Publicação
Data and computer center prediction of usage and cost: an interpretable machine learning approach
| Resumo: | In recent years, Cloud computing usage has considerably increased and, nowadays, it is the backbone of many emerging applications. However, behind cloud structures, we have physical infrastructures (data centers) for which managing is difficult due to un- predictable utilization patterns. To address the constraints of reactive auto-scaling, data centers are widely adopting predictive cloud resource management mechanisms. How- ever, predictive methods rely on application workloads and are typically pre-optimized for specific patterns, which can cause under/over-provisioning of resources. Accurate workload forecasts are necessary to gain efficiency, save money, and provide clients with better and faster services. Working with real data from a Portuguese bank, we propose Ensemble Adaptive Model with Drift detector (EAMDrift). This novel method combines forecasts from multi- ple individual predictors by giving weights to each individual model prediction according to a performance metric. EAMDrift automatically retrains when needed and identifies the most appropriate models to use at each moment through interpretable mechanisms. We tested our novel methodology in a real data problem, by studying the influence of external signals (mass and social media) on data center workloads. As we are working with real data from a bank, we hypothesize that users can increase or decrease the usage of some applications depending on external factors such as controversies or news about economics. For this study, EAMDrift was projected to allow multiple past covariates. We evaluated EAMDrift in different workloads and compared the results with sev- eral baseline methods models. The experimental evaluation shows that EAMDrift out- performs individual baseline models in 15% to 25%. Compared to the best black-box ensemble model, our model has a comparable error (increased in 1-3%). Thus, this work suggests that interpretable models are a viable solution for data center workload predic- tion. |
|---|---|
| Autores principais: | Mateus, Gonçalo Furtado |
| Assunto: | Data center management Interpretable machine learning Dynamic prediction model Natural language processing Feature extraction |
| Ano: | 2023 |
| País: | Portugal |
| Tipo de documento: | dissertação de mestrado |
| Tipo de acesso: | acesso aberto |
| Instituição associada: | Universidade Nova de Lisboa |
| Idioma: | inglês |
| Origem: | Repositório Institucional da UNL |
Registos relacionados
school Interpretability and explainability in machine learning
por: Cunha, João Paulo Carrilho
Publicado em: (2024)
por: Cunha, João Paulo Carrilho
Publicado em: (2024)
article Machine learning and feature selection methods for egfr mutation status prediction in lung cancer
por: Morgado, J
Publicado em: (2021)
por: Morgado, J
Publicado em: (2021)
article Applications of Machine Learning in Human Microbiome Studies: A Review on Feature Selection, Biomarker Identification, Disease Prediction and Treatment
por: Marcos-Zambrano, LJ
Publicado em: (2021)
por: Marcos-Zambrano, LJ
Publicado em: (2021)
school Design for manufacture using machining features on CNC machining centers
por: Festa, Pedro Manuel de Oliveira
Publicado em: (2021)
por: Festa, Pedro Manuel de Oliveira
Publicado em: (2021)
article Water quality prediction based on machine learning and comprehensive weighting methods
por: Wang, Xianhe
Publicado em: (2023)
por: Wang, Xianhe
Publicado em: (2023)
school PPRINT: Prediction of Protein-Protein Interactions
por: Cruz, Igor Nelson Garrido da
Publicado em: (2014)
por: Cruz, Igor Nelson Garrido da
Publicado em: (2014)
article Artificial intelligence in biological activity prediction
por: Correia, João
Publicado em: (2020)
por: Correia, João
Publicado em: (2020)
school If This Do That: Interpretable Machine Learning Models For High Stakes Decision-Making
por: Vasconcelos, Lourenço Malheiro Serpa de
Publicado em: (2022)
por: Vasconcelos, Lourenço Malheiro Serpa de
Publicado em: (2022)
article 1991 to 2019: The rise of machine interpreting research
por: Dias Esqueda, Marileide
Publicado em: (2022)
por: Dias Esqueda, Marileide
Publicado em: (2022)
school A Machine Learning Approach to Sentinel-3 Feature Extraction In The Context Of Harmful Algal Blooms
por: Costa, João
Publicado em: (2022)
por: Costa, João
Publicado em: (2022)
school Planeamento de Produção e Aprendizagem Envolvendo Interação Inteligente com o Utilizador
por: Araújo, José António Sousa
Publicado em: (2023)
por: Araújo, José António Sousa
Publicado em: (2023)
article Feature discovery in NIR spectroscopy based Rocha pear classification
por: Daniel, Mariana
Publicado em: (2021)
por: Daniel, Mariana
Publicado em: (2021)
school Churn Prediction in Online Newspaper Subscriptions
por: Belchior, Lúcia Madeira
Publicado em: (2023)
por: Belchior, Lúcia Madeira
Publicado em: (2023)
category Which Knowledge Domains Are Important in the Work of Educational Sign Language Interpreters: the Perspective of Teachers and Interpreters
por: Sanches-Ferreira, Manuela
Publicado em: (2013)
por: Sanches-Ferreira, Manuela
Publicado em: (2013)
article Epileptic seizure prediction based on ratio and differential linear univariate features
por: Rasekhi, Jalil
Publicado em: (2015)
por: Rasekhi, Jalil
Publicado em: (2015)
school Improving UAV autonomous landing on target using combination of FAST & SURF
por: Ahmadi, Ali
Publicado em: (2019)
por: Ahmadi, Ali
Publicado em: (2019)
school Predictive models of the performance of professional football players
por: Conceição, Mafalda Teixeira Costa da
Publicado em: (2021)
por: Conceição, Mafalda Teixeira Costa da
Publicado em: (2021)
article Enhancing link prediction efficiency with shortest path and structural attributes
por: Wasim, Muhammad
Publicado em: (2023)
por: Wasim, Muhammad
Publicado em: (2023)
article Self-adaptive MOEA feature selection for classification of bankruptcy prediction data
por: Gaspar-Cunha, A.
Publicado em: (2014)
por: Gaspar-Cunha, A.
Publicado em: (2014)
school Machine learning interpretability in a context of black box regression models
por: Pimentel, João Pedro Torres
Publicado em: (2021)
por: Pimentel, João Pedro Torres
Publicado em: (2021)
school Model interpretability in credit insurance
por: Consiglio, Alessandro
Publicado em: (2023)
por: Consiglio, Alessandro
Publicado em: (2023)
school Towards the interpretation of Machine Learning seizure prediction models
por: Pinto, Mauro Filipe da Silva
Publicado em: (2023)
por: Pinto, Mauro Filipe da Silva
Publicado em: (2023)
school Machine learning methods for predicting stock returns from financial and microeconomic variables
por: Branco, Miguel Pereira Teixeira Mano
Publicado em: (2021)
por: Branco, Miguel Pereira Teixeira Mano
Publicado em: (2021)
school Usage of KINECT to detect walking problems of elder people
por: Jesus, Pedro Alexandre Lopes de
Publicado em: (2017)
por: Jesus, Pedro Alexandre Lopes de
Publicado em: (2017)
school On the clinical acceptance of EEG seizure prediction methodologies
por: Batista, Joana Carolina Flórido
Publicado em: (2022)
por: Batista, Joana Carolina Flórido
Publicado em: (2022)
article Data mining in urgency department: Medical specialty discharge prediction
por: Prata, Marco
Publicado em: (2018)
por: Prata, Marco
Publicado em: (2018)
school Field Lab Yunoai: startup analytics - a machine learning approach to predict startup success based on founders´ features
por: Schmidt, Benjamin
Publicado em: (2025)
por: Schmidt, Benjamin
Publicado em: (2025)
article Machine learning on insurance premium prediction
por: Jesus, Rodrigo M.
Publicado em: (2023)
por: Jesus, Rodrigo M.
Publicado em: (2023)
text_fields Machine Learning Approaches for Predicting Maize Biomass Yield: Leveraging Feature Engineering and Comprehensive Data Integration
por: Abbasi, Maryam
Publicado em: (2025)
por: Abbasi, Maryam
Publicado em: (2025)
school Explainable AI: Enhancing Machine Learning Model Interpretability with Generative AI
por: Castelhano, Inês Dinis
Publicado em: (2025)
por: Castelhano, Inês Dinis
Publicado em: (2025)
school A multimodal evaluation approach for cost-effective emotion classification
por: Pinto, Gisela Antunes
Publicado em: (2020)
por: Pinto, Gisela Antunes
Publicado em: (2020)
school Decoding consumer preferences in wine : predictive analytics and machine learning in analyzing Portuguese wine consumer ratings
por: Schneider, Lukas Florian
Publicado em: (2024)
por: Schneider, Lukas Florian
Publicado em: (2024)
article Propheticus: Machine Learning Framework for the Development of Predictive Models for Reliable and Secure Software
por: Campos, João R.
Publicado em: (2019)
por: Campos, João R.
Publicado em: (2019)
article Online virtual machine evacuation for disaster resilience in inter-data center networks
por: Ayoub, Omran
Publicado em: (2021)
por: Ayoub, Omran
Publicado em: (2021)
article Machine learning and natural language processing for prediction of human factors in aviation incident reports
por: Madeira, Tomás
Publicado em: (2022)
por: Madeira, Tomás
Publicado em: (2022)
article A global taxonomy of interpretable AI: unifying the terminology for the technical and social sciences
por: Graziani, Mara
Publicado em: (2023)
por: Graziani, Mara
Publicado em: (2023)
book Feature selection for bankruptcy prediction: a multi-objective optimization approach
por: Gaspar-Cunha, A.
Publicado em: (2012)
por: Gaspar-Cunha, A.
Publicado em: (2012)
article Feature selection for bankruptcy prediction: a multi-objective optimization approach
por: Mendes, F.
Publicado em: (2010)
por: Mendes, F.
Publicado em: (2010)
school Predictive modeling for clinical trial completion: assessing the phase success - factors driving predictive outcomes
por: Francalanci, Erica
Publicado em: (2025)
por: Francalanci, Erica
Publicado em: (2025)
school Guarding corporate frontiers: empirical evidence for recognizing phishing behavior patterns in the financial services and healthcare industries
por: Wiederrecht, Benedikt
Publicado em: (2024)
por: Wiederrecht, Benedikt
Publicado em: (2024)
Registos relacionados
-
school Interpretability and explainability in machine learning
por: Cunha, João Paulo Carrilho
Publicado em: (2024) -
article Machine learning and feature selection methods for egfr mutation status prediction in lung cancer
por: Morgado, J
Publicado em: (2021) -
article Applications of Machine Learning in Human Microbiome Studies: A Review on Feature Selection, Biomarker Identification, Disease Prediction and Treatment
por: Marcos-Zambrano, LJ
Publicado em: (2021) -
school Design for manufacture using machining features on CNC machining centers
por: Festa, Pedro Manuel de Oliveira
Publicado em: (2021) -
article Water quality prediction based on machine learning and comprehensive weighting methods
por: Wang, Xianhe
Publicado em: (2023)