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Description
ModuleNotFoundError Traceback (most recent call last)
in
----> 1 from obstacle_tower_env import ObstacleTowerEnv
2 get_ipython().run_line_magic('matplotlib', 'inline')
3 from matplotlib import pyplot as plt
~/obstacle-tower-env/obstacle_tower_env.py in
4 import gym
5 import numpy as np
----> 6 from mlagents_envs import UnityEnvironment
7 from gym import error, spaces
8 import os
ModuleNotFoundError: No module named 'mlagents_envs'
Pip freeze
MarkupSafe 1.1.1
matplotlib 3.0.3
mistune 0.8.4
mlagents 0.6.2 /home/user/ml-agents/ml-agents
mlagents-envs 0.6.2 /home/user/ml-agents/ml-agents-envs
more-itertools 7.0.0
nbconvert 5.4.1
nbformat 4.4.0
notebook 5.7.8
numpy 1.14.5
obstacle-tower-env 1.3 /home/bhaskartrivedi/obstacle-tower-env
pandocfilters 1.4.2
parso 0.4.0
output of mlagents-learn --help
mlagents-learn --help
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Usage:
mlagents-learn <trainer-config-path> [options]
mlagents-learn --help
Options:
--env=<file> Name of the Unity executable [default: None].
--curriculum=<directory> Curriculum json directory for environment [default: None].
--keep-checkpoints=<n> How many model checkpoints to keep [default: 5].
--lesson=<n> Start learning from this lesson [default: 0].
--load Whether to load the model or randomly initialize [default: False].
--run-id=<path> The directory name for model and summary statistics [default: ppo].
--num-runs=<n> Number of concurrent training sessions [default: 1].
--save-freq=<n> Frequency at which to save model [default: 50000].
--seed=<n> Random seed used for training [default: -1].
--slow Whether to run the game at training speed [default: False].
--train Whether to train model, or only run inference [default: False].
--base-port=<n> Base port for environment communication [default: 5005].
--num-envs=<n> Number of parallel environments to use for training [default: 1]
--docker-target-name=<dt> Docker volume to store training-specific files [default: None].
--no-graphics Whether to run the environment in no-graphics mode [default: False].
--debug Whether to run ML-Agents in debug mode with detailed logging [default: False].