AI_DETECTOR_SOTA / scripts /collect_data.py
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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
# Import text generator
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 ""
# Normalize typography
text = text.replace("’", "'").replace("œ", "oe").replace("æ", "ae")
# Normalize whitespaces
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"])
# Derive chamber
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"
# Derive party based on role or name, otherwise fallback
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)
# Calculate legislature
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))
# Map document type
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)
# Calculate legislature
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)
# Filter real speeches post 2003
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)
# Spreading: project dates to cover the entire timeline continuously
if random.random() < 0.20:
# Project to modern era (2023-2026) where AI injection can happen
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:
# Spread historical human debates uniformly across the 2004-2022 range
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")
# Map legislature based on year
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:
# 15% probability of AI post 2022
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)
# Fill up to sample_size if needed
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.")
# Map a sample of real speeches to training human corpus
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')}")
# Generate the AI synthetic corpus
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)
# Generate the recent debates corpus for inference
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()