| import tqdm
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| import torch
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| import comfy.k_diffusion.sampling
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| INITIALIZED = False
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| @torch.no_grad()
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| def sample_restart(model, x, sigmas, extra_args=None, callback=None, disable=None, s_noise=1., restart_list=None):
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| """Implements restart sampling in Restart Sampling for Improving Generative Processes (2023)
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| Restart_list format: {min_sigma: [ restart_steps, restart_times, max_sigma]}
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| If restart_list is None: will choose restart_list automatically, otherwise will use the given restart_list
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| """
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| extra_args = {} if extra_args is None else extra_args
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| s_in = x.new_ones([x.shape[0]])
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| step_id = 0
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| from comfy.k_diffusion.sampling import to_d, get_sigmas_karras
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|
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| def heun_step(x, old_sigma, new_sigma, second_order=True):
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| nonlocal step_id
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| denoised = model(x, old_sigma * s_in, **extra_args)
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| d = to_d(x, old_sigma, denoised)
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| if callback is not None:
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| callback({'x': x, 'i': step_id, 'sigma': new_sigma, 'sigma_hat': old_sigma, 'denoised': denoised})
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| dt = new_sigma - old_sigma
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| if new_sigma == 0 or not second_order:
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| x = x + d * dt
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| else:
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| x_2 = x + d * dt
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| denoised_2 = model(x_2, new_sigma * s_in, **extra_args)
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| d_2 = to_d(x_2, new_sigma, denoised_2)
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| d_prime = (d + d_2) / 2
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| x = x + d_prime * dt
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| step_id += 1
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| return x
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| steps = sigmas.shape[0] - 1
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| if restart_list is None:
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| if steps >= 20:
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| restart_steps = 9
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| restart_times = 1
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| if steps >= 36:
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| restart_steps = steps // 4
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| restart_times = 2
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| sigmas = get_sigmas_karras(steps - restart_steps * restart_times, sigmas[-2].item(), sigmas[0].item(), device=sigmas.device)
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| restart_list = {0.1: [restart_steps + 1, restart_times, 2]}
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| else:
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| restart_list = {}
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| restart_list = {int(torch.argmin(abs(sigmas - key), dim=0)): value for key, value in restart_list.items()}
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| step_list = []
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| for i in range(len(sigmas) - 1):
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| step_list.append((sigmas[i], sigmas[i + 1]))
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| if i + 1 in restart_list:
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| restart_steps, restart_times, restart_max = restart_list[i + 1]
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| min_idx = i + 1
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| max_idx = int(torch.argmin(abs(sigmas - restart_max), dim=0))
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| if max_idx < min_idx:
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| sigma_restart = get_sigmas_karras(restart_steps, sigmas[min_idx].item(), sigmas[max_idx].item(), device=sigmas.device)[:-1]
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| while restart_times > 0:
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| restart_times -= 1
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| step_list.extend(zip(sigma_restart[:-1], sigma_restart[1:]))
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| last_sigma = None
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| for old_sigma, new_sigma in tqdm.tqdm(step_list, disable=disable):
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| if last_sigma is None:
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| last_sigma = old_sigma
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| elif last_sigma < old_sigma:
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| x = x + comfy.k_diffusion.sampling.torch.randn_like(x) * s_noise * (old_sigma ** 2 - last_sigma ** 2) ** 0.5
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| x = heun_step(x, old_sigma, new_sigma)
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| last_sigma = new_sigma
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| return x
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