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binary-mixtures
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PyGL: statistical field theory in Python. github.com/rajeshrinet/pygl
pythoncahn-hilliardnucleationphase-transitionginzburg-landaubinary-mixturesactive-scalar-field-theorylandau-theoryfield-theoretic-simulationsdroplet-growthspinodal-decompositionphase-separationpygl
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May 8, 2025 - Jupyter Notebook
This codebase serves to demonstrate how a machine-learned c1-Functional, within the framework of classical Density Functional Theory (cDFT), can be used to generate accurate density profiles for liquid-liquid transitions.
machine-learningstatistical-mechanicsbinary-mixturesclassical-density-functional-theorysoft-condensed-matter-physics
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Sep 24, 2025 - Python
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