On the status of current quantum machine learning software
By: Manish K. Gupta, Tomasz Rybotycki, Piotr Gawron
Potential Business Impact:
Quantum computers help sort satellite pictures faster.
The recent advancements in noisy intermediate-scale quantum (NISQ) devices implementation allow us to study their application to real-life computational problems. However, hardware challenges are not the only ones that hinder our quantum computation capabilities. Software limitations are the other, less explored side of this medal. Using satellite image segmentation as a task example, we investigated how difficult it is to run a hybrid quantum-classical model on a real, publicly available quantum device. We also analyzed the costs of such endeavor and the change in quality of model.
Similar Papers
Q-Fusion: Diffusing Quantum Circuits
Machine Learning (CS)
Creates new computer programs for faster problem-solving.
Exploring the application of quantum technologies to industrial and real-world use cases
Quantum Physics
Quantum computers solve hard problems faster.
Quantum Resource Management in the NISQ Era: Implications and Perspectives from Software Engineering
Quantum Physics
Helps build better quantum computers.