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import os |
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import math |
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import torch |
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import torch.nn as nn |
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import numpy as np |
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from einops import repeat, rearrange |
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from ldm_patched.ldm.util import instantiate_from_config |
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class AlphaBlender(nn.Module): |
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strategies = ["learned", "fixed", "learned_with_images"] |
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def __init__( |
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self, |
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alpha: float, |
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merge_strategy: str = "learned_with_images", |
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rearrange_pattern: str = "b t -> (b t) 1 1", |
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): |
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super().__init__() |
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self.merge_strategy = merge_strategy |
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self.rearrange_pattern = rearrange_pattern |
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assert ( |
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merge_strategy in self.strategies |
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), f"merge_strategy needs to be in {self.strategies}" |
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if self.merge_strategy == "fixed": |
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self.register_buffer("mix_factor", torch.Tensor([alpha])) |
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elif ( |
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self.merge_strategy == "learned" |
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or self.merge_strategy == "learned_with_images" |
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): |
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self.register_parameter( |
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"mix_factor", torch.nn.Parameter(torch.Tensor([alpha])) |
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) |
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else: |
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raise ValueError(f"unknown merge strategy {self.merge_strategy}") |
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def get_alpha(self, image_only_indicator: torch.Tensor) -> torch.Tensor: |
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if self.merge_strategy == "fixed": |
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alpha = self.mix_factor.to(image_only_indicator.device) |
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elif self.merge_strategy == "learned": |
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alpha = torch.sigmoid(self.mix_factor.to(image_only_indicator.device)) |
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elif self.merge_strategy == "learned_with_images": |
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assert image_only_indicator is not None, "need image_only_indicator ..." |
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alpha = torch.where( |
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image_only_indicator.bool(), |
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torch.ones(1, 1, device=image_only_indicator.device), |
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rearrange(torch.sigmoid(self.mix_factor.to(image_only_indicator.device)), "... -> ... 1"), |
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) |
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alpha = rearrange(alpha, self.rearrange_pattern) |
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else: |
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raise NotImplementedError() |
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return alpha |
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def forward( |
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self, |
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x_spatial, |
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x_temporal, |
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image_only_indicator=None, |
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) -> torch.Tensor: |
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alpha = self.get_alpha(image_only_indicator) |
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x = ( |
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alpha.to(x_spatial.dtype) * x_spatial |
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+ (1.0 - alpha).to(x_spatial.dtype) * x_temporal |
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) |
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return x |
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def make_beta_schedule(schedule, n_timestep, linear_start=1e-4, linear_end=2e-2, cosine_s=8e-3): |
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if schedule == "linear": |
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betas = ( |
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torch.linspace(linear_start ** 0.5, linear_end ** 0.5, n_timestep, dtype=torch.float64) ** 2 |
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) |
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elif schedule == "cosine": |
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timesteps = ( |
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torch.arange(n_timestep + 1, dtype=torch.float64) / n_timestep + cosine_s |
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) |
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alphas = timesteps / (1 + cosine_s) * np.pi / 2 |
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alphas = torch.cos(alphas).pow(2) |
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alphas = alphas / alphas[0] |
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betas = 1 - alphas[1:] / alphas[:-1] |
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betas = np.clip(betas, a_min=0, a_max=0.999) |
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elif schedule == "squaredcos_cap_v2": |
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return betas_for_alpha_bar( |
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n_timestep, |
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lambda t: math.cos((t + 0.008) / 1.008 * math.pi / 2) ** 2, |
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) |
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elif schedule == "sqrt_linear": |
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betas = torch.linspace(linear_start, linear_end, n_timestep, dtype=torch.float64) |
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elif schedule == "sqrt": |
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betas = torch.linspace(linear_start, linear_end, n_timestep, dtype=torch.float64) ** 0.5 |
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else: |
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raise ValueError(f"schedule '{schedule}' unknown.") |
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return betas.numpy() |
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def make_ddim_timesteps(ddim_discr_method, num_ddim_timesteps, num_ddpm_timesteps, verbose=True): |
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if ddim_discr_method == 'uniform': |
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c = num_ddpm_timesteps // num_ddim_timesteps |
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ddim_timesteps = np.asarray(list(range(0, num_ddpm_timesteps, c))) |
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elif ddim_discr_method == 'quad': |
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ddim_timesteps = ((np.linspace(0, np.sqrt(num_ddpm_timesteps * .8), num_ddim_timesteps)) ** 2).astype(int) |
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else: |
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raise NotImplementedError(f'There is no ddim discretization method called "{ddim_discr_method}"') |
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steps_out = ddim_timesteps + 1 |
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if verbose: |
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print(f'Selected timesteps for ddim sampler: {steps_out}') |
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return steps_out |
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def make_ddim_sampling_parameters(alphacums, ddim_timesteps, eta, verbose=True): |
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alphas = alphacums[ddim_timesteps] |
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alphas_prev = np.asarray([alphacums[0]] + alphacums[ddim_timesteps[:-1]].tolist()) |
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sigmas = eta * np.sqrt((1 - alphas_prev) / (1 - alphas) * (1 - alphas / alphas_prev)) |
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if verbose: |
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print(f'Selected alphas for ddim sampler: a_t: {alphas}; a_(t-1): {alphas_prev}') |
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print(f'For the chosen value of eta, which is {eta}, ' |
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f'this results in the following sigma_t schedule for ddim sampler {sigmas}') |
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return sigmas, alphas, alphas_prev |
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def betas_for_alpha_bar(num_diffusion_timesteps, alpha_bar, max_beta=0.999): |
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""" |
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Create a beta schedule that discretizes the given alpha_t_bar function, |
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which defines the cumulative product of (1-beta) over time from t = [0,1]. |
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:param num_diffusion_timesteps: the number of betas to produce. |
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:param alpha_bar: a lambda that takes an argument t from 0 to 1 and |
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produces the cumulative product of (1-beta) up to that |
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part of the diffusion process. |
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:param max_beta: the maximum beta to use; use values lower than 1 to |
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prevent singularities. |
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""" |
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betas = [] |
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for i in range(num_diffusion_timesteps): |
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t1 = i / num_diffusion_timesteps |
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t2 = (i + 1) / num_diffusion_timesteps |
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betas.append(min(1 - alpha_bar(t2) / alpha_bar(t1), max_beta)) |
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return np.array(betas) |
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def extract_into_tensor(a, t, x_shape): |
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b, *_ = t.shape |
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out = a.gather(-1, t) |
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return out.reshape(b, *((1,) * (len(x_shape) - 1))) |
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def checkpoint(func, inputs, params, flag): |
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""" |
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Evaluate a function without caching intermediate activations, allowing for |
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reduced memory at the expense of extra compute in the backward pass. |
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:param func: the function to evaluate. |
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:param inputs: the argument sequence to pass to `func`. |
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:param params: a sequence of parameters `func` depends on but does not |
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explicitly take as arguments. |
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:param flag: if False, disable gradient checkpointing. |
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""" |
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if flag: |
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args = tuple(inputs) + tuple(params) |
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return CheckpointFunction.apply(func, len(inputs), *args) |
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else: |
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return func(*inputs) |
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class CheckpointFunction(torch.autograd.Function): |
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@staticmethod |
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def forward(ctx, run_function, length, *args): |
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ctx.run_function = run_function |
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ctx.input_tensors = list(args[:length]) |
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ctx.input_params = list(args[length:]) |
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ctx.gpu_autocast_kwargs = {"enabled": torch.is_autocast_enabled(), |
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"dtype": torch.get_autocast_gpu_dtype(), |
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"cache_enabled": torch.is_autocast_cache_enabled()} |
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with torch.no_grad(): |
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output_tensors = ctx.run_function(*ctx.input_tensors) |
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return output_tensors |
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@staticmethod |
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def backward(ctx, *output_grads): |
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ctx.input_tensors = [x.detach().requires_grad_(True) for x in ctx.input_tensors] |
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with torch.enable_grad(), \ |
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torch.cuda.amp.autocast(**ctx.gpu_autocast_kwargs): |
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shallow_copies = [x.view_as(x) for x in ctx.input_tensors] |
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output_tensors = ctx.run_function(*shallow_copies) |
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input_grads = torch.autograd.grad( |
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output_tensors, |
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ctx.input_tensors + ctx.input_params, |
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output_grads, |
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allow_unused=True, |
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) |
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del ctx.input_tensors |
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del ctx.input_params |
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del output_tensors |
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return (None, None) + input_grads |
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def timestep_embedding(timesteps, dim, max_period=10000, repeat_only=False): |
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""" |
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Create sinusoidal timestep embeddings. |
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:param timesteps: a 1-D Tensor of N indices, one per batch element. |
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These may be fractional. |
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:param dim: the dimension of the output. |
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:param max_period: controls the minimum frequency of the embeddings. |
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:return: an [N x dim] Tensor of positional embeddings. |
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""" |
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if not repeat_only: |
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half = dim // 2 |
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freqs = torch.exp( |
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-math.log(max_period) * torch.arange(start=0, end=half, dtype=torch.float32, device=timesteps.device) / half |
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) |
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args = timesteps[:, None].float() * freqs[None] |
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embedding = torch.cat([torch.cos(args), torch.sin(args)], dim=-1) |
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if dim % 2: |
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embedding = torch.cat([embedding, torch.zeros_like(embedding[:, :1])], dim=-1) |
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else: |
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embedding = repeat(timesteps, 'b -> b d', d=dim) |
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return embedding |
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def zero_module(module): |
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""" |
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Zero out the parameters of a module and return it. |
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""" |
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for p in module.parameters(): |
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p.detach().zero_() |
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return module |
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def scale_module(module, scale): |
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""" |
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Scale the parameters of a module and return it. |
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""" |
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for p in module.parameters(): |
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p.detach().mul_(scale) |
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return module |
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def mean_flat(tensor): |
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""" |
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Take the mean over all non-batch dimensions. |
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""" |
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return tensor.mean(dim=list(range(1, len(tensor.shape)))) |
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def avg_pool_nd(dims, *args, **kwargs): |
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""" |
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Create a 1D, 2D, or 3D average pooling module. |
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""" |
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if dims == 1: |
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return nn.AvgPool1d(*args, **kwargs) |
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elif dims == 2: |
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return nn.AvgPool2d(*args, **kwargs) |
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elif dims == 3: |
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return nn.AvgPool3d(*args, **kwargs) |
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raise ValueError(f"unsupported dimensions: {dims}") |
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class HybridConditioner(nn.Module): |
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def __init__(self, c_concat_config, c_crossattn_config): |
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super().__init__() |
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self.concat_conditioner = instantiate_from_config(c_concat_config) |
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self.crossattn_conditioner = instantiate_from_config(c_crossattn_config) |
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def forward(self, c_concat, c_crossattn): |
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c_concat = self.concat_conditioner(c_concat) |
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c_crossattn = self.crossattn_conditioner(c_crossattn) |
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return {'c_concat': [c_concat], 'c_crossattn': [c_crossattn]} |
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def noise_like(shape, device, repeat=False): |
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repeat_noise = lambda: torch.randn((1, *shape[1:]), device=device).repeat(shape[0], *((1,) * (len(shape) - 1))) |
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noise = lambda: torch.randn(shape, device=device) |
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return repeat_noise() if repeat else noise() |
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