exa-web-search": {
  "command": "npx",
  "args": ["-y", "exa-mcp-server"],
  "env": { "EXA_API_KEY": "YOUR_EXA_API_KEY_HERE" }
}

Get an API key at exa.ai.

Core Tools

web_search_exa

General web search for current information, news, or facts.

web_search_exa(query: "latest AI developments 2026", numResults: 5)

Parameters:

| Param | Type | Default | Notes | |-------|------|---------|-------| | query | string | required | Search query | | numResults | number | 8 | Number of results |

web_search_advanced_exa

Filtered search with domain and date constraints.

web_search_advanced_exa(
  query: "React Server Components best practices",
  numResults: 5,
  includeDomains: ["github.com", "react.dev"],
  startPublishedDate: "2025-01-01"
)

Parameters:

| Param | Type | Default | Notes | |-------|------|---------|-------| | query | string | required | Search query | | numResults | number | 8 | Number of results | | includeDomains | string[] | none | Limit to specific domains | | excludeDomains | string[] | none | Exclude specific domains | | startPublishedDate | string | none | ISO date filter (start) | | endPublishedDate | string | none | ISO date filter (end) |

get_code_context_exa

Find code examples and documentation from GitHub, Stack Overflow, and docs sites.

get_code_context_exa(query: "Python asyncio patterns", tokensNum: 3000)

Parameters:

| Param | Type | Default | Notes | |-------|------|---------|-------| | query | string | required | Code or API search query | | tokensNum | number | 5000 | Content tokens (1000-50000) |

company_research_exa

Research companies for business intelligence and news.

company_research_exa(companyName: "Anthropic", numResults: 5)

Parameters:

| Param | Type | Default | Notes | |-------|------|---------|-------| | companyName | string | required | Company name | | numResults | number | 5 | Number of results |

people_search_exa

Find professional profiles and bios.

people_search_exa(query: "AI safety researchers at Anthropic", numResults: 5)

crawling_exa

Extract full page content from a URL.

crawling_exa(url: "https://example.com/article", tokensNum: 5000)

Parameters:

| Param | Type | Default | Notes | |-------|------|---------|-------| | url | string | required | URL to extract | | tokensNum | number | 5000 | Content tokens |

deep_researcher_start / deep_researcher_check

Start an AI research agent that runs asynchronously.

# Start research
deep_researcher_start(query: "comprehensive analysis of AI code editors in 2026")

# Check status (returns results when complete)
deep_researcher_check(researchId: "<id from start>")

Usage Patterns

Quick Lookup

web_search_exa(query: "Node.js 22 new features", numResults: 3)

Code Research

get_code_context_exa(query: "Rust error handling patterns Result type", tokensNum: 3000)

Company Due Diligence

company_research_exa(companyName: "Vercel", numResults: 5)
web_search_advanced_exa(query: "Vercel funding valuation 2026", numResults: 3)

Technical Deep Dive

# Start async research
deep_researcher_start(query: "WebAssembly component model status and adoption")
# ... do other work ...
deep_researcher_check(researchId: "<id>")

Tips

  • Use web_search_exa for broad queries, web_search_advanced_exa for filtered results
  • Lower tokensNum (1000-2000) for focused code snippets, higher (5000+) for comprehensive context
  • Combine company_research_exa with web_search_advanced_exa for thorough company analysis
  • Use crawling_exa to get full content from specific URLs found in search results
  • deep_researcher_start is best for comprehensive topics that benefit from AI synthesis

Related Skills

  • deep-research — Full research workflow using firecrawl + exa together
  • market-research — Business-oriented research with decision frameworks

Use this skill

Most skills are portable instruction packages. Claude Code supports SKILL.md directly. Other agents can use adapted files like AGENTS.md, .cursorrules, and GEMINI.md.

Claude Code

Save SKILL.md into your Claude Skills folder, then restart Claude Code.

mkdir -p ~/.claude/skills/exa-neural-search-mcp && curl -L "https://raw.githubusercontent.com/affaan-m/everything-claude-code/HEAD/.agents/skills/exa-search/SKILL.md" -o ~/.claude/skills/exa-neural-search-mcp/SKILL.md

Installs to ~/.claude/skills/exa-neural-search-mcp/SKILL.md.

Use cases

Developers and researchers use this to find current information, code examples, company intelligence, and professional profiles without leaving Claude.

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Stats

Installs0
GitHub Stars173.4k
Forks26873
LicenseMIT
UpdatedMar 27, 2026