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ray-project--ray/rllib/offline/estimators/tests/test_dm_learning.py
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2026-07-13 13:17:40 +08:00

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Python

import unittest
import ray
from ray.rllib.offline.estimators import DirectMethod
from ray.rllib.offline.estimators.tests.utils import (
check_estimate,
get_cliff_walking_wall_policy_and_data,
)
SEED = 0
class TestDMLearning(unittest.TestCase):
"""Learning tests for the DirectMethod estimator.
Generates three GridWorldWallPolicy policies and batches with epsilon = 0.2, 0.5,
and 0.8 respectively using `get_cliff_walking_wall_policy_and_data`.
Tests that the estimators converge on all eight combinations of evaluation policy
and behavior batch using `check_estimates`, except random policy-expert batch.
Note: We do not test OPE with the "random" policy (epsilon=0.8)
and "expert" (epsilon=0.2) batch because of the large policy-data mismatch. The
expert batch is unlikely to contain the longer trajectories that would be observed
under the random policy, thus the OPE estimate is flaky and inaccurate.
"""
@classmethod
def setUpClass(cls):
ray.init()
# Epsilon-greedy exploration values
random_eps = 0.8
mixed_eps = 0.5
expert_eps = 0.2
num_episodes = 64
cls.gamma = 0.99
# Config settings for FQE model
cls.q_model_config = {
"n_iters": 500,
"minibatch_size": 64,
"polyak_coef": 1.0,
"model_config": {
"fcnet_hiddens": [32, 32, 32],
"activation": "relu",
},
"lr": 1e-3,
}
(
cls.random_policy,
cls.random_batch,
cls.random_reward,
cls.random_std,
) = get_cliff_walking_wall_policy_and_data(
num_episodes, cls.gamma, random_eps, seed=SEED
)
print(
f"Collected random batch of {cls.random_batch.count} steps "
f"with return {cls.random_reward} stddev {cls.random_std}"
)
(
cls.mixed_policy,
cls.mixed_batch,
cls.mixed_reward,
cls.mixed_std,
) = get_cliff_walking_wall_policy_and_data(
num_episodes, cls.gamma, mixed_eps, seed=SEED
)
print(
f"Collected mixed batch of {cls.mixed_batch.count} steps "
f"with return {cls.mixed_reward} stddev {cls.mixed_std}"
)
(
cls.expert_policy,
cls.expert_batch,
cls.expert_reward,
cls.expert_std,
) = get_cliff_walking_wall_policy_and_data(
num_episodes, cls.gamma, expert_eps, seed=SEED
)
print(
f"Collected expert batch of {cls.expert_batch.count} steps "
f"with return {cls.expert_reward} stddev {cls.expert_std}"
)
@classmethod
def tearDownClass(cls):
ray.shutdown()
def test_dm_random_policy_random_data(self):
print("Test DirectMethod on random policy on random dataset")
check_estimate(
estimator_cls=DirectMethod,
gamma=self.gamma,
q_model_config=self.q_model_config,
policy=self.random_policy,
batch=self.random_batch,
mean_ret=self.random_reward,
std_ret=self.random_std,
seed=SEED,
)
def test_dm_random_policy_mixed_data(self):
print("Test DirectMethod on random policy on mixed dataset")
check_estimate(
estimator_cls=DirectMethod,
gamma=self.gamma,
q_model_config=self.q_model_config,
policy=self.random_policy,
batch=self.mixed_batch,
mean_ret=self.random_reward,
std_ret=self.random_std,
seed=SEED,
)
def test_dm_mixed_policy_random_data(self):
print("Test DirectMethod on mixed policy on random dataset")
check_estimate(
estimator_cls=DirectMethod,
gamma=self.gamma,
q_model_config=self.q_model_config,
policy=self.mixed_policy,
batch=self.random_batch,
mean_ret=self.mixed_reward,
std_ret=self.mixed_std,
seed=SEED,
)
def test_dm_mixed_policy_mixed_data(self):
print("Test DirectMethod on mixed policy on mixed dataset")
check_estimate(
estimator_cls=DirectMethod,
gamma=self.gamma,
q_model_config=self.q_model_config,
policy=self.mixed_policy,
batch=self.mixed_batch,
mean_ret=self.mixed_reward,
std_ret=self.mixed_std,
seed=SEED,
)
def test_dm_mixed_policy_expert_data(self):
print("Test DirectMethod on mixed policy on expert dataset")
check_estimate(
estimator_cls=DirectMethod,
gamma=self.gamma,
q_model_config=self.q_model_config,
policy=self.mixed_policy,
batch=self.expert_batch,
mean_ret=self.mixed_reward,
std_ret=self.mixed_std,
seed=SEED,
)
def test_dm_expert_policy_random_data(self):
print("Test DirectMethod on expert policy on random dataset")
check_estimate(
estimator_cls=DirectMethod,
gamma=self.gamma,
q_model_config=self.q_model_config,
policy=self.expert_policy,
batch=self.random_batch,
mean_ret=self.expert_reward,
std_ret=self.expert_std,
seed=SEED,
)
def test_dm_expert_policy_mixed_data(self):
print("Test DirectMethod on expert policy on mixed dataset")
check_estimate(
estimator_cls=DirectMethod,
gamma=self.gamma,
q_model_config=self.q_model_config,
policy=self.expert_policy,
batch=self.mixed_batch,
mean_ret=self.expert_reward,
std_ret=self.expert_std,
seed=SEED,
)
def test_dm_expert_policy_expert_data(self):
print("Test DirectMethod on expert policy on expert dataset")
check_estimate(
estimator_cls=DirectMethod,
gamma=self.gamma,
q_model_config=self.q_model_config,
policy=self.expert_policy,
batch=self.expert_batch,
mean_ret=self.expert_reward,
std_ret=self.expert_std,
seed=SEED,
)
if __name__ == "__main__":
import sys
import pytest
sys.exit(pytest.main(["-v", __file__]))