Connecting phases of matter to the flatness of the loss landscape in analog variational quantum algorithms

Variational quantum algorithms (VQAs) promise near-term quantum advantage, yet parametrized quantum states commonly built from the digital gate-based approach often suffer from scalability issues such as barren plateaus, where the loss landscape becomes flat. We study an analog VQA ansätze composed of quenches of a disordered Ising chain, whose dynamics is native to several quantum simulation platforms. By tuning the disorder strength we place each quench in either a thermalized phase or a many-body-localized (MBL) phase and analyse (i) the ansätze's expressivity and (ii) the scaling of loss variance. Numerics shows that both phases reach maximal expressivity at large , but barren plateaus emerge at far smaller in the thermalized phase than in the MBL phase. Exploiting this gap, we propose an MBL initialisation strategy: initialise the ansätze in the MBL regime at intermediate quench , enabling an initial trainability while retaining sufficient expressivity for subsequent optimization. The results link quantum phases of matter and VQA trainability, and provide practical guidelines for scaling analog-hardware VQAs.
View on arXiv@article{srimahajariyapong2025_2506.13865, title={ Connecting phases of matter to the flatness of the loss landscape in analog variational quantum algorithms }, author={ Kasidit Srimahajariyapong and Supanut Thanasilp and Thiparat Chotibut }, journal={arXiv preprint arXiv:2506.13865}, year={ 2025 } }