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@classmethod
def update_from_checkpoint(Cls, save_folder, network, optimizer=None,
use_best=False, use_cpu=False, ignore_layers=tuple()):
"""
Update network and optimizer(if specified) from the checkpoints in the save folder.
If use_best is True then the data is loaded from the Cls.CHECKPOINT_BEST file
otherwise the data is loaded from the Cls.CHECKPOINT_LAST file
Returns the number of global steps past for the loaded checkpoint.
Arguments:
save_folder (str): a path to a folder containing summaries and weights
@griver
griver / tmux_and_screen.md
Last active November 28, 2017 18:12 — forked from P7h/tmux_vs_screen.md
tmux vs screen commands

tmux and screen commands


Action tmux screen
start a new session tmux
tmux new
tmux new-session
screen
start a new session with a name tmux new -s name screen -S name
re-attach a detached session tmux attach
tmux attach-session
screen -r
re-attach a detached session with a name tmux attach -t name
tmux a -t name
screen -r name
re-attach an attached session (detaching it from elsewhere) tmux attach -dtmux attach-session -d screen -dr
import gym
import tensorflow as tf
import numpy as np
import itertools
import tensorflow.contrib.layers as layers
from tqdm import trange
from gym.spaces import Discrete, Box
def get_traj(agent, env, max_episode_steps, render, deterministic_acts=False):
'''