MCP Servers

A collection of Model Context Protocol servers, templates, tools and more.

Hosted Amazon Seller & Vendor MCP server. Connect Claude, ChatGPT, Cursor, Codex, Gemini, GitHub Copilot to Amazon SP-API and Ads API data

Created 5/18/2026
Updated about 4 hours ago
Repository documentation and setup instructions

Amazon Seller MCP Server - DataDoe

Hosted Amazon Seller Central & Vendor Central MCP server. Connect Claude, ChatGPT, Cursor, Codex, Gemini, and GitHub Copilot to live Amazon SP-API and Amazon Ads API data. DataDoe handles the SP-API developer approval, OAuth, and rate limits so your AI agent starts querying in under a minute.

Amazon Seller & Vendor SP-API Selling Partner API Amazon Ads API MCP Server AI clients supported smithery badge License: MIT

🔗 Start a free trial · 📘 Documentation · 📊 Amazon data schema · 🎥 Video demo


🚀 Quick start

  1. Sign up at DataDoe and connect your Amazon Seller Central or Vendor Central account.

  2. Create a DataDoe MCP API key in DataDoe MCP Integrations.

  3. Paste the config below into your AI client (Claude, Cursor, Codex, Gemini, GitHub Copilot, ChatGPT, or any MCP-capable tool):

    {
      "mcpServers": {
        "datadoe": {
          "url": "https://mcp.datadoe.com/mcp/v1",
          "headers": {
            "datadoe-mcp-key": "<YOUR_DATADOE_MCP_KEY>"
          }
        }
      }
    }
    
  4. Ask your AI agent: "Show my top 10 ASINs by revenue last month across all Amazon marketplaces."

That's it. DataDoe runs the MCP server on hosted infrastructure, so your team doesn't need to deploy anything locally or wait for Amazon SP-API developer approval.


What is DataDoe MCP?

DataDoe MCP is a hosted Model Context Protocol (MCP) server for Amazon sellers, vendors, and agencies. It exposes your live Amazon Selling Partner API (SP-API) and Amazon Ads API data through MCP tools that work with Claude, ChatGPT, Cursor, Codex CLI, Gemini CLI, GitHub Copilot, Claude Desktop, n8n, NanoClaw, and any other MCP-capable client.

Building your own Amazon SP-API integration typically requires SP-API developer registration, OAuth refresh-token flow, marketplace-specific endpoints, throttling logic, and 2-4 weeks of Amazon approval. DataDoe takes care of all of that. You get a single authenticated MCP URL, and SKU-level Amazon data - orders, sales, ads spend, traffic, inventory, listings, returns, settlements, brand analytics, catalog - comes back as structured tool responses or downloadable CSV and JSON exports.

DataDoe MCP Banner

Who is DataDoe MCP for?

  • Amazon sellers (FBA, FBM, multi-marketplace) - get instant answers from your own seller data without context-switching to Seller Central.
  • Amazon agencies managing multiple client accounts - query across every connected Seller Central / Vendor Central account from one MCP server.
  • Vendors with Vendor Central - read 1P data alongside 3P data with the same tools.
  • AI builders and developers - ship Amazon-aware AI agents, dashboards, and internal tools without writing your own SP-API integration.
  • Operations teams - automate recurring reports via Claude Code, Cursor, n8n, or any MCP-capable workflow tool.

Why use DataDoe MCP?

  • No SP-API approval needed - DataDoe handles SP-API developer registration, OAuth, refresh tokens, and rate limits on your behalf.
  • 30-second setup - paste the MCP URL and your API key into your AI client config. DataDoe runs the server on hosted infrastructure.
  • 6+ AI clients supported out of the box: Claude, ChatGPT, Cursor, Codex CLI, Gemini CLI, GitHub Copilot, plus any MCP-capable client.
  • SKU-level resolution - drill into individual ASINs, parent listings, marketplaces, time periods, ad campaigns, keyword reports, settlements, returns.
  • Multi-marketplace, multi-account - one MCP server covers every Amazon marketplace (US, UK, DE, FR, IT, ES, CA, AU, JP, MX, and more) across Seller Central and Vendor Central.
  • AI-native by design - exports_create accepts SQL-like filter groups, GROUP BY, aggregations, and date intervals, so your AI agent can build complex reports from one tool call.
  • Always-on hosted infrastructure - DataDoe manages SP-API rate limits, token rotation, and ongoing maintenance.

What can you ask DataDoe MCP?

Example questions your AI agent can answer with DataDoe MCP connected:

  • "What were my top 20 ASINs by revenue last month across all Amazon marketplaces?"
  • "Reconcile my Amazon settlements against orders for Q1, and show any discrepancies."
  • "Which Amazon Ads campaigns had ACoS over 40% last week, and what was their total spend?"
  • "Show inventory units at risk of stocking out in the next 14 days."
  • "Build me a daily KPI dashboard with sales, traffic, and ad spend for the last 90 days."
  • "Which search terms in my PPC reports drove the most clicks but zero conversions?"
  • "Pull every Amazon return for SKU ABC-123 in the last 60 days and summarize the return reasons."
  • "Compare my brand analytics search term share-of-voice month over month."

Available MCP tools

DataDoe MCP exposes the following tools to your AI client:

| Tool | Category | What it does | |---|---|---| | sellers_and_vendors_list | Account | Lists every Amazon Seller Central and Vendor Central account connected to your DataDoe organization, with marketplace, region, and Amazon Ads account info. | | organization_and_subscription_details_get | Account | Returns your DataDoe organization profile and active subscription plan. | | exports_sources_get | Data | Searches DataDoe's catalog of pre-built Amazon data export templates (orders, sales and traffic, ads performance, inventory, listings, settlements, returns, brand analytics, and more). | | exports_create | Data | Creates an Amazon data export from any source. Supports SQL-like filters, GROUP BY, aggregations (sum / avg / count / countDistinct / min / max), date intervals (DAY / WEEK / MONTH), pagination, and CSV or JSON output. | | exports_get | Data | Returns status and metadata for an in-flight or completed export job. | | exports_raw_url_get | Data | Returns a one-time presigned download URL for a completed export. | | exports_raw_download | Data | Returns the raw export content (CSV or JSON) inline in the tool response. | | datadoe_user_docs_table_of_contents_get | Docs | Returns the table of contents of the DataDoe user documentation, useful when an agent needs to look up features or capabilities on demand. | | datadoe_user_docs_page_get | Docs | Returns the full content of a named DataDoe documentation page. |


Quick setup per AI client

The snippets below are the minimum config you need. For step-by-step guides per AI client, see the Per-client setup guides list at the end of this section.

Claude Desktop · Claude.ai

{
  "mcpServers": {
    "datadoe": {
      "url": "https://mcp.datadoe.com/mcp/v1",
      "headers": {
        "datadoe-mcp-key": "<YOUR_DATADOE_MCP_KEY>"
      }
    }
  }
}

Claude Code

claude mcp add datadoe \
  --transport http \
  --url https://mcp.datadoe.com/mcp/v1 \
  --header "datadoe-mcp-key: <YOUR_DATADOE_MCP_KEY>"

Cursor

Add to ~/.cursor/mcp.json (global) or .cursor/mcp.json (per project):

{
  "mcpServers": {
    "datadoe": {
      "url": "https://mcp.datadoe.com/mcp/v1",
      "headers": {
        "datadoe-mcp-key": "<YOUR_DATADOE_MCP_KEY>"
      }
    }
  }
}

GitHub Copilot (VS Code)

Add to your VS Code mcp.json:

{
  "mcpServers": {
    "datadoe": {
      "url": "https://mcp.datadoe.com/mcp/v1",
      "headers": {
        "datadoe-mcp-key": "<YOUR_DATADOE_MCP_KEY>"
      }
    }
  }
}

Codex CLI · Gemini CLI · ChatGPT · n8n · NanoClaw · any other MCP client

DataDoe MCP works as a generic remote MCP server. Configure your client with:

  • URL: https://mcp.datadoe.com/mcp/v1
  • Transport: HTTP Streamable
  • Auth header: datadoe-mcp-key: <YOUR_DATADOE_MCP_KEY> (create a key in DataDoe MCP Integrations)

Per-client setup guides

For step-by-step setup guides per AI client, see the dedicated DataDoe documentation pages:

Full documentation root: app.datadoe.com/hub/docs


What Amazon data is available?

DataDoe MCP exposes every Amazon data table available in DataDoe, including:

  • Orders & sales: order line items, order performance, sales and traffic, refunds
  • Amazon Ads: campaigns, ad groups, keywords, search terms, sponsored products / brands / display, ACoS / ROAS / impression-share metrics
  • Inventory: FBA inventory, restock recommendations, stranded inventory, age, units at risk
  • Listings & catalog: ASIN catalog, product attributes, buy box ownership, variations
  • Finance: settlements, fees, reserves, reimbursements, deposits
  • Returns: customer returns, return reasons, FBA returns
  • Brand analytics: search query performance, market basket, repeat purchase, demographics
  • Traffic: sessions, page views, conversion rate, by ASIN, by marketplace

Full schema: app.datadoe.com/hub/data-scheme


What DataDoe MCP is NOT

To avoid confusion when evaluating Amazon MCP servers:

  • Not a self-hosted MCP server. DataDoe MCP is hosted at mcp.datadoe.com. This GitHub repository is the schema facade used to publish DataDoe MCP to public MCP registries (Official MCP Registry, mcpservers.org, glama.ai, mcpmarket.com, Cline, smithery.ai, and others).
  • Not an SP-API wrapper you operate yourself. DataDoe owns the SP-API developer registration, OAuth flow, refresh-token rotation, marketplace endpoints, and rate-limit handling. You bring your Amazon account; we handle the rest.
  • Not a free open-source server. DataDoe MCP requires a DataDoe subscription. For a free self-hosted alternative, see the community Amazon MCP servers indexed at mcpservers.org.

Documentation & resources


License

MIT. The DataDoe MCP schema facade in this repository is open-source. The hosted MCP server, DataDoe application, and DataDoe infrastructure are proprietary and operated by Deltologic.


How to start and connect locally (for indexing and listing)

This server is just a schema facade of the actual DataDoe MCP server, made for exposing DataDoe MCP to various MCP registries. It is a no-op server: it does not do anything beyond exposing the schema of DataDoe MCP. If you want to actually use DataDoe MCP, see the DataDoe MCP documentation.

1. Install dependencies

yarn install

2. Build the local server

yarn build

This compiles the TypeScript source into dist/index.js.

3. Start the server

yarn start

The server communicates over stdio, so the process is intended to be launched by your MCP client rather than opened in a browser.

4. Connect from an MCP client

For a local setup, point your client at the built entrypoint. A typical mcp.json looks like this:

{
  "mcpServers": {
    "datadoe": {
      "command": "node",
      "args": ["/absolute/path/to/datadoe-mcp/dist/index.js"]
    }
  }
}

If your client supports environment-based workspace paths, you can usually swap the absolute path for the actual clone location on your machine.


DataDoe is operated by Deltologic · datadoe.com

Quick Setup
Installation guide for this server

Install Package (if required)

npx @modelcontextprotocol/server-datadoe-mcp

Cursor configuration (mcp.json)

{ "mcpServers": { "deltologic-datadoe-mcp": { "command": "npx", "args": [ "deltologic-datadoe-mcp" ] } } }