当前位置:
首页
>
电子教材
>
详细信息
快速检索
数据库:
各中心已购纸本教材
各中心已购电子教材
国内高校课程
国外著名大学课程
外文原版教材出版信息
外文影印版教材出版信息
名校购书信息
关键词:
Foundations of Data Intensive Applications: Large Scale Data Analytics Under the Hood
书目信息
ISBN:
9781119713036
本馆索书号:
中图分类号:
TP3
中文译名:
数据密集型应用的基础:大规模数据分析的背后
作者:
Supun Kamburugamuve
编者:
语种:
英语
出版信息
出版社:
Wiley
出版地:
出版年:
2021
版本:
1
版本类型:
原版
丛书题名:
卷期:
文献信息
关键词:
前言:
摘要:
There is an ever increasing need to store this data, process them and incorporate the knowledge into everyday business operations of the companies. Before big data systems. there were high performance systems designed to do large calculations. Around the time big data became popular, high performance computing systems were mature enough to support the scientific community. But they werent ready for the enterprise needs of data analytics. Because of the lack of system support for big data systems at that time, there was a large number of systems created to store and process data. These systems were created according to different design principles and some of them thrived through the years while some didnt succeed. Because of the diverse nature of systems and tools available for data analytics, there is a need to understand these systems and their applications from a theoretical perspective. These systems are masking the user from underlying details, and they use them without knowing how they work. This works for simple applications but when developing more complex applications that need to scale, users find themselves without the required foundational knowledge to reason about the issues. This knowledge is currently hidden in the systems and research papers. The underlying principles behind data processing systems originate from the parallel and distributed computing paradigms. Among the many systems and APIs for data processing, they use the same fundamental ideas under the hood with slightly different variations. We can breakdown data analytics systems according to these principles and study them to understand the inner workings of applications. This book defines these foundational components of large scale, distributed data processing systems and go into details independently of specific frameworks. It draws examples of current systems to explain how these principles are used in practice. Major design decisions around these foundational components define the performance, type of applications supported and usability. One of the goals of the book is to explain these differences so that readers can take informed decisions when developing applications. Further it will help readers to acquire in-depth knowledge and recognize problems in their applications such as performance issues, distributed operation issues, and fault tolerance aspects. This book aims to use state of the art research when appropriate to discuss some ideas and future of data analytics tools.
内容简介:
目次:
全文链接:
读者对象:
实体信息
页码:
其它信息
原版ISBN:
书评:
扩展信息
相关附件