A machine learning-based framework for predicting game server load

被引:0
|
作者
Çağdaş Özer
Taner Çevik
Ahmet Gürhanlı
机构
[1] Istanbul University Cerrahpasa,Department of Computer Engineering
[2] Istanbul Arel University,Department of Computer Engineering
[3] Istanbul Aydin University,Department of Computer Engineering
来源
关键词
Machine learning; Load prediction; Game server;
D O I
暂无
中图分类号
学科分类号
摘要
Server load prediction can be utilized for load-balancing and load-sharing in distributed systems. The use of machine learning (ML) algorithms for load estimation in distributed system applications can increase the availability and performance of servers. Hence, a number of machine learning algorithms have been applied thus far for server load estimation. This study focuses on increasing the performance of game servers by accurately predicting the workload of game servers in short, medium and long term prediction situations. While doing this, various machine learning techniques have been applied and the algorithms that give the best results are presented. In terms of implementation, companies using their servers and data centers can try to increase their level of satisfaction by using these algorithms. A prediction model is developed and the estimation performances of a number of fundamental ML methods i.e., Naïve Bayes (NB), Generalized Linear Model (GLM), Logistic Regression (LR), Decision Tree (DT), Random Forest (RF), Gradient Boosted Trees (GBT), Support Vector Machine (SVM), Fast Large Margin (FLM), Convolutional Neural Network CNN are analyzed. The data used during the training stage is obtained by listening to the TCP/IP packet traffic and the real-data is extracted by performing an extensive analysis of the total transferred-data that includes also the payload. In the analysis phase, the goodput is considered in order to reveal exact resource requirements. Comprehensive simulations are performed under various conditions for high accuracy performance analysis. Experimental results indicate that the proposed ML-based prediction shows promising performance in terms of load prediction when compared to the common approaches present in the literature.
引用
下载
收藏
页码:9527 / 9546
页数:19
相关论文
共 50 条
  • [21] Machine Learning-Based Load Forecasting for Nanogrid Peak Load Cost Reduction
    Kumar, Akash
    Yan, Bing
    Bilton, Ace
    ENERGIES, 2022, 15 (18)
  • [22] A machine learning-based framework for clustering residential electricity load profiles to enhance demand response programs
    Michalakopoulos, Vasilis
    Sarmas, Elissaios
    Papias, Ioannis
    Skaloumpakas, Panagiotis
    Marinakis, Vangelis
    Doukas, Haris
    APPLIED ENERGY, 2024, 361
  • [23] Automated machine learning-based framework of heating and cooling load prediction for quick residential building design
    Lu, Chujie
    Li, Sihui
    Penaka, Santhan Reddy
    Olofsson, Thomas
    ENERGY, 2023, 274
  • [24] Machine Learning-Based Electricity Load Forecast for the Agriculture Sector
    Sharma, Megha
    Mittal, Namita
    Mishra, Anukram
    Gupta, Arun
    INTERNATIONAL JOURNAL OF SOFTWARE INNOVATION, 2023, 11 (01) : 27 - 27
  • [25] A novel machine learning-based framework for predicting impact force in ship-bridge pier collisions
    Xu, Guoji
    Cao, Zhiyang
    Wang, Jinsheng
    Xue, Shihao
    Tang, Maolin
    OCEAN ENGINEERING, 2023, 285
  • [26] Machine learning-based approach for predicting low birth weight
    Ranjbar, Amene
    Montazeri, Farideh
    Farashah, Mohammadsadegh Vahidi
    Mehrnoush, Vahid
    Darsareh, Fatemeh
    Roozbeh, Nasibeh
    BMC PREGNANCY AND CHILDBIRTH, 2023, 23 (01)
  • [27] Machine Learning-Based Method for Predicting Compressive Strength of Concrete
    Li, Daihong
    Tang, Zhili
    Kang, Qian
    Zhang, Xiaoyu
    Li, Youhua
    PROCESSES, 2023, 11 (02)
  • [28] Machine learning-based approach for predicting low birth weight
    Amene Ranjbar
    Farideh Montazeri
    Mohammadsadegh Vahidi Farashah
    Vahid Mehrnoush
    Fatemeh Darsareh
    Nasibeh Roozbeh
    BMC Pregnancy and Childbirth, 23
  • [29] Machine Learning-based Models for Predicting the Penetration Depth of Concrete
    Li M.
    Wu H.
    Dong H.
    Ren G.
    Zhang P.
    Huang F.
    Binggong Xuebao/Acta Armamentarii, 2023, 44 (12): : 3771 - 3782
  • [30] Predicting submerged vegetation drag with a machine learning-based method
    Liu, Meng-yang
    Tang, Hong-wu
    Yuan, Sai-yu
    Yan, Jing
    JOURNAL OF HYDRODYNAMICS, 2024, 36 (03) : 534 - 545