tensorstructured
Tensorstructured refers to a class of computational methods and mathematical objects that exploit the underlying low-rank tensor structure often present in large-scale data and scientific computations. Tensors, which are multi-dimensional arrays, can become prohibitively large in their full representation. Tensorstructured methods aim to represent these tensors in a compressed or factorized form, leveraging their inherent structure to reduce computational complexity and memory requirements.
Key to tensorstructured methods are tensor decomposition techniques, such as Tucker decomposition and tensor train (TT)
The applications of tensorstructured methods are widespread, including areas like quantum mechanics, computational fluid dynamics, machine