--- title: Personalized AI Tutor --- You can create a personalized AI Tutor using Mem0. This guide will walk you through the necessary steps and provide the complete code to get you started. ## Overview The Personalized AI Tutor leverages Mem0 to retain information across interactions, enabling a tailored learning experience. By integrating with OpenAI's GPT-4 model, the tutor can provide detailed and context-aware responses to user queries. ## Setup Before you begin, ensure you have the required dependencies installed. You can install the necessary packages using pip: ```bash pip install openai mem0ai ``` ## Full Code Example Below is the complete code to create and interact with a Personalized AI Tutor using Mem0: ```python from openai import OpenAI from mem0 import Memory # Initialize the OpenAI client client = OpenAI() class PersonalAITutor: def __init__(self): """ Initialize the PersonalAITutor with memory configuration and OpenAI client. """ config = { "vector_store": { "provider": "qdrant", "config": { "host": "localhost", "port": 6333, } }, } self.memory = Memory.from_config(config) self.client = client self.app_id = "app-1" def ask(self, question, user_id=None): """ Ask a question to the AI and store the relevant facts in memory :param question: The question to ask the AI. :param user_id: Optional user ID to associate with the memory. """ # Start a streaming chat completion request to the AI stream = self.client.chat.completions.create( model="gpt-4", stream=True, messages=[ {"role": "system", "content": "You are a personal AI Tutor."}, {"role": "user", "content": question} ] ) # Store the question in memory self.memory.add(question, user_id=user_id, metadata={"app_id": self.app_id}) # Print the response from the AI in real-time for chunk in stream: if chunk.choices[0].delta.content is not None: print(chunk.choices[0].delta.content, end="") def get_memories(self, user_id=None): """ Retrieve all memories associated with the given user ID. :param user_id: Optional user ID to filter memories. :return: List of memories. """ return self.memory.get_all(user_id=user_id) # Instantiate the PersonalAITutor ai_tutor = PersonalAITutor() # Define a user ID user_id = "john_doe" # Ask a question ai_tutor.ask("I am learning introduction to CS. What is queue? Briefly explain.", user_id=user_id) ``` ### Fetching Memories You can fetch all the memories at any point in time using the following code: ```python memories = ai_tutor.get_memories(user_id=user_id) for m in memories: print(m['text']) ``` ### Key Points - **Initialization**: The PersonalAITutor class is initialized with the necessary memory configuration and OpenAI client setup. - **Asking Questions**: The ask method sends a question to the AI and stores the relevant information in memory. - **Retrieving Memories**: The get_memories method fetches all stored memories associated with a user. ### Conclusion As the conversation progresses, Mem0's memory automatically updates based on the interactions, providing a continuously improving personalized learning experience. This setup ensures that the AI Tutor can offer contextually relevant and accurate responses, enhancing the overall educational process.