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Asa n'est plus bloqué sur le seul contexte « doc cluster grounding-strict ». Le client choisit un contexte par requête ; le serveur change le system prompt ET injecte les données live du domaine, puis renvoie le contexte assemblé pour le visualiseur du HUD. - contexts.py : profils funk / ghostfolio / grafana / alerting / cluster (system prompt + sources) + assemble() (prompt final + structure de visualisation). - sources.py : fetchers live best-effort (Ghostfolio auth+details, Alertmanager alerts hors Watchdog, Prometheus cluster/metrics), env-config, dégradation propre. - brain.py : ask() reçoit le system prompt déjà assemblé (assemblage remonté). - app.py : /v1/ask accepte `context`, renvoie context_id + le contexte assemblé ; nouveau GET /v1/contexts ; RAG doc conditionné au profil. - config.py : URLs sources + STT_GHOSTFOLIO_TOKEN + STT_DEFAULT_CONTEXT. - deployment : env in-cluster (Prometheus/Alertmanager monitoring, Ghostfolio ai), jeton via secret optionnel stt-server-secrets/ghostfolio-token. - bump 0.3.1 → 0.4.0. Validé en local : assemblage (blocs+RAG+mémoire), parsing des sources (mock), endpoints /v1/contexts et /v1/ask (LLM mocké) — context_id, visualiseur, fallback contexte inconnu → funk. Co-authored-by: Claude Opus 4.8 <noreply@anthropic.com>
162 lines
5.6 KiB
Python
162 lines
5.6 KiB
Python
"""STT-server — API FastAPI pour les clients STT.
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Endpoints :
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GET /healthz → état du service
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POST /v1/ask {text} → {reply} (requête AI, orchestrée vers LiteLLM)
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"""
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from __future__ import annotations
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import logging
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import time
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from contextlib import asynccontextmanager
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import httpx
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from fastapi import BackgroundTasks, FastAPI, HTTPException
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from pydantic import BaseModel
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from stt_server import __version__
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from stt_server import brain
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from stt_server.brain import ask as brain_ask
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from stt_server.config import settings
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from stt_server.contexts import CONTEXTS, assemble, get_context
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from stt_server.knowledge import Knowledge
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from stt_server.longterm import LongTermMemory
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from stt_server.memory import SessionStore
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from stt_server.sources import fetch_blocks
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log = logging.getLogger("stt_server")
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# uvicorn ne configure que ses propres loggers : on attache notre handler en INFO
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# pour que les lignes de timing (`ask … recall/gen/total`) sortent dans les logs du pod.
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if not log.handlers:
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log.setLevel(logging.INFO)
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_h = logging.StreamHandler()
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_h.setFormatter(logging.Formatter("%(levelname)s: %(name)s: %(message)s"))
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log.addHandler(_h)
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log.propagate = False
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sessions = SessionStore()
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longterm = LongTermMemory() if settings.memory_longterm else None
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knowledge = Knowledge() if settings.docs_rag else None
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@asynccontextmanager
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async def lifespan(app: FastAPI):
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yield
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# Fermeture propre des clients HTTP persistants (pooling).
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await brain.aclose()
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if longterm:
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await longterm.aclose()
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if knowledge:
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await knowledge.aclose()
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app = FastAPI(title="STT-server", version=__version__, lifespan=lifespan)
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class AskRequest(BaseModel):
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text: str
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model: str | None = None # alias LiteLLM ; défaut serveur si absent
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session_id: str | None = None # mémoire court-terme : fil de conversation
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context: str | None = None # contexte présélectionné (funk/ghostfolio/…)
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class AskReply(BaseModel):
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reply: str
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model: str
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context_id: str # contexte effectivement utilisé
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context: dict | None = None # contexte assemblé (visualiseur HUD)
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@app.get("/healthz")
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async def healthz() -> dict:
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return {"status": "ok", "version": __version__}
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@app.get("/v1/models")
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async def v1_models() -> dict:
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return {"default": settings.model, "available": settings.allowed_models}
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@app.get("/v1/contexts")
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async def v1_contexts() -> dict:
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"""Contextes présélectionnables (pour le sélecteur du HUD)."""
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return {
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"default": settings.default_context,
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"contexts": [
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{"id": c.id, "label": c.label, "icon": c.icon, "description": c.description}
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for c in CONTEXTS.values()
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],
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}
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@app.get("/v1/memory/health")
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async def v1_memory_health() -> dict:
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"""État de la mémoire long-terme (embeddings + Qdrant + collection), erreurs exposées."""
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if not longterm:
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return {"enabled": False}
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return await longterm.health()
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@app.post("/v1/reset")
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async def v1_reset(req: AskRequest) -> dict:
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if req.session_id:
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sessions.reset(req.session_id)
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return {"status": "reset"}
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@app.post("/v1/ask", response_model=AskReply)
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async def v1_ask(req: AskRequest, background: BackgroundTasks) -> AskReply:
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text = req.text.strip()
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if not text:
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raise HTTPException(status_code=400, detail="text vide")
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model = req.model or settings.model
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if model not in settings.allowed_models:
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raise HTTPException(
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status_code=400,
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detail=f"modèle '{model}' non autorisé ; dispo : {settings.allowed_models}",
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)
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ctx = get_context(req.context)
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t0 = time.perf_counter()
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history = sessions.history(req.session_id) if req.session_id else None
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# recall : timeout serré, dégrade vite ; renvoie aussi le vecteur (réutilisé ci-dessous)
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memories, qvec = await longterm.recall(text) if longterm else ([], None)
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# RAG doc : seulement si le contexte le demande (réutilise qvec, même embedder nomic)
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docs = []
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if "docs" in ctx.sources and knowledge:
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docs = await knowledge.search(text, qvec)
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# Sources live du contexte (Ghostfolio / Prometheus / Alertmanager) — best-effort
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blocks: list = []
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live = tuple(s for s in ctx.sources if s != "docs")
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if live:
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async with httpx.AsyncClient() as c:
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blocks = await fetch_blocks(c, live)
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t_recall = time.perf_counter()
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system, ctx_debug = assemble(ctx, blocks=blocks, docs=docs, memories=memories)
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try:
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reply = await brain_ask(text, system, model, history)
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except httpx.HTTPError as e:
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raise HTTPException(status_code=502, detail=f"upstream LiteLLM : {e}") from e
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t_gen = time.perf_counter()
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if req.session_id:
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sessions.add(req.session_id, "user", text)
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sessions.add(req.session_id, "assistant", reply)
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# store : APRÈS la réponse (BackgroundTasks) → hors latence perçue, et on réutilise qvec
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if longterm:
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background.add_task(longterm.store, req.session_id or "anon", text, qvec)
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log.info(
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"ask ctx=%s model=%s recall+src=%.0fms gen=%.0fms total=%.0fms mem=%d docs=%d blocks=%d",
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ctx.id, model,
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(t_recall - t0) * 1000,
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(t_gen - t_recall) * 1000,
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(t_gen - t0) * 1000,
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len(memories), len(docs), len(blocks),
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)
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return AskReply(reply=reply, model=model, context_id=ctx.id, context=ctx_debug)
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def run() -> None:
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"""Entrypoint `stt-server` (dev local). En prod : uvicorn via le conteneur."""
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import uvicorn
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uvicorn.run(app, host="0.0.0.0", port=8000) # noqa: S104 — service interne au cluster
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