X-Git-Url: https://fleuret.org/cgi-bin/gitweb/gitweb.cgi?a=blobdiff_plain;f=mygpt.py;h=f9547972e6a937c02ef299aabf639570b85b111f;hb=3ae0c8f3767e4285ab548e4548576a6ddf6003bb;hp=212e1a5d7f013b04e40f15e36a9f90b4de63483d;hpb=7b6a1a4f12459fd18a2006fa8f11589f2b2cd87b;p=mygpt.git diff --git a/mygpt.py b/mygpt.py index 212e1a5..f954797 100755 --- a/mygpt.py +++ b/mygpt.py @@ -14,7 +14,7 @@ from torch.nn import functional as F ############################## -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) @@ -24,14 +24,12 @@ class Residual(nn.Module): ############################## -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, :] @@ -68,9 +66,9 @@ class QKVAttention(nn.Module): a = torch.einsum('nhtd,nhsd->nhts', q, k) / math.sqrt(q.size(3)) if self.causal: - mask = torch.arange(a.size(2), device = q.device)[None, None, :, None] \ - < torch.arange(a.size(3), device = q.device)[None, None, None, :] - a = a.masked_fill(mask, float('-inf')) + forbidden_attention = torch.arange(a.size(2), device = q.device)[None, None, :, None] \ + < torch.arange(a.size(3), device = q.device)[None, None, None, :] + a = a.masked_fill(forbidden_attention, float('-inf')) a = a.softmax(dim = 3) a = F.dropout(a, self.attention_dropout, self.training) @@ -96,15 +94,15 @@ class MyGPT(nn.Module): self.embedding = nn.Sequential( nn.Embedding(vocabulary_size, dim_model), nn.Dropout(dropout), - PositionalEncoding(len_max), + AddPositionalEncoding(len_max), ) 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, @@ -113,8 +111,8 @@ class MyGPT(nn.Module): 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), @@ -126,12 +124,20 @@ class MyGPT(nn.Module): self.readout = nn.Linear(in_features = dim_model, out_features = vocabulary_size) + with torch.no_grad(): + for m in self.modules(): + if isinstance(m, nn.Embedding): + m.weight.normal_(mean = 0, std = 2e-2) + elif isinstance(m, nn.LayerNorm): + m.bias.zero_() + m.weight.fill_(1.0) + 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 ######################################################################