Decoding surface codes with deep reinforcement learning and probabilistic policy reuse

12/22/2022
by   Elisha Siddiqui Matekole, et al.
8

Quantum computing (QC) promises significant advantages on certain hard computational tasks over classical computers. However, current quantum hardware, also known as noisy intermediate-scale quantum computers (NISQ), are still unable to carry out computations faithfully mainly because of the lack of quantum error correction (QEC) capability. A significant amount of theoretical studies have provided various types of QEC codes; one of the notable topological codes is the surface code, and its features, such as the requirement of only nearest-neighboring two-qubit control gates and a large error threshold, make it a leading candidate for scalable quantum computation. Recent developments of machine learning (ML)-based techniques especially the reinforcement learning (RL) methods have been applied to the decoding problem and have already made certain progress. Nevertheless, the device noise pattern may change over time, making trained decoder models ineffective. In this paper, we propose a continual reinforcement learning method to address these decoding challenges. Specifically, we implement double deep Q-learning with probabilistic policy reuse (DDQN-PPR) model to learn surface code decoding strategies for quantum environments with varying noise patterns. Through numerical simulations, we show that the proposed DDQN-PPR model can significantly reduce the computational complexity. Moreover, increasing the number of trained policies can further improve the agent's performance. Our results open a way to build more capable RL agents which can leverage previously gained knowledge to tackle QEC challenges.

READ FULL TEXT

page 6

page 15

page 16

page 18

research
12/10/2021

Quantum Architecture Search via Continual Reinforcement Learning

Quantum computing has promised significant improvement in solving diffic...
research
10/26/2022

Quantum deep recurrent reinforcement learning

Recent advances in quantum computing (QC) and machine learning (ML) have...
research
10/16/2018

Reinforcement Learning Decoders for Fault-Tolerant Quantum Computation

Topological error correcting codes, and particularly the surface code, c...
research
09/19/2023

Hardness results for decoding the surface code with Pauli noise

Real quantum computers will be subject to complicated, qubit-dependent n...
research
01/12/2023

Asynchronous training of quantum reinforcement learning

The development of quantum machine learning (QML) has received a lot of ...
research
04/14/2022

Efficient and practical quantum compiler towards multi-qubit systems with deep reinforcement learning

Efficient quantum compiling tactics greatly enhance the capability of qu...
research
06/27/2023

Machine-learning based noise characterization and correction on neutral atoms NISQ devices

Neutral atoms devices represent a promising technology that uses optical...

Please sign up or login with your details

Forgot password? Click here to reset