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YOLO settings and hyperparameters play a critical role in the model's performance, speed, and accuracy. These settings
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and hyperparameters can affect the model's behavior at various stages of the model development process, including
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training, validation, and prediction.
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YOLOv8 'yolo' CLI commands use the following syntax:
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!!! example ""
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=== "CLI"
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```bash
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yolo TASK MODE ARGS
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```
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Where:
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- `TASK` (optional) is one of `[detect, segment, classify]`. If it is not passed explicitly YOLOv8 will try to guess
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the `TASK` from the model type.
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- `MODE` (required) is one of `[train, val, predict, export]`
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- `ARGS` (optional) are any number of custom `arg=value` pairs like `imgsz=320` that override defaults.
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For a full list of available `ARGS` see the [Configuration](cfg.md) page and `defaults.yaml`
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GitHub [source](https://github.com/ultralytics/ultralytics/blob/main/ultralytics/yolo/cfg/default.yaml).
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#### Tasks
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YOLO models can be used for a variety of tasks, including detection, segmentation, and classification. These tasks
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differ in the type of output they produce and the specific problem they are designed to solve.
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- **Detect**: Detection tasks involve identifying and localizing objects or regions of interest in an image or video.
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YOLO models can be used for object detection tasks by predicting the bounding boxes and class labels of objects in an
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image.
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- **Segment**: Segmentation tasks involve dividing an image or video into regions or pixels that correspond to
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different objects or classes. YOLO models can be used for image segmentation tasks by predicting a mask or label for
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each pixel in an image.
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- **Classify**: Classification tasks involve assigning a class label to an input, such as an image or text. YOLO
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models can be used for image classification tasks by predicting the class label of an input image.
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#### Modes
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YOLO models can be used in different modes depending on the specific problem you are trying to solve. These modes
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include train, val, and predict.
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- **Train**: The train mode is used to train the model on a dataset. This mode is typically used during the development
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and
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testing phase of a model.
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- **Val**: The val mode is used to evaluate the model's performance on a validation dataset. This mode is typically used
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to
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tune the model's hyperparameters and detect overfitting.
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- **Predict**: The predict mode is used to make predictions with the model on new data. This mode is typically used in
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production or when deploying the model to users.
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| Key | Value | Description |
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|--------|----------|-----------------------------------------------------------------------------------------------|
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| task | 'detect' | inference task, i.e. detect, segment, or classify |
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| mode | 'train' | YOLO mode, i.e. train, val, predict, or export |
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| resume | False | resume training from last checkpoint or custom checkpoint if passed as resume=path/to/best.pt |
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| model | null | path to model file, i.e. yolov8n.pt, yolov8n.yaml |
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| data | null | path to data file, i.e. i.e. coco128.yaml |
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### Training
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Training settings for YOLO models refer to the various hyperparameters and configurations used to train the model on a
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dataset. These settings can affect the model's performance, speed, and accuracy. Some common YOLO training settings
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include the batch size, learning rate, momentum, and weight decay. Other factors that may affect the training process
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include the choice of optimizer, the choice of loss function, and the size and composition of the training dataset. It
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is important to carefully tune and experiment with these settings to achieve the best possible performance for a given
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task.
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| Key | Value | Description |
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|-----------------|--------|-----------------------------------------------------------------------------|
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| model | null | path to model file, i.e. yolov8n.pt, yolov8n.yaml |
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| data | null | path to data file, i.e. i.e. coco128.yaml |
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| epochs | 100 | number of epochs to train for |
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| patience | 50 | epochs to wait for no observable improvement for early stopping of training |
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| batch | 16 | number of images per batch (-1 for AutoBatch) |
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| imgsz | 640 | size of input images as integer or w,h |
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| save | True | save train checkpoints and predict results |
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| cache | False | True/ram, disk or False. Use cache for data loading |
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| device | null | device to run on, i.e. cuda device=0 or device=0,1,2,3 or device=cpu |
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| workers | 8 | number of worker threads for data loading (per RANK if DDP) |
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| project | null | project name |
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| name | null | experiment name |
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| exist_ok | False | whether to overwrite existing experiment |
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| pretrained | False | whether to use a pretrained model |
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| optimizer | 'SGD' | optimizer to use, choices=['SGD', 'Adam', 'AdamW', 'RMSProp'] |
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| verbose | False | whether to print verbose output |
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| seed | 0 | random seed for reproducibility |
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| deterministic | True | whether to enable deterministic mode |
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| single_cls | False | train multi-class data as single-class |
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| image_weights | False | use weighted image selection for training |
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| rect | False | support rectangular training |
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| cos_lr | False | use cosine learning rate scheduler |
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| close_mosaic | 10 | disable mosaic augmentation for final 10 epochs |
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| resume | False | resume training from last checkpoint |
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| lr0 | 0.01 | initial learning rate (i.e. SGD=1E-2, Adam=1E-3) |
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| lrf | 0.01 | final learning rate (lr0 * lrf) |
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| momentum | 0.937 | SGD momentum/Adam beta1 |
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| weight_decay | 0.0005 | optimizer weight decay 5e-4 |
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| warmup_epochs | 3.0 | warmup epochs (fractions ok) |
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| warmup_momentum | 0.8 | warmup initial momentum |
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| warmup_bias_lr | 0.1 | warmup initial bias lr |
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| box | 7.5 | box loss gain |
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| cls | 0.5 | cls loss gain (scale with pixels) |
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| dfl | 1.5 | dfl loss gain |
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| fl_gamma | 0.0 | focal loss gamma (efficientDet default gamma=1.5) |
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| label_smoothing | 0.0 | label smoothing (fraction) |
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| nbs | 64 | nominal batch size |
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| overlap_mask | True | masks should overlap during training (segment train only) |
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| mask_ratio | 4 | mask downsample ratio (segment train only) |
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| dropout | 0.0 | use dropout regularization (classify train only) |
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### Prediction
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Prediction settings for YOLO models refer to the various hyperparameters and configurations used to make predictions
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with the model on new data. These settings can affect the model's performance, speed, and accuracy. Some common YOLO
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prediction settings include the confidence threshold, non-maximum suppression (NMS) threshold, and the number of classes
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to consider. Other factors that may affect the prediction process include the size and format of the input data, the
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presence of additional features such as masks or multiple labels per box, and the specific task the model is being used
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for. It is important to carefully tune and experiment with these settings to achieve the best possible performance for a
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given task.
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| Key | Value | Description |
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|----------------|----------------------|---------------------------------------------------------|
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| source | 'ultralytics/assets' | source directory for images or videos |
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| show | False | show results if possible |
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| save_txt | False | save results as .txt file |
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| save_conf | False | save results with confidence scores |
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| save_crop | Fasle | save cropped images with results |
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| hide_labels | False | hide labels |
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| hide_conf | False | hide confidence scores |
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| vid_stride | False | video frame-rate stride |
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| line_thickness | 3 | bounding box thickness (pixels) |
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| visualize | False | visualize model features |
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| augment | False | apply image augmentation to prediction sources |
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| agnostic_nms | False | class-agnostic NMS |
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| retina_masks | False | use high-resolution segmentation masks |
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| classes | null | filter results by class, i.e. class=0, or class=[0,2,3] |
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### Validation
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Validation settings for YOLO models refer to the various hyperparameters and configurations used to
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evaluate the model's performance on a validation dataset. These settings can affect the model's performance, speed, and
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accuracy. Some common YOLO validation settings include the batch size, the frequency with which validation is performed
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during training, and the metrics used to evaluate the model's performance. Other factors that may affect the validation
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process include the size and composition of the validation dataset and the specific task the model is being used for. It
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is important to carefully tune and experiment with these settings to ensure that the model is performing well on the
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validation dataset and to detect and prevent overfitting.
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| Key | Value | Description |
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|-------------|-------|-----------------------------------------------------------------------------|
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| val | True | validate/test during training |
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| save_json | False | save results to JSON file |
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| save_hybrid | False | save hybrid version of labels (labels + additional predictions) |
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| conf | 0.001 | object confidence threshold for detection (default 0.25 predict, 0.001 val) |
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| iou | 0.6 | intersection over union (IoU) threshold for NMS |
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| max_det | 300 | maximum number of detections per image |
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| half | True | use half precision (FP16) |
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| dnn | False | use OpenCV DNN for ONNX inference |
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| plots | False | show plots during training |
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### Export
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Export settings for YOLO models refer to the various configurations and options used to save or
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export the model for use in other environments or platforms. These settings can affect the model's performance, size,
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and compatibility with different systems. Some common YOLO export settings include the format of the exported model
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file (e.g. ONNX, TensorFlow SavedModel), the device on which the model will be run (e.g. CPU, GPU), and the presence of
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additional features such as masks or multiple labels per box. Other factors that may affect the export process include
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the specific task the model is being used for and the requirements or constraints of the target environment or platform.
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It is important to carefully consider and configure these settings to ensure that the exported model is optimized for
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the intended use case and can be used effectively in the target environment.
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### Augmentation
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Augmentation settings for YOLO models refer to the various transformations and modifications
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applied to the training data to increase the diversity and size of the dataset. These settings can affect the model's
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performance, speed, and accuracy. Some common YOLO augmentation settings include the type and intensity of the
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transformations applied (e.g. random flips, rotations, cropping, color changes), the probability with which each
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transformation is applied, and the presence of additional features such as masks or multiple labels per box. Other
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factors that may affect the augmentation process include the size and composition of the original dataset and the
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specific task the model is being used for. It is important to carefully tune and experiment with these settings to
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ensure that the augmented dataset is diverse and representative enough to train a high-performing model.
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| Key | Value | Description |
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|-------------|-------|-------------------------------------------------|
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| hsv_h | 0.015 | image HSV-Hue augmentation (fraction) |
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| hsv_s | 0.7 | image HSV-Saturation augmentation (fraction) |
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| hsv_v | 0.4 | image HSV-Value augmentation (fraction) |
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| degrees | 0.0 | image rotation (+/- deg) |
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| translate | 0.1 | image translation (+/- fraction) |
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| scale | 0.5 | image scale (+/- gain) |
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| shear | 0.0 | image shear (+/- deg) |
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| perspective | 0.0 | image perspective (+/- fraction), range 0-0.001 |
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| flipud | 0.0 | image flip up-down (probability) |
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| fliplr | 0.5 | image flip left-right (probability) |
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| mosaic | 1.0 | image mosaic (probability) |
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| mixup | 0.0 | image mixup (probability) |
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| copy_paste | 0.0 | segment copy-paste (probability) |
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### Logging, checkpoints, plotting and file management
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Logging, checkpoints, plotting, and file management are important considerations when training a YOLO model.
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- Logging: It is often helpful to log various metrics and statistics during training to track the model's progress and
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diagnose any issues that may arise. This can be done using a logging library such as TensorBoard or by writing log
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messages to a file.
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- Checkpoints: It is a good practice to save checkpoints of the model at regular intervals during training. This allows
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you to resume training from a previous point if the training process is interrupted or if you want to experiment with
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different training configurations.
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- Plotting: Visualizing the model's performance and training progress can be helpful for understanding how the model is
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behaving and identifying potential issues. This can be done using a plotting library such as matplotlib or by
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generating plots using a logging library such as TensorBoard.
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- File management: Managing the various files generated during the training process, such as model checkpoints, log
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files, and plots, can be challenging. It is important to have a clear and organized file structure to keep track of
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these files and make it easy to access and analyze them as needed.
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Effective logging, checkpointing, plotting, and file management can help you keep track of the model's progress and make
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it easier to debug and optimize the training process.
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| Key | Value | Description |
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|----------|--------|------------------------------------------------------------------------------------------------|
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| project | 'runs' | project name |
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| name | 'exp' | experiment name. `exp` gets automatically incremented if not specified, i.e, `exp`, `exp2` ... |
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| exist_ok | False | whether to overwrite existing experiment |
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| plots | False | save plots during train/val |
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| save | False | save train checkpoints and predict results |
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