数据中心网络中的生成式人工智能:基础、视角和案例研究

Yinqiu Liu, Hongyang Du, Dusit Niyato, Jiawen Kang, Zehui Xiong, Yonggang Wen, Dong In Kim
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摘要

以 OpenAI 的 ChatGPT 等大型语言模型 (LLM) 为代表的生成式人工智能 (GenAI) 正在各个领域掀起一场革命。数据中心网络(DCN)是这场变革的核心,它不仅为 GenAI 的训练和推理提供了必要的计算能力,还为用户提供了 GenAI 驱动的服务。本文探讨了 GenAI 与 DCN 之间的相互作用,强调了它们之间的共生关系和共同进步。我们首先回顾了 DCN 当前面临的挑战,并讨论了 GenAI 如何通过数据增强、流程自动化和领域转移等创新来增强 DCN 的能力。然后,我们重点分析了 DCN 上 GenAI 工作负载的显著特点,获得了促进 DCN 演进的见解,从而更有效地支持 GenAI 和 LLM。此外,为了说明 GenAI 与 DCN 的无缝集成,我们介绍了一项关于全生命周期 DCN 数字双胞胎的案例研究。在这项研究中,我们利用配备检索增强生成(RAG)的 LLM 为 DCN 提出优化问题,并采用扩散-深度强化学习(DRL)优化 RAG 知识放置策略。这种方法不仅展示了先进的 GenAI 方法在 DCN 中的应用,还将数字孪生定位为在 DCN 上运行的关键 GenAI 服务。
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Generative AI in Data Center Networking: Fundamentals, Perspectives, and Case Study
Generative AI (GenAI), exemplified by Large Language Models (LLMs) such as OpenAI's ChatGPT, is revolutionizing various fields. Central to this transformation is Data Center Networking (DCN), which not only provides the computational power necessary for GenAI training and inference but also delivers GenAI-driven services to users. This article examines an interplay between GenAI and DCNs, highlighting their symbiotic relationship and mutual advancements. We begin by reviewing current challenges within DCNs and discuss how GenAI contributes to enhancing DCN capabilities through innovations, such as data augmentation, process automation, and domain transfer. We then focus on analyzing the distinctive characteristics of GenAI workloads on DCNs, gaining insights that catalyze the evolution of DCNs to more effectively support GenAI and LLMs. Moreover, to illustrate the seamless integration of GenAI with DCNs, we present a case study on full-lifecycle DCN digital twins. In this study, we employ LLMs equipped with Retrieval Augmented Generation (RAG) to formulate optimization problems for DCNs and adopt Diffusion-Deep Reinforcement Learning (DRL) for optimizing the RAG knowledge placement strategy. This approach not only demonstrates the application of advanced GenAI methods within DCNs but also positions the digital twin as a pivotal GenAI service operating on DCNs. We anticipate that this article can promote further research into enhancing the virtuous interaction between GenAI and DCNs.
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