TrainLoader
- class lib.training.data.loader.TrainLoader(input_size: int, output_sizes: tuple[int, ...], color_order: T.Literal['bgr', 'rgb'], config: TrainConfig, sampler: None | type[tch_data.RandomSampler | tch_data.DistributedSampler] = None)
Bases:
objectGenerator for feeding faceswap models with multiple inputs and outputs. Gets the next items from each of the configured loaders and collates them for feeding into a model
- Parameters:
input_size (int) – The input size to the model
output_sizes (tuple[int, ...]) – The output sizes to the model (list as some models have multi-scale outputs)
color_order (T.Literal['bgr', 'rgb']) – The color order of the model
config (TrainConfig) – The training configuration for feeding the model
sampler (None | type[tch_data.RandomSampler | tch_data.DistributedSampler]) – The sampler to use for the data loaders. Default:
None(RandomSampler)
Methods Summary
Obtain the dataloaders for each input/output for the model
Methods Documentation
- get_loader() DataLoader
Obtain the dataloaders for each input/output for the model
- Return type:
The Training data loaders in side order
- __next__() tuple[list[torch.Tensor], list[torch.Tensor], BatchMeta]
Obtain the next outputs from the loader
- Returns:
inputs – list of len (num_inputs) tensors of shape(batch_size, H, W, C) inputs for the model
targets – List of len (num_outputs) of target images in shape (batch_size, num_inputs, height, width, 3) at all model output sizes as float32 0.0 - 1.0 range
meta – The meta information for the batch
- Return type:
tuple[list[torch.Tensor], list[torch.Tensor], BatchMeta]
- get_loader() DataLoader
Obtain the dataloaders for each input/output for the model
- Return type:
The Training data loaders in side order