#!/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. """Tests for Reward Classifier processor.""" import tempfile import pytest import torch from lerobot.configs.types import FeatureType, NormalizationMode, PolicyFeature from lerobot.policies.sac.reward_model.configuration_classifier import RewardClassifierConfig from lerobot.policies.sac.reward_model.processor_classifier import make_classifier_processor from lerobot.processor import ( DataProcessorPipeline, DeviceProcessorStep, IdentityProcessorStep, NormalizerProcessorStep, TransitionKey, ) from lerobot.processor.converters import create_transition, transition_to_batch from lerobot.utils.constants import OBS_IMAGE, OBS_STATE def create_default_config(): """Create a default Reward Classifier configuration for testing.""" config = RewardClassifierConfig() config.input_features = { OBS_STATE: PolicyFeature(type=FeatureType.STATE, shape=(10,)), OBS_IMAGE: PolicyFeature(type=FeatureType.VISUAL, shape=(3, 224, 224)), } config.output_features = { "reward": PolicyFeature(type=FeatureType.ACTION, shape=(1,)), # Classifier output } config.normalization_mapping = { FeatureType.STATE: NormalizationMode.MEAN_STD, FeatureType.VISUAL: NormalizationMode.IDENTITY, FeatureType.ACTION: NormalizationMode.IDENTITY, # No normalization for classifier output } config.device = "cpu" return config def create_default_stats(): """Create default dataset statistics for testing.""" return { OBS_STATE: {"mean": torch.zeros(10), "std": torch.ones(10)}, OBS_IMAGE: {}, # No normalization for images "reward": {}, # No normalization for classifier output } def test_make_classifier_processor_basic(): """Test basic creation of Classifier processor.""" config = create_default_config() stats = create_default_stats() preprocessor, postprocessor = make_classifier_processor(config, stats) # Check processor names assert preprocessor.name == "classifier_preprocessor" assert postprocessor.name == "classifier_postprocessor" # Check steps in preprocessor assert len(preprocessor.steps) == 3 assert isinstance(preprocessor.steps[0], NormalizerProcessorStep) # For input features assert isinstance(preprocessor.steps[1], NormalizerProcessorStep) # For output features assert isinstance(preprocessor.steps[2], DeviceProcessorStep) # Check steps in postprocessor assert len(postprocessor.steps) == 2 assert isinstance(postprocessor.steps[0], DeviceProcessorStep) assert isinstance(postprocessor.steps[1], IdentityProcessorStep) def test_classifier_processor_normalization(): """Test that Classifier processor correctly normalizes data.""" config = create_default_config() stats = create_default_stats() preprocessor, postprocessor = make_classifier_processor( config, stats, ) # Create test data observation = { OBS_STATE: torch.randn(10), OBS_IMAGE: torch.randn(3, 224, 224), } action = torch.randn(1) # Dummy action/reward transition = create_transition(observation, action) batch = transition_to_batch(transition) # Process through preprocessor processed = preprocessor(batch) # Check that data is processed assert processed[OBS_STATE].shape == (10,) assert processed[OBS_IMAGE].shape == (3, 224, 224) assert processed[TransitionKey.ACTION.value].shape == (1,) @pytest.mark.skipif(not torch.cuda.is_available(), reason="CUDA not available") def test_classifier_processor_cuda(): """Test Classifier processor with CUDA device.""" config = create_default_config() config.device = "cuda" stats = create_default_stats() preprocessor, postprocessor = make_classifier_processor( config, stats, ) # Create CPU data observation = { OBS_STATE: torch.randn(10), OBS_IMAGE: torch.randn(3, 224, 224), } action = torch.randn(1) 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 output is back on CPU assert postprocessed.device.type == "cpu" @pytest.mark.skipif(not torch.cuda.is_available(), reason="CUDA not available") def test_classifier_processor_accelerate_scenario(): """Test Classifier processor in simulated Accelerate scenario.""" config = create_default_config() config.device = "cuda:0" stats = create_default_stats() preprocessor, postprocessor = make_classifier_processor( config, stats, ) # Simulate Accelerate: data already on GPU device = torch.device("cuda:0") observation = { OBS_STATE: torch.randn(10).to(device), OBS_IMAGE: torch.randn(3, 224, 224).to(device), } action = torch.randn(1).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_classifier_processor_multi_gpu(): """Test Classifier processor with multi-GPU setup.""" config = create_default_config() config.device = "cuda:0" stats = create_default_stats() preprocessor, postprocessor = make_classifier_processor(config, stats) # Simulate data on different GPU device = torch.device("cuda:1") observation = { OBS_STATE: torch.randn(10).to(device), OBS_IMAGE: torch.randn(3, 224, 224).to(device), } action = torch.randn(1).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_classifier_processor_without_stats(): """Test Classifier processor creation without dataset statistics.""" config = create_default_config() preprocessor, postprocessor = make_classifier_processor(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(10), OBS_IMAGE: torch.randn(3, 224, 224), } action = torch.randn(1) transition = create_transition(observation, action) batch = transition_to_batch(transition) processed = preprocessor(batch) assert processed is not None def test_classifier_processor_save_and_load(): """Test saving and loading Classifier processor.""" config = create_default_config() stats = create_default_stats() preprocessor, postprocessor = make_classifier_processor(config, stats) with tempfile.TemporaryDirectory() as tmpdir: # Save preprocessor preprocessor.save_pretrained(tmpdir) # Load preprocessor loaded_preprocessor = DataProcessorPipeline.from_pretrained( tmpdir, config_filename="classifier_preprocessor.json" ) # Test that loaded processor works observation = { OBS_STATE: torch.randn(10), OBS_IMAGE: torch.randn(3, 224, 224), } action = torch.randn(1) transition = create_transition(observation, action) batch = transition_to_batch(transition) processed = loaded_preprocessor(batch) assert processed[OBS_STATE].shape == (10,) assert processed[OBS_IMAGE].shape == (3, 224, 224) assert processed[TransitionKey.ACTION.value].shape == (1,) @pytest.mark.skipif(not torch.cuda.is_available(), reason="CUDA not available") def test_classifier_processor_mixed_precision(): """Test Classifier processor with mixed precision.""" config = create_default_config() config.device = "cuda" stats = create_default_stats() preprocessor, postprocessor = make_classifier_processor(config, stats) # Replace DeviceProcessorStep with one that uses float16 modified_steps = [] for step in preprocessor.steps: if isinstance(step, DeviceProcessorStep): modified_steps.append(DeviceProcessorStep(device=config.device, float_dtype="float16")) else: modified_steps.append(step) preprocessor.steps = modified_steps # Create test data observation = { OBS_STATE: torch.randn(10, dtype=torch.float32), OBS_IMAGE: torch.randn(3, 224, 224, dtype=torch.float32), } action = torch.randn(1, dtype=torch.float32) transition = create_transition(observation, action) batch = transition_to_batch(transition) # Process through preprocessor processed = preprocessor(batch) # Check that data is converted to float16 assert processed[OBS_STATE].dtype == torch.float16 assert processed[OBS_IMAGE].dtype == torch.float16 assert processed[TransitionKey.ACTION.value].dtype == torch.float16 def test_classifier_processor_batch_data(): """Test Classifier processor with batched data.""" config = create_default_config() stats = create_default_stats() preprocessor, postprocessor = make_classifier_processor( config, stats, ) # Test with batched data batch_size = 16 observation = { OBS_STATE: torch.randn(batch_size, 10), OBS_IMAGE: torch.randn(batch_size, 3, 224, 224), } action = torch.randn(batch_size, 1) transition = create_transition(observation, action) batch = transition_to_batch(transition) # Process through preprocessor processed = preprocessor(batch) # Check that batch dimension is preserved assert processed[OBS_STATE].shape == (batch_size, 10) assert processed[OBS_IMAGE].shape == (batch_size, 3, 224, 224) assert processed[TransitionKey.ACTION.value].shape == (batch_size, 1) def test_classifier_processor_postprocessor_identity(): """Test that Classifier postprocessor uses IdentityProcessor correctly.""" config = create_default_config() stats = create_default_stats() preprocessor, postprocessor = make_classifier_processor( config, stats, ) # Create test data for postprocessor reward = torch.tensor([[0.8], [0.3], [0.9]]) # Batch of rewards/predictions transition = create_transition(action=reward) _ = transition_to_batch(transition) # Process through postprocessor processed = postprocessor(reward) # IdentityProcessor should leave values unchanged (except device) assert torch.allclose(processed.cpu(), reward.cpu()) assert processed.device.type == "cpu"