Microservices-Based Framework for Predictive Analytics and Real-time Performance Enhancement in Travel Reservation Systems
Biman Barua, M. Shamim Kaiser

TL;DR
This paper introduces a microservices framework for travel reservation systems that leverages real-time predictive analytics to improve scalability, response time, and customer satisfaction in high-load scenarios.
Contribution
The paper proposes a novel microservices architecture integrated with machine learning-based predictive analytics for real-time demand forecasting and system optimization.
Findings
Improved response time and throughput in reservation systems.
Enhanced prediction accuracy with the new framework.
Greater scalability and fault tolerance demonstrated.
Abstract
The paper presents a framework of microservices-based architecture dedicated to enhancing the performance of real-time travel reservation systems using the power of predictive analytics. Traditional monolithic systems are bad at scaling and performing with high loads, causing backup resources to be underutilized along with delays. To overcome the above-stated problems, we adopt a modularization approach in decoupling system components into independent services that can grow or shrink according to demand. Our framework also includes real-time predictive analytics, through machine learning models, that optimize forecasting customer demand, dynamic pricing, as well as system performance. With an experimental evaluation applying the approach, we could show that the framework impacts metrics of performance such as response time, throughput, transaction rate of success, and prediction…
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Taxonomy
TopicsSoftware System Performance and Reliability · Traffic Prediction and Management Techniques · Cloud Computing and Resource Management
MethodsEmirates Airlines Office in Dubai · ADaptive gradient method with the OPTimal convergence rate
