what is hadoop
Hadoop is a distributed system infrastructure developed by the Apache Foundation, a software framework capable of distributed processing of large amounts of data; Hadoop processes data in a reliable, efficient, and scalable way; Users can develop distributed programs without understanding the underlying details of distribution.
#Users can easily develop and run applications that process massive amounts of data on Hadoop.
Hadoop implements a distributed file system (Hadoop Distributed File System), referred to as HDFS. HDFS is highly fault-tolerant and designed to be deployed on low-cost hardware; and it provides high throughput to access application data, making it suitable for those with large data sets. set) application. HDFS relaxes POSIX requirements and allows streaming access to data in the file system.
The core design of the Hadoop framework is: HDFS and MapReduce. HDFS provides storage for massive data, while MapReduce provides calculation for massive data.
Hadoop mainly has the following advantages:
● High reliability. Hadoop's ability to store and process data bit-by-bit is worthy of trust.
● High scalability. Hadoop distributes data and completes computing tasks among available computer clusters, which can be easily expanded to thousands of nodes.
● Efficiency. Hadoop can dynamically move data between nodes and ensure the dynamic balance of each node, so the processing speed is very fast.
● High fault tolerance. Hadoop can automatically save multiple copies of data and automatically redistribute failed tasks.
● Low cost. Compared with all-in-one machines, commercial data warehouses, and data marts such as QlikView and Yonghong Z-Suite, hadoop is open source, so the software cost of the project will be greatly reduced.
Hadoop comes with a framework written in Java language, so it is ideal to run on Linux production platforms. Applications on Hadoop can also be written in other languages, such as C.
The above is the detailed content of what is hadoop. For more information, please follow other related articles on the PHP Chinese website!

Hot AI Tools

Undresser.AI Undress
AI-powered app for creating realistic nude photos

AI Clothes Remover
Online AI tool for removing clothes from photos.

Undress AI Tool
Undress images for free

Clothoff.io
AI clothes remover

AI Hentai Generator
Generate AI Hentai for free.

Hot Article

Hot Tools

Notepad++7.3.1
Easy-to-use and free code editor

SublimeText3 Chinese version
Chinese version, very easy to use

Zend Studio 13.0.1
Powerful PHP integrated development environment

Dreamweaver CS6
Visual web development tools

SublimeText3 Mac version
God-level code editing software (SublimeText3)

Hot Topics



Java Errors: Hadoop Errors, How to Handle and Avoid When using Hadoop to process big data, you often encounter some Java exception errors, which may affect the execution of tasks and cause data processing to fail. This article will introduce some common Hadoop errors and provide ways to deal with and avoid them. Java.lang.OutOfMemoryErrorOutOfMemoryError is an error caused by insufficient memory of the Java virtual machine. When Hadoop is

With the advent of the big data era, data processing and storage have become more and more important, and how to efficiently manage and analyze large amounts of data has become a challenge for enterprises. Hadoop and HBase, two projects of the Apache Foundation, provide a solution for big data storage and analysis. This article will introduce how to use Hadoop and HBase in Beego for big data storage and query. 1. Introduction to Hadoop and HBase Hadoop is an open source distributed storage and computing system that can

As the amount of data continues to increase, traditional data processing methods can no longer handle the challenges brought by the big data era. Hadoop is an open source distributed computing framework that solves the performance bottleneck problem caused by single-node servers in big data processing through distributed storage and processing of large amounts of data. PHP is a scripting language that is widely used in web development and has the advantages of rapid development and easy maintenance. This article will introduce how to use PHP and Hadoop for big data processing. What is HadoopHadoop is

Java big data technology stack: Understand the application of Java in the field of big data, such as Hadoop, Spark, Kafka, etc. As the amount of data continues to increase, big data technology has become a hot topic in today's Internet era. In the field of big data, we often hear the names of Hadoop, Spark, Kafka and other technologies. These technologies play a vital role, and Java, as a widely used programming language, also plays a huge role in the field of big data. This article will focus on the application of Java in large

1: Install JDK1. Execute the following command to download the JDK1.8 installation package. wget--no-check-certificatehttps://repo.huaweicloud.com/java/jdk/8u151-b12/jdk-8u151-linux-x64.tar.gz2. Execute the following command to decompress the downloaded JDK1.8 installation package. tar-zxvfjdk-8u151-linux-x64.tar.gz3. Move and rename the JDK package. mvjdk1.8.0_151//usr/java84. Configure Java environment variables. echo'

As the amount of data continues to increase, large-scale data processing has become a problem that enterprises must face and solve. Traditional relational databases can no longer meet this demand. For the storage and analysis of large-scale data, distributed computing platforms such as Hadoop, Spark, and Flink have become the best choices. In the selection process of data processing tools, PHP is becoming more and more popular among developers as a language that is easy to develop and maintain. In this article, we will explore how to leverage PHP for large-scale data processing and how

In the current Internet era, the processing of massive data is a problem that every enterprise and institution needs to face. As a widely used programming language, PHP also needs to keep up with the times in data processing. In order to process massive data more efficiently, PHP development has introduced some big data processing tools, such as Spark and Hadoop. Spark is an open source data processing engine that can be used for distributed processing of large data sets. The biggest feature of Spark is its fast data processing speed and efficient data storage.

Redis and Hadoop are both commonly used distributed data storage and processing systems. However, there are obvious differences between the two in terms of design, performance, usage scenarios, etc. In this article, we will compare the differences between Redis and Hadoop in detail and explore their applicable scenarios. Redis Overview Redis is an open source memory-based data storage system that supports multiple data structures and efficient read and write operations. The main features of Redis include: Memory storage: Redis