Why Do We Want Hadoop For Big Data Analytics?

Posted by hussain on June 9th, 2019

Big data and Hadoop are the items that are presently in demand within the IT market. More and more individuals are taking over these certifications to proportion to the newest trend and upgrading themselves with the newest technologies.

Let’s see what's big data and Hadoop and why Hadoop is required for big data


Hadoop is an open-source structure that was made to make it simpler to work with huge information.

Hadoop is presently utilized by most of the businesses across the world for handling their big data.

It is developed by Apache and it's supported the Java setting. It’s an open source framework and then the customers will modify the source code of the framework consistent with their necessities.

We can consider a number of the key options of Hadoop which can help in understanding your question of why Hadoop is required.


Big Data:

A data that is large in size and it is structured or unstructured or each is termed as ‘Big Data’. It might be in terms of Petabytes or Zetabytes in size and then it's tough for the normal management systems to handle such quantity of big data. Additionally, it's going to have unstructured data and then it might be even a lot of advanced to method the big data using the present information systems.

Most of the businesses are presently handling innumerable information and then they're searching for easier and price effective ways for managing their data.

Big data is employed to higher perceive customers and their behaviours and preferences. Firms are keen to expand their traditional data sets with social media data, browser logs moreover as text analytics Hadoop Training in Bangalore and sensing element data to induce an additional complete image of their customers.

The companies would process these data to work out the long run trends and predict the end result of a specific situation supported the history of data that they need in hand.

Maintaining such vast volumes of data isn't a simple task and then most of the businesses are wanting to boost their data cluster. So that they are searching for professionals who have knowledge of the big data and Hadoop.

1. Hadoop is Flexible:

Major challenges for any company or organization would be a way to handle the structured and unstructured knowledge that's obtainable with the big data. However Hadoop is extremely versatile and it might be able to simply handle structured, unstructured or encoded data and process them consistent with the corporate desires.

2. Faster processing

Hadoop usually works on the idea of data processing and then every one of the nodes within the cluster would severally process the info at constant time. Hadoop will perform batch processes ten times quicker than on one thread server or on the mainframe.

3. Price Effective

Hadoop is a relatively low cost and price effective method of handling the big data in comparison with the opposite frameworks.

Considering the on top of options, we are able to positively choose Hadoop for process the big data.

4. Fault-Tolerant

In Hadoop, the data is kept in HDFS wherever data gets replicated at multiple locations. So, although one or two of the collapse of the system, the file continues to be obtainable on the backup systems and then it Hadoop Training in Bangalore might be simply retrieved. Thus Hadoop is Fault-tolerant.

5. Hadoop is definitely ascendible

If the most size of the storage nodes is reached, then it's simple to add further nodes to the cluster within the Hadoop framework and then it's simply scalable. The nodes are freelance of every alternative and then adding a replacement node to the cluster won't be a trivial task.


If you're searching for any help in getting ready for Hadoop certification and Hadoop Training, please Visit Us.

We’ll assist you to prepare for the certification in Hadoop.

Link To Directory
Top Searches - Trending Searches - New Articles - Top Articles - Trending Articles - Featured Articles - Top Members

Copyright 2020 Uberant.com
709,207 total articles and counting.