Material Big Data

Lanzados ppts informativos de tecnologías BigData: Hadoop, Hbase, Hive, Zookeeper...

Apuntate al Curso de PowerBI. Totalmente práctico, aprende los principales trucos con los mejores especialistas

Imprescindible para el mercado laboral actual. Con Certificado de realización!!

Pentaho Analytics. Un gran salto

Ya se ha lanzado Pentaho 8 y con grandes sorpresas. Descubre con nosotros las mejoras de la mejor suite Open BI

LinceBI, la mejor solución Big Data Analytics basada en Open Source

LinceBI incluye Reports, OLAP, Dashboards, Scorecards, Machine Learning y Big Data. Pruébala!!

14 ene. 2019

Free whitepaper 'Big Data Analytics benchmark' for faster Business Intelligence performance

The use of Business Intelligence (BI) systems usually gets a very fast and interactive response when using dashboards, reports and detailed analytical queries. BI applications that meet this interactive processing requirement are known as OLAP (On-Line Analytical Processing) applications. 

However, when we work with data sources with Big Data features (Volume, Variety and Velocity), our metrics tables (e.g. sales volume, units...) and those tables that describe the context (e.g. date, customer, product) could store billions of rows, making the processing requirements very high, even for the most advanced Big Data technologies. 

**Download free 27 pages whitepaper ''Big Data Analytics benchmark' 
**Download free 27 pages whitepaper ''Big Data Analytics benchmark' 

In order to support OLAP applications with Big Data, multiple technologies that promise excellent results have emerged in recent years. Some of the best known are Apache Kylin, Vertica, Druid, Google Big Query or Amazon Red Shift

In this whitepaper we describe the Big Data OLAP technologies that are part of the benchmark: Apache Kylin and Vertica

Besides comparing these technologies against each other, we have also compared them with the relational database PostgreSQL

This open source technology, despite not being a Big Data database, usually offers very good results for traditional OLAP systems. Therefore, we considered worthwhile to include PostgreSQL in order to measure the differences of it against Kylin and Vertica in a Big Data OLAP scenario

LinceBI, open source based analytics solution, use this technologies for scalable and faster performance on Business Intelligence 

More Info:

OLAP for Big Data. It´s possible?

Hadoop is a great platform for storing a lot of data, but running OLAP is usually done on smaller datasets in legacy and traditional proprietary platforms.   OLAP workloads are beginning to migrate to the one data lake that is running Hadoop and Spark. Fortunately, there are a number of Apache projects that are starting to make OLAP possible on Hadoop.  Apache Kylin For an introduction to this interesting Hadoop project, check...

1 comentarios:

Devi.Angularjs dijo...

Big data is a term that describes the large volume of data – both structured and unstructured – that inundates a business on a day-to-day basis. IEEE Projects for CSE in Big Data But it’s not the amount of data that’s important. Final Year Project Centers in Chennai It’s what organizations do with the data that matters. Big data can be analyzed for insights that lead to better decisions and strategic business moves.

Java has already made serious inroads as an integrated technology stack for building user-facing applications. Java Training in Chennai the authors explore the idea of using Java in Big Data platforms.
Specifically, various tasks are geared around preparing data for further analysis and visualization. Java Training in Chennai