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import tempfile |
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import torch |
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from diffusers import ( |
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DEISMultistepScheduler, |
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DPMSolverMultistepScheduler, |
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DPMSolverSinglestepScheduler, |
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UniPCMultistepScheduler, |
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) |
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from .test_schedulers import SchedulerCommonTest |
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class DPMSolverSinglestepSchedulerTest(SchedulerCommonTest): |
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scheduler_classes = (DPMSolverSinglestepScheduler,) |
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forward_default_kwargs = (("num_inference_steps", 25),) |
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def get_scheduler_config(self, **kwargs): |
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config = { |
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"num_train_timesteps": 1000, |
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"beta_start": 0.0001, |
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"beta_end": 0.02, |
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"beta_schedule": "linear", |
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"solver_order": 2, |
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"prediction_type": "epsilon", |
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"thresholding": False, |
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"sample_max_value": 1.0, |
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"algorithm_type": "dpmsolver++", |
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"solver_type": "midpoint", |
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"lambda_min_clipped": -float("inf"), |
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"variance_type": None, |
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"final_sigmas_type": "sigma_min", |
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} |
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config.update(**kwargs) |
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return config |
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def check_over_configs(self, time_step=0, **config): |
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kwargs = dict(self.forward_default_kwargs) |
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num_inference_steps = kwargs.pop("num_inference_steps", None) |
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sample = self.dummy_sample |
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residual = 0.1 * sample |
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dummy_past_residuals = [residual + 0.2, residual + 0.15, residual + 0.10] |
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for scheduler_class in self.scheduler_classes: |
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scheduler_config = self.get_scheduler_config(**config) |
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scheduler = scheduler_class(**scheduler_config) |
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scheduler.set_timesteps(num_inference_steps) |
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scheduler.model_outputs = dummy_past_residuals[: scheduler.config.solver_order] |
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with tempfile.TemporaryDirectory() as tmpdirname: |
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scheduler.save_config(tmpdirname) |
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new_scheduler = scheduler_class.from_pretrained(tmpdirname) |
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new_scheduler.set_timesteps(num_inference_steps) |
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new_scheduler.model_outputs = dummy_past_residuals[: new_scheduler.config.solver_order] |
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output, new_output = sample, sample |
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for t in range(time_step, time_step + scheduler.config.solver_order + 1): |
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t = scheduler.timesteps[t] |
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output = scheduler.step(residual, t, output, **kwargs).prev_sample |
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new_output = new_scheduler.step(residual, t, new_output, **kwargs).prev_sample |
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assert torch.sum(torch.abs(output - new_output)) < 1e-5, "Scheduler outputs are not identical" |
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def test_from_save_pretrained(self): |
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pass |
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def check_over_forward(self, time_step=0, **forward_kwargs): |
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kwargs = dict(self.forward_default_kwargs) |
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num_inference_steps = kwargs.pop("num_inference_steps", None) |
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sample = self.dummy_sample |
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residual = 0.1 * sample |
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dummy_past_residuals = [residual + 0.2, residual + 0.15, residual + 0.10] |
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for scheduler_class in self.scheduler_classes: |
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scheduler_config = self.get_scheduler_config() |
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scheduler = scheduler_class(**scheduler_config) |
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scheduler.set_timesteps(num_inference_steps) |
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scheduler.model_outputs = dummy_past_residuals[: scheduler.config.solver_order] |
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with tempfile.TemporaryDirectory() as tmpdirname: |
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scheduler.save_config(tmpdirname) |
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new_scheduler = scheduler_class.from_pretrained(tmpdirname) |
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new_scheduler.set_timesteps(num_inference_steps) |
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new_scheduler.model_outputs = dummy_past_residuals[: new_scheduler.config.solver_order] |
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output = scheduler.step(residual, time_step, sample, **kwargs).prev_sample |
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new_output = new_scheduler.step(residual, time_step, sample, **kwargs).prev_sample |
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assert torch.sum(torch.abs(output - new_output)) < 1e-5, "Scheduler outputs are not identical" |
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def full_loop(self, scheduler=None, **config): |
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if scheduler is None: |
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scheduler_class = self.scheduler_classes[0] |
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scheduler_config = self.get_scheduler_config(**config) |
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scheduler = scheduler_class(**scheduler_config) |
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num_inference_steps = 10 |
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model = self.dummy_model() |
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sample = self.dummy_sample_deter |
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scheduler.set_timesteps(num_inference_steps) |
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for i, t in enumerate(scheduler.timesteps): |
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residual = model(sample, t) |
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sample = scheduler.step(residual, t, sample).prev_sample |
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return sample |
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def full_loop_custom_timesteps(self, **config): |
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scheduler_class = self.scheduler_classes[0] |
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scheduler_config = self.get_scheduler_config(**config) |
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scheduler = scheduler_class(**scheduler_config) |
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num_inference_steps = 10 |
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scheduler.set_timesteps(num_inference_steps) |
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timesteps = scheduler.timesteps |
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scheduler = scheduler_class(**scheduler_config) |
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scheduler.set_timesteps(num_inference_steps=None, timesteps=timesteps) |
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model = self.dummy_model() |
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sample = self.dummy_sample_deter |
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for i, t in enumerate(scheduler.timesteps): |
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residual = model(sample, t) |
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sample = scheduler.step(residual, t, sample).prev_sample |
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return sample |
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def test_full_uneven_loop(self): |
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scheduler = DPMSolverSinglestepScheduler(**self.get_scheduler_config()) |
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num_inference_steps = 50 |
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model = self.dummy_model() |
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sample = self.dummy_sample_deter |
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scheduler.set_timesteps(num_inference_steps) |
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for i, t in enumerate(scheduler.timesteps[3:]): |
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residual = model(sample, t) |
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sample = scheduler.step(residual, t, sample).prev_sample |
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result_mean = torch.mean(torch.abs(sample)) |
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assert abs(result_mean.item() - 0.2574) < 1e-3 |
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def test_timesteps(self): |
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for timesteps in [25, 50, 100, 999, 1000]: |
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self.check_over_configs(num_train_timesteps=timesteps) |
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def test_switch(self): |
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scheduler = DPMSolverSinglestepScheduler(**self.get_scheduler_config()) |
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sample = self.full_loop(scheduler=scheduler) |
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result_mean = torch.mean(torch.abs(sample)) |
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assert abs(result_mean.item() - 0.2791) < 1e-3 |
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scheduler = DEISMultistepScheduler.from_config(scheduler.config) |
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scheduler = DPMSolverMultistepScheduler.from_config(scheduler.config) |
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scheduler = UniPCMultistepScheduler.from_config(scheduler.config) |
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scheduler = DPMSolverSinglestepScheduler.from_config(scheduler.config) |
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sample = self.full_loop(scheduler=scheduler) |
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result_mean = torch.mean(torch.abs(sample)) |
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assert abs(result_mean.item() - 0.2791) < 1e-3 |
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def test_thresholding(self): |
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self.check_over_configs(thresholding=False) |
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for order in [1, 2, 3]: |
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for solver_type in ["midpoint", "heun"]: |
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for threshold in [0.5, 1.0, 2.0]: |
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for prediction_type in ["epsilon", "sample"]: |
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self.check_over_configs( |
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thresholding=True, |
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prediction_type=prediction_type, |
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sample_max_value=threshold, |
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algorithm_type="dpmsolver++", |
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solver_order=order, |
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solver_type=solver_type, |
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) |
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def test_prediction_type(self): |
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for prediction_type in ["epsilon", "v_prediction"]: |
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self.check_over_configs(prediction_type=prediction_type) |
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def test_solver_order_and_type(self): |
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for algorithm_type in ["dpmsolver", "dpmsolver++"]: |
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for solver_type in ["midpoint", "heun"]: |
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for order in [1, 2, 3]: |
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for prediction_type in ["epsilon", "sample"]: |
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self.check_over_configs( |
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solver_order=order, |
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solver_type=solver_type, |
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prediction_type=prediction_type, |
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algorithm_type=algorithm_type, |
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) |
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sample = self.full_loop( |
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solver_order=order, |
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solver_type=solver_type, |
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prediction_type=prediction_type, |
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algorithm_type=algorithm_type, |
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) |
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assert not torch.isnan(sample).any(), "Samples have nan numbers" |
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def test_lower_order_final(self): |
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self.check_over_configs(lower_order_final=True) |
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self.check_over_configs(lower_order_final=False) |
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def test_lambda_min_clipped(self): |
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self.check_over_configs(lambda_min_clipped=-float("inf")) |
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self.check_over_configs(lambda_min_clipped=-5.1) |
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def test_variance_type(self): |
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self.check_over_configs(variance_type=None) |
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self.check_over_configs(variance_type="learned_range") |
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def test_inference_steps(self): |
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for num_inference_steps in [1, 2, 3, 5, 10, 50, 100, 999, 1000]: |
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self.check_over_forward(num_inference_steps=num_inference_steps, time_step=0) |
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def test_full_loop_no_noise(self): |
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sample = self.full_loop() |
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result_mean = torch.mean(torch.abs(sample)) |
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assert abs(result_mean.item() - 0.2791) < 1e-3 |
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def test_full_loop_with_karras(self): |
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sample = self.full_loop(use_karras_sigmas=True) |
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result_mean = torch.mean(torch.abs(sample)) |
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assert abs(result_mean.item() - 0.2248) < 1e-3 |
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def test_full_loop_with_v_prediction(self): |
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sample = self.full_loop(prediction_type="v_prediction") |
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result_mean = torch.mean(torch.abs(sample)) |
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assert abs(result_mean.item() - 0.1453) < 1e-3 |
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def test_full_loop_with_karras_and_v_prediction(self): |
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sample = self.full_loop(prediction_type="v_prediction", use_karras_sigmas=True) |
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result_mean = torch.mean(torch.abs(sample)) |
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assert abs(result_mean.item() - 0.0649) < 1e-3 |
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def test_fp16_support(self): |
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scheduler_class = self.scheduler_classes[0] |
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scheduler_config = self.get_scheduler_config(thresholding=True, dynamic_thresholding_ratio=0) |
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scheduler = scheduler_class(**scheduler_config) |
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num_inference_steps = 10 |
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model = self.dummy_model() |
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sample = self.dummy_sample_deter.half() |
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scheduler.set_timesteps(num_inference_steps) |
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for i, t in enumerate(scheduler.timesteps): |
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residual = model(sample, t) |
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sample = scheduler.step(residual, t, sample).prev_sample |
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assert sample.dtype == torch.float16 |
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def test_step_shape(self): |
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kwargs = dict(self.forward_default_kwargs) |
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num_inference_steps = kwargs.pop("num_inference_steps", None) |
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for scheduler_class in self.scheduler_classes: |
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scheduler_config = self.get_scheduler_config() |
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scheduler = scheduler_class(**scheduler_config) |
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sample = self.dummy_sample |
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residual = 0.1 * sample |
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if num_inference_steps is not None and hasattr(scheduler, "set_timesteps"): |
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scheduler.set_timesteps(num_inference_steps) |
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elif num_inference_steps is not None and not hasattr(scheduler, "set_timesteps"): |
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kwargs["num_inference_steps"] = num_inference_steps |
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dummy_past_residuals = [residual + 0.2, residual + 0.15, residual + 0.10] |
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scheduler.model_outputs = dummy_past_residuals[: scheduler.config.solver_order] |
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time_step_0 = scheduler.timesteps[0] |
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time_step_1 = scheduler.timesteps[1] |
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output_0 = scheduler.step(residual, time_step_0, sample, **kwargs).prev_sample |
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output_1 = scheduler.step(residual, time_step_1, sample, **kwargs).prev_sample |
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self.assertEqual(output_0.shape, sample.shape) |
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self.assertEqual(output_0.shape, output_1.shape) |
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def test_full_loop_with_noise(self): |
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scheduler_class = self.scheduler_classes[0] |
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scheduler_config = self.get_scheduler_config() |
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scheduler = scheduler_class(**scheduler_config) |
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num_inference_steps = 10 |
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t_start = 5 |
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model = self.dummy_model() |
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sample = self.dummy_sample_deter |
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scheduler.set_timesteps(num_inference_steps) |
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noise = self.dummy_noise_deter |
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timesteps = scheduler.timesteps[t_start * scheduler.order :] |
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sample = scheduler.add_noise(sample, noise, timesteps[:1]) |
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for i, t in enumerate(timesteps): |
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residual = model(sample, t) |
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sample = scheduler.step(residual, t, sample).prev_sample |
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result_sum = torch.sum(torch.abs(sample)) |
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result_mean = torch.mean(torch.abs(sample)) |
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assert abs(result_sum.item() - 269.2187) < 1e-2, f" expected result sum 269.2187, but get {result_sum}" |
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assert abs(result_mean.item() - 0.3505) < 1e-3, f" expected result mean 0.3505, but get {result_mean}" |
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def test_custom_timesteps(self): |
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for prediction_type in ["epsilon", "sample", "v_prediction"]: |
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for lower_order_final in [True, False]: |
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for final_sigmas_type in ["sigma_min", "zero"]: |
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sample = self.full_loop( |
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prediction_type=prediction_type, |
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lower_order_final=lower_order_final, |
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final_sigmas_type=final_sigmas_type, |
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) |
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sample_custom_timesteps = self.full_loop_custom_timesteps( |
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prediction_type=prediction_type, |
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lower_order_final=lower_order_final, |
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final_sigmas_type=final_sigmas_type, |
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) |
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assert ( |
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torch.sum(torch.abs(sample - sample_custom_timesteps)) < 1e-5 |
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), f"Scheduler outputs are not identical for prediction_type: {prediction_type}, lower_order_final: {lower_order_final} and final_sigmas_type: {final_sigmas_type}" |
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