Quantum TDA hardness–tractability conjecture
Establish that topological data analysis features computed from point clouds (such as persistent homology or related invariants) are classically hard to compute while being tractable for quantum computers, thereby resolving the conjecture cited by Berry et al. and supporting quantum-advantage claims for such feature extraction.
References
However, even in this case, and even if there was a rigorous proof that these features are hard to compute classically but are tractable for quantum computers (at present this is still a conjecture), this would not suffice for the type of separation claim we desire.
— Machine learning with minimal use of quantum computers: Provable advantages in Learning Under Quantum Privileged Information (LUQPI)
(2601.22006 - Bokov et al., 29 Jan 2026) in Section 3, Taxonomy of scenarios – Other (Topological Data Analysis)