Predicting Amazon Spot Prices with LSTM Networks

Matt Baughman, C. Haas, R. Wolski, Ian T Foster, K. Chard
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引用次数: 39

Abstract

Amazon spot instances provide preemptable computing capacity at a cost that is often significantly lower than comparable on-demand or reserved instances. Spot instances are charged at the current spot price: a fluctuating market price based on supply and demand for spot instance capacity. However, spot instances are inherently volatile, the spot price changes over time, and instances can be revoked by Amazon with as little as two minutes' warning. Given the potential discount---up to 90% in some cases---there has been significant interest in the scientific cloud computing community to leverage spot instances for workloads that are either fault-tolerant or not time-sensitive. However, cost-effective use of spot instances requires accurate prediction of spot prices in the future. We explore here the use of long/short-term memory (LSTM) recurrent neural networks for spot price prediction. We describe our model and compare it against a baseline ARIMA model using historical spot pricing data. Our results show that our LSTM approach can reduce training error by as much as 95%.
利用LSTM网络预测亚马逊现货价格
Amazon现货实例提供可抢占的计算能力,其成本通常比可比较的按需或预留实例低得多。现货实例按当前现货价格收费:基于现货实例容量的供需波动的市场价格。然而,现货实例本质上是不稳定的,现货价格随着时间的推移而变化,并且实例可以在两分钟的警告下被亚马逊撤销。考虑到潜在的折扣(在某些情况下高达90%),科学云计算社区对利用现场实例来处理容错或时间不敏感的工作负载非常感兴趣。然而,要想有效利用现货价格,就需要对未来的现货价格做出准确的预测。我们在这里探索使用长/短期记忆(LSTM)递归神经网络进行现货价格预测。我们描述了我们的模型,并使用历史现货定价数据将其与基线ARIMA模型进行比较。结果表明,LSTM方法可以减少高达95%的训练误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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