4 links
tagged with all of: data-engineering + best-practices
Click any tag below to further narrow down your results
Links
The article discusses the advancements in data engineering over the past year and highlights the current trends shaping the field. It emphasizes the importance of evolving technologies and methodologies that enhance data management and analytics. Insights into best practices and challenges faced by data engineers are also provided.
Data engineering best practices are being challenged by modern demands for speed, agility, and purpose-driven architecture. Experts advocate for a shift from traditional centralized models to more flexible, intent-driven approaches that prioritize real business outcomes and guided autonomy. The need for a balance between standardization and freedom is crucial to avoid chaos and technical debt in data platforms.
Effective documentation in dbt is essential for enhancing team collaboration, reducing onboarding time, and improving data quality. Best practices include documenting at the column and model levels, integrating documentation into the development workflow, and tailoring content for various audiences. By prioritizing clear and comprehensive documentation, teams can transform their data projects into transparent and understandable systems.
The article provides insights into implementing Identity and Access Management (IAM) within data engineering processes. It discusses the importance of security in data management and offers practical guidelines for data engineers to effectively integrate IAM into their workflows.