DS1 spectrogram: SymQNet: Amortized Acquisition for Low-Latency Adaptive Hamiltonian Learning

SymQNet: Amortized Acquisition for Low-Latency Adaptive Hamiltonian Learning

2606.12808

Authors

Yash Vardhan Tomar,Dheeraj Peddireddy,Vaneet Aggarwal

Abstract

Adaptive Hamiltonian learning is central to calibrating and characterizing quantum devices. In an adaptive controller, choosing the next experiment is itself a computation.

Bayesian design rules are recomputed after every posterior update, and that step can take seconds. Across hundreds of shots, those seconds become a significant wall-clock cost for adaptivity.

We introduce SymQNet, an amortized reinforcement-learning approach for low-latency adaptive Hamiltonian learning. SymQNet learns a posterior-conditioned acquisition policy offline, then uses a fast policy forward pass online while retaining Bayesian posterior feedback.

On transverse-field Ising benchmarks, SymQNet substantially reduces acquisition latency relative to bounded Fisher-information search and bounded two-step Bayesian active learning by disagreement (BALD). At five qubits, it reduces acquisition-only decision latency by $47.1\times$ and $72.6\times$ relative to these online baselines; at twelve qubits, full simulated steps take $1.02$ s for SymQNet versus $13.27$ s for bounded two-step BALD.

Overall, we show that learned acquisition can make adaptive Hamiltonian learning practical for repeated low-latency workloads.

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