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ray-project--ray/rllib/callbacks/tests/test_callbacks_old_api_stack.py
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2026-07-13 13:17:40 +08:00

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7.5 KiB
Python

import unittest
from collections import Counter
import ray
from ray.rllib.algorithms.callbacks import DefaultCallbacks, make_multi_callbacks
from ray.rllib.algorithms.ppo import PPOConfig
from ray.rllib.examples.envs.classes.random_env import RandomEnv
class EpisodeAndSampleCallbacks(DefaultCallbacks):
def __init__(self):
super().__init__()
self.counts = Counter()
def on_episode_start(self, *args, **kwargs):
self.counts.update({"start": 1})
def on_episode_step(self, *args, **kwargs):
self.counts.update({"step": 1})
def on_episode_end(self, *args, **kwargs):
self.counts.update({"end": 1})
def on_sample_end(self, *args, **kwargs):
self.counts.update({"sample": 1})
class OnSubEnvironmentCreatedCallback(DefaultCallbacks):
def on_sub_environment_created(
self, *, worker, sub_environment, env_context, **kwargs
):
# Create a vector-index-sum property per remote worker.
if not hasattr(worker, "sum_sub_env_vector_indices"):
worker.sum_sub_env_vector_indices = 0
# Add the sub-env's vector index to the counter.
worker.sum_sub_env_vector_indices += env_context.vector_index
print(
f"sub-env {sub_environment} created; "
f"worker={worker.worker_index}; "
f"vector-idx={env_context.vector_index}"
)
class OnEpisodeCreatedCallback(DefaultCallbacks):
def __init__(self):
super().__init__()
self._reset_counter = 0
def on_episode_created(
self, *, worker, base_env, policies, env_index, episode, **kwargs
):
print(f"Sub-env {env_index} is going to be reset.")
self._reset_counter += 1
# Make sure the passed in episode is really brand new.
assert episode.env_id == env_index
assert episode.length == -1
assert episode.worker is worker
class TestCallbacks(unittest.TestCase):
@classmethod
def setUpClass(cls):
ray.init()
@classmethod
def tearDownClass(cls):
ray.shutdown()
def test_episode_and_sample_callbacks(self):
config = (
PPOConfig()
.api_stack(
enable_rl_module_and_learner=False,
enable_env_runner_and_connector_v2=False,
)
.environment("CartPole-v1")
.env_runners(num_env_runners=0)
.callbacks(EpisodeAndSampleCallbacks)
.training(train_batch_size=50, minibatch_size=50, num_epochs=1)
)
algo = config.build()
algo.train()
algo.train()
callback_obj = algo.env_runner.callbacks
self.assertGreater(callback_obj.counts["sample"], 0)
self.assertGreater(callback_obj.counts["start"], 0)
self.assertGreater(callback_obj.counts["end"], 0)
self.assertGreater(callback_obj.counts["step"], 0)
algo.stop()
def test_on_sub_environment_created(self):
config = (
PPOConfig()
.api_stack(
enable_rl_module_and_learner=False,
enable_env_runner_and_connector_v2=False,
)
.environment("CartPole-v1")
# Create 4 sub-environments per remote worker.
# Create 2 remote workers.
.env_runners(num_envs_per_env_runner=4, num_env_runners=2)
)
for callbacks in (
OnSubEnvironmentCreatedCallback,
make_multi_callbacks([OnSubEnvironmentCreatedCallback]),
):
config.callbacks(callbacks)
algo = config.build()
# Fake the counter on the local worker (doesn't have an env) and
# set it to -1 so the below `foreach_env_runner()` won't fail.
algo.env_runner.sum_sub_env_vector_indices = -1
# Get sub-env vector index sums from the 2 remote workers:
sum_sub_env_vector_indices = algo.env_runner_group.foreach_env_runner(
lambda w: w.sum_sub_env_vector_indices
)
# Local worker has no environments -> Expect the -1 special
# value returned by the above lambda.
self.assertTrue(sum_sub_env_vector_indices[0] == -1)
# Both remote workers (index 1 and 2) have a vector index counter
# of 6 (sum of vector indices: 0 + 1 + 2 + 3).
self.assertTrue(sum_sub_env_vector_indices[1] == 6)
self.assertTrue(sum_sub_env_vector_indices[2] == 6)
algo.stop()
def test_on_sub_environment_created_with_remote_envs(self):
config = (
PPOConfig()
.api_stack(
enable_rl_module_and_learner=False,
enable_env_runner_and_connector_v2=False,
)
.environment("CartPole-v1")
.env_runners(
# Make each sub-environment a ray actor.
remote_worker_envs=True,
# Create 2 remote workers.
num_env_runners=2,
# Create 4 sub-environments (ray remote actors) per remote
# worker.
num_envs_per_env_runner=4,
)
)
for callbacks in (
OnSubEnvironmentCreatedCallback,
make_multi_callbacks([OnSubEnvironmentCreatedCallback]),
):
config.callbacks(callbacks)
algo = config.build()
# Fake the counter on the local worker (doesn't have an env) and
# set it to -1 so the below `foreach_env_runner()` won't fail.
algo.env_runner.sum_sub_env_vector_indices = -1
# Get sub-env vector index sums from the 2 remote workers:
sum_sub_env_vector_indices = algo.env_runner_group.foreach_env_runner(
lambda w: w.sum_sub_env_vector_indices
)
# Local worker has no environments -> Expect the -1 special
# value returned by the above lambda.
self.assertTrue(sum_sub_env_vector_indices[0] == -1)
# Both remote workers (index 1 and 2) have a vector index counter
# of 6 (sum of vector indices: 0 + 1 + 2 + 3).
self.assertTrue(sum_sub_env_vector_indices[1] == 6)
self.assertTrue(sum_sub_env_vector_indices[2] == 6)
algo.stop()
def test_on_episode_created(self):
# 1000 steps sampled (2.5 episodes on each sub-environment) before training
# starts.
config = (
PPOConfig()
.api_stack(
enable_rl_module_and_learner=False,
enable_env_runner_and_connector_v2=False,
)
.environment(
RandomEnv,
env_config={
"max_episode_len": 200,
"p_terminated": 0.0,
},
)
.env_runners(num_envs_per_env_runner=2, num_env_runners=1)
.callbacks(OnEpisodeCreatedCallback)
)
algo = config.build()
algo.train()
# Two sub-environments share 4000 steps in the first training iteration
# (train_batch_size=4000).
# -> 4000 / 2 [sub-envs] = 2000 [per sub-env]
# -> 1 episode = 200 timesteps
# -> 10 episodes per sub-env
# -> 11 episodes created [per sub-env] = 22 episodes total
self.assertEqual(
22,
algo.env_runner_group.foreach_env_runner(
lambda w: w.callbacks._reset_counter,
local_env_runner=False,
)[0],
)
algo.stop()
if __name__ == "__main__":
import sys
import pytest
sys.exit(pytest.main(["-v", __file__]))