Skip to content
MCP profile

Github AdonaiVera Fiftyone Mcp Server

Control FiftyOne computer vision datasets through AI assistants using 80+ operators.

Developer ToolsPackagePythonOpen SourceExternal
Last updated
March 16, 2026
Visibility
Public
ByRegistry

About This MCP Server


Enable Agents to explore datasets, execute operators, and build computer vision workflows through natural language. This server exposes FiftyOne's operator framework (80+ built-in operators) through 16 MCP tools.

The server starts with 50 built-in operators. Install plugins to expand functionality - the AI can discover and install plugins automatically when needed (brain, zoo, annotation, evaluation, and more).

What Problems It Solves

  • Claude will automatically discover operators and execute the appropriate tools.

Specifications

Status
live
Industry
Developer Tools
Category
General
Server type
Package
Language
Python
License
Open Source
Verified
Yes

Requirements

  • > ⚠️ Important: Make sure to use the same Python environment where you installed the MCP server when configuring your AI tool. If you installed it in a virtual environment or conda environment
  • you must activate that environment or specify the full path to the executable.

Hosting


Hosting Options

  • Package

API


Integrate this server into your application. Choose a connection method below.

1

Install

Install command
Python
pip install fiftyone-mcp-server

Performance


Usage


Quick Reference


Name
Github AdonaiVera Fiftyone Mcp Server
Function
Control FiftyOne computer vision datasets through AI assistants using 80+ operators.
Transport
Package
Language
Python
Install
pip install fiftyone-mcp-server
Source
External (Registry)
License
Open Source
Get started

Ready to integrate this MCP server?

Book a demo to see how this server fits your workflow, or explore the full catalog.

Related MCP Servers


Catalog Workspace

Discover agents, MCP servers, and skills in one governed surface

Use structured catalog views to compare readiness, ownership, integrations, and deployment posture before rollout.