Nathan Faraj

1paper

1 Paper

7.1LGApr 30, 2025
Tuning Learning Rates with the Cumulative-Learning Constant

Nathan Faraj

This paper introduces a novel method for optimizing learning rates in machine learning. A previously unrecognized proportionality between learning rates and dataset sizes is discovered, providing valuable insights into how dataset scale influences training dynamics. Additionally, a cumulative learning constant is identified, offering a framework for designing and optimizing advanced learning rate schedules. These findings have the potential to enhance training efficiency and performance across a wide range of machine learning applications.