Geometric Learning Dynamics

We present a unified geometric framework for modeling learning dynamics in physical, biological, and machine learning systems. The theory reveals three fundamental regimes, each emerging from the power-law relationship between the metric tensor in the space of trainable variables and the noise covariance matrix . The quantum regime corresponds to and describes Schrödinger-like dynamics that emerges from a discrete shift symmetry. The efficient learning regime corresponds to and describes very fast machine learning algorithms. The equilibration regime corresponds to and describes classical models of biological evolution. We argue that the emergence of the intermediate regime is a key mechanism underlying the emergence of biological complexity.
View on arXiv@article{vanchurin2025_2504.14728, title={ Geometric Learning Dynamics }, author={ Vitaly Vanchurin }, journal={arXiv preprint arXiv:2504.14728}, year={ 2025 } }