On the mathematical structure of quantum models of computation based on Hamiltonian minimisation
Jacob Biamonte

TL;DR
This thesis explores the mathematical foundations of quantum models based on Hamiltonian minimization, demonstrating their universality for quantum computation and connecting ground state properties with computational complexity.
Contribution
It develops mathematical tools to embed logic gates into low-energy states of Ising models and shows how Hamiltonian gadgets can emulate complex interactions, establishing universality for quantum computation.
Findings
Logic gates embedded in Ising ground states
Hamiltonian gadgets emulate complex interactions
Two-body Hamiltonians are QMA-hard for ground state energy
Abstract
Determining properties of ground states of spin Hamiltonians remains a topic of central relevance connecting disciplines of mathematical, theoretical and applied physics. In the last few decades, ground state properties of physical systems have been increasingly considered as computational resources. This thesis develops parts of the mathematical apparatus to create (program) ground states relevant for quantum and classical computation. The core findings presented in this thesis (now over a decade old) including that (i) logic operations (gates) can be embedded into the low-energy sector of Ising spins whereas three (and higher) body Ising interaction terms can be mimicked through the minimisation of 2- and 1-body Ising terms yet require the introduction of slack spins; (ii) Perturbation theory gadgets enable the emulation of interactions not present in a given Hamiltonian, e.g.~…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Computability, Logic, AI Algorithms · Computational Physics and Python Applications
