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"""This script defines the visualizer for Deep3DFaceRecon_pytorch |
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""" |
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import ntpath |
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import os |
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import sys |
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import time |
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from subprocess import PIPE |
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from subprocess import Popen |
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import numpy as np |
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from torch.utils.tensorboard import SummaryWriter |
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from . import html |
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from . import util |
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def save_images(webpage, visuals, image_path, aspect_ratio=1.0, width=256): |
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"""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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This function will save images stored in 'visuals' to the HTML file specified by 'webpage'. |
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""" |
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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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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" % (label, name) |
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os.makedirs(os.path.join(image_dir, label), exist_ok=True) |
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save_path = os.path.join(image_dir, image_name) |
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util.save_image(im, save_path, aspect_ratio=aspect_ratio) |
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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 tensprboardX 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: create a tensorboard writer |
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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.use_html = opt.isTrain and not opt.no_html |
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self.writer = SummaryWriter(os.path.join(opt.checkpoints_dir, "logs", opt.name)) |
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self.win_size = opt.display_winsize |
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self.name = opt.name |
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self.saved = False |
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if ( |
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self.use_html |
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): |
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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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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 display_current_results(self, visuals, total_iters, epoch, save_result): |
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"""Display current results on tensorboad; 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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total_iters (int) -- total iterations |
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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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for label, image in visuals.items(): |
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self.writer.add_image(label, util.tensor2im(image), total_iters, dataformats="HWC") |
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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=0) |
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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, total_iters, losses): |
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for name, value in losses.items(): |
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self.writer.add_scalar(name, value, total_iters) |
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def print_current_losses(self, epoch, iters, losses, t_comp, t_data): |
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"""print current losses on console; also save the losses to the disk |
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Parameters: |
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epoch (int) -- current epoch |
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iters (int) -- current training iteration during this epoch (reset to 0 at the end of every epoch) |
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losses (OrderedDict) -- training losses stored in the format of (name, float) pairs |
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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) |
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""" |
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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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class MyVisualizer: |
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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: create a tensorboard writer |
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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.name = opt.name |
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self.img_dir = os.path.join(opt.checkpoints_dir, opt.name, "results") |
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if opt.phase != "test": |
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self.writer = SummaryWriter(os.path.join(opt.checkpoints_dir, opt.name, "logs")) |
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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 display_current_results( |
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self, visuals, total_iters, epoch, dataset="train", save_results=False, count=0, name=None, add_image=True |
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): |
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"""Display current results on tensorboad; 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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total_iters (int) -- total iterations |
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epoch (int) - - the current epoch |
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dataset (str) - - 'train' or 'val' or 'test' |
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""" |
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for label, image in visuals.items(): |
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for i in range(image.shape[0]): |
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image_numpy = util.tensor2im(image[i]) |
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if add_image: |
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self.writer.add_image( |
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label + "%s_%02d" % (dataset, i + count), image_numpy, total_iters, dataformats="HWC" |
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) |
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if save_results: |
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save_path = os.path.join(self.img_dir, dataset, "epoch_%s_%06d" % (epoch, total_iters)) |
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if not os.path.isdir(save_path): |
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os.makedirs(save_path) |
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if name is not None: |
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img_path = os.path.join(save_path, "%s.png" % name) |
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else: |
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img_path = os.path.join(save_path, "%s_%03d.png" % (label, i + count)) |
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util.save_image(image_numpy, img_path) |
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def plot_current_losses(self, total_iters, losses, dataset="train"): |
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for name, value in losses.items(): |
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self.writer.add_scalar(name + "/%s" % dataset, value, total_iters) |
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def print_current_losses(self, epoch, iters, losses, t_comp, t_data, dataset="train"): |
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"""print current losses on console; also save the losses to the disk |
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Parameters: |
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epoch (int) -- current epoch |
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iters (int) -- current training iteration during this epoch (reset to 0 at the end of every epoch) |
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losses (OrderedDict) -- training losses stored in the format of (name, float) pairs |
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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) |
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""" |
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message = "(dataset: %s, epoch: %d, iters: %d, time: %.3f, data: %.3f) " % ( |
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dataset, |
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epoch, |
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iters, |
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t_comp, |
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t_data, |
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) |
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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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