Machine learning algorithms for many-body quantum systems
-
Updated
Apr 14, 2026 - Python
Machine learning algorithms for many-body quantum systems
Collection of NetKet lectures
A PyTorch implementation of a Neural Quantum State (NQS) simulator for quantum many-body systems, featuring symmetry-preserving neural networks and advanced sampling techniques.
Transcorrelated Second-Quantized Neural Network Quantum States (TC-NQS). A JAX-based framework for high-precision quantum chemistry, utilizing transcorrelation theory and efficient second-order imaginary time evolution solvers (VITE, MinSR, ProjectedSR).
This project provides a comprehensive framework for simulating quantum systems using various models and functionalities. The project leverages advanced mathematical libraries and parallel computing techniques to ensure efficient and accurate simulations.
Results presented during the EuCAIFCon 2025 in Cagliari (ITA) (https://agenda.infn.it/event/43565/). Preprint available.
Add a description, image, and links to the nqs topic page so that developers can more easily learn about it.
To associate your repository with the nqs topic, visit your repo's landing page and select "manage topics."