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Main Authors: Zou, Yujun, Qi, Nia, Deng, Yingnan, Xue, Zhihao, Gong, Ming, Zhang, Wuyang
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.12879
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author Zou, Yujun
Qi, Nia
Deng, Yingnan
Xue, Zhihao
Gong, Ming
Zhang, Wuyang
author_facet Zou, Yujun
Qi, Nia
Deng, Yingnan
Xue, Zhihao
Gong, Ming
Zhang, Wuyang
contents This paper proposes a reinforcement learning-based method for microservice resource scheduling and optimization, aiming to address issues such as uneven resource allocation, high latency, and insufficient throughput in traditional microservice architectures. In microservice systems, as the number of services and the load increase, efficiently scheduling and allocating resources such as computing power, memory, and storage becomes a critical research challenge. To address this, the paper employs an intelligent scheduling algorithm based on reinforcement learning. Through the interaction between the agent and the environment, the resource allocation strategy is continuously optimized. In the experiments, the paper considers different resource conditions and load scenarios, evaluating the proposed method across multiple dimensions, including response time, throughput, resource utilization, and cost efficiency. The experimental results show that the reinforcement learning-based scheduling method significantly improves system response speed and throughput under low load and high concurrency conditions, while also optimizing resource utilization and reducing energy consumption. Under multi-dimensional resource conditions, the proposed method can consider multiple objectives and achieve optimized resource scheduling. Compared to traditional static resource allocation methods, the reinforcement learning model demonstrates stronger adaptability and optimization capability. It can adjust resource allocation strategies in real time, thereby maintaining good system performance in dynamically changing load and resource environments.
format Preprint
id arxiv_https___arxiv_org_abs_2507_12879
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Autonomous Resource Management in Microservice Systems via Reinforcement Learning
Zou, Yujun
Qi, Nia
Deng, Yingnan
Xue, Zhihao
Gong, Ming
Zhang, Wuyang
Distributed, Parallel, and Cluster Computing
Machine Learning
This paper proposes a reinforcement learning-based method for microservice resource scheduling and optimization, aiming to address issues such as uneven resource allocation, high latency, and insufficient throughput in traditional microservice architectures. In microservice systems, as the number of services and the load increase, efficiently scheduling and allocating resources such as computing power, memory, and storage becomes a critical research challenge. To address this, the paper employs an intelligent scheduling algorithm based on reinforcement learning. Through the interaction between the agent and the environment, the resource allocation strategy is continuously optimized. In the experiments, the paper considers different resource conditions and load scenarios, evaluating the proposed method across multiple dimensions, including response time, throughput, resource utilization, and cost efficiency. The experimental results show that the reinforcement learning-based scheduling method significantly improves system response speed and throughput under low load and high concurrency conditions, while also optimizing resource utilization and reducing energy consumption. Under multi-dimensional resource conditions, the proposed method can consider multiple objectives and achieve optimized resource scheduling. Compared to traditional static resource allocation methods, the reinforcement learning model demonstrates stronger adaptability and optimization capability. It can adjust resource allocation strategies in real time, thereby maintaining good system performance in dynamically changing load and resource environments.
title Autonomous Resource Management in Microservice Systems via Reinforcement Learning
topic Distributed, Parallel, and Cluster Computing
Machine Learning
url https://arxiv.org/abs/2507.12879