Try in Colab
Get started
-
Install
ultralytics
andwandb
.The development team has tested the integration with- Command Line
- Notebook
ultralyticsv8.0.238
and below. To report any issues with the integration, create a GitHub issue with the tagyolov8
.
Track experiments and visualize validation results
Try in Colab
wandb.integration.ultralytics.add_wandb_callback
function.
YOLO
model of your choice, and invoke the add_wandb_callback
function on it before performing inference with the model. This ensures that when you perform training, fine-tuning, validation, or inference, it automatically saves the experiment logs and the images, overlaid with both ground-truth and the respective prediction results using the interactive overlays for computer vision tasks on W&B along with additional insights in a wandb.Table
.
Visualize prediction results
Try in Colab
wandb.integration.ultralytics.add_wandb_callback
function.
wandb.init()
. Next, Initialize your desired YOLO
model and invoke the add_wandb_callback
function on it before you perform inference with the model. This ensures that when you perform inference, it automatically logs the images overlaid with your interactive overlays for computer vision tasks along with additional insights in a wandb.Table
.
wandb.init()
in case of a training or fine-tuning workflow. However, if the code involves only prediction, you must explicitly create a run.
Here’s how the interactive bbox overlay looks:
For more details, see the W&B image overlays guide.