Abstract
Quantum error correction (QEC) is required in quantum computers to mitigate the effect of errors on physical qubits. When adopting a QEC scheme based on surface codes, error decoding is the most computationally expensive task in the classical electronic back-end. Decoders employing neural networks (NN) are well-suited for this task but their hardware implementation has not been presented yet. This work presents a space exploration of fully connected feed-forward NN decoders for small distance surface codes. The goal is to optimize the NN for the high-decoding performance, while keeping a minimalistic hardware implementation. This is needed to meet the tight delay constraints of real-time surface code decoding. We demonstrate that hardware-based NN-decoders can achieve the high-decoding performance comparable to other state-of-the-art decoding algorithms whilst being well below the tight delay requirements (\approx 440\ ns) of current solid-state qubit technologies for both application-specific integrated circuit designs (< \!30\ ns) and field-programmable gate array implementations
Author supplied keywords
- Application-specific integrated circuit (ASIC)
- CMOS integrated circuits
- NNs
- combinational circuits
- complementary metal-oxide semiconductor (CMOS)
- cryo-CMOS decoding
- cryogenic electronics
- digital integrated circuits
- error correction codes
- feedforward neural networks (NNs)
- field programmable gate array (FPGA)
- fixed-point arithmetic
- machine learning
- pareto analysis
- quantum computing
- quantum-error-correction (QEC) codes
- supervised learning
- surface codes (SCs)
Cite
CITATION STYLE
Overwater, R. W. J., Babaie, M., & Sebastiano, F. (2022). Neural-Network Decoders for Quantum Error Correction Using Surface Codes: A Space Exploration of the Hardware Cost-Performance Tradeoffs. IEEE Transactions on Quantum Engineering, 3. https://doi.org/10.1109/TQE.2022.3174017
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