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comments | description | keywords |
---|---|---|
true | Learn to export YOLO11 models to OpenVINO format for up to 3x CPU speedup and hardware acceleration on Intel GPU and NPU. | YOLO11, OpenVINO, model export, Intel, AI inference, CPU speedup, GPU acceleration, NPU, deep learning |
In this guide, we cover exporting YOLO11 models to the OpenVINO format, which can provide up to 3x CPU speedup, as well as accelerating YOLO inference on Intel GPU and NPU hardware.
OpenVINO, short for Open Visual Inference & Neural Network Optimization toolkit, is a comprehensive toolkit for optimizing and deploying AI inference models. Even though the name contains Visual, OpenVINO also supports various additional tasks including language, audio, time series, etc.
Watch: How To Export and Optimize an Ultralytics YOLOv8 Model for Inference with OpenVINO.
Export a YOLO11n model to OpenVINO format and run inference with the exported model.
!!! example
=== "Python"
```python
from ultralytics import YOLO
# Load a YOLO11n PyTorch model
model = YOLO("yolo11n.pt")
# Export the model
model.export(format="openvino") # creates 'yolo11n_openvino_model/'
# Load the exported OpenVINO model
ov_model = YOLO("yolo11n_openvino_model/")
# Run inference
results = ov_model("https://ultralytics.com/images/bus.jpg")
# Run inference with specified device, available devices: ["intel:gpu", "intel:npu", "intel:cpu"]
results = ov_model("https://ultralytics.com/images/bus.jpg", device="intel:gpu")
```
=== "CLI"
```bash
# Export a YOLO11n PyTorch model to OpenVINO format
yolo export model=yolo11n.pt format=openvino # creates 'yolo11n_openvino_model/'
# Run inference with the exported model
yolo predict model=yolo11n_openvino_model source='https://ultralytics.com/images/bus.jpg'
# Run inference with specified device, available devices: ["intel:gpu", "intel:npu", "intel:cpu"]
yolo predict model=yolo11n_openvino_model source='https://ultralytics.com/images/bus.jpg' device="intel:gpu"
```
Argument | Type | Default | Description |
---|---|---|---|
format |
str |
'openvino' |
Target format for the exported model, defining compatibility with various deployment environments. |
imgsz |
int or tuple |
640 |
Desired image size for the model input. Can be an integer for square images or a tuple (height, width) for specific dimensions. |
half |
bool |
False |
Enables FP16 (half-precision) quantization, reducing model size and potentially speeding up inference on supported hardware. |
int8 |
bool |
False |
Activates INT8 quantization, further compressing the model and speeding up inference with minimal accuracy loss, primarily for edge devices. |
dynamic |
bool |
False |
Allows dynamic input sizes, enhancing flexibility in handling varying image dimensions. |
nms |
bool |
False |
Adds Non-Maximum Suppression (NMS), essential for accurate and efficient detection post-processing. |
batch |
int |
1 |
Specifies export model batch inference size or the max number of images the exported model will process concurrently in predict mode. |
data |
str |
'coco8.yaml' |
Path to the dataset configuration file (default: coco8.yaml ), essential for quantization. |
fraction |
float |
1.0 |
Specifies the fraction of the dataset to use for INT8 quantization calibration. Allows for calibrating on a subset of the full dataset, useful for experiments or when resources are limited. If not specified with INT8 enabled, the full dataset will be used. |
For more details about the export process, visit the Ultralytics documentation page on exporting.
!!! warning
OpenVINO™ is compatible with most Intel® processors but to ensure optimal performance:
1. Verify OpenVINOâ„¢ support
Check whether your Intel® chip is officially supported by OpenVINO™ using [Intel's compatibility list](https://docs.openvino.ai/2025/about-openvino/release-notes-openvino/system-requirements.html).
2. Identify your accelerator
Determine if your processor includes an integrated NPU (Neural Processing Unit) or GPU (integrated GPU) by consulting [Intel's hardware guide](https://www.intel.com/content/www/us/en/support/articles/000097597/processors.html).
3. Install the latest drivers
If your chip supports an NPU or GPU but OpenVINO™ isn't detecting it, you may need to install or update the associated drivers. Follow the [driver‑installation instructions](https://medium.com/openvino-toolkit/how-to-run-openvino-on-a-linux-ai-pc-52083ce14a98) to enable full acceleration.
By following these three steps, you can ensure OpenVINO™ runs optimally on your Intel® hardware.
When you export a model to OpenVINO format, it results in a directory containing the following:
You can use these files to run inference with the OpenVINO Inference Engine.
Once your model is successfully exported to the OpenVINO format, you have two primary options for running inference:
Use the ultralytics
package, which provides a high-level API and wraps the OpenVINO Runtime.
Use the native openvino
package for more advanced or customized control over inference behavior.
The ultralytics package allows you to easily run inference using the exported OpenVINO model via the predict method. You can also specify the target device (e.g., intel:gpu
, intel:npu
, intel:cpu
) using the device argument.
from ultralytics import YOLO
# Load the exported OpenVINO model
ov_model = YOLO("yolo11n_openvino_model/") # the path of your exported OpenVINO model
# Run inference with the exported model
ov_model.predict(device="intel:gpu") # specify the device you want to run inference on
This approach is ideal for fast prototyping or deployment when you don't need full control over the inference pipeline.
The openvino Runtime provides a unified API to inference across all supported Intel hardware. It also provides advanced capabilities like load balancing across Intel hardware and asynchronous execution. For more information on running the inference, refer to the YOLO11 notebooks.
Remember, you'll need the XML and BIN files as well as any application-specific settings like input size, scale factor for normalization, etc., to correctly set up and use the model with the Runtime.
In your deployment application, you would typically do the following steps:
core = Core()
.core.read_model()
method.core.compile_model()
function.compiled_model(input_data)
.For more detailed steps and code snippets, refer to the OpenVINO documentation or API tutorial.
The Ultralytics team benchmarked YOLO11 across various model formats and precision, evaluating speed and accuracy on different Intel devices compatible with OpenVINO.
!!! note
The benchmarking results below are for reference and might vary based on the exact hardware and software configuration of a system, as well as the current workload of the system at the time the benchmarks are run.
All benchmarks run with `openvino` Python package version [2025.1.0](https://pypi.org/project/openvino/2025.1.0/).
The Intel® Core® series is a range of high-performance processors by Intel. The lineup includes Core i3 (entry-level), Core i5 (mid-range), Core i7 (high-end), and Core i9 (extreme performance). Each series caters to different computing needs and budgets, from everyday tasks to demanding professional workloads. With each new generation, improvements are made to performance, energy efficiency, and features.
Benchmarks below run on 12th Gen Intel® Core® i9-12900KS CPU at FP32 precision.
??? abstract "Detailed Benchmark Results"
| Model | Format | Status | Size (MB) | metrics/mAP50-95(B) | Inference time (ms/im) |
| ------- | ----------- | ------ | --------- | ------------------- | ---------------------- |
| YOLO11n | PyTorch | ✅ | 5.4 | 0.5071 | 21.00 |
| YOLO11n | TorchScript | ✅ | 10.5 | 0.5077 | 21.39 |
| YOLO11n | ONNX | ✅ | 10.2 | 0.5077 | 15.55 |
| YOLO11n | OpenVINO | ✅ | 10.4 | 0.5077 | 11.49 |
| YOLO11s | PyTorch | ✅ | 18.4 | 0.5770 | 43.16 |
| YOLO11s | TorchScript | ✅ | 36.6 | 0.5781 | 50.06 |
| YOLO11s | ONNX | ✅ | 36.3 | 0.5781 | 31.53 |
| YOLO11s | OpenVINO | ✅ | 36.4 | 0.5781 | 30.82 |
| YOLO11m | PyTorch | ✅ | 38.8 | 0.6257 | 110.60 |
| YOLO11m | TorchScript | ✅ | 77.3 | 0.6306 | 128.09 |
| YOLO11m | ONNX | ✅ | 76.9 | 0.6306 | 76.06 |
| YOLO11m | OpenVINO | ✅ | 77.1 | 0.6306 | 79.38 |
| YOLO11l | PyTorch | ✅ | 49.0 | 0.6367 | 150.38 |
| YOLO11l | TorchScript | ✅ | 97.7 | 0.6408 | 172.57 |
| YOLO11l | ONNX | ✅ | 97.0 | 0.6408 | 108.91 |
| YOLO11l | OpenVINO | ✅ | 97.3 | 0.6408 | 102.30 |
| YOLO11x | PyTorch | ✅ | 109.3 | 0.6989 | 272.72 |
| YOLO11x | TorchScript | ✅ | 218.1 | 0.6900 | 320.86 |
| YOLO11x | ONNX | ✅ | 217.5 | 0.6900 | 196.20 |
| YOLO11x | OpenVINO | ✅ | 217.8 | 0.6900 | 195.32 |
The Intel® Core™ Ultra™ series represents a new benchmark in high-performance computing, engineered to meet the evolving demands of modern users—from gamers and creators to professionals leveraging AI. This next-generation lineup is more than a traditional CPU series; it combines powerful CPU cores, integrated high-performance GPU capabilities, and a dedicated Neural Processing Unit (NPU) within a single chip, offering a unified solution for diverse and intensive computing workloads.
At the heart of the Intel® Core Ultra™ architecture is a hybrid design that enables exceptional performance across traditional processing tasks, GPU-accelerated workloads, and AI-driven operations. The inclusion of the NPU enhances on-device AI inference, enabling faster, more efficient machine learning and data processing across a wide range of applications.
The Core Ultra™ family includes various models tailored for different performance needs, with options ranging from energy-efficient designs to high-power variants marked by the "H" designation—ideal for laptops and compact form factors that demand serious computing power. Across the lineup, users benefit from the synergy of CPU, GPU, and NPU integration, delivering remarkable efficiency, responsiveness, and multitasking capabilities.
As part of Intel's ongoing innovation, the Core Ultraâ„¢ series sets a new standard for future-ready computing. With multiple models available and more on the horizon, this series underscores Intel's commitment to delivering cutting-edge solutions for the next generation of intelligent, AI-enhanced devices.
Benchmarks below run on Intel® Core™ Ultra™ 7 258V and Intel® Core™ Ultra™ 7 265K at FP32 and INT8 precision.
!!! tip "Benchmarks"
=== "Integrated Intel® Arc™ GPU"
<div align="center">
<img width="800" src="https://github.com/ultralytics/docs/releases/download/0/openvino-ultra7-258V-gpu.avif" alt="Intel Core Ultra GPU benchmarks">
</div>
??? abstract "Detailed Benchmark Results"
| Model | Format | Precision | Status | Size (MB) | metrics/mAP50-95(B) | Inference time (ms/im) |
| ------- | -------- | --------- | ------ | --------- | ------------------- | ---------------------- |
| YOLO11n | PyTorch | FP32 | ✅ | 5.4 | 0.5052 | 32.27 |
| YOLO11n | OpenVINO | FP32 | ✅ | 10.4 | 0.5068 | 11.84 |
| YOLO11n | OpenVINO | INT8 | ✅ | 3.3 | 0.4969 | 11.24 |
| YOLO11s | PyTorch | FP32 | ✅ | 18.4 | 0.5776 | 92.09 |
| YOLO11s | OpenVINO | FP32 | ✅ | 36.4 | 0.5797 | 14.82 |
| YOLO11s | OpenVINO | INT8 | ✅ | 9.8 | 0.5751 | 12.88 |
| YOLO11m | PyTorch | FP32 | ✅ | 38.8 | 0.6262 | 277.24 |
| YOLO11m | OpenVINO | FP32 | ✅ | 77.1 | 0.6306 | 22.94 |
| YOLO11m | OpenVINO | INT8 | ✅ | 20.2 | 0.6126 | 17.85 |
| YOLO11l | PyTorch | FP32 | ✅ | 49.0 | 0.6361 | 348.97 |
| YOLO11l | OpenVINO | FP32 | ✅ | 97.3 | 0.6365 | 27.34 |
| YOLO11l | OpenVINO | INT8 | ✅ | 25.7 | 0.6242 | 20.83 |
| YOLO11x | PyTorch | FP32 | ✅ | 109.3 | 0.6984 | 666.07 |
| YOLO11x | OpenVINO | FP32 | ✅ | 217.8 | 0.6890 | 39.09 |
| YOLO11x | OpenVINO | INT8 | ✅ | 55.9 | 0.6856 | 30.60 |
=== "Intel® Lunar Lake CPU"
<div align="center">
<img width="800" src="https://github.com/ultralytics/docs/releases/download/0/openvino-ultra7-258V-cpu.avif" alt="Intel Core Ultra CPU benchmarks">
</div>
??? abstract "Detailed Benchmark Results"
| Model | Format | Precision | Status | Size (MB) | metrics/mAP50-95(B) | Inference time (ms/im) |
| ------- | -------- | --------- | ------ | --------- | ------------------- | ---------------------- |
| YOLO11n | PyTorch | FP32 | ✅ | 5.4 | 0.5052 | 32.27 |
| YOLO11n | OpenVINO | FP32 | ✅ | 10.4 | 0.5077 | 32.55 |
| YOLO11n | OpenVINO | INT8 | ✅ | 3.3 | 0.4980 | 22.98 |
| YOLO11s | PyTorch | FP32 | ✅ | 18.4 | 0.5776 | 92.09 |
| YOLO11s | OpenVINO | FP32 | ✅ | 36.4 | 0.5782 | 98.38 |
| YOLO11s | OpenVINO | INT8 | ✅ | 9.8 | 0.5745 | 52.84 |
| YOLO11m | PyTorch | FP32 | ✅ | 38.8 | 0.6262 | 277.24 |
| YOLO11m | OpenVINO | FP32 | ✅ | 77.1 | 0.6307 | 275.74 |
| YOLO11m | OpenVINO | INT8 | ✅ | 20.2 | 0.6172 | 132.63 |
| YOLO11l | PyTorch | FP32 | ✅ | 49.0 | 0.6361 | 348.97 |
| YOLO11l | OpenVINO | FP32 | ✅ | 97.3 | 0.6361 | 348.97 |
| YOLO11l | OpenVINO | INT8 | ✅ | 25.7 | 0.6240 | 171.36 |
| YOLO11x | PyTorch | FP32 | ✅ | 109.3 | 0.6984 | 666.07 |
| YOLO11x | OpenVINO | FP32 | ✅ | 217.8 | 0.6900 | 783.16 |
| YOLO11x | OpenVINO | INT8 | ✅ | 55.9 | 0.6890 | 346.82 |
=== "Integrated Intel® AI Boost NPU"
<div align="center">
<img width="800" src="https://github.com/ultralytics/docs/releases/download/0/openvino-ultra7-258V-npu.avif" alt="Intel Core Ultra NPU benchmarks">
</div>
??? abstract "Detailed Benchmark Results"
| Model | Format | Precision | Status | Size (MB) | metrics/mAP50-95(B) | Inference time (ms/im) |
| ------- | -------- | --------- | ------ | --------- | ------------------- | ---------------------- |
| YOLO11n | PyTorch | FP32 | ✅ | 5.4 | 0.5052 | 32.27 |
| YOLO11n | OpenVINO | FP32 | ✅ | 10.4 | 0.5085 | 8.33 |
| YOLO11n | OpenVINO | INT8 | ✅ | 3.3 | 0.5019 | 8.91 |
| YOLO11s | PyTorch | FP32 | ✅ | 18.4 | 0.5776 | 92.09 |
| YOLO11s | OpenVINO | FP32 | ✅ | 36.4 | 0.5788 | 9.72 |
| YOLO11s | OpenVINO | INT8 | ✅ | 9.8 | 0.5710 | 10.58 |
| YOLO11m | PyTorch | FP32 | ✅ | 38.8 | 0.6262 | 277.24 |
| YOLO11m | OpenVINO | FP32 | ✅ | 77.1 | 0.6301 | 19.41 |
| YOLO11m | OpenVINO | INT8 | ✅ | 20.2 | 0.6124 | 18.26 |
| YOLO11l | PyTorch | FP32 | ✅ | 49.0 | 0.6361 | 348.97 |
| YOLO11l | OpenVINO | FP32 | ✅ | 97.3 | 0.6362 | 23.70 |
| YOLO11l | OpenVINO | INT8 | ✅ | 25.7 | 0.6240 | 21.40 |
| YOLO11x | PyTorch | FP32 | ✅ | 109.3 | 0.6984 | 666.07 |
| YOLO11x | OpenVINO | FP32 | ✅ | 217.8 | 0.6892 | 43.91 |
| YOLO11x | OpenVINO | INT8 | ✅ | 55.9 | 0.6890 | 34.04 |
!!! tip "Benchmarks"
=== "Integrated Intel® Arc™ GPU"
<div align="center">
<img width="800" src="https://github.com/ultralytics/docs/releases/download/0/openvino-ultra7-265K-gpu.avif" alt="Intel Core Ultra GPU benchmarks">
</div>
??? abstract "Detailed Benchmark Results"
| Model | Format | Precision | Status | Size (MB) | metrics/mAP50-95(B) | Inference time (ms/im) |
| ------- | -------- | --------- | ------ | --------- | ------------------- | ---------------------- |
| YOLO11n | PyTorch | FP32 | ✅ | 5.4 | 0.5072 | 16.29 |
| YOLO11n | OpenVINO | FP32 | ✅ | 10.4 | 0.5079 | 13.13 |
| YOLO11n | OpenVINO | INT8 | ✅ | 3.3 | 0.4976 | 8.86 |
| YOLO11s | PyTorch | FP32 | ✅ | 18.4 | 0.5771 | 39.61 |
| YOLO11s | OpenVINO | FP32 | ✅ | 36.4 | 0.5808 | 18.26 |
| YOLO11s | OpenVINO | INT8 | ✅ | 9.8 | 0.5726 | 13.24 |
| YOLO11m | PyTorch | FP32 | ✅ | 38.8 | 0.6258 | 100.65 |
| YOLO11m | OpenVINO | FP32 | ✅ | 77.1 | 0.6310 | 43.50 |
| YOLO11m | OpenVINO | INT8 | ✅ | 20.2 | 0.6137 | 20.90 |
| YOLO11l | PyTorch | FP32 | ✅ | 49.0 | 0.6367 | 131.37 |
| YOLO11l | OpenVINO | FP32 | ✅ | 97.3 | 0.6371 | 54.52 |
| YOLO11l | OpenVINO | INT8 | ✅ | 25.7 | 0.6226 | 27.36 |
| YOLO11x | PyTorch | FP32 | ✅ | 109.3 | 0.6990 | 212.45 |
| YOLO11x | OpenVINO | FP32 | ✅ | 217.8 | 0.6884 | 112.76 |
| YOLO11x | OpenVINO | INT8 | ✅ | 55.9 | 0.6900 | 52.06 |
=== "Intel® Arrow Lake CPU"
<div align="center">
<img width="800" src="https://github.com/ultralytics/docs/releases/download/0/openvino-ultra7-265K-cpu.avif" alt="Intel Core Ultra CPU benchmarks">
</div>
??? abstract "Detailed Benchmark Results"
| Model | Format | Precision | Status | Size (MB) | metrics/mAP50-95(B) | Inference time (ms/im) |
| ------- | -------- | --------- | ------ | --------- | ------------------- | ---------------------- |
| YOLO11n | PyTorch | FP32 | ✅ | 5.4 | 0.5072 | 16.29 |
| YOLO11n | OpenVINO | FP32 | ✅ | 10.4 | 0.5077 | 15.04 |
| YOLO11n | OpenVINO | INT8 | ✅ | 3.3 | 0.4980 | 11.60 |
| YOLO11s | PyTorch | FP32 | ✅ | 18.4 | 0.5771 | 39.61 |
| YOLO11s | OpenVINO | FP32 | ✅ | 36.4 | 0.5782 | 33.45 |
| YOLO11s | OpenVINO | INT8 | ✅ | 9.8 | 0.5745 | 20.64 |
| YOLO11m | PyTorch | FP32 | ✅ | 38.8 | 0.6258 | 100.65 |
| YOLO11m | OpenVINO | FP32 | ✅ | 77.1 | 0.6307 | 81.15 |
| YOLO11m | OpenVINO | INT8 | ✅ | 20.2 | 0.6172 | 44.63 |
| YOLO11l | PyTorch | FP32 | ✅ | 49.0 | 0.6367 | 131.37 |
| YOLO11l | OpenVINO | FP32 | ✅ | 97.3 | 0.6409 | 103.77 |
| YOLO11l | OpenVINO | INT8 | ✅ | 25.7 | 0.6240 | 58.00 |
| YOLO11x | PyTorch | FP32 | ✅ | 109.3 | 0.6990 | 212.45 |
| YOLO11x | OpenVINO | FP32 | ✅ | 217.8 | 0.6900 | 208.37 |
| YOLO11x | OpenVINO | INT8 | ✅ | 55.9 | 0.6897 | 113.04 |
=== "Integrated Intel® AI Boost NPU"
<div align="center">
<img width="800" src="https://github.com/ultralytics/docs/releases/download/0/openvino-ultra7-265K-npu.avif" alt="Intel Core Ultra NPU benchmarks">
</div>
??? abstract "Detailed Benchmark Results"
| Model | Format | Precision | Status | Size (MB) | metrics/mAP50-95(B) | Inference time (ms/im) |
| ------- | -------- | --------- | ------ | --------- | ------------------- | ---------------------- |
| YOLO11n | PyTorch | FP32 | ✅ | 5.4 | 0.5072 | 16.29 |
| YOLO11n | OpenVINO | FP32 | ✅ | 10.4 | 0.5075 | 8.02 |
| YOLO11n | OpenVINO | INT8 | ✅ | 3.3 | 0.3656 | 9.28 |
| YOLO11s | PyTorch | FP32 | ✅ | 18.4 | 0.5771 | 39.61 |
| YOLO11s | OpenVINO | FP32 | ✅ | 36.4 | 0.5801 | 13.12 |
| YOLO11s | OpenVINO | INT8 | ✅ | 9.8 | 0.5686 | 13.12 |
| YOLO11m | PyTorch | FP32 | ✅ | 38.8 | 0.6258 | 100.65 |
| YOLO11m | OpenVINO | FP32 | ✅ | 77.1 | 0.6310 | 29.88 |
| YOLO11m | OpenVINO | INT8 | ✅ | 20.2 | 0.6111 | 26.32 |
| YOLO11l | PyTorch | FP32 | ✅ | 49.0 | 0.6367 | 131.37 |
| YOLO11l | OpenVINO | FP32 | ✅ | 97.3 | 0.6356 | 37.08 |
| YOLO11l | OpenVINO | INT8 | ✅ | 25.7 | 0.6245 | 30.81 |
| YOLO11x | PyTorch | FP32 | ✅ | 109.3 | 0.6990 | 212.45 |
| YOLO11x | OpenVINO | FP32 | ✅ | 217.8 | 0.6894 | 68.48 |
| YOLO11x | OpenVINO | INT8 | ✅ | 55.9 | 0.6417 | 49.76 |
Intel® Arc™ is Intel's line of discrete graphics cards designed for high-performance gaming, content creation, and AI workloads. The Arc series features advanced GPU architectures that support real-time ray tracing, AI-enhanced graphics, and high-resolution gaming. With a focus on performance and efficiency, Intel® Arc™ aims to compete with other leading GPU brands while providing unique features like hardware-accelerated AV1 encoding and support for the latest graphics APIs.
Benchmarks below run on Intel Arc A770 and Intel Arc B580 at FP32 and INT8 precision.
??? abstract "Detailed Benchmark Results"
| Model | Format | Precision | Status | Size (MB) | metrics/mAP50-95(B) | Inference time (ms/im) |
| ------- | -------- | --------- | ------ | --------- | ------------------- | ---------------------- |
| YOLO11n | PyTorch | FP32 | ✅ | 5.4 | 0.5072 | 16.29 |
| YOLO11n | OpenVINO | FP32 | ✅ | 10.4 | 0.5073 | 6.98 |
| YOLO11n | OpenVINO | INT8 | ✅ | 3.3 | 0.4978 | 7.24 |
| YOLO11s | PyTorch | FP32 | ✅ | 18.4 | 0.5771 | 39.61 |
| YOLO11s | OpenVINO | FP32 | ✅ | 36.4 | 0.5798 | 9.41 |
| YOLO11s | OpenVINO | INT8 | ✅ | 9.8 | 0.5751 | 8.72 |
| YOLO11m | PyTorch | FP32 | ✅ | 38.8 | 0.6258 | 100.65 |
| YOLO11m | OpenVINO | FP32 | ✅ | 77.1 | 0.6311 | 14.88 |
| YOLO11m | OpenVINO | INT8 | ✅ | 20.2 | 0.6126 | 11.97 |
| YOLO11l | PyTorch | FP32 | ✅ | 49.0 | 0.6367 | 131.37 |
| YOLO11l | OpenVINO | FP32 | ✅ | 97.3 | 0.6364 | 19.17 |
| YOLO11l | OpenVINO | INT8 | ✅ | 25.7 | 0.6241 | 15.75 |
| YOLO11x | PyTorch | FP32 | ✅ | 109.3 | 0.6990 | 212.45 |
| YOLO11x | OpenVINO | FP32 | ✅ | 217.8 | 0.6888 | 18.13 |
| YOLO11x | OpenVINO | INT8 | ✅ | 55.9 | 0.6930 | 18.91 |
??? abstract "Detailed Benchmark Results"
| Model | Format | Precision | Status | Size (MB) | metrics/mAP50-95(B) | Inference time (ms/im) |
| ------- | -------- | --------- | ------ | --------- | ------------------- | ---------------------- |
| YOLO11n | PyTorch | FP32 | ✅ | 5.4 | 0.5072 | 16.29 |
| YOLO11n | OpenVINO | FP32 | ✅ | 10.4 | 0.5072 | 4.27 |
| YOLO11n | OpenVINO | INT8 | ✅ | 3.3 | 0.4981 | 4.33 |
| YOLO11s | PyTorch | FP32 | ✅ | 18.4 | 0.5771 | 39.61 |
| YOLO11s | OpenVINO | FP32 | ✅ | 36.4 | 0.5789 | 5.04 |
| YOLO11s | OpenVINO | INT8 | ✅ | 9.8 | 0.5746 | 4.97 |
| YOLO11m | PyTorch | FP32 | ✅ | 38.8 | 0.6258 | 100.65 |
| YOLO11m | OpenVINO | FP32 | ✅ | 77.1 | 0.6306 | 6.45 |
| YOLO11m | OpenVINO | INT8 | ✅ | 20.2 | 0.6125 | 6.28 |
| YOLO11l | PyTorch | FP32 | ✅ | 49.0 | 0.6367 | 131.37 |
| YOLO11l | OpenVINO | FP32 | ✅ | 97.3 | 0.6360 | 8.23 |
| YOLO11l | OpenVINO | INT8 | ✅ | 25.7 | 0.6236 | 8.49 |
| YOLO11x | PyTorch | FP32 | ✅ | 109.3 | 0.6990 | 212.45 |
| YOLO11x | OpenVINO | FP32 | ✅ | 217.8 | 0.6889 | 11.10 |
| YOLO11x | OpenVINO | INT8 | ✅ | 55.9 | 0.6924 | 10.30 |
To reproduce the Ultralytics benchmarks above on all export formats run this code:
!!! example
=== "Python"
```python
from ultralytics import YOLO
# Load a YOLO11n PyTorch model
model = YOLO("yolo11n.pt")
# Benchmark YOLO11n speed and accuracy on the COCO128 dataset for all export formats
results = model.benchmark(data="coco128.yaml")
```
=== "CLI"
```bash
# Benchmark YOLO11n speed and accuracy on the COCO128 dataset for all export formats
yolo benchmark model=yolo11n.pt data=coco128.yaml
```
Note that benchmarking results might vary based on the exact hardware and software configuration of a system, as well as the current workload of the system at the time the benchmarks are run. For the most reliable results use a dataset with a large number of images, i.e. `data='coco.yaml'` (5000 val images).
The benchmarking results clearly demonstrate the benefits of exporting the YOLO11 model to the OpenVINO format. Across different models and hardware platforms, the OpenVINO format consistently outperforms other formats in terms of inference speed while maintaining comparable accuracy.
The benchmarks underline the effectiveness of OpenVINO as a tool for deploying deep learning models. By converting models to the OpenVINO format, developers can achieve significant performance improvements, making it easier to deploy these models in real-world applications.
For more detailed information and instructions on using OpenVINO, refer to the official OpenVINO documentation.
Exporting YOLO11 models to the OpenVINO format can significantly enhance CPU speed and enable GPU and NPU accelerations on Intel hardware. To export, you can use either Python or CLI as shown below:
!!! example
=== "Python"
```python
from ultralytics import YOLO
# Load a YOLO11n PyTorch model
model = YOLO("yolo11n.pt")
# Export the model
model.export(format="openvino") # creates 'yolo11n_openvino_model/'
```
=== "CLI"
```bash
# Export a YOLO11n PyTorch model to OpenVINO format
yolo export model=yolo11n.pt format=openvino # creates 'yolo11n_openvino_model/'
```
For more information, refer to the export formats documentation.
Using Intel's OpenVINO toolkit with YOLO11 models offers several benefits:
For detailed performance comparisons, visit our benchmarks section.
After exporting a YOLO11n model to OpenVINO format, you can run inference using Python or CLI:
!!! example
=== "Python"
```python
from ultralytics import YOLO
# Load the exported OpenVINO model
ov_model = YOLO("yolo11n_openvino_model/")
# Run inference
results = ov_model("https://ultralytics.com/images/bus.jpg")
```
=== "CLI"
```bash
# Run inference with the exported model
yolo predict model=yolo11n_openvino_model source='https://ultralytics.com/images/bus.jpg'
```
Refer to our predict mode documentation for more details.
Ultralytics YOLO11 is optimized for real-time object detection with high accuracy and speed. Specifically, when combined with OpenVINO, YOLO11 provides:
For in-depth performance analysis, check our detailed YOLO11 benchmarks on different hardware.
Yes, you can benchmark YOLO11 models in various formats including PyTorch, TorchScript, ONNX, and OpenVINO. Use the following code snippet to run benchmarks on your chosen dataset:
!!! example
=== "Python"
```python
from ultralytics import YOLO
# Load a YOLO11n PyTorch model
model = YOLO("yolo11n.pt")
# Benchmark YOLO11n speed and [accuracy](https://www.ultralytics.com/glossary/accuracy) on the COCO8 dataset for all export formats
results = model.benchmark(data="coco8.yaml")
```
=== "CLI"
```bash
# Benchmark YOLO11n speed and accuracy on the COCO8 dataset for all export formats
yolo benchmark model=yolo11n.pt data=coco8.yaml
```
For detailed benchmark results, refer to our benchmarks section and export formats documentation.
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