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| import torch |
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| def calc_mean_invstddev(feature): |
| if len(feature.size()) != 2: |
| raise ValueError("We expect the input feature to be 2-D tensor") |
| mean = feature.mean(0) |
| var = feature.var(0) |
| |
| eps = 1e-8 |
| if (var < eps).any(): |
| return mean, 1.0 / (torch.sqrt(var) + eps) |
| return mean, 1.0 / torch.sqrt(var) |
|
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|
|
| def apply_mv_norm(features): |
| |
| |
| if features.size(0) < 2: |
| return features |
| mean, invstddev = calc_mean_invstddev(features) |
| res = (features - mean) * invstddev |
| return res |
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|
| def lengths_to_encoder_padding_mask(lengths, batch_first=False): |
| """ |
| convert lengths (a 1-D Long/Int tensor) to 2-D binary tensor |
| |
| Args: |
| lengths: a (B, )-shaped tensor |
| |
| Return: |
| max_length: maximum length of B sequences |
| encoder_padding_mask: a (max_length, B) binary mask, where |
| [t, b] = 0 for t < lengths[b] and 1 otherwise |
| |
| TODO: |
| kernelize this function if benchmarking shows this function is slow |
| """ |
| max_lengths = torch.max(lengths).item() |
| bsz = lengths.size(0) |
| encoder_padding_mask = torch.arange( |
| max_lengths |
| ).to( |
| lengths.device |
| ).view( |
| 1, max_lengths |
| ).expand( |
| bsz, -1 |
| ) >= lengths.view( |
| bsz, 1 |
| ).expand( |
| -1, max_lengths |
| ) |
| if not batch_first: |
| return encoder_padding_mask.t(), max_lengths |
| else: |
| return encoder_padding_mask, max_lengths |
|
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|
|
| def encoder_padding_mask_to_lengths( |
| encoder_padding_mask, max_lengths, batch_size, device |
| ): |
| """ |
| convert encoder_padding_mask (2-D binary tensor) to a 1-D tensor |
| |
| Conventionally, encoder output contains a encoder_padding_mask, which is |
| a 2-D mask in a shape (T, B), whose (t, b) element indicate whether |
| encoder_out[t, b] is a valid output (=0) or not (=1). Occasionally, we |
| need to convert this mask tensor to a 1-D tensor in shape (B, ), where |
| [b] denotes the valid length of b-th sequence |
| |
| Args: |
| encoder_padding_mask: a (T, B)-shaped binary tensor or None; if None, |
| indicating all are valid |
| Return: |
| seq_lengths: a (B,)-shaped tensor, where its (b, )-th element is the |
| number of valid elements of b-th sequence |
| |
| max_lengths: maximum length of all sequence, if encoder_padding_mask is |
| not None, max_lengths must equal to encoder_padding_mask.size(0) |
| |
| batch_size: batch size; if encoder_padding_mask is |
| not None, max_lengths must equal to encoder_padding_mask.size(1) |
| |
| device: which device to put the result on |
| """ |
| if encoder_padding_mask is None: |
| return torch.Tensor([max_lengths] * batch_size).to(torch.int32).to(device) |
|
|
| assert encoder_padding_mask.size(0) == max_lengths, "max_lengths does not match" |
| assert encoder_padding_mask.size(1) == batch_size, "batch_size does not match" |
|
|
| return max_lengths - torch.sum(encoder_padding_mask, dim=0) |
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