| import os |
| import sys |
| import yaml |
| import argparse |
| import pandas as pd |
| import numpy as np |
| import requests |
| import random |
| from datetime import datetime, timedelta |
|
|
| |
| sys.path.append(os.path.dirname(os.path.abspath(__file__))) |
| from text_generator import generate_speech, PARTIES, SPEAKERS, CHAMBERS |
|
|
| def load_config(config_path): |
| with open(config_path, "r", encoding="utf-8") as f: |
| return yaml.safe_load(f) |
|
|
| def clean_and_normalize(text): |
| """Cleans text by normalizing whitespace, typography, accents, and punctuation.""" |
| if not isinstance(text, str): |
| return "" |
| |
| text = text.replace("’", "'").replace("œ", "oe").replace("æ", "ae") |
| |
| text = " ".join(text.split()) |
| return text |
|
|
| def map_row_to_schema(row, seed_idx): |
| """Maps a raw row from agokrani/fr-political-speeches to the pipeline schema.""" |
| text_clean = clean_and_normalize(row["text"]) |
| |
| |
| src_lower = str(row["source"]).lower() |
| url_lower = str(row.get("source_url", "")).lower() |
| role_lower = str(row.get("speaker_role", "")).lower() |
| |
| if "senat" in src_lower or "senat" in url_lower or "sénat" in role_lower: |
| chamber = "Sénat" |
| else: |
| chamber = "Assemblée nationale" |
| |
| |
| party = "Non spécifié" |
| role_check = role_lower if pd.notna(role_lower) else "" |
| spk_check = str(row["speaker"]).lower() if pd.notna(row["speaker"]) else "" |
| |
| if "la france insoumise" in role_check or "lfi" in role_check or "mélenchon" in spk_check or "ruffin" in spk_check: |
| party = "La France Insoumise" |
| elif "socialiste" in role_check or "faure" in spk_check: |
| party = "Socialistes" |
| elif "écologiste" in role_check or "vert" in role_check: |
| party = "Écologistes" |
| elif "ump" in role_check or "républicains" in role_check or "wauquiez" in spk_check: |
| party = "Les Républicains" |
| elif "rassemblement national" in role_check or "rn" in role_check or "le pen" in spk_check: |
| party = "Rassemblement National" |
| elif "renaissance" in role_check or "lrem" in role_check or "majorité" in role_check or "darmanin" in spk_check: |
| party = "Renaissance" |
| elif "démocrate" in role_check or "modem" in role_check: |
| party = "Démocrates" |
| else: |
| random.seed(seed_idx) |
| party = random.choice(PARTIES) |
| |
| |
| date_str = str(row["date"]) |
| try: |
| dt = pd.to_datetime(date_str) |
| year = dt.year |
| date_formatted = dt.strftime("%Y-%m-%d") |
| except: |
| year = 2000 |
| date_formatted = "2000-01-01" |
| |
| if year >= 2022: |
| leg = "16" |
| elif year >= 2017: |
| leg = "15" |
| elif year >= 2012: |
| leg = "14" |
| elif year >= 2007: |
| leg = "13" |
| elif year >= 2002: |
| leg = "12" |
| elif year >= 1997: |
| leg = "11" |
| else: |
| leg = str(random.randint(1, 10)) |
| |
| |
| doc_type = "intervention_seance" |
| st_lower = str(row.get("speech_type", "")).lower() if pd.notna(row.get("speech_type", "")) else "" |
| title_check = str(row.get("title", "")).lower() if pd.notna(row.get("title", "")) else "" |
| |
| if "amendement" in st_lower or "amendement" in title_check: |
| doc_type = "amendement" |
| elif "déclaration" in st_lower or "prise de position" in st_lower: |
| doc_type = "prise_position" |
| elif "explication" in st_lower: |
| doc_type = "explication_vote" |
| elif "réponse" in st_lower: |
| doc_type = "reponse_debat" |
| elif "groupe" in st_lower: |
| doc_type = "discours_groupe" |
| |
| return { |
| "text": text_clean, |
| "label_human_ai": 0, |
| "source": row["source"] if pd.notna(row["source"]) else "Assemblée/Sénat", |
| "speaker": row["speaker"] if pd.notna(row["speaker"]) else "Orateur inconnu", |
| "party": party, |
| "date": date_formatted, |
| "chamber": chamber, |
| "document_type": doc_type, |
| "legislature": leg |
| } |
|
|
| def generate_mock_human_corpus(sample_size, seed=42): |
| """Generates a realistic mock corpus of human political speeches.""" |
| print(f"Generating mock human political corpus ({sample_size} samples)...") |
| random.seed(seed) |
| np.random.seed(seed) |
| |
| data = [] |
| start_date = datetime(1958, 1, 1) |
| end_date = datetime(2022, 12, 31) |
| date_range_days = (end_date - start_date).days |
| |
| doc_types = ["intervention_seance", "prise_position", "explication_vote", "amendement", "reponse_debat", "discours_groupe"] |
| sources = ["french-political-speeches-1958-2022", "French Political Speeches (2000-2010)", "Sénat XML", "Assemblée nationale open-data"] |
| |
| for i in range(sample_size): |
| date_speech = start_date + timedelta(days=random.randint(0, date_range_days)) |
| speaker = random.choice(SPEAKERS) |
| party = random.choice(PARTIES) |
| chamber = random.choice(CHAMBERS) |
| doc_type = random.choice(doc_types) |
| source = random.choice(sources) |
| |
| |
| year = date_speech.year |
| if year >= 2022: |
| leg = "16" |
| elif year >= 2017: |
| leg = "15" |
| elif year >= 2012: |
| leg = "14" |
| elif year >= 2007: |
| leg = "13" |
| elif year >= 2002: |
| leg = "12" |
| else: |
| leg = str(random.randint(1, 11)) |
| |
| speech_text = generate_speech(is_ai=False, seed=i) |
| cleaned_text = clean_and_normalize(speech_text) |
| |
| data.append({ |
| "text": cleaned_text, |
| "label_human_ai": 0, |
| "source": source, |
| "speaker": speaker, |
| "party": party, |
| "date": date_speech.strftime("%Y-%m-%d"), |
| "chamber": chamber, |
| "document_type": doc_type, |
| "legislature": leg |
| }) |
| |
| return pd.DataFrame(data) |
|
|
| def generate_recent_debates_from_real(df_hf, sample_size=3000, seed=42): |
| """Creates recent debates using real post-2003 human texts from HF dataset and injects post-2022 AI texts.""" |
| print(f"Creating recent debates from Hugging Face dataset (2003-2026) ({sample_size} samples)...") |
| random.seed(seed + 100) |
| np.random.seed(seed + 100) |
| |
| |
| df_hf["parsed_date"] = pd.to_datetime(df_hf["date"], errors="coerce") |
| df_recent_human = df_hf[df_hf["parsed_date"] >= "2003-01-01"].copy() |
| |
| if len(df_recent_human) < sample_size: |
| print("Warning: not enough post-2003 real speeches, utilizing all of them and falling back for remaining.") |
| df_sampled = df_recent_human |
| else: |
| df_sampled = df_recent_human.sample(n=sample_size, random_state=seed + 200) |
| |
| start_date_modern = datetime(2023, 1, 1) |
| end_date_modern = datetime(2026, 5, 1) |
| date_range_days_modern = (end_date_modern - start_date_modern).days |
| |
| start_date_hist = datetime(2004, 1, 1) |
| end_date_hist = datetime(2022, 12, 31) |
| date_range_days_hist = (end_date_hist - start_date_hist).days |
| |
| data = [] |
|
|
| for idx, (original_idx, row) in enumerate(df_sampled.iterrows()): |
| mapped = map_row_to_schema(row, idx) |
| |
| |
| if random.random() < 0.20: |
| |
| random_days = random.randint(0, date_range_days_modern) |
| dt_modern = start_date_modern + timedelta(days=random_days) |
| mapped["date"] = dt_modern.strftime("%Y-%m-%d") |
| mapped["legislature"] = "16" |
| else: |
| |
| random_days = random.randint(0, date_range_days_hist) |
| dt_hist = start_date_hist + timedelta(days=random_days) |
| mapped["date"] = dt_hist.strftime("%Y-%m-%d") |
| |
| |
| year = dt_hist.year |
| if year >= 2022: |
| mapped["legislature"] = "16" |
| elif year >= 2017: |
| mapped["legislature"] = "15" |
| elif year >= 2012: |
| mapped["legislature"] = "14" |
| elif year >= 2007: |
| mapped["legislature"] = "13" |
| else: |
| mapped["legislature"] = "12" |
| |
| dt = pd.to_datetime(mapped["date"]) |
| is_ai = False |
| ai_model = "human" |
| |
| if dt.year >= 2023: |
| |
| prob = 0.15 |
| if mapped["speaker"] == "Jean Dupuis" or "dupuis" in str(mapped["speaker"]).lower(): |
| prob = 0.40 |
| if mapped["party"] == "Démocrates": |
| prob = 0.30 |
| |
| if random.random() < prob: |
| is_ai = True |
| ai_model = random.choice(["gpt-4", "claude-3-opus", "qwen-72b", "gemma-7b"]) |
| |
| if is_ai: |
| speech_text = generate_speech(is_ai=True, ai_model=ai_model, doc_type=mapped["document_type"], seed=idx + 20000) |
| mapped["text"] = clean_and_normalize(speech_text) |
| mapped["actual_label"] = 1 |
| mapped["ai_model"] = ai_model |
| else: |
| mapped["actual_label"] = 0 |
| mapped["ai_model"] = "human" |
| |
| data.append(mapped) |
| |
| |
| current_len = len(data) |
| if current_len < sample_size: |
| print(f"Adding {sample_size - current_len} simulated recent speeches to reach sample size...") |
| start_date = datetime(2003, 1, 1) |
| end_date = datetime(2026, 5, 1) |
| date_range_days = (end_date - start_date).days |
| for i in range(sample_size - current_len): |
| date_speech = start_date + timedelta(days=random.randint(0, date_range_days)) |
| speaker = random.choice(SPEAKERS) |
| party = random.choice(PARTIES) |
| chamber = random.choice(CHAMBERS) |
| doc_type = random.choice(["intervention_seance", "prise_position", "explication_vote", "amendement"]) |
| |
| is_ai = False |
| ai_model = "human" |
| if date_speech.year >= 2023: |
| prob = 0.15 |
| if speaker == "Jean Dupuis": |
| prob = 0.40 |
| if party == "Démocrates": |
| prob = 0.30 |
| if random.random() < prob: |
| is_ai = True |
| ai_model = random.choice(["gpt-4", "claude-3-opus", "qwen-72b", "gemma-7b"]) |
| |
| leg = "16" if date_speech.year >= 2022 else ("15" if date_speech.year >= 2017 else ("14" if date_speech.year >= 2012 else "13")) |
| speech_text = generate_speech(is_ai=is_ai, ai_model=ai_model, doc_type=doc_type, seed=i + 30000) |
| cleaned = clean_and_normalize(speech_text) |
| |
| data.append({ |
| "text": cleaned, |
| "label_human_ai": 0, |
| "source": "simulated_debate", |
| "speaker": speaker, |
| "party": party, |
| "date": date_speech.strftime("%Y-%m-%d"), |
| "chamber": chamber, |
| "document_type": doc_type, |
| "legislature": leg, |
| "actual_label": 1 if is_ai else 0, |
| "ai_model": ai_model |
| }) |
| |
| return pd.DataFrame(data) |
|
|
| def generate_recent_debates_mock(sample_size=3000, seed=42): |
| """Fallback generator for recent debates using mock logic.""" |
| print(f"Generating mock recent debates corpus for inference ({sample_size} samples)...") |
| random.seed(seed + 100) |
| np.random.seed(seed + 100) |
| |
| data = [] |
| start_date = datetime(2003, 1, 1) |
| end_date = datetime(2026, 5, 1) |
| date_range_days = (end_date - start_date).days |
| doc_types = ["intervention_seance", "prise_position", "explication_vote", "amendement", "reponse_debat", "discours_groupe"] |
| |
| for i in range(sample_size): |
| date_speech = start_date + timedelta(days=random.randint(0, date_range_days)) |
| speaker = random.choice(SPEAKERS) |
| party = random.choice(PARTIES) |
| chamber = random.choice(CHAMBERS) |
| doc_type = random.choice(doc_types) |
| |
| is_ai = False |
| ai_model = "human" |
| |
| if date_speech.year >= 2023: |
| prob = 0.12 |
| if speaker == "Jean Dupuis": |
| prob = 0.35 |
| if party == "Démocrates": |
| prob = 0.25 |
| if random.random() < prob: |
| is_ai = True |
| ai_model = random.choice(["gpt-4", "claude-3-opus", "qwen-72b", "gemma-7b"]) |
| |
| leg = "16" if date_speech.year >= 2022 else ("15" if date_speech.year >= 2017 else ("14" if date_speech.year >= 2012 else ("13" if date_speech.year >= 2007 else "12"))) |
| speech_text = generate_speech(is_ai=is_ai, ai_model=ai_model, doc_type=doc_type, seed=i + 5000) |
| cleaned_text = clean_and_normalize(speech_text) |
| |
| data.append({ |
| "text": cleaned_text, |
| "speaker": speaker, |
| "party": party, |
| "date": date_speech.strftime("%Y-%m-%d"), |
| "chamber": chamber, |
| "document_type": doc_type, |
| "legislature": leg, |
| "actual_label": 1 if is_ai else 0, |
| "ai_model": ai_model |
| }) |
| |
| return pd.DataFrame(data) |
|
|
| def main(): |
| parser = argparse.ArgumentParser(description="Collect, ingest and clean French parliamentary speeches.") |
| parser.add_argument("--config", default="configs/config.yaml", help="Path to config file") |
| parser.add_argument("--mock", action="store_true", help="Force generating mock datasets") |
| args = parser.parse_args() |
| |
| config = load_config(args.config) |
| raw_dir = config["paths"]["raw_dir"] |
| os.makedirs(raw_dir, exist_ok=True) |
| |
| use_mock = config["data_collection"]["use_mock"] or args.mock |
| seed = config["data_collection"]["seed"] |
| sample_size = config["data_collection"]["sample_size_human"] |
| |
| df_hf = None |
| |
| if not use_mock: |
| try: |
| print("Loading real human political speeches from Hugging Face (agokrani/fr-political-speeches)...") |
| from datasets import load_dataset |
| dataset = load_dataset("agokrani/fr-political-speeches", split="train") |
| df_hf = dataset.to_pandas() |
| print(f"Successfully downloaded {len(df_hf)} real speeches from Hugging Face.") |
| |
| |
| df_sampled = df_hf.sample(n=min(sample_size, len(df_hf)), random_state=seed) |
| |
| print("Mapping real dataset to unified schema...") |
| data_mapped = [] |
| for i, (_, row) in enumerate(df_sampled.iterrows()): |
| data_mapped.append(map_row_to_schema(row, i)) |
| |
| df_human = pd.DataFrame(data_mapped) |
| df_human.to_csv(os.path.join(raw_dir, "human_corpus.csv"), index=False) |
| print(f"Saved real human training corpus to {os.path.join(raw_dir, 'human_corpus.csv')}") |
| |
| except Exception as e: |
| print(f"Error downloading or processing from Hugging Face: {e}. Falling back to mock generation.") |
| use_mock = True |
| |
| if use_mock: |
| df_human = generate_mock_human_corpus(sample_size, seed) |
| df_human.to_csv(os.path.join(raw_dir, "human_corpus.csv"), index=False) |
| print(f"Saved mock human corpus to {os.path.join(raw_dir, 'human_corpus.csv')}") |
| |
| |
| import subprocess |
| script_dir = os.path.dirname(os.path.abspath(__file__)) |
| synthetic_script = os.path.join(script_dir, "generate_synthetic.py") |
| print(f"Executing AI generation script: {synthetic_script}...") |
| subprocess.run([sys.executable, synthetic_script, "--config", args.config], check=True) |
| |
| |
| if not use_mock and df_hf is not None: |
| df_recent = generate_recent_debates_from_real(df_hf, sample_size=3000, seed=seed) |
| else: |
| df_recent = generate_recent_debates_mock(sample_size=3000, seed=seed) |
| |
| df_recent.to_csv(os.path.join(raw_dir, "recent_debates.csv"), index=False) |
| print(f"Saved recent debates for inference to {os.path.join(raw_dir, 'recent_debates.csv')}") |
| print("Ingestion step completed successfully.") |
|
|
| if __name__ == "__main__": |
| main() |
|
|