Paper ID: 2409.15600

Polyatomic Complexes: A topologically-informed learning representation for atomistic systems

Rahul Khorana, Marcus Noack, Jin Qian

Developing robust physics-informed representations of chemical structures that enable models to learn topological inductive biases is challenging. In this manuscript, we present a representation of atomistic systems. We begin by proving that our representation satisfies all structural, geometric, efficiency, and generalizability constraints. Afterward, we provide a general algorithm to encode any atomistic system. Finally, we report performance comparable to state-of-the-art methods on numerous tasks. We open-source all code and datasets. The code and data are available at this https URL.

Submitted: Sep 23, 2024