trainingrather
TrainingRather is a term used in artificial intelligence and machine learning to describe a training-centric approach to developing models. It emphasizes the process of training—data curation, pipeline design, and continual learning—over single-point evaluation, treating model development as an ongoing activity rather than a one-time event.
The concept arose in discussions within data-centric AI communities and niche scholarly writings in the 2010s
Core principles of TrainingRather include data quality and versioning, reproducible training pipelines, automated hyperparameter tuning, and
Practices associated with TrainingRather involve data-centric design, continuous integration and delivery for ML, automated retraining schedules,
While praised for promoting robust data practices and ongoing improvement, critics warn that an excessive focus