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aza/AzA march 2026 - Kopie (13)/services/event_llm_direct.py

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2026-04-19 20:41:37 +02:00
"""Kongress-Suche via OpenAI web search so simpel wie eine ChatGPT-Anfrage."""
from __future__ import annotations
import json
import os
import re
from dataclasses import dataclass
from datetime import date
from openai import OpenAI
SPECIALTY_DE = {
"dermatology": "Dermatologie", "general-medicine": "Allgemeinmedizin",
"internal-medicine": "Innere Medizin", "gynecology": "Gynäkologie",
"anesthesiology": "Anästhesiologie", "cardiology": "Kardiologie",
"oncology": "Onkologie", "pediatrics": "Pädiatrie",
"neurology": "Neurologie", "psychiatry": "Psychiatrie",
"surgery": "Chirurgie", "ophthalmology": "Ophthalmologie",
"ent": "HNO", "urology": "Urologie", "orthopedics": "Orthopädie",
"radiology": "Radiologie", "rheumatology": "Rheumatologie",
"endocrinology": "Endokrinologie", "gastroenterology": "Gastroenterologie",
"pulmonology": "Pneumologie", "nephrology": "Nephrologie",
"infectiology": "Infektiologie", "emergency-medicine": "Notfallmedizin",
"pathology": "Pathologie", "allergology": "Allergologie",
}
REGION_DE = {"CH": "Schweiz", "EU": "Europa", "WORLD": "weltweit", "US": "USA", "CA": "Kanada"}
COUNTRY_MAP = {
"schweiz": "CH", "suisse": "CH", "switzerland": "CH",
"deutschland": "DE", "germany": "DE", "österreich": "AT", "austria": "AT",
"frankreich": "FR", "france": "FR", "italien": "IT", "italy": "IT",
"spanien": "ES", "spain": "ES", "grossbritannien": "GB", "uk": "GB",
"united kingdom": "GB", "griechenland": "GR", "greece": "GR",
"niederlande": "NL", "netherlands": "NL", "usa": "US", "united states": "US",
"finnland": "FI", "finland": "FI", "dänemark": "DK", "denmark": "DK",
"schweden": "SE", "sweden": "SE", "portugal": "PT",
"belgien": "BE", "belgium": "BE", "china": "CN", "japan": "JP",
}
EU_SET = {"DE","AT","FR","IT","ES","GB","GR","NL","BE","PT","FI","DK","SE","CZ",
"PL","IE","NO","HU","RO","BG","HR","SK","SI","LT","LV","EE","CY","MT","LU","CH"}
@dataclass
class EventCandidate:
name: str = ""
startDate: str | None = None
endDate: str | None = None
city: str = ""
country: str = ""
urlCandidate: str = ""
shortDescription: str = ""
organizer: str = ""
specialtyTags: list[str] | None = None
regionTags: list[str] | None = None
confidence: float = 0.9
def _parse_json(text: str) -> list[dict]:
"""Parse JSON aus LLM-Antwort robust gegen ```json ... ``` Wrapper."""
t = text.strip()
t = re.sub(r"^```[a-zA-Z]*\s*", "", t)
t = re.sub(r"\s*```\s*$", "", t)
t = t.strip()
try:
obj = json.loads(t)
if isinstance(obj, dict) and "events" in obj:
return obj["events"]
if isinstance(obj, list):
return obj
except Exception:
pass
m = re.search(r"\{[\s\S]*\}", t)
if m:
try:
obj = json.loads(m.group(0))
if isinstance(obj, dict) and "events" in obj:
return obj["events"]
except Exception:
pass
return []
def _norm_country(raw: str) -> str:
s = raw.strip()
if len(s) == 2 and s.isalpha():
return s.upper()
return COUNTRY_MAP.get(s.lower(), s.upper()[:2] if len(s) >= 2 else s)
def _region_tags(cc: str) -> list[str]:
tags = set()
if cc == "CH":
tags.add("CH")
if cc in EU_SET:
tags.add("EU")
if cc in ("US", "CA"):
tags.add("US")
return sorted(tags) or ["EU"]
def _safe_date(v) -> str | None:
s = str(v or "").strip()
return s if re.fullmatch(r"\d{4}-\d{2}-\d{2}", s) else None
def query_events_direct(
specialty: str,
regions: list[str],
from_date: date,
to_date: date,
lang: str = "de",
limit: int = 40,
) -> list[EventCandidate]:
key = os.getenv("OPENAI_API_KEY", "").strip()
if not key:
raise RuntimeError("OPENAI_API_KEY nicht gesetzt")
spec = SPECIALTY_DE.get(specialty, specialty)
reg = ", ".join(REGION_DE.get(r.upper(), r) for r in regions) or "Europa, Schweiz"
today = date.today().isoformat()
prompt = (
f"Suche im Internet nach den nächsten Kongressen und Weiterbildungen "
f"für {spec} in {reg} ab heute ({today}) "
f"bis {to_date.isoformat()}.\n\n"
f"Liste alle wichtigen Kongresse auf die du findest (mindestens 15). "
f"Gib die Antwort als JSON zurück:\n"
'{"events": [{"name": "...", "startDate": "YYYY-MM-DD", '
'"endDate": "YYYY-MM-DD", "city": "...", "country": "CH", '
'"url": "...", "description": "...", "organizer": "..."}]}'
)
model = os.getenv("EVENT_SEARCH_MODEL", "gpt-4o-mini-search-preview").strip()
client = OpenAI(api_key=key, timeout=80)
resp = client.chat.completions.create(
model=model,
messages=[
{"role": "system", "content": "Suche im Internet nach echten Kongressen. Antwort NUR als JSON."},
{"role": "user", "content": prompt},
],
)
txt = (resp.choices[0].message.content or "").strip()
rows = _parse_json(txt)
out: list[EventCandidate] = []
for r in rows:
if not isinstance(r, dict):
continue
name = str(r.get("name") or "").strip()
if not name:
continue
cc = _norm_country(str(r.get("country") or ""))
out.append(EventCandidate(
name=name,
startDate=_safe_date(r.get("startDate")),
endDate=_safe_date(r.get("endDate")) or _safe_date(r.get("startDate")),
city=str(r.get("city") or "").strip(),
country=cc,
urlCandidate=str(r.get("url") or r.get("urlCandidate") or "").strip(),
shortDescription=str(r.get("description") or r.get("shortDescription") or "").strip()[:600],
organizer=str(r.get("organizer") or "").strip(),
specialtyTags=[specialty],
regionTags=_region_tags(cc),
confidence=0.9,
))
return out