Miller et al., 2021 - Google Patents
A quantum Hopfield associative memory implemented on an actual quantum processorMiller et al., 2021
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- 14811961735459048219
- Author
- Miller N
- Mukhopadhyay S
- Publication year
- Publication venue
- Scientific Reports
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Snippet
In this work, we present a Quantum Hopfield Associative Memory (QHAM) and demonstrate its capabilities in simulation and hardware using IBM Quantum Experience.. The QHAM is based on a quantum neuron design which can be utilized for many different machine …
- 230000015654 memory 0 title abstract description 50
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