It is an experimental open-source project called Multi-GPT, designed to make GPT-4 fully autonomous by enabling multiple specialized AI agents, referred to as "expertGPTs," to collaborate on tasks.
It is an experimental open-source project called Multi-GPT, designed to make GPT-4 fully autonomous by enabling multiple specialized AI agents, referred to as “expertGPTs,” to collaborate on tasks. Each agent has its own short and long-term memory and can communicate with others to achieve complex objectives. The project aims to demonstrate the potential of GPT-4 in autonomous operations while addressing challenges such as memory management, API integration, and scalability.
Multi-GPT supports various memory backends, including LocalCache, Redis, Pinecone, Milvus, and Weaviate, allowing users to store and retrieve large amounts of vector-based memory efficiently. Users can pre-seed the AI’s memory by ingesting files or directories, enabling the system to generate more informed and accurate responses. The project also includes features like continuous mode, which allows the AI to run without user intervention, though this is not recommended due to potential risks.
The setup requires an OpenAI API key with billing enabled, as well as optional Google API keys for search functionality. Users can configure environment variables to customize memory backends, API keys, and other settings. The project is experimental and comes with a disclaimer, warning users of potential risks, costs, and limitations, including the need for compliance with legal and ethical standards. It is not intended for public access without proper security measures.
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