Completed
data quality is a huge space
Class Central Classrooms beta
YouTube videos curated by Class Central.
Classroom Contents
Assuring Data Quality at Scale
Automatically move to the next video in the Classroom when playback concludes
- 1 Introduction
- 2 About Gayathri
- 3 Pipelines
- 4 What is Data Quality
- 5 What is DataDriven Organization
- 6 Good Quality Data
- 7 Data Quality Issues
- 8 Real World Examples
- 9 Incomplete Data
- 10 Incorrect Data
- 11 Bad Customer Experience
- 12 Data Loss
- 13 Data Quality
- 14 completeness
- 15 accuracy
- 16 timeliness
- 17 subjectivity
- 18 data mesh
- 19 data matching
- 20 changing data landscape
- 21 four key principles
- 22 ownership of data quality
- 23 data quality is a huge space
- 24 data quality capabilities
- 25 what makes an effective data quality monitoring
- 26 offerings
- 27 homegrown options
- 28 centralized platform approach
- 29 platform approach
- 30 connectors
- 31 data infrastructure
- 32 profiling
- 33 checks
- 34 alerts
- 35 transparency
- 36 challenges
- 37 conclusion
- 38 References
- 39 Questions