Comments (6)
Sure, here're the hyperparameters for the motion imitation tasks with the humanoid:
"actor_net_layers": [1024, 512],
"actor_stepsize": 0.0000015,
"actor_momentum": 0.9,
"actor_init_output_scale": 0.01,
"actor_batch_size": 256,
"actor_steps": 200,
"action_std": 0.05,
"critic_net_layers": [1024, 512],
"critic_stepsize": 0.01,
"critic_momentum": 0.9,
"critic_batch_size": 256,
"critic_steps": 100,
"discount": 0.95,
"samples_per_iter": 4096,
"replay_buffer_size": 50000,
"normalizer_samples": 1000000,
"weight_clip": 50,
"td_lambda": 0.95,
"temp": 1.0,
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Thanks! I also have another couple of questions: were actions normalized like in the original DeepMimic code, and was MPI used to speed up data collection and train agents?
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yes, actions were also normalized. Besides using AWR instead of PPO, the rest of the setup was the same.
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In the paper's appendix C it is said a temperature of 0.05 is used with step size 0.00005, though the config file in this repo sets the temperature to 1.0 and changes the learning rates -- which one should be used ? I can see where the tradeoff happens with this parameter: in my experiments, adjusting it made a difference between being able to train on an environment or not
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In the code we are using advantage normalization, so the temperature is just set to 1.0. The temp of 0.05 was used without advantage normalization. If you are using the code, a temp of 1 should work for the tasks.
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Thanks ! I'm interested in how the temperature and weight clip interact: I guess having a lot of weights clipped should be bad news, right? because intuitively if half of the weights are set to 20 then you lose info on the relative quality of the corresponding actions in the gradient -- perhaps I'll look into it.
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Related Issues (5)
- Beta (temperature) set to 1.0 HOT 5
- Train_Return vs Test_Return HOT 3
- Offline version of AWR HOT 1
- Why Normalization of vf HOT 1
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