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README.md
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@@ -102,11 +102,11 @@ Finally, split the data into train and validation sets and save them to CSV file
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python scripts/split_dataset.py
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In the previous section, we covered how to set up your dataset and configure your training pipeline using a `Config` class. Now, let's dive into training your model and monitoring its progress using TensorBoard.
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If you're looking for examples of data transformations and augmentations, you can explore the provided `notebook.ipynb` file. This notebook contains various examples of data preprocessing techniques, such as resizing, cropping, rotation, and more.
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3. Open the notebook and run the cells to see different transformation and augmentation examples.
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To train your model, you can use the provided `train.py` script. Make sure you have set up your environment correctly and installed all dependencies as mentioned earlier. Here's how you can run the training pipeline:
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This command will execute the training script and start training your model based on the parameters specified in your `Config` class.
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TensorBoard is a powerful tool for visualizing and monitoring the training process. You can use it to track metrics such as loss, accuracy, and learning rate over time, as well as visualize model graphs and embeddings.
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python scripts/split_dataset.py
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```
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## Training Model and Monitoring Progress with TensorBoard
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In the previous section, we covered how to set up your dataset and configure your training pipeline using a `Config` class. Now, let's dive into training your model and monitoring its progress using TensorBoard.
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### Exploring Data Transformations and Augmentations
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If you're looking for examples of data transformations and augmentations, you can explore the provided `notebook.ipynb` file. This notebook contains various examples of data preprocessing techniques, such as resizing, cropping, rotation, and more.
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3. Open the notebook and run the cells to see different transformation and augmentation examples.
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### Training the Model
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To train your model, you can use the provided `train.py` script. Make sure you have set up your environment correctly and installed all dependencies as mentioned earlier. Here's how you can run the training pipeline:
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This command will execute the training script and start training your model based on the parameters specified in your `Config` class.
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### Monitoring Training Progress with TensorBoard
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TensorBoard is a powerful tool for visualizing and monitoring the training process. You can use it to track metrics such as loss, accuracy, and learning rate over time, as well as visualize model graphs and embeddings.
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