BioExcel Building Blocks tutorials: Mutation Free Energy Calculations
github.com/bioexcel/biobb_wf_pmx_tutorialThis tutorial aims to illustrate how to compute a fast-growth mutation free energy calculation, step by step, using the BioExcel Building Blocks library (biobb). The particular example used is the Staphylococcal nuclease protein (PDB code 1STN), a small, minimal protein, appropriate for a short tutorial.
Sourced from
- bio.tools — bioexcel_building_blocks_tutorials_mutation_free_energy_calculations
- GitHub — github.com/bioexcel/biobb_wf_pmx_tutorial
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