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Analysis, visualization, edition of 3D atomistic models
atomes is a Free (Open Source) cross-platform software licensed under the terms
of the Affero GPL v3+ license.
atomes is a toolbox developed to analyze, to visualize and to create/edit 3D atomic scale models.
atomes also provides an advanced input preparation system for further calculations using well known molecular dynamics codes:
- Classical MD : DL-POLY and LAMMPS
- ab-initio MD : CPMD and CP2K
- QM-MM MD : CPMD and CP2K
atomes is developed by Dr. Sébastien Le Roux, research...
CPSeis is the open-source version of ConocoPhillips' former seismic processing system. Uses Fortran 90 and C/C++ layers for I/O. The new system was designed using an MPI-parallel model and works well on Linux clusters or on individual workstations.
Gabedit is a Graphical User Interface for FireFly (PC-Gamess), Gamess-US, Gaussian, Molcas, Molpro, MPQC, NWChem, OpenMopac, Orca, PSI4 and Q-Chem computational chemistry packages.
GUI for building, simulating and optimizing kinetic models.
A 3D graphical interface for building, simulating and optimizing Markov kinetic models in response to user defined time dependent stimuli. Models can be represented as either states and connecting transitions or interacting allosteric elements (see http://dx.doi.org/10.1085/jgp.201411183). Model parameters can be optimized by fitting model responses to user data. Optional user defined constraint equations for model parameters are parsed with EigenLab...