app/core/qdrant_points.py aktualisiert
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Lars 2025-09-04 08:15:35 +02:00
parent fa9fb27428
commit 9db5694dbf

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@ -1,5 +1,5 @@
from __future__ import annotations
import os
import uuid
from typing import List, Tuple
from qdrant_client.http import models as rest
@ -8,39 +8,59 @@ def _names(prefix: str) -> Tuple[str, str, str]:
return f"{prefix}_notes", f"{prefix}_chunks", f"{prefix}_edges"
def points_for_note(prefix: str, note_payload: dict, note_vec: List[float] | None, dim: int) -> Tuple[str, List[rest.PointStruct]]:
def _to_uuid(stable_key: str) -> str:
"""
Liefert (collection_name, [PointStruct]) für die Notes-Collection.
Falls kein Note-Embedding übergeben wurde, wird ein Nullvektor der Länge `dim` verwendet.
Hintergrund: Die Notes-Collection ist in ensure_collections mit Vektor-Dimension angelegt.
Erzeuge eine stabile UUIDv5 aus einem stabilen String-Key (z. B. note_id, chunk_id, edge_id).
Wir verwenden NAMESPACE_URL, damit die UUIDs deterministisch sind.
"""
return str(uuid.uuid5(uuid.NAMESPACE_URL, stable_key))
def points_for_note(
prefix: str,
note_payload: dict,
note_vec: List[float] | None,
dim: int,
) -> Tuple[str, List[rest.PointStruct]]:
"""
(collection_name, [PointStruct]) für die Notes-Collection.
Falls kein Note-Embedding vorhanden -> Nullvektor der Länge `dim`.
"""
notes_col, _, _ = _names(prefix)
vector = note_vec if note_vec is not None else [0.0] * int(dim)
pt = rest.PointStruct(id=note_payload["note_id"], vector=vector, payload=note_payload)
# Qdrant-Point-ID MUSS int oder UUID sein -> aus note_id eine UUIDv5 machen
point_id = _to_uuid(note_payload["note_id"])
pt = rest.PointStruct(id=point_id, vector=vector, payload=note_payload)
return notes_col, [pt]
def points_for_chunks(prefix: str, chunk_payloads: List[dict], vectors: List[List[float]]) -> Tuple[str, List[rest.PointStruct]]:
def points_for_chunks(
prefix: str,
chunk_payloads: List[dict],
vectors: List[List[float]],
) -> Tuple[str, List[rest.PointStruct]]:
"""
Liefert (collection_name, [PointStruct]) für die Chunks-Collection.
Erwartet für jeden Chunk einen Embedding-Vektor (oder Nullvektor, wenn --skip-embed).
(collection_name, [PointStruct]) für die Chunks-Collection.
Erwartet pro Chunk einen Vektor (oder Nullvektor, wenn --skip-embed).
"""
_, chunks_col, _ = _names(prefix)
points: List[rest.PointStruct] = []
for pl, vec in zip(chunk_payloads, vectors):
points.append(rest.PointStruct(id=pl["chunk_id"], vector=vec, payload=pl))
point_id = _to_uuid(pl["chunk_id"])
points.append(rest.PointStruct(id=point_id, vector=vec, payload=pl))
return chunks_col, points
def points_for_edges(prefix: str, edge_payloads: List[dict]) -> Tuple[str, List[rest.PointStruct]]:
"""
Liefert (collection_name, [PointStruct]) für die Edges-Collection.
Edges-Collection ist VEKTORENLOS angelegt nur Payload.
(collection_name, [PointStruct]) für die Edges-Collection.
Edges-Collection ist ohne Vektor angelegt -> nur Payload + UUID-IDs.
"""
_, _, edges_col = _names(prefix)
points: List[rest.PointStruct] = []
for pl in edge_payloads:
points.append(rest.PointStruct(id=pl["edge_id"], payload=pl))
point_id = _to_uuid(pl["edge_id"])
points.append(rest.PointStruct(id=point_id, payload=pl))
return edges_col, points