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Apache Hive Essentials

You're reading from   Apache Hive Essentials Immerse yourself on a fantastic journey to discover the attributes of big data by using Hive

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Product type Paperback
Published in Feb 2015
Publisher Packt
ISBN-13 9781783558575
Length 208 pages
Edition 1st Edition
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Author (1):
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Dayong Du Dayong Du
Author Profile Icon Dayong Du
Dayong Du
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Table of Contents (12) Chapters Close

Preface 1. Overview of Big Data and Hive 2. Setting Up the Hive Environment FREE CHAPTER 3. Data Definition and Description 4. Data Selection and Scope 5. Data Manipulation 6. Data Aggregation and Sampling 7. Performance Considerations 8. Extensibility Considerations 9. Security Considerations 10. Working with Other Tools Index

Introducing big data

Big data is not simply a big volume of data. Here, the word "Big" refers to the big scope of data. A well-known saying in this domain is to describe big data with the help of three words starting with the letter V. They are volume, velocity, and variety. But the analytical and data science world has seen data varying in other dimensions in addition to the fundament 3 Vs of big data such as veracity, variability, volatility, visualization, and value. The different Vs mentioned so far are explained as follows:

  • Volume: This refers to the amount of data generated in seconds. 90 percent of the world's data today has been created in the last two years. Since that time, the data in the world doubles every two years. Such big volumes of data is mainly generated by machines, networks, social media, and sensors, including structured, semi-structured, and unstructured data.
  • Velocity: This refers to the speed in which the data is generated, stored, analyzed, and moved around. With the availability of Internet-connected devices, wireless or wired, machines and sensors can pass on their data immediately as soon as it is created. This leads to real-time streaming and helps businesses to make valuable and fast decisions.
  • Variety: This refers to the different data formats. Data used to be stored as text, dat, and csv from sources such as filesystems, spreadsheets, and databases. This type of data that resides in a fixed field within a record or file is called structured data. Nowadays, data is not always in the traditional format. The newer semi-structured or unstructured forms of data can be generated using various methods such as e-mails, photos, audio, video, PDFs, SMSes, or even something we have no idea about. These varieties of data formats create problems for storing and analyzing data. This is one of the major challenges we need to overcome in the big data domain.
  • Veracity: This refers to the quality of data, such as trustworthiness, biases, noise, and abnormality in data. Corrupt data is quite normal. It could originate due to a number of reasons, such as typos, missing or uncommon abbreviation, data reprocessing, system failures, and so on. However, ignoring this malicious data could lead to inaccurate data analysis and eventually a wrong decision. Therefore, making sure the data is correct in terms of data audition and correction is very important for big data analysis.
  • Variability: This refers to the changing of data. It means that the same data could have different meanings in different contexts. This is particularly important when carrying out sentiment analysis. The analysis algorithms are able to understand the context and discover the exact meaning and values of data in that context.
  • Volatility: This refers to how long the data is valid and stored. This is particularly important for real-time analysis. It requires a target scope of data to be determined so that analysts can focus on particular questions and gain good performance out of the analysis.
  • Visualization: This refers to the way of making data well understood. Visualization does not mean ordinary graphs or pie charts. It makes vast amounts of data comprehensible in a multidimensional view that is easy to understand. Visualization is an innovative way to show changes in data. It requires lots of interaction, conversations, and joint efforts between big data analysts and business domain experts to make the visualization meaningful.
  • Value: This refers to the knowledge gained from data analysis on big data. The value of big data is how organizations turn themselves into big data-driven companies and use the insight from big data analysis for their decision making.

In summary, big data is not just about lots of data, it is a practice to discover new insight from existing data and guide the analysis for future data. A big-data-driven business will be more agile and competitive to overcome challenges and win competitions.

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