Learn Practical Techniques for Applying Data Quality in the Lakehouse with Databricks

Sdílet
Vložit
  • čas přidán 7. 09. 2024
  • Data quality has been a critical and common practice employed across industries for many years. At the core, data quality encompasses six dimensions, including consistency, accuracy, validity, completeness, timeliness, and uniqueness. However, a significant challenge remains in streamlining these processes to prevent data management issues and enhance their utility for downstream analytics, data science, and machine learning. The session will delve into the six dimensions of data quality, detailing the specific techniques and features that enhance the Databricks Platform's functionality.
    Talk By: Lara Rachidi, Solutions Architect, Databricks ; Liping Huang, Senior Solutions Architect, Databricks
    Here’s more to explore:
    Data, Analytics, and AI Governance: dbricks.co/44g...
    Connect with us: Website: databricks.com
    Twitter: / databricks
    LinkedIn: / data…
    Instagram: / databricksinc
    Facebook: / databricksinc

Komentáře • 1