README.md
Check out the OpenVINO Cheat Sheet and Key Features for a quick reference.
Get your preferred distribution of OpenVINO or use this command for quick installation:
pip install -U openvino
Check system requirements and supported devices for detailed information.
OpenVINO Quickstart example will walk you through the basics of deploying your first model.
Learn how to optimize and deploy popular models with the OpenVINO Notebooks📚:
Discover more examples in the OpenVINO Samples (Python & C++) and Notebooks (Python).
Here are easy-to-follow code examples demonstrating how to run PyTorch and TensorFlow model inference using OpenVINO:
PyTorch Model
import openvino as ov
import torch
import torchvision
# load PyTorch model into memory
model = torch.hub.load("pytorch/vision", "shufflenet_v2_x1_0", weights="DEFAULT")
# convert the model into OpenVINO model
example = torch.randn(1, 3, 224, 224)
ov_model = ov.convert_model(model, example_input=(example,))
# compile the model for CPU device
core = ov.Core()
compiled_model = core.compile_model(ov_model, 'CPU')
# infer the model on random data
output = compiled_model({0: example.numpy()})
TensorFlow Model
import numpy as np
import openvino as ov
import tensorflow as tf
# load TensorFlow model into memory
model = tf.keras.applications.MobileNetV2(weights='imagenet')
# convert the model into OpenVINO model
ov_model = ov.convert_model(model)
# compile the model for CPU device
core = ov.Core()
compiled_model = core.compile_model(ov_model, 'CPU')
# infer the model on random data
data = np.random.rand(1, 224, 224, 3)
output = compiled_model({0: data})
OpenVINO supports the CPU, GPU, and NPU devices and works with models from PyTorch, TensorFlow, ONNX, TensorFlow Lite, PaddlePaddle, and JAX/Flax frameworks. It includes APIs in C++, Python, C, NodeJS, and offers the GenAI API for optimized model pipelines and performance.
Get started with the OpenVINO GenAI installation and refer to the detailed guide to explore the capabilities of Generative AI using OpenVINO.
Learn how to run LLMs and GenAI with Samples in the OpenVINO™ GenAI repo. See GenAI in action with Jupyter notebooks: LLM-powered Chatbot and LLM Instruction-following pipeline.
User documentation contains detailed information about OpenVINO and guides you from installation through optimizing and deploying models for your AI applications.
Developer documentation focuses on the OpenVINO architecture and describes building and contributing processes.
Check out the Awesome OpenVINO repository to discover a collection of community-made AI projects based on OpenVINO!
Explore OpenVINO Performance Benchmarks to discover the optimal hardware configurations and plan your AI deployment based on verified data.
Check out Contribution Guidelines for more details. Read the Good First Issues section, if you're looking for a place to start contributing. We welcome contributions of all kinds!
You can ask questions and get support on:
openvino tag on Stack Overflow*.OpenVINO™ collects software performance and usage data for the purpose of improving OpenVINO™ tools. This data is collected directly by OpenVINO™ or through the use of Google Analytics 4. You can opt-out at any time by running the command:
opt_in_out --opt_out
More Information is available at OpenVINO™ Telemetry.
OpenVINO™ Toolkit is licensed under Apache License Version 2.0. By contributing to the project, you agree to the license and copyright terms therein and release your contribution under these terms.
* Other names and brands may be claimed as the property of others.