Salvato in:
Dettagli Bibliografici
Autori principali: Xu, Minxian, Wu, Jingfeng, Song, Shengye, Srirama, Satish Narayana, Javad, Bahman, Ranjan, Rajiv, Jha, Devki Nandan, Wang, Sa, Tian, Wenhong, Xu, Huanle, Li, Li, Mo, Zizhao, Ren, Shuo, Kunz, Thomas, Kochovski, Petar, Stankovski, Vlado, Ye, Kejiang, Xu, Chengzhong, Buyya, Rajkumar
Natura: Preprint
Pubblicazione: 2026
Soggetti:
Accesso online:https://arxiv.org/abs/2604.17227
Tags: Aggiungi Tag
Nessun Tag, puoi essere il primo ad aggiungerne!!
_version_ 1866911605485207552
author Xu, Minxian
Wu, Jingfeng
Song, Shengye
Srirama, Satish Narayana
Javad, Bahman
Ranjan, Rajiv
Jha, Devki Nandan
Wang, Sa
Tian, Wenhong
Xu, Huanle
Li, Li
Mo, Zizhao
Ren, Shuo
Kunz, Thomas
Kochovski, Petar
Stankovski, Vlado
Ye, Kejiang
Xu, Chengzhong
Buyya, Rajkumar
author_facet Xu, Minxian
Wu, Jingfeng
Song, Shengye
Srirama, Satish Narayana
Javad, Bahman
Ranjan, Rajiv
Jha, Devki Nandan
Wang, Sa
Tian, Wenhong
Xu, Huanle
Li, Li
Mo, Zizhao
Ren, Shuo
Kunz, Thomas
Kochovski, Petar
Stankovski, Vlado
Ye, Kejiang
Xu, Chengzhong
Buyya, Rajkumar
contents The rapid rise of Large Language Models (LLMs) has revolutionized various artificial intelligence (AI) applications, from natural language processing to code generation. However, the computational demands of these models, particularly in training and inference, present significant challenges. Traditional systems are often unable to meet these requirements, necessitating the integration of cloud-native and distributed architectures. This paper explores the role of cloud platforms and distributed systems in supporting the scalability, efficiency, and optimization of LLMs. We discuss the complexities of LLM deployment, including data management, resource optimization, and the need for microservices, autoscaling, and hybrid cloud-edge solutions. Additionally, we examine emerging research trends, such as serverless inference, quantum computing, and federated learning, and their potential to drive the next phase of LLM innovation. The paper concludes with a roadmap for future developments, emphasizing the need for continued research, standardization, and cross-sector collaboration to sustain the growth of LLMs in both research and enterprise applications.
format Preprint
id arxiv_https___arxiv_org_abs_2604_17227
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Cloud-native and Distributed Systems for Efficient and Scalable Large Language Models -- A Research Agenda
Xu, Minxian
Wu, Jingfeng
Song, Shengye
Srirama, Satish Narayana
Javad, Bahman
Ranjan, Rajiv
Jha, Devki Nandan
Wang, Sa
Tian, Wenhong
Xu, Huanle
Li, Li
Mo, Zizhao
Ren, Shuo
Kunz, Thomas
Kochovski, Petar
Stankovski, Vlado
Ye, Kejiang
Xu, Chengzhong
Buyya, Rajkumar
Distributed, Parallel, and Cluster Computing
The rapid rise of Large Language Models (LLMs) has revolutionized various artificial intelligence (AI) applications, from natural language processing to code generation. However, the computational demands of these models, particularly in training and inference, present significant challenges. Traditional systems are often unable to meet these requirements, necessitating the integration of cloud-native and distributed architectures. This paper explores the role of cloud platforms and distributed systems in supporting the scalability, efficiency, and optimization of LLMs. We discuss the complexities of LLM deployment, including data management, resource optimization, and the need for microservices, autoscaling, and hybrid cloud-edge solutions. Additionally, we examine emerging research trends, such as serverless inference, quantum computing, and federated learning, and their potential to drive the next phase of LLM innovation. The paper concludes with a roadmap for future developments, emphasizing the need for continued research, standardization, and cross-sector collaboration to sustain the growth of LLMs in both research and enterprise applications.
title Cloud-native and Distributed Systems for Efficient and Scalable Large Language Models -- A Research Agenda
topic Distributed, Parallel, and Cluster Computing
url https://arxiv.org/abs/2604.17227