Trace and Fix Data Anomalies

External: Coursera Courses ↗ · Coursera

Open Course on External: Coursera

Free to audit · Opens on External: Coursera

Trace and Fix Data Anomalies

Coursera · Intermediate ·🔄 Data Engineering ·3mo ago

Key Takeaways

Traces and fixes data anomalies using data quality monitoring and debugging

Original Description

Did you know that hidden data anomalies can cascade through pipelines and corrupt entire dashboards, models, and business decisions? Finding the source of a data issue quickly is essential for maintaining trustworthy analytics and automated workflows. This Short Course was created to help professionals in this field build reliable data quality monitoring and debugging capabilities for maintaining trustworthy automated data workflows. By completing this course, you will be able to trace data anomalies back to their origin, inspect upstream and downstream dependencies, and diagnose quality failures inside complex pipelines—skills that dramatically reduce downtime and improve overall data reliability. By the end of this course, you will be able to: Investigate data quality issues by tracing anomalies to their source within a data pipeline. This course is unique because it connects data engineering principles with hands-on debugging techniques, giving you the practical skills needed to keep pipelines accurate, resilient, and ready for production demands. To be successful in this project, you should have: Basic SQL knowledge Understanding of data pipeline concepts Familiarity with ETL and ELT workflows
Watch on External: Coursera ↗ (saves to browser)
Sign in to unlock AI tutor explanation · ⚡30

Related Reads

📰
I Built My Second ETL Pipeline. This Time, I Started Thinking Like a Data Engineer
Learn how to build a production-ready ETL pipeline with Python, Docker, PostgreSQL, and Kestra by thinking like a data engineer
Towards Data Science
📰
JuiceFS Sync for PB-Scale Data Transfers: Resumable Sync, Encryption, and Bandwidth Control
Learn how to efficiently transfer large volumes of data using JuiceFS Sync, which offers resumable sync, encryption, and bandwidth control, ideal for PB-scale data transfers.
Dev.to AI
📰
How Airflow is using AI to make data engineering more resilient, not more complex
Airflow uses AI to make data engineering more resilient by detecting data drift, resuming failed pipelines, and fixing issues automatically, reducing complexity and improving reliability.
Medium · AI
📰
What Can We Do When Memory Becomes the New Bottleneck in Data Engineering?
Learn how to overcome memory bottlenecks in data engineering using Pandas chunking, Dask, and Polars, and why it matters for processing large datasets
Towards Data Science
Up next
A Moment Frozen in Time | Arnav Iyengar | TEDxJenks Youth
TEDx Talks
Watch →