- Report
- April 2024
- 181 Pages
Global
From €4706EUR$4,900USD£4,052GBP
- Report
- August 2022
- 124 Pages
Global
From €2401EUR$2,500USD£2,067GBP
- Report
- April 2024
- 175 Pages
From €4802EUR$5,000USD£4,134GBP
From €155EUR$173USD£138GBP
- Report
- April 2020
- 251 Pages
Global
From €5158EUR$5,370USD£4,440GBP
- Book
- December 2022
- 544 Pages
- Book
- August 2021
- 336 Pages
- Book
- May 2020
- 208 Pages
- Book
- December 2019
- 672 Pages
- Book
- December 2019
- 672 Pages
- Book
- November 2019
- 640 Pages
- Book
- November 2019
- 640 Pages
- Book
- April 2019
- 376 Pages
- Book
- November 2018
- 352 Pages
- Book
- July 2018
- 278 Pages
MapReduce is a programming model and an associated implementation for processing and generating large data sets with a parallel, distributed algorithm on a cluster. It is a core component of the Apache Hadoop software framework. MapReduce is used to divide a large task into smaller tasks that can be distributed across multiple nodes in a cluster. The output of each task is then combined to produce the final result.
MapReduce is a popular tool for Big Data processing, as it allows for the efficient processing of large data sets. It is used in a variety of applications, such as data mining, machine learning, and natural language processing. MapReduce is also used to analyze large volumes of data in order to gain insights and make decisions.
Some companies in the MapReduce market include Cloudera, Hortonworks, MapR Technologies, and IBM. These companies provide software and services related to MapReduce, such as Hadoop distributions, data analytics, and cloud-based solutions. Show Less Read more