TDWI Articles

Data Digest: Data Quality and AI/ML

Why AI needs high-quality data, techniques for improving data quality, and ideas for incorporating ML in the workplace.

 

AI Needs Quality Data

The accuracy and reliability of AI outputs are intrinsically linked to the quality of the underlying data.

Read more at Data Science Central


Improving Data Quality for AI

Data integration, data profiling and filtering, data set labeling, and data monitoring and lineage are essential for improving data quality in AI initiatives.

Read more at Solutions Review


Helping Workers Collaborate with AI

This article provides business leaders with evidence-based strategies for successfully integrating machine learning into the workplace, focusing on augmenting human decision-making rather than replacing it.

Read more at Forbes


TDWI Membership

Accelerate Your Projects,
and Your Career

TDWI Members have access to exclusive research reports, publications, communities and training.

Individual, Student, and Team memberships available.