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Main Authors: Jin, Yihong, Yang, Ze, Xu, Xinhe, Zhang, Yihan, Ji, Shuyang
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.12228
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_version_ 1866929761614299136
author Jin, Yihong
Yang, Ze
Xu, Xinhe
Zhang, Yihan
Ji, Shuyang
author_facet Jin, Yihong
Yang, Ze
Xu, Xinhe
Zhang, Yihan
Ji, Shuyang
contents With the rapid evolution of Large Language Models (LLMs) and their large-scale experimentation in cloud-computing spaces, the challenge of guaranteeing their security and efficiency in a failure scenario has become a main issue. To ensure the reliability and availability of large-scale language models in cloud computing scenarios, such as frequent resource failures, network problems, and computational overheads, this study proposes a novel adaptive fault tolerance mechanism. It builds upon known fault-tolerant mechanisms, such as checkpointing, redundancy, and state transposition, introducing dynamic resource allocation and prediction of failure based on real-time performance metrics. The hybrid model integrates data driven deep learning-based anomaly detection technique underlining the contribution of cloud orchestration middleware for predictive prevention of system failures. Additionally, the model integrates adaptive checkpointing and recovery strategies that dynamically adapt according to load and system state to minimize the influence on the performance of the model and minimize downtime. The experimental results demonstrate that the designed model considerably enhances the fault tolerance in large-scale cloud surroundings, and decreases the system downtime by $\mathbf{30\%}$, and has a better modeling availability than the classical fault tolerance mechanism.
format Preprint
id arxiv_https___arxiv_org_abs_2503_12228
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Adaptive Fault Tolerance Mechanisms of Large Language Models in Cloud Computing Environments
Jin, Yihong
Yang, Ze
Xu, Xinhe
Zhang, Yihan
Ji, Shuyang
Distributed, Parallel, and Cluster Computing
Artificial Intelligence
With the rapid evolution of Large Language Models (LLMs) and their large-scale experimentation in cloud-computing spaces, the challenge of guaranteeing their security and efficiency in a failure scenario has become a main issue. To ensure the reliability and availability of large-scale language models in cloud computing scenarios, such as frequent resource failures, network problems, and computational overheads, this study proposes a novel adaptive fault tolerance mechanism. It builds upon known fault-tolerant mechanisms, such as checkpointing, redundancy, and state transposition, introducing dynamic resource allocation and prediction of failure based on real-time performance metrics. The hybrid model integrates data driven deep learning-based anomaly detection technique underlining the contribution of cloud orchestration middleware for predictive prevention of system failures. Additionally, the model integrates adaptive checkpointing and recovery strategies that dynamically adapt according to load and system state to minimize the influence on the performance of the model and minimize downtime. The experimental results demonstrate that the designed model considerably enhances the fault tolerance in large-scale cloud surroundings, and decreases the system downtime by $\mathbf{30\%}$, and has a better modeling availability than the classical fault tolerance mechanism.
title Adaptive Fault Tolerance Mechanisms of Large Language Models in Cloud Computing Environments
topic Distributed, Parallel, and Cluster Computing
Artificial Intelligence
url https://arxiv.org/abs/2503.12228