@article{3103, keywords = {Cloud Computing, Machine Learning, Prediction, Prices, Forecasting}, author = {Alejandro Baldominos Gómez and Yago Saez and David Quintana and Pedro Isasi}, title = {AWS PredSpot: Machine Learning for Predicting the Price of Spot Instances in AWS Cloud}, abstract = {Elastic Cloud Compute (EC2) is one of the most well-known services provided by Amazon for provisioning cloud computing resources, also known as instances. Besides the classical on-demand scheme, where users purchase compute capacity at a fixed cost, EC2 supports so-called spot instances, which are offered following a bidding scheme, where users can save up to 90% of the cost of the on-demand instance. EC2 spot instances can be a useful alternative for attaining an important reduction in infrastructure cost, but designing bidding policies can be a difficult task, since bidding under their cost will either prevent users from provisioning instances or losing those that they already own. Towards this extent, accurate forecasting of spot instance prices can be of an outstanding interest for designing working bidding policies. In this paper, we propose the use of different machine learning techniques to estimate the future price of EC2 spot instances. These include linear, ridge and lasso regressions, multilayer perceptrons, K-nearest neighbors, extra trees and random forests. The obtained performance varies significantly between instances types, and root mean squared errors ranges between values very close to zero up to values over 60 in some of the most expensive instances. Still, we can see that for most of the instances, forecasting performance is remarkably good, encouraging further research in this field of study.}, year = {2022}, journal = {International Journal of Interactive Multimedia and Artificial Intelligence}, volume = {7}, number = {3}, pages = {65-74}, month = {03/2022}, issn = {1989-1660}, url = {https://www.ijimai.org/journal/sites/default/files/2022-02/ijimai7_3_6.pdf}, doi = {10.9781/ijimai.2022.02.003}, }