Model Training
Training Details
The YOLOv8l model was fine-tuned on a cloud A100 GPU (NVIDIA A100-SXM4-40GB) using approximately 24,000 images from the Augmented Startups Playing Cards dataset.
Training Configuration:
- Model: YOLOv8l (YOLO v8 Large)
- Dataset: Augmented Startups Playing Cards (Roboflow Universe)
- Training Images: ~24,000 images
- Classes: 52 (one for each playing card)
- Epochs: 50
- Image Size: 640x640
- Batch Size: 16
- Hardware: NVIDIA A100-SXM4-40GB GPU
- Framework: Ultralytics YOLOv8
Training Process:
The training was performed using the Ultralytics YOLOv8 framework. The process involved:
- Dataset Preparation: Downloaded the Augmented Startups Playing Cards dataset from Roboflow in YOLOv8 format
- Model Initialization: Started with pre-trained YOLOv8l weights (
yolov8l.pt) - Fine-tuning: Trained for 50 epochs on the playing cards dataset
- Model Export: Saved the fine-tuned model as
playing-cards.pt
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