Analyzing Resource Allocation and Management in the Uzbekistan Hotel Industry Within the Context of Cloud, Distributed, and Parallel Systems

Authors

  • Sayyora Safaeva Associate Professor of the Department of Tourism and Service, Tashkent State University of Economics

Keywords:

Resource allocation • Management practices • Uzbekistan hotel industry • Cloud systems • Distributed systems • Parallel systems • Operational efficiency

Abstract

The Uzbekistan hotel industry is poised for significant growth and evolution, with a particular emphasis on resource allocation and management within the context of cloud, distributed, and parallel systems. This study investigates the current landscape of resource allocation and management practices in Uzbekistan's hotel industry, highlighting the integration of modern technological systems and its impact on operational efficiency and guest experiences. Our findings reveal the profound influence of cloud-based solutions on pricing strategies, room availability, and inventory control, leading to enhanced operational efficiency. Additionally, parallel processing systems have minimized guest wait times during check-in/check-out processes, enriching the overall guest experience. Distributed systems centralize essential functions while allowing adaptability to local market conditions, facilitating standardized service quality and regional responsiveness. As the industry anticipates substantial growth, challenges emerge in maintaining service standards across a diverse portfolio of establishments. Collaborative efforts among industry stakeholders, rigorous standards, employee training, and technological innovation are imperative to ensure quality amidst rapid expansion. The Uzbekistan hotel industry's future holds promise, as it diversifies to cater to a broader audience and contributes to the nation's tourism sector. Future research directions include evaluating specific technological implementations, analyzing guest feedback, and assessing the economic impact of advancements. By addressing these areas, the industry can continue to thrive and provide exceptional experiences to travelers, further enhancing Uzbekistan's position in the global tourism landscape.

References

Statistical data from the Ministry of Culture and Tourism of the Republic of Uzbekistan.

https://uzbektourism.uz

Ni, L., Zhang, J., Jiang, C., Yan, C. (2017). Resource allocation strategy in fog computing based on priced timed petri nets. IEEE Internet of Things.

Sadeeq, M. M., Abdulkareem, N. M. (2021). IoT and Cloud computing issues, challenges and opportunities: A review. Qubahan Academic Journal.

Zhong, R. Y., Xu, X., Klotz, E., Newman, S. T. (2017). Intelligent manufacturing in the context of industry 4.0: a review. Engineering.

Zhu, W., Shang, F. (2021). Rural smart tourism under the background of internet plus. Ecological Informatics.

Chen, Q., Zheng, Z., Hu, C., Wang, D. (2019). On-edge multi-task transfer learning: Model and practice with data-driven task allocation. IEEE Transactions on Parallel and Distributed Systems.

Abedi, S., Ghobaei-Arani, M., Khorami, E. (2022). Dynamic resource allocation using improved firefly optimization algorithm in cloud environment. Applied Artificial Intelligence.

Tantalaki, N., Souravlas, S. (2020). A review on big data real-time stream processing and its scheduling techniques. Taylor & Francis.

Sathiyamoorthi, V., Keerthika, P., Suresh, P., Zhang, Z. J., Rao, A. P., & Logeswaran, K. (2021). Adaptive fault tolerant resource allocation scheme for cloud computing environments. Journal of Organizational and End User Computing (JOEUC), 33(5), 135-152.

Nzanywayingoma, F., Yang, Y. (2019). Efficient resource management techniques in cloud computing environment: a review and discussion. International Journal of Computers.

Lei, J. (2018). Design and Application of Intelligent Tourism System under the Background of Cloud Computing Information Technology. Atlantis Press.

Kumar, C., Marston, S., Sen, R. (2022). Greening the cloud: a load balancing mechanism to optimize cloud computing networks. Journal of Management.

Yathiraju, N. (2022). Investigating the use of an Artificial Intelligence Model in an ERP Cloud-Based System. International Journal of Electrical, Electronics and....

Rittinghouse, J. W., Ransome, J. F. (2017). Cloud computing: implementation, management, and security. Taylor & Francis.

Ortiz, G., Zouai, M., Kazar, O., Garcia-de-Prado, A. (2022). Atmosphere: Context and situational-aware collaborative IoT architecture for edge-fog-cloud computing. Computer Standards &....

Jiang, Z., Yuan, S., Ma, J., Wang, Q. (2022). The evolution of production scheduling from Industry 3.0 through Industry 4.0. International Journal of Production.

Schleier-Smith, J., Sreekanti, V., Khandelwal, A. (2021). What serverless computing is and should become: The next phase of cloud computing. Communications of the ACM.

Baresi, L., Mendonça, D. F., Garriga, M., Guinea, S. (2019). A unified model for the mobile-edge-cloud continuum. ACM Transactions on....

Borangiu, T., Răileanu, S. (2022). A smart palletising planning and control model in Logistics 4.0 framework. International Journal of Production.

Sahli, H., Hameurlain, N., Belala, F. (2017). A bigraphical model for specifying cloud-based elastic systems and their behavior. Taylor & Francis.

Liu, Y., Wang, L., Wang, X. V., Xu, X. (2019). Scheduling in cloud manufacturing: state-of-the-art and research challenges. Taylor & Francis.

Saboor, A., Hassan, M. F., Akbar, R., Shah, S. N. M., Hassan, F. (2022). Containerized microservices orchestration and provisioning in cloud computing: A conceptual framework and future perspectives. Applied Sciences.

Aghamohammadzadeh, E., Malek, M. (2020). A novel model for optimization of logistics and manufacturing operation service composition in Cloud manufacturing system focusing on cloud-entropy. Taylor & Francis.

Downloads

Published

2024-01-30

How to Cite

Sayyora Safaeva. (2024). Analyzing Resource Allocation and Management in the Uzbekistan Hotel Industry Within the Context of Cloud, Distributed, and Parallel Systems. International Journal of Biological Engineering and Agriculture, 3(1), 118–128. Retrieved from https://inter-publishing.com/index.php/IJBEA/article/view/3402

Issue

Section

Articles