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train_yolor


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Train YoloR object detection models.

YOLOR illustration

🚀 Use with Ikomia API

1. Install Ikomia API

We strongly recommend using a virtual environment. If you're not sure where to start, we offer a tutorial here.

pip install ikomia

2. Create your workflow

from ikomia.dataprocess.workflow import Workflow

# Init your workflow
wf = Workflow()    

# Add dataset loader
coco = wf.add_task(name="dataset_coco")

coco.set_parameters({
    "json_file": "path/to/json/annotation/file",
    "image_folder": "path/to/image/folder",
    "task": "detection",
}) 

train = wf.add_task(name="train_yolor", auto_connect=True)

# Launch your training on your data
wf.run()

☀️ Use with Ikomia Studio

Ikomia Studio offers a friendly UI with the same features as the API.

  • If you haven't started using Ikomia Studio yet, download and install it from this page.

  • For additional guidance on getting started with Ikomia Studio, check out this blog post.

📝 Set algorithm parameters

  • model_name (str) - default 'yolor_p6': Name of the pre-trained model. Other model: "yolor_w6"
  • epochs (int) - default '50': Number of complete passes through the training dataset.
  • batch_size (int) - default '8': Number of samples processed before the model is updated.
  • train_imgsz (int) - default '512': Size of the training image.
  • test_imgsz (int) - default '512': Size of the eval image.
  • dataset_split_ratio (float) – default '90': Divide the dataset into train and evaluation sets ]0, 100[.
  • eval_period (int) - default '5': Interval between evaluations.
  • output_folder (str, optional): path to where the model will be saved.

Parameters should be in strings format when added to the dictionary.

from ikomia.dataprocess.workflow import Workflow

# Init your workflow
wf = Workflow()    

# Add dataset loader
coco = wf.add_task(name="dataset_coco")

coco.set_parameters({
    "json_file": "path/to/json/annotation/file",
    "image_folder": "path/to/image/folder",
    "task": "detection",
}) 

train = wf.add_task(name="train_yolor", auto_connect=True)
train.set_parameters({
    "model_name": "yolor_p6",
    "epochs": "5",
    "batch_size": "4",
    "input_width": "512",
    "input_height": "512",
    "dataset_split_ratio": "90"
}) 

# Launch your training on your data
wf.run()