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| import torch |
| import numpy as np |
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| def edm2t(edm_steps, epsilon_s=1e-3, sigma_min=0.002, sigma_max=80): |
| vp_sigma = lambda beta_d, beta_min: lambda t: (np.e ** (0.5 * beta_d * (t ** 2) + beta_min * t) - 1) ** 0.5 |
| vp_sigma_inv = lambda beta_d, beta_min: lambda sigma: ((beta_min ** 2 + 2 * beta_d * (sigma ** 2 + 1).log()).sqrt() - beta_min) / beta_d |
| vp_beta_d = 2 * (np.log(torch.tensor(sigma_min).cpu() ** 2 + 1) / epsilon_s - np.log(torch.tensor(sigma_max).cpu() ** 2 + 1)) / (epsilon_s - 1) |
| vp_beta_min = np.log(torch.tensor(sigma_max).cpu() ** 2 + 1) - 0.5 * vp_beta_d |
| t_steps = vp_sigma_inv(vp_beta_d.clone().detach().cpu(), vp_beta_min.clone().detach().cpu())(edm_steps.clone().detach().cpu()) |
| return t_steps, vp_beta_min, vp_beta_d + vp_beta_min |
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| def cal_poly(prev_t, j, taus): |
| poly = 1 |
| for k in range(prev_t.shape[0]): |
| if k == j: |
| continue |
| poly *= (taus - prev_t[k]) / (prev_t[j] - prev_t[k]) |
| return poly |
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| def t2alpha_fn(beta_0, beta_1, t): |
| return torch.exp(-0.5 * t ** 2 * (beta_1 - beta_0) - t * beta_0) |
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| def cal_intergrand(beta_0, beta_1, taus): |
| with torch.inference_mode(mode=False): |
| taus = taus.clone() |
| beta_0 = beta_0.clone() |
| beta_1 = beta_1.clone() |
| with torch.enable_grad(): |
| taus.requires_grad_(True) |
| alpha = t2alpha_fn(beta_0, beta_1, taus) |
| log_alpha = alpha.log() |
| log_alpha.sum().backward() |
| d_log_alpha_dtau = taus.grad |
| integrand = -0.5 * d_log_alpha_dtau / torch.sqrt(alpha * (1 - alpha)) |
| return integrand |
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| def get_deis_coeff_list(t_steps, max_order, N=10000, deis_mode='tab'): |
| """ |
| Get the coefficient list for DEIS sampling. |
| |
| Args: |
| t_steps: A pytorch tensor. The time steps for sampling. |
| max_order: A `int`. Maximum order of the solver. 1 <= max_order <= 4 |
| N: A `int`. Use how many points to perform the numerical integration when deis_mode=='tab'. |
| deis_mode: A `str`. Select between 'tab' and 'rhoab'. Type of DEIS. |
| Returns: |
| A pytorch tensor. A batch of generated samples or sampling trajectories if return_inters=True. |
| """ |
| if deis_mode == 'tab': |
| t_steps, beta_0, beta_1 = edm2t(t_steps) |
| C = [] |
| for i, (t_cur, t_next) in enumerate(zip(t_steps[:-1], t_steps[1:])): |
| order = min(i+1, max_order) |
| if order == 1: |
| C.append([]) |
| else: |
| taus = torch.linspace(t_cur, t_next, N) |
| dtau = (t_next - t_cur) / N |
| prev_t = t_steps[[i - k for k in range(order)]] |
| coeff_temp = [] |
| integrand = cal_intergrand(beta_0, beta_1, taus) |
| for j in range(order): |
| poly = cal_poly(prev_t, j, taus) |
| coeff_temp.append(torch.sum(integrand * poly) * dtau) |
| C.append(coeff_temp) |
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| elif deis_mode == 'rhoab': |
| |
| def get_def_intergral_2(a, b, start, end, c): |
| coeff = (end**3 - start**3) / 3 - (end**2 - start**2) * (a + b) / 2 + (end - start) * a * b |
| return coeff / ((c - a) * (c - b)) |
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| def get_def_intergral_3(a, b, c, start, end, d): |
| coeff = (end**4 - start**4) / 4 - (end**3 - start**3) * (a + b + c) / 3 \ |
| + (end**2 - start**2) * (a*b + a*c + b*c) / 2 - (end - start) * a * b * c |
| return coeff / ((d - a) * (d - b) * (d - c)) |
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| C = [] |
| for i, (t_cur, t_next) in enumerate(zip(t_steps[:-1], t_steps[1:])): |
| order = min(i, max_order) |
| if order == 0: |
| C.append([]) |
| else: |
| prev_t = t_steps[[i - k for k in range(order+1)]] |
| if order == 1: |
| coeff_cur = ((t_next - prev_t[1])**2 - (t_cur - prev_t[1])**2) / (2 * (t_cur - prev_t[1])) |
| coeff_prev1 = (t_next - t_cur)**2 / (2 * (prev_t[1] - t_cur)) |
| coeff_temp = [coeff_cur, coeff_prev1] |
| elif order == 2: |
| coeff_cur = get_def_intergral_2(prev_t[1], prev_t[2], t_cur, t_next, t_cur) |
| coeff_prev1 = get_def_intergral_2(t_cur, prev_t[2], t_cur, t_next, prev_t[1]) |
| coeff_prev2 = get_def_intergral_2(t_cur, prev_t[1], t_cur, t_next, prev_t[2]) |
| coeff_temp = [coeff_cur, coeff_prev1, coeff_prev2] |
| elif order == 3: |
| coeff_cur = get_def_intergral_3(prev_t[1], prev_t[2], prev_t[3], t_cur, t_next, t_cur) |
| coeff_prev1 = get_def_intergral_3(t_cur, prev_t[2], prev_t[3], t_cur, t_next, prev_t[1]) |
| coeff_prev2 = get_def_intergral_3(t_cur, prev_t[1], prev_t[3], t_cur, t_next, prev_t[2]) |
| coeff_prev3 = get_def_intergral_3(t_cur, prev_t[1], prev_t[2], t_cur, t_next, prev_t[3]) |
| coeff_temp = [coeff_cur, coeff_prev1, coeff_prev2, coeff_prev3] |
| C.append(coeff_temp) |
| return C |
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