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Machine Learning Phase Transitions
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cubanpit/ml-phase-transition
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This is an exam project for a master course on ''Statistical Methods for Learning''.
The repository includes C++ simulations of physical systems, Python Keras/Tensorflow code for the neural networks part and the LaTeX code for the exam report (in Italian, but with nice pictures!).
Simulated physical systems:
- Ising on square lattice, with 4 nearest neighbours (Wolff algorithm)
- Ising on honeycomb lattice, with 3 nearest neighbours (Wolff algorithm)
- Ising on triangular lattice, with 6 nearest neighbours (Metropolis algorithm)
- XY model on square lattice, with 4 nearest neighbours (Wolff algorithm)
Keras andTensorflow
Carrasquilla J, Melko RG. 2017. ''Machine learning phases of matter''. Nature Physics.
Martina Crippamartina.crippa2@studenti.unimi.it
Pietro F. Fontanapietrofrancesco.fontana@studenti.unimi.it
The code is released under MIT license, see LICENSE file for further information.
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