Polymer property prediction with GNNs and deep set learning.
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Updated
May 31, 2023 - Eiffel
Polymer property prediction with GNNs and deep set learning.
Polymer-Oriented LibrarY of Monomer-Expression Rules and In-silico Synthesis Tools
Biopolymer Performance Predictor is a machine-learning pipeline for predicting polymer thermophysical properties directly from molecular structure.
For MATSE 121.02 LAB: This program plots and analyzes instrument data from Shimadzu DSC-60 Series and Shimadzu DTG-60A Series regarding the thermal properties of commercial polyurethane (PU) foam samples. These plots include DSC, TGA, and DTA, respectively.
Follow the flowchart: answer the questions and compare your observations to narrow down possible plastics. You can step back or restart at any moment.
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