DilatedTCN¶
- class daart.models.tcn.DilatedTCN(hparams, type='encoder', in_size=None, hid_size=None, out_size=None)[source]¶
Bases:
BaseModelTemporal Convolutional Model with dilated convolutions and no temporal downsampling.
Code adapted from: https://www.kaggle.com/ceshine/pytorch-temporal-convolutional-networks
Methods Summary
build_decoder(in_size, hid_size, out_size)Construct the decoder using hparams.
build_encoder(in_size, hid_size, out_size)Construct encoder model using hparams.
forward(x, **kwargs)Process input data.
Methods Documentation
- forward(x, **kwargs)[source]¶
Process input data.
- Parameters:
x (torch.Tensor object) – input data of shape (n_sequences, sequence_length, n_markers)
- Returns:
shape (n_sequences, sequence_length, n) where n is the embedding dimension if an encoder, or n_markers if a decoder/predictor
- Return type:
torch.Tensor