Instructions to use Jesteban247/yolo11-breast_cancer-onnx with libraries, inference providers, notebooks, and local apps. Follow these links to get started.
- Libraries
- ultralytics
How to use Jesteban247/yolo11-breast_cancer-onnx with ultralytics:
from ultralytics import YOLOvv11 model = YOLOvv11.from_pretrained("Jesteban247/yolo11-breast_cancer-onnx") source = 'http://images.cocodataset.org/val2017/000000039769.jpg' model.predict(source=source, save=True) - Notebooks
- Google Colab
- Kaggle
ποΈ YOLO11 β Breast Cancer Detection (Freeze-10, FP16 ONNX)
This model fine-tunes YOLO11n for breast cancer cell detection using the
Breast Cancer Detection Dataset (Roboflow).
The first 10 layers were frozen to retain pretrained detection features, and the model was exported to ONNX (FP16) for deployment.
βοΈ Configuration
| Attribute | Value |
|---|---|
| Base Model | yolo11n.pt |
| Dataset | Breast Cancer Detection (Roboflow) |
| Epochs | 30 |
| Batch Size | 32 |
| Image Size | 640Γ640 |
| Optimizer | Auto |
| Freeze Layers | 10 |
| Precision | FP16 (half=True) |
| Export Format | ONNX |
| Device | GPU (0,1) |
π©Ί Example Detection
π Results
| Metric | Value |
|---|---|
| mAP50 | 0.957 |
| mAP50-95 | 0.735 |
| Precision (B) | 0.948 |
| Recall (B) | 0.898 |
| Inference Time (ms) | 33.57 |
| FPS | 29.79 |
| Model Size (MB) | 5.2 |
FP16 inference maintained identical accuracy to FP32 while reducing latency.
Layer freezing improved training stability and avoided overfitting on the limited dataset.
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