Differentiable Analog Quantum Computing for Optimization and Control

10/28/2022
by   Jiaqi Leng, et al.
0

We formulate the first differentiable analog quantum computing framework with a specific parameterization design at the analog signal (pulse) level to better exploit near-term quantum devices via variational methods. We further propose a scalable approach to estimate the gradients of quantum dynamics using a forward pass with Monte Carlo sampling, which leads to a quantum stochastic gradient descent algorithm for scalable gradient-based training in our framework. Applying our framework to quantum optimization and control, we observe a significant advantage of differentiable analog quantum computing against SOTAs based on parameterized digital quantum circuits by orders of magnitude.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/04/2019

Quantum Natural Gradient

A quantum generalization of Natural Gradient Descent is presented as par...
research
01/04/2021

Control of Stochastic Quantum Dynamics with Differentiable Programming

Controlling stochastic dynamics of a quantum system is an indispensable ...
research
03/05/2023

SimuQ: A Domain-Specific Language For Quantum Simulation With Analog Compilation

Quantum Hamiltonian simulation, which simulates the evolution of quantum...
research
11/08/2022

Differentiable Quantum Programming with Unbounded Loops

The emergence of variational quantum applications has led to the develop...
research
10/02/2019

Stochastic gradient descent for hybrid quantum-classical optimization

Within the context of hybrid quantum-classical optimization, gradient de...
research
03/02/2023

Quantum Hamiltonian Descent

Gradient descent is a fundamental algorithm in both theory and practice ...
research
01/25/2021

QFold: Quantum Walks and Deep Learning to Solve Protein Folding

We develop quantum computational tools to predict how proteins fold in 3...

Please sign up or login with your details

Forgot password? Click here to reset