MonitSharma/Computational-High-Energy-Physics
These are the codes used in High Energy Physics simulations, particularly including simulations of Lattice QCD and Machine Learning for High Energy Physics
This project helps high-energy physicists and researchers model the fundamental nature of matter under extreme conditions, like those in particle accelerators or neutron stars. It takes in theoretical parameters and experimental data from particle collisions and outputs simulations of how quarks and gluons behave, including their phase transitions and equations of state. This is for physicists studying quantum chromodynamics (QCD) and the early universe.
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Use this if you are a high-energy physicist who needs to perform numerical simulations of Lattice QCD or apply machine learning techniques to analyze experimental data from particle accelerators.
Not ideal if you are looking for a general-purpose scientific simulation tool outside of quantum chromodynamics or high-energy physics.
Stars
12
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2
Language
Jupyter Notebook
License
Apache-2.0
Category
Last pushed
Jul 03, 2023
Commits (30d)
0
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