With no prior knowledge of machine learning or device-specific deployment, you can deploy a computer vision model to a range of devices and environments using Roboflow Inference CLI.
Project description
Roboflow Inference CLI
Roboflow Inference CLI offers a lightweight interface for running the Roboflow inference server locally or the Roboflow Hosted API.
To create custom inference server Docker images, go to the parent package, Roboflow Inference.
Roboflow has everything you need to deploy a computer vision model to a range of devices and environments. Inference supports object detection, classification, and instance segmentation models, and running foundation models (CLIP and SAM).
👩🏫 Examples
inference server start
Starts a local inference server. It optionally takes a port number (default is 9001) and will only start the docker container if there is not already a container running on that port.
Before you begin, ensure that you have Docker installed on your machine. Docker provides a containerized environment, allowing the Roboflow Inference Server to run in a consistent and isolated manner, regardless of the host system. If you haven't installed Docker yet, you can get it from Docker's official website.
The CLI will automatically detect the device you are running on and pull the appropriate Docker image.
inference server start --port 9001 [-e {optional_path_to_file_with_env_variables}]
Parameter --env-file
(or -e
) is the optional path for .env file that will be loaded into inference server
in case that values of internal parameters needs to be adjusted. Any value passed explicitly as command parameter
is considered as more important and will shadow the value defined in .env
file under the same target variable name.
inference server status
Checks the status of the local inference server.
inference server status
inference server stop
Stops the inference server.
inference server stop
inference infer
Runs inference on a single image. It takes a path to an image, a Roboflow project name, model version, and API key, and will return a JSON object with the model's predictions. You can also specify a host to run inference on our hosted inference server.
Local image
inference infer ./image.jpg --project-id my-project --model-version 1 --api-key my-api-key
Hosted image
inference infer https://[YOUR_HOSTED_IMAGE_URL] --project-id my-project --model-version 1 --api-key my-api-key
Hosted API inference
inference infer ./image.jpg --project-id my-project --model-version 1 --api-key my-api-key --host https://detect.roboflow.com
Supported Devices
Roboflow Inference CLI currently supports the following device targets:
- x86 CPU
- ARM64 CPU
- NVIDIA GPU
For Jetson specific inference server images, check out the Roboflow Inference package, or pull the images directly following instructions in the official Roboflow Inference documentation.
📝 license
The Roboflow Inference code is distributed under an Apache 2.0 license. The models supported by Roboflow Inference have their own licenses. View the licenses for supported models below.
model | license |
---|---|
inference/models/clip |
MIT |
inference/models/gaze |
MIT, Apache 2.0 |
inference/models/sam |
Apache 2.0 |
inference/models/vit |
Apache 2.0 |
inference/models/yolact |
MIT |
inference/models/yolov5 |
AGPL-3.0 |
inference/models/yolov7 |
GPL-3.0 |
inference/models/yolov8 |
AGPL-3.0 |
🚀 enterprise
With a Roboflow Inference Enterprise License, you can access additional Inference features, including:
- Server cluster deployment
- Active learning
- YOLOv5 and YOLOv8 model sub-license
To learn more, contact the Roboflow team.
📚 documentation
Visit our documentation for usage examples and reference for Roboflow Inference.
💻 explore more Roboflow open source projects
Project | Description |
---|---|
supervision | General-purpose utilities for use in computer vision projects, from predictions filtering and display to object tracking to model evaluation. |
Autodistill | Automatically label images for use in training computer vision models. |
Inference (this project) | An easy-to-use, production-ready inference server for computer vision supporting deployment of many popular model architectures and fine-tuned models. |
Notebooks | Tutorials for computer vision tasks, from training state-of-the-art models to tracking objects to counting objects in a zone. |
Collect | Automated, intelligent data collection powered by CLIP. |
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distributions
Built Distribution
File details
Details for the file inference_cli-0.28.0-py3-none-any.whl
.
File metadata
- Download URL: inference_cli-0.28.0-py3-none-any.whl
- Upload date:
- Size: 60.2 kB
- Tags: Python 3
- Uploaded using Trusted Publishing? Yes
- Uploaded via: twine/5.1.1 CPython/3.12.7
File hashes
Algorithm | Hash digest | |
---|---|---|
SHA256 | 52d82a00273428d19e959f52012b6c2e155cbe86f11afeec63f8e44a27470df5 |
|
MD5 | c66291ac955722f7a20de8e6bee08ee4 |
|
BLAKE2b-256 | 686fd2f5b000e8503b6232a8dc0835fecd464dd96f3aa5cca0280323d21d0eb0 |
Provenance
The following attestation bundles were made for inference_cli-0.28.0-py3-none-any.whl
:
Publisher:
publish.pypi.yml
on roboflow/inference
-
Statement type:
https://in-toto.io/Statement/v1
- Predicate type:
https://docs.pypi.org/attestations/publish/v1
- Subject name:
inference_cli-0.28.0-py3-none-any.whl
- Subject digest:
52d82a00273428d19e959f52012b6c2e155cbe86f11afeec63f8e44a27470df5
- Sigstore transparency entry: 150800923
- Sigstore integration time:
- Predicate type: