##############################
-class Residual(nn.Module):
+class WithResidual(nn.Module):
def __init__(self, *f):
super().__init__()
self.f = f[0] if len(f) == 1 else nn.Sequential(*f)
##############################
-class PositionalEncoding(nn.Module):
+class AddPositionalEncoding(nn.Module):
def __init__(self, len_max):
super().__init__()
self.len_max = len_max
- # From Vaswani et al 2018
- # PE_{t,2i} = sin(t/(L^{2i/D}))
- # PE_{t,2i+1} = cos(t/(L^{2i/D}))
+ # [Vaswani et al 2018] PE_{t,2i} = sin(t/(L^{2i/D})), PE_{t,2i+1} = cos(t/(L^{2i/D}))
def forward(self, x):
t = torch.arange(x.size(1), dtype = x.dtype, device = x.device)[:, None]
j = torch.arange(x.size(2), dtype = x.dtype, device = x.device)[None, :]
self.embedding = nn.Sequential(
nn.Embedding(vocabulary_size, dim_model),
nn.Dropout(dropout),
- PositionalEncoding(len_max),
+ AddPositionalEncoding(len_max),
)
+ # Small embedding initialization
+ with torch.no_grad():
+ self.embedding[0].weight.normal_(0, 2e-2)
+
trunk_blocks = [ ]
for _ in range(nb_blocks):
trunk_blocks += [
- Residual(
- nn.LayerNorm(dim_model),
+ WithResidual(
+ nn.LayerNorm((dim_model,)),
QKVAttention(
dim_in = dim_model,
dim_qk = dim_keys,
causal = True, attention_dropout = dropout
),
),
- Residual(
- nn.LayerNorm(dim_model),
+ WithResidual(
+ nn.LayerNorm((dim_model,)),
nn.Linear(in_features = dim_model, out_features = dim_hidden),
nn.ReLU(),
nn.Linear(in_features = dim_hidden, out_features = dim_model),
self.readout = nn.Linear(in_features = dim_model, out_features = vocabulary_size)
def forward(self, x):
- x = F.pad(x, (1, 0))
+ x = F.pad(x, (1, -1))
x = self.embedding(x)
x = self.trunk(x)
x = self.readout(x)
- return x[:, :-1]
+ return x
######################################################################