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utils.py
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import time
import sys
import math
import os
import torch
import torch.nn as nn
import torch.nn.init as init
import csv
import statistics as stat
_, term_width = os.popen('stty size', 'r').read().split()
term_width = int(term_width)
TOTAL_BAR_LENGTH = 86.
last_time = time.time()
begin_time = last_time
def progress_bar(current, total, msg=None):
global last_time, begin_time
# Reset for new bar
if current == 0:
begin_time = time.time()
cur_len = int(TOTAL_BAR_LENGTH * current / total)
rest_len = int(TOTAL_BAR_LENGTH - cur_len) - 1
sys.stdout.write(' [')
for i in range(cur_len):
sys.stdout.write('=')
sys.stdout.write('>')
for i in range(rest_len):
sys.stdout.write('.')
sys.stdout.write(']')
cur_time = time.time()
step_time = cur_time - last_time
last_time = cur_time
tot_time = cur_time - begin_time
L = []
#L.append(' Step: %s' % format_time(step_time))
L.append(' Time: %s' % format_time(tot_time))
if msg:
L.append(' | ' + msg)
msg = ''.join(L)
sys.stdout.write(msg)
for i in range(term_width-int(TOTAL_BAR_LENGTH)-len(msg)-3):
sys.stdout.write(' ')
# Go back to the center of the bar
for i in range(term_width-int(TOTAL_BAR_LENGTH/2)):
sys.stdout.write('\b')
sys.stdout.write(' %d/%d ' % (current+1, total))
if current < total-1:
sys.stdout.write('\r')
else:
sys.stdout.write('\n')
sys.stdout.flush()
def format_time(seconds):
days = int(seconds / 3600/24)
seconds = seconds - days*3600*24
hours = int(seconds / 3600)
seconds = seconds - hours*3600
minutes = int(seconds / 60)
seconds = seconds - minutes*60
secondsf = int(seconds)
seconds = seconds - secondsf
millis = int(seconds*1000)
f = ''
i = 1
if days > 0:
f += str(days) + 'D'
i += 1
if hours > 0 and i <= 2:
f += str(hours) + 'h'
i += 1
if minutes > 0 and i <= 2:
f += str(minutes) + 'm'
i += 1
if secondsf > 0 and i <= 2:
f += str(secondsf) + 's'
i += 1
if millis > 0 and i <= 2:
f += str(millis) + 'ms'
i += 1
if f == '':
f = '0ms'
return f
def init_params(net):
# Init layer parameters
for m in net.modules():
if isinstance(m, nn.Conv2d):
init.kaiming_normal(m.weight, mode='fan_out')
if m.bias:
init.constant(m.bias, 0)
elif isinstance(m, nn.BatchNorm2d):
init.constant(m.weight, 1)
init.constant(m.bias, 0)
elif isinstance(m, nn.Linear):
init.normal(m.weight, std=1e-3)
if m.bias:
init.constant(m.bias, 0)
def adjust_lr_steep(lr_0, param_groups, epoch, adj_params):
steps = adj_params['steps']
decay_rates = adj_params ['decay_rates']
for param_group in param_groups:
lr = lr_0
for j in range(len(steps)):
if epoch >= steps[j]:
lr = lr * decay_rates[j]
param_group['lr'] = lr
return param_groups
def adjust_lr_self_steep(lr, param_groups, epoch, accuracy, adj_params):
## self adjust the learning rate depends on the statistics of accuracy
decay_rates = adj_params ['decay_rates']
for param_group in param_groups:
if acc_stat(accuracy) < 1e-1:
lr = lr * decay_rates
param_group['lr'] = lr
return param_groups
def acc_stat(accuracy):
length = 10
a = accuracy[-length]
a_stat = [(temp- stat.mean(a))/stat.stdev(a) for temp in a]
return sum(1 for temp in a_stat if abs(temp) > 1)/length < 0.5
def log_row(logname, row):
with open(logname, 'a') as logfile:
logwriter = csv.writer(logfile, delimiter=',')
logwriter.writerow(row)