hackathon-dataset_caramelos / tests /processor /test_diffusion_processor.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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"""Tests for Diffusion policy processor."""
import tempfile
import pytest
import torch
from lerobot.configs.types import FeatureType, NormalizationMode, PolicyFeature
from lerobot.policies.diffusion.configuration_diffusion import DiffusionConfig
from lerobot.policies.diffusion.processor_diffusion import make_diffusion_pre_post_processors
from lerobot.processor import (
AddBatchDimensionProcessorStep,
DataProcessorPipeline,
DeviceProcessorStep,
NormalizerProcessorStep,
RenameObservationsProcessorStep,
TransitionKey,
UnnormalizerProcessorStep,
)
from lerobot.processor.converters import create_transition, transition_to_batch
from lerobot.utils.constants import ACTION, OBS_IMAGE, OBS_STATE
def create_default_config():
"""Create a default Diffusion configuration for testing."""
config = DiffusionConfig()
config.input_features = {
OBS_STATE: PolicyFeature(type=FeatureType.STATE, shape=(7,)),
OBS_IMAGE: PolicyFeature(type=FeatureType.VISUAL, shape=(3, 224, 224)),
}
config.output_features = {
ACTION: PolicyFeature(type=FeatureType.ACTION, shape=(6,)),
}
config.normalization_mapping = {
FeatureType.STATE: NormalizationMode.MEAN_STD,
FeatureType.VISUAL: NormalizationMode.IDENTITY,
FeatureType.ACTION: NormalizationMode.MIN_MAX,
}
config.device = "cpu"
return config
def create_default_stats():
"""Create default dataset statistics for testing."""
return {
OBS_STATE: {"mean": torch.zeros(7), "std": torch.ones(7)},
OBS_IMAGE: {}, # No normalization for images
ACTION: {"min": torch.full((6,), -1.0), "max": torch.ones(6)},
}
def test_make_diffusion_processor_basic():
"""Test basic creation of Diffusion processor."""
config = create_default_config()
stats = create_default_stats()
preprocessor, postprocessor = make_diffusion_pre_post_processors(config, stats)
# Check processor names
assert preprocessor.name == "policy_preprocessor"
assert postprocessor.name == "policy_postprocessor"
# Check steps in preprocessor
assert len(preprocessor.steps) == 4
assert isinstance(preprocessor.steps[0], RenameObservationsProcessorStep)
assert isinstance(preprocessor.steps[1], AddBatchDimensionProcessorStep)
assert isinstance(preprocessor.steps[2], DeviceProcessorStep)
assert isinstance(preprocessor.steps[3], NormalizerProcessorStep)
# Check steps in postprocessor
assert len(postprocessor.steps) == 2
assert isinstance(postprocessor.steps[0], UnnormalizerProcessorStep)
assert isinstance(postprocessor.steps[1], DeviceProcessorStep)
def test_diffusion_processor_with_images():
"""Test Diffusion processor with image observations."""
config = create_default_config()
stats = create_default_stats()
preprocessor, postprocessor = make_diffusion_pre_post_processors(
config,
stats,
)
# Create test data with images
observation = {
OBS_STATE: torch.randn(7),
OBS_IMAGE: torch.randn(3, 224, 224),
}
action = torch.randn(6)
transition = create_transition(observation, action)
batch = transition_to_batch(transition)
# Process through preprocessor
processed = preprocessor(batch)
# Check that data is batched
assert processed[OBS_STATE].shape == (1, 7)
assert processed[OBS_IMAGE].shape == (1, 3, 224, 224)
assert processed[TransitionKey.ACTION.value].shape == (1, 6)
@pytest.mark.skipif(not torch.cuda.is_available(), reason="CUDA not available")
def test_diffusion_processor_cuda():
"""Test Diffusion processor with CUDA device."""
config = create_default_config()
config.device = "cuda"
stats = create_default_stats()
preprocessor, postprocessor = make_diffusion_pre_post_processors(
config,
stats,
)
# Create CPU data
observation = {
OBS_STATE: torch.randn(7),
OBS_IMAGE: torch.randn(3, 224, 224),
}
action = torch.randn(6)
transition = create_transition(observation, action)
batch = transition_to_batch(transition)
# Process through preprocessor
processed = preprocessor(batch)
# Check that data is on CUDA
assert processed[OBS_STATE].device.type == "cuda"
assert processed[OBS_IMAGE].device.type == "cuda"
assert processed[TransitionKey.ACTION.value].device.type == "cuda"
# Process through postprocessor
postprocessed = postprocessor(processed[TransitionKey.ACTION.value])
# Check that action is back on CPU
assert postprocessed.device.type == "cpu"
@pytest.mark.skipif(not torch.cuda.is_available(), reason="CUDA not available")
def test_diffusion_processor_accelerate_scenario():
"""Test Diffusion processor in simulated Accelerate scenario."""
config = create_default_config()
config.device = "cuda:0"
stats = create_default_stats()
preprocessor, postprocessor = make_diffusion_pre_post_processors(
config,
stats,
)
# Simulate Accelerate: data already on GPU
device = torch.device("cuda:0")
observation = {
OBS_STATE: torch.randn(1, 7).to(device),
OBS_IMAGE: torch.randn(1, 3, 224, 224).to(device),
}
action = torch.randn(1, 6).to(device)
transition = create_transition(observation, action)
batch = transition_to_batch(transition)
# Process through preprocessor
processed = preprocessor(batch)
# Check that data stays on same GPU
assert processed[OBS_STATE].device == device
assert processed[OBS_IMAGE].device == device
assert processed[TransitionKey.ACTION.value].device == device
@pytest.mark.skipif(torch.cuda.device_count() < 2, reason="Requires at least 2 GPUs")
def test_diffusion_processor_multi_gpu():
"""Test Diffusion processor with multi-GPU setup."""
config = create_default_config()
config.device = "cuda:0"
stats = create_default_stats()
preprocessor, postprocessor = make_diffusion_pre_post_processors(config, stats)
# Simulate data on different GPU
device = torch.device("cuda:1")
observation = {
OBS_STATE: torch.randn(1, 7).to(device),
OBS_IMAGE: torch.randn(1, 3, 224, 224).to(device),
}
action = torch.randn(1, 6).to(device)
transition = create_transition(observation, action)
batch = transition_to_batch(transition)
# Process through preprocessor
processed = preprocessor(batch)
# Check that data stays on cuda:1
assert processed[OBS_STATE].device == device
assert processed[OBS_IMAGE].device == device
assert processed[TransitionKey.ACTION.value].device == device
def test_diffusion_processor_without_stats():
"""Test Diffusion processor creation without dataset statistics."""
config = create_default_config()
preprocessor, postprocessor = make_diffusion_pre_post_processors(
config,
dataset_stats=None,
)
# Should still create processors
assert preprocessor is not None
assert postprocessor is not None
# Process should still work
observation = {
OBS_STATE: torch.randn(7),
OBS_IMAGE: torch.randn(3, 224, 224),
}
action = torch.randn(6)
transition = create_transition(observation, action)
batch = transition_to_batch(transition)
processed = preprocessor(batch)
assert processed is not None
def test_diffusion_processor_save_and_load():
"""Test saving and loading Diffusion processor."""
config = create_default_config()
stats = create_default_stats()
preprocessor, postprocessor = make_diffusion_pre_post_processors(config, stats)
with tempfile.TemporaryDirectory() as tmpdir:
# Save preprocessor
preprocessor.save_pretrained(tmpdir)
# Load preprocessor
loaded_preprocessor = DataProcessorPipeline.from_pretrained(
tmpdir, config_filename="policy_preprocessor.json"
)
# Test that loaded processor works
observation = {
OBS_STATE: torch.randn(7),
OBS_IMAGE: torch.randn(3, 224, 224),
}
action = torch.randn(6)
transition = create_transition(observation, action)
batch = transition_to_batch(transition)
processed = loaded_preprocessor(batch)
assert processed[OBS_STATE].shape == (1, 7)
assert processed[OBS_IMAGE].shape == (1, 3, 224, 224)
assert processed[TransitionKey.ACTION.value].shape == (1, 6)
def test_diffusion_processor_identity_normalization():
"""Test that images with IDENTITY normalization are not normalized."""
config = create_default_config()
stats = create_default_stats()
preprocessor, postprocessor = make_diffusion_pre_post_processors(
config,
stats,
)
# Create test data
image_value = torch.rand(3, 224, 224) * 255 # Large values
observation = {
OBS_STATE: torch.randn(7),
OBS_IMAGE: image_value.clone(),
}
action = torch.randn(6)
transition = create_transition(observation, action)
batch = transition_to_batch(transition)
# Process through preprocessor
processed = preprocessor(batch)
# Image should not be normalized (IDENTITY mode)
# Just batched
assert torch.allclose(processed[OBS_IMAGE][0], image_value, rtol=1e-5)
def test_diffusion_processor_batch_consistency():
"""Test Diffusion processor with different batch sizes."""
config = create_default_config()
stats = create_default_stats()
preprocessor, postprocessor = make_diffusion_pre_post_processors(
config,
stats,
)
# Test with different batch sizes
for batch_size in [1, 8, 32]:
observation = {
OBS_STATE: torch.randn(batch_size, 7) if batch_size > 1 else torch.randn(7),
OBS_IMAGE: torch.randn(batch_size, 3, 224, 224) if batch_size > 1 else torch.randn(3, 224, 224),
}
action = torch.randn(batch_size, 6) if batch_size > 1 else torch.randn(6)
transition = create_transition(observation, action)
batch = transition_to_batch(transition)
processed = preprocessor(batch)
# Check correct batch size
expected_batch = batch_size if batch_size > 1 else 1
assert processed[OBS_STATE].shape[0] == expected_batch
assert processed[OBS_IMAGE].shape[0] == expected_batch
assert processed[TransitionKey.ACTION.value].shape[0] == expected_batch
@pytest.mark.skipif(not torch.cuda.is_available(), reason="CUDA not available")
def test_diffusion_processor_bfloat16_device_float32_normalizer():
"""Test: DeviceProcessor(bfloat16) + NormalizerProcessor(float32) → output bfloat16 via automatic adaptation"""
config = create_default_config()
config.device = "cuda"
stats = create_default_stats()
preprocessor, _ = make_diffusion_pre_post_processors(config, stats)
# Modify the pipeline to use bfloat16 device processor with float32 normalizer
modified_steps = []
for step in preprocessor.steps:
if isinstance(step, DeviceProcessorStep):
# Device processor converts to bfloat16
modified_steps.append(DeviceProcessorStep(device=config.device, float_dtype="bfloat16"))
elif isinstance(step, NormalizerProcessorStep):
# Normalizer stays configured as float32 (will auto-adapt to bfloat16)
norm_step = step # Now type checker knows this is NormalizerProcessorStep
modified_steps.append(
NormalizerProcessorStep(
features=norm_step.features,
norm_map=norm_step.norm_map,
stats=norm_step.stats,
device=config.device,
dtype=torch.float32, # Deliberately configured as float32
)
)
else:
modified_steps.append(step)
preprocessor.steps = modified_steps
# Verify initial normalizer configuration
normalizer_step = preprocessor.steps[3] # NormalizerProcessorStep
assert normalizer_step.dtype == torch.float32
# Create test data with both state and visual observations
observation = {
OBS_STATE: torch.randn(7, dtype=torch.float32),
OBS_IMAGE: torch.randn(3, 224, 224, dtype=torch.float32),
}
action = torch.randn(6, dtype=torch.float32)
transition = create_transition(observation, action)
batch = transition_to_batch(transition)
# Process through full pipeline
processed = preprocessor(batch)
# Verify: DeviceProcessor → bfloat16, NormalizerProcessor adapts → final output is bfloat16
assert processed[OBS_STATE].dtype == torch.bfloat16
assert processed[OBS_IMAGE].dtype == torch.bfloat16 # IDENTITY normalization still gets dtype conversion
assert processed[TransitionKey.ACTION.value].dtype == torch.bfloat16
# Verify normalizer automatically adapted its internal state
assert normalizer_step.dtype == torch.bfloat16
# Check state stats (has normalization)
for stat_tensor in normalizer_step._tensor_stats[OBS_STATE].values():
assert stat_tensor.dtype == torch.bfloat16
# OBS_IMAGE uses IDENTITY normalization, so no stats to check