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Real-time calibration of coherent-state receivers: Learning by trial and error

This is the code that led to the results presented in "Real-time calibration of coherent-state receivers: learning by trial and error". Marek's objective is to learn the optimal discrimination strategy over an unknown quantum-classical channel; we frame this as a reinforcement learning problem.

The setup:

The goal is to calibrate the following receiver: alt text departing from complete ignorance of any experimental details. As explained in the paper, the model-free learning of such a receiver allows optimal success rate over noisy channels, in which dark counts, phase flips or energy shifts may occur.

For instance, this kind of learning curves are obtained:

alt text

Check out our paper!