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Transfer learning enables the molecular transformer to predict regio- and stereoselective reactions on carbohydrates | Research Communities by Springer Nature
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I made a Molecular Transformer used to keep pressure and temperature down when recovering large amounts of refrigerant : r/functionalprint
GitHub - mpcrlab/MolecularTransformerEmbeddings: Code and data for the Transformer neural network trained to translate between molecular text representations and create molecular embeddings.
GitHub - lsj2408/Transformer-M: [ICLR 2023] One Transformer Can Understand Both 2D & 3D Molecular Data (official implementation)
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PDF] Generative Chemical Transformer: Neural Machine Learning of Molecular Geometric Structures from Chemical Language via Attention | Semantic Scholar
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Transformer-based molecular optimization beyond matched molecular pairs | Journal of Cheminformatics | Full Text
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Language-based software's accurate predictions translate to benefits for chemists | Research | Chemistry World
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Angewandte Chemie on X: "A Molecular Transformer: A pi-Conjugated Macrocycle as an Adaptable Host (Liu) @JunzhiLiu2 @HKUniversity https://t.co/3NW9wCnst6 https://t.co/otrNfx0sHH" / X
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