misc / SimpleMem /OmniSimpleMem /tests /test_vector_store.py
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"""
Tests for VectorStore (numpy fallback mode -- no FAISS required).
"""
import sys
import os
import json
sys.path.insert(0, os.path.join(os.path.dirname(__file__), ".."))
import pytest
import numpy as np
from omni_memory.core.config import EmbeddingConfig
from omni_memory.storage.vector_store import VectorStore
DIM = 8 # small dimension for tests
@pytest.fixture
def store(tmp_path):
"""Create a VectorStore using numpy backend."""
cfg = EmbeddingConfig(embedding_dim=DIM)
return VectorStore(
storage_path=str(tmp_path / "vectors"),
config=cfg,
use_faiss=False, # force numpy fallback
)
def _random_vec(dim=DIM, seed=None):
rng = np.random.RandomState(seed)
v = rng.randn(dim).astype(np.float32)
return v.tolist()
def _unit_vec(index, dim=DIM):
"""Create a unit vector with 1.0 at the given index."""
v = np.zeros(dim, dtype=np.float32)
v[index] = 1.0
return v.tolist()
# ---------------------------------------------------------------------------
# Basic add / search
# ---------------------------------------------------------------------------
class TestVectorStoreBasic:
def test_empty_store_search(self, store):
results = store.search(_random_vec(), top_k=5)
assert results == []
def test_add_single_and_search(self, store):
vec = _random_vec(seed=42)
store.add("mau_001", vec)
assert store.size() == 1
results = store.search(vec, top_k=1)
assert len(results) >= 1
assert results[0][0] == "mau_001"
# Self-similarity should be close to 1.0
assert results[0][1] > 0.99
def test_add_multiple_and_rank(self, store):
# Add two orthogonal-ish vectors
v1 = _unit_vec(0)
v2 = _unit_vec(1)
store.add("mau_a", v1)
store.add("mau_b", v2)
# Query with v1 should rank mau_a first
results = store.search(v1, top_k=2)
assert results[0][0] == "mau_a"
def test_size(self, store):
assert store.size() == 0
store.add("m1", _random_vec(seed=1))
store.add("m2", _random_vec(seed=2))
assert store.size() == 2
def test_count(self, store):
store.add("m1", _random_vec(seed=1))
assert store.count() >= 1
# ---------------------------------------------------------------------------
# Cosine similarity correctness
# ---------------------------------------------------------------------------
class TestCosineSimilarity:
def test_identical_vectors_score_one(self, store):
vec = _random_vec(seed=10)
store.add("mau_same", vec)
results = store.search(vec, top_k=1)
assert abs(results[0][1] - 1.0) < 1e-5
def test_orthogonal_vectors_score_zero(self, store):
v1 = _unit_vec(0)
v2 = _unit_vec(1)
store.add("mau_orth", v1)
results = store.search(v2, top_k=1)
# Cosine similarity of orthogonal vectors ~ 0
assert abs(results[0][1]) < 1e-5
def test_opposite_vectors_negative(self, store):
vec = [1.0] * DIM
neg = [-1.0] * DIM
store.add("mau_pos", vec)
results = store.search(neg, top_k=1)
# Opposite vectors should have negative similarity
assert results[0][1] < 0
# ---------------------------------------------------------------------------
# Batch operations
# ---------------------------------------------------------------------------
class TestBatchOperations:
def test_add_batch(self, store):
items = [(f"mau_{i}", _random_vec(seed=i)) for i in range(10)]
store.add_batch(items)
assert store.size() == 10
def test_search_batch(self, store):
items = [(f"mau_{i}", _random_vec(seed=i)) for i in range(5)]
store.add_batch(items)
queries = [_random_vec(seed=0), _random_vec(seed=1)]
results = store.search_batch(queries, top_k=3)
assert len(results) == 2
for r in results:
assert len(r) <= 3
# ---------------------------------------------------------------------------
# Persistence (save / load)
# ---------------------------------------------------------------------------
class TestPersistence:
def test_save_and_reload(self, tmp_path):
cfg = EmbeddingConfig(embedding_dim=DIM)
path = str(tmp_path / "persist_vectors")
# Create, add, save
s1 = VectorStore(storage_path=path, config=cfg, use_faiss=False)
s1.add("mau_p1", _random_vec(seed=100))
s1.add("mau_p2", _random_vec(seed=200))
s1.save()
# Reload
s2 = VectorStore(storage_path=path, config=cfg, use_faiss=False)
assert s2.size() == 2
results = s2.search(_random_vec(seed=100), top_k=1)
assert results[0][0] == "mau_p1"
# ---------------------------------------------------------------------------
# Delete and rebuild
# ---------------------------------------------------------------------------
class TestDeleteRebuild:
def test_delete_marks_none(self, store):
store.add("mau_del", _random_vec(seed=1))
assert store.delete("mau_del") is True
assert store.delete("nonexistent") is False
def test_rebuild_index(self, store):
store.add("old_1", _random_vec(seed=1))
store.add("old_2", _random_vec(seed=2))
assert store.size() == 2
new_items = [("new_1", _random_vec(seed=10))]
store.rebuild_index(new_items)
assert store.size() == 1
def test_get_embedding(self, store):
vec = _random_vec(seed=42)
store.add("mau_emb", vec)
retrieved = store.get_embedding("mau_emb")
assert retrieved is not None
# Should be normalized version of original
assert retrieved.shape == (DIM,)
def test_get_embedding_missing(self, store):
assert store.get_embedding("nonexistent") is None