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* feat(stt): mémoire long-terme sémantique via Qdrant (5b) Serveur : longterm.py — collection Qdrant stt-memory (embeddings Qwen3 gpu-01, dim auto, Cosine), recall top-k injecté au prompt, remember des tours user. Tout dégrade proprement si Qdrant/embeddings injoignables (la mémoire court-terme tient). Env STT_MEMORY_LONGTERM, STT_QDRANT_URL, STT_EMBED_URL, STT_MEMORY_TOPK. Testé en process : dégradation OK (Qdrant down → mem=0, pas de crash, court-terme tient). Qdrant réparé le 17/06 (5c). Recherche sémantique réelle à valider sur cluster. Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com> Claude-Session: https://claude.ai/code/session_013FmcxGsyXZXogiAHQLjnZT * feat(stt): endpoint /v1/memory/health + upsert Qdrant synchrone - /v1/memory/health sonde activement embeddings + Qdrant + collection et expose les erreurs (recall/remember dégradent en silence → indébogables). Permet de diagnostiquer la mémoire long-terme sans kubectl exec. - remember() : upsert avec ?wait=true → le souvenir est immédiatement cherchable (sans wait, Qdrant met l'écriture en file → un recall cross-session immédiat pouvait le rater). Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com> Claude-Session: https://claude.ai/code/session_013FmcxGsyXZXogiAHQLjnZT --------- Co-authored-by: Claude <noreply@anthropic.com>
128 lines
5.4 KiB
Python
128 lines
5.4 KiB
Python
"""Mémoire long-terme sémantique (Qdrant).
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Stocke les tours utilisateur comme vecteurs dans la collection `stt-memory` et retrouve
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les souvenirs pertinents pour les injecter dans le prompt. Embeddings via Qwen3 (llama-server
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gpu-01), comme le RAG. **Tout dégrade proprement** : si Qdrant ou l'endpoint d'embedding
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est injoignable, `recall` renvoie [] et `remember` ne fait rien (la mémoire court-terme
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de session continue de fonctionner).
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> Caveat qualité : Qwen3 n'est pas un modèle d'embedding dédié (cosinus uniformément hauts) ;
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> la recherche est approximative. Voir admin/ia/rag.md pour la piste nomic-embed-text.
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"""
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from __future__ import annotations
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import time
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import uuid
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import httpx
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from stt_server.config import settings
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class LongTermMemory:
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def __init__(self) -> None:
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self.qdrant = settings.qdrant_url.rstrip("/")
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self.collection = settings.qdrant_collection
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self.embed_url = settings.embed_url
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self.embed_model = settings.embed_model
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self.top_k = settings.memory_top_k
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self._ready = False
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async def _embed(self, client: httpx.AsyncClient, text: str) -> list[float]:
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r = await client.post(
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self.embed_url,
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json={"model": self.embed_model, "input": text},
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timeout=30,
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)
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r.raise_for_status()
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return r.json()["data"][0]["embedding"]
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async def _ensure_collection(self, client: httpx.AsyncClient, dim: int) -> None:
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if self._ready:
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return
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r = await client.get(f"{self.qdrant}/collections/{self.collection}")
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if r.status_code == 404:
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await client.put(
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f"{self.qdrant}/collections/{self.collection}",
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json={"vectors": {"size": dim, "distance": "Cosine"}},
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)
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self._ready = True
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async def recall(self, text: str) -> list[str]:
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"""Souvenirs pertinents (texte) ou [] si indisponible."""
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try:
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async with httpx.AsyncClient(timeout=20) as client:
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vec = await self._embed(client, text)
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r = await client.post(
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f"{self.qdrant}/collections/{self.collection}/points/search",
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json={"vector": vec, "limit": self.top_k, "with_payload": True},
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)
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if r.status_code == 404: # collection pas encore créée
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return []
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r.raise_for_status()
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pts = r.json().get("result", [])
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return [p["payload"]["text"] for p in pts if p.get("payload", {}).get("text")]
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except Exception: # noqa: BLE001 — dégrade silencieusement
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return []
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async def health(self) -> dict:
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"""Diagnostic actif : sonde embeddings + Qdrant + collection, sans rien avaler.
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Contrairement à recall/remember (qui dégradent en silence), expose les erreurs
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pour pouvoir déboguer la mémoire long-terme sans `kubectl exec`.
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"""
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out: dict = {
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"enabled": True,
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"qdrant_url": self.qdrant,
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"embed_url": self.embed_url,
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"collection": self.collection,
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"embed": {"ok": False},
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"qdrant": {"ok": False},
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}
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async with httpx.AsyncClient(timeout=20) as client:
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# 1) embeddings
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try:
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vec = await self._embed(client, "ping mémoire")
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out["embed"] = {"ok": True, "dim": len(vec)}
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except Exception as e: # noqa: BLE001 — on veut l'erreur
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out["embed"] = {"ok": False, "error": f"{type(e).__name__}: {e}"}
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# 2) Qdrant + collection
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try:
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r = await client.get(f"{self.qdrant}/collections")
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r.raise_for_status()
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names = [c["name"] for c in r.json().get("result", {}).get("collections", [])]
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exists = self.collection in names
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qdrant: dict = {"ok": True, "collections": names, "collection_exists": exists}
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if exists:
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cr = await client.get(f"{self.qdrant}/collections/{self.collection}")
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if cr.status_code == 200:
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qdrant["points_count"] = cr.json().get("result", {}).get("points_count")
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out["qdrant"] = qdrant
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except Exception as e: # noqa: BLE001
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out["qdrant"] = {"ok": False, "error": f"{type(e).__name__}: {e}"}
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return out
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async def remember(self, session_id: str, text: str) -> None:
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try:
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async with httpx.AsyncClient(timeout=20) as client:
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vec = await self._embed(client, text)
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await self._ensure_collection(client, len(vec))
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await client.put(
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f"{self.qdrant}/collections/{self.collection}/points?wait=true",
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json={
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"points": [
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{
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"id": str(uuid.uuid4()),
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"vector": vec,
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"payload": {
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"text": text,
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"session_id": session_id,
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"ts": time.time(),
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},
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}
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]
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},
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)
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except Exception: # noqa: BLE001 — dégrade silencieusement
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pass
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