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一种用于云工作负载预测的全面自适应架构优化嵌入量子神经网络模型。

A Comprehensively Adaptive Architectural Optimization-Ingrained Quantum Neural Network Model for Cloud Workloads Prediction.

作者信息

Kumar Jitendra, Saxena Deepika, Gupta Kishu, Kumar Satyam, Singh Ashutosh Kumar

出版信息

IEEE Trans Neural Netw Learn Syst. 2025 Oct;36(10):19039-19053. doi: 10.1109/TNNLS.2025.3577721.

Abstract

Accurate workload prediction and advanced resource reservation are indispensably crucial for managing dynamic cloud services. Traditional neural networks and deep learning models frequently encounter challenges with diverse, high-dimensional workloads, especially during sudden resource demand changes, leading to inefficiencies. This issue arises from their limited optimization during training, relying only on parametric (interconnection weights) adjustments using conventional algorithms. To address this issue, this work proposes a novel comprehensively adaptive architectural optimization-based variable quantum neural network (CA-QNN), which combines the efficiency of quantum computing with complete structural and qubit vector parametric learning. The model converts workload data into qubits, processed through qubit neurons with controlled not-gated activation functions for intuitive pattern recognition. In addition, a comprehensive architecture optimization algorithm for networks is introduced to facilitate the learning and propagation of the structure and parametric values in variable-sized quantum neural networks (VQNNs). This algorithm incorporates quantum adaptive modulation (QAM) and size-adaptive recombination during the training process. The performance of the CA-QNN model is thoroughly investigated against seven state-of-the-art methods across four benchmark datasets of heterogeneous cloud workloads. The proposed model demonstrates superior prediction accuracy, reducing prediction errors by up to 93.40% and 91.27% compared to existing deep learning and QNN-based approaches.

摘要

准确的工作负载预测和先进的资源预留对于管理动态云服务至关重要。传统神经网络和深度学习模型在处理多样的高维工作负载时经常遇到挑战,尤其是在资源需求突然变化期间,导致效率低下。这个问题源于它们在训练过程中有限的优化,仅依靠使用传统算法调整参数(互连权重)。为了解决这个问题,本文提出了一种基于全面自适应架构优化的新型变量子神经网络(CA-QNN),它将量子计算的效率与完整的结构和量子比特向量参数学习相结合。该模型将工作负载数据转换为量子比特,通过具有受控非门激活函数的量子比特神经元进行处理,以实现直观的模式识别。此外,还引入了一种用于网络的全面架构优化算法,以促进可变大小量子神经网络(VQNN)中结构和参数值的学习与传播。该算法在训练过程中结合了量子自适应调制(QAM)和大小自适应重组。在四个异构云工作负载基准数据集上,针对七种先进方法对CA-QNN模型的性能进行了全面研究。与现有的深度学习和基于QNN的方法相比,所提出的模型展示了卓越的预测准确性,预测误差降低了高达93.40%和91.27%。

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