Keywords field exact matches “Machine Learning”; 28 programs are found.
The search results are sorted by the start time.
Time | Paper ID | Title / Authors | Keywords | Topic code | Ack. number |
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Day 1 | G114 | [Divisional Award] Frontier Prize lecture: Surrogate-Modeling of Powder Flow and Mixing using Machine Learning | Powder mixing Discrete element method Machine learning | X-51 | 448 |
Day 1 | PA102 | Machine-learning-guided directed evolution of antibody fragments: simultaneous optimization of affinity, expression, and thermal stability | VHH machine learning molecular evolution | 7-a | 457 |
Day 1 | PA146 | Development of a direct machine learning process from cytotoxicity on the subject of a novel T-cell engaging antibody | Protein Engineering Antibody Machine learning | 7-a | 660 |
Day 1 | PA151 | Data augmentation technology for morphology-based prediction model of human fibroblasts | Data augmentation Cell morphology Machine learning | 7-e | 207 |
Day 2 | PB270 | Design of a CO2 Adsorption Separation System Using a Machine Learning-Based Process Flowsheet | CO2 Machine Learning Adsorption | 4-e | 618 |
Day 2 | K207 | Rapid estimation of crystal structures of perovskite oxides using a soft bond valence method with machine learning | bond valence machine learning proton conductors | 9-e | 157 |
Day 2 | PC203 | Modeling of Photocatalytic Degradation Kinetics of Azo Compounds Applying Machine Learning | Photocatalyst Machine Learning Kinetic Study | 6-b | 423 |
Day 2 | PC205 | Construction of property prediction model and inverse analysis of the model in carbon material manufacturing process with different batch times | Machine learning Batch time | 6-e | 240 |
Day 2 | PC209 | Prediction of Ionic Conductivity in Solid Electrolytes Using a Machine Learning Model | Solid Electrolyte Machine Learning Materials Informatics | 6-f | 244 |
Day 2 | PC213 | Development of machine learning models to predict gas permeability from monomer structures and properties of polymer materials | Machine Learning Polymer Permeability | 6-g | 349 |
Day 2 | PC216 | Design of new acetylcholinesterase inhibitors using a Generative Adversarial Network | acetylcholinesterase Generative Adversarial Network machine learning | 6-g | 43 |
Day 2 | PC218 | Development and improvement of an odor prediction model based on molecular structure using olfactory receptor information | Odor Protein Machine Learning | 6-g | 93 |
Day 2 | PC220 | Development of machine learning model-based scores to evaluate pesticide-likeness | Machine Learning Quantitative Structure-Activity Relationship Pesticide | 6-g | 120 |
Day 2 | PC221 | Exploration of Candidate Molecules for Organic Semiconductor Materials Using Generative Models | Machine learning Organic semiconductor Hierarchical Variational Autoencoder | 6-f | 242 |
Day 2 | PC222 | Optimization of Kalina Cycle with Snow and Ice Heat Source Appliyng Machine Learning | Renewable Energy Machine Learning Thermal Energy | 6-b | 429 |
Day 2 | PC223 | Development of a method for predicting drug-drug interactions considering negative data mixed with positive data | Drug-drug interaction Machine learning Positive-unlabeled learning | 6-f | 119 |
Day 2 | PC226 | Prediction of CO2 solubility in deep eutectic solvents from machine learning models with molecular sigma-profiles | deep eutectic solvents machine learning COSMO-SAC model | 6-e | 644 |
Day 2 | PC227 | Pure Component Parameter Estimation for PC-SAFT EOS from Deep Neural Network with Molecular Sigma-Profiles | PC-SAFT EOS Machine Learning Sigma Profile | 6-e | 661 |
Day 2 | PC229 | Development of machine learning models for predicting the degradation activity and thermostability of plastic-degrading enzymes | machine learning bioinformatics plastics-degrading enzymes | 6-g | 378 |
Day 2 | PC234 | Building machine learning models to suggest new drug candidates for schizophrenia | Machine learning Drug design Schizophrenia | 6-g | 373 |
Day 2 | PC235 | Parameter identification for a chemical reaction rate by a machine learning approach | Parameter identification Machine learning Methanation | 6-f | 449 |
Day 2 | E215 | [Invited lecture] Computational approach to adsorption property and nanostructure in organically-modified 2D interlayer | Machine learning Molecular dynamics Adsorption | K-5 | 622 |
Day 2 | G221 | Machine Learning-Driven Multiphysics-Scale Simulation of Spray Wet Etching | Wet Etching Simulation Machine Learning | 2-e | 46 |
Day 3 | PD329 | Proposal for a new framework to construct empirical rule | CFD simulation Machine learning | 2-g | 188 |
Day 3 | PD359 | Machine learning-driven optimization in flow reactions using Pd-immobilized catalysts | Polymer immobilized Pd catalyst Machine learning Process optimization | 5-f | 50 |
Day 3 | M303 | AI-Driven 3D Bioprinting System for Optimizing Printing Performance | 3D bioprinting Process optimization Machine learning | 7-f | 248 |
Day 3 | H304 | Development of uroflowmetry using urine jet images | uroflowmetry Machine learning CFD | 6-f | 27 |
Day 3 | G314 | Development of a data-driven framework for optimal design of air filter microstructures | Air filter Numerical simulation Machine learning | 2-a | 300 |
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SCEJ 90th Annual Meeting (Tokyo, 2025)