You signed in with another tab or window. Reload to refresh your session.You signed out in another tab or window. Reload to refresh your session.You switched accounts on another tab or window. Reload to refresh your session.Dismiss alert
When I write "python flow/visualize/visualizer_rllib.py ~/ray_results/test0629/PPO_MultiAgentlhmNetwork1POEnv-v0_f48e2fe4_2023-06-29_20-17-46cjrol_re 400 --horizon 500 --gen_emission" in the terminal, it can open the sumo-gui, but run only 1 second some errors happened.
Then I will show the errors:
2023-06-30 09:45:40,604 INFO resource_spec.py:216 -- Starting Ray with 4.69 GiB memory available for workers and up to 2.35 GiB for objects. You can adjust these settings with ray.init(memory=, object_store_memory=).
2023-06-30 09:45:41,335 INFO trainer.py:371 -- Tip: set 'eager': true or the --eager flag to enable TensorFlow eager execution
2023-06-30 09:45:41,340 INFO trainer.py:512 -- Current log_level is WARN. For more information, set 'log_level': 'INFO' / 'DEBUG' or use the -v and -vv flags.
2023-06-30 09:45:41,344 WARNING ppo.py:168 -- Using the simple minibatch optimizer. This will significantly reduce performance, consider simple_optimizer=False.
2023-06-30 09:45:44,264 INFO trainable.py:346 -- Restored from checkpoint: /home/a906/ray_results/test0629/PPO_MultiAgentlhmNetwork1POEnv-v0_f48e2fe4_2023-06-29_20-17-46cjrol_re/checkpoint_400/checkpoint-400
2023-06-30 09:45:44,264 INFO trainable.py:353 -- Current state after restoring: {'_iteration': 400, '_timesteps_total': 28777138, '_time_total': 42873.71559095383, '_episodes_total': 1777}
Traceback (most recent call last):
File "/home/a906/anaconda3/envs/flow/lib/python3.7/site-packages/ray/rllib/models/preprocessors.py", line 62, in check_shape
if not self._obs_space.contains(observation):
File "/home/a906/anaconda3/envs/flow/lib/python3.7/site-packages/gym-0.14.0-py3.7.egg/gym/spaces/box.py", line 102, in contains
return x.shape == self.shape and np.all(x >= self.low) and np.all(x <= self.high)
AttributeError: 'dict' object has no attribute 'shape'
During handling of the above exception, another exception occurred:
Traceback (most recent call last):
File "flow/visualize/visualizer_rllib.py", line 386, in
visualizer_rllib(args)
File "flow/visualize/visualizer_rllib.py", line 229, in visualizer_rllib
action = agent.compute_action(state)
File "/home/a906/anaconda3/envs/flow/lib/python3.7/site-packages/ray/rllib/agents/trainer.py", line 643, in compute_action
policy_id].transform(observation)
File "/home/a906/anaconda3/envs/flow/lib/python3.7/site-packages/ray/rllib/models/preprocessors.py", line 166, in transform
self.check_shape(observation)
File "/home/a906/anaconda3/envs/flow/lib/python3.7/site-packages/ray/rllib/models/preprocessors.py", line 69, in check_shape
"should be an np.array, not a Python list.", observation)
ValueError: ('Observation for a Box/MultiBinary/MultiDiscrete space should be an np.array, not a Python list.', {})
/home/a906/flow/flow/visualize/test_time_rollout/test0629_20230630-0945411688089541.3611593-0_emission.csv /home/a906/flow/flow/visualize/test_time_rollout/
So, how should I do? thank you very much!
The text was updated successfully, but these errors were encountered:
When I write "python flow/visualize/visualizer_rllib.py ~/ray_results/test0629/PPO_MultiAgentlhmNetwork1POEnv-v0_f48e2fe4_2023-06-29_20-17-46cjrol_re 400 --horizon 500 --gen_emission" in the terminal, it can open the sumo-gui, but run only 1 second some errors happened.
Then I will show the errors:
2023-06-30 09:45:40,604 INFO resource_spec.py:216 -- Starting Ray with 4.69 GiB memory available for workers and up to 2.35 GiB for objects. You can adjust these settings with ray.init(memory=, object_store_memory=).
2023-06-30 09:45:41,335 INFO trainer.py:371 -- Tip: set 'eager': true or the --eager flag to enable TensorFlow eager execution
2023-06-30 09:45:41,340 INFO trainer.py:512 -- Current log_level is WARN. For more information, set 'log_level': 'INFO' / 'DEBUG' or use the -v and -vv flags.
2023-06-30 09:45:41,344 WARNING ppo.py:168 -- Using the simple minibatch optimizer. This will significantly reduce performance, consider simple_optimizer=False.
2023-06-30 09:45:44,264 INFO trainable.py:346 -- Restored from checkpoint: /home/a906/ray_results/test0629/PPO_MultiAgentlhmNetwork1POEnv-v0_f48e2fe4_2023-06-29_20-17-46cjrol_re/checkpoint_400/checkpoint-400
2023-06-30 09:45:44,264 INFO trainable.py:353 -- Current state after restoring: {'_iteration': 400, '_timesteps_total': 28777138, '_time_total': 42873.71559095383, '_episodes_total': 1777}
Traceback (most recent call last):
File "/home/a906/anaconda3/envs/flow/lib/python3.7/site-packages/ray/rllib/models/preprocessors.py", line 62, in check_shape
if not self._obs_space.contains(observation):
File "/home/a906/anaconda3/envs/flow/lib/python3.7/site-packages/gym-0.14.0-py3.7.egg/gym/spaces/box.py", line 102, in contains
return x.shape == self.shape and np.all(x >= self.low) and np.all(x <= self.high)
AttributeError: 'dict' object has no attribute 'shape'
During handling of the above exception, another exception occurred:
Traceback (most recent call last):
File "flow/visualize/visualizer_rllib.py", line 386, in
visualizer_rllib(args)
File "flow/visualize/visualizer_rllib.py", line 229, in visualizer_rllib
action = agent.compute_action(state)
File "/home/a906/anaconda3/envs/flow/lib/python3.7/site-packages/ray/rllib/agents/trainer.py", line 643, in compute_action
policy_id].transform(observation)
File "/home/a906/anaconda3/envs/flow/lib/python3.7/site-packages/ray/rllib/models/preprocessors.py", line 166, in transform
self.check_shape(observation)
File "/home/a906/anaconda3/envs/flow/lib/python3.7/site-packages/ray/rllib/models/preprocessors.py", line 69, in check_shape
"should be an np.array, not a Python list.", observation)
ValueError: ('Observation for a Box/MultiBinary/MultiDiscrete space should be an np.array, not a Python list.', {})
/home/a906/flow/flow/visualize/test_time_rollout/test0629_20230630-0945411688089541.3611593-0_emission.csv /home/a906/flow/flow/visualize/test_time_rollout/
So, how should I do? thank you very much!
The text was updated successfully, but these errors were encountered: