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Amazon EC2 Spot Price Prediction Using Regression Random Forests - 2018

Amazon EC2 Spot Price Prediction Using Regression Random Forests

Research Area:  Big Data

Abstract:

Spot instances were introduced by Amazon EC2 in December 2009 to sell its spare capacity through auction based market mechanism. Despite its extremely low prices, cloud spot market has low utilization. Spot pricing being dynamic, spot instances are prone to out-of bid failure. Bidding complexity is another reason why users today still fear using spot instances. This work aims to present Regression Random Forests (RRFs) model to predict one-week-ahead and one-day-ahead spot prices. The prediction would assist cloud users to plan in advance when to acquire spot instances, estimate execution costs, and also assist them in bid decision making to minimize execution costs and out-of-bid failure probability. Simulations with 12 months real Amazon EC2 spot history traces to forecast future spot prices show the effectiveness of the proposed technique. Comparison of RRFs based spot price forecasts with existing non-parametric machine learning models reveal that RRFs based forecast accuracy outperforms other models. We measure predictive accuracy using MAPE, MCPE, OOB Error and speed. Evaluation results show that MAPE <; = 10% for 66 to 92 percent and MCPE <; = 15% for 35 to 81 percent of one-day-ahead predictions with prediction time less than one second. MAPE <; = 15% for 71 to 96 percent of one-week-ahead predictions.

Keywords:  

Author(s) Name:  Veena Khandelwal,Anand Kishore Chaturvedi and Chandra Prakash Gupta

Journal name:  IEEE Transactions on Cloud Computing

Conferrence name:  

Publisher name:  IEEE

DOI:  10.1109/TCC.2017.2780159

Volume Information:  Jan.-March 2020, pp. 59-72, vol. 8