In recent years, tensor networks have become a viable alternative to Monte Carlo calculations and exact diagonalization for the simulation of many-body systems. As they represent a formulation of quantum mechanical wavefunctions with polynomially many parameters, they make calculations of large systems feasible. They have already found wide application in condensed matter physics and start to be an interesting tool for high energy physics as well. In this lecture series, I will introduce the basic concepts of tensor networks. We will start with an introduction of the necessary basics of quantum mechanics and linear algebra and focus on the algorithmic side of tensor networks in the second lecture
Tensor Network States are ans\'atze for the efficient description of quantum many-body systems. Thei...
En col·laboració amb la Universitat Autònoma de Barcelona (UAB) i la Universitat de Barcelona (UB)Ov...
Differentiable programming is a fresh programming paradigm which composes parameterized algorithmic ...
This volume of lecture notes briefly introduces the basic concepts needed in any computational physi...
The curse of dimensionality associated with the Hilbert space of spin systems provides a significant...
Tensor network is a fundamental mathematical tool with a huge range of applications in physics, such...
Tensor network is a fundamental mathematical tool with a huge range of applications in physics, such...
Presented on February 12, 2018 at 3:00 p.m. in the Pettit Microelectronics Research Center, Room 102...
A tensor network is a type of decomposition used to express and approximate large arrays of data. A ...
We present a compendium of numerical simulation techniques, based on tensor network methods, aiming...
This brief review introduces the reader to tensor network methods, a powerful theoretical and numeri...
2 pags.Tensor networks are mathematical structures that efficiently compress the data required to de...
Presented at the QMath13 Conference: Mathematical Results in Quantum Theory, October 8-11, 2016 at t...
Exact many-body quantum problems are known to be computationally hard due to the exponential scaling...
Tensor network states are ubiquitous in the investigation of quantum many-body (QMB) physics. Their ...
Tensor Network States are ans\'atze for the efficient description of quantum many-body systems. Thei...
En col·laboració amb la Universitat Autònoma de Barcelona (UAB) i la Universitat de Barcelona (UB)Ov...
Differentiable programming is a fresh programming paradigm which composes parameterized algorithmic ...
This volume of lecture notes briefly introduces the basic concepts needed in any computational physi...
The curse of dimensionality associated with the Hilbert space of spin systems provides a significant...
Tensor network is a fundamental mathematical tool with a huge range of applications in physics, such...
Tensor network is a fundamental mathematical tool with a huge range of applications in physics, such...
Presented on February 12, 2018 at 3:00 p.m. in the Pettit Microelectronics Research Center, Room 102...
A tensor network is a type of decomposition used to express and approximate large arrays of data. A ...
We present a compendium of numerical simulation techniques, based on tensor network methods, aiming...
This brief review introduces the reader to tensor network methods, a powerful theoretical and numeri...
2 pags.Tensor networks are mathematical structures that efficiently compress the data required to de...
Presented at the QMath13 Conference: Mathematical Results in Quantum Theory, October 8-11, 2016 at t...
Exact many-body quantum problems are known to be computationally hard due to the exponential scaling...
Tensor network states are ubiquitous in the investigation of quantum many-body (QMB) physics. Their ...
Tensor Network States are ans\'atze for the efficient description of quantum many-body systems. Thei...
En col·laboració amb la Universitat Autònoma de Barcelona (UAB) i la Universitat de Barcelona (UB)Ov...
Differentiable programming is a fresh programming paradigm which composes parameterized algorithmic ...