Posted

Filippo Girardi, Francesco Anna Mele, Haimeng Zhao, Marco Fanizza, Ludovico Lami (Dec 24 2025).
Abstract: The recently introduced random purification channel, which converts nn copies of an arbitrary mixed quantum state into nn copies of the same uniformly random purification, has emerged as a powerful tool in quantum information theory. Motivated by this development, we introduce a channel-level analogue, which we call the random Stinespring superchannel. This consists in a procedure to transform nn parallel queries of an arbitrary quantum channel into nn parallel queries of the same uniformly random Stinespring isometry, via universal encoding and decoding operations that are efficiently implementable. When the channel is promised to have Choi rank at most rr, the procedure can be tailored to yield a Stinespring environment of dimension rr. As a consequence, quantum channel learning reduces to isometry learning, yielding a simple channel learning algorithm, based on existing isometry learning protocols, that matches the performance of the two recently proposed channel tomography algorithms. Complementarily, whereas the optimality of these algorithms had previously been established only up to a logarithmic factor in the dimension, we close this gap by removing this logarithmic factor from the lower bound. Taken together, our results fully establish the optimality of these recently introduced channel learning algorithms, showing that the optimal query complexity of learning a quantum channel with input dimension dAd_A, output dimension dBd_B, and Choi rank rr is Θ(dAdBr)\Theta(d_A d_B r).

Order by:

Want to join this discussion?

Join our community today and start discussing with our members by participating in exciting events, competitions, and challenges. Sign up now to engage with quantum experts!