Integrating Bayesian Optimization and Machine Learning for the Optimal Configuration of Cloud Systems

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Abstract

Bayesian Optimization (BO) is an efficient method for finding optimal cloud configurations for several types of applications. On the other hand, Machine Learning (ML) can provide helpful knowledge about the application at hand thanks to its predicting capabilities. This work proposes a general approach based on BO, which integrates elements from ML techniques in multiple ways, to find an optimal configuration of recurring jobs running in public and private cloud environments, possibly subject to black-box constraints, e.g., application execution time or accuracy. We test our approach by considering several use cases, including edge computing, scientific computing, and Big Data applications. Results show that our solution outperforms other state-of-the-art black-box techniques, including classical autotuning and BO-and ML-based algorithms, reducing the number of unfeasible executions and corresponding costs up to 2-4 times.

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Guindani, B., Ardagna, D., Guglielmi, A., Rocco, R., & Palermo, G. (2024). Integrating Bayesian Optimization and Machine Learning for the Optimal Configuration of Cloud Systems. IEEE Transactions on Cloud Computing, 12(1), 277–294. https://doi.org/10.1109/TCC.2024.3361070

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