PaMM: Periodic Motif Memory for Atomistic Models with an Explicit Local-Structure Interface
Ryan Dong

TL;DR
This paper introduces PaMM, a periodic motif memory that explicitly encodes local structural motifs to improve atomistic modeling in periodic crystals, showing consistent benefits over baseline models.
Contribution
PaMM adds explicit pair and triplet motif lookup features to atomistic models, enhancing their ability to capture local structures in periodic crystals.
Findings
PaMM improves energy and force MAE at fixed training steps.
Structured motif memory outperforms unstructured alternatives.
Small but consistent gains observed across held-out families.
Abstract
Periodic crystals repeatedly instantiate similar local coordination motifs across translated cells and chemically related structures, but current equivariant atomistic models usually encode these patterns only implicitly in dense edge features. We introduce PaMM, a periodic motif memory that augments the UMA eSCN-MD edge encoder with explicit pair and triplet lookup features. Pair motifs are keyed by and triplet motifs by , hashed into fixed-size tables and fused with the baseline edge representation through lightweight gate-only and affine-equipped variants. We evaluate PaMM in a matched UMA-S OMAT setting and focus on a narrow question: whether explicit motif memory helps at a fixed intermediate training budget. At the 10k-step checkpoint, both PaMM variants improve over the plain baseline; gate-only gives the best energy MAE, while the…
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