Why your ML model needs product thinking: A case study
NegativeArtificial Intelligence

A machine learning model achieved 94% accuracy on its validation set, yet six months post-deployment, the recommendation engine has failed to drive significant business outcomes. This case highlights the disconnect that can occur between high model accuracy and practical effectiveness in real-world applications, emphasizing the need for product thinking in machine learning development.
— via World Pulse Now AI Editorial System