{"id":658,"date":"2020-10-09T16:55:30","date_gmt":"2020-10-09T16:55:30","guid":{"rendered":"https:\/\/www.dropshotting.com\/?p=658"},"modified":"2022-12-24T08:14:07","modified_gmt":"2022-12-24T08:14:07","slug":"how-hadoop-is-used-in-data-analytics","status":"publish","type":"post","link":"https:\/\/www.dropshotting.com\/how-hadoop-is-used-in-data-analytics\/","title":{"rendered":"How Hadoop Is Used In Data Analytics"},"content":{"rendered":"

It is believed in this technological era that the world is supposed to be a digital globe, and every other digital service – which we use, creates a great sum of data. However, as far as concerning the large data processing volume and tolerance, data hierarchy management, either organized or unorganized, slowed down data processing. But now – the use of Hadoop makes it efficient – it is determining as popular data analytics software used in various industries these days. Hadoop is an open-source application that is part of the Apache application, which is mainly used for data analysis.<\/p>\n

What is Hadoop?<\/h1>\n

Hadoop is the solution to major data problems, such as data storage, access, and processing. The data node contains blocks in which you can save data, and the user can specify the size of these blocks. On the other hand, it simulates data blocks in data notes, making it highly scalable. Also, you can add new or additional clusters to the data nodes, depending on your data divisions. As for the storage of various data, we can say with certainty that all types of data can be stored, including structured and unorganized data. It also rapidly facilitates data processing. All the same, Hadoop has two main functions – Hadoop – Distributed – File – System (H-D-F-S), and Map-Reduce. The H-D-F-S maps data anywhere in the cluster. On top of all, Map-Reduce sends data to sub-nodes for processing along with other basic nodes.<\/p>\n