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|
| """Various sampling methods."""
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| from scipy import integrate
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| import torch
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|
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| from .predictors import Predictor, PredictorRegistry, ReverseDiffusionPredictor
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| from .correctors import Corrector, CorrectorRegistry
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|
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| __all__ = [
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| 'PredictorRegistry', 'CorrectorRegistry', 'Predictor', 'Corrector',
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| 'get_sampler'
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| ]
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|
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|
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| def to_flattened_numpy(x):
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| """Flatten a torch tensor `x` and convert it to numpy."""
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| return x.detach().cpu().numpy().reshape((-1,))
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|
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|
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| def from_flattened_numpy(x, shape):
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| """Form a torch tensor with the given `shape` from a flattened numpy array `x`."""
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| return torch.from_numpy(x.reshape(shape))
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|
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|
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| def get_pc_sampler(
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| predictor_name, corrector_name, sde, score_fn, y,
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| denoise=True, eps=3e-2, snr=0.1, corrector_steps=1, probability_flow: bool = False,
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| intermediate=False, **kwargs
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| ):
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| """Create a Predictor-Corrector (PC) sampler.
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|
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| Args:
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| predictor_name: The name of a registered `sampling.Predictor`.
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| corrector_name: The name of a registered `sampling.Corrector`.
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| sde: An `sdes.SDE` object representing the forward SDE.
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| score_fn: A function (typically learned model) that predicts the score.
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| y: A `torch.Tensor`, representing the (non-white-)noisy starting point(s) to condition the prior on.
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| denoise: If `True`, add one-step denoising to the final samples.
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| eps: A `float` number. The reverse-time SDE and ODE are integrated to `epsilon` to avoid numerical issues.
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| snr: The SNR to use for the corrector. 0.1 by default, and ignored for `NoneCorrector`.
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| N: The number of reverse sampling steps. If `None`, uses the SDE's `N` property by default.
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|
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| Returns:
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| A sampling function that returns samples and the number of function evaluations during sampling.
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| """
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| predictor_cls = PredictorRegistry.get_by_name(predictor_name)
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| corrector_cls = CorrectorRegistry.get_by_name(corrector_name)
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| predictor = predictor_cls(sde, score_fn, probability_flow=probability_flow)
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| corrector = corrector_cls(sde, score_fn, snr=snr, n_steps=corrector_steps)
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|
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| def pc_sampler():
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| """The PC sampler function."""
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| with torch.no_grad():
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| xt = sde.prior_sampling(y.shape, y).to(y.device)
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| timesteps = torch.linspace(sde.T, eps, sde.N, device=y.device)
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| for i in range(sde.N):
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| t = timesteps[i]
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| if i != len(timesteps) - 1:
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| stepsize = t - timesteps[i+1]
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| else:
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| stepsize = timesteps[-1]
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| vec_t = torch.ones(y.shape[0], device=y.device) * t
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| xt, xt_mean = corrector.update_fn(xt, y, vec_t)
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| xt, xt_mean = predictor.update_fn(xt, y, vec_t, stepsize)
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| x_result = xt_mean if denoise else xt
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| ns = sde.N * (corrector.n_steps + 1)
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| return x_result, ns
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|
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| return pc_sampler
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|
|
| def get_ode_sampler(
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| sde, score_fn, y, inverse_scaler=None,
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| denoise=True, rtol=1e-5, atol=1e-5,
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| method='RK45', eps=3e-2, device='cuda', **kwargs
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| ):
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| """Probability flow ODE sampler with the black-box ODE solver.
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|
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| Args:
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| sde: An `sdes.SDE` object representing the forward SDE.
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| score_fn: A function (typically learned model) that predicts the score.
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| y: A `torch.Tensor`, representing the (non-white-)noisy starting point(s) to condition the prior on.
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| inverse_scaler: The inverse data normalizer.
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| denoise: If `True`, add one-step denoising to final samples.
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| rtol: A `float` number. The relative tolerance level of the ODE solver.
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| atol: A `float` number. The absolute tolerance level of the ODE solver.
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| method: A `str`. The algorithm used for the black-box ODE solver.
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| See the documentation of `scipy.integrate.solve_ivp`.
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| eps: A `float` number. The reverse-time SDE/ODE will be integrated to `eps` for numerical stability.
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| device: PyTorch device.
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|
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| Returns:
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| A sampling function that returns samples and the number of function evaluations during sampling.
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| """
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| predictor = ReverseDiffusionPredictor(sde, score_fn, probability_flow=False)
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| rsde = sde.reverse(score_fn, probability_flow=True)
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|
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| def denoise_update_fn(x):
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| vec_eps = torch.ones(x.shape[0], device=x.device) * eps
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| _, x = predictor.update_fn(x, y, vec_eps)
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| return x
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|
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| def drift_fn(x, y, t):
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| """Get the drift function of the reverse-time SDE."""
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| return rsde.sde(x, y, t)[0]
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|
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| def ode_sampler(z=None, **kwargs):
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| """The probability flow ODE sampler with black-box ODE solver.
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| Args:
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| model: A score model.
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| z: If present, generate samples from latent code `z`.
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| Returns:
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| samples, number of function evaluations.
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| """
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| with torch.no_grad():
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| x = sde.prior_sampling(y.shape, y).to(device)
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|
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| def ode_func(t, x):
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| x = from_flattened_numpy(x, y.shape).to(device).type(torch.complex64)
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| vec_t = torch.ones(y.shape[0], device=x.device) * t
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| drift = drift_fn(x, y, vec_t)
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| return to_flattened_numpy(drift)
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| solution = integrate.solve_ivp(
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| ode_func, (sde.T, eps), to_flattened_numpy(x),
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| rtol=rtol, atol=atol, method=method, **kwargs
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| )
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| nfe = solution.nfev
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| x = torch.tensor(solution.y[:, -1]).reshape(y.shape).to(device).type(torch.complex64)
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| if denoise:
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| x = denoise_update_fn(x)
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|
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| if inverse_scaler is not None:
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| x = inverse_scaler(x)
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| return x, nfe
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|
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| return ode_sampler
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|
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| def get_sb_sampler(sde, model, y, eps=1e-4, n_steps=50, sampler_type="ode", **kwargs):
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|
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| def sde_sampler():
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| """The SB-SDE sampler function."""
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| with torch.no_grad():
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| xt = y[:, [0], :, :]
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| time_steps = torch.linspace(sde.T, eps, sde.N + 1, device=y.device)
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| time_prev = time_steps[0] * torch.ones(xt.shape[0], device=xt.device)
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| sigma_prev, sigma_T, sigma_bar_prev, alpha_prev, alpha_T, alpha_bar_prev = sde._sigmas_alphas(time_prev)
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| for t in time_steps[1:]:
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| time = t * torch.ones(xt.shape[0], device=xt.device)
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| sigma_t, sigma_T, sigma_bart, alpha_t, alpha_T, alpha_bart = sde._sigmas_alphas(time)
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| current_estimate = model(xt, y, time)
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| weight_prev = alpha_t * sigma_t**2 / (alpha_prev * sigma_prev**2 + sde.eps)
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| tmp = 1 - sigma_t**2 / (sigma_prev**2 + sde.eps)
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| weight_estimate = alpha_t * tmp
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| weight_z = alpha_t * sigma_t * torch.sqrt(tmp)
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| weight_prev = weight_prev[:, None, None, None]
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| weight_estimate = weight_estimate[:, None, None, None]
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| weight_z = weight_z[:, None, None, None]
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| z_norm = torch.randn_like(xt)
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|
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| if t == time_steps[-1]:
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| weight_z = 0.0
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| xt = weight_prev * xt + weight_estimate * current_estimate + weight_z * z_norm
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| time_prev = time
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| alpha_prev = alpha_t
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| sigma_prev = sigma_t
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| sigma_bar_prev = sigma_bart
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|
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| return xt, n_steps
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|
|
| def ode_sampler():
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| """The SB-ODE sampler function."""
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| with torch.no_grad():
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| xt = y
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| time_steps = torch.linspace(sde.T, eps, sde.N + 1, device=y.device)
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|
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| time_prev = time_steps[0] * torch.ones(xt.shape[0], device=xt.device)
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| sigma_prev, sigma_T, sigma_bar_prev, alpha_prev, alpha_T, alpha_bar_prev = sde._sigmas_alphas(time_prev)
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|
|
| for t in time_steps[1:]:
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|
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| time = t * torch.ones(xt.shape[0], device=xt.device)
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| sigma_t, sigma_T, sigma_bart, alpha_t, alpha_T, alpha_bart = sde._sigmas_alphas(time)
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| current_estimate = model(xt, y, time)
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| weight_prev = alpha_t * sigma_t * sigma_bart / (alpha_prev * sigma_prev * sigma_bar_prev + sde.eps)
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| weight_estimate = (
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| alpha_t
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| / (sigma_T**2 + sde.eps)
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| * (sigma_bart**2 - sigma_bar_prev * sigma_t * sigma_bart / (sigma_prev + sde.eps))
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| )
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| weight_prior_mean = (
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| alpha_t
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| / (alpha_T * sigma_T**2 + sde.eps)
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| * (sigma_t**2 - sigma_prev * sigma_t * sigma_bart / (sigma_bar_prev + sde.eps))
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| )
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| weight_prev = weight_prev[:, None, None, None]
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| weight_estimate = weight_estimate[:, None, None, None]
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| weight_prior_mean = weight_prior_mean[:, None, None, None]
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| xt = weight_prev * xt + weight_estimate * current_estimate + weight_prior_mean * y
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| time_prev = time
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| alpha_prev = alpha_t
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| sigma_prev = sigma_t
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| sigma_bar_prev = sigma_bart
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| return xt, n_steps
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|
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| if sampler_type == "sde":
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| return sde_sampler
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| elif sampler_type == "ode":
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| return ode_sampler
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| else:
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| raise ValueError("Invalid type. Choose 'ode' or 'sde'.")
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|