Projects per year
Abstract
Gradient based optimization methods are the established state-of-the-art paradigm to study strongly entangled quantum systems in two dimensions with Projected Entangled Pair States. However, the key ingredient, the gradient itself, has proven challenging to calculate accurately and reliably in the case of a corner transfer matrix (CTM)-based approach. Automatic differentiation (AD), which is the best known tool for calculating the gradient, still suffers some crucial shortcomings. Some of these are known, like the problem of excessive memory usage and the divergences which may arise when differentiating a singular value decomposition (SVD). Importantly, we also find that there is a fundamental inaccuracy in the currently used backpropagation of SVD that had not been noted before. In this paper, we describe all these problems and provide them with compact and easy to implement solutions. We analyse the impact of these changes and find that the last problem -- the use of the correct gradient -- is by far the dominant one and thus should be considered a crucial patch to any AD application that makes use of an SVD for truncation.
Original language | English |
---|---|
Article number | 013237 |
Number of pages | 13 |
Journal | Physical Review Research |
Volume | 7 |
Early online date | 20 Nov 2023 |
DOIs | |
Publication status | Published - 4 Mar 2025 |
Austrian Fields of Science 2012
- 103036 Theoretical physics
- 101028 Mathematical modelling
- 103025 Quantum mechanics
Keywords
- quant-ph
- cond-mat.str-el
- physics.comp-ph
Fingerprint
Dive into the research topics of 'Stable and efficient differentiation of tensor network algorithms'. Together they form a unique fingerprint.Projects
- 5 Active
-
quantA: Quantum Science Austria
Aspelmeyer, M., Arndt, M., Brukner, C., Schuch, N., Walther, P. & Nunnenkamp, A.
1/10/23 → 30/09/28
Project: Research funding
-
-
Tensor networks for studies of topological phase transitions
1/12/22 → 31/10/26
Project: Research funding