Scalable Preparation of Matrix Product States with Sequential and Brick Wall Quantum Circuits
- URL: http://arxiv.org/abs/2602.12042v1
- Date: Thu, 12 Feb 2026 15:07:11 GMT
- Title: Scalable Preparation of Matrix Product States with Sequential and Brick Wall Quantum Circuits
- Authors: Tomasz Szołdra, Rick Mukherjee, Peter Schmelcher,
- Abstract summary: Matrix Product States (MPS) admit more efficient constructions when accuracy is traded for circuit complexity.<n>This work introduces an end-to-end MPS preparation framework that combines the strengths of both strategies within a single pipeline.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Preparing arbitrary quantum states requires exponential resources. Matrix Product States (MPS) admit more efficient constructions, particularly when accuracy is traded for circuit complexity. Existing approaches to MPS preparation mostly rely on heuristic circuits that are deterministic but quickly saturate in accuracy, or on variational optimization methods that reach high fidelities but scale poorly. This work introduces an end-to-end MPS preparation framework that combines the strengths of both strategies within a single pipeline. Heuristic staircase-like and brick wall disentangler circuits provide warm-start initializations for variational optimization, enabling high-fidelity state preparation for large systems. Target MPSs are either specified as physical quantum states or constructed from classical datasets via amplitude encoding, using step-by-step singular value decompositions or tensor cross interpolation. The framework incorporates entanglement-based qubit reordering, reformulated as a quadratic assignment problem, and low-level optimizations that reduce depths by up to 50% and CNOT counts by 33%. We evaluate the full pipeline on datasets of varying complexity across systems of 19-50 qubits and identify trade-offs between fidelity, gate count, and circuit depth. Optimized brick wall circuits typically achieve the lowest depths, while the optimized staircase-like circuits minimize gate counts. Overall, our results provide principled and scalable protocols for preparing MPSs as quantum circuits, supporting utility-scale applications on near-term quantum devices.
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