Speeding-up the decision making of a learning agent using an ion trap quantum processor
Abstract
We report a proof-of-principle experimental demonstration of the quantum speed-up for learning agents utilizing a small-scale quantum information processor based on radiofrequency-driven trapped ions. The decision-making process of a quantum learning agent within the projective simulation paradigm for machine learning is implemented in a system of two qubits. The latter are realized using hyperfine states of two frequency-addressed atomic ions exposed to a static magnetic field gradient. We show that the deliberation time of this quantum learning agent is quadratically improved with respect to comparable classical learning agents. The performance of this quantum-enhanced learning agent highlights the potential of scalable quantum processors taking advantage of machine learning.
- Publication:
-
Quantum Science and Technology
- Pub Date:
- January 2019
- DOI:
- Bibcode:
- 2019QS&T....4a5014S
- Keywords:
-
- machine learning;
- reinforcement learning;
- quantum computing;
- trapped ions;
- quadratic speed-up algorithm