Characteristics of Big Data: Types & Examples - Bay Atlantic University - Washington, D.C. (2024)

Table of Contents
  1. What is Big Data?
  2. Types of Big Data
    1. Structured data
    2. Unstructured data
    3. Semi-structured data
  3. Characteristics of Big Data
    1. Volume
    2. Variety
    3. Velocity
    4. Value
    5. Veracity
  4. Frequently Asked Questions
    1. What are the key characteristics of big data?
    2. What are the main types of big data?
    3. What is the significance of big data in business and decision-making?
    4. How is big data managed and analyzed?

Our world has never been more technologically advanced. Technology is continuously bombarding us in all aspects of our lives. Mobile phones, social networks, streaming videos, and IoT (Internet of Things) have all contributed to the massive growth in data in recent decades.

If we can exploit, process, and show it properly, these data can become a useful means of imparting information and growing an organization. For example, we can figure out why a company ranks where it does in relation to competitors, make forecasts for future sales, and gain extensive market knowledge.

This article looks at the fundamentals of Big Data by going through the core principles, applications, and tools that any aspiring data scientist should be familiar with.

What is Big Data?

Big Data, a popular term recently, has come to be defined as a large amount of data that can’t be stored or processed by conventional data storage or processing equipment. Due to the massive amounts of data produced by human and machine activities, the data are so complex and expansive that they cannot be interpreted by humans nor fit into a relational database for analysis. However, when suitably evaluated using modern tools, these massive volumes of data provide organizations with useful insights that help them improve their business by making informed decisions.

Types of Big Data

As the Internet age continues to grow, we generate an incomprehensible amount of data every second. So much so that the number of data floating around the internet is estimated to reach 163 zettabytes by 2025. That’s a lot of tweets, selfies, purchases, emails, blog posts, and any other piece of digital information that we can think of. These data can be classified according to the following types:

Structured data

Structured data has certain predefined organizational properties and is present in structured or tabular schema, making it easier to analyze and sort. In addition, thanks to its predefined nature, each field is discrete and can be accessed separately or jointly along with data from other fields. This makes structured data extremely valuable, making it possible to collect data from various locations in the database quickly.

Unstructured data

Unstructured data entails information with no predefined conceptual definitions and is not easily interpreted or analyzed by standard databases or data models. Unstructured data accounts for the majority of big data and comprises information such as dates, numbers, and facts. Big data examples of this type include video and audio files, mobile activity, satellite imagery, and No-SQL databases, to name a few. Photos we upload on Facebook or Instagram and videos that we watch on YouTube or any other platform contribute to the growing pile of unstructured data.

Semi-structured data

Semi-structured data is a hybrid of structured and unstructured data. This means that it inherits a few characteristics of structured data but nonetheless contains information that fails to have a definite structure and does not conform with relational databases or formal structures of data models. For instance, JSON and XML are typical examples of semi-structured data.

Characteristics of Big Data

Characteristics of Big Data: Types & Examples - Bay Atlantic University - Washington, D.C. (1)

As with anything huge, we need to make proper categorizations in order to improve our understanding. As a result, features of big data can be characterized by five Vs.: volume, variety, velocity, value, and veracity. These characteristics not only assist us in deciphering big data but also gives us an idea of how to deal with huge, fragmented data at a controllable speed in an acceptable time period so that we can extract value from it, do real-time analysis, and respond promptly.

Volume

The prominent feature of any dataset is its size. Volume refers to the size of data generated and stored in a Big Data system. We’re talking about the size of data in the petabytes and exabytes range. These massive amounts of data necessitate the use of advanced processing technology—far more powerful than a typical laptop or desktop CPU. As an example of a massive volume dataset, think about Instagram or Twitter. People spend a lot of time posting pictures, commenting, liking posts, playing games, etc. With these ever-exploding data, there is a huge potential for analysis, finding patterns, and so much more.

Variety

Variety entails the types of data that vary in format and how it is organized and ready for processing. Big names such as Facebook, Twitter, Pinterest, Google Ads, CRM systems produce data that can be collected, stored, and subsequently analyzed.

Velocity

The rate at which data accumulates also influences whether the data is classified as big data or regular data. Much of this data must be evaluated in real-time; therefore, systems must be able to handle the pace and amount of data created. The processing speed of data means that there will be more and more data available than the previous data, but it also implies that the velocity of data processing needs to be just as high.

Value

Value is another major issue that is worth considering. It is not only the amount of data that we keep or process that is important. It is also data that is valuable and reliable and data that must be saved, processed, and evaluated to get insights.

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Veracity

Veracity refers to the trustworthiness and quality of the data. If the data is not trustworthy and/or reliable, then the value of Big Data remains unquestionable. This is especially true when working with data that is updated in real-time. Therefore, data authenticity requires checks and balances at every level of the Big Data collecting and processing process.

The world around us is continuously changing; we now live in a data-driven era. From social media posts to the pictures we upload, big data applications are everywhere. Since Big Data is being created on a massive scale, it could become an important asset for many companies and organizations, helping them to come up with new insights and enhance their businesses.

Frequently Asked Questions

What are the key characteristics of big data?

Big data is typically characterized by the 3Vs: Volume (the sheer amount of data), Velocity (the speed at which data is generated and processed), and Variety (the diversity of data types and sources).

What are the main types of big data?

Big data can be classified into structured, semi-structured, and unstructured data. Structured data is highly organized and fits neatly into traditional databases. Semi-structured data, like JSON or XML, is partially organized, while unstructured data, such as text or multimedia, lacks a predefined structure.

What is the significance of big data in business and decision-making?

Big data is crucial for businesses to gain insights into customer behavior, market trends, and operational efficiency. It enables data-driven decision-making, helps in predictive analytics, and can lead to a competitive advantage in various industries.

How is big data managed and analyzed?

Big data is managed through storage and processing technologies. It’s analyzed using data mining, machine learning, and other analytical tools to extract valuable insights.

Characteristics of Big Data: Types & Examples - Bay Atlantic University - Washington, D.C. (2024)

FAQs

What are the characteristics of the big data? ›

Big data is a collection of data from many different sources and is often describe by five characteristics: volume, value, variety, velocity, and veracity.

What are the five main and innate characteristics of big data? ›

The 5 V's of big data (velocity, volume, value, variety, and veracity) are the five main and innate characteristics of big data. Knowing the 5 V's allows data scientists to derive more value from their data while also allowing the scientists' organization to become more customer-centric.

What is big data and types? ›

Big data is defined as a complex and voluminous set of information comprising structured, unstructured, and semi-structured datasets, which is challenging to manage using traditional data processing tools. It requires additional infrastructure to govern, analyze, and convert into insights.

What are the characteristics of big data PDF? ›

intelligence, big analytics, big infrastructure, big service, big value, and big market. presenting a unified framework. The framework reveals that 4 Bigs (i.e. big volume, big velocity, big variety, and big veracity) are fundamental characteristics of big data.

What are some examples of big data? ›

Big Data Examples to Know

Transportation: assist in GPS navigation, traffic and weather alerts. Government and public administration: track tax, defense and public health data. Business: streamline management operations and optimize costs. Healthcare: access medical records and accelerate treatment development.

Which of the following are four characteristics of big data? ›

Most people determine data is “big” if it has the four Vs—volume, velocity, variety and veracity.

What is big data in simple answer? ›

What exactly is big data? The definition of big data is data that contains greater variety, arriving in increasing volumes and with more velocity. This is also known as the three “Vs.” Put simply, big data is larger, more complex data sets, especially from new data sources.

What are the main components of big data? ›

The three major components of big data are: Volume (large amount of data) Velocity (high speed of data generation) Variety (diverse data formats)

What is the main source of big data? ›

Main sources of big data can be grouped under the headings of social (human), machine (sensor) and transactional. Social (human) – this source is becoming more and more relevant to organisations. This source includes all social media posts, videos posted etc.

Which is not a characteristics of big data? ›

Answer: The correct answer is option D (can be analyzed with traditional spreadsheets). Big data cannot be analyzed with traditional spreadsheets or database systems like RDBMS because of the huge volume of data and a variety of data like semi-structured and unstructured data.

What are the characteristics of big and small data? ›

Big data is the large picture that encompasses many different types of data and is mainly unstructured. Small data is the small picture. It is structured, focused, and easily interpreted.

What are the four common characteristics of big data quizlet? ›

There are actually 4 measurable characteristics of big data we can use to define and put measurable value to it. Volume, Velocity, Variety, and Veracity.

What are the 4 V characteristics of big data? ›

Big Data is generally defined by four major characteristics: Volume, Velocity, Variety and Veracity.

What are the characteristics of big data quizlet? ›

The three characteristics of big data are the three V's: volume, variety, and velocity. Volume describes how Big Data can be billions of rows and millions of columns. 'Variety' reflects how disparate the data sources, format, and structure can be within BD.

What are the 5 P's of big data? ›

This article will provide you with the five key elements: purpose, people, processes, platforms and programmability [1], and how you can benefit from these in your projects.

What are the 7 V's of big data? ›

The Seven V's of Big Data Analytics are Volume, Velocity, Variety, Variability, Veracity, Value, and Visualization.

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