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The MAterials Simulation Toolkit (MAST) for atomistic modeling of defects and diffusion

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 Added by Tam Mayeshiba
 Publication date 2016
  fields Physics
and research's language is English




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The MAterials Simulation Toolkit (MAST) is a workflow manager and post-processing tool for ab initio defect and diffusion workflows. MAST codifies research knowledge and best practices for such workflows, and allows for the generation and management of easily modified and reproducible workflows, where data is stored along with workflow information for data provenance tracking. MAST is open-source and available for download (see PDF for links).



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