import json import os import threading import time from concurrent.futures import ThreadPoolExecutor from dotenv import load_dotenv from tqdm import tqdm from mem0 import MemoryClient load_dotenv() # Update custom instructions custom_instructions = """ Generate personal memories that follow these guidelines: 1. Each memory should be self-contained with complete context, including: - The person's name, do not use "user" while creating memories - Personal details (career aspirations, hobbies, life circumstances) - Emotional states and reactions - Ongoing journeys or future plans - Specific dates when events occurred 2. Include meaningful personal narratives focusing on: - Identity and self-acceptance journeys - Family planning and parenting - Creative outlets and hobbies - Mental health and self-care activities - Career aspirations and education goals - Important life events and milestones 3. Make each memory rich with specific details rather than general statements - Include timeframes (exact dates when possible) - Name specific activities (e.g., "charity race for mental health" rather than just "exercise") - Include emotional context and personal growth elements 4. Extract memories only from user messages, not incorporating assistant responses 5. Format each memory as a paragraph with a clear narrative structure that captures the person's experience, challenges, and aspirations """ class MemoryADD: def __init__(self, data_path=None, batch_size=2, is_graph=False): self.mem0_client = MemoryClient( api_key=os.getenv("MEM0_API_KEY"), org_id=os.getenv("MEM0_ORGANIZATION_ID"), project_id=os.getenv("MEM0_PROJECT_ID"), ) self.mem0_client.update_project(custom_instructions=custom_instructions) self.batch_size = batch_size self.data_path = data_path self.data = None self.is_graph = is_graph if data_path: self.load_data() def load_data(self): with open(self.data_path, "r") as f: self.data = json.load(f) return self.data def add_memory(self, user_id, message, metadata, retries=3): for attempt in range(retries): try: _ = self.mem0_client.add( message, user_id=user_id, version="v2", metadata=metadata, enable_graph=self.is_graph ) return except Exception as e: if attempt < retries - 1: time.sleep(1) # Wait before retrying continue else: raise e def add_memories_for_speaker(self, speaker, messages, timestamp, desc): for i in tqdm(range(0, len(messages), self.batch_size), desc=desc): batch_messages = messages[i : i + self.batch_size] self.add_memory(speaker, batch_messages, metadata={"timestamp": timestamp}) def process_conversation(self, item, idx): conversation = item["conversation"] speaker_a = conversation["speaker_a"] speaker_b = conversation["speaker_b"] speaker_a_user_id = f"{speaker_a}_{idx}" speaker_b_user_id = f"{speaker_b}_{idx}" # delete all memories for the two users self.mem0_client.delete_all(user_id=speaker_a_user_id) self.mem0_client.delete_all(user_id=speaker_b_user_id) for key in conversation.keys(): if key in ["speaker_a", "speaker_b"] or "date" in key or "timestamp" in key: continue date_time_key = key + "_date_time" timestamp = conversation[date_time_key] chats = conversation[key] messages = [] messages_reverse = [] for chat in chats: if chat["speaker"] == speaker_a: messages.append({"role": "user", "content": f"{speaker_a}: {chat['text']}"}) messages_reverse.append({"role": "assistant", "content": f"{speaker_a}: {chat['text']}"}) elif chat["speaker"] == speaker_b: messages.append({"role": "assistant", "content": f"{speaker_b}: {chat['text']}"}) messages_reverse.append({"role": "user", "content": f"{speaker_b}: {chat['text']}"}) else: raise ValueError(f"Unknown speaker: {chat['speaker']}") # add memories for the two users on different threads thread_a = threading.Thread( target=self.add_memories_for_speaker, args=(speaker_a_user_id, messages, timestamp, "Adding Memories for Speaker A"), ) thread_b = threading.Thread( target=self.add_memories_for_speaker, args=(speaker_b_user_id, messages_reverse, timestamp, "Adding Memories for Speaker B"), ) thread_a.start() thread_b.start() thread_a.join() thread_b.join() print("Messages added successfully") def process_all_conversations(self, max_workers=10): if not self.data: raise ValueError("No data loaded. Please set data_path and call load_data() first.") with ThreadPoolExecutor(max_workers=max_workers) as executor: futures = [executor.submit(self.process_conversation, item, idx) for idx, item in enumerate(self.data)] for future in futures: future.result()