I've got a dataset coming in via
train_ds = tf.keras.preprocessing.image_dataset_from_directory( data_dir, validation_split=validation_split, subset="training", seed=seed, image_size=(img_height, img_width), batch_size=batch_size)
(Based around code from https://www.tensorflow.org/tutorials/load_data/images with very minor changes to configuration)
I'm converting the eventual model to a TFLite model, which is working, but I think the model's too large for the end device so I'm trying to run post training quantization by supplying a representative_dataset (like https://www.tensorflow.org/lite/performance/post_training_quantization)
representative_dataset
However I can't work out how to turn the dataset generated from image_dataset_from_directory into the format expected by representative_dataset
image_dataset_from_directory
The example provided has
def representative_dataset(): for data in tf.data.Dataset.from_tensor_slices((images)).batch(1).take(100): yield [data.astype(tf.float32)]
I've tried things like
def representative_dataset(): for data in train_ds.batch(1).take(100): yield [data.astype(tf.float32)]
but that wasn't it
Looks like
def representative_dataset(): for image_batch, labels_batch in train_ds: yield [image_batch]
Was what I was looking for, image_batch is already tf.float32
tf.float32
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