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Bugfix for consecutive training steps using the same batch #202

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32 changes: 32 additions & 0 deletions my_model.yaml
Original file line number Diff line number Diff line change
@@ -0,0 +1,32 @@
augmentation_batch_size: 16
augmentation_rounds: 1
background_paths:
- ./audioset_16k
- ./koda_audio
#- ./fma
background_paths_duplication_rate:
- 1
batch_n_per_class:
ACAV100M_sample: 1024
adversarial_negative: 400
positive: 400
custom_negative_phrases: []
false_positive_validation_data_path: validation_set_features.npy
feature_data_files:
ACAV100M_sample: openwakeword_features_ACAV100M_2000_hrs_16bit.npy
layer_size: 128
max_negative_weight: 1500
model_name: koda_stop
model_type: dnn
n_samples: 100000
n_samples_val: 2000
output_dir: ./koda_stop_24
piper_sample_generator_path: ./piper-sample-generator
rir_paths:
- ./mit_rirs
steps: 25000
target_false_positives_per_hour: 2
target_phrase:
- koda stop
tts_batch_size: 50
include_adversarial_examples: true
2 changes: 1 addition & 1 deletion openwakeword/train.py
Original file line number Diff line number Diff line change
Expand Up @@ -862,7 +862,7 @@ def __iter__(self):
else:
n_cpus = n_cpus//2
X_train = torch.utils.data.DataLoader(IterDataset(batch_generator),
batch_size=None, num_workers=n_cpus, prefetch_factor=16)
batch_size=None)

X_val_fp = np.load(config["false_positive_validation_data_path"])
X_val_fp = np.array([X_val_fp[i:i+input_shape[0]] for i in range(0, X_val_fp.shape[0]-input_shape[0], 1)]) # reshape to match model
Expand Down