The melting point is a fundamental property that is time-consuming to measure or compute, thus hindering high-throughput analyses of melting relations and phase diagrams over large sets of candidate compounds. To address this, we build a machine learning model, trained on a database of ∼10,000 compounds, that can predict the melting temperature in a fraction of a second. The model, made publicly available online, features graph neural network and residual neural network architectures. We demonstrate the model's usefulness in diverse applications. For the purpose of materials design and discovery, we show that it can quickly discover novel multicomponent materials with high melting points. These predictions are confirmed by density functiona...
There currently exist no quantitative methods to determine the appropriate conditions for solid-stat...
Melt pool temperature contains abundant information on metallurgical and mechanical aspects of produ...
A novel strategy for the prediction of the transition temperature of bent-core liquid crystals (LCs)...
The existing models and methods used to determine the melting temperature of the mold powders used i...
International audienceMachine learning (ML) methods are becoming the state-of-the-art in numerous do...
Machine learning has been successfully employed in computer vision, speech processing, and natural l...
A quantitative structure–activity relationship model has been constructed by artificial neural netwo...
There has been a recent surge of interest in using machine learning to approximate density functiona...
Miniaturization of electronics devices is often limited by the concomitant high heat fluxes (cooling...
Abstract: Predicting the properties of materials prior to their synthesis is of great importance in ...
Graph networks are a new machine learning (ML) paradigm that supports both relational reasoning and ...
Efficient prediction of sampling-intensive thermodynamic properties is needed to evaluate material p...
Antiferromagnetic materials are exciting quantum materials with rich physics and great potential for...
Graph networks are a new machine learning (ML) paradigm that supports both relational reasoning and ...
In materials science, the first principles modeling, especially density functional theory (DFT), ser...
There currently exist no quantitative methods to determine the appropriate conditions for solid-stat...
Melt pool temperature contains abundant information on metallurgical and mechanical aspects of produ...
A novel strategy for the prediction of the transition temperature of bent-core liquid crystals (LCs)...
The existing models and methods used to determine the melting temperature of the mold powders used i...
International audienceMachine learning (ML) methods are becoming the state-of-the-art in numerous do...
Machine learning has been successfully employed in computer vision, speech processing, and natural l...
A quantitative structure–activity relationship model has been constructed by artificial neural netwo...
There has been a recent surge of interest in using machine learning to approximate density functiona...
Miniaturization of electronics devices is often limited by the concomitant high heat fluxes (cooling...
Abstract: Predicting the properties of materials prior to their synthesis is of great importance in ...
Graph networks are a new machine learning (ML) paradigm that supports both relational reasoning and ...
Efficient prediction of sampling-intensive thermodynamic properties is needed to evaluate material p...
Antiferromagnetic materials are exciting quantum materials with rich physics and great potential for...
Graph networks are a new machine learning (ML) paradigm that supports both relational reasoning and ...
In materials science, the first principles modeling, especially density functional theory (DFT), ser...
There currently exist no quantitative methods to determine the appropriate conditions for solid-stat...
Melt pool temperature contains abundant information on metallurgical and mechanical aspects of produ...
A novel strategy for the prediction of the transition temperature of bent-core liquid crystals (LCs)...