With the fast development of quantum computing and deep learning, quantum neural networks have attracted great attention recently. By leveraging the power of quantum computing, deep neural networks can potentially overcome computational power limitations in classic machine learning. However, when multiple quantum machines wish to train a global model using the local data on each machine, it may be very difficult to copy the data into one machine and train the model. Therefore, a collaborative quantum neural network framework is necessary. In this article, we borrow the core idea of federated learning to propose QuantumFed, a quantum federated learning framework to have multiple quantum nodes with local quantum data train a mode together. Our experiments show the feasibility and robustness of our framework.
翻译:随着量子计算和深层学习的快速发展,量子神经网络最近引起了极大的关注。通过利用量子计算的力量,深神经网络有可能克服经典机器学习中的计算力限制。然而,当多个量子机器希望利用每台机器的当地数据来训练一个全球模型时,将数据复制成一台机器并培训模型可能非常困难。因此,合作量子神经网络框架是必要的。在本篇文章中,我们借用了联合学习的核心理念,以提出量子Fed,一个量子联合学习框架,将多个量子节点与本地量子数据培训一个模式结合起来。我们的实验显示了我们框架的可行性和稳健性。