""" OPT モデル実装 Meta OPT-125Mの実装を提供する """ from typing import List, Tuple import torch from transformers import OPTForCausalLM, GPT2Tokenizer from .base import BaseLanguageModel, ModelConfig # OPT-125M設定 OPT_125M_CONFIG = ModelConfig( name="OPT-125M", model_id="facebook/opt-125m", embedding_dim=768, vocab_size=50272, ) class OPTModel(BaseLanguageModel): """ OPTモデルの実装 Meta OPTをラップしBaseLanguageModelインターフェースを実装 """ # 出力ノイズの倍率 LOGITS_NOISE_SCALE = 10.0 def load(self) -> None: """モデルとトークナイザーをロード""" if self._is_loaded: return try: self._model = OPTForCausalLM.from_pretrained(self._config.model_id) # OPTは独自のトークナイザーを持つが、GPT-2互換も可能 self._tokenizer = GPT2Tokenizer.from_pretrained("gpt2") self._model.eval() self._is_loaded = True except Exception as e: raise RuntimeError(f"Failed to load model {self._config.model_id}: {e}") def forward_with_noise( self, noise: torch.Tensor ) -> Tuple[torch.Tensor, torch.Tensor]: """ノイズを入力として順伝播を実行""" if not self._is_loaded: raise RuntimeError("Model not loaded. Call load() first.") with torch.no_grad(): outputs = self._model(inputs_embeds=noise) logits = outputs.logits logits_noise = ( torch.randn_like(logits) * logits.std() * self.LOGITS_NOISE_SCALE ) corrupted_logits = logits + logits_noise return logits, corrupted_logits def decode_indices(self, indices: List[int]) -> List[str]: """トークンインデックスをデコード""" if not self._is_loaded: raise RuntimeError("Model not loaded. Call load() first.") return [self._tokenizer.decode([i]) for i in indices]