Moved training of epoch into separate function
Signed-off-by: Jim Martens <github@2martens.de>
This commit is contained in:
@ -20,7 +20,7 @@ import math
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import os
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import pickle
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import time
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from typing import Callable, Sequence, Tuple
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from typing import Callable, Dict, Sequence, Tuple
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import numpy as np
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import tensorflow as tf
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@ -96,7 +96,7 @@ def prepare_training_data(test_fold_id: int, inlier_classes: Sequence[int], tota
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return train_dataset, valid_dataset
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def train(dataset: tf.data.Dataset, iteration: int, result_prefix: str,
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def train(dataset: tf.data.Dataset, iteration: int,
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weights_prefix: str,
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channels: int = 1, zsize: int = 32, lr: float = 0.002,
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batch_size: int = 128, train_epoch: int = 80,
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@ -106,7 +106,6 @@ def train(dataset: tf.data.Dataset, iteration: int, result_prefix: str,
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:param dataset: train dataset
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:param iteration: identifier for the current training run
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:param result_prefix: prefix for result images
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:param weights_prefix: prefix for weights directory
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:param channels: number of channels in input image (default: 1)
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:param zsize: size of the intermediary z (default: 32)
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@ -116,31 +115,14 @@ def train(dataset: tf.data.Dataset, iteration: int, result_prefix: str,
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:param verbose: if True prints train progress info to console (default: True)
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"""
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# get models
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encoder = Encoder(zsize)
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decoder = Decoder(channels)
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z_discriminator = ZDiscriminator()
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x_discriminator = XDiscriminator()
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# define optimizers
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learning_rate_var = k.variable(lr)
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decoder_optimizer = AdamOptimizer(learning_rate=learning_rate_var, beta1=0.5, beta2=0.999)
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enc_dec_optimizer = AdamOptimizer(learning_rate=learning_rate_var, beta1=0.5, beta2=0.999)
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z_discriminator_optimizer = AdamOptimizer(learning_rate=learning_rate_var, beta1=0.5, beta2=0.999)
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x_discriminator_optimizer = AdamOptimizer(learning_rate=learning_rate_var, beta1=0.5, beta2=0.999)
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# train
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# non-preserved tensors
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y_real = k.ones(batch_size)
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y_fake = k.zeros(batch_size)
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sample = k.expand_dims(k.expand_dims(k.random_normal((64, zsize)), axis=1), axis=1)
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# z generator function
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z_generator = functools.partial(get_z_variable, batch_size=batch_size, zsize=zsize)
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global_step_decoder = k.variable(0, dtype=tf.int64)
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global_step_enc_dec = k.variable(0, dtype=tf.int64)
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global_step_xd = k.variable(0, dtype=tf.int64)
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global_step_zd = k.variable(0, dtype=tf.int64)
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# non-preserved python variables
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encoder_lowest_loss = math.inf
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decoder_lowest_loss = math.inf
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enc_dec_lowest_loss = math.inf
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@ -149,148 +131,62 @@ def train(dataset: tf.data.Dataset, iteration: int, result_prefix: str,
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total_lowest_loss = math.inf
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grace_period = GRACE
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# checkpointed tensors and variables
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checkpointables = {
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'learning_rate_var': k.variable(lr),
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}
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checkpointables.update({
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# get models
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'encoder': Encoder(zsize),
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'decoder': Decoder(channels),
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'z_discriminator': ZDiscriminator(),
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'x_discriminator': XDiscriminator(),
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# define optimizers
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'decoder_optimizer': AdamOptimizer(learning_rate=checkpointables['learning_rate_var'], beta1=0.5, beta2=0.999),
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'enc_dec_optimizer': AdamOptimizer(learning_rate=checkpointables['learning_rate_var'], beta1=0.5, beta2=0.999),
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'z_discriminator_optimizer': AdamOptimizer(learning_rate=checkpointables['learning_rate_var'],
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beta1=0.5, beta2=0.999),
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'x_discriminator_optimizer': AdamOptimizer(learning_rate=checkpointables['learning_rate_var'],
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beta1=0.5, beta2=0.999),
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# global step counter
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'global_step_decoder': k.variable(0, dtype=tf.int64),
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'global_step_enc_dec': k.variable(0, dtype=tf.int64),
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'global_step_xd': k.variable(0, dtype=tf.int64),
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'global_step_zd': k.variable(0, dtype=tf.int64),
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})
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# checkpoint
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checkpoint_dir = os.path.join(weights_prefix, str(iteration) + '/')
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os.makedirs(checkpoint_dir, exist_ok=True)
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checkpoint_prefix = os.path.join(checkpoint_dir, 'ckpt')
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latest_checkpoint = tf.train.latest_checkpoint(checkpoint_dir)
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checkpoint = tf.train.Checkpoint(encoder=encoder,
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decoder=decoder,
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z_discriminator=z_discriminator,
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x_discriminator=x_discriminator,
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decoder_optimizer=decoder_optimizer,
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z_discriminator_optimizer=z_discriminator_optimizer,
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x_discriminator_optimizer=x_discriminator_optimizer,
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enc_dec_optimizer=enc_dec_optimizer,
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global_step_decoder=global_step_decoder,
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global_step_enc_dec=global_step_enc_dec,
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global_step_xd=global_step_xd,
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global_step_zd=global_step_zd,
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learning_rate_var=learning_rate_var)
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if latest_checkpoint is not None:
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# if there is a checkpoint in the current training iteration, proceed from there
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checkpoint.restore(latest_checkpoint)
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checkpoint = tf.train.Checkpoint(**checkpointables)
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checkpoint.restore(latest_checkpoint)
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for epoch in range(train_epoch):
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# define loss variables
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encoder_loss_avg = tfe.metrics.Mean(name='encoder_loss', dtype=tf.float32)
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decoder_loss_avg = tfe.metrics.Mean(name='decoder_loss', dtype=tf.float32)
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enc_dec_loss_avg = tfe.metrics.Mean(name='encoder_decoder_loss', dtype=tf.float32)
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zd_loss_avg = tfe.metrics.Mean(name='z_discriminator_loss', dtype=tf.float32)
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xd_loss_avg = tfe.metrics.Mean(name='x_discriminator_loss', dtype=tf.float32)
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outputs = _train_one_epoch(epoch, dataset, targets_real=y_real,
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targets_fake=y_fake, z_generator= z_generator,
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verbose=verbose,
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**checkpointables)
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epoch_start_time = time.time()
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# update learning rate
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if (epoch + 1) % 30 == 0:
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learning_rate_var.assign(learning_rate_var.value() / 4)
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if verbose:
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print("learning rate change!")
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log_frequency = 10
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batch_iteration = k.variable(0, dtype=tf.int64)
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for x, _ in dataset:
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# x discriminator
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_xd_train_loss = train_xdiscriminator_step(x_discriminator=x_discriminator,
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decoder=decoder,
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optimizer=x_discriminator_optimizer,
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inputs=x,
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targets_real=y_real,
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targets_fake=y_fake,
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global_step=global_step_xd,
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z_generator=z_generator)
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xd_loss_avg(_xd_train_loss)
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# --------
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# decoder
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_decoder_train_loss = train_decoder_step(decoder=decoder,
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x_discriminator=x_discriminator,
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optimizer=decoder_optimizer,
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targets=y_real,
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global_step=global_step_decoder,
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z_generator=z_generator)
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decoder_loss_avg(_decoder_train_loss)
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# ---------
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# z discriminator
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_zd_train_loss = train_zdiscriminator_step(z_discriminator=z_discriminator,
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encoder=encoder,
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optimizer=z_discriminator_optimizer,
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inputs=x,
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targets_real=y_real,
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targets_fake=y_fake,
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global_step=global_step_zd,
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z_generator=z_generator)
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zd_loss_avg(_zd_train_loss)
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# -----------
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# encoder + decoder
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encoder_loss, reconstruction_loss, x_decoded = train_enc_dec_step(encoder=encoder,
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decoder=decoder,
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z_discriminator=z_discriminator,
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optimizer=enc_dec_optimizer,
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inputs=x,
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targets=y_real,
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global_step=global_step_enc_dec)
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enc_dec_loss_avg(reconstruction_loss)
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encoder_loss_avg(encoder_loss)
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if int(global_step_decoder % log_frequency) == 0:
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# log the losses every log frequency batches
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summary_ops_v2.scalar('encoder_loss', encoder_loss_avg.result(False), step=global_step_enc_dec)
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summary_ops_v2.scalar('decoder_loss', decoder_loss_avg.result(False), step=global_step_decoder)
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summary_ops_v2.scalar('encoder_decoder_loss', enc_dec_loss_avg.result(False), step=global_step_enc_dec)
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summary_ops_v2.scalar('z_discriminator_loss', zd_loss_avg.result(False), step=global_step_zd)
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summary_ops_v2.scalar('x_discriminator_loss', xd_loss_avg.result(False), step=global_step_xd)
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if int(batch_iteration) == 0:
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directory = 'results' + str(inlier_classes[0])
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if not os.path.exists(directory):
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os.makedirs(directory)
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comparison = k.concatenate([x[:64], x_decoded[:64]], axis=0)
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grid = prepare_image(comparison.cpu(), nrow=64)
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summary_ops_v2.image(name='reconstruction_' + str(epoch),
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tensor=k.expand_dims(grid, axis=0), max_images=1,
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step=global_step_decoder)
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from PIL import Image
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filename = os.path.join(result_prefix, 'reconstruction_' + str(epoch) + '.png')
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ndarr = grid.cpu().numpy()
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im = Image.fromarray(ndarr)
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im.save(filename)
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batch_iteration.assign_add(1)
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epoch_end_time = time.time()
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per_epoch_time = epoch_end_time - epoch_start_time
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# final losses of epoch
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decoder_loss = decoder_loss_avg.result(False)
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encoder_loss = encoder_loss_avg.result(False)
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enc_dec_loss = enc_dec_loss_avg.result(False)
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xd_loss = xd_loss_avg.result(False)
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zd_loss = zd_loss_avg.result(False)
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if verbose:
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print((
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f"[{epoch + 1:d}/{train_epoch:d}] - "
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f"train time: {per_epoch_time:.2f}, "
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f"Decoder loss: {decoder_loss:.3f}, "
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f"X Discriminator loss: {xd_loss:.3f}, "
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f"Z Discriminator loss: {zd_loss:.3f}, "
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f"Encoder + Decoder loss: {enc_dec_loss:.3f}, "
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f"Encoder loss: {encoder_loss:.3f}"
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f"train time: {outputs['per_epoch_time']:.2f}, "
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f"Decoder loss: {outputs['decoder_loss']:.3f}, "
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f"X Discriminator loss: {outputs['xd_loss']:.3f}, "
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f"Z Discriminator loss: {outputs['zd_loss']:.3f}, "
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f"Encoder + Decoder loss: {outputs['enc_dec_loss']:.3f}, "
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f"Encoder loss: {outputs['encoder_loss']:.3f}"
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))
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# save sample image
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resultsample = decoder(sample).cpu()
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directory = 'results' + str(inlier_classes[0])
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os.makedirs(directory, exist_ok=True)
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grid = prepare_image(resultsample)
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summary_ops_v2.image(name='sample_' + str(epoch), tensor=k.expand_dims(grid, axis=0),
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max_images=1, step=global_step_decoder)
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from PIL import Image
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filename = os.path.join(result_prefix, 'sample_' + str(epoch) + '.png')
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ndarr = grid.cpu().numpy()
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im = Image.fromarray(ndarr)
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im.save(filename)
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# save sample image summary
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def _save_sample(decoder: Decoder, global_step_decoder: tf.Variable) -> None:
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resultsample = decoder(sample).cpu()
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grid = prepare_image(resultsample)
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summary_ops_v2.image(name='sample_' + str(epoch), tensor=k.expand_dims(grid, axis=0),
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max_images=1, step=global_step_decoder)
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_save_sample(**checkpointables)
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# save weights at end of epoch
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checkpoint.save(checkpoint_prefix)
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@ -298,29 +194,30 @@ def train(dataset: tf.data.Dataset, iteration: int, result_prefix: str,
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# check for improvements in error reduction - otherwise early stopping
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strike = False
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total_strike = False
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total_loss = encoder_loss + decoder_loss + enc_dec_loss + xd_loss + zd_loss
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total_loss = outputs['encoder_loss'] + outputs['decoder_loss'] + outputs['enc_dec_loss'] + \
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outputs['xd_loss'] + outputs['zd_loss']
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if total_loss < total_lowest_loss:
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total_lowest_loss = total_loss
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elif total_loss > 6:
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total_strike = True
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if encoder_loss < encoder_lowest_loss:
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encoder_lowest_loss = encoder_loss
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if outputs['encoder_loss'] < encoder_lowest_loss:
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encoder_lowest_loss = outputs['encoder_loss']
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else:
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strike = True
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if decoder_loss < decoder_lowest_loss:
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decoder_lowest_loss = decoder_loss
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if outputs['decoder_loss'] < decoder_lowest_loss:
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decoder_lowest_loss = outputs['decoder_loss']
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else:
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strike = True
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if enc_dec_loss < enc_dec_lowest_loss:
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enc_dec_lowest_loss = enc_dec_loss
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if outputs['enc_dec_loss'] < enc_dec_lowest_loss:
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enc_dec_lowest_loss = outputs['enc_dec_loss']
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else:
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strike = True
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if xd_loss < xd_lowest_loss:
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xd_lowest_loss = xd_loss
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if outputs['xd_loss'] < xd_lowest_loss:
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xd_lowest_loss = outputs['xd_loss']
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else:
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strike = True
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if zd_loss < zd_lowest_loss:
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zd_lowest_loss = zd_loss
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if outputs['zd_loss'] < zd_lowest_loss:
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zd_lowest_loss = outputs['zd_loss']
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else:
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strike = True
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@ -344,6 +241,114 @@ def train(dataset: tf.data.Dataset, iteration: int, result_prefix: str,
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checkpoint.save(checkpoint_prefix)
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def _train_one_epoch(epoch: int, dataset: tf.data.Dataset, targets_real: tf.Tensor,
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verbose: bool,
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targets_fake: tf.Tensor, z_generator: Callable[[], tf.Variable],
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learning_rate_var: tf.Variable,
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decoder: Decoder, encoder: Encoder, x_discriminator: XDiscriminator,
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z_discriminator: ZDiscriminator, decoder_optimizer: tf.train.Optimizer,
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x_discriminator_optimizer: tf.train.Optimizer,
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z_discriminator_optimizer: tf.train.Optimizer,
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enc_dec_optimizer: tf.train.Optimizer,
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global_step_xd: tf.Variable, global_step_zd: tf.Variable,
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global_step_decoder: tf.Variable,
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global_step_enc_dec: tf.Variable) -> Dict[str, float]:
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epoch_start_time = time.time()
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# define loss variables
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encoder_loss_avg = tfe.metrics.Mean(name='encoder_loss', dtype=tf.float32)
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decoder_loss_avg = tfe.metrics.Mean(name='decoder_loss', dtype=tf.float32)
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enc_dec_loss_avg = tfe.metrics.Mean(name='encoder_decoder_loss', dtype=tf.float32)
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zd_loss_avg = tfe.metrics.Mean(name='z_discriminator_loss', dtype=tf.float32)
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xd_loss_avg = tfe.metrics.Mean(name='x_discriminator_loss', dtype=tf.float32)
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# update learning rate
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if (epoch + 1) % 30 == 0:
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learning_rate_var.assign(learning_rate_var.value() / 4)
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if verbose:
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print("learning rate change!")
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log_frequency = 10
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batch_iteration = k.variable(0, dtype=tf.int64)
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for x, _ in dataset:
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# x discriminator
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_xd_train_loss = train_xdiscriminator_step(x_discriminator=x_discriminator,
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decoder=decoder,
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optimizer=x_discriminator_optimizer,
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inputs=x,
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targets_real=targets_real,
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targets_fake=targets_fake,
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global_step=global_step_xd,
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z_generator=z_generator)
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xd_loss_avg(_xd_train_loss)
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# --------
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# decoder
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_decoder_train_loss = train_decoder_step(decoder=decoder,
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x_discriminator=x_discriminator,
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optimizer=decoder_optimizer,
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targets=targets_real,
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global_step=global_step_decoder,
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z_generator=z_generator)
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decoder_loss_avg(_decoder_train_loss)
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# ---------
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# z discriminator
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_zd_train_loss = train_zdiscriminator_step(z_discriminator=z_discriminator,
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encoder=encoder,
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optimizer=z_discriminator_optimizer,
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inputs=x,
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targets_real=targets_real,
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targets_fake=targets_fake,
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global_step=global_step_zd,
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z_generator=z_generator)
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zd_loss_avg(_zd_train_loss)
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# -----------
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# encoder + decoder
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encoder_loss, reconstruction_loss, x_decoded = train_enc_dec_step(encoder=encoder,
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decoder=decoder,
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z_discriminator=z_discriminator,
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optimizer=enc_dec_optimizer,
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inputs=x,
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targets=targets_real,
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global_step=global_step_enc_dec)
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enc_dec_loss_avg(reconstruction_loss)
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encoder_loss_avg(encoder_loss)
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if int(global_step_decoder % log_frequency) == 0:
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# log the losses every log frequency batches
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summary_ops_v2.scalar('encoder_loss', encoder_loss_avg.result(False), step=global_step_enc_dec)
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summary_ops_v2.scalar('decoder_loss', decoder_loss_avg.result(False), step=global_step_decoder)
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summary_ops_v2.scalar('encoder_decoder_loss', enc_dec_loss_avg.result(False), step=global_step_enc_dec)
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summary_ops_v2.scalar('z_discriminator_loss', zd_loss_avg.result(False), step=global_step_zd)
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summary_ops_v2.scalar('x_discriminator_loss', xd_loss_avg.result(False), step=global_step_xd)
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if int(batch_iteration) == 0:
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comparison = k.concatenate([x[:64], x_decoded[:64]], axis=0)
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grid = prepare_image(comparison.cpu(), nrow=64)
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summary_ops_v2.image(name='reconstruction_' + str(epoch),
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tensor=k.expand_dims(grid, axis=0), max_images=1,
|
||||
step=global_step_decoder)
|
||||
|
||||
batch_iteration.assign_add(1)
|
||||
|
||||
epoch_end_time = time.time()
|
||||
per_epoch_time = epoch_end_time - epoch_start_time
|
||||
|
||||
# final losses of epoch
|
||||
outputs = {
|
||||
'decoder_loss': decoder_loss_avg.result(False),
|
||||
'encoder_loss': encoder_loss_avg.result(False),
|
||||
'enc_dec_loss': enc_dec_loss_avg.result(False),
|
||||
'xd_loss': xd_loss_avg.result(False),
|
||||
'zd_loss': zd_loss_avg.result(False),
|
||||
'per_epoch_time': per_epoch_time,
|
||||
}
|
||||
|
||||
return outputs
|
||||
|
||||
|
||||
def train_xdiscriminator_step(x_discriminator: XDiscriminator, decoder: Decoder,
|
||||
optimizer: tf.train.Optimizer,
|
||||
inputs: tf.Tensor, targets_real: tf.Tensor,
|
||||
@ -525,5 +530,4 @@ if __name__ == "__main__":
|
||||
'./summaries/train/number-' + str(inlier_classes[0]) + '/' + str(iteration))
|
||||
with train_summary_writer.as_default(), summary_ops_v2.always_record_summaries():
|
||||
train(dataset=train_dataset, iteration=iteration,
|
||||
result_prefix='results' + str(inlier_classes[0]) + '/',
|
||||
weights_prefix='weights/' + str(inlier_classes[0]) + '/')
|
||||
|
||||
Reference in New Issue
Block a user