X-Git-Url: https://fleuret.org/cgi-bin/gitweb/gitweb.cgi?a=blobdiff_plain;ds=inline;f=mygpt.py;h=d0fda7e4182878043e74a260f0676654fc12193f;hb=693af34e144cd20d2dde6a508a190d49c1a76c7f;hp=809f79032a55204abd8add007b025ca54b1ad227;hpb=60d829ba77c9769009d3d5a93a50d23c532d019a;p=culture.git diff --git a/mygpt.py b/mygpt.py index 809f790..d0fda7e 100755 --- a/mygpt.py +++ b/mygpt.py @@ -201,6 +201,26 @@ class QKVAttention(nn.Module): ############################## +class NoiseInjector(nn.Module): + def __init__(self): + super().__init__() + self.noise_std = 0.0 + + def forward(self, x): + if self.noise_std > 0: + x = x + torch.randn(x.size(), device=x.device) * self.noise_std + return x + + +def set_noise_injection(model, noise_std): + for m in model.modules(): + if isinstance(m, NoiseInjector): + m.noise_std = noise_std + + +############################## + + class MyGPT(nn.Module): def __init__( self, @@ -228,7 +248,10 @@ class MyGPT(nn.Module): for b in range(nb_blocks): trunk_blocks += [ WithResidual( - CacheWrapper(nn.LayerNorm((dim_model,))), + CacheWrapper( + nn.LayerNorm((dim_model,)), + NoiseInjector(), + ), QKVAttention( dim_in=dim_model, dim_qk=dim_keys, @@ -241,6 +264,7 @@ class MyGPT(nn.Module): WithResidual( CacheWrapper( nn.LayerNorm((dim_model,)), + NoiseInjector(), nn.Linear(in_features=dim_model, out_features=dim_hidden), nn.ReLU(), nn.Linear(in_features=dim_hidden, out_features=dim_model), @@ -271,51 +295,6 @@ class MyGPT(nn.Module): bs = self.readout(bs) return bs - # ar_mask is a tensor with 0s and 1s, of same shape as input, with - # 1s where tokens should be generated. The others are kept - # unchanged. - - def masked_inplace_autoregression( - self, - input, - ar_mask, - seq_logproba, - temperature=1.0, - deterministic_synthesis=False, - forbidden_tokens=None, - forced_biases=None, - ): - to_generate = (ar_mask.sum(0) > 0).nonzero() - - if to_generate.min() > 0: - self( - BracketedSequence(input, 0, to_generate.min()) - ) # Needed to initialize the model's cache - for s in range(to_generate.min(), to_generate.max() + 1): - output = self(BracketedSequence(input, s, 1)).x - - logits = output[:, s] - - logits = (logits / temperature).log_softmax(dim=-1) - - if forbidden_tokens is not None: - logits = logits.masked_fill(forbidden_tokens, float("-inf")) - - if forced_biases is not None: - logits = logits + forced_biases[None, :] - - if deterministic_synthesis: - t_next = logits.argmax(-1) - else: - dist = torch.distributions.categorical.Categorical(logits=logits) - t_next = dist.sample() - - if seq_logproba is not None: - all_t = torch.arange(t_next.size(0)) - seq_logproba += logits[all_t, t_next].sum(dim=-1) - - input[:, s] = ar_mask[:, s] * t_next + (1 - ar_mask[:, s]) * input[:, s] - def record_attention(self, v=True): for m in self.modules(): if isinstance(m, QKVAttention):