Quantum Annealing and Tensor Networks: a Powerful Combination to Solve Optimization Problems
Miquel Albert\'i Binimelis

TL;DR
This paper explores the synergy between quantum annealing and tensor networks, specifically DMRG and MPO representations, to enhance optimization problem solving, demonstrated through the quadratic knapsack problem.
Contribution
It introduces a novel approach using finite automata to construct MPO representations for quantum systems and investigates their integration with quantum annealing for optimization.
Findings
Tensor networks effectively represent complex quantum systems.
Quantum annealing shows promise in solving optimization problems.
Finite automata can construct MPOs for challenging systems.
Abstract
Quantum computing has long promised to revolutionize the way we solve complex problems. At the same time, tensor networks are widely used across various fields due to their computational efficiency and capacity to represent intricate systems. While both technologies can address similar problems, the primary aim of this thesis is not to compare them. Such comparison would be unfair, as quantum devices are still in an early stage, whereas tensor network algorithms represent the state-of-the-art in quantum simulation. Instead, we explore a potential synergy between these technologies, focusing on how two flagship algorithms from each paradigm, the Density Matrix Renormalization Group (DMRG) and quantum annealing, might collaborate in the future. Furthermore, a significant challenge in the DMRG algorithm is identifying an appropriate tensor network representation for the quantum system…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture
