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import inspect |
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import json |
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import os |
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import tempfile |
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import unittest |
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import numpy as np |
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import torch |
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from transformers import AutoTokenizer, T5EncoderModel |
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from diffusers import AutoencoderKLCosmos, CosmosTextToWorldPipeline, CosmosTransformer3DModel, EDMEulerScheduler |
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from diffusers.utils.testing_utils import enable_full_determinism, torch_device |
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from ..pipeline_params import TEXT_TO_IMAGE_BATCH_PARAMS, TEXT_TO_IMAGE_IMAGE_PARAMS, TEXT_TO_IMAGE_PARAMS |
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from ..test_pipelines_common import PipelineTesterMixin, to_np |
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from .cosmos_guardrail import DummyCosmosSafetyChecker |
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enable_full_determinism() |
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class CosmosTextToWorldPipelineWrapper(CosmosTextToWorldPipeline): |
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@staticmethod |
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def from_pretrained(*args, **kwargs): |
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kwargs["safety_checker"] = DummyCosmosSafetyChecker() |
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return CosmosTextToWorldPipeline.from_pretrained(*args, **kwargs) |
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class CosmosTextToWorldPipelineFastTests(PipelineTesterMixin, unittest.TestCase): |
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pipeline_class = CosmosTextToWorldPipelineWrapper |
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params = TEXT_TO_IMAGE_PARAMS - {"cross_attention_kwargs"} |
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batch_params = TEXT_TO_IMAGE_BATCH_PARAMS |
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image_params = TEXT_TO_IMAGE_IMAGE_PARAMS |
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image_latents_params = TEXT_TO_IMAGE_IMAGE_PARAMS |
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required_optional_params = frozenset( |
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[ |
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"num_inference_steps", |
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"generator", |
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"latents", |
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"return_dict", |
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"callback_on_step_end", |
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"callback_on_step_end_tensor_inputs", |
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] |
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) |
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supports_dduf = False |
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test_xformers_attention = False |
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test_layerwise_casting = True |
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test_group_offloading = True |
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def get_dummy_components(self): |
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torch.manual_seed(0) |
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transformer = CosmosTransformer3DModel( |
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in_channels=4, |
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out_channels=4, |
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num_attention_heads=2, |
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attention_head_dim=16, |
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num_layers=2, |
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mlp_ratio=2, |
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text_embed_dim=32, |
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adaln_lora_dim=4, |
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max_size=(4, 32, 32), |
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patch_size=(1, 2, 2), |
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rope_scale=(2.0, 1.0, 1.0), |
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concat_padding_mask=True, |
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extra_pos_embed_type="learnable", |
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) |
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torch.manual_seed(0) |
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vae = AutoencoderKLCosmos( |
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in_channels=3, |
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out_channels=3, |
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latent_channels=4, |
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encoder_block_out_channels=(8, 8, 8, 8), |
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decode_block_out_channels=(8, 8, 8, 8), |
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attention_resolutions=(8,), |
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resolution=64, |
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num_layers=2, |
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patch_size=4, |
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patch_type="haar", |
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scaling_factor=1.0, |
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spatial_compression_ratio=4, |
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temporal_compression_ratio=4, |
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) |
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torch.manual_seed(0) |
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scheduler = EDMEulerScheduler( |
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sigma_min=0.002, |
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sigma_max=80, |
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sigma_data=0.5, |
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sigma_schedule="karras", |
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num_train_timesteps=1000, |
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prediction_type="epsilon", |
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rho=7.0, |
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final_sigmas_type="sigma_min", |
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) |
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text_encoder = T5EncoderModel.from_pretrained("hf-internal-testing/tiny-random-t5") |
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tokenizer = AutoTokenizer.from_pretrained("hf-internal-testing/tiny-random-t5") |
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components = { |
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"transformer": transformer, |
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"vae": vae, |
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"scheduler": scheduler, |
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"text_encoder": text_encoder, |
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"tokenizer": tokenizer, |
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"safety_checker": DummyCosmosSafetyChecker(), |
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} |
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return components |
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def get_dummy_inputs(self, device, seed=0): |
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if str(device).startswith("mps"): |
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generator = torch.manual_seed(seed) |
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else: |
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generator = torch.Generator(device=device).manual_seed(seed) |
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inputs = { |
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"prompt": "dance monkey", |
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"negative_prompt": "bad quality", |
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"generator": generator, |
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"num_inference_steps": 2, |
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"guidance_scale": 3.0, |
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"height": 32, |
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"width": 32, |
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"num_frames": 9, |
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"max_sequence_length": 16, |
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"output_type": "pt", |
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} |
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return inputs |
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def test_inference(self): |
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device = "cpu" |
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components = self.get_dummy_components() |
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pipe = self.pipeline_class(**components) |
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pipe.to(device) |
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pipe.set_progress_bar_config(disable=None) |
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inputs = self.get_dummy_inputs(device) |
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video = pipe(**inputs).frames |
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generated_video = video[0] |
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self.assertEqual(generated_video.shape, (9, 3, 32, 32)) |
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expected_video = torch.randn(9, 3, 32, 32) |
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max_diff = np.abs(generated_video - expected_video).max() |
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self.assertLessEqual(max_diff, 1e10) |
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def test_callback_inputs(self): |
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sig = inspect.signature(self.pipeline_class.__call__) |
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has_callback_tensor_inputs = "callback_on_step_end_tensor_inputs" in sig.parameters |
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has_callback_step_end = "callback_on_step_end" in sig.parameters |
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if not (has_callback_tensor_inputs and has_callback_step_end): |
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return |
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components = self.get_dummy_components() |
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pipe = self.pipeline_class(**components) |
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pipe = pipe.to(torch_device) |
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pipe.set_progress_bar_config(disable=None) |
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self.assertTrue( |
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hasattr(pipe, "_callback_tensor_inputs"), |
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f" {self.pipeline_class} should have `_callback_tensor_inputs` that defines a list of tensor variables its callback function can use as inputs", |
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) |
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def callback_inputs_subset(pipe, i, t, callback_kwargs): |
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for tensor_name, tensor_value in callback_kwargs.items(): |
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assert tensor_name in pipe._callback_tensor_inputs |
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return callback_kwargs |
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def callback_inputs_all(pipe, i, t, callback_kwargs): |
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for tensor_name in pipe._callback_tensor_inputs: |
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assert tensor_name in callback_kwargs |
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for tensor_name, tensor_value in callback_kwargs.items(): |
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assert tensor_name in pipe._callback_tensor_inputs |
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return callback_kwargs |
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inputs = self.get_dummy_inputs(torch_device) |
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inputs["callback_on_step_end"] = callback_inputs_subset |
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inputs["callback_on_step_end_tensor_inputs"] = ["latents"] |
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output = pipe(**inputs)[0] |
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inputs["callback_on_step_end"] = callback_inputs_all |
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inputs["callback_on_step_end_tensor_inputs"] = pipe._callback_tensor_inputs |
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output = pipe(**inputs)[0] |
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def callback_inputs_change_tensor(pipe, i, t, callback_kwargs): |
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is_last = i == (pipe.num_timesteps - 1) |
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if is_last: |
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callback_kwargs["latents"] = torch.zeros_like(callback_kwargs["latents"]) |
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return callback_kwargs |
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inputs["callback_on_step_end"] = callback_inputs_change_tensor |
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inputs["callback_on_step_end_tensor_inputs"] = pipe._callback_tensor_inputs |
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output = pipe(**inputs)[0] |
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assert output.abs().sum() < 1e10 |
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def test_inference_batch_single_identical(self): |
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self._test_inference_batch_single_identical(batch_size=3, expected_max_diff=1e-2) |
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def test_attention_slicing_forward_pass( |
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self, test_max_difference=True, test_mean_pixel_difference=True, expected_max_diff=1e-3 |
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): |
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if not self.test_attention_slicing: |
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return |
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components = self.get_dummy_components() |
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pipe = self.pipeline_class(**components) |
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for component in pipe.components.values(): |
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if hasattr(component, "set_default_attn_processor"): |
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component.set_default_attn_processor() |
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pipe.to(torch_device) |
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pipe.set_progress_bar_config(disable=None) |
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generator_device = "cpu" |
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inputs = self.get_dummy_inputs(generator_device) |
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output_without_slicing = pipe(**inputs)[0] |
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pipe.enable_attention_slicing(slice_size=1) |
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inputs = self.get_dummy_inputs(generator_device) |
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output_with_slicing1 = pipe(**inputs)[0] |
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pipe.enable_attention_slicing(slice_size=2) |
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inputs = self.get_dummy_inputs(generator_device) |
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output_with_slicing2 = pipe(**inputs)[0] |
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if test_max_difference: |
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max_diff1 = np.abs(to_np(output_with_slicing1) - to_np(output_without_slicing)).max() |
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max_diff2 = np.abs(to_np(output_with_slicing2) - to_np(output_without_slicing)).max() |
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self.assertLess( |
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max(max_diff1, max_diff2), |
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expected_max_diff, |
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"Attention slicing should not affect the inference results", |
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) |
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def test_vae_tiling(self, expected_diff_max: float = 0.2): |
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generator_device = "cpu" |
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components = self.get_dummy_components() |
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pipe = self.pipeline_class(**components) |
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pipe.to("cpu") |
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pipe.set_progress_bar_config(disable=None) |
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inputs = self.get_dummy_inputs(generator_device) |
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inputs["height"] = inputs["width"] = 128 |
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output_without_tiling = pipe(**inputs)[0] |
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pipe.vae.enable_tiling( |
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tile_sample_min_height=96, |
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tile_sample_min_width=96, |
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tile_sample_stride_height=64, |
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tile_sample_stride_width=64, |
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) |
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inputs = self.get_dummy_inputs(generator_device) |
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inputs["height"] = inputs["width"] = 128 |
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output_with_tiling = pipe(**inputs)[0] |
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self.assertLess( |
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(to_np(output_without_tiling) - to_np(output_with_tiling)).max(), |
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expected_diff_max, |
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"VAE tiling should not affect the inference results", |
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) |
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def test_save_load_optional_components(self, expected_max_difference=1e-4): |
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self.pipeline_class._optional_components.remove("safety_checker") |
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super().test_save_load_optional_components(expected_max_difference=expected_max_difference) |
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self.pipeline_class._optional_components.append("safety_checker") |
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def test_serialization_with_variants(self): |
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components = self.get_dummy_components() |
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pipe = self.pipeline_class(**components) |
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model_components = [ |
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component_name |
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for component_name, component in pipe.components.items() |
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if isinstance(component, torch.nn.Module) |
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] |
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model_components.remove("safety_checker") |
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variant = "fp16" |
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with tempfile.TemporaryDirectory() as tmpdir: |
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pipe.save_pretrained(tmpdir, variant=variant, safe_serialization=False) |
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with open(f"{tmpdir}/model_index.json", "r") as f: |
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config = json.load(f) |
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for subfolder in os.listdir(tmpdir): |
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if not os.path.isfile(subfolder) and subfolder in model_components: |
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folder_path = os.path.join(tmpdir, subfolder) |
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is_folder = os.path.isdir(folder_path) and subfolder in config |
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assert is_folder and any(p.split(".")[1].startswith(variant) for p in os.listdir(folder_path)) |
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def test_torch_dtype_dict(self): |
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components = self.get_dummy_components() |
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if not components: |
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self.skipTest("No dummy components defined.") |
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pipe = self.pipeline_class(**components) |
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specified_key = next(iter(components.keys())) |
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with tempfile.TemporaryDirectory(ignore_cleanup_errors=True) as tmpdirname: |
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pipe.save_pretrained(tmpdirname, safe_serialization=False) |
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torch_dtype_dict = {specified_key: torch.bfloat16, "default": torch.float16} |
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loaded_pipe = self.pipeline_class.from_pretrained( |
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tmpdirname, safety_checker=DummyCosmosSafetyChecker(), torch_dtype=torch_dtype_dict |
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) |
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for name, component in loaded_pipe.components.items(): |
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if name == "safety_checker": |
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continue |
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if isinstance(component, torch.nn.Module) and hasattr(component, "dtype"): |
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expected_dtype = torch_dtype_dict.get(name, torch_dtype_dict.get("default", torch.float32)) |
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self.assertEqual( |
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component.dtype, |
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expected_dtype, |
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f"Component '{name}' has dtype {component.dtype} but expected {expected_dtype}", |
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) |
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@unittest.skip( |
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"The pipeline should not be runnable without a safety checker. The test creates a pipeline without passing in " |
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"a safety checker, which makes the pipeline default to the actual Cosmos Guardrail. The Cosmos Guardrail is " |
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"too large and slow to run on CI." |
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) |
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def test_encode_prompt_works_in_isolation(self): |
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pass |
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