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* Exploration API (+EpsilonGreedy sub-class). * Exploration API (+EpsilonGreedy sub-class). * Cleanup/LINT. * Add `deterministic` to generic Trainer config (NOTE: this is still ignored by most Agents). * Add `error` option to deprecation_warning(). * WIP. * Bug fix: Get exploration-info for tf framework. Bug fix: Properly deprecate some DQN config keys. * WIP. * LINT. * WIP. * Split PerWorkerEpsilonGreedy out of EpsilonGreedy. Docstrings. * Fix bug in sampler.py in case Policy has self.exploration = None * Update rllib/agents/dqn/dqn.py Co-Authored-By: Eric Liang <ekhliang@gmail.com> * WIP. * Update rllib/agents/trainer.py Co-Authored-By: Eric Liang <ekhliang@gmail.com> * WIP. * Change requests. * LINT * In tune/utils/util.py::deep_update() Only keep deep_updat'ing if both original and value are dicts. If value is not a dict, set * Completely obsolete syn_replay_optimizer.py's parameters schedule_max_timesteps AND beta_annealing_fraction (replaced with prioritized_replay_beta_annealing_timesteps). * Update rllib/evaluation/worker_set.py Co-Authored-By: Eric Liang <ekhliang@gmail.com> * Review fixes. * Fix default value for DQN's exploration spec. * LINT * Fix recursion bug (wrong parent c'tor). * Do not pass timestep to get_exploration_info. * Update tf_policy.py * Fix some remaining issues with test cases and remove more deprecated DQN/APEX exploration configs. * Bug fix tf-action-dist * DDPG incompatibility bug fix with new DQN exploration handling (which is imported by DDPG). * Switch off exploration when getting action probs from off-policy-estimator's policy. * LINT * Fix test_checkpoint_restore.py. * Deprecate all SAC exploration (unused) configs. * Properly use `model.last_output()` everywhere. Instead of `model._last_output`. * WIP. * Take out set_epsilon from multi-agent-env test (not needed, decays anyway). * WIP. * Trigger re-test (flaky checkpoint-restore test). * WIP. * WIP. * Add test case for deterministic action sampling in PPO. * bug fix. * Added deterministic test cases for different Agents. * Fix problem with TupleActions in dynamic-tf-policy. * Separate supported_spaces tests so they can be run separately for easier debugging. * LINT. * Fix autoregressive_action_dist.py test case. * Re-test. * Fix. * Remove duplicate py_test rule from bazel. * LINT. * WIP. * WIP. * SAC fix. * SAC fix. * WIP. * WIP. * WIP. * FIX 2 examples tests. * WIP. * WIP. * WIP. * WIP. * WIP. * Fix. * LINT. * Renamed test file. * WIP. * Add unittest.main. * Make action_dist_class mandatory. * fix * FIX. * WIP. * WIP. * Fix. * Fix. * Fix explorations test case (contextlib cannot find its own nullcontext??). * Force torch to be installed for QMIX. * LINT. * Fix determine_tests_to_run.py. * Fix determine_tests_to_run.py. * WIP * Add Random exploration component to tests (fixed issue with "static-graph randomness" via py_function). * Add Random exploration component to tests (fixed issue with "static-graph randomness" via py_function). * Rename some stuff. * Rename some stuff. * WIP. * WIP. * Fix SAC. * Fix SAC. * Fix strange tf-error in ray core tests. * Fix strange ray-core tf-error in test_memory_scheduling test case. * Fix test_io.py. * LINT. * Update SAC yaml files' config. Co-authored-by: Eric Liang <ekhliang@gmail.com>
98 lines
3.4 KiB
Python
98 lines
3.4 KiB
Python
from collections import namedtuple
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import logging
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from ray.rllib.policy.sample_batch import MultiAgentBatch, SampleBatch
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from ray.rllib.utils.annotations import DeveloperAPI
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logger = logging.getLogger(__name__)
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OffPolicyEstimate = namedtuple("OffPolicyEstimate",
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["estimator_name", "metrics"])
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@DeveloperAPI
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class OffPolicyEstimator:
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"""Interface for an off policy reward estimator."""
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@DeveloperAPI
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def __init__(self, policy, gamma):
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"""Creates an off-policy estimator.
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Arguments:
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policy (Policy): Policy to evaluate.
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gamma (float): Discount of the MDP.
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"""
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self.policy = policy
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self.gamma = gamma
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self.new_estimates = []
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@classmethod
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def create(cls, ioctx):
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"""Create an off-policy estimator from a IOContext."""
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gamma = ioctx.worker.policy_config["gamma"]
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# Grab a reference to the current model
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keys = list(ioctx.worker.policy_map.keys())
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if len(keys) > 1:
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raise NotImplementedError(
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"Off-policy estimation is not implemented for multi-agent. "
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"You can set `input_evaluation: []` to resolve this.")
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policy = ioctx.worker.get_policy(keys[0])
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return cls(policy, gamma)
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@DeveloperAPI
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def estimate(self, batch):
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"""Returns an estimate for the given batch of experiences.
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The batch will only contain data from one episode, but it may only be
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a fragment of an episode.
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"""
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raise NotImplementedError
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@DeveloperAPI
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def action_prob(self, batch):
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"""Returns the probs for the batch actions for the current policy."""
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num_state_inputs = 0
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for k in batch.keys():
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if k.startswith("state_in_"):
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num_state_inputs += 1
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state_keys = ["state_in_{}".format(i) for i in range(num_state_inputs)]
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log_likelihoods = self.policy.compute_log_likelihoods(
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actions=batch[SampleBatch.ACTIONS],
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obs_batch=batch[SampleBatch.CUR_OBS],
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state_batches=[batch[k] for k in state_keys],
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prev_action_batch=batch.data.get(SampleBatch.PREV_ACTIONS),
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prev_reward_batch=batch.data.get(SampleBatch.PREV_REWARDS))
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return log_likelihoods
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@DeveloperAPI
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def process(self, batch):
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self.new_estimates.append(self.estimate(batch))
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@DeveloperAPI
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def check_can_estimate_for(self, batch):
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"""Returns whether we can support OPE for this batch."""
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if isinstance(batch, MultiAgentBatch):
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raise ValueError(
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"IS-estimation is not implemented for multi-agent batches. "
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"You can set `input_evaluation: []` to resolve this.")
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if "action_prob" not in batch:
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raise ValueError(
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"Off-policy estimation is not possible unless the inputs "
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"include action probabilities (i.e., the policy is stochastic "
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"and emits the 'action_prob' key). For DQN this means using "
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"`soft_q: True`. You can also set `input_evaluation: []` to "
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"disable estimation.")
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@DeveloperAPI
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def get_metrics(self):
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"""Return a list of new episode metric estimates since the last call.
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Returns:
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list of OffPolicyEstimate objects.
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"""
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out = self.new_estimates
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self.new_estimates = []
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return out
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