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Emerging Trends in Big Data Analysis for 2023

ProjectPro

Big data technologies and practices are gaining traction and moving at a fast pace with novel innovations happening in this space. Big data companies are closely watching the latest trends in big data analytics to gain competitive advantage with the use of data. .”– said Arthur C.

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Top 14 Big Data Analytics Tools in 2024

Knowledge Hut

You can check out the Big Data Certification Online to have an in-depth idea about big data tools and technologies to prepare for a job in the domain. To get your business in the direction you want, you need to choose the right tools for big data analysis based on your business goals, needs, and variety.

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How Big Data Analysis helped increase Walmarts Sales turnover?

ProjectPro

It takes in approximately $36 million dollars from across 4300 US stores everyday.This article details into Walmart Big Data Analytical culture to understand how big data analytics is leveraged to improve Customer Emotional Intelligence Quotient and Employee Intelligence Quotient. How Walmart is tracking its customers?

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The Good and the Bad of the Elasticsearch Search and Analytics Engine

AltexSoft

In this edition of “The Good and The Bad” series, we’ll dig deep into Elasticsearch — breaking down its functionalities, advantages, and limitations to help you decide if it’s the right tool for your data-driven aspirations. Fluentd is a data collector and a lighter-weight alternative to Logstash. What is Elasticsearch?

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Recommender Systems: Behind the Scenes of Machine-Learning-Based Personalization

AltexSoft

line from “Taxi Driver” over and over again but still hate “lame” 2010’s comedies featuring him. Taking into account all the pros and cons, it’s fair to say that content-based filtering models fill the bill when there isn’t enough interaction data. Google singles out four key phases through which a recommender system processes data.