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import sys
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from collections.abc import Callable
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import pytest
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import torch
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from lerobot.datasets.lerobot_dataset import LeRobotDataset
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from lerobot.rl.buffer import BatchTransition, ReplayBuffer, random_crop_vectorized
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from lerobot.utils.constants import ACTION, DONE, OBS_IMAGE, OBS_STATE, OBS_STR, REWARD
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from tests.fixtures.constants import DUMMY_REPO_ID
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def state_dims() -> list[str]:
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return [OBS_IMAGE, OBS_STATE]
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@pytest.fixture
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def replay_buffer() -> ReplayBuffer:
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return create_empty_replay_buffer()
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def clone_state(state: dict) -> dict:
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return {k: v.clone() for k, v in state.items()}
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def create_empty_replay_buffer(
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optimize_memory: bool = False,
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use_drq: bool = False,
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image_augmentation_function: Callable | None = None,
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) -> ReplayBuffer:
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buffer_capacity = 10
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device = "cpu"
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return ReplayBuffer(
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buffer_capacity,
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device,
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state_dims(),
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optimize_memory=optimize_memory,
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use_drq=use_drq,
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image_augmentation_function=image_augmentation_function,
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)
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def create_random_image() -> torch.Tensor:
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return torch.rand(3, 84, 84)
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def create_dummy_transition() -> dict:
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return {
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OBS_IMAGE: create_random_image(),
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ACTION: torch.randn(4),
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"reward": torch.tensor(1.0),
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OBS_STATE: torch.randn(
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10,
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),
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"done": torch.tensor(False),
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"truncated": torch.tensor(False),
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"complementary_info": {},
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}
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def create_dataset_from_replay_buffer(tmp_path) -> tuple[LeRobotDataset, ReplayBuffer]:
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dummy_state_1 = create_dummy_state()
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dummy_action_1 = create_dummy_action()
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dummy_state_2 = create_dummy_state()
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dummy_action_2 = create_dummy_action()
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dummy_state_3 = create_dummy_state()
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dummy_action_3 = create_dummy_action()
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dummy_state_4 = create_dummy_state()
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dummy_action_4 = create_dummy_action()
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replay_buffer = create_empty_replay_buffer()
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replay_buffer.add(dummy_state_1, dummy_action_1, 1.0, dummy_state_1, False, False)
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replay_buffer.add(dummy_state_2, dummy_action_2, 1.0, dummy_state_2, False, False)
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replay_buffer.add(dummy_state_3, dummy_action_3, 1.0, dummy_state_3, True, True)
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replay_buffer.add(dummy_state_4, dummy_action_4, 1.0, dummy_state_4, True, True)
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root = tmp_path / "test"
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return (replay_buffer.to_lerobot_dataset(DUMMY_REPO_ID, root=root), replay_buffer)
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def create_dummy_state() -> dict:
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return {
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OBS_IMAGE: create_random_image(),
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OBS_STATE: torch.randn(
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10,
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),
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}
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def get_tensor_memory_consumption(tensor):
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return tensor.nelement() * tensor.element_size()
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def get_tensors_memory_consumption(obj, visited_addresses):
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total_size = 0
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address = id(obj)
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if address in visited_addresses:
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return 0
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visited_addresses.add(address)
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if isinstance(obj, torch.Tensor):
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return get_tensor_memory_consumption(obj)
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elif isinstance(obj, (list | tuple)):
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for item in obj:
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total_size += get_tensors_memory_consumption(item, visited_addresses)
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elif isinstance(obj, dict):
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for value in obj.values():
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total_size += get_tensors_memory_consumption(value, visited_addresses)
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elif hasattr(obj, "__dict__"):
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for _, attr in vars(obj).items():
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total_size += get_tensors_memory_consumption(attr, visited_addresses)
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return total_size
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def get_object_memory(obj):
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visited_addresses = set()
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total_size = sys.getsizeof(obj)
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total_size += get_tensors_memory_consumption(obj, visited_addresses)
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return total_size
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def create_dummy_action() -> torch.Tensor:
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return torch.randn(4)
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def dict_properties() -> list:
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return ["state", "next_state"]
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@pytest.fixture
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def dummy_state() -> dict:
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return create_dummy_state()
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@pytest.fixture
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def next_dummy_state() -> dict:
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return create_dummy_state()
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@pytest.fixture
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def dummy_action() -> torch.Tensor:
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return torch.randn(4)
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def test_empty_buffer_sample_raises_error(replay_buffer):
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assert len(replay_buffer) == 0, "Replay buffer should be empty."
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assert replay_buffer.capacity == 10, "Replay buffer capacity should be 10."
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with pytest.raises(RuntimeError, match="Cannot sample from an empty buffer"):
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replay_buffer.sample(1)
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def test_zero_capacity_buffer_raises_error():
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with pytest.raises(ValueError, match="Capacity must be greater than 0."):
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ReplayBuffer(0, "cpu", [OBS_STR, "next_observation"])
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def test_add_transition(replay_buffer, dummy_state, dummy_action):
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replay_buffer.add(dummy_state, dummy_action, 1.0, dummy_state, False, False)
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assert len(replay_buffer) == 1, "Replay buffer should have one transition after adding."
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assert torch.equal(replay_buffer.actions[0], dummy_action), (
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"Action should be equal to the first transition."
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)
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assert replay_buffer.rewards[0] == 1.0, "Reward should be equal to the first transition."
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assert not replay_buffer.dones[0], "Done should be False for the first transition."
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assert not replay_buffer.truncateds[0], "Truncated should be False for the first transition."
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for dim in state_dims():
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assert torch.equal(replay_buffer.states[dim][0], dummy_state[dim]), (
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"Observation should be equal to the first transition."
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)
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assert torch.equal(replay_buffer.next_states[dim][0], dummy_state[dim]), (
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"Next observation should be equal to the first transition."
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)
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def test_add_over_capacity():
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replay_buffer = ReplayBuffer(2, "cpu", [OBS_STR, "next_observation"])
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dummy_state_1 = create_dummy_state()
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dummy_action_1 = create_dummy_action()
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dummy_state_2 = create_dummy_state()
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dummy_action_2 = create_dummy_action()
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dummy_state_3 = create_dummy_state()
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dummy_action_3 = create_dummy_action()
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replay_buffer.add(dummy_state_1, dummy_action_1, 1.0, dummy_state_1, False, False)
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replay_buffer.add(dummy_state_2, dummy_action_2, 1.0, dummy_state_2, False, False)
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replay_buffer.add(dummy_state_3, dummy_action_3, 1.0, dummy_state_3, True, True)
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assert len(replay_buffer) == 2, "Replay buffer should have 2 transitions after adding 3."
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for dim in state_dims():
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assert torch.equal(replay_buffer.states[dim][0], dummy_state_3[dim]), (
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"Observation should be equal to the first transition."
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)
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assert torch.equal(replay_buffer.next_states[dim][0], dummy_state_3[dim]), (
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"Next observation should be equal to the first transition."
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)
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assert torch.equal(replay_buffer.actions[0], dummy_action_3), (
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"Action should be equal to the last transition."
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)
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assert replay_buffer.rewards[0] == 1.0, "Reward should be equal to the last transition."
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assert replay_buffer.dones[0], "Done should be True for the first transition."
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assert replay_buffer.truncateds[0], "Truncated should be True for the first transition."
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def test_sample_from_empty_buffer(replay_buffer):
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with pytest.raises(RuntimeError, match="Cannot sample from an empty buffer"):
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replay_buffer.sample(1)
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def test_sample_with_1_transition(replay_buffer, dummy_state, next_dummy_state, dummy_action):
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replay_buffer.add(dummy_state, dummy_action, 1.0, next_dummy_state, False, False)
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got_batch_transition = replay_buffer.sample(1)
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expected_batch_transition = BatchTransition(
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state=clone_state(dummy_state),
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action=dummy_action.clone(),
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reward=1.0,
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next_state=clone_state(next_dummy_state),
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done=False,
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truncated=False,
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)
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for buffer_property in dict_properties():
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for k, v in expected_batch_transition[buffer_property].items():
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got_state = got_batch_transition[buffer_property][k]
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assert got_state.shape[0] == 1, f"{k} should have 1 transition."
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assert got_state.device.type == "cpu", f"{k} should be on cpu."
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assert torch.equal(got_state[0], v), f"{k} should be equal to the expected batch transition."
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for key, _value in expected_batch_transition.items():
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if key in dict_properties():
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continue
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got_value = got_batch_transition[key]
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v_tensor = expected_batch_transition[key]
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if not isinstance(v_tensor, torch.Tensor):
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v_tensor = torch.tensor(v_tensor)
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assert got_value.shape[0] == 1, f"{key} should have 1 transition."
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assert got_value.device.type == "cpu", f"{key} should be on cpu."
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assert torch.equal(got_value[0], v_tensor), f"{key} should be equal to the expected batch transition."
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def test_sample_with_batch_bigger_than_buffer_size(
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replay_buffer, dummy_state, next_dummy_state, dummy_action
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):
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replay_buffer.add(dummy_state, dummy_action, 1.0, next_dummy_state, False, False)
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got_batch_transition = replay_buffer.sample(10)
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expected_batch_transition = BatchTransition(
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state=dummy_state,
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action=dummy_action,
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reward=1.0,
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next_state=next_dummy_state,
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done=False,
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truncated=False,
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)
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for buffer_property in dict_properties():
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for k in expected_batch_transition[buffer_property]:
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got_state = got_batch_transition[buffer_property][k]
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assert got_state.shape[0] == 1, f"{k} should have 1 transition."
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for key in expected_batch_transition:
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if key in dict_properties():
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continue
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got_value = got_batch_transition[key]
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assert got_value.shape[0] == 1, f"{key} should have 1 transition."
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def test_sample_batch(replay_buffer):
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dummy_state_1 = create_dummy_state()
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dummy_action_1 = create_dummy_action()
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dummy_state_2 = create_dummy_state()
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dummy_action_2 = create_dummy_action()
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dummy_state_3 = create_dummy_state()
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dummy_action_3 = create_dummy_action()
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dummy_state_4 = create_dummy_state()
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dummy_action_4 = create_dummy_action()
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replay_buffer.add(dummy_state_1, dummy_action_1, 1.0, dummy_state_1, False, False)
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replay_buffer.add(dummy_state_2, dummy_action_2, 2.0, dummy_state_2, False, False)
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replay_buffer.add(dummy_state_3, dummy_action_3, 3.0, dummy_state_3, True, True)
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replay_buffer.add(dummy_state_4, dummy_action_4, 4.0, dummy_state_4, True, True)
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dummy_states = [dummy_state_1, dummy_state_2, dummy_state_3, dummy_state_4]
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dummy_actions = [dummy_action_1, dummy_action_2, dummy_action_3, dummy_action_4]
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got_batch_transition = replay_buffer.sample(3)
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for buffer_property in dict_properties():
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for k in got_batch_transition[buffer_property]:
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got_state = got_batch_transition[buffer_property][k]
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assert got_state.shape[0] == 3, f"{k} should have 3 transition."
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for got_state_item in got_state:
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assert any(torch.equal(got_state_item, dummy_state[k]) for dummy_state in dummy_states), (
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f"{k} should be equal to one of the dummy states."
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)
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for got_action_item in got_batch_transition[ACTION]:
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assert any(torch.equal(got_action_item, dummy_action) for dummy_action in dummy_actions), (
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"Actions should be equal to the dummy actions."
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)
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for k in got_batch_transition:
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if k in dict_properties() or k == "complementary_info":
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continue
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got_value = got_batch_transition[k]
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assert got_value.shape[0] == 3, f"{k} should have 3 transition."
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def test_to_lerobot_dataset_with_empty_buffer(replay_buffer):
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with pytest.raises(ValueError, match="The replay buffer is empty. Cannot convert to a dataset."):
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replay_buffer.to_lerobot_dataset("dummy_repo")
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def test_to_lerobot_dataset(tmp_path):
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ds, buffer = create_dataset_from_replay_buffer(tmp_path)
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assert len(ds) == len(buffer), "Dataset should have the same size as the Replay Buffer"
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assert ds.fps == 1, "FPS should be 1"
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assert ds.repo_id == "dummy/repo", "The dataset should have `dummy/repo` repo id"
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for dim in state_dims():
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assert dim in ds.features
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assert ds.features[dim]["shape"] == buffer.states[dim][0].shape
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assert ds.num_episodes == 2
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assert ds.num_frames == 4
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for j, value in enumerate(ds):
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print(torch.equal(value[OBS_IMAGE], buffer.next_states[OBS_IMAGE][j]))
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for i in range(len(ds)):
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for feature, value in ds[i].items():
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if feature == ACTION:
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assert torch.equal(value, buffer.actions[i])
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elif feature == REWARD:
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assert torch.equal(value, buffer.rewards[i])
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elif feature == DONE:
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assert torch.equal(value, buffer.dones[i])
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elif feature == OBS_IMAGE:
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|
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torch.testing.assert_close(value, buffer.states[OBS_IMAGE][i], rtol=0.3, atol=0.003)
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elif feature == OBS_STATE:
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assert torch.equal(value, buffer.states[OBS_STATE][i])
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def test_from_lerobot_dataset(tmp_path):
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dummy_state_1 = create_dummy_state()
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dummy_action_1 = create_dummy_action()
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|
|
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dummy_state_2 = create_dummy_state()
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dummy_action_2 = create_dummy_action()
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|
|
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dummy_state_3 = create_dummy_state()
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dummy_action_3 = create_dummy_action()
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|
|
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dummy_state_4 = create_dummy_state()
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dummy_action_4 = create_dummy_action()
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|
|
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replay_buffer = create_empty_replay_buffer()
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replay_buffer.add(dummy_state_1, dummy_action_1, 1.0, dummy_state_1, False, False)
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replay_buffer.add(dummy_state_2, dummy_action_2, 1.0, dummy_state_2, False, False)
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replay_buffer.add(dummy_state_3, dummy_action_3, 1.0, dummy_state_3, True, True)
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replay_buffer.add(dummy_state_4, dummy_action_4, 1.0, dummy_state_4, True, True)
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root = tmp_path / "test"
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ds = replay_buffer.to_lerobot_dataset(DUMMY_REPO_ID, root=root)
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|
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|
|
reconverted_buffer = ReplayBuffer.from_lerobot_dataset(
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|
|
ds, state_keys=list(state_dims()), device="cpu", capacity=replay_buffer.capacity, use_drq=False
|
|
|
)
|
|
|
|
|
|
|
|
|
assert torch.equal(
|
|
|
reconverted_buffer.actions[: len(replay_buffer)],
|
|
|
replay_buffer.actions[: len(replay_buffer)],
|
|
|
), "Actions from converted buffer should be equal to the original replay buffer."
|
|
|
assert torch.equal(
|
|
|
reconverted_buffer.rewards[: len(replay_buffer)], replay_buffer.rewards[: len(replay_buffer)]
|
|
|
), "Rewards from converted buffer should be equal to the original replay buffer."
|
|
|
assert torch.equal(
|
|
|
reconverted_buffer.dones[: len(replay_buffer)], replay_buffer.dones[: len(replay_buffer)]
|
|
|
), "Dones from converted buffer should be equal to the original replay buffer."
|
|
|
|
|
|
|
|
|
expected_truncateds = torch.zeros(len(replay_buffer)).bool()
|
|
|
assert torch.equal(reconverted_buffer.truncateds[: len(replay_buffer)], expected_truncateds), (
|
|
|
"Truncateds from converted buffer should be equal False"
|
|
|
)
|
|
|
|
|
|
assert torch.equal(
|
|
|
replay_buffer.states[OBS_STATE][: len(replay_buffer)],
|
|
|
reconverted_buffer.states[OBS_STATE][: len(replay_buffer)],
|
|
|
), "State should be the same after converting to dataset and return back"
|
|
|
|
|
|
for i in range(4):
|
|
|
torch.testing.assert_close(
|
|
|
replay_buffer.states[OBS_IMAGE][i],
|
|
|
reconverted_buffer.states[OBS_IMAGE][i],
|
|
|
rtol=0.4,
|
|
|
atol=0.004,
|
|
|
)
|
|
|
|
|
|
|
|
|
for i in range(2):
|
|
|
|
|
|
next_index = (i + 1) % 4
|
|
|
|
|
|
torch.testing.assert_close(
|
|
|
replay_buffer.states[OBS_IMAGE][next_index],
|
|
|
reconverted_buffer.next_states[OBS_IMAGE][i],
|
|
|
rtol=0.4,
|
|
|
atol=0.004,
|
|
|
)
|
|
|
|
|
|
for i in range(2, 4):
|
|
|
assert torch.equal(
|
|
|
replay_buffer.states[OBS_STATE][i],
|
|
|
reconverted_buffer.next_states[OBS_STATE][i],
|
|
|
)
|
|
|
|
|
|
|
|
|
def test_buffer_sample_alignment():
|
|
|
|
|
|
buffer = ReplayBuffer(capacity=100, device="cpu", state_keys=["state_value"], storage_device="cpu")
|
|
|
|
|
|
|
|
|
for i in range(100):
|
|
|
signature = float(i) / 100.0
|
|
|
state = {"state_value": torch.tensor([[signature]]).float()}
|
|
|
action = torch.tensor([[2.0 * signature]]).float()
|
|
|
reward = 3.0 * signature
|
|
|
|
|
|
is_end = (i + 1) % 10 == 0
|
|
|
if is_end:
|
|
|
next_state = {"state_value": torch.tensor([[signature]]).float()}
|
|
|
done = True
|
|
|
else:
|
|
|
next_signature = float(i + 1) / 100.0
|
|
|
next_state = {"state_value": torch.tensor([[next_signature]]).float()}
|
|
|
done = False
|
|
|
|
|
|
buffer.add(state, action, reward, next_state, done, False)
|
|
|
|
|
|
|
|
|
batch = buffer.sample(50)
|
|
|
|
|
|
for i in range(50):
|
|
|
state_sig = batch["state"]["state_value"][i].item()
|
|
|
action_val = batch[ACTION][i].item()
|
|
|
reward_val = batch["reward"][i].item()
|
|
|
next_state_sig = batch["next_state"]["state_value"][i].item()
|
|
|
is_done = batch["done"][i].item() > 0.5
|
|
|
|
|
|
|
|
|
assert abs(action_val - 2.0 * state_sig) < 1e-4, (
|
|
|
f"Action {action_val} should be 2x state signature {state_sig}"
|
|
|
)
|
|
|
|
|
|
assert abs(reward_val - 3.0 * state_sig) < 1e-4, (
|
|
|
f"Reward {reward_val} should be 3x state signature {state_sig}"
|
|
|
)
|
|
|
|
|
|
if is_done:
|
|
|
assert abs(next_state_sig - state_sig) < 1e-4, (
|
|
|
f"For done states, next_state {next_state_sig} should equal state {state_sig}"
|
|
|
)
|
|
|
else:
|
|
|
|
|
|
valid_next = (
|
|
|
abs(next_state_sig - state_sig - 0.01) < 1e-4 or abs(next_state_sig - state_sig) < 1e-4
|
|
|
)
|
|
|
assert valid_next, (
|
|
|
f"Next state {next_state_sig} should be either state+0.01 or same as state {state_sig}"
|
|
|
)
|
|
|
|
|
|
|
|
|
def test_memory_optimization():
|
|
|
dummy_state_1 = create_dummy_state()
|
|
|
dummy_action_1 = create_dummy_action()
|
|
|
|
|
|
dummy_state_2 = create_dummy_state()
|
|
|
dummy_action_2 = create_dummy_action()
|
|
|
|
|
|
dummy_state_3 = create_dummy_state()
|
|
|
dummy_action_3 = create_dummy_action()
|
|
|
|
|
|
dummy_state_4 = create_dummy_state()
|
|
|
dummy_action_4 = create_dummy_action()
|
|
|
|
|
|
replay_buffer = create_empty_replay_buffer()
|
|
|
replay_buffer.add(dummy_state_1, dummy_action_1, 1.0, dummy_state_2, False, False)
|
|
|
replay_buffer.add(dummy_state_2, dummy_action_2, 1.0, dummy_state_3, False, False)
|
|
|
replay_buffer.add(dummy_state_3, dummy_action_3, 1.0, dummy_state_4, False, False)
|
|
|
replay_buffer.add(dummy_state_4, dummy_action_4, 1.0, dummy_state_4, True, True)
|
|
|
|
|
|
optimized_replay_buffer = create_empty_replay_buffer(True)
|
|
|
optimized_replay_buffer.add(dummy_state_1, dummy_action_1, 1.0, dummy_state_2, False, False)
|
|
|
optimized_replay_buffer.add(dummy_state_2, dummy_action_2, 1.0, dummy_state_3, False, False)
|
|
|
optimized_replay_buffer.add(dummy_state_3, dummy_action_3, 1.0, dummy_state_4, False, False)
|
|
|
optimized_replay_buffer.add(dummy_state_4, dummy_action_4, 1.0, None, True, True)
|
|
|
|
|
|
assert get_object_memory(optimized_replay_buffer) < get_object_memory(replay_buffer), (
|
|
|
"Optimized replay buffer should be smaller than the original replay buffer"
|
|
|
)
|
|
|
|
|
|
|
|
|
def test_check_image_augmentations_with_drq_and_dummy_image_augmentation_function(dummy_state, dummy_action):
|
|
|
def dummy_image_augmentation_function(x):
|
|
|
return torch.ones_like(x) * 10
|
|
|
|
|
|
replay_buffer = create_empty_replay_buffer(
|
|
|
use_drq=True, image_augmentation_function=dummy_image_augmentation_function
|
|
|
)
|
|
|
|
|
|
replay_buffer.add(dummy_state, dummy_action, 1.0, dummy_state, False, False)
|
|
|
|
|
|
sampled_transitions = replay_buffer.sample(1)
|
|
|
assert torch.all(sampled_transitions["state"][OBS_IMAGE] == 10), "Image augmentations should be applied"
|
|
|
assert torch.all(sampled_transitions["next_state"][OBS_IMAGE] == 10), (
|
|
|
"Image augmentations should be applied"
|
|
|
)
|
|
|
|
|
|
|
|
|
def test_check_image_augmentations_with_drq_and_default_image_augmentation_function(
|
|
|
dummy_state, dummy_action
|
|
|
):
|
|
|
replay_buffer = create_empty_replay_buffer(use_drq=True)
|
|
|
|
|
|
replay_buffer.add(dummy_state, dummy_action, 1.0, dummy_state, False, False)
|
|
|
|
|
|
|
|
|
sampled_transitions = replay_buffer.sample(1)
|
|
|
assert sampled_transitions["state"][OBS_IMAGE].shape == (1, 3, 84, 84)
|
|
|
assert sampled_transitions["next_state"][OBS_IMAGE].shape == (1, 3, 84, 84)
|
|
|
|
|
|
|
|
|
def test_random_crop_vectorized_basic():
|
|
|
|
|
|
batch_size, channels, height, width = 2, 3, 10, 8
|
|
|
images = torch.zeros((batch_size, channels, height, width))
|
|
|
|
|
|
|
|
|
for b in range(batch_size):
|
|
|
images[b] = b + 1
|
|
|
|
|
|
crop_size = (6, 4)
|
|
|
cropped = random_crop_vectorized(images, crop_size)
|
|
|
|
|
|
|
|
|
assert cropped.shape == (batch_size, channels, *crop_size)
|
|
|
|
|
|
|
|
|
assert torch.all(cropped[0] == 1)
|
|
|
assert torch.all(cropped[1] == 2)
|
|
|
|
|
|
|
|
|
def test_random_crop_vectorized_invalid_size():
|
|
|
images = torch.zeros((2, 3, 10, 8))
|
|
|
|
|
|
|
|
|
with pytest.raises(ValueError, match="Requested crop size .* is bigger than the image size"):
|
|
|
random_crop_vectorized(images, (12, 8))
|
|
|
|
|
|
with pytest.raises(ValueError, match="Requested crop size .* is bigger than the image size"):
|
|
|
random_crop_vectorized(images, (10, 10))
|
|
|
|
|
|
|
|
|
def _populate_buffer_for_async_test(capacity: int = 10) -> ReplayBuffer:
|
|
|
"""Create a small buffer with deterministic 3×128×128 images and 11-D state."""
|
|
|
buffer = ReplayBuffer(
|
|
|
capacity=capacity,
|
|
|
device="cpu",
|
|
|
state_keys=[OBS_IMAGE, OBS_STATE],
|
|
|
storage_device="cpu",
|
|
|
)
|
|
|
|
|
|
for i in range(capacity):
|
|
|
img = torch.ones(3, 128, 128) * i
|
|
|
state_vec = torch.arange(11).float() + i
|
|
|
state = {
|
|
|
OBS_IMAGE: img,
|
|
|
OBS_STATE: state_vec,
|
|
|
}
|
|
|
buffer.add(
|
|
|
state=state,
|
|
|
action=torch.tensor([0.0]),
|
|
|
reward=0.0,
|
|
|
next_state=state,
|
|
|
done=False,
|
|
|
truncated=False,
|
|
|
)
|
|
|
return buffer
|
|
|
|
|
|
|
|
|
def test_async_iterator_shapes_basic():
|
|
|
buffer = _populate_buffer_for_async_test()
|
|
|
batch_size = 2
|
|
|
iterator = buffer.get_iterator(batch_size=batch_size, async_prefetch=True, queue_size=1)
|
|
|
batch = next(iterator)
|
|
|
|
|
|
images = batch["state"][OBS_IMAGE]
|
|
|
states = batch["state"][OBS_STATE]
|
|
|
|
|
|
assert images.shape == (batch_size, 3, 128, 128)
|
|
|
assert states.shape == (batch_size, 11)
|
|
|
|
|
|
next_images = batch["next_state"][OBS_IMAGE]
|
|
|
next_states = batch["next_state"][OBS_STATE]
|
|
|
|
|
|
assert next_images.shape == (batch_size, 3, 128, 128)
|
|
|
assert next_states.shape == (batch_size, 11)
|
|
|
|
|
|
|
|
|
def test_async_iterator_multiple_iterations():
|
|
|
buffer = _populate_buffer_for_async_test()
|
|
|
batch_size = 2
|
|
|
iterator = buffer.get_iterator(batch_size=batch_size, async_prefetch=True, queue_size=2)
|
|
|
|
|
|
for _ in range(5):
|
|
|
batch = next(iterator)
|
|
|
images = batch["state"][OBS_IMAGE]
|
|
|
states = batch["state"][OBS_STATE]
|
|
|
assert images.shape == (batch_size, 3, 128, 128)
|
|
|
assert states.shape == (batch_size, 11)
|
|
|
|
|
|
next_images = batch["next_state"][OBS_IMAGE]
|
|
|
next_states = batch["next_state"][OBS_STATE]
|
|
|
assert next_images.shape == (batch_size, 3, 128, 128)
|
|
|
assert next_states.shape == (batch_size, 11)
|
|
|
|
|
|
|
|
|
del iterator
|
|
|
|