Differentiable programming is a fresh programming paradigm which composes parameterized algorithmic components and optimizes them using gradient search. The concept emerges from deep learning but is not limited to training neural networks. We present the theory and practice of programming tensor network algorithms in a fully differentiable way. By formulating the tensor network algorithm as a computation graph, one can compute higher-order derivatives of the program accurately and efficiently using automatic differentiation. We present essential techniques to differentiate through the tensor networks contraction algorithms, including numerical stable differentiation for tensor decompositions and efficient backpropagation through fixed-point...
In recent years, tensor networks have become a viable alternative to Monte Carlo calculations and ex...
Tensor networks are powerful factorization techniques which reduce resource requirements for numeric...
This volume of lecture notes briefly introduces the basic concepts needed in any computational physi...
Tensor network is a fundamental mathematical tool with a huge range of applications in physics, such...
We discuss the variational optimization of a unitary tensor-network circuit with different network s...
Tensor network is a fundamental mathematical tool with a huge range of applications in physics, such...
A tensor network is a type of decomposition used to express and approximate large arrays of data. A ...
Several tensor networks are built of isometric tensors, i.e. tensors satisfying W?W = 1. Prominent e...
2 pags.Tensor networks are mathematical structures that efficiently compress the data required to de...
International audienceMany numerical algorithms are naturally expressed as operations on tensors (i....
Understanding and classifying phases of matter is a vast and important area of research in modern ph...
Tensors are higher-dimensional analogs of matrices, and represent a key data abstraction for many ap...
We present several results relating to the contraction of generic tensor networks and discuss their ...
Exact many-body quantum problems are known to be computationally hard due to the exponential scaling...
In this thesis, we develop an algebraic and graph theoretical reinterpretation of tensor networks an...
In recent years, tensor networks have become a viable alternative to Monte Carlo calculations and ex...
Tensor networks are powerful factorization techniques which reduce resource requirements for numeric...
This volume of lecture notes briefly introduces the basic concepts needed in any computational physi...
Tensor network is a fundamental mathematical tool with a huge range of applications in physics, such...
We discuss the variational optimization of a unitary tensor-network circuit with different network s...
Tensor network is a fundamental mathematical tool with a huge range of applications in physics, such...
A tensor network is a type of decomposition used to express and approximate large arrays of data. A ...
Several tensor networks are built of isometric tensors, i.e. tensors satisfying W?W = 1. Prominent e...
2 pags.Tensor networks are mathematical structures that efficiently compress the data required to de...
International audienceMany numerical algorithms are naturally expressed as operations on tensors (i....
Understanding and classifying phases of matter is a vast and important area of research in modern ph...
Tensors are higher-dimensional analogs of matrices, and represent a key data abstraction for many ap...
We present several results relating to the contraction of generic tensor networks and discuss their ...
Exact many-body quantum problems are known to be computationally hard due to the exponential scaling...
In this thesis, we develop an algebraic and graph theoretical reinterpretation of tensor networks an...
In recent years, tensor networks have become a viable alternative to Monte Carlo calculations and ex...
Tensor networks are powerful factorization techniques which reduce resource requirements for numeric...
This volume of lecture notes briefly introduces the basic concepts needed in any computational physi...