podcast-mindmap/scripts/curate_debates.py

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#!/usr/bin/env python3
"""#18 Cross-Podcast-Debatte: Kuratiere Gegenüberstellungen zu gemeinsamen Themen.
Nimmt die stärksten Cross-Podcast-Paare und lässt Qwen Übereinstimmungen/Divergenzen zusammenfassen.
Nutzung:
DASHSCOPE_API_KEY=... python3 curate_debates.py [db-pfad] [limit]
"""
import json
import os
import sys
import time
import sqlite3
from openai import OpenAI
sys.path.insert(0, os.path.dirname(os.path.abspath(__file__)))
from json_utils import parse_llm_json
DB_PATH = sys.argv[1] if len(sys.argv) > 1 else "data/db.sqlite"
LIMIT = int(sys.argv[2]) if len(sys.argv) > 2 and not sys.argv[2].startswith("--") else 100
RERUN_ERRORS = "--rerun-errors" in sys.argv
API_KEY = os.environ.get("DASHSCOPE_API_KEY", "")
BASE_URL = "https://dashscope-intl.aliyuncs.com/compatible-mode/v1"
MODEL = "qwen-plus"
SYSTEM_PROMPT = """Du bist ein Diskursanalyst. Du erhältst zwei Textabschnitte aus VERSCHIEDENEN Podcasts, die dasselbe Thema behandeln.
Erstelle eine kurze Gegenüberstellung. Antworte NUR mit JSON:
{
"topic": "Das gemeinsame Thema in 3-5 Wörtern",
"agreement": "Worin stimmen beide überein? (1-2 Sätze)",
"divergence": "Worin unterscheiden sie sich? (1-2 Sätze, oder 'keine wesentliche Divergenz')",
"insight": "Was lernt man durch die Gegenüberstellung, das man aus keinem der beiden allein lernen würde? (1 Satz)"
}"""
def curate_pair(client, text_a, meta_a, text_b, meta_b):
user_msg = f"""Podcast A — {meta_a}:
"{text_a}"
Podcast B {meta_b}:
"{text_b}"
Erstelle die Gegenüberstellung."""
last_err = None
for attempt in range(3):
try:
resp = client.chat.completions.create(
model=MODEL,
messages=[
{"role": "system", "content": SYSTEM_PROMPT},
{"role": "user", "content": user_msg},
],
temperature=0.2,
max_tokens=400,
)
content = resp.choices[0].message.content
usage = getattr(resp, "usage", None)
tokens = (usage.prompt_tokens, usage.completion_tokens) if usage else (0, 0)
try:
parsed = parse_llm_json(content, expect="object")
parsed["_tokens"] = tokens
return parsed
except ValueError as pe:
last_err = f"parse: {pe}"
break
except Exception as e:
last_err = str(e)
if attempt < 2:
time.sleep(2 ** attempt)
continue
break
return {"topic": "error", "agreement": "", "divergence": "", "insight": str(last_err), "_tokens": (0, 0)}
def main():
if not API_KEY:
print("DASHSCOPE_API_KEY nicht gesetzt.")
sys.exit(1)
client = OpenAI(api_key=API_KEY, base_url=BASE_URL)
db = sqlite3.connect(DB_PATH, timeout=60.0)
db.execute("PRAGMA busy_timeout=60000")
db.row_factory = sqlite3.Row
db.executescript("""
CREATE TABLE IF NOT EXISTS debates (
id INTEGER PRIMARY KEY AUTOINCREMENT,
topic TEXT,
source_podcast TEXT, source_episode TEXT, source_idx INTEGER,
target_podcast TEXT, target_episode TEXT, target_idx INTEGER,
agreement TEXT, divergence TEXT, insight TEXT, score REAL
);
CREATE INDEX IF NOT EXISTS idx_debates_topic ON debates(topic);
""")
if RERUN_ERRORS:
rows = db.execute("""
SELECT d.source_podcast as podcast_id, d.source_episode, d.source_idx,
d.target_podcast, d.target_episode, d.target_idx, d.score,
p1.text as source_text, p2.text as target_text,
pc1.name as source_podcast_name, pc2.name as target_podcast_name,
e1.title as source_title, e1.guest as source_guest,
e2.title as target_title, e2.guest as target_guest
FROM debates d
JOIN paragraphs p1 ON d.source_podcast = p1.podcast_id AND d.source_episode = p1.episode_id AND d.source_idx = p1.idx
JOIN paragraphs p2 ON d.target_podcast = p2.podcast_id AND d.target_episode = p2.episode_id AND d.target_idx = p2.idx
JOIN episodes e1 ON d.source_podcast = e1.podcast_id AND d.source_episode = e1.id
JOIN episodes e2 ON d.target_podcast = e2.podcast_id AND d.target_episode = e2.id
JOIN podcasts pc1 ON d.source_podcast = pc1.id
JOIN podcasts pc2 ON d.target_podcast = pc2.id
WHERE d.topic = 'error'
""").fetchall()
del_count = db.execute("DELETE FROM debates WHERE topic='error'").rowcount
db.commit()
print(f"RE-RUN: {del_count} error-Records geloescht, {len(rows)} werden neu kuratiert.")
existing = set()
else:
# Get strongest cross-podcast links
rows = db.execute("""
SELECT sl.podcast_id, sl.source_episode, sl.source_idx,
sl.target_podcast, sl.target_episode, sl.target_idx, sl.score,
p1.text as source_text, p2.text as target_text,
pc1.name as source_podcast_name, pc2.name as target_podcast_name,
e1.title as source_title, e1.guest as source_guest,
e2.title as target_title, e2.guest as target_guest
FROM semantic_links sl
JOIN paragraphs p1 ON sl.podcast_id = p1.podcast_id AND sl.source_episode = p1.episode_id AND sl.source_idx = p1.idx
JOIN paragraphs p2 ON sl.target_podcast = p2.podcast_id AND sl.target_episode = p2.episode_id AND sl.target_idx = p2.idx
JOIN episodes e1 ON sl.podcast_id = e1.podcast_id AND sl.source_episode = e1.id
JOIN episodes e2 ON sl.target_podcast = e2.podcast_id AND sl.target_episode = e2.id
JOIN podcasts pc1 ON sl.podcast_id = pc1.id
JOIN podcasts pc2 ON sl.target_podcast = pc2.id
WHERE sl.podcast_id != sl.target_podcast
ORDER BY sl.score DESC
LIMIT ?
""", (LIMIT,)).fetchall()
print(f"Kuratiere {len(rows)} Cross-Podcast-Debatten mit {MODEL}")
existing = set()
try:
for r in db.execute("SELECT source_podcast||source_episode||source_idx||target_podcast||target_episode||target_idx as k FROM debates").fetchall():
existing.add(r["k"])
except Exception:
pass
processed = 0
total_in_tokens = 0
total_out_tokens = 0
for i, row in enumerate(rows):
key = f"{row['podcast_id']}{row['source_episode']}{row['source_idx']}{row['target_podcast']}{row['target_episode']}{row['target_idx']}"
if key in existing:
continue
meta_a = f"{row['source_podcast_name']} / {row['source_episode']}: {row['source_title']} ({row['source_guest']})"
meta_b = f"{row['target_podcast_name']} / {row['target_episode']}: {row['target_title']} ({row['target_guest']})"
result = curate_pair(client, row["source_text"][:800], meta_a, row["target_text"][:800], meta_b)
in_t, out_t = result.pop("_tokens", (0, 0))
total_in_tokens += in_t
total_out_tokens += out_t
db.execute(
"INSERT INTO debates (topic, source_podcast, source_episode, source_idx, "
"target_podcast, target_episode, target_idx, agreement, divergence, insight, score) "
"VALUES (?, ?, ?, ?, ?, ?, ?, ?, ?, ?, ?)",
(result.get("topic", ""), row["podcast_id"], row["source_episode"], row["source_idx"],
row["target_podcast"], row["target_episode"], row["target_idx"],
result.get("agreement", ""), result.get("divergence", ""),
result.get("insight", ""), row["score"])
)
processed += 1
if processed % 10 == 0:
db.commit()
print(f" {processed} kuratiert…")
time.sleep(0.3)
db.commit()
topics = db.execute("SELECT topic, COUNT(*) as c FROM debates GROUP BY topic ORDER BY c DESC LIMIT 20").fetchall()
print(f"\nFertig: {processed} Debatten kuratiert.")
print("Top-Themen:")
for t in topics:
print(f" {t['topic']}: {t['c']}")
cost = total_in_tokens / 1e6 * 0.40 + total_out_tokens / 1e6 * 1.20
print(f"Tokens: in={total_in_tokens} out={total_out_tokens} ~${cost:.4f}")
db.close()
if __name__ == "__main__":
main()