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import torch |
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from scipy.stats import betabinom |
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from torch import nn |
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from torch.nn import functional as F |
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from TTS.tts.layers.tacotron.common_layers import Linear |
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class LocationLayer(nn.Module): |
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"""Layers for Location Sensitive Attention |
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Args: |
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attention_dim (int): number of channels in the input tensor. |
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attention_n_filters (int, optional): number of filters in convolution. Defaults to 32. |
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attention_kernel_size (int, optional): kernel size of convolution filter. Defaults to 31. |
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""" |
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def __init__(self, attention_dim, attention_n_filters=32, attention_kernel_size=31): |
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super().__init__() |
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self.location_conv1d = nn.Conv1d( |
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in_channels=2, |
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out_channels=attention_n_filters, |
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kernel_size=attention_kernel_size, |
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stride=1, |
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padding=(attention_kernel_size - 1) // 2, |
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bias=False, |
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) |
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self.location_dense = Linear(attention_n_filters, attention_dim, bias=False, init_gain="tanh") |
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def forward(self, attention_cat): |
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""" |
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Shapes: |
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attention_cat: [B, 2, C] |
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""" |
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processed_attention = self.location_conv1d(attention_cat) |
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processed_attention = self.location_dense(processed_attention.transpose(1, 2)) |
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return processed_attention |
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class GravesAttention(nn.Module): |
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"""Graves Attention as is ref1 with updates from ref2. |
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ref1: https://arxiv.org/abs/1910.10288 |
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ref2: https://arxiv.org/pdf/1906.01083.pdf |
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Args: |
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query_dim (int): number of channels in query tensor. |
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K (int): number of Gaussian heads to be used for computing attention. |
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""" |
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COEF = 0.3989422917366028 |
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def __init__(self, query_dim, K): |
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super().__init__() |
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self._mask_value = 1e-8 |
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self.K = K |
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self.eps = 1e-5 |
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self.J = None |
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self.N_a = nn.Sequential( |
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nn.Linear(query_dim, query_dim, bias=True), nn.ReLU(), nn.Linear(query_dim, 3 * K, bias=True) |
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) |
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self.attention_weights = None |
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self.mu_prev = None |
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self.init_layers() |
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def init_layers(self): |
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torch.nn.init.constant_(self.N_a[2].bias[(2 * self.K) : (3 * self.K)], 1.0) |
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torch.nn.init.constant_(self.N_a[2].bias[self.K : (2 * self.K)], 10) |
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def init_states(self, inputs): |
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if self.J is None or inputs.shape[1] + 1 > self.J.shape[-1]: |
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self.J = torch.arange(0, inputs.shape[1] + 2.0).to(inputs.device) + 0.5 |
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self.attention_weights = torch.zeros(inputs.shape[0], inputs.shape[1]).to(inputs.device) |
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self.mu_prev = torch.zeros(inputs.shape[0], self.K).to(inputs.device) |
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def preprocess_inputs(self, inputs): |
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return None |
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def forward(self, query, inputs, processed_inputs, mask): |
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""" |
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Shapes: |
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query: [B, C_attention_rnn] |
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inputs: [B, T_in, C_encoder] |
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processed_inputs: place_holder |
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mask: [B, T_in] |
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""" |
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gbk_t = self.N_a(query) |
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gbk_t = gbk_t.view(gbk_t.size(0), -1, self.K) |
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g_t = gbk_t[:, 0, :] |
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b_t = gbk_t[:, 1, :] |
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k_t = gbk_t[:, 2, :] |
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g_t = torch.nn.functional.dropout(g_t, p=0.5, training=self.training) |
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sig_t = torch.nn.functional.softplus(b_t) + self.eps |
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mu_t = self.mu_prev + torch.nn.functional.softplus(k_t) |
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g_t = torch.softmax(g_t, dim=-1) + self.eps |
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j = self.J[: inputs.size(1) + 1] |
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phi_t = g_t.unsqueeze(-1) * (1 / (1 + torch.sigmoid((mu_t.unsqueeze(-1) - j) / sig_t.unsqueeze(-1)))) |
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alpha_t = torch.sum(phi_t, 1) |
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alpha_t = alpha_t[:, 1:] - alpha_t[:, :-1] |
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alpha_t[alpha_t == 0] = 1e-8 |
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if mask is not None: |
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alpha_t.data.masked_fill_(~mask, self._mask_value) |
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context = torch.bmm(alpha_t.unsqueeze(1), inputs).squeeze(1) |
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self.attention_weights = alpha_t |
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self.mu_prev = mu_t |
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return context |
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class OriginalAttention(nn.Module): |
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"""Bahdanau Attention with various optional modifications. |
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- Location sensitive attnetion: https://arxiv.org/abs/1712.05884 |
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- Forward Attention: https://arxiv.org/abs/1807.06736 + state masking at inference |
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- Using sigmoid instead of softmax normalization |
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- Attention windowing at inference time |
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Note: |
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Location Sensitive Attention extends the additive attention mechanism |
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to use cumulative attention weights from previous decoder time steps with the current time step features. |
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Forward attention computes most probable monotonic alignment. The modified attention probabilities at each |
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timestep are computed recursively by the forward algorithm. |
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Transition agent in the forward attention explicitly gates the attention mechanism whether to move forward or |
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stay at each decoder timestep. |
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Attention windowing is a inductive prior that prevents the model from attending to previous and future timesteps |
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beyond a certain window. |
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Args: |
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query_dim (int): number of channels in the query tensor. |
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embedding_dim (int): number of channels in the vakue tensor. In general, the value tensor is the output of the encoder layer. |
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attention_dim (int): number of channels of the inner attention layers. |
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location_attention (bool): enable/disable location sensitive attention. |
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attention_location_n_filters (int): number of location attention filters. |
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attention_location_kernel_size (int): filter size of location attention convolution layer. |
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windowing (int): window size for attention windowing. if it is 5, for computing the attention, it only considers the time steps [(t-5), ..., (t+5)] of the input. |
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norm (str): normalization method applied to the attention weights. 'softmax' or 'sigmoid' |
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forward_attn (bool): enable/disable forward attention. |
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trans_agent (bool): enable/disable transition agent in the forward attention. |
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forward_attn_mask (int): enable/disable an explicit masking in forward attention. It is useful to set at especially inference time. |
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""" |
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def __init__( |
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self, |
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query_dim, |
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embedding_dim, |
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attention_dim, |
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location_attention, |
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attention_location_n_filters, |
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attention_location_kernel_size, |
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windowing, |
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norm, |
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forward_attn, |
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trans_agent, |
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forward_attn_mask, |
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): |
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super().__init__() |
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self.query_layer = Linear(query_dim, attention_dim, bias=False, init_gain="tanh") |
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self.inputs_layer = Linear(embedding_dim, attention_dim, bias=False, init_gain="tanh") |
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self.v = Linear(attention_dim, 1, bias=True) |
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if trans_agent: |
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self.ta = nn.Linear(query_dim + embedding_dim, 1, bias=True) |
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if location_attention: |
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self.location_layer = LocationLayer( |
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attention_dim, |
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attention_location_n_filters, |
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attention_location_kernel_size, |
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) |
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self._mask_value = -float("inf") |
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self.windowing = windowing |
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self.win_idx = None |
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self.norm = norm |
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self.forward_attn = forward_attn |
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self.trans_agent = trans_agent |
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self.forward_attn_mask = forward_attn_mask |
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self.location_attention = location_attention |
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def init_win_idx(self): |
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self.win_idx = -1 |
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self.win_back = 2 |
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self.win_front = 6 |
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def init_forward_attn(self, inputs): |
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B = inputs.shape[0] |
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T = inputs.shape[1] |
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self.alpha = torch.cat([torch.ones([B, 1]), torch.zeros([B, T])[:, :-1] + 1e-7], dim=1).to(inputs.device) |
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self.u = (0.5 * torch.ones([B, 1])).to(inputs.device) |
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def init_location_attention(self, inputs): |
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B = inputs.size(0) |
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T = inputs.size(1) |
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self.attention_weights_cum = torch.zeros([B, T], device=inputs.device) |
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def init_states(self, inputs): |
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B = inputs.size(0) |
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T = inputs.size(1) |
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self.attention_weights = torch.zeros([B, T], device=inputs.device) |
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if self.location_attention: |
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self.init_location_attention(inputs) |
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if self.forward_attn: |
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self.init_forward_attn(inputs) |
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if self.windowing: |
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self.init_win_idx() |
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def preprocess_inputs(self, inputs): |
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return self.inputs_layer(inputs) |
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def update_location_attention(self, alignments): |
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self.attention_weights_cum += alignments |
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def get_location_attention(self, query, processed_inputs): |
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attention_cat = torch.cat((self.attention_weights.unsqueeze(1), self.attention_weights_cum.unsqueeze(1)), dim=1) |
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processed_query = self.query_layer(query.unsqueeze(1)) |
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processed_attention_weights = self.location_layer(attention_cat) |
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energies = self.v(torch.tanh(processed_query + processed_attention_weights + processed_inputs)) |
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energies = energies.squeeze(-1) |
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return energies, processed_query |
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def get_attention(self, query, processed_inputs): |
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processed_query = self.query_layer(query.unsqueeze(1)) |
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energies = self.v(torch.tanh(processed_query + processed_inputs)) |
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energies = energies.squeeze(-1) |
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return energies, processed_query |
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def apply_windowing(self, attention, inputs): |
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back_win = self.win_idx - self.win_back |
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front_win = self.win_idx + self.win_front |
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if back_win > 0: |
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attention[:, :back_win] = -float("inf") |
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if front_win < inputs.shape[1]: |
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attention[:, front_win:] = -float("inf") |
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if self.win_idx == -1: |
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attention[:, 0] = attention.max() |
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self.win_idx = torch.argmax(attention, 1).long()[0].item() |
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return attention |
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def apply_forward_attention(self, alignment): |
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fwd_shifted_alpha = F.pad(self.alpha[:, :-1].clone().to(alignment.device), (1, 0, 0, 0)) |
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alpha = ((1 - self.u) * self.alpha + self.u * fwd_shifted_alpha + 1e-8) * alignment |
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if not self.training and self.forward_attn_mask: |
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_, n = fwd_shifted_alpha.max(1) |
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val, _ = alpha.max(1) |
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for b in range(alignment.shape[0]): |
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alpha[b, n[b] + 3 :] = 0 |
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alpha[b, : (n[b] - 1)] = 0 |
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alpha[b, (n[b] - 2)] = 0.01 * val[b] |
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alpha = alpha / alpha.sum(dim=1, keepdim=True) |
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return alpha |
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def forward(self, query, inputs, processed_inputs, mask): |
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""" |
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shapes: |
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query: [B, C_attn_rnn] |
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inputs: [B, T_en, D_en] |
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processed_inputs: [B, T_en, D_attn] |
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mask: [B, T_en] |
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""" |
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if self.location_attention: |
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attention, _ = self.get_location_attention(query, processed_inputs) |
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else: |
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attention, _ = self.get_attention(query, processed_inputs) |
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if mask is not None: |
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attention.data.masked_fill_(~mask, self._mask_value) |
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if not self.training and self.windowing: |
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attention = self.apply_windowing(attention, inputs) |
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if self.norm == "softmax": |
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alignment = torch.softmax(attention, dim=-1) |
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elif self.norm == "sigmoid": |
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alignment = torch.sigmoid(attention) / torch.sigmoid(attention).sum(dim=1, keepdim=True) |
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else: |
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raise ValueError("Unknown value for attention norm type") |
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if self.location_attention: |
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self.update_location_attention(alignment) |
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if self.forward_attn: |
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alignment = self.apply_forward_attention(alignment) |
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self.alpha = alignment |
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context = torch.bmm(alignment.unsqueeze(1), inputs) |
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context = context.squeeze(1) |
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self.attention_weights = alignment |
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if self.forward_attn and self.trans_agent: |
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ta_input = torch.cat([context, query.squeeze(1)], dim=-1) |
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self.u = torch.sigmoid(self.ta(ta_input)) |
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return context |
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class MonotonicDynamicConvolutionAttention(nn.Module): |
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"""Dynamic convolution attention from |
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https://arxiv.org/pdf/1910.10288.pdf |
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query -> linear -> tanh -> linear ->| |
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| mask values |
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v | | |
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atten_w(t-1) -|-> conv1d_dynamic -> linear -|-> tanh -> + -> softmax -> * -> * -> context |
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|-> conv1d_static -> linear -| | |
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|-> conv1d_prior -> log ----------------| |
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query: attention rnn output. |
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Note: |
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Dynamic convolution attention is an alternation of the location senstive attention with |
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dynamically computed convolution filters from the previous attention scores and a set of |
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constraints to keep the attention alignment diagonal. |
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DCA is sensitive to mixed precision training and might cause instable training. |
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Args: |
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query_dim (int): number of channels in the query tensor. |
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embedding_dim (int): number of channels in the value tensor. |
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static_filter_dim (int): number of channels in the convolution layer computing the static filters. |
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static_kernel_size (int): kernel size for the convolution layer computing the static filters. |
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dynamic_filter_dim (int): number of channels in the convolution layer computing the dynamic filters. |
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dynamic_kernel_size (int): kernel size for the convolution layer computing the dynamic filters. |
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prior_filter_len (int, optional): [description]. Defaults to 11 from the paper. |
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alpha (float, optional): [description]. Defaults to 0.1 from the paper. |
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beta (float, optional): [description]. Defaults to 0.9 from the paper. |
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""" |
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def __init__( |
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self, |
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query_dim, |
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embedding_dim, |
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attention_dim, |
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static_filter_dim, |
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static_kernel_size, |
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dynamic_filter_dim, |
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dynamic_kernel_size, |
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prior_filter_len=11, |
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alpha=0.1, |
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beta=0.9, |
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): |
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super().__init__() |
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self._mask_value = 1e-8 |
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self.dynamic_filter_dim = dynamic_filter_dim |
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self.dynamic_kernel_size = dynamic_kernel_size |
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self.prior_filter_len = prior_filter_len |
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self.attention_weights = None |
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self.query_layer = nn.Linear(query_dim, attention_dim) |
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self.key_layer = nn.Linear(attention_dim, dynamic_filter_dim * dynamic_kernel_size, bias=False) |
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self.static_filter_conv = nn.Conv1d( |
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1, |
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static_filter_dim, |
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static_kernel_size, |
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padding=(static_kernel_size - 1) // 2, |
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bias=False, |
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) |
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self.static_filter_layer = nn.Linear(static_filter_dim, attention_dim, bias=False) |
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self.dynamic_filter_layer = nn.Linear(dynamic_filter_dim, attention_dim) |
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self.v = nn.Linear(attention_dim, 1, bias=False) |
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prior = betabinom.pmf(range(prior_filter_len), prior_filter_len - 1, alpha, beta) |
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self.register_buffer("prior", torch.FloatTensor(prior).flip(0)) |
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def forward(self, query, inputs, processed_inputs, mask): |
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""" |
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query: [B, C_attn_rnn] |
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inputs: [B, T_en, D_en] |
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processed_inputs: place holder. |
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mask: [B, T_en] |
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""" |
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prior_filter = F.conv1d( |
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F.pad(self.attention_weights.unsqueeze(1), (self.prior_filter_len - 1, 0)), self.prior.view(1, 1, -1) |
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) |
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prior_filter = torch.log(prior_filter.clamp_min_(1e-6)).squeeze(1) |
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G = self.key_layer(torch.tanh(self.query_layer(query))) |
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dynamic_filter = F.conv1d( |
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self.attention_weights.unsqueeze(0), |
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G.view(-1, 1, self.dynamic_kernel_size), |
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padding=(self.dynamic_kernel_size - 1) // 2, |
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groups=query.size(0), |
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) |
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dynamic_filter = dynamic_filter.view(query.size(0), self.dynamic_filter_dim, -1).transpose(1, 2) |
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static_filter = self.static_filter_conv(self.attention_weights.unsqueeze(1)).transpose(1, 2) |
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alignment = ( |
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self.v( |
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torch.tanh(self.static_filter_layer(static_filter) + self.dynamic_filter_layer(dynamic_filter)) |
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).squeeze(-1) |
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+ prior_filter |
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) |
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attention_weights = F.softmax(alignment, dim=-1) |
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if mask is not None: |
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attention_weights.data.masked_fill_(~mask, self._mask_value) |
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self.attention_weights = attention_weights |
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context = torch.bmm(attention_weights.unsqueeze(1), inputs).squeeze(1) |
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return context |
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def preprocess_inputs(self, inputs): |
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return None |
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|
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def init_states(self, inputs): |
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B = inputs.size(0) |
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T = inputs.size(1) |
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self.attention_weights = torch.zeros([B, T], device=inputs.device) |
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self.attention_weights[:, 0] = 1.0 |
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def init_attn( |
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attn_type, |
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query_dim, |
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embedding_dim, |
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attention_dim, |
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location_attention, |
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attention_location_n_filters, |
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attention_location_kernel_size, |
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windowing, |
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norm, |
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forward_attn, |
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trans_agent, |
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forward_attn_mask, |
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attn_K, |
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): |
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if attn_type == "original": |
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return OriginalAttention( |
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query_dim, |
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embedding_dim, |
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attention_dim, |
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location_attention, |
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attention_location_n_filters, |
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attention_location_kernel_size, |
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windowing, |
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norm, |
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forward_attn, |
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trans_agent, |
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forward_attn_mask, |
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) |
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if attn_type == "graves": |
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return GravesAttention(query_dim, attn_K) |
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if attn_type == "dynamic_convolution": |
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return MonotonicDynamicConvolutionAttention( |
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query_dim, |
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embedding_dim, |
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attention_dim, |
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static_filter_dim=8, |
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static_kernel_size=21, |
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dynamic_filter_dim=8, |
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dynamic_kernel_size=21, |
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prior_filter_len=11, |
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alpha=0.1, |
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beta=0.9, |
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) |
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raise RuntimeError(f" [!] Given Attention Type '{attn_type}' is not exist.") |
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