trustgraph/trustgraph-flow/trustgraph/query/graph_embeddings/qdrant/service.py
cybermaggedon 6c7af8789d
Release 1.4 -> master (#524)
Catch up
2025-09-20 16:00:37 +01:00

140 lines
4 KiB
Python
Executable file

"""
Graph embeddings query service. Input is vector, output is list of
entities
"""
import logging
from qdrant_client import QdrantClient
from qdrant_client.models import PointStruct
from qdrant_client.models import Distance, VectorParams
from .... schema import GraphEmbeddingsResponse
from .... schema import Error, Value
from .... base import GraphEmbeddingsQueryService
# Module logger
logger = logging.getLogger(__name__)
default_ident = "ge-query"
default_store_uri = 'http://localhost:6333'
class Processor(GraphEmbeddingsQueryService):
def __init__(self, **params):
store_uri = params.get("store_uri", default_store_uri)
#optional api key
api_key = params.get("api_key", None)
super(Processor, self).__init__(
**params | {
"store_uri": store_uri,
"api_key": api_key,
}
)
self.qdrant = QdrantClient(url=store_uri, api_key=api_key)
self.last_collection = None
def ensure_collection_exists(self, collection, dim):
"""Ensure collection exists, create if it doesn't"""
if collection != self.last_collection:
if not self.qdrant.collection_exists(collection):
try:
self.qdrant.create_collection(
collection_name=collection,
vectors_config=VectorParams(
size=dim, distance=Distance.COSINE
),
)
logger.info(f"Created collection: {collection}")
except Exception as e:
logger.error(f"Qdrant collection creation failed: {e}")
raise e
self.last_collection = collection
def create_value(self, ent):
if ent.startswith("http://") or ent.startswith("https://"):
return Value(value=ent, is_uri=True)
else:
return Value(value=ent, is_uri=False)
async def query_graph_embeddings(self, msg):
try:
entity_set = set()
entities = []
for vec in msg.vectors:
dim = len(vec)
collection = (
"t_" + msg.user + "_" + msg.collection
)
self.ensure_collection_exists(collection, dim)
# Heuristic hack, get (2*limit), so that we have more chance
# of getting (limit) entities
search_result = self.qdrant.query_points(
collection_name=collection,
query=vec,
limit=msg.limit * 2,
with_payload=True,
).points
for r in search_result:
ent = r.payload["entity"]
# De-dupe entities
if ent not in entity_set:
entity_set.add(ent)
entities.append(ent)
# Keep adding entities until limit
if len(entity_set) >= msg.limit: break
# Keep adding entities until limit
if len(entity_set) >= msg.limit: break
ents2 = []
for ent in entities:
ents2.append(self.create_value(ent))
entities = ents2
logger.debug("Send response...")
return entities
except Exception as e:
logger.error(f"Exception querying graph embeddings: {e}", exc_info=True)
raise e
@staticmethod
def add_args(parser):
GraphEmbeddingsQueryService.add_args(parser)
parser.add_argument(
'-t', '--store-uri',
default=default_store_uri,
help=f'Qdrant store URI (default: {default_store_uri})'
)
parser.add_argument(
'-k', '--api-key',
default=None,
help=f'API key for qdrant (default: None)'
)
def run():
Processor.launch(default_ident, __doc__)