| import numpy as np
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| import os
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| import sys
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| import ntpath
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| import time
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| from . import util, html
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| from subprocess import Popen, PIPE
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| from scipy.misc import imresize
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|
|
| if sys.version_info[0] == 2:
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| VisdomExceptionBase = Exception
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| else:
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| VisdomExceptionBase = ConnectionError
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|
|
|
|
| def save_images(webpage, visuals, image_path, aspect_ratio=1.0, width=256):
|
| """Save images to the disk.
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|
|
| Parameters:
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| webpage (the HTML class) -- the HTML webpage class that stores these imaegs (see html.py for more details)
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| visuals (OrderedDict) -- an ordered dictionary that stores (name, images (either tensor or numpy) ) pairs
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| image_path (str) -- the string is used to create image paths
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| aspect_ratio (float) -- the aspect ratio of saved images
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| width (int) -- the images will be resized to width x width
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|
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| This function will save images stored in 'visuals' to the HTML file specified by 'webpage'.
|
| """
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| image_dir = webpage.get_image_dir()
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| short_path = ntpath.basename(image_path[0])
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| name = os.path.splitext(short_path)[0]
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|
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| webpage.add_header(name)
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| ims, txts, links = [], [], []
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|
|
| for label, im_data in visuals.items():
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| im = util.tensor2im(im_data)
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| image_name = '%s_%s.png' % (name, label)
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| save_path = os.path.join(image_dir, image_name)
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| h, w, _ = im.shape
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| if aspect_ratio > 1.0:
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| im = imresize(im, (h, int(w * aspect_ratio)), interp='bicubic')
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| if aspect_ratio < 1.0:
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| im = imresize(im, (int(h / aspect_ratio), w), interp='bicubic')
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| util.save_image(im, save_path)
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|
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| ims.append(image_name)
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| txts.append(label)
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| links.append(image_name)
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| webpage.add_images(ims, txts, links, width=width)
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|
|
|
|
| class Visualizer():
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| """This class includes several functions that can display/save images and print/save logging information.
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|
|
| It uses a Python library 'visdom' for display, and a Python library 'dominate' (wrapped in 'HTML') for creating HTML files with images.
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| """
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|
|
| def __init__(self, opt):
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| """Initialize the Visualizer class
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|
|
| Parameters:
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| opt -- stores all the experiment flags; needs to be a subclass of BaseOptions
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| Step 1: Cache the training/test options
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| Step 2: connect to a visdom server
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| Step 3: create an HTML object for saveing HTML filters
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| Step 4: create a logging file to store training losses
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| """
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| self.opt = opt
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| self.display_id = opt.display_id
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| self.use_html = opt.isTrain and not opt.no_html
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| self.win_size = opt.display_winsize
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| self.name = opt.name
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| self.port = opt.display_port
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| self.saved = False
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| if self.display_id > 0:
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| import visdom
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| self.ncols = opt.display_ncols
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| self.vis = visdom.Visdom(server=opt.display_server, port=opt.display_port, env=opt.display_env)
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| if not self.vis.check_connection():
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| self.create_visdom_connections()
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|
|
| if self.use_html:
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| self.web_dir = os.path.join(opt.checkpoints_dir, opt.name, 'web')
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| self.img_dir = os.path.join(self.web_dir, 'images')
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| print('create web directory %s...' % self.web_dir)
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| util.mkdirs([self.web_dir, self.img_dir])
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|
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| self.log_name = os.path.join(opt.checkpoints_dir, opt.name, 'loss_log.txt')
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| with open(self.log_name, "a") as log_file:
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| now = time.strftime("%c")
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| log_file.write('================ Training Loss (%s) ================\n' % now)
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|
|
| def reset(self):
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| """Reset the self.saved status"""
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| self.saved = False
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|
|
| def create_visdom_connections(self):
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| """If the program could not connect to Visdom server, this function will start a new server at port < self.port > """
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| cmd = sys.executable + ' -m visdom.server -p %d &>/dev/null &' % self.port
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| print('\n\nCould not connect to Visdom server. \n Trying to start a server....')
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| print('Command: %s' % cmd)
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| Popen(cmd, shell=True, stdout=PIPE, stderr=PIPE)
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|
|
| def display_current_results(self, visuals, epoch, save_result):
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| """Display current results on visdom; save current results to an HTML file.
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|
|
| Parameters:
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| visuals (OrderedDict) - - dictionary of images to display or save
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| epoch (int) - - the current epoch
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| save_result (bool) - - if save the current results to an HTML file
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| """
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| if self.display_id > 0:
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| ncols = self.ncols
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| if ncols > 0:
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| ncols = min(ncols, len(visuals))
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| h, w = next(iter(visuals.values())).shape[:2]
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| table_css = """<style>
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| table {border-collapse: separate; border-spacing: 4px; white-space: nowrap; text-align: center}
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| table td {width: % dpx; height: % dpx; padding: 4px; outline: 4px solid black}
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| </style>""" % (w, h)
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|
|
| title = self.name
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| label_html = ''
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| label_html_row = ''
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| images = []
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| idx = 0
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| for label, image in visuals.items():
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| image_numpy = util.tensor2im(image)
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| label_html_row += '<td>%s</td>' % label
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| images.append(image_numpy.transpose([2, 0, 1]))
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| idx += 1
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| if idx % ncols == 0:
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| label_html += '<tr>%s</tr>' % label_html_row
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| label_html_row = ''
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| white_image = np.ones_like(image_numpy.transpose([2, 0, 1])) * 255
|
| while idx % ncols != 0:
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| images.append(white_image)
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| label_html_row += '<td></td>'
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| idx += 1
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| if label_html_row != '':
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| label_html += '<tr>%s</tr>' % label_html_row
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| try:
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| self.vis.images(images, nrow=ncols, win=self.display_id + 1,
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| padding=2, opts=dict(title=title + ' images'))
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| label_html = '<table>%s</table>' % label_html
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| self.vis.text(table_css + label_html, win=self.display_id + 2,
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| opts=dict(title=title + ' labels'))
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| except VisdomExceptionBase:
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| self.create_visdom_connections()
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|
|
| else:
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| idx = 1
|
| try:
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| for label, image in visuals.items():
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| image_numpy = util.tensor2im(image)
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| self.vis.image(image_numpy.transpose([2, 0, 1]), opts=dict(title=label),
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| win=self.display_id + idx)
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| idx += 1
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| except VisdomExceptionBase:
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| self.create_visdom_connections()
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|
|
| if self.use_html and (save_result or not self.saved):
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| self.saved = True
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|
|
| for label, image in visuals.items():
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| image_numpy = util.tensor2im(image)
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| img_path = os.path.join(self.img_dir, 'epoch%.3d_%s.png' % (epoch, label))
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| util.save_image(image_numpy, img_path)
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|
|
|
|
| webpage = html.HTML(self.web_dir, 'Experiment name = %s' % self.name, refresh=1)
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| for n in range(epoch, 0, -1):
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| webpage.add_header('epoch [%d]' % n)
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| ims, txts, links = [], [], []
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|
|
| for label, image_numpy in visuals.items():
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| image_numpy = util.tensor2im(image)
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| img_path = 'epoch%.3d_%s.png' % (n, label)
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| ims.append(img_path)
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| txts.append(label)
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| links.append(img_path)
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| webpage.add_images(ims, txts, links, width=self.win_size)
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| webpage.save()
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|
|
| def plot_current_losses(self, epoch, counter_ratio, losses):
|
| """display the current losses on visdom display: dictionary of error labels and values
|
|
|
| Parameters:
|
| epoch (int) -- current epoch
|
| counter_ratio (float) -- progress (percentage) in the current epoch, between 0 to 1
|
| losses (OrderedDict) -- training losses stored in the format of (name, float) pairs
|
| """
|
| if not hasattr(self, 'plot_data'):
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| self.plot_data = {'X': [], 'Y': [], 'legend': list(losses.keys())}
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| self.plot_data['X'].append(epoch + counter_ratio)
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| self.plot_data['Y'].append([losses[k] for k in self.plot_data['legend']])
|
| try:
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| self.vis.line(
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| X=np.stack([np.array(self.plot_data['X'])] * len(self.plot_data['legend']), 1),
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| Y=np.array(self.plot_data['Y']),
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| opts={
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| 'title': self.name + ' loss over time',
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| 'legend': self.plot_data['legend'],
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| 'xlabel': 'epoch',
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| 'ylabel': 'loss'},
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| win=self.display_id)
|
| except VisdomExceptionBase:
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| self.create_visdom_connections()
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|
|
|
|
| def print_current_losses(self, epoch, iters, losses, t_comp, t_data):
|
| """print current losses on console; also save the losses to the disk
|
|
|
| Parameters:
|
| epoch (int) -- current epoch
|
| iters (int) -- current training iteration during this epoch (reset to 0 at the end of every epoch)
|
| losses (OrderedDict) -- training losses stored in the format of (name, float) pairs
|
| t_comp (float) -- computational time per data point (normalized by batch_size)
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| t_data (float) -- data loading time per data point (normalized by batch_size)
|
| """
|
| message = '(epoch: %d, iters: %d, time: %.3f, data: %.3f) ' % (epoch, iters, t_comp, t_data)
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| for k, v in losses.items():
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| message += '%s: %.3f ' % (k, v)
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|
|
| print(message)
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| with open(self.log_name, "a") as log_file:
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| log_file.write('%s\n' % message)
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|
|