hackathon-dataset_caramelos / tests /processor /test_policy_robot_bridge.py
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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
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import tempfile
from pathlib import Path
import pytest
import torch
from lerobot.configs.types import FeatureType, PipelineFeatureType
from lerobot.processor import (
DataProcessorPipeline,
PolicyActionToRobotActionProcessorStep,
ProcessorStepRegistry,
RobotActionToPolicyActionProcessorStep,
)
from lerobot.processor.converters import identity_transition
from lerobot.utils.constants import ACTION
from tests.conftest import assert_contract_is_typed
def test_robot_to_policy_basic_action_conversion():
"""Test basic robot action to policy action conversion."""
motor_names = ["joint1", "joint2", "joint3"]
processor = RobotActionToPolicyActionProcessorStep(motor_names=motor_names)
robot_action = {
"joint1.pos": 1.0,
"joint2.pos": 2.0,
"joint3.pos": 3.0,
}
policy_action = processor.action(robot_action)
assert isinstance(policy_action, torch.Tensor)
assert policy_action.shape == (3,)
torch.testing.assert_close(policy_action, torch.tensor([1.0, 2.0, 3.0]))
def test_robot_to_policy_action_conversion_preserves_order():
"""Test that motor names order is preserved in conversion."""
motor_names = ["gripper", "arm", "wrist"]
processor = RobotActionToPolicyActionProcessorStep(motor_names=motor_names)
robot_action = {
"arm.pos": 10.0,
"gripper.pos": 5.0,
"wrist.pos": 15.0,
}
policy_action = processor.action(robot_action)
expected = torch.tensor([5.0, 10.0, 15.0])
torch.testing.assert_close(policy_action, expected)
def test_robot_to_policy_action_conversion_with_floats_and_tensors():
"""Test conversion with mixed float and tensor values."""
motor_names = ["joint1", "joint2"]
processor = RobotActionToPolicyActionProcessorStep(motor_names=motor_names)
robot_action = {
"joint1.pos": torch.tensor(1.5),
"joint2.pos": 2.5, # Regular float
}
policy_action = processor.action(robot_action)
assert isinstance(policy_action, torch.Tensor)
torch.testing.assert_close(policy_action, torch.tensor([1.5, 2.5]))
def test_robot_to_policy_action_length_mismatch_error():
"""Test error when robot action length doesn't match motor names."""
motor_names = ["joint1", "joint2", "joint3"]
processor = RobotActionToPolicyActionProcessorStep(motor_names=motor_names)
# Too few actions
robot_action = {"joint1.pos": 1.0, "joint2.pos": 2.0}
with pytest.raises(ValueError, match="Action must have 3 elements, got 2"):
processor.action(robot_action)
robot_action = {
"joint1.pos": 1.0,
"joint2.pos": 2.0,
"joint3.pos": 3.0,
"extra.pos": 4.0,
}
with pytest.raises(ValueError, match="Action must have 3 elements, got 4"):
processor.action(robot_action)
def test_robot_to_policy_missing_motor_key_error():
"""Test error when robot action is missing expected motor keys."""
motor_names = ["joint1", "joint2"]
processor = RobotActionToPolicyActionProcessorStep(motor_names=motor_names)
robot_action = {
"joint1.pos": 1.0,
"wrong_key.pos": 2.0,
}
with pytest.raises(KeyError):
processor.action(robot_action)
def test_robot_to_policy_transform_features():
"""Test feature transformation for robot to policy action processor."""
motor_names = ["joint1", "joint2", "joint3"]
processor = RobotActionToPolicyActionProcessorStep(motor_names=motor_names)
features = {
PipelineFeatureType.ACTION: {
"joint1.pos": {"type": FeatureType.ACTION, "shape": (1,)},
"joint2.pos": {"type": FeatureType.ACTION, "shape": (1,)},
"joint3.pos": {"type": FeatureType.ACTION, "shape": (1,)},
"other_data": {"type": FeatureType.ENV, "shape": (1,)},
}
}
transformed = processor.transform_features(features)
assert ACTION in transformed[PipelineFeatureType.ACTION]
action_feature = transformed[PipelineFeatureType.ACTION][ACTION]
assert action_feature.type == FeatureType.ACTION
assert action_feature.shape == (3,)
assert "joint1.pos" in transformed[PipelineFeatureType.ACTION]
assert "joint2.pos" in transformed[PipelineFeatureType.ACTION]
assert "joint3.pos" in transformed[PipelineFeatureType.ACTION]
assert "other_data" in transformed[PipelineFeatureType.ACTION]
def test_robot_to_policy_get_config():
"""Test configuration serialization."""
motor_names = ["motor1", "motor2"]
processor = RobotActionToPolicyActionProcessorStep(motor_names=motor_names)
config = processor.get_config()
assert config == {"motor_names": motor_names}
def test_robot_to_policy_state_dict():
"""Test state dict operations."""
processor = RobotActionToPolicyActionProcessorStep(motor_names=["joint1"])
state = processor.state_dict()
assert state == {}
processor.load_state_dict({})
def test_robot_to_policy_single_motor():
"""Test with single motor."""
processor = RobotActionToPolicyActionProcessorStep(motor_names=["single_joint"])
robot_action = {"single_joint.pos": 42.0}
policy_action = processor.action(robot_action)
assert policy_action.shape == (1,)
torch.testing.assert_close(policy_action, torch.tensor([42.0]))
def test_policy_to_robot_basic_action_conversion():
"""Test basic policy action to robot action conversion."""
motor_names = ["joint1", "joint2", "joint3"]
processor = PolicyActionToRobotActionProcessorStep(motor_names=motor_names)
policy_action = torch.tensor([1.0, 2.0, 3.0])
robot_action = processor.action(policy_action)
assert isinstance(robot_action, dict)
assert len(robot_action) == 3
expected = {
"joint1.pos": 1.0,
"joint2.pos": 2.0,
"joint3.pos": 3.0,
}
for key, expected_value in expected.items():
assert key in robot_action
actual_value = robot_action[key]
if isinstance(actual_value, torch.Tensor):
actual_value = actual_value.item()
assert actual_value == pytest.approx(expected_value)
def test_policy_to_robot_action_conversion_preserves_order():
"""Test that motor names order corresponds to tensor indices."""
motor_names = ["gripper", "arm", "wrist"]
processor = PolicyActionToRobotActionProcessorStep(motor_names=motor_names)
policy_action = torch.tensor([5.0, 10.0, 15.0])
robot_action = processor.action(policy_action)
assert robot_action["gripper.pos"] == pytest.approx(5.0)
assert robot_action["arm.pos"] == pytest.approx(10.0)
assert robot_action["wrist.pos"] == pytest.approx(15.0)
def test_policy_to_robot_action_conversion_with_numpy_input():
"""Test conversion with numpy array input."""
import numpy as np
motor_names = ["joint1", "joint2"]
processor = PolicyActionToRobotActionProcessorStep(motor_names=motor_names)
policy_action = np.array([1.5, 2.5])
robot_action = processor.action(policy_action)
assert robot_action["joint1.pos"] == pytest.approx(1.5)
assert robot_action["joint2.pos"] == pytest.approx(2.5)
def test_policy_to_robot_action_length_mismatch_error():
"""Test error when policy action length doesn't match motor names."""
motor_names = ["joint1", "joint2", "joint3"]
processor = PolicyActionToRobotActionProcessorStep(motor_names=motor_names)
policy_action = torch.tensor([1.0, 2.0])
with pytest.raises(ValueError, match="Action must have 3 elements, got 2"):
processor.action(policy_action)
policy_action = torch.tensor([1.0, 2.0, 3.0, 4.0])
with pytest.raises(ValueError, match="Action must have 3 elements, got 4"):
processor.action(policy_action)
def test_policy_to_robot_transform_features():
"""Test feature transformation for policy to robot action processor."""
motor_names = ["joint1", "joint2"]
processor = PolicyActionToRobotActionProcessorStep(motor_names=motor_names)
features = {
PipelineFeatureType.ACTION: {
ACTION: {"type": FeatureType.ACTION, "shape": (2,)},
"other_data": {"type": FeatureType.ENV, "shape": (1,)},
}
}
transformed = processor.transform_features(features)
assert "joint1.pos" in transformed[PipelineFeatureType.ACTION]
assert "joint2.pos" in transformed[PipelineFeatureType.ACTION]
for motor in motor_names:
motor_feature = transformed[PipelineFeatureType.ACTION][f"{motor}.pos"]
assert motor_feature.type == FeatureType.ACTION
assert motor_feature.shape == (1,)
assert ACTION in transformed[PipelineFeatureType.ACTION]
assert "other_data" in transformed[PipelineFeatureType.ACTION]
def test_policy_to_robot_get_config():
"""Test configuration serialization."""
motor_names = ["motor1", "motor2"]
processor = PolicyActionToRobotActionProcessorStep(motor_names=motor_names)
config = processor.get_config()
assert config == {"motor_names": motor_names}
def test_policy_to_robot_state_dict():
"""Test state dict operations."""
processor = PolicyActionToRobotActionProcessorStep(motor_names=["joint1"])
state = processor.state_dict()
assert state == {}
processor.load_state_dict({})
def test_policy_to_robot_single_motor():
"""Test with single motor."""
processor = PolicyActionToRobotActionProcessorStep(motor_names=["single_joint"])
policy_action = torch.tensor([42.0])
robot_action = processor.action(policy_action)
assert len(robot_action) == 1
assert robot_action["single_joint.pos"] == pytest.approx(42.0)
def test_robot_to_policy_registry():
"""Test RobotActionToPolicyActionProcessorStep registry."""
assert "robot_action_to_policy_action_processor" in ProcessorStepRegistry.list()
retrieved_class = ProcessorStepRegistry.get("robot_action_to_policy_action_processor")
assert retrieved_class is RobotActionToPolicyActionProcessorStep
instance = retrieved_class(motor_names=["test"])
assert isinstance(instance, RobotActionToPolicyActionProcessorStep)
assert instance.motor_names == ["test"]
def test_policy_to_robot_registry():
"""Test PolicyActionToRobotActionProcessorStep registry."""
assert "policy_action_to_robot_action_processor" in ProcessorStepRegistry.list()
retrieved_class = ProcessorStepRegistry.get("policy_action_to_robot_action_processor")
assert retrieved_class is PolicyActionToRobotActionProcessorStep
instance = retrieved_class(motor_names=["test"])
assert isinstance(instance, PolicyActionToRobotActionProcessorStep)
assert instance.motor_names == ["test"]
def test_save_and_load_robot_to_policy():
"""Test saving and loading RobotActionToPolicyActionProcessorStep."""
motor_names = ["joint1", "joint2", "joint3"]
processor = RobotActionToPolicyActionProcessorStep(motor_names=motor_names)
pipeline = DataProcessorPipeline([processor], name="TestRobotToPolicy")
with tempfile.TemporaryDirectory() as tmp_dir:
# Save pipeline
pipeline.save_pretrained(tmp_dir)
# Check config file exists
config_path = Path(tmp_dir) / "testrobottopolicy.json"
assert config_path.exists()
# Load pipeline
loaded_pipeline = DataProcessorPipeline.from_pretrained(
tmp_dir,
"testrobottopolicy.json",
to_transition=identity_transition,
to_output=identity_transition,
)
assert loaded_pipeline.name == "TestRobotToPolicy"
assert len(loaded_pipeline) == 1
# Check loaded processor
loaded_processor = loaded_pipeline.steps[0]
assert isinstance(loaded_processor, RobotActionToPolicyActionProcessorStep)
assert loaded_processor.motor_names == motor_names
# Test functionality after loading
robot_action = {"joint1.pos": 1.0, "joint2.pos": 2.0, "joint3.pos": 3.0}
policy_action = loaded_processor.action(robot_action)
torch.testing.assert_close(policy_action, torch.tensor([1.0, 2.0, 3.0]))
def test_save_and_load_policy_to_robot():
"""Test saving and loading PolicyActionToRobotActionProcessorStep."""
motor_names = ["motor_a", "motor_b"]
processor = PolicyActionToRobotActionProcessorStep(motor_names=motor_names)
pipeline = DataProcessorPipeline([processor], name="TestPolicyToRobot")
with tempfile.TemporaryDirectory() as tmp_dir:
# Save pipeline
pipeline.save_pretrained(tmp_dir)
# Load pipeline
loaded_pipeline = DataProcessorPipeline.from_pretrained(
tmp_dir,
"testpolicytorobot.json",
to_transition=identity_transition,
to_output=identity_transition,
)
loaded_processor = loaded_pipeline.steps[0]
assert isinstance(loaded_processor, PolicyActionToRobotActionProcessorStep)
assert loaded_processor.motor_names == motor_names
policy_action = torch.tensor([10.0, 20.0])
robot_action = loaded_processor.action(policy_action)
assert robot_action["motor_a.pos"] == pytest.approx(10.0)
assert robot_action["motor_b.pos"] == pytest.approx(20.0)
# Integration and chaining tests
def test_round_trip_conversion():
"""Test that robot->policy->robot conversion preserves values."""
motor_names = ["joint1", "joint2", "joint3"]
robot_to_policy = RobotActionToPolicyActionProcessorStep(motor_names=motor_names)
policy_to_robot = PolicyActionToRobotActionProcessorStep(motor_names=motor_names)
original_robot_action = {
"joint1.pos": 1.5,
"joint2.pos": -2.3,
"joint3.pos": 0.7,
}
policy_action = robot_to_policy.action(original_robot_action)
final_robot_action = policy_to_robot.action(policy_action)
for key in original_robot_action:
original_val = original_robot_action[key]
final_val = final_robot_action[key]
if isinstance(final_val, torch.Tensor):
final_val = final_val.item()
assert final_val == pytest.approx(original_val, abs=1e-6)
def test_chained_processors_in_pipeline():
"""Test both processors chained in a pipeline."""
motor_names = ["joint1", "joint2"]
robot_to_policy = RobotActionToPolicyActionProcessorStep(motor_names=motor_names)
policy_to_robot = PolicyActionToRobotActionProcessorStep(motor_names=motor_names)
pipeline = DataProcessorPipeline(
[robot_to_policy, policy_to_robot],
to_transition=identity_transition,
to_output=identity_transition,
)
assert len(pipeline.steps) == 2
assert isinstance(pipeline.steps[0], RobotActionToPolicyActionProcessorStep)
assert isinstance(pipeline.steps[1], PolicyActionToRobotActionProcessorStep)
def test_robot_to_policy_features_contract(policy_feature_factory):
"""Test feature transformation maintains proper typing contract."""
processor = RobotActionToPolicyActionProcessorStep(motor_names=["j1", "j2"])
features = {
PipelineFeatureType.ACTION: {
"j1.pos": policy_feature_factory(FeatureType.ACTION, (1,)),
"j2.pos": policy_feature_factory(FeatureType.ACTION, (1,)),
"other": policy_feature_factory(FeatureType.ENV, (3,)),
}
}
out = processor.transform_features(features.copy())
assert_contract_is_typed(out)
assert ACTION in out[PipelineFeatureType.ACTION]
action_feature = out[PipelineFeatureType.ACTION][ACTION]
assert action_feature.type == FeatureType.ACTION
assert action_feature.shape == (2,)
def test_policy_to_robot_features_contract(policy_feature_factory):
"""Test feature transformation maintains proper typing contract."""
processor = PolicyActionToRobotActionProcessorStep(motor_names=["m1", "m2", "m3"])
features = {
PipelineFeatureType.ACTION: {
ACTION: policy_feature_factory(FeatureType.ACTION, (3,)),
"other": policy_feature_factory(FeatureType.ENV, (1,)),
}
}
out = processor.transform_features(features.copy())
assert_contract_is_typed(out)
for motor in ["m1", "m2", "m3"]:
key = f"{motor}.pos"
assert key in out[PipelineFeatureType.ACTION]
motor_feature = out[PipelineFeatureType.ACTION][key]
assert motor_feature.type == FeatureType.ACTION
assert motor_feature.shape == (1,)
def test_empty_motor_names_list():
"""Test behavior with empty motor names list."""
processor = RobotActionToPolicyActionProcessorStep(motor_names=[])
robot_action = {}
policy_action = processor.action(robot_action)
assert isinstance(policy_action, torch.Tensor)
assert policy_action.shape == (0,)
def test_empty_motor_names_list_policy_to_robot():
"""Test PolicyActionToRobotActionProcessorStep with empty motor names."""
processor = PolicyActionToRobotActionProcessorStep(motor_names=[])
policy_action = torch.tensor([])
robot_action = processor.action(policy_action)
assert isinstance(robot_action, dict)
assert len(robot_action) == 0
def test_very_long_motor_names():
"""Test with many motor names."""
motor_names = [f"joint_{i}" for i in range(100)]
processor = RobotActionToPolicyActionProcessorStep(motor_names=motor_names)
robot_action = {f"joint_{i}.pos": float(i) for i in range(100)}
policy_action = processor.action(robot_action)
assert policy_action.shape == (100,)
expected = torch.tensor([float(i) for i in range(100)])
torch.testing.assert_close(policy_action, expected)
def test_special_characters_in_motor_names():
"""Test with special characters in motor names."""
motor_names = ["motor-1", "motor_2", "motor.3"]
processor = RobotActionToPolicyActionProcessorStep(motor_names=motor_names)
robot_action = {
"motor-1.pos": 1.0,
"motor_2.pos": 2.0,
"motor.3.pos": 3.0,
}
policy_action = processor.action(robot_action)
torch.testing.assert_close(policy_action, torch.tensor([1.0, 2.0, 3.0]))