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Pytorch command line application to train a flower image classifier and predict flower images.

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MSWagner/Flower-Classifier-Pytorch

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Flower image classifier with Pytorch

Project code for Udacity's AI Programming with Python Nanodegree program. In this project, students first develop code for an image classifier built with PyTorch, then convert it into a command line application.

Jupyter Notebook Files

Command line application

Train classifier:

python train.py <data_dir> --save_dir <checkpoint folder> -g

Example:
python train.py flowers --save_dir checkpoints -g
Argument Short Default Description
data_dir Folder path for the flower images
--save_dir checkpoints Folder path to save the checkpoints
--arch vgg16 CNN Model Architecture (vgg16 or densenet121)
--learning_rate -l 0.001 Learning rate
--epochs -e 1 Epochs to train the model
--hidden_units_01 -h1 4096 Hidden units of the first layer
--hidden_units_02 -h2 1024 Hidden units of the second layer
--checkpoint_path -cp None Path of a checkpoint you want to reuse
--gpu -g False Use gpu if available

Predict image:

python predict.py <image_path> <checkpoint_path> -g

Example:
python predict.py flowers/test/1/image_06764.jpg checkpoints/checkpoint_best_accuracy.pth -g
Argument Short Default Description
image_path Image path for the prediction
checkpoint_path checkpoints/checkpoint_best_accuracy.pth Checkpoint path
--top_k -k 1 Number of the top k most likely classes
--json_path -json cat_to_name.json JSON file path to map categories to real names
--gpu -g False Use gpu if available

License

This project is licensed under the MIT License - see the LICENSE.md file for details

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Pytorch command line application to train a flower image classifier and predict flower images.

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