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.
data-engineering ✓
best-practices ✓
cloud-native ✓
data-governance ✓
ingestion-pipelines ✓