cesmix-mit/AtomisticComposableWorkflows
Provide easy-to-use CESMIX-aligned case studies. Integrate the latest developments of the Julia atomistic ecosystem and state-of-the-art tools.
This project helps materials scientists and researchers who work with atomistic simulations to streamline their analysis. It takes raw atomistic data and simulation inputs to produce insights for material design and understanding, using pre-built, easy-to-adapt workflows. Materials scientists, computational chemists, and condensed matter physicists can use this to quickly set up and run complex atomistic studies.
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Use this if you need pre-configured, modular workflows to analyze atomistic simulation data efficiently and consistently.
Not ideal if you are looking for a standalone atomistic simulation package or a general-purpose scientific computing library rather than specialized workflows.
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JetBrains MPS
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Last pushed
Aug 29, 2022
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