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Integrates the Roboflow platform with Claude Code to manage computer vision datasets, trigger training runs, and perform inference directly from the CLI. It ena
Integrates the Roboflow platform with Claude Code to manage computer vision datasets, trigger training runs, and perform inference directly from the CLI. It enables users to search Roboflow Universe for public datasets and handle image uploads or model evaluations using natural language commands.
A Model Context Protocol (MCP) server that exposes the Roboflow platform API as tools in Claude Code. Manage datasets, trigger training runs, search Universe, and run inference — all from the CLI.
Requirements: Python 3.10+, a Roboflow API key, Claude Code installed.
git clone https://github.com/nickedridge-wq/roboflow-mcp.git
cd roboflow-mcp
python -m venv venv
source venv/bin/activate
pip install -r requirements.txt
Option A — project-level (recommended, checked into the repo):
claude mcp add roboflow \
--env ROBOFLOW_API_KEY=your_api_key_here \
-- /path/to/roboflow-mcp/venv/bin/python /path/to/roboflow-mcp/server.py
This writes a .mcp.json file in the current project directory.
Option B — user-level (available in all projects):
claude mcp add roboflow --scope user \
--env ROBOFLOW_API_KEY=your_api_key_here \
-- /path/to/roboflow-mcp/venv/bin/python /path/to/roboflow-mcp/server.py
Restart Claude Code — the mcp__roboflow__* tools will be available immediately.
| Tool | Description |
|---|---|
list_workspaces |
Show workspace name, URL slug, and project count |
list_projects |
List all projects in a workspace with type and image counts |
get_project |
Get classes, annotation type, and metadata for a project |
list_versions |
List all dataset versions with image counts per split |
upload_image |
Upload an image and optional annotation to a project |
create_version |
Generate a new dataset version with preprocessing and augmentation |
download_dataset |
Download a version locally (yolov8, coco, voc, and more) |
download_universe_dataset |
Download a public dataset directly from Roboflow Universe |
search_universe |
Search Universe for public datasets and pre-trained models |
run_inference |
Run inference via a deployed model on a local file or URL |
get_model_metrics |
Fetch mAP, precision, and recall for a trained version |
search_universe("hard hat detection")
→ pick a result, note workspace + project + version
download_universe_dataset(
universe_workspace="roboflow-universe-projects",
universe_project="hard-hat-universe",
version_number=1,
model_format="yolov8",
location="./datasets/hard-hat"
)
upload_image(project_url="my-project", image_path="/data/img001.jpg",
annotation_path="/data/img001.xml", split="train")
create_version(
project_url="my-project",
preprocessing={"auto-orient": True, "resize": {"width": 640, "height": 640, "format": "Stretch to"}},
augmentation={"flip": {"horizontal": True}, "rotation": {"degrees": 15}}
)
run_inference(project_url="my-project", version_number=3,
image_path="/data/test.jpg", confidence=60)
get_model_metrics(project_url="my-project", version_number=3)
python -m unittest test_server -v
21 tests covering output suppression, lazy init thread safety, input validation, null model guard, auth error propagation, and parameter contracts. No live API key required.
search_universe and get_model_metrics call the Roboflow REST API directly for endpoints not exposed cleanly through the SDK.Добавь это в claude_desktop_config.json и перезапусти Claude Desktop.
{
"mcpServers": {
"roboflow-mcp-server": {
"command": "npx",
"args": []
}
}
}PRs, issues, code search, CI status
Database, auth and storage
Reference / test server with prompts, resources, and tools.
Secure file operations with configurable access controls.