Key Summary: This stream shows how to fine-tune YOLO26 on a custom dataset from start to finish. Create a dataset and train a model that can see individual coins, sum their value, and run in real-time (or via API).
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YOLOv8 is the latest installment of the highly influential YOLO (You Only Look Once) architecture. This stream shows how to fine-tune YOLO26 on a custom dataset from start to finish. Create a dataset and train a model that can see individual coins, sum their value, and run in real-time (or via API).
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- Create a dataset and train a model that can see individual coins, sum their value, and run in real-time (or via API).
- This stream shows how to fine-tune YOLO26 on a custom dataset from start to finish.
- YOLOv8 is the latest installment of the highly influential YOLO (You Only Look Once) architecture.
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