Thursday, March 13, 2025
Four areas of Data Governance
One of the four key areas of data governance is Data Quality. Ensuring that data is accurate, consistent, and reliable is fundamental to effective data governance. This includes defining data standards, implementing data validation processes, and continuously monitoring data quality to ensure that the data meets the organization’s requirements and can be trusted for decision-making.
Other important areas of data governance include:
Data Security and Privacy: Protecting data from unauthorized access and ensuring compliance with privacy regulations.
Data Management: Establishing processes and policies for data collection, storage, and lifecycle management.
Data Stewardship and Ownership: Assigning responsibility for data management and ensuring accountability for data integrity and usage.
Subscribe to:
Post Comments (Atom)
Data synchronization in Lakehouse
Data synchronization in Lakebase ensures that transactional data and analytical data remain up-to-date across the lakehouse and Postgres d...
-
Steps to Implement Medallion Architecture : Ingest Data into the Bronze Layer : Load raw data from external sources (e.g., databases, AP...
-
from pyspark.sql import SparkSession from pyspark.sql.types import ArrayType, StructType from pyspark.sql.functions import col, explode_o...
-
Databricks Platform Architecture The Databricks platform architecture consists of two main components: the Control Plane and the Data Pla...
No comments:
Post a Comment