에너지경제연구원 전자도서관

로그인

에너지경제연구원 전자도서관

자료검색

  1. 메인
  2. 자료검색
  3. 통합검색

통합검색

단행본

Practical Big Data Analytics: Hands-on techniques to implement enterprise analytics and machine learning using Hadoop, Spark, NoSQL and R

발행사항
Birmingham : Packt Publishing, 2018
형태사항
ⅶ,396p. ; 24cm
서지주기
Includes Index
소장정보
위치등록번호청구기호 / 출력상태반납예정일
이용 가능 (1)
자료실E207434대출가능-
이용 가능 (1)
  • 등록번호
    E207434
    상태/반납예정일
    대출가능
    -
    위치/청구기호(출력)
    자료실
책 소개

Key Features

  • A perfect companion to boost your skills and apply techniques to store, process and analyse data for informed business decisions.
  • Choose the best of the tools such as Hadoop, R, Python, Spark, NoSQL platforms to do Massive online Analysis.
  • Follow an experts footsteps to learn statistical inference, machine learning, mathematical modelling and data visualisation.

Book Description

Big Data Analytics relates to the strategies used by organizations to collect, organize and analyze large amounts of data to bring out hidden patterns and insights from the data which otherwise cannot be analyzed through traditional systems.

Through this book, you'll learn to setup big data environment on the AWS/Azure platform and configure various tools for performing analytical operations on big data table comprising of millions of records. Furthermore, you'll learn to explore various other components of hadoop ecosystem such as YARN, MapReduce, HDFS, HIVE, etc to perform various analytical operations. As you progress further, you'll be introduced to NoSQL databases for efficient querying and storage of data. To scale up processing time you'll learn to integrate Spark in to your environment and understand how its components - Spark Streaming, MLLib, etc can be used for quicker computations.

Once you have gained mastery over mining and organizing the data, you'll learn to derive ad interpret meaningful analysis of data using predictive, prescriptive, statistical and other form of machine learning techniques. You'll learn to implement various supervised, unsupervised and deep learning models with the help of real-world examples to gain detailed sense of understanding of machine learning is in practice. By the end of the book, you will have a very clear and concrete understanding of what Big Data Analytics means, what tools and techniques organizations are using to implement their Big Data platforms, how they are driving revenues and how users can develop their own solution based on the step-by-step approach articulated in the book.

What you will learn

  • Understand the (Real) meaning of Big Data Analytics and how it can help you in transforming your organization
  • Provide a concrete framework of formulating a custom winning Big Data strategy for the enterprise
  • Discuss industry-wide trends from real-world deployments of Big Data platforms across the industry
  • Discuss how C-Level management in large global organisations are approaching their Big Data strategy
  • Provide hands-on examples in various sections for more seasoned software professionals
  • Simple lucid explanations to demystify confusing terms commonly used in Big Data Analytics & Data Science
  • Provide step-by-step explanation of various Big Data topics in a chronological order but each chapter can also be read independently due to the modular organization of the chapters
  • Develop, lead and put together a cost-effective yet robust enterprise-wide Analytics platform
  • Going beyond general-purpose analytics to develop high-performance cutting edge analytic capabilities
목차
Chapter 1: Too Big or Not Too Big Chapter 2: Big Data Mining for the Masses Chapter 3: The Analytics Toolkit Chapter 4: Big Data With Hadoop Chapter 5: Big Data Mining with NoSQL Chapter 6: Spark for Big Data Analytics Chapter 7: An Introduction to Machine Learning Concepts Chapter 8: Machine Learning Deep Dive Chapter 9: Enterprise Data Science Chapter 10: Closing thoughts on Big Data Appendix- External Data Science Resources Index