pathlifting
Pathlifting is a term used in the field of artificial intelligence and machine learning, specifically within the context of neural network training. It refers to a method of optimizing the training process by focusing computational effort on specific parts of the neural network's architecture, often referred to as "paths." Instead of treating all parameters or layers uniformly, pathlifting aims to identify and preferentially train the most influential or promising computational paths within the network.
The underlying motivation for pathlifting is to improve training efficiency and potentially achieve better performance. By
Different strategies can be employed for pathlifting. One common method involves dynamic selection of paths based