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Travel Analytics: Data Sources, Use Cases, and Real-Life Examples

AltexSoft

Loyalty program data can also be part of CRM records, including information on membership tiers or rewards earned. External travel data sources and providers External data encompasses all types of information and datasets created outside a company and existing beyond its direct control, ownership, or management.

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Hadoop 2.0 (YARN) Framework - The Gateway to Easier Programming for Hadoop Users

ProjectPro

YARN) -Swiss Army Knife of Big Data Introduction to Hadoop YARN (Hadoop 2.0 YARN) -Swiss Army Knife of Big Data With the introduction of Hadoop in 2005 to support cluster distributed processing of large scale data workloads through the MapReduce processing engine, Hadoop has undergone a great refurbishment over time.

Hadoop 40
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Big Data Timeline- Series of Big Data Evolution

ProjectPro

2005 - The tiny toy elephant Hadoop was developed by Doug Cutting and Mike Cafarella to handle the big data explosion from the web. ” 1999 - The term Internet of Things (IoT) was used for the very first time by Kevin Ashton in a business presentation at P & G. US government invests $200 million in big data research projects.

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20 Best Open Source Big Data Projects to Contribute on GitHub

ProjectPro

” From month-long open-source contribution programs for students to recruiters preferring candidates based on their contribution to open-source projects or tech-giants deploying open-source software in their organization, open-source projects have successfully set their mark in the industry.

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Industry Interview Series- How Big Data is Transforming Business Intelligence?

ProjectPro

Business Intelligence (BI) combines human knowledge, technologies like distributed computing, and Artificial Intelligence, and big data analytics to augment business decisions for driving enterprise’s success. In the data transformation we saw lot of limitation with this kind of BI architecture.