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Auteurs principaux: Kwon, Dae Cheol, Zhang, Xinyu
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2503.17850
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author Kwon, Dae Cheol
Zhang, Xinyu
author_facet Kwon, Dae Cheol
Zhang, Xinyu
contents Although DRL (deep reinforcement learning) has emerged as a powerful tool for making better decisions than existing hand-crafted communication protocols, it faces significant limitations: 1) Selecting the appropriate neural network architecture and setting hyperparameters are crucial for achieving desired performance levels, requiring domain expertise. 2) The decision-making process in DRL models is often opaque, commonly described as a 'black box.' 3) DRL models are data hungry. In response, we propose CP-AgentNet, the first framework designed to use generative agents for developing communication network protocols. This approach addresses these challenges by creating an autonomous system for protocol design, significantly reducing human effort. We developed LLMA (LLM-agents-based multiple access) and CPTCP (CP-Agent-based TCP) for heterogeneous environments. Our comprehensive simulations have demonstrated the efficient coexistence of LLMA and CPTCP with nodes using different types of protocols, as well as enhanced explainability.
format Preprint
id arxiv_https___arxiv_org_abs_2503_17850
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle CP-AgentNet: Autonomous and Explainable Communication Protocol Design Using Generative Agents
Kwon, Dae Cheol
Zhang, Xinyu
Networking and Internet Architecture
Although DRL (deep reinforcement learning) has emerged as a powerful tool for making better decisions than existing hand-crafted communication protocols, it faces significant limitations: 1) Selecting the appropriate neural network architecture and setting hyperparameters are crucial for achieving desired performance levels, requiring domain expertise. 2) The decision-making process in DRL models is often opaque, commonly described as a 'black box.' 3) DRL models are data hungry. In response, we propose CP-AgentNet, the first framework designed to use generative agents for developing communication network protocols. This approach addresses these challenges by creating an autonomous system for protocol design, significantly reducing human effort. We developed LLMA (LLM-agents-based multiple access) and CPTCP (CP-Agent-based TCP) for heterogeneous environments. Our comprehensive simulations have demonstrated the efficient coexistence of LLMA and CPTCP with nodes using different types of protocols, as well as enhanced explainability.
title CP-AgentNet: Autonomous and Explainable Communication Protocol Design Using Generative Agents
topic Networking and Internet Architecture
url https://arxiv.org/abs/2503.17850