Napačna izbira? Nič za to! Ponujamo možnost vračila v 30 dneh
Z darilnim bonom ne morete zgrešiti. Obdarovanec lahko v zameno za darilni bon izbere karkoli iz naše ponudbe.
30 dni za vračilo blaga
This book examines the integration of standardized repository patterns through Jakarta Data within Spring Boot 4 environments. It focuses on the adoption of these patterns for structured data access and the incorporation of vector similarity search capabilities directly in repositories to support AI-driven queries and semantic operations.
Designed for experienced persistence architects, senior Java developers, and technical leads working on enterprise-scale applications, the content addresses advanced implementation considerations, architectural trade-offs, and integration strategies that align persistence layers with modern AI workloads. Topics include repository interface design, query method derivation, vector embedding handling, similarity search configuration across compatible stores, and performance implications in production settings.
The material assumes familiarity with Spring Boot, Jakarta Persistence, and core data modeling concepts. Readers will find detailed analysis of how these features enable more intelligent data retrieval patterns without compromising type safety or maintainability.
If you are a professional developer seeking to enhance persistence architectures with standardized abstractions and vector capabilities for AI-assisted applications, this book provides the technical depth required for informed implementation decisions.