Most AI failures are rooted in poor data quality rather than technical shortcomings. Incorrect or inconsistent datasets degrade model reliability.
Key quality components include:
- Consistency
- Freshness
- Accuracy
- Noise levels
- Labeling precision
High-quality data leads to better models with less training effort. In AI development, data preparation is often more important than model selection itself.