Java Full Stack Development for Robust and Scalable Enterprise Architecture.
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| Title: | Java Full Stack Development for Robust and Scalable Enterprise Architecture. |
|---|---|
| Authors: | G. U., Siri Aishwarya, A., Sneha, S., Shravani, Raj, Sushanth, B. A., Sushma, N., Hamsa, D. C., Surendranath Gowda, RanjaniDevi, M. |
| Source: | International Scientific Journal of Engineering & Management; May2025, Vol. 4 Issue 5, p1-9, 9p |
| Subject Terms: | DIGITAL transformation, DIGITAL technology, SOFTWARE engineering, WEB-based user interfaces, WEB development |
| Abstract: | In the era of digital transformation, enterprises demand robust, scalable, and maintainable software architectures that can support dynamic business needs. Java Full Stack Development has emerged as a comprehensive approach to address these challenges, integrating frontend, backend, and database technologies to deliver end-to-end enterprise solutions. This paper explores the key components and best practices in Java Full Stack Development, including the use of modern frontend frameworks (e.g., Angular, React), backend technologies (e.g., Spring Boot, RESTful APIs), and databases (SQL and NoSQL). It also examines architectural patterns such as microservices and layered architecture that enhance scalability, fault tolerance, and maintainability. Emphasis is placed on how Java's platform independence, strong community support, and vast ecosystem contribute to building resilient enterprise applications. Through case studies and performance evaluations, the paper demonstrates how full stack Java development facilitates rapid development cycles, seamless integration, and long-term sustainability of enterprise systems. [ABSTRACT FROM AUTHOR] |
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| Database: | Complementary Index |
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