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Cryogenic Electronics Quantum Control Stack
Position: The Need for Ultrafast Training
arXiv
Authors: Duc Hoang
Year
2026
Paper ID
2980
Status
Preprint
Abstract Read
~2 min
Abstract Words
154
Citations
N/A
Abstract
Domain-specialized FPGAs have delivered unprecedented performance for low-latency inference across scientific and industrial workloads, yet nearly all existing accelerators assume static models trained offline, relegating learning and adaptation to slower CPUs or GPUs. This separation fundamentally limits systems that must operate in non-stationary, high-frequency environments, where model updates must occur at the timescale of the underlying physics. In this paper, I argue for a shift from inference-only accelerators to ultrafast on-chip learning, in which both inference and training execute directly within the FPGA fabric under deterministic, sub-microsecond latency constraints. Bringing learning into the same real-time datapath as inference would enable closed-loop systems that adapt as fast as the physical processes they control, with applications spanning quantum error correction, cryogenic qubit calibration, plasma and fusion control, accelerator tuning, and autonomous scientific experiments. Enabling such regimes requires rethinking algorithms, architectures, and toolflows jointly, but promises to transform FPGAs from static inference engines into real-time learning machines.
Why This Paper Matters
- This paper contributes to the Cryogenic Electronics & Quantum Control Stack research area in the Quantum Articles archive.
- It adds a 2026 reference point for readers tracking recent quantum research.
- Domain-specialized FPGAs have delivered unprecedented performance for low-latency inference across scientific and industrial workloads, yet nearly all existing accelerators...
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