zeroloss
Zeroloss is a term used in machine learning and optimization to describe a situation in which a model’s training loss reaches the value zero for the chosen loss function on the training dataset. This indicates that, with respect to that loss, the model’s predictions are an exact match to the training targets.
The meaning of zero loss depends on the loss function. For example, with mean squared error in
Achieving zeroloss is frequently associated with highly expressive or overparameterized models that can memorize the training
Zeroloss is mainly discussed in theoretical and empirical analyses of optimization and learning dynamics. It does