QUANT-PHAIDec 12, 2024

Quantum-Train-Based Distributed Multi-Agent Reinforcement Learning

arXiv:2412.08845v120 citationsh-index: 132025 IEEE Symposium for Multidisciplinary Computational Intelligence Incubators (MCII Companion)
Originality Incremental advance
AI Analysis

This work addresses scalability issues for researchers and practitioners in distributed computing and reinforcement learning, offering a hybrid quantum-classical approach that is incremental in combining existing quantum and classical methods.

The paper tackles scalability challenges in reinforcement learning by introducing Dist-QTRL, a distributed multi-agent framework that integrates quantum computing principles, achieving a poly(log(N)) reduction in trainable parameters and demonstrating performance improvements over centric QTRL models with significant speedups through parallelization.

In this paper, we introduce Quantum-Train-Based Distributed Multi-Agent Reinforcement Learning (Dist-QTRL), a novel approach to addressing the scalability challenges of traditional Reinforcement Learning (RL) by integrating quantum computing principles. Quantum-Train Reinforcement Learning (QTRL) leverages parameterized quantum circuits to efficiently generate neural network parameters, achieving a \(poly(\log(N))\) reduction in the dimensionality of trainable parameters while harnessing quantum entanglement for superior data representation. The framework is designed for distributed multi-agent environments, where multiple agents, modeled as Quantum Processing Units (QPUs), operate in parallel, enabling faster convergence and enhanced scalability. Additionally, the Dist-QTRL framework can be extended to high-performance computing (HPC) environments by utilizing distributed quantum training for parameter reduction in classical neural networks, followed by inference using classical CPUs or GPUs. This hybrid quantum-HPC approach allows for further optimization in real-world applications. In this paper, we provide a mathematical formulation of the Dist-QTRL framework and explore its convergence properties, supported by empirical results demonstrating performance improvements over centric QTRL models. The results highlight the potential of quantum-enhanced RL in tackling complex, high-dimensional tasks, particularly in distributed computing settings, where our framework achieves significant speedups through parallelization without compromising model accuracy. This work paves the way for scalable, quantum-enhanced RL systems in practical applications, leveraging both quantum and classical computational resources.

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