© 2016 IEEE. Can quantum computers solve optimization problems much more quickly than classical computers? One major piece of evidence for this proposition has been the fact that Quantum Annealing (QA) finds the minimum of some cost functions exponentially more quickly than classical Simulated Annealing (SA). One such cost function is the simple 'Hamming weight with a spike' function in which the input is an n-bit string and the objective function is simply the Hamming weight, plus a tall thin barrier centered around Hamming weight n/4. While the global minimum of this cost function can be found by inspection, it is also a plausible toy model of the sort of local minima that arise in real-world optimization problems. It was shown by Farhi, ...
Quantum annealing, or quantum stochastic optimization, is a classical randomized algorithm which pro...
Quantum annealing, or quantum stochastic optimization, is a classical randomized algorithm which pro...
International audienceWe are interested in Quantum Annealing (QA), an algorithm inspired by quantum ...
© 2016 IEEE. Can quantum computers solve optimization problems much more quickly than classical comp...
Can quantum computers solve optimization problems much more quickly than classical computers? One ma...
Can quantum computers solve optimization problems much more quickly than classical computers? One ma...
The observation of an unequivocal quantum speedup remains an elusive objective for quantum computing...
Quantum annealing (QA) has been proposed as a quantum enhanced optimization heuristic exploiting tun...
2018-07-20This dissertation studies analog quantum optimization, in particular, quantum annealing (Q...
We introduce and review briefly the phenomenon of quantum annealing and analog computation. The role...
The protocol of quantum annealing is applied to an optimization problem with a one-dimensional conti...
In many real-life situations in engineering (and in other disciplines), we need to solve an optimiza...
The path integral Monte Carlo simulated quantum annealing algorithm is applied to the optimization o...
Quantum annealing, or quantum stochastic optimization, is a classical randomized algorithm which pro...
Quantum annealing, or quantum stochastic optimization, is a classical randomized algorithm which pro...
Quantum annealing, or quantum stochastic optimization, is a classical randomized algorithm which pro...
Quantum annealing, or quantum stochastic optimization, is a classical randomized algorithm which pro...
International audienceWe are interested in Quantum Annealing (QA), an algorithm inspired by quantum ...
© 2016 IEEE. Can quantum computers solve optimization problems much more quickly than classical comp...
Can quantum computers solve optimization problems much more quickly than classical computers? One ma...
Can quantum computers solve optimization problems much more quickly than classical computers? One ma...
The observation of an unequivocal quantum speedup remains an elusive objective for quantum computing...
Quantum annealing (QA) has been proposed as a quantum enhanced optimization heuristic exploiting tun...
2018-07-20This dissertation studies analog quantum optimization, in particular, quantum annealing (Q...
We introduce and review briefly the phenomenon of quantum annealing and analog computation. The role...
The protocol of quantum annealing is applied to an optimization problem with a one-dimensional conti...
In many real-life situations in engineering (and in other disciplines), we need to solve an optimiza...
The path integral Monte Carlo simulated quantum annealing algorithm is applied to the optimization o...
Quantum annealing, or quantum stochastic optimization, is a classical randomized algorithm which pro...
Quantum annealing, or quantum stochastic optimization, is a classical randomized algorithm which pro...
Quantum annealing, or quantum stochastic optimization, is a classical randomized algorithm which pro...
Quantum annealing, or quantum stochastic optimization, is a classical randomized algorithm which pro...
International audienceWe are interested in Quantum Annealing (QA), an algorithm inspired by quantum ...