minerva.models.nets.wisenet

Classes

WiseNet

Simple pipeline for supervised models.

_WiseNet

Module Contents

class minerva.models.nets.wisenet.WiseNet(in_channels=1, out_channels=1, loss_fn=None, learning_rate=0.001, **kwargs)

Bases: minerva.models.nets.base.SimpleSupervisedModel

Simple pipeline for supervised models.

This class implements a very common deep learning pipeline, which is composed by the following steps:

  1. Make a forward pass with the input data on the backbone model;

  2. Make a forward pass with the input data on the fc model;

  3. Compute the loss between the output and the label data;

  4. Optimize the model (backbone and FC) parameters with respect to the loss.

This reduces the code duplication for autoencoder models, and makes it easier to implement new models by only changing the backbone model. More complex models, that does not follow this pipeline, should not inherit from this class. Note that, for this class the input data is a tuple of tensors, where the first tensor is the input data and the second tensor is the mask or label.

Initialize the model with the backbone, fc, loss function and metrics. Metrics are used to evaluate the model during training, validation, testing or prediction. It will be logged using lightning logger at the end of each epoch. Metrics should implement the torchmetrics.Metric interface.

Parameters

backbonetorch.nn.Module

The backbone model. Usually the encoder/decoder part of the model.

fctorch.nn.Module

The fully connected model, usually used to classification tasks. Use torch.nn.Identity() if no FC model is needed.

loss_fntorch.nn.Module

The function used to compute the loss.

learning_ratefloat, optional

The learning rate to Adam optimizer, by default 1e-3

flattenbool, optional

If True the input data will be flattened before passing through the fc model, by default True

train_metricsDict[str, Metric], optional

The metrics to be used during training, by default None

val_metricsDict[str, Metric], optional

The metrics to be used during validation, by default None

test_metricsDict[str, Metric], optional

The metrics to be used during testing, by default None

predict_metricsDict[str, Metric], optional

The metrics to be used during prediction, by default None

_single_step(batch, batch_idx, step_name)

Perform a single train/validation/test step. It consists in making a forward pass with the input data on the backbone model, computing the loss between the output and the input data, and logging the loss.

Parameters

batchtorch.Tensor

The input data. It must be a 2-element tuple of tensors, where the first tensor is the input data and the second tensor is the mask.

batch_idxint

The index of the batch.

step_namestr

The name of the step. It will be used to log the loss. The possible values are: “train”, “val” and “test”. The loss will be logged as “{step_name}_loss”.

Returns

torch.Tensor

A tensor with the loss value.

Parameters:
  • batch (torch.Tensor)

  • batch_idx (int)

  • step_name (str)

Return type:

torch.Tensor

predict_step(batch, batch_idx, dataloader_idx=None)
Parameters:
  • in_channels (int)

  • out_channels (int)

  • loss_fn (torch.nn.Module)

  • learning_rate (float)

class minerva.models.nets.wisenet._WiseNet(in_channels=1, out_channels=1)

Bases: torch.nn.Module

forward(x)