Introduction
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Mem0 enhances AI assistants and agents with an intelligent memory layer, enabling personalized AI interactions.
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Mem0 remembers user preferences, adapts to individual needs, and continuously improves over time, making it ideal for customer support chatbots, AI assistants, and autonomous systems.
Use cases enabled by Mem0 include:
- AI Assistants and agents: Seamless conversations with a touch of déjà vu
- Personalized Learning: Tailored content recommendations and progress tracking
- Customer Support: Context-aware assistance with user preference memory
- Healthcare: Patient history and treatment plan management
- Virtual Companions: Deeper user relationships through conversation memory
- Productivity: Streamlined workflows based on user habits and task history
- Gaming: Adaptive environments reflecting player choices and progress
Get Started
The easiest way to set up Mem0 is through the managed Mem0 Platform. This hosted solution offers automatic updates, advanced analytics, and dedicated support. Sign up to get started.
If you prefer to self-host, use the open-source Mem0 package. Follow the installation instructions to get started.
Installation Instructions
Install the Mem0 package via pip:
pip install mem0ai
Alternatively, you can use Mem0 with one click on the hosted platform here.
Basic Usage
Mem0 supports a variety of LLMs, with details available in our Supported LLMs documentation. By default, Mem0 comes equipped with gpt-4o. To use it, simply set the keys in the environment variables.
import os
os.environ["OPENAI_API_KEY"] = "sk-xxx"
Now, you can initialize the memory:
from mem0 import Memory
m = Memory()
You can perform the following task on the memory:
- Add: Store a memory from any unstructured text
- Update: Update memory of a given memory_id
- Search: Fetch memories based on a query
- Get: Return memories for a certain user/agent/session
- History: Describe how a memory has changed over time for a specific memory ID
# 1. Add: Store a memory from any unstructured text
result = m.add("I am working on improving my tennis skills. Suggest some online courses.", user_id="alice", metadata={"category": "hobbies"})
# Created memory --> 'Improving her tennis skills.' and 'Looking for online suggestions.'
# 2. Update: update the memory
result = m.update(memory_id=<memory_id_1>, data="Likes to play tennis on weekends")
# Updated memory --> 'Likes to play tennis on weekends.' and 'Looking for online suggestions.'
# 3. Search: search related memories
related_memories = m.search(query="What are Alice's hobbies?", user_id="alice")
# Retrieved memory --> 'Likes to play tennis on weekends'
# 4. Get all memories
all_memories = m.get_all()
memory_id = all_memories[0]["id"] # get a memory_id
# All memory items --> 'Likes to play tennis on weekends.' and 'Looking for online suggestions.'
# 5. Get memory history for a particular memory_id
history = m.history(memory_id=<memory_id_1>)
# Logs corresponding to memory_id_1 --> {'prev_value': 'Working on improving tennis skills and interested in online courses for tennis.', 'new_value': 'Likes to play tennis on weekends' }
Tip
If you prefer a hosted version without the need to set up infrastructure yourself, check out the Mem0 Platform to get started in minutes.
Core Features
- Multi-Level Memory: User, Session, and AI Agent memory retention
- Adaptive Personalization: Continuous improvement based on interactions
- Developer-Friendly API: Simple integration into various applications
- Cross-Platform Consistency: Uniform behavior across devices
- Managed Service: Hassle-free hosted solution
Documentation
For detailed usage instructions and API reference, visit our documentation at docs.mem0.ai. Here, you can find more information on both the open-source version and the hosted Mem0 Platform.
Advanced Usage
For production environments, you can use Qdrant as a vector store:
from mem0 import Memory
config = {
"vector_store": {
"provider": "qdrant",
"config": {
"host": "localhost",
"port": 6333,
}
},
}
m = Memory.from_config(config)
Roadmap
- Integration with various LLM providers
- Support for LLM frameworks
- Integration with AI Agents frameworks
- Customizable memory creation/update rules
Star History
Support
Join our community for support and discussions. If you have any questions, feel free to reach out to us using one of the following methods:
Contributors
Join our Discord community to learn about memory management for AI agents and LLMs, and connect with Mem0 users and contributors. Share your ideas, questions, or feedback in our GitHub Issues.
We value and appreciate the contributions of our community. Special thanks to our contributors for helping us improve Mem0.
License
This project is licensed under the Apache 2.0 License - see the LICENSE file for details.