This is a tutorial/implementation of multi-headed attention from paper Attention Is All You Need in PyTorch. The implementation is inspired from Annotated Transformer.
Here is the training code that uses a basic transformer with MHA for NLP auto-regression.
Here is an experiment implementation that trains a simple transformer.
24import math
25from typing import Optional, List
26
27import torch
28from torch import nn
29
30from labml import trackerThis module does a linear transformation and splits the vector into given number of heads for multi-head attention. This is used to transform key, query, and value vectors.
33class PrepareForMultiHeadAttention(nn.Module):44    def __init__(self, d_model: int, heads: int, d_k: int, bias: bool):
45        super().__init__()Linear layer for linear transform
47        self.linear = nn.Linear(d_model, heads * d_k, bias=bias)Number of heads
49        self.heads = headsNumber of dimensions in vectors in each head
51        self.d_k = d_k53    def forward(self, x: torch.Tensor):Input has shape [seq_len, batch_size, d_model]
 or [batch_size, d_model]
. We apply the linear transformation to the last dimension and split that into the heads. 
57        head_shape = x.shape[:-1]Linear transform
60        x = self.linear(x)Split last dimension into heads
63        x = x.view(*head_shape, self.heads, self.d_k)Output has shape [seq_len, batch_size, heads, d_k]
 or [batch_size, heads, d_model]
 
66        return xThis computes scaled multi-headed attention for given query
, key
 and value
 vectors.
In simple terms, it finds keys that matches the query, and gets the values of those keys.
It uses dot-product of query and key as the indicator of how matching they are. Before taking the the dot-products are scaled by . This is done to avoid large dot-product values causing softmax to give very small gradients when is large.
Softmax is calculated along the axis of of the sequence (or time).
69class MultiHeadAttention(nn.Module):heads
 is the number of heads. d_model
 is the number of features in the query
, key
 and value
 vectors.90    def __init__(self, heads: int, d_model: int, dropout_prob: float = 0.1, bias: bool = True):96        super().__init__()Number of features per head
99        self.d_k = d_model // headsNumber of heads
101        self.heads = headsThese transform the query
, key
 and value
 vectors for multi-headed attention. 
104        self.query = PrepareForMultiHeadAttention(d_model, heads, self.d_k, bias=bias)
105        self.key = PrepareForMultiHeadAttention(d_model, heads, self.d_k, bias=bias)
106        self.value = PrepareForMultiHeadAttention(d_model, heads, self.d_k, bias=True)Softmax for attention along the time dimension of key
 
109        self.softmax = nn.Softmax(dim=1)Output layer
112        self.output = nn.Linear(d_model, d_model)Dropout
114        self.dropout = nn.Dropout(dropout_prob)Scaling factor before the softmax
116        self.scale = 1 / math.sqrt(self.d_k)We store attentions so that it can be used for logging, or other computations if needed
119        self.attn = NoneThis method can be overridden for other variations like relative attention.
121    def get_scores(self, query: torch.Tensor, key: torch.Tensor):Calculate or
129        return torch.einsum('ibhd,jbhd->ijbh', query, key) mask
 has shape [seq_len_q, seq_len_k, batch_size]
, where first dimension is the query dimension. If the query dimension is equal to  it will be broadcasted.
131    def prepare_mask(self, mask: torch.Tensor, query_shape: List[int], key_shape: List[int]):137        assert mask.shape[0] == 1 or mask.shape[0] == query_shape[0]
138        assert mask.shape[1] == key_shape[0]
139        assert mask.shape[2] == 1 or mask.shape[2] == query_shape[1]Same mask applied to all heads.
142        mask = mask.unsqueeze(-1)resulting mask has shape [seq_len_q, seq_len_k, batch_size, heads]
 
145        return mask query
, key
 and value
 are the tensors that store collection of query, key and value vectors. They have shape [seq_len, batch_size, d_model]
.
mask
 has shape [seq_len, seq_len, batch_size]
 and mask[i, j, b]
 indicates whether for batch b
, query at position i
 has access to key-value at position j
.
147    def forward(self, *,
148                query: torch.Tensor,
149                key: torch.Tensor,
150                value: torch.Tensor,
151                mask: Optional[torch.Tensor] = None):query
, key
 and value
 have shape [seq_len, batch_size, d_model]
 
163        seq_len, batch_size, _ = query.shape
164
165        if mask is not None:
166            mask = self.prepare_mask(mask, query.shape, key.shape)Prepare query
, key
 and value
 for attention computation. These will then have shape [seq_len, batch_size, heads, d_k]
. 
170        query = self.query(query)
171        key = self.key(key)
172        value = self.value(value)Compute attention scores . This gives a tensor of shape [seq_len, seq_len, batch_size, heads]
. 
176        scores = self.get_scores(query, key)Scale scores
179        scores *= self.scaleApply mask
182        if mask is not None:
183            scores = scores.masked_fill(mask == 0, float('-inf'))attention along the key sequence dimension
187        attn = self.softmax(scores)Save attentions if debugging
190        tracker.debug('attn', attn)Apply dropout
193        attn = self.dropout(attn)Multiply by values
197        x = torch.einsum("ijbh,jbhd->ibhd", attn, value)Save attentions for any other calculations
200        self.attn = attn.detach()Concatenate multiple heads
203        x = x.reshape(seq_len, batch_size, -1)Output layer
206        return self.output(x)