Ebook

Modern Data Architecture for Embedded Analytics

Modern Data Architecture for Embedded Analytics

Pages 20 Pages

Modern data architecture is critical for embedded analytics, as poor design can slow applications and limit scalability. Seven approaches exist: transactional databases, views/stored procedures, aggregate tables, replication, caching, data warehouses/marts, and modern analytics databases. Each offers trade-offs between performance, complexity, and cost, with modern columnar or in-memory databases providing the best query speed for large volumes but requiring specialized skills. Best practices stress aligning architecture with goals, end-user needs, latency expectations, and scalability plans. Analysts recommend shifting from static, siloed BI to dynamic, multi-directional data flows with self-service access.

Join for free to read