MOTIFNet: Automating the Analysis of Amphiphile and Block Polymer Self-Assembly from SAXS Data
Daoyuan Li · Shuquan Cui · Mahesh Mahanthappa · Frank Bates · Timothy Lodge · Joern Ilja Siepmann
Keywords:
Small-Angle X-ray Scattering (SAXS)
Mixture of Experts (MoE)
Self-Attention
Self-Assembly
Order-Disorder Transition (ODT)
Temporal Convolutional Network (TCN)
Abstract
Accurately classifying morphology and assessing stability in soft matter self-assembly often require specialized analysis of small-angle X-ray scattering (SAXS) data, creating an obstacle to automation. To address this, we introduce MOTIFNet, a simplified sparse mixture of experts (MoE) model with top-1 routing. By combining temporal convolution and self-attention, MOTIFNet effectively processes SAXS time series data, enabling morphology classification, SAXS pattern prediction, and the estimation of order-disorder transition (ODT) probabilities. This model advances automated characterization, accelerating experimentation and high-throughput studies in soft matter self-assembly.
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