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progbar.py
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progbar.py
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import sys
import time
import logging
import numpy as np
'''
source from https://github.com/guillaumegenthial/sequence_tagging/blob/master/model/general_utils.py
'''
class Progbar(object):
"""Progbar class copied from keras (https://github.com/fchollet/keras/)
Displays a progress bar.
Small edit : added strict arg to update
# Arguments
target: Total number of steps expected.
interval: Minimum visual progress update interval (in seconds).
"""
def __init__(self, target, width=30, verbose=1):
self.width = width
self.target = target
self.sum_values = {}
self.unique_values = []
self.start = time.time()
self.total_width = 0
self.seen_so_far = 0
self.verbose = verbose
def update(self, current, values=[], exact=[], strict=[]):
"""
Updates the progress bar.
# Arguments
current: Index of current step.
values: List of tuples (name, value_for_last_step).
The progress bar will display averages for these values.
exact: List of tuples (name, value_for_last_step).
The progress bar will display these values directly.
"""
for k, v in values:
if k not in self.sum_values:
self.sum_values[k] = [v * (current - self.seen_so_far),
current - self.seen_so_far]
self.unique_values.append(k)
else:
self.sum_values[k][0] += v * (current - self.seen_so_far)
self.sum_values[k][1] += (current - self.seen_so_far)
for k, v in exact:
if k not in self.sum_values:
self.unique_values.append(k)
self.sum_values[k] = [v, 1]
for k, v in strict:
if k not in self.sum_values:
self.unique_values.append(k)
self.sum_values[k] = v
self.seen_so_far = current
now = time.time()
if self.verbose == 1:
prev_total_width = self.total_width
sys.stdout.write("\b" * prev_total_width)
sys.stdout.write("\r")
numdigits = int(np.floor(np.log10(self.target))) + 1
barstr = '%%%dd/%%%dd [' % (numdigits, numdigits)
bar = barstr % (current, self.target)
prog = float(current)/self.target
prog_width = int(self.width*prog)
if prog_width > 0:
bar += ('='*(prog_width-1))
if current < self.target:
bar += '>'
else:
bar += '='
bar += ('.'*(self.width-prog_width))
bar += ']'
sys.stdout.write(bar)
self.total_width = len(bar)
if current:
time_per_unit = (now - self.start) / current
else:
time_per_unit = 0
eta = time_per_unit*(self.target - current)
info = ''
if current < self.target:
info += ' - ETA: %ds' % eta
else:
info += ' - %ds' % (now - self.start)
for k in self.unique_values:
if type(self.sum_values[k]) is list:
info += ' - %s: %.6f' % (k,
self.sum_values[k][0] / max(1, self.sum_values[k][1]))
else:
info += ' - %s: %s' % (k, self.sum_values[k])
self.total_width += len(info)
if prev_total_width > self.total_width:
info += ((prev_total_width-self.total_width) * " ")
sys.stdout.write(info)
sys.stdout.flush()
if current >= self.target:
sys.stdout.write("\n")
if self.verbose == 2:
if current >= self.target:
info = '%ds' % (now - self.start)
for k in self.unique_values:
info += ' - %s: %.6f' % (k,
self.sum_values[k][0] / max(1, self.sum_values[k][1]))
sys.stdout.write(info + "\n")
def add(self, n, values=[]):
self.update(self.seen_so_far+n, values)