Exploring ab initio machine synthesis of quantum circuits
- URL: http://arxiv.org/abs/2206.11245v1
- Date: Wed, 22 Jun 2022 17:48:29 GMT
- Title: Exploring ab initio machine synthesis of quantum circuits
- Authors: Richard Meister, Cica Gustiani, Simon C. Benjamin
- Abstract summary: Gate-level quantum circuits are often derived manually from higher level algorithms.
Here we explore methods for the ab initio creation of circuits within a machine.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Gate-level quantum circuits are often derived manually from higher level
algorithms. While this suffices for small implementations and demonstrations,
ultimately automatic circuit design will be required to realise complex
algorithms using hardware-specific operations and connectivity. Here we explore
methods for the ab initio creation of circuits within a machine, either a
classical computer or a hybrid quantum-classical device. We consider a range of
techniques including: methods for introducing new gate structures, optimisation
of parameterised circuits and choices of cost functions, and efficient removal
of low-value gates exploiting the quantum geometric tensor and other
heuristics. Using these principles we tackle the tasks of automatic encoding of
unitary processes and translation (recompilation) of a circuit from one form to
another. Using emulated quantum computers with various noise-free gate sets we
provide simple examples involving up to 10 qubits, corresponding to 20 qubits
in the augmented space we use. Further applications of specific relevance to
chemistry modelling are considered in a sister paper, 'Exploiting subspace
constraints and ab initio variational methods for quantum chemistry'.
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