- Programming MapReduce with Scalding
- Antonios Chalkiopoulos
- 326字
- 2021-12-08 12:44:19
What this book covers
Chapter 1, Introduction to MapReduce, serves as an introduction to the Hadoop platform, MapReduce and to the concept of the pipeline abstraction that many Big Data technologies use. The first chapter outlines Cascading, which is a sophisticated framework that empowers developers to write efficient MapReduce applications.
Chapter 2, Get Ready for Scalding, lays the foundation for working with Scala, using build tools and an IDE, and setting up a local-development Hadoop system. It is a hands-on chapter that completes packaging and executing a Scalding application in local mode and submitting it in our Hadoop mini-cluster.
Chapter 3, Scalding by Example, teaches us how to perform map-like operations, joins, grouping, pipe, and composite operations by providing examples of the Scalding API.
Chapter 4, Intermediate Examples, illustrates how to use the Scalding API for building real use cases, one for log analysis and another for ad targeting. The complete process, beginning with data exploration and followed by complete implementations, is expressed in a few lines of code.
Chapter 5, Scalding Design Patterns, presents how to structure code in a reusable, structured, and testable way following basic principles in software engineering.
Chapter 6, Testing and TDD, focuses on a test-driven methodology of structuring projects in a modular way for maximum testability of the components participating in the computation. Following this process, the number of bugs is reduced, maintainability is enhanced, and productivity is increased by testing every layer of the application.
Chapter 7, Running Scalding in Production, discusses how to run our jobs on a production cluster and how to schedule, configure, monitor, and optimize them.
Chapter 8, Using External Data Stores, goes into the details of accessing external NoSQL- or SQL-based data stores as part of a data processing workflow.
Chapter 9, Matrix Calculations and Machine Learning, guides you through the process of applying machine learning algorithms, matrix calculations, and integrating with Mahout algorithms. Concrete examples demonstrate similarity calculations on documents, items, and sets.
- Kali Linux Web Penetration Testing Cookbook
- FFmpeg入門詳解:音視頻流媒體播放器原理及應用
- Java應用開發技術實例教程
- KnockoutJS Starter
- Python算法從菜鳥到達人
- Apache Kafka Quick Start Guide
- Getting Started with LLVM Core Libraries
- Developing SSRS Reports for Dynamics AX
- Programming Microsoft Dynamics? NAV 2015
- IoT Projects with Bluetooth Low Energy
- 從Power BI到Analysis Services:企業級數據分析實戰
- Mastering JavaScript
- Learning Kotlin by building Android Applications
- 用Go語言自制編譯器
- 虛擬現實:引領未來的人機交互革命