Practical Big Data Analytics: Hands-on techniques to implement enterprise analytics and machine learning using Hadoop, Spark, NoSQL and R
Nataraj Dasgupta
- 出版商: Packt Publishing
- 出版日期: 2018-01-15
- 定價: $1,480
- 售價: 8.0 折 $1,184
- 語言: 英文
- 頁數: 412
- 裝訂: Paperback
- ISBN: 1783554398
- ISBN-13: 9781783554393
-
相關分類:
Hadoop、NoSQL、Spark、SQL、大數據 Big-data、Machine Learning、Data Science
立即出貨 (庫存=1)
買這商品的人也買了...
-
$403深度學習入門之 PyTorch
-
$250深度學習精要 基於R語言
-
$474$450 -
$1,927Applied Text Analysis with Python: Enabling Language-Aware Data Products with Machine Learning
-
$480$379 -
$354$336 -
$281自動化測試 主流工具入門與提高
-
$301混沌工程實戰 手把手教你實現系統穩定性
-
$659$626 -
$654$621 -
$414$393 -
$1,200$948 -
$621使用 GitOps 實現 Kubernetes 的持續部署:模式、流程及工具
-
$654$621 -
$576機器學習項目交付實戰
-
$479$455 -
$714$678 -
$1,200$948 -
$594$564 -
$539$512 -
$490$387 -
$800$632 -
$780$616 -
$654$621 -
$419$398
相關主題
商品描述
Get command of your organizational Big Data using the power of data science and analytics
Key Features
- A perfect companion to boost your Big Data storing, processing, analyzing skills to help you take informed business decisions
- Work with the best tools such as Apache Hadoop, R, Python, and Spark for NoSQL platforms to perform massive online analyses
- Get expert tips on statistical inference, machine learning, mathematical modeling, and data visualization for Big Data
Book Description
Big Data analytics relates to the strategies used by organizations to collect, organize and analyze large amounts of data to uncover valuable business insights that otherwise cannot be analyzed through traditional systems. Crafting an enterprise-scale cost-efficient Big Data and machine learning solution to uncover insights and value from your organization's data is a challenge. Today, with hundreds of new Big Data systems, machine learning packages and BI Tools, selecting the right combination of technologies is an even greater challenge. This book will help you do that.
With the help of this guide, you will be able to bridge the gap between the theoretical world of technology with the practical ground reality of building corporate Big Data and data science platforms. You will get hands-on exposure to Hadoop and Spark, build machine learning dashboards using R and R Shiny, create web-based apps using NoSQL databases such as MongoDB and even learn how to write R code for neural networks.
By the end of the book, you will have a very clear and concrete understanding of what Big Data analytics means, how it drives revenues for organizations, and how you can develop your own Big Data analytics solution using different tools and methods articulated in this book.
What you will learn
- Get a 360-degree view into the world of Big Data, data science and machine learning
- Broad range of technical and business Big Data analytics topics that caters to the interests of the technical experts as well as corporate IT executives
- Get hands-on experience with industry-standard Big Data and machine learning tools such as Hadoop, Spark, MongoDB, KDB+ and R
- Create production-grade machine learning BI Dashboards using R and R Shiny with step-by-step instructions
- Learn how to combine open-source Big Data, machine learning and BI Tools to create low-cost business analytics applications
- Understand corporate strategies for successful Big Data and data science projects
- Go beyond general-purpose analytics to develop cutting-edge Big Data applications using emerging technologies
Who This Book Is For
The book is intended for existing and aspiring Big Data professionals who wish to become the go-to person in their organization when it comes to Big Data architecture, analytics, and governance. While no prior knowledge of Big Data or related technologies is assumed, it will be helpful to have some programming experience.
Table of Contents
- Too Big Or Not Too Big
- Big Data Mining For The Masses
- From Big Data to Data Analytics
- Big Data Mining & Hadoop
- Big Data Mining & NoSQL
- Big Data Mining & Spark
- Machine Learning For The Masses
- Machine Learning Deep Dive
- The Analytics Infrastructure
- Closing thoughts on Big Data
- Appendix