Improve Data Quality and Automate Errors

External: Coursera Courses ↗ · Coursera

Open Course on External: Coursera

Free to audit · Opens on External: Coursera

Improve Data Quality and Automate Errors

Coursera · Intermediate ·🔄 Data Engineering ·3mo ago

Key Takeaways

Masters data quality assurance and automates errors using data analytics techniques

Original Description

Master the critical skills for ensuring data reliability and building self-healing data systems. This course transforms your approach to data quality from reactive firefighting to proactive engineering driven reliability. This Short Course was created to help data management and engineering professionals accomplish systematic data quality assurance and error automation at enterprise scale. By completing this course, you'll be able to implement quantitative data quality measurements, establish monitoring systems that catch degradation trends before they impact business operations, and build intelligent SQL routines that automatically recover from data pipeline failures. By the end of this course, you will be able to: • Apply calculations to measure key data quality dimensions • Evaluate quality key performance indicators over time and recommend remediation • Create an automated SQL routine to handle and reprocess data errors. This course is unique because it blends quantitative data quality methods with practical automation engineering, enabling you to build self-healing data systems that maintain measurable quality standards at scale. To be successful in this course, you should have a background in SQL, data pipeline concepts, and basic data engineering principles.
Watch on External: Coursera ↗ (saves to browser)
Sign in to unlock AI tutor explanation · ⚡30

Related AI Lessons

How I built the OSS alternatives directory: GitHub ETL, Turso, and the UPSERT trap I hit
Learn how to build a data pipeline for an open-source alternatives directory using GitHub ETL, Turso, and Claude Haiku summaries
Dev.to · MORINAGA
Apache Iceberg in Production: Compaction, Catalogs, and the Pitfalls Nobody Warns You About
Learn how to use Apache Iceberg in production, including compaction, catalogs, and common pitfalls to avoid, to improve data engineering workflows
Dev.to · Gabriel Henrique
Your First Task as a Data Engineer in a New Company? Make the ETL Pipeline Testable
As a new data engineer, make the ETL pipeline testable to ensure data quality and reliability
Towards Data Science
From DataStage and Informatica to Databricks Medallion Architecture: Why Migration Is More Than Code Conversion
Learn how to migrate legacy ETL systems like DataStage to modern architectures like Databricks Medallion, and why it's more than just code conversion
Dev.to · Amit Kumar Singh
Up next
A Moment Frozen in Time | Arnav Iyengar | TEDxJenks Youth
TEDx Talks
Watch →