Conformalized Quantum DeepONet Ensembles for Scalable Operator Learning with Distribution-Free Uncertainty

arXiv cs.LG / 5/4/2026

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Key Points

  • The paper introduces “Conformalized Quantum DeepONet Ensembles,” a framework for operator learning that improves scalability and uncertainty reliability in safety-critical surrogate modeling.
  • It uses Quantum Orthogonal Neural Networks (QOrthoNNs) to reduce operator inference complexity from O(n^2) to O(n), enabling scalable evaluation on fine discretizations.
  • For rigorous uncertainty quantification, it combines ensemble-based epistemic modeling with adaptive conformal prediction to provide distribution-free coverage guarantees.
  • To address the hardware cost of naive parallel ensembling, it employs Superposed Parameterized Quantum Circuits (SPQCs) that compress many ensemble members into a single circuit for simultaneous multi-model execution.
  • Experiments on synthetic PDEs and real-world power system dynamics show accurate predictions and calibrated, uncertainty-aware performance even under realistic quantum noise.

Abstract

Operator learning enables fast surrogate modeling of high-dimensional dynamical systems, but existing approaches face two fundamental limitations: quadratic inference complexity and unreliable uncertainty quantification in safety-critical settings. We propose Conformalized Quantum DeepONet Ensembles, a framework that addresses both challenges simultaneously. By leveraging Quantum Orthogonal Neural Networks (QOrthoNNs), we reduce operator inference complexity from O(n^2) to O(n), enabling scalable evaluation over fine discretizations. To provide rigorous uncertainty quantification, we combine ensemble-based epistemic modeling with adaptive conformal prediction, yielding distribution-free coverage guarantees. A key challenge in ensembling is that naive parallelism scales hardware resources linearly with the number of models. We resolve this by using Superposed Parameterized Quantum Circuits (SPQCs), which compress multiple ensemble members into a single circuit and enable simultaneous multi-model execution. Experiments on synthetic partial differential equations and real-world power system dynamics demonstrate that our approach achieves accurate predictions while maintaining calibrated uncertainty under realistic quantum noise. These results establish a practical pathway toward scalable, uncertainty-aware operator learning in quantum machine learning.