Practical Techniques for Applying Data Quality in the Lakehouse with Databricks
Offered By: Databricks via YouTube
Course Description
Overview
Explore practical techniques for applying data quality in the Lakehouse with Databricks in this 41-minute conference talk. Dive into the six dimensions of data quality: consistency, accuracy, validity, completeness, timeliness, and uniqueness. Discover how to streamline data management processes to prevent issues and enhance utility for downstream analytics, data science, and machine learning. Solutions Architects Lara Rachidi and Liping Huang detail specific techniques and features that improve the Databricks Platform's functionality. Gain insights into data, analytics, and AI governance while learning how to effectively implement data quality practices across industries using the Databricks Lakehouse architecture.
Syllabus
Learn Practical Techniques for Applying Data Quality in the Lakehouse with Databricks
Taught by
Databricks
Related Courses
Data Processing with AzureLearnQuest via Coursera Mejores prácticas para el procesamiento de datos en Big Data
Coursera Project Network via Coursera Data Science with Databricks for Data Analysts
Databricks via Coursera Azure Data Engineer con Databricks y Azure Data Factory
Coursera Project Network via Coursera Curso Completo de Spark con Databricks (Big Data)
Coursera Project Network via Coursera