Mohamed Salb , Luka Jovanovic , Ali Elsadai , Nebojsa Bacanin , Vladimir Simic , Dragan Pamucar , Miodrag Zivkovic
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引用次数: 0
摘要
对云基础设施的依赖和需求日益增加,这也带来了与云实例定价相关的挑战。需求的不可预测性以及提供可靠实例的成本变化,往往会让企业在维持运营成本的同时,难以适当地编制预算以支持健康的现金流。这项研究探索了多头循环架构的潜力,以根据历史数据和实例数据预测云实例价格。本文探讨了两种架构:长短期记忆(LSTM)和门控递归单元(GRU)网络。在公开的亚马逊弹性计算云数据集上引入并测试了修改后的优化器。经过改进的 GRU 模型的 MAE 值为 0.000801,取得了最令人瞩目的成果。结果经过了细致的统计验证,并使用可解释人工智能技术对表现最佳的模型进行了进一步分析,以进一步深入了解模型推理和特征重要性信息。
The increasing dependence and demands on cloud infrastructure have brought to light challenges associated with cloud instance pricing. The often unpredictable nature of demand as well as changing costs of supplying a reliable instance can leave companies struggling to appropriately budget to support a healthy cash flow while maintaining operating costs. This work explores the potential of multi-headed recurrent architectures to forecast cloud instance prices based on historical and instance data. Two architectures are explored, long short-term memory (LSTM) and gated recurrent unit (GRU) networks. A modified optimizer is introduced and tested on a publicly available Amazon elastic compute cloud dataset. The GRU model, enhanced by the proposed modified approach, had the most impressive outcomes with an MAE score of 0.000801. Results have undergone meticulous statistical validation with the best-performing models further analyzed using explainable artificial intelligence techniques to provide further insight into model reasoning and information on feature importance.
期刊介绍:
Journal of King Saud University – Science is an official refereed publication of King Saud University and the publishing services is provided by Elsevier. It publishes peer-reviewed research articles in the fields of physics, astronomy, mathematics, statistics, chemistry, biochemistry, earth sciences, life and environmental sciences on the basis of scientific originality and interdisciplinary interest. It is devoted primarily to research papers but short communications, reviews and book reviews are also included. The editorial board and associated editors, composed of prominent scientists from around the world, are representative of the disciplines covered by the journal.