Summary
In this paper, we conduct statistical analyses for two Amazon cloud pricing models: on demand and spot. On demand cloud instances are charged a fixed price and can only be terminated by the user, with very high availability. On the other hand, spot instances are charged a dynamic price determined by a market‐driven model and can be revoked by the provider when the spot price becomes higher than the user‐defined price, having possibly low availability. Our analysis for on‐demand instances resulted in multiple linear regression equations that represent the influence of characteristics of the processor and RAM memory in the composition of the price of different types of instances available on the Amazon EC2 provider. In order to analyze the Amazon spot pricing, we used time‐smoothed moving averages by 12‐hour periods, aiming to provide a price‐availability trade‐off to the user. Our experiments with spot price histories from September to November 2016 show that the user's bid can be set at 30% of the on‐demand price, with an availability above of 90%, depending on instance type.
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