datatuned
Datatuned is an approach in machine learning and data science that centers on shaping the input data to improve model performance and reliability, rather than tuning model parameters alone. It treats data quality, representativeness, and labeling as the primary levers for achieving robust results.
The datatuning process typically includes several practices. Data quality assessment and metadata tracking help identify gaps
Datatuned methods are applied across domains, including computer vision, natural language processing, healthcare analytics, and financial
Benefits of datatuning include improved generalization, greater robustness to distribution shifts, reduced overfitting to peculiarities of
Datatuning complements model-focused tuning by treating data as a first-class asset. It integrates with data management