Publication | Closed Access
Applied Machine Learning for Developing Next‐Generation Functional Materials
63
Citations
113
References
2021
Year
Materials ScienceArtificial IntelligenceEngineeringMachine LearningData ScienceData MiningPhysic Aware Machine LearningMachine Learning ModelMaterials CharacterizationAbstract Machine LearningMechanical Artificial IntelligenceComputational Nanostructure ModelingMaterials OptimizationAi-based Process OptimizationApplied Machine LearningMining MethodsMl AlgorithmsClimate Change
Abstract Machine learning (ML) is a versatile technique to rapidly and efficiently generate insights from multidimensional data. It offers a much‐needed avenue to accelerate the exploration and investigation of new materials to address time‐sensitive global challenges such as climate change. The availability of large datasets in recent years has enabled the development of ML algorithms for various applications including experimental/device optimization and material discovery. This perspective provides a summary of the recent applications of ML in material discovery in a range of fields, from optoelectronics to batteries and electrocatalysis, as well as an overview of the methods behind these advances. The paper also attempts to summarize some key challenges and trends in current research methodologies.
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