4

I am trying to use stable_baselines, but any model I try to use gives me the same error:

module 'gym.logger' has no attribute 'MIN_LEVEL'

I have attached an example from their website that is giving me the same error. I tried looking online but haven't had any success. Also, I am currently using Conda to create my environment with the following settings.

Tensorflow: 1.15.0 Python: 3.7.11

code bellow.

import gym

from stable_baselines.common.policies import MlpPolicy
from stable_baselines.common import make_vec_env
from stable_baselines import PPO2

# multiprocess environment
env = make_vec_env('CartPole-v1', n_envs=4)

model = PPO2(MlpPolicy, env, verbose=1)
model.learn(total_timesteps=25000)
model.save("ppo2_cartpole")

del model # remove to demonstrate saving and loading

model = PPO2.load("ppo2_cartpole")

# Enjoy trained agent
obs = env.reset()
while True:
    action, _states = model.predict(obs)
    obs, rewards, dones, info = env.step(action)
    env.render()

Full error:

---------------------------------------------------------------------------
AttributeError                            Traceback (most recent call last)
/var/folders/2l/c0wfhk2x0qz3v_6x0ylvvdr00000gn/T/ipykernel_4323/1825670659.py in <module>
      8 env = make_vec_env('CartPole-v1', n_envs=4)
      9 
---> 10 model = PPO2(MlpPolicy, env, verbose=1)
     11 model.learn(total_timesteps=25000)
     12 model.save("ppo2_cartpole")

~/miniconda3/envs/tf15/lib/python3.7/site-packages/stable_baselines/ppo2/ppo2.py in __init__(self, policy, env, gamma, n_steps, ent_coef, learning_rate, vf_coef, max_grad_norm, lam, nminibatches, noptepochs, cliprange, cliprange_vf, verbose, tensorboard_log, _init_setup_model, policy_kwargs, full_tensorboard_log, seed, n_cpu_tf_sess)
     95 
     96         if _init_setup_model:
---> 97             self.setup_model()
     98 
     99     def _make_runner(self):

~/miniconda3/envs/tf15/lib/python3.7/site-packages/stable_baselines/ppo2/ppo2.py in setup_model(self)
    108 
    109     def setup_model(self):
--> 110         with SetVerbosity(self.verbose):
    111 
    112             assert issubclass(self.policy, ActorCriticPolicy), "Error: the input policy for the PPO2 model must be " \

~/miniconda3/envs/tf15/lib/python3.7/site-packages/stable_baselines/common/base_class.py in __enter__(self)
   1127         self.tf_level = os.environ.get('TF_CPP_MIN_LOG_LEVEL', '0')
   1128         self.log_level = logger.get_level()
-> 1129         self.gym_level = gym.logger.MIN_LEVEL
   1130 
   1131         if self.verbose <= 1:

AttributeError: module 'gym.logger' has no attribute 'MIN_LEVEL'

4 Answers 4

2

I sloved this by go to :

Anaconda3\Lib\site-packages\stable_baselines\common\base_class.py

change :

self.gym_level = gym.logger.MIN_LEVEL

into :

self.gym_level = gym.logger
1

stable_baselines does not seem to fully work with the latest gym anymore, try installing a version of gym from around 2020:

pip install "gym==0.19.0"

That said, you should try to migrate to current stable_baselines3.

0

You must update your gym module to the latest version with:

pip install gym[all] -U

in your command line

1
  • I have encountered the same problem, however, still receiving the error after the gym update Mar 22, 2022 at 5:40
0

I encountered the same problem. I manually changed all the "min_level"s in the gym.logger.py into "MIN_LEVEL"s. Or you can also change the "MIN_LEVEL" in stable_baselines.common.base_class.py into "min_level".

I guess this is an inconsistency between the new version of openai gym and stable baselines. (Using stable baselines 3 would not encounter this issue.)

1
  • Remember to restart all the opened programming environments after this. Mar 22, 2022 at 22:34

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.