ray/rllib/tuned_examples/ddpg/pendulum-ddpg-fake-gpus.yaml

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pendulum-ddpg-fake-gpus:
[RLlib] Upgrade gym version to 0.21 and deprecate pendulum-v0. (#19535) * Fix QMix, SAC, and MADDPA too. * Unpin gym and deprecate pendulum v0 Many tests in rllib depended on pendulum v0, however in gym 0.21, pendulum v0 was deprecated in favor of pendulum v1. This may change reward thresholds, so will have to potentially rerun all of the pendulum v1 benchmarks, or use another environment in favor. The same applies to frozen lake v0 and frozen lake v1 Lastly, all of the RLlib tests and have been moved to python 3.7 * Add gym installation based on python version. Pin python<= 3.6 to gym 0.19 due to install issues with atari roms in gym 0.20 * Reformatting * Fixing tests * Move atari-py install conditional to req.txt * migrate to new ale install method * Fix QMix, SAC, and MADDPA too. * Unpin gym and deprecate pendulum v0 Many tests in rllib depended on pendulum v0, however in gym 0.21, pendulum v0 was deprecated in favor of pendulum v1. This may change reward thresholds, so will have to potentially rerun all of the pendulum v1 benchmarks, or use another environment in favor. The same applies to frozen lake v0 and frozen lake v1 Lastly, all of the RLlib tests and have been moved to python 3.7 * Add gym installation based on python version. Pin python<= 3.6 to gym 0.19 due to install issues with atari roms in gym 0.20 Move atari-py install conditional to req.txt migrate to new ale install method Make parametric_actions_cartpole return float32 actions/obs Adding type conversions if obs/actions don't match space Add utils to make elements match gym space dtypes Co-authored-by: Jun Gong <jungong@anyscale.com> Co-authored-by: sven1977 <svenmika1977@gmail.com>
2021-11-03 08:24:00 -07:00
env: Pendulum-v1
run: DDPG
stop:
episode_reward_mean: -1000
timesteps_total: 40000
config:
# Works for both torch and tf.
seed: 42
framework: tf
actor_hiddens: [64, 64]
critic_hiddens: [64, 64]
n_step: 1
model: {}
gamma: 0.99
exploration_config:
final_scale: 0.02
min_sample_timesteps_per_iteration: 600
replay_buffer_config:
type: MultiAgentPrioritizedReplayBuffer
capacity: 10000
worker_side_prioritization: false
learning_starts: 500
clip_rewards: false
use_huber: true
train_batch_size: 64
num_workers: 0
actor_lr: 0.0001
critic_lr: 0.0001
# Fake 2 GPUs.
num_gpus: 2
_fake_gpus: true