
In this episode, we look at how Meta addressed the challenge of feature selection at scale through Global Feature Importance—a system that aggregates insights across models to surface the most valuable features. This approach not only streamlines model development but also enables machine learning engineers to iterate more effectively and build models that deliver stronger business impact.
For more details, check out Meta’s published tech blog here: https://medium.com/@AnalyticsAtMeta/collective-wisdom-of-models-advanced-feature-importance-techniques-at-meta-1a7a8d2f9e27