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To train the network: python3 main.py --mode train To run the network: python3 main.py --mode run Command line arguments include: --mode 'train' or 'run' the network --data_dir directory dataset is stored, must include 'melody' and 'chords' folders --save_dir directory where model checkpoints are saved during training --num_units number of units in each layer of the model --num_layers number of layers in the model --batch_size number of simultaneous batches to train on --seq_length sequence length of each batch --num_epochs number of times through the data set the model will train for --grad_clip float value to clip gradients at --learning_rate float value to set the AdamOptimizer learning rate at --output_keep_prob float output dropout value --input_keep_prob float input dropout value Ensure that melody data is in the form: 32 32 32 32 35 35 35 35 38 38 38 38 39 39 39 39 (4 midi note values per beat (16th notes)) Ensure that chord data is in the following form: Am7 Am7 D7 D7 (4 chords per bar (1/4 notes) from the chords listed in the dataset/out_vocab.txt chords document) Ensure the same number of beats and bars (line numbers) appear in each file. You may add new chords to the out_vocab.txt file but deletion of saved vocab.pkl and data.npy files and data preprocessing must be carried out before re-training can occur.
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Lightweight Jazz chord accompaniment RNN for single note improvising using TensorFlow in Python.
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