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

212 lines
7.4 KiB
Python

import unittest
from pathlib import Path
from typing import TYPE_CHECKING, Any, Dict
import gymnasium as gym
import ray
from ray.rllib.algorithms.bc.bc import BCConfig
from ray.rllib.core import ALL_MODULES, DEFAULT_MODULE_ID
from ray.rllib.core.columns import Columns
from ray.rllib.offline.offline_evaluation_runner import (
TOTAL_EVAL_LOSS_KEY,
OfflineEvaluationRunner,
)
from ray.rllib.utils.metrics import NUM_ENV_STEPS_SAMPLED
from ray.rllib.utils.typing import ModuleID, ResultDict, TensorType
if TYPE_CHECKING:
from ray.rllib.algorithms.algorithm_config import AlgorithmConfig
class TestOfflineEvaluationRunner(unittest.TestCase):
def setUp(self) -> None:
data_path = "offline/tests/data/cartpole/cartpole-v1_large"
self.base_path = Path(__file__).parents[2]
self.data_path = "local://" + self.base_path.joinpath(data_path).as_posix()
# Assign the observation and action spaces.
env = gym.make("CartPole-v1")
self.observation_space = env.observation_space
self.action_space = env.action_space
# Create a simple config.
self.config = (
BCConfig()
.environment(
observation_space=self.observation_space,
action_space=self.action_space,
)
.api_stack(
enable_env_runner_and_connector_v2=True,
enable_rl_module_and_learner=True,
)
.offline_data(
input_=[self.data_path],
dataset_num_iters_per_learner=1,
)
.learners(
num_learners=0,
)
.training(
train_batch_size_per_learner=256,
)
.evaluation(
num_offline_eval_runners=2,
offline_eval_batch_size_per_runner=256,
)
)
def tearDown(self):
# Pull down Ray after each test.
ray.shutdown()
def test_offline_evaluation_runner_setup(self):
# Create an `OfflineEvaluationRunner` instance.
offline_eval_runner = OfflineEvaluationRunner(config=self.config)
# Ensure that the runner has a config.
self.assertIsInstance(offline_eval_runner.config, BCConfig)
# Ensure that the runner has an `MultiRLModule`.
from ray.rllib.core.rl_module.multi_rl_module import MultiRLModule
self.assertIsInstance(offline_eval_runner.module, MultiRLModule)
# Make sure the runner has a callable loss function.
from typing import Callable
self.assertIsInstance(offline_eval_runner._loss_for_module_fn, Callable)
def test_offline_evaluation_runner_dataset_iterator(self):
# Create an algorithm from the config.
algo = self.config.build()
# Create an `OfflineEvaluationRunner`.
offline_eval_runner = OfflineEvaluationRunner(config=self.config)
# Assign an iterator to the runner.
iterators = algo.offline_data.sample(
num_samples=self.config.offline_eval_batch_size_per_runner,
return_iterator=True,
num_shards=0,
)
offline_eval_runner.set_dataset_iterator(iterator=iterators[0])
# Ensure the dataset iterator is set.
self.assertIsNotNone(offline_eval_runner._dataset_iterator)
# Clean up.
algo.cleanup()
def test_offline_evaluation_runner_run(self):
# Build an algorithm.
algo = self.config.build()
# Build an `OfflineEvaluationRunner` instance.
offline_eval_runner = OfflineEvaluationRunner(config=self.config)
# Assign a data iterator to the runner.
iterators = algo.offline_data.sample(
num_samples=self.config.offline_eval_batch_size_per_runner,
return_iterator=True,
num_shards=0,
)
offline_eval_runner.set_dataset_iterator(iterator=iterators[0])
# Run the runner and receive metrics.
metrics = offline_eval_runner.run()
# Ensure that we received a dictionary.
self.assertIsInstance(metrics, ResultDict)
# Ensure that the metrics of the `default_policy` are also a dict.
self.assertIsInstance(metrics[DEFAULT_MODULE_ID], ResultDict)
# Make sure that the metric for the total eval loss is a `Stats` instance.
from ray.rllib.utils.metrics.stats import StatsBase
self.assertIsInstance(
metrics[DEFAULT_MODULE_ID][TOTAL_EVAL_LOSS_KEY], StatsBase
)
# Ensure that the `_batch_iterator` instance was built. Note, this is
# built in the first call to `OfflineEvaluationRunner.run()`.
from ray.rllib.utils.minibatch_utils import MiniBatchRayDataIterator
self.assertIsInstance(
offline_eval_runner._batch_iterator, MiniBatchRayDataIterator
)
# Clean up.
algo.cleanup()
def test_offline_evaluation_runner_loss_fn(self):
# Import pytorch to define a custom SL loss function.
from ray.rllib.utils.framework import try_import_torch
torch, nn = try_import_torch()
# Define a custom SL loss function for evaluation that considers
# classification of actions.
def _compute_loss_for_module(
runner: OfflineEvaluationRunner,
module_id: ModuleID,
config: "AlgorithmConfig",
batch: Dict[str, Any],
fwd_out: Dict[str, TensorType],
):
# Compute the log probabilities of the actions.
action_dist_log_probs = nn.LogSoftmax()(fwd_out[Columns.ACTION_DIST_INPUTS])
# Compute the negative log-loss of actions.
loss = torch.nn.NLLLoss()(action_dist_log_probs, batch[Columns.ACTIONS])
# Return the loss.
return loss
# Configure a custom loss function for offline evaluation.
self.config = self.config.evaluation(
offline_loss_for_module_fn=_compute_loss_for_module,
)
# Build the algorithm.
algo = self.config.build()
# Create an `OfflineEvaluatioRunner`.
offline_eval_runner = OfflineEvaluationRunner(config=self.config)
# Create a data iterator and assign it to the runner.
iterators = algo.offline_data.sample(
num_samples=self.config.offline_eval_batch_size_per_runner,
return_iterator=True,
num_shards=0,
)
offline_eval_runner.set_dataset_iterator(iterator=iterators[0])
# Now run the runner and collect metrics.
metrics = offline_eval_runner.run()
# Assert that we got a `ResultDict`.
self.assertIsInstance(metrics, ResultDict)
# Ensure that the custom loss has been recorded.
self.assertIn(TOTAL_EVAL_LOSS_KEY, metrics[DEFAULT_MODULE_ID])
# Make sure that the number of steps is recorded.
self.assertIn(NUM_ENV_STEPS_SAMPLED, metrics[ALL_MODULES])
# Ensure that the number of steps evaluated is the same as the configured
# batch size for offline evaluation.
self.assertEqual(
metrics[ALL_MODULES][NUM_ENV_STEPS_SAMPLED],
self.config.offline_eval_batch_size_per_runner,
)
# Clean up.
algo.cleanup()
# Reset the config to the default.
self.config = self.config.evaluation(
offline_loss_for_module_fn=None,
)
if __name__ == "__main__":
import sys
import pytest
sys.exit(pytest.main(["-v", __file__]))