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ENTERPRISE AI AT SCALE: ARCHITECTING SECURE MICROSERVICES WITH SPRING BOOT AND AWS

Chandra Sekhar Oleti

2023INTERNATIONAL JOURNAL OF RESEARCH IN COMPUTER APPLICATIONS AND INFORMATION TECHNOLOGY15 citationsDOIOpen Access PDF

Abstract

This article presents a novel blueprint for architecting microservice ecosystems using Spring Boot and AWS to deploy AI-driven predictive models at scale.Leveraging ECS, Lambda, S3, and Step Functions, the framework integrates seamlessly with machine learning APIs for real-time recommendations.A unique security layer using KMS, Secrets Manager, and OAuth SSO ensures compliance with enterprise-grade cybersecurity protocols.The study evaluates response times, model accuracy, and breach resilience across financial applications.A case implementation in retail banking illustrates how infrastructure-native AI services can be securely integrated into production using developer-friendly tooling.The proposed architecture achieves 99.97% uptime, sub-200ms response times for AI predictions, and demonstrates 45% improvement in model deployment velocity while maintaining SOC 2 Type II compliance standards.

Topics & Concepts

MicroservicesBoot campSpring (device)Computer scienceOperating systemScale (ratio)Embedded systemEngineeringCloud computingQuantum mechanicsPhysicsMechanical engineeringLibrary scienceSoftware System Performance and ReliabilityCloud Computing and Resource ManagementIoT and Edge/Fog Computing