A Unique Multi-Agent-Based Approach for Enhanced QoS Resource Allocation in Multi Cloud Environment while Maintaining Minimized Energy and Maximize Revenue

Authors

  • Umamageswaran Jambulingam R.M.K. Engineering College, RSM Nagar, India
  • K. Balasubadra R.M.D. Engineering College, RSM Nagar, India

DOI:

https://doi.org/10.15837/ijccc.2022.2.4296

Keywords:

Artificial Bee Colony (ABC), Best Fit Decreasing (BFD), Distributed Energy Resources (DER), Economic Dispatch (ED), Genetic Algorithm (GA), Multi Agent System (MAS), Priority based Resource Allocation (PRA), Service-Level Agreement (SLA), Vickrey –Clarke–Groves (VCG), Virtual Machine (VM)

Abstract

The use of the multi-cloud data storage in one heterogeneous service is a polynimbus cloud strategy. Cloud computing uses a pay-as-you-go model to deliver services to a variety of end users. Customers can outsource daunting tasks to cloud data centres for processing and producing results, thanks to cloud computing. Cloud computing becomes the popular IT brand that provides various on-demand services over the internet. This technology is devoted to distributing computer and software resources. The proven usefulness of workflows to enforce relevant scientific achievements is the availability of data from advanced scientific tools. Scheduling algorithms are essential in order to automate these strenuous workflows efficiently. A number of new heuristics based on a Cloud resource model have been developed. The majority of these heuristic - based address QoS issues in one or two dimensions. The cloud computing technology offers a decentralised pool of services and resources with various models that are provided to the customers across the Internet in an on-demand, continuously distributed, and pay-per-use model. The key challenge we address in this paper is to maximise revenue while maintaining a minimum consumption of energy with an enhanced QoS for resource allocation. The obtained results from proposed method when compared with the existing state of art methods observed to be novel and better.

Author Biography

K. Balasubadra, R.M.D. Engineering College, RSM Nagar, India

Department of Computer Science and Engineering
R.M.D. Engineering College, RSM Nagar, Kavaraipettai, Thiruvallur Distric, Tamil Nadu, 601206.

References

[1] R. Feldman, 2013. Techniques and applications for sentiment analysis, Communications of the ACM, Vol.56, No.4, Pp.82-89, https://doi.org/10.1145/2436256.2436274

[2] M. Ghiassi, J. Skinner and D. Zimbra, 2013. Twitter brand sentiment analysis: A hybrid system using n-gram analysis and dynamic artificial neural network, Expert Systems with applications, Vol.40, No.16, Pp.6266-6282, https://doi.org/10.1016/j.eswa.2013.05.057

[3] N. Zainuddin, A. Selamat and R. Ibrahim, 2016. Improving twitter aspect-based sentiment analysis using hybrid approach, Asian conference on intelligent information and database systems, Pp.151-160, https://doi.org/10.1007/978-3-662-49381-6_15

[4] D. Antenucci, M. Cafarella, M. Levenstein, C. Ré and M.D. Shapiro, 2014. Using social media to measure labor market flows, National Bureau of Economic Research, Pp. 1-50, https://doi.org/10.3386/w20010

[5] N. Zainuddin, A. Selamat and R. Ibrahim, 2018. Hybrid sentiment classification on twitter aspect-based sentiment analysis, Applied Intelligence, Vol.48, No.5, Pp.1218-1232, https://doi.org/10.1007/s10489-017-1098-6

[6] G. Wang, J. Sun, J. Ma, K. Xu and J. Gu, 2014. Sentiment classification: The contribution of ensemble learning, Decision support systems, Vol.57, Pp.77-93, 2014. https://doi.org/10.1016/j.dss.2013.08.002

[7] O. Kolchyna, T.T. Souza, P. Treleaven and T. Aste, 2015. Twitter sentiment analysis: Lexicon method, machine learning method and their combination, Computation and Language (cs.CL), Pp.1-32,

[8] N. í–ztürk and S. Ayvaz, 2018. Sentiment Analysis on Twitter: A Text Mining Approach to the Syrian Refugee Crisis, Telematics and Informatics, Vol.35, No.1, Pp.136-147, https://doi.org/10.1016/j.tele.2017.10.006

[9] K. Philander and Y. Zhong, 2016. Twitter sentiment analysis: Capturing sentiment from integrated resort tweets, International Journal of Hospitality Management, Vol.55, Pp.16-24. https://doi.org/10.1016/j.ijhm.2016.02.001

[10] A. Hasan, S. Moin, A. Karim and S. Shamshir band, 2018. Machine learning-based sentiment analysis for twitter accounts, Mathematical and Computational Applications, Vol.23, No.1, Pp.1- 15, https://doi.org/10.3390/mca23010011

[11] A. Alnawas and N. Arici, 2019. Sentiment analysis of Iraqi Arabic dialect on Facebook based on distributed representations of documents, ACM Transactions on Asian and Low-Resource Language Information Processing (TALLIP), Vol.18, No.3, Pp.1-17, https://doi.org/10.1145/3278605

[12] S.A. Salloum, C. Mhamdi, M. Al-Emran and K. Shaalan, 2017. Analysis and classification of Arabic newspapers' Facebook pages using text mining techniques, International Journal of Information Technology and Language Studies, Vol.1, No.2, Pp.8-17,

[13] K.M. Nahar, A. Jaradat, M.S. Atoum and F. Ibrahim, 2020. Sentiment analysis and classification of arabjordanian facebook comments for jordanian telecom companies using lexicon-based approach and machine learning, Jordanian Journal of Computers and Information Technology (JJCIT), Vol.6, No.03, Pp.247-263, https://doi.org/10.5455/jjcit.71-1586289399

[14] H. Tran and M. Shcherbakov, 2016. Detection and prediction of users attitude based on real-time and batch sentiment analysis of facebook comments, International conference on computational social networks, Pp.273-284, https://doi.org/10.1007/978-3-319-42345-6_24

[15] T.H. Soliman, M.A. Elmasry, A. Hedar and M.M. Doss, 2014. Sentiment analysis of Arabic slang comments on facebook, International Journal of Computers & Technology, Vol.12, No.5, Pp.3470-3478, https://doi.org/10.24297/ijct.v12i5.2917

[16] M. Meire, M. Ballings and D. Van den Poel, 2016. The added value of auxiliary data in sentiment analysis of Facebook posts, Decision Support Systems, Vol.89, Pp.98-112, https://doi.org/10.1016/j.dss.2016.06.013

[17] A. Ortigosa, J.M. Martí­n and R.M. Carro, 2014. Sentiment analysis in Facebook and its application to e-learning, Computers in human behavior, Vol.31, Pp.527-541, https://doi.org/10.1016/j.chb.2013.05.024

[18] F. Millstein, 2020. Natural Language Processing With Python: Natural Language Processing Using NLTK, Frank Millstein, Pp.1-116, https://doi.org/10.1007/978-1-4842-4354-1_1

[19] A. Jabbar, S. Iqbal, A. Akhunzada and Q. Abbas, 2018. An improved Urdu stemming algorithm for text mining based on multi-step hybrid approach, Journal of Experimental & Theoretical Artificial Intelligence, Vol.30, No.5, Pp.703-723, https://doi.org/10.1080/0952813X.2018.1467495

[20] M.A. Fauzi, 2018. Word2Vec model for sentiment analysis of product reviews in Indonesian language, International Journal of Electrical and Computer Engineering, Vol.9, No.1, Pp.525- 530, https://doi.org/10.11591/ijece.v9i1.pp525-530

[21] A.I. Pratiwi, 2018. On the feature selection and classification based on information gain for document sentiment analysis, Applied Computational Intelligence and Soft Computing, Pp.1-5, https://doi.org/10.1155/2018/1407817

[22] S.V. Georgakopoulos, S.K. Tasoulis, A.G. Vrahatis and V.P. Plagianakos.2018., Convolutional neural networks for toxic comment classification, Proceedings of the 10th Hellenic Conference on Artificial Intelligence, Pp.1-6, https://doi.org/10.1145/3200947.3208069

[23] https://www.kaggle.com/mchirico/cheltenham-s-facebook-group

[24] Ragab et al., (2020). A Novel One-Dimensional CNN with Exponential Adaptive Gradients for Air Pollution Index Prediction, Sustainability, 12 (23): 10090. https://doi.org/10.3390/su122310090

[25] Nasir et al. (2020). Pearson Correlation-Based Feature Selection for Document Classification Using Balanced Training, Sensors, 20 (23): 6793, https://doi.org/10.3390/s20236793

[26] Huang, et al. (2019). Signal status recognition based on 1DCNN and its feature extraction mechanism analysis. Sensors, 19 (9) https://doi.org/10.3390/s19092018

[27] Meliboev et al. (2020). CNN Based Network Intrusion Detection with Normalization on Imbalanced Data, International Conference on Artificial Intelligence in Information and Communication, 19-21 Feb. 2020, Japan. https://doi.org/10.1109/ICAIIC48513.2020.9064976

[28] Li, et al. (2020). A hybrid CNN-LSTM model for forecasting particulate matter (PM2.5), IEEE Access, 8, 26933-26940. https://doi.org/10.1109/ACCESS.2020.2971348

Additional Files

Published

2022-03-07

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