From roboflow
Protocol-level reference for Roboflow REST and Inference APIs covering URL patterns, auth methods, error codes, and SDK quick-starts. Use when making direct API calls to Roboflow.
How this skill is triggered — by the user, by Claude, or both
Slash command
/roboflow:api-referenceThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
> **For agents — source-of-truth:** This skill is authored in [`roboflow/computer-vision-skills`](https://github.com/roboflow/computer-vision-skills) and shipped with the Roboflow plugin. If your client has loaded the plugin (you'll see `roboflow:<name>` skills in your available skills list), use those local skills — they're read fresh from disk every session. The same content served as MCP res...
For agents — source-of-truth: This skill is authored in
roboflow/computer-vision-skillsand shipped with the Roboflow plugin. If your client has loaded the plugin (you'll seeroboflow:<name>skills in your available skills list), use those local skills — they're read fresh from disk every session. The same content served as MCP resources atroboflow://skills/<name>/...is a fallback for clients without the plugin and may lag this repo. Don't callReadMcpResourceToolforroboflow://skills/...URIs when a localroboflow:<name>skill is available.
Tip: If you're connected to the Roboflow MCP server, prefer its tools (
projects_*,versions_*,models_*,workflows_*,images_*, …) over raw REST calls — they handle auth, pagination, and typed responses for you. The REST patterns below stay relevant if you're not using MCP.
| Host | Base URL | Purpose |
|---|---|---|
| Platform API | https://api.roboflow.com | CRUD for projects, images, versions, training, upload |
| Serverless Inference | https://serverless.roboflow.com | Model inference + Workflow execution |
| Dedicated Deployment | https://<name>.roboflow.cloud | Private GPU inference (same API as serverless) |
| Self-hosted Inference | http://localhost:9001 | Local inference server via inference package |
Use the inference-sdk Python package as the preferred client for all inference hosts. It handles auth, retries, and response parsing.
| Method | Where | Format |
|---|---|---|
| Query parameter | All hosts | ?api_key=YOUR_KEY |
| Request body | Platform API + Workflow inference | "api_key": "YOUR_KEY" in JSON body |
| Header | MCP server (mcp.roboflow.com) | x-api-key: YOUR_KEY (handled automatically by MCP) |
API keys are workspace-scoped. Get yours from Workspace Settings > API Keys in the Roboflow dashboard (app.roboflow.com/{workspace}/settings/api). Personal API keys are at /settings/account → API Keys tab.
| SDK | Install | Primary Use |
|---|---|---|
Python (inference-sdk) | pip install inference-sdk | Inference via InferenceHTTPClient |
Python (roboflow) | pip install roboflow | Upload, training, project management |
JavaScript (roboflow.js) | Browser script tag | Real-time on-device web inference |
| iOS (Swift) | CocoaPods/SPM | On-device mobile inference |
from inference_sdk import InferenceHTTPClient
CLIENT = InferenceHTTPClient(
api_url="https://serverless.roboflow.com", # or dedicated URL, or localhost
api_key="YOUR_KEY"
)
result = CLIENT.infer("image.jpg", model_id="your-project/1")
import roboflow
rf = roboflow.Roboflow(api_key="YOUR_KEY")
project = rf.workspace("my-workspace").project("my-project")
# Upload
project.upload(image_path="image.jpg", split="train")
# Inference
model = project.version(1).model
result = model.predict("image.jpg", confidence=40).json()
| Task | Host to Use |
|---|---|
| Run model inference | serverless.roboflow.com |
| Run Workflows | serverless.roboflow.com |
| Upload images | api.roboflow.com |
| Manage projects/versions | api.roboflow.com |
| Start training | api.roboflow.com |
| High-throughput / SLA inference | Dedicated deployment URL |
| Air-gapped / on-prem inference | Self-hosted localhost:9001 |
| Real-time video / webcam / RTSP | WebRTC via inference_sdk.webrtc against serverless or local — see roboflow://skills/inference/workflows ("Video Stream" section). Not a plain HTTP call. |
roboflow://skills/api-reference/inference — inference URL patterns, request/response formatsroboflow://skills/api-reference/rest-api — platform REST API endpoints (CRUD, upload, training)npx claudepluginhub roboflow/computer-vision-skills --plugin roboflowCompares Roboflow deployment options (serverless, dedicated, self-hosted, batch) and explains Workflow execution patterns. Use when choosing a deployment strategy or running inference workflows.
Guides ML/CV design: model selection (BERT, YOLOv8, Whisper), training/inference pipelines, API vs self-hosted tradeoffs, and cost analysis for production deployment.
Guides Azure AI Custom Vision development with best practices, decision making, limits, security, integrations, and deployment. Use for model export, prediction APIs, ONNX/TensorFlow, and Smart Labeler.