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I have searched the MuZero issues and found no similar bug report.
🐛 Describe the bug
MuZero always chooses the same action, it is a custom game and you can only choose two options (0, 1),
after a period of training, choose the same action, no matter the state, whether it is a problem in the configuration or what may be happening.
Add an example
(SelfPlay pid=96096) Total Reward: 0
(SelfPlay pid=96096) Tree depth: 19
(SelfPlay pid=96096) Root value for player 0: -20.64
(SelfPlay pid=96096) Played action: 0.
(SelfPlay pid=96096) Total Reward: 1
(SelfPlay pid=96096) Tree depth: 22
(SelfPlay pid=96096) Root value for player 0: -23.90
(SelfPlay pid=96096) Played action: 0.
(SelfPlay pid=96096) Total Reward: 2
(SelfPlay pid=96096) Tree depth: 20
(SelfPlay pid=96096) Root value for player 0: -20.70
(SelfPlay pid=96096) Played action: 0.
(SelfPlay pid=96096) Total Reward: 1
(SelfPlay pid=96096) Tree depth: 22
(SelfPlay pid=96096) Root value for player 0: -22.91
(SelfPlay pid=96096) Played action: 0.
(SelfPlay pid=96096) Total Reward: 2
(SelfPlay pid=96096) Tree depth: 22
(SelfPlay pid=96096) Root value for player 0: -22.91
(SelfPlay pid=96096) Played action: 0.
(SelfPlay pid=96096) Total Reward: 3
(SelfPlay pid=96096) Tree depth: 19
(SelfPlay pid=96096) Root value for player 0: -20.64
(SelfPlay pid=96096) Played action: 0.
(SelfPlay pid=96096) Total Reward: 2
Environment
No response
Minimal Reproducible Example
class MuZeroConfig:
def __init__(self):
# fmt: off
# More information is available here: https://github.com/werner-duvaud/muzero-general/wiki/Hyperparameter-Optimization
self.seed = 0 # Seed for numpy, torch and the game
self.max_num_gpus = None # Fix the maximum number of GPUs to use. It's usually faster to use a single GPU (set it to 1) if it has enough memory. None will use every GPUs available
### Game
self.observation_shape = (1, 1, 241) # Dimensions of the game observation, must be 3D (channel, height, width). For a 1D array, please reshape it to (1, 1, length of array)
self.action_space = list(range(2)) # Fixed list of all possible actions. You should only edit the length
self.players = list(range(1)) # List of players. You should only edit the length
self.stacked_observations = 0 # Number of previous observations and previous actions to add to the current observation
# Evaluate
self.muzero_player = 0 # Turn Muzero begins to play (0: MuZero plays first, 1: MuZero plays second)
self.opponent = None # Hard coded agent that MuZero faces to assess his progress in multiplayer games. It doesn't influence training. None, "random" or "expert" if implemented in the Game class
### Self-Play
self.num_workers = 10 # Number of simultaneous threads/workers self-playing to feed the replay buffer
self.selfplay_on_gpu = False
self.max_moves = 20 # Maximum number of moves if game is not finished before
self.num_simulations = 100 # Number of future moves self-simulated
self.discount = 0.997 # Chronological discount of the reward
self.temperature_threshold = None # Number of moves before dropping the temperature given by visit_softmax_temperature_fn to 0 (ie selecting the best action). If None, visit_softmax_temperature_fn is used every time
# Root prior exploration noise
self.root_dirichlet_alpha = 0.25
self.root_exploration_fraction = 0.25
# UCB formula
self.pb_c_base = 19652
self.pb_c_init = 1.25
### Network
self.network = "fullyconnected" # "resnet" / "fullyconnected"
self.support_size = 10 # Value and reward are scaled (with almost sqrt) and encoded on a vector with a range of -support_size to support_size. Choose it so that support_size <= sqrt(max(abs(discounted reward)))
# Residual Network
self.downsample = False # Downsample observations before representation network, False / "CNN" (lighter) / "resnet" (See paper appendix Network Architecture)
self.blocks = 1 # Number of blocks in the ResNet
self.channels = 2 # Number of channels in the ResNet
self.reduced_channels_reward = 2 # Number of channels in reward head
self.reduced_channels_value = 2 # Number of channels in value head
self.reduced_channels_policy = 2 # Number of channels in policy head
self.resnet_fc_reward_layers = [] # Define the hidden layers in the reward head of the dynamic network
self.resnet_fc_value_layers = [] # Define the hidden layers in the value head of the prediction network
self.resnet_fc_policy_layers = [] # Define the hidden layers in the policy head of the prediction network
# Fully Connected Network
self.encoding_size = 256
self.fc_representation_layers = [512, 512] # Define the hidden layers in the representation network
self.fc_dynamics_layers = [512, 512] # Define the hidden layers in the dynamics network
self.fc_reward_layers = [512, 512] # Define the hidden layers in the reward network
self.fc_value_layers = [512, 512] # Define the hidden layers in the value network
self.fc_policy_layers = [512, 512] # Define the hidden layers in the policy network
### Training
self.results_path = pathlib.Path(__file__).resolve().parents[1] / "results" / pathlib.Path(__file__).stem / datetime.datetime.now().strftime("%Y-%m-%d--%H-%M-%S") # Path to store the model weights and TensorBoard logs
self.save_model = True # Save the checkpoint in results_path as model.checkpoint
self.training_steps = 100000 # Total number of training steps (ie weights update according to a batch)
self.batch_size = 128 # Number of parts of games to train on at each training step
self.checkpoint_interval = 10 # Number of training steps before using the model for self-playing
self.value_loss_weight = 0.25 # Scale the value loss to avoid overfitting of the value function, paper recommends 0.25 (See paper appendix Reanalyze)
self.train_on_gpu = torch.cuda.is_available() # Train on GPU if available
self.optimizer = "Adam" # "Adam" or "SGD". Paper uses SGD
self.weight_decay = 1e-4 # L2 weights regularization
self.momentum = 0.9 # Used only if optimizer is SGD
# Exponential learning rate schedule
self.lr_init = 0.03 # Initial learning rate
self.lr_decay_rate = 0.8 # Set it to 1 to use a constant learning rate
self.lr_decay_steps = 10000
### Replay Buffer
self.replay_buffer_size = 10000 # Number of self-play games to keep in the replay buffer
self.num_unroll_steps = 20 # Number of game moves to keep for every batch element
self.td_steps = 1 # Number of steps in the future to take into account for calculating the target value
self.PER = True # Prioritized Replay (See paper appendix Training), select in priority the elements in the replay buffer which are unexpected for the network
self.PER_alpha = 1 # How much prioritization is used, 0 corresponding to the uniform case, paper suggests 1
# Reanalyze (See paper appendix Reanalyse)
self.use_last_model_value = True # Use the last model to provide a fresher, stable n-step value (See paper appendix Reanalyze)
self.reanalyse_on_gpu = False
### Adjust the self play / training ratio to avoid over/underfitting
self.self_play_delay = 0 # Number of seconds to wait after each played game
self.training_delay = 0 # Number of seconds to wait after each training step
self.ratio = None # Desired training steps per self played step ratio. Equivalent to a synchronous version, training can take much longer. Set it to None to disable it
# fmt: on
def visit_softmax_temperature_fn(self, trained_steps):
"""
Parameter to alter the visit count distribution to ensure that the action selection becomes greedier as training progresses.
The smaller it is, the more likely the best action (ie with the highest visit count) is chosen.
Returns:
Positive float.
"""
if trained_steps < 0.5 * self.training_steps:
return 1.0
elif trained_steps < 0.75 * self.training_steps:
return 0.5
else:
return 0.25
Additional
No response
The text was updated successfully, but these errors were encountered:
Search before asking
🐛 Describe the bug
MuZero always chooses the same action, it is a custom game and you can only choose two options (0, 1),
after a period of training, choose the same action, no matter the state, whether it is a problem in the configuration or what may be happening.
Add an example
(SelfPlay pid=96096) Total Reward: 0
(SelfPlay pid=96096) Tree depth: 19
(SelfPlay pid=96096) Root value for player 0: -20.64
(SelfPlay pid=96096) Played action: 0.
(SelfPlay pid=96096) Total Reward: 1
(SelfPlay pid=96096) Tree depth: 22
(SelfPlay pid=96096) Root value for player 0: -23.90
(SelfPlay pid=96096) Played action: 0.
(SelfPlay pid=96096) Total Reward: 2
(SelfPlay pid=96096) Tree depth: 20
(SelfPlay pid=96096) Root value for player 0: -20.70
(SelfPlay pid=96096) Played action: 0.
(SelfPlay pid=96096) Total Reward: 1
(SelfPlay pid=96096) Tree depth: 22
(SelfPlay pid=96096) Root value for player 0: -22.91
(SelfPlay pid=96096) Played action: 0.
(SelfPlay pid=96096) Total Reward: 2
(SelfPlay pid=96096) Tree depth: 22
(SelfPlay pid=96096) Root value for player 0: -22.91
(SelfPlay pid=96096) Played action: 0.
(SelfPlay pid=96096) Total Reward: 3
(SelfPlay pid=96096) Tree depth: 19
(SelfPlay pid=96096) Root value for player 0: -20.64
(SelfPlay pid=96096) Played action: 0.
(SelfPlay pid=96096) Total Reward: 2
Environment
No response
Minimal Reproducible Example
Additional
No response
The text was updated successfully, but these errors were encountered: