Automated Compatibility Testing Method for Distributed Software Systems in Cloud Computing

Automated Compatibility Testing Method for Distributed Software Systems in Cloud Computing

Authors

  • Weike Ding Electrical and Computer Engineering, University of Illinois at Urbana-Champaign, Champaign, Illinois, USA
  • Huiming Zhou Computer Science, Northeastern University, CA, USA
  • Hao Tan Computer Science and Technology, China University of Geosciences, Bejing, China
  • Zihan Li Computer Science, Northeastern University, San Jose, CA, USA
  • Chao Fan Information Science, Trine University, Phoenix, AZ, USA

DOI:

https://doi.org/10.53469/wjimt.2024.07(02).06

Keywords:

Automatic detection, Distributed software system compatibility, Cloud computing, Particle swarm optimization

Abstract

In order to avoid the conflict between software systems and improve the overall coordination performance of software, an automatic detection method of distributed software system compatibility in cloud computing is proposed. Build the basic architecture of cloud computing and explore various service modes provided by cloud computing in software compatibility detection; The basic particle swarm optimization model is established, and the weights and learning factors are adjusted. This article explores the challenges of ensuring software compatibility for distributed systems in a cloud computing environment and describes methods for integrating particle swarm optimization algorithms for compatibility testing. Based on the analysis of distributed software system characteristics, existing compatibility testing methods and distributed system compatibility testing tools, a collaborative application of TLA+ and Jepsen methods is proposed to improve the compatibility testing practice in cloud computing environment. The methodology of integrated particle swarm optimization is described in detail, including initialization, fitness evaluation, particle updating, convergence detection, dispersion adjustment and fitness function modification, and the effectiveness of the algorithm in improving compatibility coverage, efficiency and robustness is verified by experimental results. Finally, the role of integrated particle swarm optimization algorithm in optimizing software performance and reliability in cloud computing environment is summarized, and its importance to improve the seamless and compatibility of software operation is emphasized.

References

K. Xu, X. Wang, Z. Hu and Z. Zhang, "3D Face Recognition Based on Twin Neural Network Combining Deep Map and Texture," 2019 IEEE 19th International Conference on Communication Technology (ICCT), Xi'an, China, 2019, pp. 1665-1668, doi: 10.1109/ICCT46805.2019.8947113.

Wang, G., Gong, Y., Zhu, M., Yuan, J., & Wei, K. (2023). Unveiling the future navigating next-generation ai frontiers and innovations in application. International Journal of Computer Science and Information Technology, 1(1), 147-156.

Chen , J., Xiong, J., Wang, Y., Xin, Q., & Zhou, H. (2024). Implementation of an AI-based MRD Evaluation and Prediction Model for Multiple Myeloma. Frontiers in Computing and Intelligent Systems, 6(3), 127-131. https://doi.org/10.54097/zJ4MnbWW

“Unveiling the Future Navigating Next-Generation AI Frontiers and Innovations in Application”. International Journal of Computer Science and Information Technology, vol. 1, no. 1, Dec. 2023, pp. 147-56, https://doi.org/10.62051/ijcsit.v1n1.20.

Xu, X., Xu, Z., Ling, Z., Jin, Z., & Du, S. (2024). Comprehensive Implementation of TextCNN for Enhanced Collaboration between Natural Language Processing and System Recommendation. arXiv preprint arXiv:2403.09718.

Xu, Z., Gong, Y., Zhou, Y., Bao, Q., & Qian, W. (2024). Enhancing Kubernetes Automated Scheduling with Deep Learning and Reinforcement Techniques for Large-Scale Cloud Computing Optimization. arXiv preprint arXiv:2403.07905.

Xu, X., Xu, Z., Ling, Z., Jin, Z., & Du, S. (2024). Emerging Synergies Between Large Language Models and Machine Learning in Ecommerce Recommendations. arXiv preprint arXiv:2403.02760.

The Credit Card Anti-fraud Detection Model in the Context of Dynamic Integration Selection Algorithm. (2024). Frontiers in Computing and Intelligent Systems, 6(3), 119-122. https://doi.org/10.54097/a5jafgdv

Chen, W., Shen, Z., Pan, Y., Tan, K., & Wang, C. (2024). Applying Machine Learning Algorithm to Optimize Personalized Education Recommendation System. Journal of Theory and Practice of Engineering Science, 4(01), 101-108.

Xiang, Yafei, et al. "Integrating AI for Enhanced Exploration of Video Recommendation Algorithm via Improved Collaborative Filtering." Journal of Theory and Practice of Engineering Science 4.02 (2024): 83-90.

Su, G., Wang, J., Xu, X., Wang, Y., & Wang, C. (2024). The Utilization of Homomorphic Encryption Technology Grounded on Artificial Intelligence for Privacy Preservation. International Journal of Computer Science and Information Technology, 2(1), 52-58.

Wang, Y., Bao, Q., Wang, J., Su, G., & Xu, X. (2024). Cloud Computing for Large-Scale Resource Computation and Storage in Machine Learning. Journal of Theory and Practice of Engineering Science, 4(03).

Wu, J., Wang, H., Ni, C., Zhang, C., & Lu, W. (2024). Data Pipeline Training: Integrating AutoML to Optimize the Data Flow of Machine Learning Models. arXiv preprint arXiv:2402.12916.

Zhang, C., Lu, W., Ni, C., Wang, H., & Wu, J. (2024). Enhanced User Interaction in Operating Systems through Machine Learning Language Models. arXiv preprint arXiv:2403.00806.

Ni, C., Wu, J., Wang, H., Lu, W., & Zhang, C. (2024). Enhancing Cloud-Based Large Language Model Processing with Elasticsearch and Transformer Models. arXiv preprint arXiv:2403.00807.

Zhang, C., Lu, W., Wu, J., Ni, C., & Wang, H. (2024). SegNet Network Architecture for Deep Learning Image Segmentation and Its Integrated Applications and Prospects. Academic Journal of Science and Technology, 9(2), 224-229.

Zhou, Y., Shen, X., He, Z., Weng, H., & Chen, W. (2024). Utilizing AI-Enhanced Multi-Omics Integration for Predictive Modeling of Disease Susceptibility in Functional Phenotypes. Journal of Theory and Practice of Engineering Science, 4(02), 45-51.

Xiao, J., Chen, Y., Ou, Y., Yu, H., & Xiao, Y. (2024). Baichuan2-Sum: Instruction Finetune Baichuan2-7B Model for Dialogue Summarization. arXiv preprint arXiv:2401.15496.

Huo, Shuning, et al. "Deep Learning Approaches for Improving Question Answering Systems in Hepatocellular Carcinoma Research." arXiv preprint arXiv:2402.16038 (2024).

Cheng, Q., Tian, M., Yang, L., Zheng, J., & Xin, D. (2024). Enhancing High-Frequency Trading Strategies with Edge Computing and Deep Learning. Journal of Industrial Engineering and Applied Science, 2(1), 32–38. https://doi.org/10.5281/zenodo.10635493

Yang, Le, et al. "Research and Application of Visual Object Recognition System Based on Deep Learning and Neural Morphological Computation." International Journal of Computer Science and Information Technology 2.1 (2024): 10-17.

Chen , J., Xiong, J., Wang, Y., Xin, Q., & Zhou, H. (2024). Implementation of an AI-based MRD Evaluation and Prediction Model for Multiple Myeloma. Frontiers in Computing and Intelligent Systems, 6(3), 127-131. https://doi.org/10.54097/zJ4MnbWW

Niu, H., Li, H., Wang, J., Xu, X., & Ji, H. (2023). Enhancing Computer Digital Signal Processing through the Utilization of RNN Sequence Algorithms. International Journal of Computer Science and Information Technology, 1(1), 60-68.

Xu, X., Niu, H., Ji, H., Li, H., & Wang, J. (2024). AI Empowered of Advancements in Microbial and Tumor Cell Image Labeling for Enhanced Medical Insights. Journal of Theory and Practice of Engineering Science, 4(03), 21-27.

Ji, H., Xu, X., Su, G., Wang, J., & Wang, Y. (2024). Utilizing Machine Learning for Precise Audience Targeting in Data Science and Targeted Advertising. Academic Journal of Science and Technology, 9(2), 215-220.

Wang, Yong, et al. "Autonomous Driving System Driven by Artificial Intelligence Perception Fusion." Academic Journal of Science and Technology 9.2 (2024): 193-198.

Bao, Qiaozhi, et al. "Exploring ICU Mortality Risk Prediction and Interpretability Analysis Using Machine Learning." (2024).

Wang, Yixu, et al. "Exploring New Frontiers of Deep Learning in Legal Practice: A Case Study of Large Language Models." International Journal of Computer Science and Information Technology 1.1 (2023): 131-138.

Song, Bo, Yuanhao Xu, and Yichao Wu. "ViTCN: Vision Transformer Contrastive Network For Reasoning." arXiv preprint arXiv:2403.09962 (2024).

Yu, Hanyi, et al. "Machine Learning-Based Vehicle Intention Trajectory Recognition and Prediction for Autonomous Driving." arXiv preprint arXiv:2402.16036 (2024).

Xiang, Yafei, et al. "Text Understanding and Generation Using Transformer Models for Intelligent E-commerce Recommendations." arXiv preprint arXiv:2402.16035 (2024).

Zhu, Mengran, et al. "Utilizing GANs for Fraud Detection: Model Training with Synthetic Transaction Data." arXiv preprint arXiv:2402.09830 (2024).

Gong, Yulu, et al. "Enhancing Cybersecurity Resilience in Finance with Deep Learning for Advanced Threat Detection." arXiv preprint arXiv:2402.09820 (2024).

Downloads

Published

2024-03-27
Loading...