Elasticsearch.A.Complete.Guide.epub
End-to-end Search and Analytics About This Book Solve your data analytics problems with the Elastic Stack Improve your user search experience with Elasticsearch and develop your own Elasticsearch plugins Design your index, configure it, and distribute it — you'll also learn how it works Who This Book Is For This course is for anyone who wants to build efficient search and analytics applications. Some development experience is expected. What You Will Learn Install and configure Elasticsearch, Logstash, and Kibana Write CRUDE operations and other search functionalities using the Elasticsearch Python and Java Clients Build analytics using aggregations Set up and scale Elasticsearch clusters using best practices Master document relationships and geospatial data Build your own data pipeline using Elastic Stack Choose the appropriate amount of shards and replicas for your deployment Become familiar with the Elasticsearch APIs In Detail Elasticsearch is a modern, fast, distributed, scalable, fault tolerant, open source search and analytics engine. It provides a new level of control over how you can index and search even huge sets of data. This course will take you from the basics of Elasticsearch to using Elasticsearch in the Elastic Stack and in production. You'll start with the very basics: Elasticsearch terminology, installation, and configuring Elasticsearch. After this, you'll take a look at analytics and indexing, search, and querying. You'll learn how to create maps and visualizations. You'll also be briefed on cluster scaling, search and bulk operations, backups, and security. Then you'll be ready to get into Elasticsearch's internal functionalities including caches, Apache Lucene library, and its monitoring capabilities. You'll learn about the practical usage of Elasticsearch configuration parameters and how to use the monitoring API. You'll discover how to improve the user search experience, index distribution, segment statistics, merging, and more. Once you have mastered this, you'll dive into end-to-end visualize-analyze-log techniques with Elastic Stack (also known as the ELK stack). You'll explore Elasticsearch, Logstash, and Kibana and see how to make them work together to build fresh insights and business metrics out of data. You'll be able to use Elasticsearch with other de facto components in order to get the most out of Elasticsearch. By the end of this course, you'll have developed a full-fledged data pipeline. This Learning Path combines some of the best that Packt has to offer in one complete, curated package. It includes content from the following Packt products: Elasticsearch Essentials Mastering Elasticsearch, Second Edition Learning ELK Stack Style and approach This course aims to create a smooth learning path that will teach you how to effectively use Elasticsearch with other de facto components and get the most out of Elasticsearch. Through this comprehensive course, you'll learn the basics of Elasticsearch and progress to using Elasticsearch in the Elastic stack and in production. Table of Contents Chapter 1. Module 1 Chapter 2. Understanding Document Analysis and Creating Mappings Chapter 3. Putting Elasticsearch into Action Chapter 4. Aggregations for Analytics Chapter 5. Data Looks Better on Maps: Master Geo-Spatiality Chapter 6. Document Relationships in NoSQL World Chapter 7. Different Methods of Search and Bulk Operations Chapter 8. Controlling Relevancy Chapter 9. Cluster Scaling in Production Deployments Chapter 10. Backups and Security
- qiangchoubeng43312017-10-09书还可以,推荐给朋友看
- narcissus1472017-09-28thanks for sharing
- 粉丝: 354
- 资源: 1489
- 我的内容管理 展开
- 我的资源 快来上传第一个资源
- 我的收益 登录查看自己的收益
- 我的积分 登录查看自己的积分
- 我的C币 登录后查看C币余额
- 我的收藏
- 我的下载
- 下载帮助
最新资源
- 202304910142原道明(1).pbix
- 文本.txt
- 基于Lua的聊天过滤修改版设计源码
- A1_SSE_123090177.py
- Uibot6.0 (RPA财务机器人师资培训第5天 ) 报销汇总机器人案例实战
- 基于Vue的西安美食攻略应用程序设计源码
- tensorflow-2.6.2-cp38-cp38-win-amd64.whl
- 2023-04-06-项目笔记 - 第八十六阶段 - 4.4.2.84全局变量的作用域-84 -2024.03.28
- 基于C语言解决九宫重排问题(源码+剖析)
- 考研分数计算神器(通过考研分数计算规则制作出来的计算工具,结果精准,操作简单,并且还可以与第二个人进行比较)