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SimpleMem - Efficient Lifelong Memory for LLM Agents
Main system class integrating all components
"""
from typing import List, Optional
from models.memory_entry import Dialogue, MemoryEntry
from utils.llm_client import LLMClient
from utils.embedding import EmbeddingModel
from database.vector_store import VectorStore
from core.memory_builder import MemoryBuilder
from core.hybrid_retriever import HybridRetriever
from core.answer_generator import AnswerGenerator
import config
class SimpleMemSystem:
"""
SimpleMem Main System
Three-stage pipeline based on Semantic Lossless Compression:
1. Semantic Structured Compression: add_dialogue() -> MemoryBuilder -> VectorStore
2. Structured Indexing and Recursive Consolidation: (background evolution - future work)
3. Adaptive Query-Aware Retrieval: ask() -> HybridRetriever -> AnswerGenerator
"""
def __init__(
self,
api_key: Optional[str] = None,
model: Optional[str] = None,
base_url: Optional[str] = None,
db_path: Optional[str] = None,
table_name: Optional[str] = None,
clear_db: bool = False,
enable_thinking: Optional[bool] = None,
use_streaming: Optional[bool] = None,
enable_planning: Optional[bool] = None,
enable_reflection: Optional[bool] = None,
max_reflection_rounds: Optional[int] = None,
enable_parallel_processing: Optional[bool] = None,
max_parallel_workers: Optional[int] = None,
enable_parallel_retrieval: Optional[bool] = None,
max_retrieval_workers: Optional[int] = None
):
"""
Initialize system
Args:
- api_key: OpenAI API key
- model: LLM model name
- base_url: Custom OpenAI base URL (for compatible APIs)
- db_path: Database path
- table_name: Memory table name (for parallel processing)
- clear_db: Whether to clear existing database
- enable_thinking: Enable deep thinking mode (for Qwen and compatible models)
- use_streaming: Enable streaming responses
- enable_planning: Enable multi-query planning for retrieval (None=use config default)
- enable_reflection: Enable reflection-based additional retrieval (None=use config default)
- max_reflection_rounds: Maximum number of reflection rounds (None=use config default)
- enable_parallel_processing: Enable parallel processing for memory building (None=use config default)
- max_parallel_workers: Maximum number of parallel workers for memory building (None=use config default)
- enable_parallel_retrieval: Enable parallel processing for retrieval queries (None=use config default)
- max_retrieval_workers: Maximum number of parallel workers for retrieval (None=use config default)
"""
print("=" * 60)
print("Initializing SimpleMem System")
print("=" * 60)
# Initialize core components
self.llm_client = LLMClient(
api_key=api_key,
model=model,
base_url=base_url,
enable_thinking=enable_thinking,
use_streaming=use_streaming
)
self.embedding_model = EmbeddingModel()
self.vector_store = VectorStore(
db_path=db_path,
embedding_model=self.embedding_model,
table_name=table_name
)
if clear_db:
print("\nClearing existing database...")
self.vector_store.clear()
# Initialize three major modules
self.memory_builder = MemoryBuilder(
llm_client=self.llm_client,
vector_store=self.vector_store,
enable_parallel_processing=enable_parallel_processing,
max_parallel_workers=max_parallel_workers
)
self.hybrid_retriever = HybridRetriever(
llm_client=self.llm_client,
vector_store=self.vector_store,
enable_planning=enable_planning,
enable_reflection=enable_reflection,
max_reflection_rounds=max_reflection_rounds,
enable_parallel_retrieval=enable_parallel_retrieval,
max_retrieval_workers=max_retrieval_workers
)
self.answer_generator = AnswerGenerator(
llm_client=self.llm_client
)
print("\nSystem initialization complete!")
print("=" * 60)
def add_dialogue(self, speaker: str, content: str, timestamp: Optional[str] = None):
"""
Add a single dialogue
Args:
- speaker: Speaker name
- content: Dialogue content
- timestamp: Timestamp (ISO 8601 format)
"""
dialogue_id = self.memory_builder.processed_count + len(self.memory_builder.dialogue_buffer) + 1
dialogue = Dialogue(
dialogue_id=dialogue_id,
speaker=speaker,
content=content,
timestamp=timestamp
)
self.memory_builder.add_dialogue(dialogue)
def add_dialogues(self, dialogues: List[Dialogue]):
"""
Batch add dialogues
Args:
- dialogues: List of dialogues
"""
self.memory_builder.add_dialogues(dialogues)
def finalize(self):
"""
Finalize dialogue input, process any remaining buffer (safety check)
Note: In parallel mode, remaining dialogues are already processed
"""
self.memory_builder.process_remaining()
def ask(self, question: str) -> str:
"""
Ask question - Core Q&A interface
Args:
- question: User question
Returns:
- Answer
"""
print("\n" + "=" * 60)
print(f"Question: {question}")
print("=" * 60)
# Stage 2: Hybrid retrieval
contexts = self.hybrid_retriever.retrieve(question)
# Stage 3: Answer generation
answer = self.answer_generator.generate_answer(question, contexts)
print("\nAnswer:")
print(answer)
print("=" * 60 + "\n")
return answer
def get_all_memories(self) -> List[MemoryEntry]:
"""
Get all memory entries (for debugging)
"""
return self.vector_store.get_all_entries()
def print_memories(self):
"""
Print all memory entries (for debugging)
"""
memories = self.get_all_memories()
print("\n" + "=" * 60)
print(f"All Memory Entries ({len(memories)} total)")
print("=" * 60)
for i, memory in enumerate(memories, 1):
print(f"\n[Entry {i}]")
print(f"ID: {memory.entry_id}")
print(f"Restatement: {memory.lossless_restatement}")
if memory.timestamp:
print(f"Time: {memory.timestamp}")
if memory.location:
print(f"Location: {memory.location}")
if memory.persons:
print(f"Persons: {', '.join(memory.persons)}")
if memory.entities:
print(f"Entities: {', '.join(memory.entities)}")
if memory.topic:
print(f"Topic: {memory.topic}")
print(f"Keywords: {', '.join(memory.keywords)}")
print("\n" + "=" * 60)
# Convenience function
def create_system(
clear_db: bool = False,
enable_planning: Optional[bool] = None,
enable_reflection: Optional[bool] = None,
max_reflection_rounds: Optional[int] = None,
enable_parallel_processing: Optional[bool] = None,
max_parallel_workers: Optional[int] = None,
enable_parallel_retrieval: Optional[bool] = None,
max_retrieval_workers: Optional[int] = None
) -> SimpleMemSystem:
"""
Create SimpleMem system instance (uses config.py defaults when None)
"""
return SimpleMemSystem(
clear_db=clear_db,
enable_planning=enable_planning,
enable_reflection=enable_reflection,
max_reflection_rounds=max_reflection_rounds,
enable_parallel_processing=enable_parallel_processing,
max_parallel_workers=max_parallel_workers,
enable_parallel_retrieval=enable_parallel_retrieval,
max_retrieval_workers=max_retrieval_workers
)
if __name__ == "__main__":
# Quick test with Qwen3 integration
print("๐ Running SimpleMem Quick Test with Qwen3...")
system = create_system(clear_db=True)
print(f"๐ Using embedding model: {system.memory_builder.vector_store.embedding_model.model_name}")
print(f"๐ Model type: {system.memory_builder.vector_store.embedding_model.model_type}")
# Add some test dialogues
system.add_dialogue("Alice", "Bob, let's meet at Starbucks tomorrow at 2pm to discuss the new product", "2025-11-15T14:30:00")
system.add_dialogue("Bob", "Okay, I'll prepare the materials", "2025-11-15T14:31:00")
system.add_dialogue("Alice", "Remember to bring the market research report from last time", "2025-11-15T14:32:00")
# Finalize input
system.finalize()
# View memories
system.print_memories()
# Ask questions (with new features)
print("\n๐ Testing retrieval with planning and reflection...")
system.ask("When will Alice and Bob meet?")
print("\n๐ Testing adversarial question (reflection disabled)...")
question = "What is Alice's favorite food?"
contexts = system.hybrid_retriever.retrieve(question, enable_reflection=False)
answer = system.answer_generator.generate_answer(question, contexts)
print(f"\nQuestion: {question}")
print(f"Answer: {answer}")
print("\nโ
Quick test completed!")
print("\n๐ก To run comprehensive tests: python test_qwen3_integration.py")
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