ITDA: Cube-Less Architecture for Effective Multidimensional Data Analysis

Recent developments in real-time applications, sensor technology, and various online services are responsible for generating large amount of data which can be used for analysis. Performing multidimensional data analysis on such type of data requires aggregation at various levels which is generally done using data cubes. Generation of data cubes involves lot of storage and time overheads which make such approach practically less feasible if aggregation involves lot of hierarchies in dimensions. The Integrated Tool for Data Analysis (ITDA) project aims to provide a data analytics solution, under single Web-based platform to address the issue of generating the cube for high volume data by proposing the ‘on-the-fly aggregation’ architecture. This paper presents the ITDA which aims to provide the support for absorption of data, modeling it in multidimensional model, analyzing the absorbed data, and producing effective visualization. Target users can do analysis on their data without relying on costly tools or any prior knowledge in programming. In this paper, detailed architecture of ITDA software with its operating mode is discussed.

[1]  Simon Fong,et al.  Real-Time Clinical Decision Support System with Data Stream Mining , 2012, Journal of biomedicine & biotechnology.

[2]  Ian T. Foster,et al.  Ophidia: Toward Big Data Analytics for eScience , 2013, ICCS.

[3]  Matthias Jarke,et al.  An evaluation framework for traffic information systems based on data streams , 2012 .

[4]  Ratnesh Sahay,et al.  On-the-fly generation of multidimensional data cubes for web of things , 2013, IDEAS '13.

[5]  Anne Tchounikine,et al.  Dynamic cubing for hierarchical multidimensional data space , 2014, J. Decis. Syst..

[6]  Konstantinos Morfonios,et al.  CURE for cubes: cubing using a ROLAP engine , 2006, VLDB.

[7]  Dong Jin,et al.  Parallel Data Cube Construction Based on an Extendible Multidimensional Array , 2011, 2011IEEE 10th International Conference on Trust, Security and Privacy in Computing and Communications.

[8]  B. Janet,et al.  Cube index for unstructured text analysis and mining , 2011, ICCCS '11.

[9]  Ian T. Foster,et al.  Ophidia: A full software stack for scientific data analytics , 2014, 2014 International Conference on High Performance Computing & Simulation (HPCS).