This is project page for the paper "RG-Flow: a hierarchical and explainable flow model based on renormalization group and sparse prior". Paper link: https://arxiv.org/abs/2010.00029
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Updated
Aug 22, 2022 - Python
This is project page for the paper "RG-Flow: a hierarchical and explainable flow model based on renormalization group and sparse prior". Paper link: https://arxiv.org/abs/2010.00029
Pytorch source code for arXiv paper Neural Network Renormalization Group, a generative model using variational renormalization group and normalizing flow.
A Python package for efficient optimisation of real-space renormalization group transformations using Tensorflow.
Implementation of the GILT + HOTRG and calculating scaling dimensions through the linearized RG equation of the GILT + HOTRG.
PyR@TE 3
Official implementation of spectrum bifurcation renormalization group(SBRG), which is suitable for quantum simulation on strong disordered systems for 1D and 2D. Paper: arXiv:2008.02285[https://arxiv.org/abs/2008.02285], Phys. Rev. B 93, 104205 (2016)[https://arxiv.org/abs/1508.03635]
A Tensor Network package for Machine Learning and Quantum Computing in Python.
Novel real space renormalization group approach for many-body localization criticality problems
Nuclear physics at low renormalization group resolution.
Notebooks developed in Mathematica for my Ph.D. thesis and other resources
Strong Disorder RG Flow and the Random Singlet Phase of a 1D Random AF Heisenberg Spin-1/2 Chain.
Renormalization for the break-up of invariant tori in Hamiltonian flows
Code for RG-Flow: A hierarchical and explainable flow model based on renormalization group and sparse prior.
Implementation of Zipper Entanglement Renormalization on Julia platform.
Code for Important Processing Steps For .Tiff or .Raw Video Files Acquired From 2-Photon Imaging System + Completely Automated and With NWB Schema (.HDF5) Capability
Ising model, Glauber dynamics, Metropolis-Hastings algorithms, and renormalization.
Floquet real-time renormalization group implemention in python for the single channel Kondo model
Pipeline Consisting of LSTM + Variational and Transformer Based Autoencoders + PCA/UMAP (Parameterized and Non-Parameterized) For Generating Low-Dim Manifold Representation of V1 Neural Activity
Constructing coarse grained super-dimers on the Ammann-Beenker quasicrystal with RSMI-NE.
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