Fast Online Analytical Processing for Big Data Warehousing

Author(s):  
Jose Correia ◽  
Maribel Yasmina Santos ◽  
Carlos Costa ◽  
Carina Andrade
Author(s):  
Jose Maria Cavero ◽  
Esperanza Marcos ◽  
Mario Piattini ◽  
Adolfo Sanchez

Data warehousing and online analytical processing (OLAP) technologies have become growing interest areas in latest years. Specific issues, such as conceptual modeling, schemes translation from operational systems, physical design, etc... have been widely treated, but there is not a general accepted complete methodology for datawarehouse design. In this work, we present a multidimensional datawarehouse development methodology based on and integrated with a Public software development methodology.


2009 ◽  
Vol 6 (2) ◽  
pp. 87-110 ◽  
Author(s):  
Dragana Camilovic ◽  
Dragana Becejski-Vujaklija ◽  
Natasa Gospic

In order to succeed in the market, telecommunications companies are not competing solely on price. They have to expand their services based on their knowledge of customers' needs gained through the use of call detail records (CDR) and customer demographics. All the data should be stored together in the CDR data mart. The paper covers the topic of its design and development in detail and especially focuses on the conceptual/logical/physical trilogy. Some other design problems are also discussed. An important area is the problem involving time. This is why the implication of time in data warehousing is carefully considered. The CDR data mart provides the platform for Online Analytical Processing (OLAP) analysis. As it is presented in this paper, an OLAP system can help the telecommunications company to get better insight into its customers' behavior and improve its marketing campaigns and pricing strategies.


Data Mining ◽  
2012 ◽  
pp. 125-185 ◽  
Author(s):  
Jiawei Han ◽  
Micheline Kamber ◽  
Jian Pei

Big Data ◽  
2020 ◽  
Vol 8 (6) ◽  
pp. 501-518
Author(s):  
Jigna Ashish Patel ◽  
Priyanka Sharma

Author(s):  
Menaceur Sadek ◽  
Makhlouf Derdour ◽  
Bouramoul Abdelkrim

This article is part of the field of analysis and personalization of large data sets (Big Data). This aspect of analysis and customization has become a major issue that has generated a lot of questions in recent years. Indeed, it is difficult for inexperienced or casual users to extract relevant information in a Big Data context, for volume, the velocity and the variability of data make it difficult for the user to capture, manage and process data by methods and traditional tools. In this article, the authors propose a new approach for personalizing OLAP analysis in a Big Data context by using context and user profile. The proposed approach is based on five complementary layers namely: Extern layer, layer for the formulation of the contexts defined in the system, profiling and querying layer and layer for the construction of personalized OLAP cubes and a final one for multidimensional analysis cubes. The conducted experiment has shown that taking context and user profile into account improves the results of online analytical processing in the context of Big Data.


Author(s):  
Bozena Malysiak-Mrozek ◽  
Jadwiga Wieszok ◽  
Witold Pedrycz ◽  
Weiping Ding ◽  
Dariusz Mrozek

2021 ◽  
Vol 17 (4) ◽  
pp. 1-28
Author(s):  
Waqas Ahmed ◽  
Esteban Zimányi ◽  
Alejandro A. Vaisman ◽  
Robert Wrembel

Data warehouses (DWs) evolve in both their content and schema due to changes of user requirements, business processes, or external sources to name a few. Although multiple approaches using temporal and/or multiversion DWs have been proposed to handle these changes, an efficient solution for this problem is still lacking. The authors' approach is to separate concerns and use temporal DWs to deal with content changes, and multiversion DWs to deal with schema changes. To address the former, previously, they have proposed a temporal multidimensional (MD) model. In this paper, they propose a multiversion MD model for schema evolution to tackle the latter problem. The two models complement each other and allow managing both content and schema evolution. In this paper, the semantics of schema modification operators (SMOs) to derive various schema versions are given. It is also shown how online analytical processing (OLAP) operations like roll-up work on the model. Finally, the mapping from the multiversion MD model to a relational schema is given along with OLAP operations in standard SQL.


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