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Grid-based molecular modeling library

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molgrid can be used to generate several types of tensors from input molecules, most uniquely three-dimensional voxel grids. Input can be specified fairly flexibly, with native support for numpy arrays and torch tensors as well as major molecular file formats via OpenBabel. Output generation has several options that facilitate obtaining good performance from machine learning algorithms, including features like data augmentation and resampling.

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