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8b87770 7603b6c 8b87770 02f6342 8b87770 7603b6c | 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 | """backend/api/_agent_helpers.py — Funzioni helper condivise tra i sub-router agent.
Estratto da agent_loop_routes / agent_task_routes / agent_checkpoint_routes
per eliminare le triplicazioni create dallo split S359 (2026-06-30).
Esportazioni:
_RE_SURROGATES — regex surrogati UTF-16
_ss(s) — sanitizza string (rimuove surrogati)
_log_task_exc(task) — done-callback asyncio con log eccezioni
_PERSONA_KEYWORD_MAP — dict globale (regex per persona routing)
_PERSONA_CLIENT_CACHE — dict globale (cache LLM client per persona)
_build_persona_kw_map — costruisce _PERSONA_KEYWORD_MAP (P17-F5)
_classify_persona_server — classifica persona via regex scoring (zero LLM)
_get_persona_llm_client — ritorna LLM client persona-appropriato
"""
from __future__ import annotations
import re
import logging
from fastapi import APIRouter
_logger = logging.getLogger("api.agent")
_RE_SURROGATES = re.compile(r"[\uD800-\uDFFF]", re.UNICODE)
def _ss(s: object) -> str:
if not isinstance(s, str):
return s
try:
cleaned = _RE_SURROGATES.sub("", s)
cleaned = cleaned.encode("utf-8", errors="replace").decode("utf-8", errors="replace")
except Exception:
cleaned = s
return cleaned
def _log_task_exc(task):
if not task.cancelled():
exc = task.exception()
if exc:
_logger.warning("[agent] background task raised %s: %s", type(exc).__name__, exc)
try:
from .telegram_notify import notify_task_done as _tg_done, notify_task_error as _tg_error, notify_task_start as _tg_start, notify_task_step as _tg_step
except Exception:
async def _tg_done(*_a, **_kw): pass # type: ignore[misc]
async def _tg_error(*_a, **_kw): pass # type: ignore[misc]
async def _tg_start(*_a, **_kw): pass # type: ignore[misc]
async def _tg_step(*_a, **_kw): pass # type: ignore[misc]
router = APIRouter()
# DEP-11: /run_loop route rimossa (era stub 410 che attraversava CORS+rate-limiter+auth inutilmente).
# Migrazione client → /api/agent/tasks ; CF Worker redirect se necessario.
# ─── P17-F5: Persona helpers ──────────────────────────────────────────────────
import re as _re_persona
_PERSONA_KEYWORD_MAP: dict = {}
def _build_persona_kw_map() -> dict:
import re
return {
'researcher': re.compile(
r'\b(cerca|ricerca|research|trova|notizie|news|url|leggi|articolo|wikipedia|'
r'google|fonte|source|scrape|fetch|sito|pagina|web|http|verifica|fact.?check)\b',
re.IGNORECASE
),
'coder': re.compile(
r'\b(codice|code|funzione|function|bug|script|implementa|python|javascript|'
r'typescript|refactor|debug|test|classe|class|api|endpoint|sql|database|html|'
r'css|react|app|applicazione|programma|sviluppa)\b',
re.IGNORECASE
),
'reasoner': re.compile(
r'\b(analizza|pianifica|strategia|decide|ragiona|valuta|confronta|'
r'piano|roadmap|architettura|valutazione|decisione|ottimale|consiglia)\b',
re.IGNORECASE
),
'analyst': re.compile(
r'\b(dati|statistiche|grafico|dataset|csv|dataframe|pandas|matplotlib|'
r'metriche|kpi|trend|visualizza|dashboard|excel|tabella|percentuale|distribuzione)\b',
re.IGNORECASE
),
}
def _classify_persona_server(goal: str) -> str:
"""P17-F5: classifica la persona dal goal via regex scoring. Zero LLM — zero latency."""
global _PERSONA_KEYWORD_MAP
if not _PERSONA_KEYWORD_MAP:
_PERSONA_KEYWORD_MAP = _build_persona_kw_map()
if not goal or len(goal) < 4:
return ''
best, best_score = '', 0
for persona_id, pattern in _PERSONA_KEYWORD_MAP.items():
score = len(pattern.findall(goal))
if score > best_score:
best_score, best = score, persona_id
return best if best_score >= 1 else ''
_PERSONA_CLIENT_CACHE: dict = {}
def _get_persona_llm_client(persona: str, default_client: object) -> object:
"""P17-F5: ritorna il client LLM persona-appropriate via role_router.
Fallback silente su default_client se la chiave API manca o role_router fallisce.
Cache in-process — zero overhead dopo il primo accesso.""";
if not persona:
return default_client
if persona in _PERSONA_CLIENT_CACHE:
return _PERSONA_CLIENT_CACHE[persona]
_ROLE_MAP = {'researcher': 'RESEARCHER', 'analyst': 'RESEARCHER',
'coder': 'CODER', 'reasoner': 'REASONER', 'architect': 'ARCHITECT'}
role_name = _ROLE_MAP.get(persona.lower())
if not role_name:
return default_client
try:
from models.role_router import RoleRouter, Role as _Role
role = getattr(_Role, role_name, None)
if role is None:
return default_client
client = RoleRouter.get_client(role)
_PERSONA_CLIENT_CACHE[persona] = client
return client
except Exception:
return default_client
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