Parallel Scan Recurrent Neural Quantum States for Scalable Variational Monte Carlo

arXiv:2605.1380745.21 citations
Predicted impact top 55% in STR-EL · last 90 daysOriginality Incremental advance
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This work makes recurrent neural network quantum states practical for large-scale quantum many-body simulations, addressing a scalability bottleneck.

The authors developed parallel scan recurrent neural quantum states (PSR-NQS) that enable scalable variational Monte Carlo simulations, achieving accurate results on 2D spin lattices up to 52×52 with modest computational resources.

Neural-network quantum states have emerged as a powerful variational framework for quantum many-body systems, with recent progress often driven by massively parallel architectures such as transformers. Recurrent neural network quantum states, however, are frequently regarded as intrinsically sequential and therefore less scalable. Here we revisit this view by showing that modern recurrent architectures can support fast, accurate, and computationally accessible neural quantum state simulations. Using autoregressive recurrent wave functions together with recent advances in parallelizable recurrence, we develop variational ansätze, called parallel scan recurrent neural quantum states (PSR-NQS), which can be trained efficiently within variational Monte Carlo in one and two spatial dimensions. We demonstrate accurate benchmark results and show that, with iterative retraining, our approach reaches two-dimensional spin lattices as large as $52\times52$ while remaining in agreement with available quantum Monte Carlo data. Our results establish recurrent architectures as a practical and promising route toward scalable neural quantum state simulations with modest computational resources.

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