Microservices and Real-Time Processing in Retail IT: A Review of Open-Source Toolchains and Deployment Strategies
By: Aaditaa Vashisht, Rekha B S
Potential Business Impact:
Makes online stores faster and more reliable.
With the rapid pace of digital transformation, the retail industry is increasingly depending on real-time, scalable, and resilient systems to manage financial transactions, analyze customer behavior, and streamline order processing. This literature review explores how modern event-driven and microservices-based architectures, particularly those leveraging Apache Kafka, Spring Boot, MongoDB, and Kubernetes are transforming retail and financial systems. By systematically reviewing academic publications, technical white papers, and industry reports from recent years, this study synthesizes key themes and implementation strategies. The analysis reveals that technologies like Kafka and Spring Boot are instrumental in building low-latency, event-driven applications that support real-time analytics and fraud detection, while MongoDB, when deployed on Kubernetes, ensures fault tolerance and high availability in inventory and transaction systems. Kubernetes itself plays a crucial role in automating deployment and scaling of microservices. These findings provide valuable insights for industry practitioners aiming to design scalable infrastructures, identify research opportunities in hybrid deployment models, and offer educators a foundation to integrate modern system architectures into professional and technical communication training.
Similar Papers
Next-Generation Event-Driven Architectures: Performance, Scalability, and Intelligent Orchestration Across Messaging Frameworks
Distributed, Parallel, and Cluster Computing
Makes apps run faster and cheaper with smart choices.
Next-Generation Event-Driven Architectures: Performance, Scalability, and Intelligent Orchestration Across Messaging Frameworks
Distributed, Parallel, and Cluster Computing
Makes computer systems faster and cheaper.
A Survey on the Landscape of Self-adaptive Cloud Design and Operations Patterns: Goals, Strategies, Tooling, Evaluation and Dataset Perspectives
Distributed, Parallel, and Cluster Computing
Makes apps automatically fix themselves when problems arise.