""" Multi-tenant vector store for SimpleMem MCP Server Uses LanceDB for vector storage with per-user table isolation """ import os from typing import List, Optional, Dict, Any from datetime import datetime import lancedb import pyarrow as pa from ..auth.models import MemoryEntry # LanceDB schema for memory entries def get_memory_schema(embedding_dimension: int = 2560) -> pa.Schema: """Get PyArrow schema for memory entries""" return pa.schema([ pa.field("entry_id", pa.string()), pa.field("lossless_restatement", pa.string()), pa.field("keywords", pa.list_(pa.string())), pa.field("timestamp", pa.string()), pa.field("location", pa.string()), pa.field("persons", pa.list_(pa.string())), pa.field("entities", pa.list_(pa.string())), pa.field("topic", pa.string()), pa.field("vector", pa.list_(pa.float32(), embedding_dimension)), pa.field("created_at", pa.string()), ]) class MultiTenantVectorStore: """ Multi-tenant vector storage with per-user table isolation. Each user gets their own LanceDB table for complete data isolation. """ def __init__( self, db_path: str = "./data/lancedb", embedding_dimension: int = 2560, ): self.db_path = db_path self.embedding_dimension = embedding_dimension os.makedirs(db_path, exist_ok=True) # Connect to LanceDB self.db = lancedb.connect(db_path) # Cache for opened tables self._tables: Dict[str, Any] = {} def _get_table(self, table_name: str) -> Any: """Get or create a user's table""" if table_name not in self._tables: if table_name in self.db.table_names(): self._tables[table_name] = self.db.open_table(table_name) else: # Create new table with schema schema = get_memory_schema(self.embedding_dimension) self._tables[table_name] = self.db.create_table( table_name, schema=schema, ) return self._tables[table_name] async def add_entries( self, table_name: str, entries: List[MemoryEntry], embeddings: List[List[float]], ) -> int: """ Add memory entries to a user's table Args: table_name: User's table name entries: List of MemoryEntry objects embeddings: List of embedding vectors Returns: Number of entries added """ if len(entries) != len(embeddings): raise ValueError("Number of entries must match number of embeddings") if not entries: return 0 table = self._get_table(table_name) created_at = datetime.utcnow().isoformat() # Build records records = [] for entry, embedding in zip(entries, embeddings): records.append({ "entry_id": entry.entry_id, "lossless_restatement": entry.lossless_restatement, "keywords": entry.keywords or [], "timestamp": entry.timestamp or "", "location": entry.location or "", "persons": entry.persons or [], "entities": entry.entities or [], "topic": entry.topic or "", "vector": embedding, "created_at": created_at, }) # Add to table table.add(records) return len(records) async def semantic_search( self, table_name: str, query_embedding: List[float], top_k: int = 25, ) -> List[MemoryEntry]: """ Perform semantic search using vector similarity Args: table_name: User's table name query_embedding: Query embedding vector top_k: Number of results to return Returns: List of matching MemoryEntry objects """ table = self._get_table(table_name) try: # Check if table has data if table.count_rows() == 0: return [] results = ( table.search(query_embedding) .limit(top_k) .to_pandas() ) entries = [] for _, row in results.iterrows(): entries.append(MemoryEntry( entry_id=row["entry_id"], lossless_restatement=row["lossless_restatement"], keywords=list(row["keywords"]) if row["keywords"] is not None else [], timestamp=row["timestamp"] if row["timestamp"] else None, location=row["location"] if row["location"] else None, persons=list(row["persons"]) if row["persons"] is not None else [], entities=list(row["entities"]) if row["entities"] is not None else [], topic=row["topic"] if row["topic"] else None, )) return entries except Exception as e: print(f"Semantic search error: {e}") return [] async def keyword_search( self, table_name: str, keywords: List[str], top_k: int = 5, ) -> List[MemoryEntry]: """ Perform keyword-based search (BM25-style matching) Args: table_name: User's table name keywords: List of keywords to match top_k: Number of results to return Returns: List of matching MemoryEntry objects """ table = self._get_table(table_name) try: if table.count_rows() == 0: return [] # Load all entries for keyword matching df = table.to_pandas() # Score each entry scores = [] for idx, row in df.iterrows(): score = 0 entry_keywords = set(k.lower() for k in (row["keywords"] or [])) entry_text = row["lossless_restatement"].lower() for kw in keywords: kw_lower = kw.lower() # Keyword list match: 2 points if kw_lower in entry_keywords: score += 2 # Text match: 1 point if kw_lower in entry_text: score += 1 scores.append((idx, score)) # Sort by score and get top-k scores.sort(key=lambda x: x[1], reverse=True) top_indices = [idx for idx, score in scores[:top_k] if score > 0] entries = [] for idx in top_indices: row = df.iloc[idx] entries.append(MemoryEntry( entry_id=row["entry_id"], lossless_restatement=row["lossless_restatement"], keywords=list(row["keywords"]) if row["keywords"] is not None else [], timestamp=row["timestamp"] if row["timestamp"] else None, location=row["location"] if row["location"] else None, persons=list(row["persons"]) if row["persons"] is not None else [], entities=list(row["entities"]) if row["entities"] is not None else [], topic=row["topic"] if row["topic"] else None, )) return entries except Exception as e: print(f"Keyword search error: {e}") return [] async def structured_search( self, table_name: str, persons: Optional[List[str]] = None, location: Optional[str] = None, entities: Optional[List[str]] = None, timestamp_start: Optional[str] = None, timestamp_end: Optional[str] = None, top_k: int = 5, ) -> List[MemoryEntry]: """ Perform structured/metadata-based search Args: table_name: User's table name persons: Filter by person names location: Filter by location entities: Filter by entities timestamp_start: Start of timestamp range timestamp_end: End of timestamp range top_k: Number of results to return Returns: List of matching MemoryEntry objects """ table = self._get_table(table_name) try: if table.count_rows() == 0: return [] df = table.to_pandas() # Apply filters mask = [True] * len(df) if persons: persons_lower = set(p.lower() for p in persons) for i, row in df.iterrows(): row_persons = set(p.lower() for p in (row["persons"] or [])) if not persons_lower.intersection(row_persons): mask[i] = False if location: location_lower = location.lower() for i, row in df.iterrows(): if mask[i] and row["location"]: if location_lower not in row["location"].lower(): mask[i] = False elif mask[i]: mask[i] = False if entities: entities_lower = set(e.lower() for e in entities) for i, row in df.iterrows(): if mask[i]: row_entities = set(e.lower() for e in (row["entities"] or [])) if not entities_lower.intersection(row_entities): mask[i] = False if timestamp_start: for i, row in df.iterrows(): if mask[i] and row["timestamp"]: if row["timestamp"] < timestamp_start: mask[i] = False if timestamp_end: for i, row in df.iterrows(): if mask[i] and row["timestamp"]: if row["timestamp"] > timestamp_end: mask[i] = False # Get filtered results filtered_df = df[[m for m in mask]][:top_k] entries = [] for _, row in filtered_df.iterrows(): entries.append(MemoryEntry( entry_id=row["entry_id"], lossless_restatement=row["lossless_restatement"], keywords=list(row["keywords"]) if row["keywords"] is not None else [], timestamp=row["timestamp"] if row["timestamp"] else None, location=row["location"] if row["location"] else None, persons=list(row["persons"]) if row["persons"] is not None else [], entities=list(row["entities"]) if row["entities"] is not None else [], topic=row["topic"] if row["topic"] else None, )) return entries except Exception as e: print(f"Structured search error: {e}") return [] async def get_all_entries(self, table_name: str) -> List[MemoryEntry]: """Get all entries from a user's table""" table = self._get_table(table_name) try: if table.count_rows() == 0: return [] df = table.to_pandas() entries = [] for _, row in df.iterrows(): entries.append(MemoryEntry( entry_id=row["entry_id"], lossless_restatement=row["lossless_restatement"], keywords=list(row["keywords"]) if row["keywords"] is not None else [], timestamp=row["timestamp"] if row["timestamp"] else None, location=row["location"] if row["location"] else None, persons=list(row["persons"]) if row["persons"] is not None else [], entities=list(row["entities"]) if row["entities"] is not None else [], topic=row["topic"] if row["topic"] else None, )) return entries except Exception as e: print(f"Get all entries error: {e}") return [] async def count_entries(self, table_name: str) -> int: """Count entries in a user's table""" table = self._get_table(table_name) try: return table.count_rows() except Exception: return 0 async def clear_table(self, table_name: str) -> bool: """Clear all entries from a user's table""" try: if table_name in self._tables: del self._tables[table_name] if table_name in self.db.table_names(): self.db.drop_table(table_name) # Recreate empty table self._get_table(table_name) return True except Exception as e: print(f"Clear table error: {e}") return False async def delete_table(self, table_name: str) -> bool: """Completely delete a user's table""" try: if table_name in self._tables: del self._tables[table_name] if table_name in self.db.table_names(): self.db.drop_table(table_name) return True except Exception as e: print(f"Delete table error: {e}") return False def get_stats(self, table_name: str) -> Dict[str, Any]: """Get statistics for a user's table""" try: table = self._get_table(table_name) count = table.count_rows() return { "table_name": table_name, "entry_count": count, "embedding_dimension": self.embedding_dimension, } except Exception as e: return { "table_name": table_name, "entry_count": 0, "embedding_dimension": self.embedding_dimension, "error": str(e), }