DAWN: Designing Distributed Agents in a Worldwide Network
- URL: http://arxiv.org/abs/2410.22339v1
- Date: Fri, 11 Oct 2024 18:47:04 GMT
- Title: DAWN: Designing Distributed Agents in a Worldwide Network
- Authors: Zahra Aminiranjbar, Jianan Tang, Qiudan Wang, Shubha Pant, Mahesh Viswanathan,
- Abstract summary: DAWN enables distributed agents worldwide to register and be easily discovered through Gateway Agents.
No-LLM Mode for deterministic tasks, Copilot for augmented decision-making, and LLM Agent for autonomous operations.
DAWN ensures the safety and security of agent collaborations globally through a dedicated safety, security, and compliance layer.
- Score: 0.38447712214412116
- License:
- Abstract: The rapid evolution of Large Language Models (LLMs) has transformed them from basic conversational tools into sophisticated entities capable of complex reasoning and decision-making. These advancements have led to the development of specialized LLM-based agents designed for diverse tasks such as coding and web browsing. As these agents become more capable, the need for a robust framework that facilitates global communication and collaboration among them towards advanced objectives has become increasingly critical. Distributed Agents in a Worldwide Network (DAWN) addresses this need by offering a versatile framework that integrates LLM-based agents with traditional software systems, enabling the creation of agentic applications suited for a wide range of use cases. DAWN enables distributed agents worldwide to register and be easily discovered through Gateway Agents. Collaborations among these agents are coordinated by a Principal Agent equipped with reasoning strategies. DAWN offers three operational modes: No-LLM Mode for deterministic tasks, Copilot for augmented decision-making, and LLM Agent for autonomous operations. Additionally, DAWN ensures the safety and security of agent collaborations globally through a dedicated safety, security, and compliance layer, protecting the network against attackers and adhering to stringent security and compliance standards. These features make DAWN a robust network for deploying agent-based applications across various industries.
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