import os import sys import torch import numpy as np import pandas as pd from transformers import CamembertTokenizer, CamembertModel from tqdm import tqdm import yaml import argparse # Constants MODEL_NAME = "almanach/camembert-base" EMBEDDING_DIM = 768 MAX_LENGTH = 512 BATCH_SIZE = 32 def load_config(config_path="configs/config.yaml"): with open(config_path, "r", encoding="utf-8") as f: return yaml.safe_load(f) class CamemBERTEncoder: """Extracteur d'embeddings CamemBERT gelé pour le français. Utilise le token [CLS] comme représentation dense du document.""" def __init__(self, model_name=MODEL_NAME, device=None): self.device = device or ("cuda" if torch.cuda.is_available() else "cpu") print(f"Chargement de CamemBERT ({model_name}) sur {self.device}...") self.tokenizer = CamembertTokenizer.from_pretrained(model_name) self.model = CamembertModel.from_pretrained(model_name).to(self.device) self.model.eval() # Mode inférence (poids gelés) # Freeze all parameters for param in self.model.parameters(): param.requires_grad = False print(f"CamemBERT chargé avec succès ({sum(p.numel() for p in self.model.parameters())/1e6:.1f}M paramètres gelés).") def encode_single(self, text: str) -> np.ndarray: """Encode un seul texte et retourne le vecteur [CLS] de dimension 768.""" inputs = self.tokenizer( text, return_tensors="pt", max_length=MAX_LENGTH, truncation=True, padding=True ).to(self.device) with torch.no_grad(): outputs = self.model(**inputs) # [CLS] token is the first token cls_embedding = outputs.last_hidden_state[:, 0, :].cpu().numpy().flatten() return cls_embedding def encode_batch(self, texts: list, batch_size=BATCH_SIZE) -> np.ndarray: """Encode un lot de textes et retourne une matrice (N, 768).""" # Sort indices by text length to group similar lengths and minimize padding overhead sorted_indices = sorted(range(len(texts)), key=lambda idx: len(str(texts[idx]))) sorted_texts = [texts[idx] for idx in sorted_indices] all_embeddings = [None] * len(texts) for i in tqdm(range(0, len(sorted_texts), batch_size), desc="Extraction CamemBERT"): batch_texts = sorted_texts[i:i+batch_size] batch_texts = [str(t) if pd.notna(t) else "" for t in batch_texts] inputs = self.tokenizer( batch_texts, return_tensors="pt", max_length=MAX_LENGTH, truncation=True, padding=True ).to(self.device) with torch.no_grad(): outputs = self.model(**inputs) cls_embeddings = outputs.last_hidden_state[:, 0, :].cpu().numpy() for j, emb in enumerate(cls_embeddings): orig_idx = sorted_indices[i + j] all_embeddings[orig_idx] = emb return np.array(all_embeddings) def main(): parser = argparse.ArgumentParser(description="Extraction d'embeddings CamemBERT pour le détecteur SOTA.") parser.add_argument("--config", default="configs/config.yaml", help="Chemin vers le fichier de config") parser.add_argument("--batch_size", type=int, default=32, help="Taille du batch pour l'encodage") args = parser.parse_args() config = load_config(args.config) raw_dir = config["paths"]["raw_dir"] processed_dir = config["paths"]["processed_dir"] os.makedirs(processed_dir, exist_ok=True) encoder = CamemBERTEncoder() # 1. Process Training Data print("\n=== Encodage des données d'entraînement ===") human_path = os.path.join(raw_dir, "human_corpus.csv") ai_path = os.path.join(raw_dir, "ai_corpus.csv") df_human = pd.read_csv(human_path) df_ai = pd.read_csv(ai_path) df_train = pd.concat([df_human, df_ai], ignore_index=True) print(f"Corpus d'entraînement: {len(df_train)} textes") train_embeddings = encoder.encode_batch(df_train["text"].tolist(), batch_size=args.batch_size) emb_cols = [f"camembert_{i}" for i in range(EMBEDDING_DIM)] df_train_emb = pd.DataFrame(train_embeddings, columns=emb_cols) df_train_emb.to_csv(os.path.join(processed_dir, "train_embeddings_camembert.csv"), index=False) print(f"Embeddings d'entraînement sauvegardés: {train_embeddings.shape}") # 2. Process Recent Debates print("\n=== Encodage des débats récents ===") recent_path = os.path.join(raw_dir, "recent_debates.csv") if os.path.exists(recent_path): df_recent = pd.read_csv(recent_path) print(f"Débats récents: {len(df_recent)} textes") recent_embeddings = encoder.encode_batch(df_recent["text"].tolist(), batch_size=args.batch_size) df_recent_emb = pd.DataFrame(recent_embeddings, columns=emb_cols) df_recent_emb.to_csv(os.path.join(processed_dir, "recent_embeddings_camembert.csv"), index=False) print(f"Embeddings récents sauvegardés: {recent_embeddings.shape}") print("\n✅ Extraction CamemBERT terminée avec succès.") if __name__ == "__main__": main()