What data engineering architectures should you use in your next project?
Data engineering is the process of designing, building, and maintaining data pipelines that collect, transform, and deliver data for various purposes, such as analytics, machine learning, or business intelligence. Data engineering architectures are the frameworks and patterns that guide how data pipelines are organized, implemented, and managed. Choosing the right data engineering architecture for your next project can have a significant impact on the performance, scalability, reliability, and maintainability of your data solutions. In this article, we will explore some of the most common and popular data engineering architectures and their pros and cons.
-
Axel SchwankeSenior Data Engineer | Data Architect | Data Science | Data Mesh | Data Governance | 4x Databricks certified | 2x AWS…
-
Ashish SinghVisionary Director Data Engineering | Data Analytics | Data Governance | Paving path for AI & ML | Speaker | Ex Yahoo…
-
Dhatchana MoorthiData Science & Engineering | Linkedln Top Voice ( Community )