Press Release | Cloud computing load balancing based on ant colony algorithms improves performance

The article by Dr. Awatif Ragmani et al. is published in Recent Patents on Computer Science, 2018

 

Cloud computing has strongly contributed to the revolution of the traditional IT model. This paradigm has also contributed to the rise of applications using large amounts of data. Particularly, the quality of service and cost are two major points in the Cloud environment. This new concept which proposes to offer applications and IT infrastructures in the form of service available on demand and payable according to the duration of use must optimize both the performance of its resources and the respect of attractive pricing policies.

The Cloud computing model relies on the exploitation of several datacenters installed on different geographical locations. Each datacenter hosts servers which include the virtual machines in charge of processing users’ requests. The geographic extent of the cloud architecture, as well as the number of interactions that exist between the physical components, make the mission of analysis and optimization of the performance highly complex. Our study proposes to study the performance by considering the Cloud model as a black box with a list of inputs gathering the factors that can influence the performance of the system and the outputs that translate the Key Performance Indicators (KPIs). Each KPI makes it possible to measure the evolution of an aspect of the system performance such as the response time or the cost of service. The process of identifying and evaluating the influencing factors was carried out on the basis of Taguchi experience plans. This study includes two steps that aim to improve the performance of Cloud services while ensuring a lower price level. The first step is the evaluation of the Cloud model via a performance analysis methodology inspired by Taguchi concept and the second step details the implementation of a three-tier architecture.

The modeling of the system, as well as all the simulation scenarios, were carried out via the CloudAnalyst simulator. This simulator dedicated to Cloud architecture allows the implementation of various inputs configurations defined on the basis of Taguchi tables in order to find out the function f that links each output to the system’s inputs. The conclusions of this study revealed the impact of the load balancing policy as well as the size of the queries and the location of the datacenters with respect to the user on the response time, the processing time and the total cost. Particularly, the load balancing demonstrated a substantial impact on the performance of the Cloud system.

Following a comparative study of several load balancing algorithms, it was possible to define a three-tier solution based on an ant colony algorithm. The choice of the ant colony algorithm was justified by its ability to identify an optimal solution within a reasonable time and to be able to manage a wide area network encompassing thousands of nodes. These characteristics have made it possible to have a solution that satisfies both the response time and cost criteria. The architecture has also two controllers in order to decrease the load of the main controller and contribute to improving the processing time of the system.

Browse the article details atA Performed Load Balancing Algorithm for Public Cloud Computing Using Ant Colony Optimization

EDITOR’S CHOICE ARTICLE – A Machine Learning Prediction Model for Automated Brain Abnormalities Detection

 

Journal Name: Recent Patents on Computer Science

Author(s): Satyajit Anand*, Sandeep Jaiswal, Pradip Kumar Ghosh.

 

 

 

 

 

Graphical Abstract:

 

 

Abstract:

Background: The rapid improvement in technology enables an Electroencephalogram (EEG) to detect a diverse range of brain disorders easily. The design of sophisticated signal processing methods for an efficient analysis of the EEG signals is exceptionally essential. Raw EEG signal is contaminated by noise and artefacts that modify the spectral-spatial and temporal information of the signal and renders inaccurate clinical interpretation. Denoising of the signal is the first step to refine the signal quality and identify patient’s mental state from the signal although it is not an easy task because of high dimensionality and complexity of EEG signal. The present study highlights three conditions of the brain namely stroke, brain death, and a healthy state. The primary concern is to detect the most abnormal conditions of the brain, i.e., an EEG with a critical stage.

Method: This paper introduces a neoteric technique for the analysis of EEG signals of the three conditions using filters such as Fuzzy filter and wavelet orthogonal filter to obtain highly accurate resultant signals. Further, the resultant filter is trained in Neural Network for predicting the brain abnormalities. The proposed system is found to be efficient in denoising the EEG waves.

Results: The result shows that the classification accuracy of multiclass EEG dataset achieved and the performance of ANN is high and it was found to be the best validation performance of ANN which is 0.2303.

Conclusion: This paper comprehensively describes the denoising of the EEG signals that will provide accuracy in the diagnosis of the EEG to detect brain disorders. The Fuzzy filter pre-processes the signals by considering the noisy signal by an ideal value in such a way that the desired metric (the filtered output) is reduced. The orthogonal wavelet filter produces a single scaling function and wavelet function. The EEG features are extracted from multiple-level decompositions of EEGs by DWT. Finally, the features are classified using Back propagation artificial neural network that categorizes the EEGs to make the diagnosis easier for the brain abnormalities.

 

 

For more details, please visit: http://www.eurekaselect.com/163903/article

THEMATIC ISSUE – Artificial Intelligence and Machine Learning: Recent Advances and Applications

 

THEMATIC ISSUE OF THE JOURNAL: RECENT PATENTS ON COMPUTER SCIENCE 

 

“Artificial Intelligence and Machine Learning: Recent Advances and Applications”

 

Guest Editor : Chiranji Lal Chowdhary

 

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CALL FOR PAPERS – THEMATIC ISSUE

FORTHCOMING SPECIAL ISSUE OF THE JOURNAL:  Recent Patents on Computer Science

 

“Special Issue on Smart and Micro-irrigation in  Agriculture”

 

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GUEST EDITOR: DR. RAMESH C.POONIA

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EDITOR’S CHOICE – The 1-Good-Neighbor Diagnosability of Alternating Group Graph Networks Under the PMC Model and MM* Model – Recent Patents on Computer Science

Journal: Recent Patents on Computer Science

Author(s): Ji Jirimutu, Shiying Wang

Graphical Abstract:

 

Abstract:

Background: Many multiprocessor systems have interconnection networks as underlying topologies, also described in various patents, and an interconnection network is usually represented by a graph where nodes represent processors and links represent communication links between processors. For the system, study of the topological properties of its interconnection network is important. In 2012, Peng et al. proposed a new measure for fault diagnosis of the system, namely, the g-goodneighbor diagnosability (which is also called the g-good-neighbor conditional diagnosability), which requires that every fault-free node contains at least g fault-free neighbors. The n-dimensional alternating group graph network ANn has been proved to be an important viable candidate for interconnecting a multiprocessor system. The feature of ANn includes low degree of node, small diameter, symmetry, and high degree of fault-tolerance.

Results: In this paper, we prove that the 1-good-neighbor diagnosability (which is also called the nature diagnosability) of ANn is 2n-4 for n >5 under the PMC model and MM* model, the nature diagnosability of 4-dimensional alternating group graph network AN4 under the PMC is 4 and the nature diagnosability of AN4 under the MM* model is 3.

Conclusion: In this paper, we investigate the problem of the nature diagnosability of AN4 under the PMC model and MM* model. It is proved that the nature diagnosability of ANn under the PMC model and MM* model is 2n-4 when n >5. The above results show that the nature diagnosability is several times larger than the classical diagnosability of ANn depending on the condition: 1-good-neighbors. The work will help engineers to develop more different measures of the nature diagnosability based on application environment, network topology, network reliability, and statistics related to fault patterns.

 

New Issue :: Recent Patents on Computer Science 7, Issue 1

Recent Patents on Computer Science publishes review and research articles, and guest edited thematic issues on recent patents in all areas of computer science. A selection of important and recent patents on computer science is also included in the journal. The journal is essential reading for all researchers involved in computer science. The journal also covers recent research (where patents have been registered) in fast emerging computation methods, bioinformatics, medical informatics, computer graphics, artificial intelligence, cybernetics, hardware architectures, software, theory and methods involved and related to computer science.

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New Issue ::: Recent Patents on Computer Science, 9 Issue 2

Recent Patents on Computer Science publishes review and research articles, and guest edited thematic issues on recent patents in all areas of computer science. A selection of important and recent patents on computer science is also included in the journal. The journal is essential reading for all researchers involved in computer science. The journal also covers recent research (where patents have been registered) in fast emerging computation methods, bioinformatics, medical informatics, computer graphics, artificial intelligence, cybernetics, hardware architectures, software, theory and methods involved and related to computer science.

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