Quantum algorithm design using dynamic learning
(pp0012-0029)
Elizabeth
C. Behrman, J.E. Steck, Prem Kumar, and K.A. Walsh
doi:
https://doi.org/10.26421/QIC8.1-2-2
Abstracts: We present a dynamic
learning paradigm for “programming” a general quantum computer. A
learning algorithm is used to find the control parameters for a coupled
qubit system, such that the system at an initial time evolves to a state
in which a given measurement corresponds to the desired operation. This
can be thought of as a quantum neural network. We first apply the method
to a system of two coupled superconducting quantum interference devices
(SQUIDs), and demonstrate learning of both the classical gates XOR and
XNOR. Training of the phase produces a gate congruent to the CNOT modulo
a phase shift. Striking out for somewhat more interesting territory, we
attempt learning of an entanglement witness for a two qubit system.
Simulation shows a reasonably successful mapping of the entanglement at
the initial time onto the correlation function at the final time for
both pure and mixed states. For pure states this mapping requires
knowledge of the phase relation between the two parts; however, given
that knowledge, this method can be used to measure the entanglement of
an otherwise unknown state. The method is easily extended to multiple
qubits or to quNits.
Key words:
quantum algorithm, entanglement, dynamic learning |