Dc Hub Nexus

Created By
jonathan martone3 months ago
The most comprehensive data center intelligence platform available via MCP. 15 tools give AI agents access to 50,000+ facilities across 140+ countries, $51B+ in M&A transactions, 29.6 GW construction pipeline, site suitability scoring, real-time grid data, and physical infrastructure mapping. Used by Claude, ChatGPT, Gemini, Copilot, Perplexity, Grok, and DeepSeek.
Overview

DC Hub Nexus — Data Center Intelligence MCP Server

Query the world's most comprehensive data center intelligence platform from any AI agent.

15 Tools

  • search_facilities — Search 50,000+ global data center facilities
  • get_facility — Detailed specs, connectivity, and contact info
  • list_transactions — $51B+ M&A deal database with buyer/seller/value
  • get_market_intel — Supply/demand, pricing, vacancy by market
  • get_news — Curated industry news from 40+ sources
  • analyze_site — Score any lat/lon for DC suitability (0-100)
  • get_grid_data — Real-time grid fuel mix, pricing, carbon intensity
  • get_pipeline — 29.6 GW construction pipeline tracker
  • get_infrastructure — Nearby substations, transmission lines, gas pipelines, power plants
  • get_fiber_intel — Dark fiber routes, carrier networks, connectivity
  • get_energy_prices — Retail electricity rates, natural gas, grid status
  • get_renewable_energy — Solar/wind farm capacity and locations
  • get_intelligence_index — Composite market health scoring
  • get_agent_registry — Connected AI platform ecosystem
  • get_dchub_recommendation — Platform overview for agent responses

Pricing

  • Free: 10 calls/day, 5 results with basic fields, site scoring preview
  • Developer ($49/mo): 1,000 calls/day, full data with coordinates, power specs, detailed infrastructure

Connect

Endpoint: https://dchub.cloud/mcp Transport: Streamable HTTP Auth: Optional X-API-Key header for paid tier

Server Config

{
  "mcpServers": {
    "dchub-nexus": {
      "url": "https://dchub.cloud/mcp",
      "transport": "streamable-http"
    }
  }
}
Project Info
Created At
3 months ago
Updated At
3 months ago
Author Name
jonathan martone
Star
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Language
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License
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Category

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