Representations are a foundational component of any modelling protocol,
including on molecules and molecular solids. For tasks that depend on knowledge
of both molecular conformation and 3D orientation, such as the modelling of
molecular dimers, clusters, or condensed phases, we desire a rotatable
representation that is provably complete in the types and positions of atomic
nuclei and roto-inversion equivariant with respect to the input point cloud. In
this paper, we develop, train, and evaluate a new type of autoencoder,
molecular O(3) encoding net (Mo3ENet), for multi-type point clouds, for which
we propose a new reconstruction loss, capitalizing on a Gaussian mixture
representation of the input and output point clouds. Mo3ENet is end-to-end
equivariant, meaning the learned representation can be manipulated on O(3), a
practical bonus. An appropriately trained Mo3ENet latent space comprises a
universal embedding for scalar and vector molecule property prediction tasks,
as well as other downstream tasks incorporating the 3D molecular pose, and we
demonstrate its fitness on several such tasks
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