| import pdb |
| from typing import Dict, Tuple |
|
|
| import jaxtyping |
| import torch |
| import typeguard |
| from jaxtyping import Float, jaxtyped |
|
|
| """ |
| Set of utility functions for data transformations. |
| """ |
|
|
|
|
| @jaxtyped(typechecker=typeguard.typechecked) |
| def collapse_time_and_channels( |
| x: Float[torch.Tensor, "time channel xspace yspace"], |
| ) -> Float[torch.Tensor, "time*channel xspace yspace"]: |
| """ |
| Collapses the time and channel dimensions of a tensor into a single dimension. |
| NOTE: This is only applicable to 2D systems and this is NOT batched! |
| We do this to be compatible with FNO. FNO can't handle multiple function outputs |
| at once since we're already using the channel dimension to represent time. |
| :param x: Input tensor of shape (time, channel, xspace, yspace). |
| :return: Output tensor of shape (time*channel, xspace, yspace). |
| """ |
| x_flattened = torch.flatten(x, start_dim=0, end_dim=1) |
| return x_flattened |
|
|
|
|
| @jaxtyped(typechecker=typeguard.typechecked) |
| def collapse_time_and_channels_torch_transform( |
| batch: Tuple[ |
| Float[torch.Tensor, "time_n_past in_channels xspace yspace"], |
| Float[torch.Tensor, "time_n_fut out_channels xspace yspace"], |
| Dict[ |
| str, Float[torch.Tensor, "param"] | Float[torch.Tensor, "xspace yspace 1"] |
| ], |
| ], |
| ) -> Tuple[ |
| Float[torch.Tensor, "time_n_past*in_channels xspace yspace"], |
| Float[torch.Tensor, "time_n_fut*out_channels xspace yspace"], |
| Dict[str, Float[torch.Tensor, "param"] | Float[torch.Tensor, "xspace yspace 1"]], |
| ]: |
| """ |
| Wrapper for ```collapse_time_and_channels``` to be used with PyTorch's dataloader transforms. |
| Accepts a batch and for the first two elements of the batch, collapses the time and channel dimensions. |
| :param batch: Tuple of (input, target, pde_params). |
| :return: Tuple of (input, target, pde_params) |
| """ |
| input, target, pde_params = batch |
| input = collapse_time_and_channels(input) |
| target = collapse_time_and_channels(target) |
| return input, target, pde_params |
|
|
|
|
| @jaxtyped(typechecker=typeguard.typechecked) |
| def expand_time_and_channels( |
| x: Float[torch.Tensor, "timexchannel xspace yspace"], |
| num_channels: int = -1, |
| num_timesteps: int = -1, |
| ) -> Float[torch.Tensor, "time channel xspace yspace"]: |
| """ |
| Expands the time and channel dimensions of a tensor into separate dimensions. |
| Either number of channels or number of timesteps must be specified. |
| NOTE: This is only applicable to 2D systems. |
| :param x: Input tensor of shape (time*channel, xspace, yspace). |
| :param num_channels: Number of channels to expand to. OPTIONAL if num_timesteps is specified. |
| :param num_timesteps: Number of timesteps to expand to. OPTIONAL if num_channels is specified. |
| :return: Output tensor of shape (time, channel, xspace, yspace). |
| """ |
| assert ( |
| num_channels != -1 or num_timesteps != -1 |
| ), "Either num_channels or num_timesteps must be specified!" |
| if num_channels != -1: |
| |
| x_unflattened = torch.unflatten(x, 0, (-1, num_channels)) |
| else: |
| |
| x_unflattened = torch.unflatten(x, 0, (num_timesteps, -1)) |
| return x_unflattened |
|
|