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Argument Type Default Description
data str None Specifies the path to the dataset configuration file (e.g., coco8.yaml). This file includes paths to validation data, class names, and number of classes.
imgsz int 640 Defines the size of input images. All images are resized to this dimension before processing.
batch int 16 Sets the number of images per batch. Use -1 for AutoBatch, which automatically adjusts based on GPU memory availability.
save_json bool False If True, saves the results to a JSON file for further analysis or integration with other tools.
save_hybrid bool False If True, saves a hybrid version of labels that combines original annotations with additional model predictions.
conf float 0.001 Sets the minimum confidence threshold for detections. Detections with confidence below this threshold are discarded.
iou float 0.6 Sets the Intersection Over Union (IoU) threshold for Non-Maximum Suppression (NMS). Helps in reducing duplicate detections.
max_det int 300 Limits the maximum number of detections per image. Useful in dense scenes to prevent excessive detections.
half bool True Enables half-precision (FP16) computation, reducing memory usage and potentially increasing speed with minimal impact on accuracy.
device str None Specifies the device for validation (cpu, cuda:0, etc.). Allows flexibility in utilizing CPU or GPU resources.
dnn bool False If True, uses the OpenCV DNN module for ONNX model inference, offering an alternative to PyTorch inference methods.
plots bool False When set to True, generates and saves plots of predictions versus ground truth for visual evaluation of the model's performance.
rect bool False If True, uses rectangular inference for batching, reducing padding and potentially increasing speed and efficiency.
split str val Determines the dataset split to use for validation (val, test, or train). Allows flexibility in choosing the data segment for performance evaluation.