Part 16: Data Manipulation in Data Validation and Quality Control
Last Updated on April 2, 2026 by Editorial Team Author(s): Raj kumar Originally published on Towards AI. Data quality issues are the silent killers of production systems. A single malformed record can crash your pipeline. A gradual drift in data distributions can slowly degrade model performance. Missing values that sneak through validation can corrupt downstream analytics. The cost of poor data quality is measured not just in failed jobs, but in wrong business decisions, customer frustration, a