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#!/usr/bin/env python
# Copyright 2025 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
import tempfile
from pathlib import Path
import numpy as np
import torch
from lerobot.configs.types import FeatureType, PipelineFeatureType
from lerobot.processor import (
DataProcessorPipeline,
ProcessorStepRegistry,
RenameObservationsProcessorStep,
TransitionKey,
)
from lerobot.processor.converters import create_transition, identity_transition
from lerobot.processor.rename_processor import rename_stats
from lerobot.utils.constants import ACTION, OBS_IMAGE, OBS_IMAGES, OBS_STATE
from tests.conftest import assert_contract_is_typed
def test_basic_renaming():
"""Test basic key renaming functionality."""
rename_map = {
"old_key1": "new_key1",
"old_key2": "new_key2",
}
processor = RenameObservationsProcessorStep(rename_map=rename_map)
observation = {
"old_key1": torch.tensor([1.0, 2.0]),
"old_key2": np.array([3.0, 4.0]),
"unchanged_key": "keep_me",
}
transition = create_transition(observation=observation)
result = processor(transition)
processed_obs = result[TransitionKey.OBSERVATION]
# Check renamed keys
assert "new_key1" in processed_obs
assert "new_key2" in processed_obs
assert "old_key1" not in processed_obs
assert "old_key2" not in processed_obs
# Check values are preserved
torch.testing.assert_close(processed_obs["new_key1"], torch.tensor([1.0, 2.0]))
np.testing.assert_array_equal(processed_obs["new_key2"], np.array([3.0, 4.0]))
# Check unchanged key is preserved
assert processed_obs["unchanged_key"] == "keep_me"
def test_empty_rename_map():
"""Test processor with empty rename map (should pass through unchanged)."""
processor = RenameObservationsProcessorStep(rename_map={})
observation = {
"key1": torch.tensor([1.0]),
"key2": "value2",
}
transition = create_transition(observation=observation)
result = processor(transition)
processed_obs = result[TransitionKey.OBSERVATION]
# All keys should be unchanged
assert processed_obs.keys() == observation.keys()
torch.testing.assert_close(processed_obs["key1"], observation["key1"])
assert processed_obs["key2"] == observation["key2"]
def test_none_observation():
"""Test processor with None observation."""
processor = RenameObservationsProcessorStep(rename_map={"old": "new"})
transition = create_transition(observation={})
result = processor(transition)
# Should return transition unchanged
assert result == transition
def test_overlapping_rename():
"""Test renaming when new names might conflict."""
rename_map = {
"a": "b",
"b": "c", # This creates a potential conflict
}
processor = RenameObservationsProcessorStep(rename_map=rename_map)
observation = {
"a": 1,
"b": 2,
"x": 3,
}
transition = create_transition(observation=observation)
result = processor(transition)
processed_obs = result[TransitionKey.OBSERVATION]
# Check that renaming happens correctly
assert "a" not in processed_obs
assert processed_obs["b"] == 1 # 'a' renamed to 'b'
assert processed_obs["c"] == 2 # original 'b' renamed to 'c'
assert processed_obs["x"] == 3
def test_partial_rename():
"""Test renaming only some keys."""
rename_map = {
OBS_STATE: "observation.proprio_state",
"pixels": OBS_IMAGE,
}
processor = RenameObservationsProcessorStep(rename_map=rename_map)
observation = {
OBS_STATE: torch.randn(10),
"pixels": np.random.randint(0, 256, (64, 64, 3), dtype=np.uint8),
"reward": 1.0,
"info": {"episode": 1},
}
transition = create_transition(observation=observation)
result = processor(transition)
processed_obs = result[TransitionKey.OBSERVATION]
# Check renamed keys
assert "observation.proprio_state" in processed_obs
assert OBS_IMAGE in processed_obs
assert OBS_STATE not in processed_obs
assert "pixels" not in processed_obs
# Check unchanged keys
assert processed_obs["reward"] == 1.0
assert processed_obs["info"] == {"episode": 1}
def test_get_config():
"""Test configuration serialization."""
rename_map = {
"old1": "new1",
"old2": "new2",
}
processor = RenameObservationsProcessorStep(rename_map=rename_map)
config = processor.get_config()
assert config == {"rename_map": rename_map}
def test_state_dict():
"""Test state dict (should be empty for RenameProcessorStep)."""
processor = RenameObservationsProcessorStep(rename_map={"old": "new"})
state = processor.state_dict()
assert state == {}
# Load state dict should work even with empty dict
processor.load_state_dict({})
def test_integration_with_robot_processor():
"""Test integration with RobotProcessor pipeline."""
rename_map = {
"agent_pos": OBS_STATE,
"pixels": OBS_IMAGE,
}
rename_processor = RenameObservationsProcessorStep(rename_map=rename_map)
pipeline = DataProcessorPipeline(
[rename_processor], to_transition=identity_transition, to_output=identity_transition
)
observation = {
"agent_pos": np.array([1.0, 2.0, 3.0]),
"pixels": np.zeros((32, 32, 3), dtype=np.uint8),
"other_data": "preserve_me",
}
transition = create_transition(
observation=observation, reward=0.5, done=False, truncated=False, info={}, complementary_data={}
)
result = pipeline(transition)
processed_obs = result[TransitionKey.OBSERVATION]
# Check renaming worked through pipeline
assert OBS_STATE in processed_obs
assert OBS_IMAGE in processed_obs
assert "agent_pos" not in processed_obs
assert "pixels" not in processed_obs
assert processed_obs["other_data"] == "preserve_me"
# Check other transition elements unchanged
assert result[TransitionKey.REWARD] == 0.5
assert result[TransitionKey.DONE] is False
def test_save_and_load_pretrained():
"""Test saving and loading processor with RobotProcessor."""
rename_map = {
"old_state": OBS_STATE,
"old_image": OBS_IMAGE,
}
processor = RenameObservationsProcessorStep(rename_map=rename_map)
pipeline = DataProcessorPipeline([processor], name="TestRenameProcessorStep")
with tempfile.TemporaryDirectory() as tmp_dir:
# Save pipeline
pipeline.save_pretrained(tmp_dir)
# Check files were created
config_path = (
Path(tmp_dir) / "testrenameprocessorstep.json"
) # Based on name="TestRenameProcessorStep"
assert config_path.exists()
# No state files should be created for RenameProcessorStep
state_files = list(Path(tmp_dir).glob("*.safetensors"))
assert len(state_files) == 0
# Load pipeline
loaded_pipeline = DataProcessorPipeline.from_pretrained(
tmp_dir,
config_filename="testrenameprocessorstep.json",
to_transition=identity_transition,
to_output=identity_transition,
)
assert loaded_pipeline.name == "TestRenameProcessorStep"
assert len(loaded_pipeline) == 1
# Check that loaded processor works correctly
loaded_processor = loaded_pipeline.steps[0]
assert isinstance(loaded_processor, RenameObservationsProcessorStep)
assert loaded_processor.rename_map == rename_map
# Test functionality after loading
observation = {"old_state": [1, 2, 3], "old_image": "image_data"}
transition = create_transition(observation=observation)
result = loaded_pipeline(transition)
processed_obs = result[TransitionKey.OBSERVATION]
assert OBS_STATE in processed_obs
assert OBS_IMAGE in processed_obs
assert processed_obs[OBS_STATE] == [1, 2, 3]
assert processed_obs[OBS_IMAGE] == "image_data"
def test_registry_functionality():
"""Test that RenameProcessorStep is properly registered."""
# Check that it's registered
assert "rename_observations_processor" in ProcessorStepRegistry.list()
# Get from registry
retrieved_class = ProcessorStepRegistry.get("rename_observations_processor")
assert retrieved_class is RenameObservationsProcessorStep
# Create instance from registry
instance = retrieved_class(rename_map={"old": "new"})
assert isinstance(instance, RenameObservationsProcessorStep)
assert instance.rename_map == {"old": "new"}
def test_registry_based_save_load():
"""Test save/load using registry name instead of module path."""
processor = RenameObservationsProcessorStep(rename_map={"key1": "renamed_key1"})
pipeline = DataProcessorPipeline(
[processor], to_transition=identity_transition, to_output=identity_transition
)
with tempfile.TemporaryDirectory() as tmp_dir:
# Save and load
pipeline.save_pretrained(tmp_dir)
# Verify config uses registry name
import json
with open(Path(tmp_dir) / "dataprocessorpipeline.json") as f: # Default name is "RobotProcessor"
config = json.load(f)
assert "registry_name" in config["steps"][0]
assert config["steps"][0]["registry_name"] == "rename_observations_processor"
assert "class" not in config["steps"][0] # Should use registry, not module path
# Load should work
loaded_pipeline = DataProcessorPipeline.from_pretrained(
tmp_dir, config_filename="dataprocessorpipeline.json"
)
loaded_processor = loaded_pipeline.steps[0]
assert isinstance(loaded_processor, RenameObservationsProcessorStep)
assert loaded_processor.rename_map == {"key1": "renamed_key1"}
def test_chained_rename_processors():
"""Test multiple RenameProcessorSteps in a pipeline."""
# First processor: rename raw keys to intermediate format
processor1 = RenameObservationsProcessorStep(
rename_map={
"pos": "agent_position",
"img": "camera_image",
}
)
# Second processor: rename to final format
processor2 = RenameObservationsProcessorStep(
rename_map={
"agent_position": OBS_STATE,
"camera_image": OBS_IMAGE,
}
)
pipeline = DataProcessorPipeline(
[processor1, processor2], to_transition=identity_transition, to_output=identity_transition
)
observation = {
"pos": np.array([1.0, 2.0]),
"img": "image_data",
"extra": "keep_me",
}
transition = create_transition(observation=observation)
# Step through to see intermediate results
results = list(pipeline.step_through(transition))
# After first processor
assert "agent_position" in results[1][TransitionKey.OBSERVATION]
assert "camera_image" in results[1][TransitionKey.OBSERVATION]
# After second processor
final_obs = results[2][TransitionKey.OBSERVATION]
assert OBS_STATE in final_obs
assert OBS_IMAGE in final_obs
assert final_obs["extra"] == "keep_me"
# Original keys should be gone
assert "pos" not in final_obs
assert "img" not in final_obs
assert "agent_position" not in final_obs
assert "camera_image" not in final_obs
def test_nested_observation_rename():
"""Test renaming with nested observation structures."""
rename_map = {
f"{OBS_IMAGES}.left": "observation.camera.left_view",
f"{OBS_IMAGES}.right": "observation.camera.right_view",
"observation.proprio": "observation.proprioception",
}
processor = RenameObservationsProcessorStep(rename_map=rename_map)
observation = {
f"{OBS_IMAGES}.left": torch.randn(3, 64, 64),
f"{OBS_IMAGES}.right": torch.randn(3, 64, 64),
"observation.proprio": torch.randn(7),
"observation.gripper": torch.tensor([0.0]), # Not renamed
}
transition = create_transition(observation=observation)
result = processor(transition)
processed_obs = result[TransitionKey.OBSERVATION]
# Check renames
assert "observation.camera.left_view" in processed_obs
assert "observation.camera.right_view" in processed_obs
assert "observation.proprioception" in processed_obs
# Check unchanged key
assert "observation.gripper" in processed_obs
# Check old keys removed
assert f"{OBS_IMAGES}.left" not in processed_obs
assert f"{OBS_IMAGES}.right" not in processed_obs
assert "observation.proprio" not in processed_obs
def test_value_types_preserved():
"""Test that various value types are preserved during renaming."""
rename_map = {"old_tensor": "new_tensor", "old_array": "new_array", "old_scalar": "new_scalar"}
processor = RenameObservationsProcessorStep(rename_map=rename_map)
tensor_value = torch.randn(3, 3)
array_value = np.random.rand(2, 2)
observation = {
"old_tensor": tensor_value,
"old_array": array_value,
"old_scalar": 42,
"old_string": "hello",
"old_dict": {"nested": "value"},
"old_list": [1, 2, 3],
}
transition = create_transition(observation=observation)
result = processor(transition)
processed_obs = result[TransitionKey.OBSERVATION]
# Check that values and types are preserved
assert torch.equal(processed_obs["new_tensor"], tensor_value)
assert np.array_equal(processed_obs["new_array"], array_value)
assert processed_obs["new_scalar"] == 42
assert processed_obs["old_string"] == "hello"
assert processed_obs["old_dict"] == {"nested": "value"}
assert processed_obs["old_list"] == [1, 2, 3]
def test_features_basic_renaming(policy_feature_factory):
processor = RenameObservationsProcessorStep(rename_map={"a": "x", "b": "y"})
features = {
PipelineFeatureType.OBSERVATION: {
"a": policy_feature_factory(FeatureType.VISUAL, (2,)),
"b": policy_feature_factory(FeatureType.VISUAL, (3,)),
"c": policy_feature_factory(FeatureType.VISUAL, (1,)),
},
}
out = processor.transform_features(features.copy())
# Values preserved and typed
assert out[PipelineFeatureType.OBSERVATION]["x"] == features[PipelineFeatureType.OBSERVATION]["a"]
assert out[PipelineFeatureType.OBSERVATION]["y"] == features[PipelineFeatureType.OBSERVATION]["b"]
assert out[PipelineFeatureType.OBSERVATION]["c"] == features[PipelineFeatureType.OBSERVATION]["c"]
assert_contract_is_typed(out)
# Input not mutated
assert set(features[PipelineFeatureType.OBSERVATION]) == {"a", "b", "c"}
def test_features_overlapping_keys(policy_feature_factory):
# Overlapping renames: both 'a' and 'b' exist. 'a'->'b', 'b'->'c'
processor = RenameObservationsProcessorStep(rename_map={"a": "b", "b": "c"})
features = {
PipelineFeatureType.OBSERVATION: {
"a": policy_feature_factory(FeatureType.VISUAL, (1,)),
"b": policy_feature_factory(FeatureType.VISUAL, (2,)),
},
}
out = processor.transform_features(features)
assert set(out[PipelineFeatureType.OBSERVATION]) == {"b", "c"}
assert (
out[PipelineFeatureType.OBSERVATION]["b"] == features[PipelineFeatureType.OBSERVATION]["a"]
) # 'a' renamed to'b'
assert (
out[PipelineFeatureType.OBSERVATION]["c"] == features[PipelineFeatureType.OBSERVATION]["b"]
) # 'b' renamed to 'c'
assert_contract_is_typed(out)
def test_features_chained_processors(policy_feature_factory):
# Chain two rename processors at the contract level
processor1 = RenameObservationsProcessorStep(rename_map={"pos": "agent_position", "img": "camera_image"})
processor2 = RenameObservationsProcessorStep(
rename_map={"agent_position": OBS_STATE, "camera_image": OBS_IMAGE}
)
pipeline = DataProcessorPipeline([processor1, processor2])
spec = {
PipelineFeatureType.OBSERVATION: {
"pos": policy_feature_factory(FeatureType.VISUAL, (7,)),
"img": policy_feature_factory(FeatureType.VISUAL, (3, 64, 64)),
"extra": policy_feature_factory(FeatureType.VISUAL, (1,)),
},
}
out = pipeline.transform_features(initial_features=spec)
assert set(out[PipelineFeatureType.OBSERVATION]) == {OBS_STATE, OBS_IMAGE, "extra"}
assert out[PipelineFeatureType.OBSERVATION][OBS_STATE] == spec[PipelineFeatureType.OBSERVATION]["pos"]
assert out[PipelineFeatureType.OBSERVATION][OBS_IMAGE] == spec[PipelineFeatureType.OBSERVATION]["img"]
assert out[PipelineFeatureType.OBSERVATION]["extra"] == spec[PipelineFeatureType.OBSERVATION]["extra"]
assert_contract_is_typed(out)
def test_rename_stats_basic():
orig = {
OBS_STATE: {"mean": np.array([0.0]), "std": np.array([1.0])},
ACTION: {"mean": np.array([0.0])},
}
mapping = {OBS_STATE: "observation.robot_state"}
renamed = rename_stats(orig, mapping)
assert "observation.robot_state" in renamed and OBS_STATE not in renamed
# Ensure deep copy: mutate original and verify renamed unaffected
orig[OBS_STATE]["mean"][0] = 42.0
assert renamed["observation.robot_state"]["mean"][0] != 42.0
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