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import gc |
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import random |
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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 CLIPTextConfig, CLIPTextModel, CLIPTokenizer |
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import diffusers |
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from diffusers import ( |
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AutoencoderKL, |
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AutoencoderTiny, |
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DDIMScheduler, |
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MarigoldIntrinsicsPipeline, |
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UNet2DConditionModel, |
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) |
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from diffusers.utils.testing_utils import ( |
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backend_empty_cache, |
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enable_full_determinism, |
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floats_tensor, |
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load_image, |
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require_torch_accelerator, |
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slow, |
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torch_device, |
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) |
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from ..test_pipelines_common import PipelineTesterMixin, to_np |
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enable_full_determinism() |
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class MarigoldIntrinsicsPipelineTesterMixin(PipelineTesterMixin): |
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def _test_inference_batch_single_identical( |
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self, |
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batch_size=2, |
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expected_max_diff=1e-4, |
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additional_params_copy_to_batched_inputs=["num_inference_steps"], |
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): |
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components = self.get_dummy_components() |
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pipe = self.pipeline_class(**components) |
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for components in pipe.components.values(): |
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if hasattr(components, "set_default_attn_processor"): |
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components.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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inputs = self.get_dummy_inputs(torch_device) |
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inputs["generator"] = self.get_generator(0) |
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logger = diffusers.logging.get_logger(pipe.__module__) |
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logger.setLevel(level=diffusers.logging.FATAL) |
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batched_inputs = {} |
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batched_inputs.update(inputs) |
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for name in self.batch_params: |
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if name not in inputs: |
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continue |
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value = inputs[name] |
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if name == "prompt": |
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len_prompt = len(value) |
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batched_inputs[name] = [value[: len_prompt // i] for i in range(1, batch_size + 1)] |
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batched_inputs[name][-1] = 100 * "very long" |
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else: |
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batched_inputs[name] = batch_size * [value] |
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if "generator" in inputs: |
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batched_inputs["generator"] = [self.get_generator(i) for i in range(batch_size)] |
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if "batch_size" in inputs: |
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batched_inputs["batch_size"] = batch_size |
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for arg in additional_params_copy_to_batched_inputs: |
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batched_inputs[arg] = inputs[arg] |
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output = pipe(**inputs) |
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output_batch = pipe(**batched_inputs) |
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assert output_batch[0].shape[0] == batch_size * output[0].shape[0] |
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max_diff = np.abs(to_np(output_batch[0][0]) - to_np(output[0][0])).max() |
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assert max_diff < expected_max_diff |
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def _test_inference_batch_consistent( |
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self, batch_sizes=[2], additional_params_copy_to_batched_inputs=["num_inference_steps"], batch_generator=True |
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): |
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components = self.get_dummy_components() |
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pipe = self.pipeline_class(**components) |
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pipe.to(torch_device) |
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pipe.set_progress_bar_config(disable=None) |
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inputs = self.get_dummy_inputs(torch_device) |
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inputs["generator"] = self.get_generator(0) |
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logger = diffusers.logging.get_logger(pipe.__module__) |
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logger.setLevel(level=diffusers.logging.FATAL) |
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batched_inputs = [] |
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for batch_size in batch_sizes: |
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batched_input = {} |
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batched_input.update(inputs) |
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for name in self.batch_params: |
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if name not in inputs: |
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continue |
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value = inputs[name] |
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if name == "prompt": |
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len_prompt = len(value) |
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batched_input[name] = [value[: len_prompt // i] for i in range(1, batch_size + 1)] |
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batched_input[name][-1] = 100 * "very long" |
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else: |
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batched_input[name] = batch_size * [value] |
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if batch_generator and "generator" in inputs: |
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batched_input["generator"] = [self.get_generator(i) for i in range(batch_size)] |
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if "batch_size" in inputs: |
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batched_input["batch_size"] = batch_size |
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batched_inputs.append(batched_input) |
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logger.setLevel(level=diffusers.logging.WARNING) |
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for batch_size, batched_input in zip(batch_sizes, batched_inputs): |
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output = pipe(**batched_input) |
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assert len(output[0]) == batch_size * pipe.n_targets |
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class MarigoldIntrinsicsPipelineFastTests(MarigoldIntrinsicsPipelineTesterMixin, unittest.TestCase): |
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pipeline_class = MarigoldIntrinsicsPipeline |
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params = frozenset(["image"]) |
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batch_params = frozenset(["image"]) |
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image_params = frozenset(["image"]) |
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image_latents_params = frozenset(["latents"]) |
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callback_cfg_params = frozenset([]) |
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test_xformers_attention = False |
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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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"output_type", |
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] |
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) |
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def get_dummy_components(self, time_cond_proj_dim=None): |
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torch.manual_seed(0) |
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unet = UNet2DConditionModel( |
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block_out_channels=(32, 64), |
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layers_per_block=2, |
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time_cond_proj_dim=time_cond_proj_dim, |
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sample_size=32, |
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in_channels=12, |
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out_channels=8, |
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down_block_types=("DownBlock2D", "CrossAttnDownBlock2D"), |
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up_block_types=("CrossAttnUpBlock2D", "UpBlock2D"), |
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cross_attention_dim=32, |
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) |
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torch.manual_seed(0) |
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scheduler = DDIMScheduler( |
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beta_start=0.00085, |
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beta_end=0.012, |
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prediction_type="v_prediction", |
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set_alpha_to_one=False, |
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steps_offset=1, |
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beta_schedule="scaled_linear", |
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clip_sample=False, |
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thresholding=False, |
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) |
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torch.manual_seed(0) |
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vae = AutoencoderKL( |
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block_out_channels=[32, 64], |
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in_channels=3, |
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out_channels=3, |
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down_block_types=["DownEncoderBlock2D", "DownEncoderBlock2D"], |
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up_block_types=["UpDecoderBlock2D", "UpDecoderBlock2D"], |
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latent_channels=4, |
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) |
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torch.manual_seed(0) |
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text_encoder_config = CLIPTextConfig( |
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bos_token_id=0, |
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eos_token_id=2, |
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hidden_size=32, |
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intermediate_size=37, |
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layer_norm_eps=1e-05, |
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num_attention_heads=4, |
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num_hidden_layers=5, |
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pad_token_id=1, |
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vocab_size=1000, |
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) |
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text_encoder = CLIPTextModel(text_encoder_config) |
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tokenizer = CLIPTokenizer.from_pretrained("hf-internal-testing/tiny-random-clip") |
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components = { |
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"unet": unet, |
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"scheduler": scheduler, |
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"vae": vae, |
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"text_encoder": text_encoder, |
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"tokenizer": tokenizer, |
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"prediction_type": "intrinsics", |
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} |
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return components |
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def get_dummy_tiny_autoencoder(self): |
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return AutoencoderTiny(in_channels=3, out_channels=3, latent_channels=4) |
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def get_dummy_inputs(self, device, seed=0): |
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image = floats_tensor((1, 3, 32, 32), rng=random.Random(seed)).to(device) |
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image = image / 2 + 0.5 |
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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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"image": image, |
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"num_inference_steps": 1, |
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"processing_resolution": 0, |
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"generator": generator, |
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"output_type": "np", |
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} |
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return inputs |
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def _test_marigold_intrinsics( |
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self, |
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generator_seed: int = 0, |
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expected_slice: np.ndarray = None, |
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atol: float = 1e-4, |
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**pipe_kwargs, |
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): |
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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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pipe_inputs = self.get_dummy_inputs(device, seed=generator_seed) |
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|
pipe_inputs.update(**pipe_kwargs) |
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prediction = pipe(**pipe_inputs).prediction |
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|
prediction_slice = prediction[0, -3:, -3:, -1].flatten() |
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|
|
if pipe_inputs.get("match_input_resolution", True): |
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|
self.assertEqual(prediction.shape, (2, 32, 32, 3), "Unexpected output resolution") |
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|
else: |
|
|
self.assertTrue(prediction.shape[0] == 2 and prediction.shape[3] == 3, "Unexpected output dimensions") |
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|
self.assertEqual( |
|
|
max(prediction.shape[1:3]), |
|
|
pipe_inputs.get("processing_resolution", 768), |
|
|
"Unexpected output resolution", |
|
|
) |
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|
np.set_printoptions(precision=5, suppress=True) |
|
|
msg = f"{prediction_slice}" |
|
|
self.assertTrue(np.allclose(prediction_slice, expected_slice, atol=atol), msg) |
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def test_marigold_depth_dummy_defaults(self): |
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|
self._test_marigold_intrinsics( |
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expected_slice=np.array([0.6423, 0.40664, 0.41185, 0.65832, 0.63935, 0.43971, 0.51786, 0.55216, 0.47683]), |
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) |
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def test_marigold_depth_dummy_G0_S1_P32_E1_B1_M1(self): |
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|
self._test_marigold_intrinsics( |
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generator_seed=0, |
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expected_slice=np.array([0.6423, 0.40664, 0.41185, 0.65832, 0.63935, 0.43971, 0.51786, 0.55216, 0.47683]), |
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num_inference_steps=1, |
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processing_resolution=32, |
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ensemble_size=1, |
|
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batch_size=1, |
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|
match_input_resolution=True, |
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) |
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|
def test_marigold_depth_dummy_G0_S1_P16_E1_B1_M1(self): |
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|
self._test_marigold_intrinsics( |
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|
generator_seed=0, |
|
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expected_slice=np.array([0.53132, 0.44487, 0.40164, 0.5326, 0.49073, 0.46979, 0.53324, 0.51366, 0.50387]), |
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num_inference_steps=1, |
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processing_resolution=16, |
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ensemble_size=1, |
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batch_size=1, |
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|
match_input_resolution=True, |
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|
) |
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|
def test_marigold_depth_dummy_G2024_S1_P32_E1_B1_M1(self): |
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|
self._test_marigold_intrinsics( |
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generator_seed=2024, |
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expected_slice=np.array([0.40257, 0.39468, 0.51373, 0.4161, 0.40162, 0.58535, 0.43581, 0.47834, 0.48951]), |
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num_inference_steps=1, |
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processing_resolution=32, |
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ensemble_size=1, |
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batch_size=1, |
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match_input_resolution=True, |
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|
) |
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|
def test_marigold_depth_dummy_G0_S2_P32_E1_B1_M1(self): |
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|
self._test_marigold_intrinsics( |
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|
generator_seed=0, |
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expected_slice=np.array([0.49636, 0.4518, 0.42722, 0.59044, 0.6362, 0.39011, 0.53522, 0.55153, 0.48699]), |
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num_inference_steps=2, |
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processing_resolution=32, |
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ensemble_size=1, |
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batch_size=1, |
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match_input_resolution=True, |
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) |
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def test_marigold_depth_dummy_G0_S1_P64_E1_B1_M1(self): |
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|
self._test_marigold_intrinsics( |
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|
generator_seed=0, |
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expected_slice=np.array([0.55547, 0.43511, 0.4887, 0.56399, 0.63867, 0.56337, 0.47889, 0.52925, 0.49235]), |
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num_inference_steps=1, |
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processing_resolution=64, |
|
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ensemble_size=1, |
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|
batch_size=1, |
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match_input_resolution=True, |
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) |
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def test_marigold_depth_dummy_G0_S1_P32_E3_B1_M1(self): |
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|
self._test_marigold_intrinsics( |
|
|
generator_seed=0, |
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|
expected_slice=np.array([0.57249, 0.49824, 0.54438, 0.57733, 0.52404, 0.5255, 0.56493, 0.56336, 0.48579]), |
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|
num_inference_steps=1, |
|
|
processing_resolution=32, |
|
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ensemble_size=3, |
|
|
ensembling_kwargs={"reduction": "mean"}, |
|
|
batch_size=1, |
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|
match_input_resolution=True, |
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) |
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|
def test_marigold_depth_dummy_G0_S1_P32_E4_B2_M1(self): |
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|
self._test_marigold_intrinsics( |
|
|
generator_seed=0, |
|
|
expected_slice=np.array([0.6294, 0.5575, 0.53414, 0.61077, 0.57156, 0.53974, 0.52956, 0.55467, 0.48751]), |
|
|
num_inference_steps=1, |
|
|
processing_resolution=32, |
|
|
ensemble_size=4, |
|
|
ensembling_kwargs={"reduction": "mean"}, |
|
|
batch_size=2, |
|
|
match_input_resolution=True, |
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|
) |
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|
def test_marigold_depth_dummy_G0_S1_P16_E1_B1_M0(self): |
|
|
self._test_marigold_intrinsics( |
|
|
generator_seed=0, |
|
|
expected_slice=np.array([0.63511, 0.68137, 0.48783, 0.46689, 0.58505, 0.36757, 0.58465, 0.54302, 0.50387]), |
|
|
num_inference_steps=1, |
|
|
processing_resolution=16, |
|
|
ensemble_size=1, |
|
|
batch_size=1, |
|
|
match_input_resolution=False, |
|
|
) |
|
|
|
|
|
def test_marigold_depth_dummy_no_num_inference_steps(self): |
|
|
with self.assertRaises(ValueError) as e: |
|
|
self._test_marigold_intrinsics( |
|
|
num_inference_steps=None, |
|
|
expected_slice=np.array([0.0]), |
|
|
) |
|
|
self.assertIn("num_inference_steps", str(e)) |
|
|
|
|
|
def test_marigold_depth_dummy_no_processing_resolution(self): |
|
|
with self.assertRaises(ValueError) as e: |
|
|
self._test_marigold_intrinsics( |
|
|
processing_resolution=None, |
|
|
expected_slice=np.array([0.0]), |
|
|
) |
|
|
self.assertIn("processing_resolution", str(e)) |
|
|
|
|
|
|
|
|
@slow |
|
|
@require_torch_accelerator |
|
|
class MarigoldIntrinsicsPipelineIntegrationTests(unittest.TestCase): |
|
|
def setUp(self): |
|
|
super().setUp() |
|
|
gc.collect() |
|
|
backend_empty_cache(torch_device) |
|
|
|
|
|
def tearDown(self): |
|
|
super().tearDown() |
|
|
gc.collect() |
|
|
backend_empty_cache(torch_device) |
|
|
|
|
|
def _test_marigold_intrinsics( |
|
|
self, |
|
|
is_fp16: bool = True, |
|
|
device: str = "cuda", |
|
|
generator_seed: int = 0, |
|
|
expected_slice: np.ndarray = None, |
|
|
model_id: str = "prs-eth/marigold-iid-appearance-v1-1", |
|
|
image_url: str = "https://marigoldmonodepth.github.io/images/einstein.jpg", |
|
|
atol: float = 1e-4, |
|
|
**pipe_kwargs, |
|
|
): |
|
|
from_pretrained_kwargs = {} |
|
|
if is_fp16: |
|
|
from_pretrained_kwargs["variant"] = "fp16" |
|
|
from_pretrained_kwargs["torch_dtype"] = torch.float16 |
|
|
|
|
|
pipe = MarigoldIntrinsicsPipeline.from_pretrained(model_id, **from_pretrained_kwargs) |
|
|
if device in ["cuda", "xpu"]: |
|
|
pipe.enable_model_cpu_offload() |
|
|
pipe.set_progress_bar_config(disable=None) |
|
|
|
|
|
generator = torch.Generator(device=device).manual_seed(generator_seed) |
|
|
|
|
|
image = load_image(image_url) |
|
|
width, height = image.size |
|
|
|
|
|
prediction = pipe(image, generator=generator, **pipe_kwargs).prediction |
|
|
|
|
|
prediction_slice = prediction[0, -3:, -3:, -1].flatten() |
|
|
|
|
|
if pipe_kwargs.get("match_input_resolution", True): |
|
|
self.assertEqual(prediction.shape, (2, height, width, 3), "Unexpected output resolution") |
|
|
else: |
|
|
self.assertTrue(prediction.shape[0] == 2 and prediction.shape[3] == 3, "Unexpected output dimensions") |
|
|
self.assertEqual( |
|
|
max(prediction.shape[1:3]), |
|
|
pipe_kwargs.get("processing_resolution", 768), |
|
|
"Unexpected output resolution", |
|
|
) |
|
|
|
|
|
msg = f"{prediction_slice}" |
|
|
self.assertTrue(np.allclose(prediction_slice, expected_slice, atol=atol), msg) |
|
|
|
|
|
|
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def test_marigold_intrinsics_einstein_f32_cpu_G0_S1_P32_E1_B1_M1(self): |
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self._test_marigold_intrinsics( |
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is_fp16=False, |
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device="cpu", |
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generator_seed=0, |
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expected_slice=np.array([0.9162, 0.9162, 0.9162, 0.9162, 0.9162, 0.9162, 0.9162, 0.9162, 0.9162]), |
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num_inference_steps=1, |
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processing_resolution=32, |
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ensemble_size=1, |
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batch_size=1, |
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match_input_resolution=True, |
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) |
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def test_marigold_intrinsics_einstein_f32_accelerator_G0_S1_P768_E1_B1_M1(self): |
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self._test_marigold_intrinsics( |
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is_fp16=False, |
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device=torch_device, |
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generator_seed=0, |
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expected_slice=np.array([0.62127, 0.61906, 0.61687, 0.61946, 0.61903, 0.61961, 0.61808, 0.62099, 0.62894]), |
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num_inference_steps=1, |
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processing_resolution=768, |
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ensemble_size=1, |
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batch_size=1, |
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match_input_resolution=True, |
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) |
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def test_marigold_intrinsics_einstein_f16_accelerator_G0_S1_P768_E1_B1_M1(self): |
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self._test_marigold_intrinsics( |
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is_fp16=True, |
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device=torch_device, |
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generator_seed=0, |
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expected_slice=np.array([0.62109, 0.61914, 0.61719, 0.61963, 0.61914, 0.61963, 0.61816, 0.62109, 0.62891]), |
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num_inference_steps=1, |
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processing_resolution=768, |
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ensemble_size=1, |
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batch_size=1, |
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match_input_resolution=True, |
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) |
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def test_marigold_intrinsics_einstein_f16_accelerator_G2024_S1_P768_E1_B1_M1(self): |
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self._test_marigold_intrinsics( |
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is_fp16=True, |
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device=torch_device, |
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generator_seed=2024, |
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expected_slice=np.array([0.64111, 0.63916, 0.63623, 0.63965, 0.63916, 0.63965, 0.6377, 0.64062, 0.64941]), |
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num_inference_steps=1, |
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processing_resolution=768, |
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ensemble_size=1, |
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batch_size=1, |
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match_input_resolution=True, |
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) |
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def test_marigold_intrinsics_einstein_f16_accelerator_G0_S2_P768_E1_B1_M1(self): |
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self._test_marigold_intrinsics( |
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is_fp16=True, |
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device=torch_device, |
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generator_seed=0, |
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expected_slice=np.array([0.60254, 0.60059, 0.59961, 0.60156, 0.60107, 0.60205, 0.60254, 0.60449, 0.61133]), |
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num_inference_steps=2, |
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processing_resolution=768, |
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ensemble_size=1, |
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batch_size=1, |
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match_input_resolution=True, |
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) |
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def test_marigold_intrinsics_einstein_f16_accelerator_G0_S1_P512_E1_B1_M1(self): |
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self._test_marigold_intrinsics( |
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is_fp16=True, |
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device=torch_device, |
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generator_seed=0, |
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expected_slice=np.array([0.64551, 0.64453, 0.64404, 0.64502, 0.64844, 0.65039, 0.64502, 0.65039, 0.65332]), |
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num_inference_steps=1, |
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processing_resolution=512, |
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ensemble_size=1, |
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batch_size=1, |
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match_input_resolution=True, |
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) |
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def test_marigold_intrinsics_einstein_f16_accelerator_G0_S1_P768_E3_B1_M1(self): |
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self._test_marigold_intrinsics( |
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is_fp16=True, |
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device=torch_device, |
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generator_seed=0, |
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expected_slice=np.array([0.61572, 0.61377, 0.61182, 0.61426, 0.61377, 0.61426, 0.61279, 0.61572, 0.62354]), |
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num_inference_steps=1, |
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processing_resolution=768, |
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ensemble_size=3, |
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ensembling_kwargs={"reduction": "mean"}, |
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batch_size=1, |
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match_input_resolution=True, |
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) |
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def test_marigold_intrinsics_einstein_f16_accelerator_G0_S1_P768_E4_B2_M1(self): |
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self._test_marigold_intrinsics( |
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is_fp16=True, |
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device=torch_device, |
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generator_seed=0, |
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expected_slice=np.array([0.61914, 0.6167, 0.61475, 0.61719, 0.61719, 0.61768, 0.61572, 0.61914, 0.62695]), |
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num_inference_steps=1, |
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processing_resolution=768, |
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ensemble_size=4, |
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ensembling_kwargs={"reduction": "mean"}, |
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batch_size=2, |
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match_input_resolution=True, |
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) |
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def test_marigold_intrinsics_einstein_f16_accelerator_G0_S1_P512_E1_B1_M0(self): |
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self._test_marigold_intrinsics( |
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is_fp16=True, |
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device=torch_device, |
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generator_seed=0, |
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expected_slice=np.array([0.65332, 0.64697, 0.64648, 0.64844, 0.64697, 0.64111, 0.64941, 0.64209, 0.65332]), |
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num_inference_steps=1, |
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processing_resolution=512, |
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ensemble_size=1, |
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batch_size=1, |
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match_input_resolution=False, |
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) |
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