Mildly-Interacting Fermionic Unitaries are Efficiently Learnable

Recent work has shown that one can efficiently learn fermionic Gaussian unitaries, also commonly known as nearest-neighbor matchcircuits or non-interacting fermionic unitaries. However, one could ask a similar question about unitaries that are near Gaussian: for example, unitaries prepared with a small number of non-Gaussian circuit elements. These operators find significance in quantum chemistry and many-body physics, yet no algorithm exists to learn them.We give the first such result by devising an algorithm which makes queries to a -mode fermionic unitary prepared by at most non-Gaussian gates and returns a circuit approximating to diamond distance in time . This resolves a central open question of Mele and Herasymenko under the strongest distance metric. In fact, our algorithm is much more general: we define a property of unitary Gaussianity known as unitary Gaussian dimension and show that our algorithm can learn -mode unitaries of Gaussian dimension at least in time . Indeed, this class subsumes unitaries prepared by at most non-Gaussian gates but also includes several unitaries that require up to non-Gaussian gates to construct.In addition, we give a -time algorithm to distinguish whether an -mode unitary is of Gaussian dimension at least or -far from all such unitaries in Frobenius distance, promised that one is the case. Along the way, we prove structural results about near-Gaussian fermionic unitaries that are likely to be of independent interest.
View on arXiv@article{iyer2025_2504.11318, title={ Mildly-Interacting Fermionic Unitaries are Efficiently Learnable }, author={ Vishnu Iyer }, journal={arXiv preprint arXiv:2504.11318}, year={ 2025 } }