Source code for pythae.samplers.normal_sampling.normal_sampler

import torch

from ...models import BaseAE
from ..base import BaseSampler
from .normal_config import NormalSamplerConfig


[docs]class NormalSampler(BaseSampler): """Samples from a Standard normal distribution in the Autoencoder's latent space. Args: model (BaseAE): The vae model to sample from. sampler_config (BaseSamplerConfig): An instance of BaseSamplerConfig in which any sampler's parameters is made available. If None a default configuration is used. Default: None """ def __init__(self, model: BaseAE, sampler_config: NormalSamplerConfig = None): if sampler_config is None: sampler_config = NormalSamplerConfig() BaseSampler.__init__(self, model=model, sampler_config=sampler_config)
[docs] def sample( self, num_samples: int = 1, batch_size: int = 500, output_dir: str = None, return_gen: bool = True, save_sampler_config: bool = False, ) -> torch.Tensor: """Main sampling function of the sampler. Args: num_samples (int): The number of samples to generate batch_size (int): The batch size to use during sampling output_dir (str): The directory where the images will be saved. If does not exist the folder is created. If None: the images are not saved. Defaults: None. return_gen (bool): Whether the sampler should directly return a tensor of generated data. Default: True. save_sampler_config (bool): Whether to save the sampler config. It is saved in output_dir. Returns: ~torch.Tensor: The generated images """ full_batch_nbr = int(num_samples / batch_size) last_batch_samples_nbr = num_samples % batch_size x_gen_list = [] for i in range(full_batch_nbr): z = torch.randn(batch_size, self.model.latent_dim).to(self.device) x_gen = self.model.decoder(z)["reconstruction"].detach() if output_dir is not None: for j in range(batch_size): self.save_img( x_gen[j], output_dir, "%08d.png" % int(batch_size * i + j) ) x_gen_list.append(x_gen) if last_batch_samples_nbr > 0: z = torch.randn(last_batch_samples_nbr, self.model.latent_dim).to( self.device ) x_gen = self.model.decoder(z)["reconstruction"].detach() if output_dir is not None: for j in range(last_batch_samples_nbr): self.save_img( x_gen[j], output_dir, "%08d.png" % int(batch_size * full_batch_nbr + j), ) x_gen_list.append(x_gen) if save_sampler_config: self.save(output_dir) if return_gen: return torch.cat(x_gen_list, dim=0)