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|
| | import math |
| | from typing import Optional, Tuple, Union |
| |
|
| | import numpy as np |
| | import torch |
| |
|
| | from ..configuration_utils import ConfigMixin, register_to_config |
| | from .scheduling_utils import SchedulerMixin, SchedulerOutput |
| |
|
| |
|
| | def betas_for_alpha_bar(num_diffusion_timesteps, max_beta=0.999): |
| | """ |
| | Create a beta schedule that discretizes the given alpha_t_bar function, which defines the cumulative product of |
| | (1-beta) over time from t = [0,1]. |
| | |
| | Contains a function alpha_bar that takes an argument t and transforms it to the cumulative product of (1-beta) up |
| | to that part of the diffusion process. |
| | |
| | |
| | Args: |
| | num_diffusion_timesteps (`int`): the number of betas to produce. |
| | max_beta (`float`): the maximum beta to use; use values lower than 1 to |
| | prevent singularities. |
| | |
| | Returns: |
| | betas (`np.ndarray`): the betas used by the scheduler to step the model outputs |
| | """ |
| |
|
| | def alpha_bar(time_step): |
| | return math.cos((time_step + 0.008) / 1.008 * math.pi / 2) ** 2 |
| |
|
| | betas = [] |
| | for i in range(num_diffusion_timesteps): |
| | t1 = i / num_diffusion_timesteps |
| | t2 = (i + 1) / num_diffusion_timesteps |
| | betas.append(min(1 - alpha_bar(t2) / alpha_bar(t1), max_beta)) |
| | return np.array(betas, dtype=np.float32) |
| |
|
| |
|
| | class DDPMScheduler(SchedulerMixin, ConfigMixin): |
| | """ |
| | Denoising diffusion probabilistic models (DDPMs) explores the connections between denoising score matching and |
| | Langevin dynamics sampling. |
| | |
| | [`~ConfigMixin`] takes care of storing all config attributes that are passed in the scheduler's `__init__` |
| | function, such as `num_train_timesteps`. They can be accessed via `scheduler.config.num_train_timesteps`. |
| | [`~ConfigMixin`] also provides general loading and saving functionality via the [`~ConfigMixin.save_config`] and |
| | [`~ConfigMixin.from_config`] functios. |
| | |
| | For more details, see the original paper: https://arxiv.org/abs/2006.11239 |
| | |
| | Args: |
| | num_train_timesteps (`int`): number of diffusion steps used to train the model. |
| | beta_start (`float`): the starting `beta` value of inference. |
| | beta_end (`float`): the final `beta` value. |
| | beta_schedule (`str`): |
| | the beta schedule, a mapping from a beta range to a sequence of betas for stepping the model. Choose from |
| | `linear`, `scaled_linear`, or `squaredcos_cap_v2`. |
| | trained_betas (`np.ndarray`, optional): TODO |
| | variance_type (`str`): |
| | options to clip the variance used when adding noise to the denoised sample. Choose from `fixed_small`, |
| | `fixed_small_log`, `fixed_large`, `fixed_large_log`, `learned` or `learned_range`. |
| | clip_sample (`bool`, default `True`): |
| | option to clip predicted sample between -1 and 1 for numerical stability. |
| | tensor_format (`str`): whether the scheduler expects pytorch or numpy arrays. |
| | |
| | """ |
| |
|
| | @register_to_config |
| | def __init__( |
| | self, |
| | num_train_timesteps: int = 1000, |
| | beta_start: float = 0.0001, |
| | beta_end: float = 0.02, |
| | beta_schedule: str = "linear", |
| | trained_betas: Optional[np.ndarray] = None, |
| | variance_type: str = "fixed_small", |
| | clip_sample: bool = True, |
| | tensor_format: str = "pt", |
| | ): |
| |
|
| | if trained_betas is not None: |
| | self.betas = np.asarray(trained_betas) |
| | elif beta_schedule == "linear": |
| | self.betas = np.linspace(beta_start, beta_end, num_train_timesteps, dtype=np.float32) |
| | elif beta_schedule == "scaled_linear": |
| | |
| | self.betas = np.linspace(beta_start**0.5, beta_end**0.5, num_train_timesteps, dtype=np.float32) ** 2 |
| | elif beta_schedule == "squaredcos_cap_v2": |
| | |
| | self.betas = betas_for_alpha_bar(num_train_timesteps) |
| | else: |
| | raise NotImplementedError(f"{beta_schedule} does is not implemented for {self.__class__}") |
| |
|
| | self.alphas = 1.0 - self.betas |
| | self.alphas_cumprod = np.cumprod(self.alphas, axis=0) |
| | self.one = np.array(1.0) |
| |
|
| | |
| | self.num_inference_steps = None |
| | self.timesteps = np.arange(0, num_train_timesteps)[::-1].copy() |
| |
|
| | self.tensor_format = tensor_format |
| | self.set_format(tensor_format=tensor_format) |
| |
|
| | self.variance_type = variance_type |
| |
|
| | def set_timesteps(self, num_inference_steps: int): |
| | """ |
| | Sets the discrete timesteps used for the diffusion chain. Supporting function to be run before inference. |
| | |
| | Args: |
| | num_inference_steps (`int`): |
| | the number of diffusion steps used when generating samples with a pre-trained model. |
| | """ |
| | num_inference_steps = min(self.config.num_train_timesteps, num_inference_steps) |
| | self.num_inference_steps = num_inference_steps |
| | self.timesteps = np.arange( |
| | 0, self.config.num_train_timesteps, self.config.num_train_timesteps // self.num_inference_steps |
| | )[::-1].copy() |
| | self.set_format(tensor_format=self.tensor_format) |
| |
|
| | def _get_variance(self, t, predicted_variance=None, variance_type=None): |
| | alpha_prod_t = self.alphas_cumprod[t] |
| | alpha_prod_t_prev = self.alphas_cumprod[t - 1] if t > 0 else self.one |
| |
|
| | |
| | |
| | |
| | variance = (1 - alpha_prod_t_prev) / (1 - alpha_prod_t) * self.betas[t] |
| |
|
| | if variance_type is None: |
| | variance_type = self.config.variance_type |
| |
|
| | |
| | if variance_type == "fixed_small": |
| | variance = self.clip(variance, min_value=1e-20) |
| | |
| | elif variance_type == "fixed_small_log": |
| | variance = self.log(self.clip(variance, min_value=1e-20)) |
| | elif variance_type == "fixed_large": |
| | variance = self.betas[t] |
| | elif variance_type == "fixed_large_log": |
| | |
| | variance = self.log(self.betas[t]) |
| | elif variance_type == "learned": |
| | return predicted_variance |
| | elif variance_type == "learned_range": |
| | min_log = variance |
| | max_log = self.betas[t] |
| | frac = (predicted_variance + 1) / 2 |
| | variance = frac * max_log + (1 - frac) * min_log |
| |
|
| | return variance |
| |
|
| | def step( |
| | self, |
| | model_output: Union[torch.FloatTensor, np.ndarray], |
| | timestep: int, |
| | sample: Union[torch.FloatTensor, np.ndarray], |
| | predict_epsilon=True, |
| | generator=None, |
| | return_dict: bool = True, |
| | ) -> Union[SchedulerOutput, Tuple]: |
| | """ |
| | Predict the sample at the previous timestep by reversing the SDE. Core function to propagate the diffusion |
| | process from the learned model outputs (most often the predicted noise). |
| | |
| | Args: |
| | model_output (`torch.FloatTensor` or `np.ndarray`): direct output from learned diffusion model. |
| | timestep (`int`): current discrete timestep in the diffusion chain. |
| | sample (`torch.FloatTensor` or `np.ndarray`): |
| | current instance of sample being created by diffusion process. |
| | eta (`float`): weight of noise for added noise in diffusion step. |
| | predict_epsilon (`bool`): |
| | optional flag to use when model predicts the samples directly instead of the noise, epsilon. |
| | generator: random number generator. |
| | return_dict (`bool`): option for returning tuple rather than SchedulerOutput class |
| | |
| | Returns: |
| | [`~schedulers.scheduling_utils.SchedulerOutput`] or `tuple`: |
| | [`~schedulers.scheduling_utils.SchedulerOutput`] if `return_dict` is True, otherwise a `tuple`. When |
| | returning a tuple, the first element is the sample tensor. |
| | |
| | """ |
| | t = timestep |
| |
|
| | if model_output.shape[1] == sample.shape[1] * 2 and self.variance_type in ["learned", "learned_range"]: |
| | model_output, predicted_variance = torch.split(model_output, sample.shape[1], dim=1) |
| | else: |
| | predicted_variance = None |
| |
|
| | |
| | alpha_prod_t = self.alphas_cumprod[t] |
| | alpha_prod_t_prev = self.alphas_cumprod[t - 1] if t > 0 else self.one |
| | beta_prod_t = 1 - alpha_prod_t |
| | beta_prod_t_prev = 1 - alpha_prod_t_prev |
| |
|
| | |
| | |
| | if predict_epsilon: |
| | pred_original_sample = (sample - beta_prod_t ** (0.5) * model_output) / alpha_prod_t ** (0.5) |
| | else: |
| | pred_original_sample = model_output |
| |
|
| | |
| | if self.config.clip_sample: |
| | pred_original_sample = self.clip(pred_original_sample, -1, 1) |
| |
|
| | |
| | |
| | pred_original_sample_coeff = (alpha_prod_t_prev ** (0.5) * self.betas[t]) / beta_prod_t |
| | current_sample_coeff = self.alphas[t] ** (0.5) * beta_prod_t_prev / beta_prod_t |
| |
|
| | |
| | |
| | pred_prev_sample = pred_original_sample_coeff * pred_original_sample + current_sample_coeff * sample |
| |
|
| | |
| | variance = 0 |
| | if t > 0: |
| | noise = self.randn_like(model_output, generator=generator) |
| | variance = (self._get_variance(t, predicted_variance=predicted_variance) ** 0.5) * noise |
| |
|
| | pred_prev_sample = pred_prev_sample + variance |
| |
|
| | if not return_dict: |
| | return (pred_prev_sample,) |
| |
|
| | return SchedulerOutput(prev_sample=pred_prev_sample) |
| |
|
| | def add_noise( |
| | self, |
| | original_samples: Union[torch.FloatTensor, np.ndarray], |
| | noise: Union[torch.FloatTensor, np.ndarray], |
| | timesteps: Union[torch.IntTensor, np.ndarray], |
| | ) -> Union[torch.FloatTensor, np.ndarray]: |
| |
|
| | sqrt_alpha_prod = self.alphas_cumprod[timesteps] ** 0.5 |
| | sqrt_alpha_prod = self.match_shape(sqrt_alpha_prod, original_samples) |
| | sqrt_one_minus_alpha_prod = (1 - self.alphas_cumprod[timesteps]) ** 0.5 |
| | sqrt_one_minus_alpha_prod = self.match_shape(sqrt_one_minus_alpha_prod, original_samples) |
| |
|
| | noisy_samples = sqrt_alpha_prod * original_samples + sqrt_one_minus_alpha_prod * noise |
| | return noisy_samples |
| |
|
| | def __len__(self): |
| | return self.config.num_train_timesteps |
| |
|