Oink : Making Pig Self-Service
The Platform and Infrastructure team at eBay Inc. is happy to announce the open-sourcing of Oink – a self-service solution to Apache Pig. Pig and Hadoop overview Apache Pig?is a platform for analyzing large data sets. It uses a high-level
The Platform and Infrastructure team at eBay Inc. is happy to announce the open-sourcing of Oink – a self-service solution to Apache Pig.
Pig and Hadoop overview
Apache Pig?is a platform for analyzing large data sets. It uses a high-level language for expressing data analysis programs, coupled with the infrastructure for evaluating these programs. Pig abstracts the Map/Reduce paradigm, making it very easy for users to write complex tasks using Pig’s language, called Pig Latin. Because execution of tasks can be optimized automatically, Pig Latin allows users to focus on semantics rather than efficiency. Another key benefit of Pig Latin is extensibility:? users can do special-purpose processing by creating their own functions.
Apache Hadoop and Pig provide an excellent platform for extracting and analyzing data from very large application logs. At eBay, we on the Platform and Infrastructure team are responsible for storing TBs of logs that are generated every day from thousands of eBay application servers. Hadoop and Pig offer us an array of tools to search and view logs and to generate reports on application behavior. As the logs are available in Hadoop, engineers (users of applications) also have the ability to use Hadoop and Pig to do custom processing, such as Pig scripting to extract useful information.
The problem
Today, Pig is primarily used through the command line to spawn jobs. This model wasn’t well suited to the Platform team at eBay, as the cluster that housed the application logs was shared with other teams. This situation created a number of issues:
- Governance – In a shared-cluster scenario, governance is critically important to attain. Pig scripts and requests of one customer should not impact those of other customers and stakeholders of the cluster. In addition, providing CLI access would make governance difficult in terms of controlling the number of job submissions.
- Scalability – CLI access to all Pig customers created another challenge:? scalability. Onboarding customers takes time and is a cumbersome process.
- Change management – No easy means existed to upgrade or modify common libraries.
Hence, we needed a solution that acted as a gateway to Pig job submission, provided QoS, and abstracted the user from cluster configuration.
The solution:? Oink
Oink solves the above challenges not only by allowing execution of Pig requests through a REST interface, but also by enabling users to register jars, view the status of Pig requests, view Pig request output, and even cancel a running Pig request. With the REST interface, the user has a cleaner way to submit Pig requests compared to CLI access. Oink serves as a single point of entry for Pig requests, thereby facilitating rate limiting and QoS enforcement for different customers.
Oink runs as a servlet inside a web container and allows users to run multiple requests in parallel within a single JVM instance. This capability was not supported initially, but rather required the help of the patch found in PIG-3866. This patch provides multi-tenant environment support so that different users can share the same instance.
With Oink, eBay’s Platform and Infrastructure team has been able to onboard 100-plus different use cases onto its cluster. Currently, more than 6000 Pig jobs run every day without any manual intervention from the team.
Special thanks to Vijay Samuel, Ruchir Shah, Mahesh Somani, and Raju Kolluru for open-sourcing Oink. If you have any queries related to Oink, please submit an issue through GitHub.
原文地址:Oink : Making Pig Self-Service, 感谢原作者分享。

热AI工具

Undresser.AI Undress
人工智能驱动的应用程序,用于创建逼真的裸体照片

AI Clothes Remover
用于从照片中去除衣服的在线人工智能工具。

Undress AI Tool
免费脱衣服图片

Clothoff.io
AI脱衣机

Video Face Swap
使用我们完全免费的人工智能换脸工具轻松在任何视频中换脸!

热门文章

热工具

记事本++7.3.1
好用且免费的代码编辑器

SublimeText3汉化版
中文版,非常好用

禅工作室 13.0.1
功能强大的PHP集成开发环境

Dreamweaver CS6
视觉化网页开发工具

SublimeText3 Mac版
神级代码编辑软件(SublimeText3)

全表扫描在MySQL中可能比使用索引更快,具体情况包括:1)数据量较小时;2)查询返回大量数据时;3)索引列不具备高选择性时;4)复杂查询时。通过分析查询计划、优化索引、避免过度索引和定期维护表,可以在实际应用中做出最优选择。

是的,可以在 Windows 7 上安装 MySQL,虽然微软已停止支持 Windows 7,但 MySQL 仍兼容它。不过,安装过程中需要注意以下几点:下载适用于 Windows 的 MySQL 安装程序。选择合适的 MySQL 版本(社区版或企业版)。安装过程中选择适当的安装目录和字符集。设置 root 用户密码,并妥善保管。连接数据库进行测试。注意 Windows 7 上的兼容性问题和安全性问题,建议升级到受支持的操作系统。

MySQL 和 MariaDB 可以共存,但需要谨慎配置。关键在于为每个数据库分配不同的端口号和数据目录,并调整内存分配和缓存大小等参数。连接池、应用程序配置和版本差异也需要考虑,需要仔细测试和规划以避免陷阱。在资源有限的情况下,同时运行两个数据库可能会导致性能问题。

MySQL是一个开源的关系型数据库管理系统。1)创建数据库和表:使用CREATEDATABASE和CREATETABLE命令。2)基本操作:INSERT、UPDATE、DELETE和SELECT。3)高级操作:JOIN、子查询和事务处理。4)调试技巧:检查语法、数据类型和权限。5)优化建议:使用索引、避免SELECT*和使用事务。

数据集成简化:AmazonRDSMySQL与Redshift的零ETL集成高效的数据集成是数据驱动型组织的核心。传统的ETL(提取、转换、加载)流程复杂且耗时,尤其是在将数据库(例如AmazonRDSMySQL)与数据仓库(例如Redshift)集成时。然而,AWS提供的零ETL集成方案彻底改变了这一现状,为从RDSMySQL到Redshift的数据迁移提供了简化、近乎实时的解决方案。本文将深入探讨RDSMySQL零ETL与Redshift集成,阐述其工作原理以及为数据工程师和开发者带来的优势。

LaravelEloquent模型检索:轻松获取数据库数据EloquentORM提供了简洁易懂的方式来操作数据库。本文将详细介绍各种Eloquent模型检索技巧,助您高效地从数据库中获取数据。1.获取所有记录使用all()方法可以获取数据库表中的所有记录:useApp\Models\Post;$posts=Post::all();这将返回一个集合(Collection)。您可以使用foreach循环或其他集合方法访问数据:foreach($postsas$post){echo$post->

MySQL 数据库中,用户和数据库的关系通过权限和表定义。用户拥有用户名和密码,用于访问数据库。权限通过 GRANT 命令授予,而表由 CREATE TABLE 命令创建。要建立用户和数据库之间的关系,需创建数据库、创建用户,然后授予权限。

MySQL适合初学者使用,因为它安装简单、功能强大且易于管理数据。1.安装和配置简单,适用于多种操作系统。2.支持基本操作如创建数据库和表、插入、查询、更新和删除数据。3.提供高级功能如JOIN操作和子查询。4.可以通过索引、查询优化和分表分区来提升性能。5.支持备份、恢复和安全措施,确保数据的安全和一致性。
