By using tdwi.org website you agree to our use of cookies as described in our cookie policy. Learn More

TDWI Articles

Data Digest: Advice for Machine Learning Models

Improve machine learning models by avoiding bias, refining training data, and seeing what’s missing.

 

AI and ML in Emerging Markets

AI and machine learning are susceptible to flawed data and unseen bias everywhere, but start-ups in emerging markets should be especially careful. Check this list of best practices to follow.

Read more at TechCrunch


Accurate ML Models Depend on Training Data

If you're not seeing the outcomes you want from machine learning, you may have problems in the data sets used to train the algorithms. This blog post explains why so many teams fail to notice such problems and how to fix them.

Read more at PeteWarden.com


Detecting a Negative

Researchers with IBM created a system that could improve machine learning models by teaching them to detect what is missing from a data set.

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.