trustgraph/tests/unit/test_query/conftest.py
cybermaggedon 57eda65674
Knowledge core processing updated for embeddings interface change (#681)
Knowledge core fixed: 
- trustgraph-flow/trustgraph/tables/knowledge.py - v.vector, v.chunk_id
- trustgraph-base/trustgraph/messaging/translators/document_loading.py -
  chunk.vector
- trustgraph-base/trustgraph/messaging/translators/knowledge.py -
  entity.vector
- trustgraph-flow/trustgraph/gateway/dispatch/serialize.py - entity.vector,
  chunk.vector

Test fixtures fixed:
- tests/unit/test_storage/conftest.py - All mock entities/chunks use vector
- tests/unit/test_query/conftest.py - All mock requests use vector
- tests/unit/test_query/test_doc_embeddings_pinecone_query.py - All mock
  messages use vector

These changes align with commit f2ae0e86 which changed the schema from
vectors: list[list[float]] to vector: list[float].
2026-03-10 13:28:16 +00:00

148 lines
No EOL
4.3 KiB
Python

"""
Shared fixtures for query tests
"""
import pytest
from unittest.mock import AsyncMock, MagicMock
@pytest.fixture
def base_query_config():
"""Base configuration for query processors"""
return {
'taskgroup': AsyncMock(),
'id': 'test-query-processor'
}
@pytest.fixture
def qdrant_query_config(base_query_config):
"""Configuration for Qdrant query processors"""
return base_query_config | {
'store_uri': 'http://localhost:6333',
'api_key': 'test-api-key'
}
@pytest.fixture
def mock_qdrant_client():
"""Mock Qdrant client"""
mock_client = MagicMock()
mock_client.query_points.return_value = []
return mock_client
# Graph embeddings query fixtures
@pytest.fixture
def mock_graph_embeddings_request():
"""Mock graph embeddings request message"""
mock_message = MagicMock()
mock_message.vector = [0.1, 0.2, 0.3]
mock_message.limit = 5
mock_message.user = 'test_user'
mock_message.collection = 'test_collection'
return mock_message
@pytest.fixture
def mock_graph_embeddings_multiple_vectors():
"""Mock graph embeddings request with multiple vectors (legacy name, now single vector)"""
mock_message = MagicMock()
mock_message.vector = [0.1, 0.2, 0.3, 0.4]
mock_message.limit = 3
mock_message.user = 'multi_user'
mock_message.collection = 'multi_collection'
return mock_message
@pytest.fixture
def mock_graph_embeddings_query_response():
"""Mock graph embeddings query response from Qdrant"""
mock_point1 = MagicMock()
mock_point1.payload = {'entity': 'entity1'}
mock_point2 = MagicMock()
mock_point2.payload = {'entity': 'entity2'}
return [mock_point1, mock_point2]
@pytest.fixture
def mock_graph_embeddings_uri_response():
"""Mock graph embeddings query response with URIs"""
mock_point1 = MagicMock()
mock_point1.payload = {'entity': 'http://example.com/entity1'}
mock_point2 = MagicMock()
mock_point2.payload = {'entity': 'https://secure.example.com/entity2'}
mock_point3 = MagicMock()
mock_point3.payload = {'entity': 'regular entity'}
return [mock_point1, mock_point2, mock_point3]
# Document embeddings query fixtures
@pytest.fixture
def mock_document_embeddings_request():
"""Mock document embeddings request message"""
mock_message = MagicMock()
mock_message.vector = [0.1, 0.2, 0.3]
mock_message.limit = 5
mock_message.user = 'test_user'
mock_message.collection = 'test_collection'
return mock_message
@pytest.fixture
def mock_document_embeddings_multiple_vectors():
"""Mock document embeddings request with multiple vectors (legacy name, now single vector)"""
mock_message = MagicMock()
mock_message.vector = [0.1, 0.2, 0.3, 0.4]
mock_message.limit = 3
mock_message.user = 'multi_user'
mock_message.collection = 'multi_collection'
return mock_message
@pytest.fixture
def mock_document_embeddings_query_response():
"""Mock document embeddings query response from Qdrant"""
mock_point1 = MagicMock()
mock_point1.payload = {'doc': 'first document chunk'}
mock_point2 = MagicMock()
mock_point2.payload = {'doc': 'second document chunk'}
return [mock_point1, mock_point2]
@pytest.fixture
def mock_document_embeddings_utf8_response():
"""Mock document embeddings query response with UTF-8 content"""
mock_point1 = MagicMock()
mock_point1.payload = {'doc': 'Document with UTF-8: café, naïve, résumé'}
mock_point2 = MagicMock()
mock_point2.payload = {'doc': 'Chinese text: 你好世界'}
return [mock_point1, mock_point2]
@pytest.fixture
def mock_empty_query_response():
"""Mock empty query response"""
return []
@pytest.fixture
def mock_large_query_response():
"""Mock large query response with many results"""
mock_points = []
for i in range(10):
mock_point = MagicMock()
mock_point.payload = {'doc': f'document chunk {i}'}
mock_points.append(mock_point)
return mock_points
@pytest.fixture
def mock_mixed_dimension_vectors():
"""Mock request with vector (legacy name suggested mixed dimensions, now single vector)"""
mock_message = MagicMock()
mock_message.vector = [0.1, 0.2, 0.3, 0.4, 0.5]
mock_message.limit = 5
mock_message.user = 'dim_user'
mock_message.collection = 'dim_collection'
return mock_message