ConvDecoder¶
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class
behavenet.models.decoders.ConvDecoder(hparams)[source]¶ Bases:
behavenet.models.base.BaseModelDecode images from predictors with a convolutional decoder.
Methods Summary
Construct the model using hparams.
forward(x[, dataset])Process input data.
loss(data[, dataset, accumulate_grad, …])Calculate MSE loss for convolutional decoder.
Methods Documentation
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forward(x, dataset=None, **kwargs)[source]¶ Process input data.
- Parameters
x (
torch.Tensorobject) – input datadataset (
int) – used with session-specific io layers
- Returns
y (
torch.Tensor): output of shape (n_frames, n_channels, y_pix, x_pix)x (
torch.Tensor): hidden representation of shape (n_frames, n_latents)
- Return type
tuple
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loss(data, dataset=0, accumulate_grad=True, chunk_size=200)[source]¶ Calculate MSE loss for convolutional decoder.
The batch is split into chunks if larger than a hard-coded chunk_size to keep memory requirements low; gradients are accumulated across all chunks before a gradient step is taken.
- Parameters
data (
dict) – batch of data; keys should include ‘labels’, ‘images’ and ‘masks’, if necessarydataset (
int, optional) – used for session-specific io layersaccumulate_grad (
bool, optional) – accumulate gradient for training stepchunk_size (
int, optional) – batch is split into chunks of this size to keep memory requirements low
- Returns
‘loss’ (
float): mse loss
- Return type
dict
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