What Are the Different Types of Data? (2024)

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In this article, we explore the different types of data, including structured data, unstructured data and big data.

Data is information of any kind. In the context of business and computing, we’ll deal (mostly) with information that’s in a machine-readable format. This is known as structured data.

Structured data

Structured data adheres to a pre-defined data model. This model describes how data is recorded, and it defines the attributes and provides information about the data type (e.g. name, date, number) and restrictions on their values (e.g. number of characters). This level of organisation means that data can be entered, stored, queried, or analysed by machines.

Structured data includes:

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  • names
  • dates
  • phone numbers
  • currency or prices
  • heights or weights
  • latitude and longitude
  • word count or file size of a document
  • credit-card numbers
  • product names or numbers
  • transaction information.

You’ll often find structured data arranged in a tabular format (sometimes described as rectangular), where columns represent attributes (or variables) and each row represents a record. The intersection of a column and row (usually called a cell), contains the value (or observation) about that attribute for that record.

Unstructured and semi-structured data

Unlike structured data, unstructured data requires human interpretation. Consider a block of text. Computers can read each word, or sentence, but they can’t (yet) determine the meaning or tone of the text without human intervention. As you’ll discover later in the course, data scientists are trying to solve this problem with machine learning and other types of artificial intelligence.

Other examples of unstructured data include:

  • images (human- and machine-generated)
  • video files
  • audio files
  • social-media posts
  • product reviews
  • messages sent by SMS or through online services.

Some data, such as email, is considered to be semi-structured. Email headers contain metadata such as the date, language, and recipient’s email address, which are all structured data. But the email body, which contains your message, is unstructured.

Big data

The term ‘big data’ is used to describe large, complex data sets. Big data sets have been around since the 1960s; however, in the last 20 years there has been a considerable increase in the amount of data being driven, or made available, especially by large online services (YouTube, Netflix, Salesforce etc.). On top of this, the IoT is a new source of big data, as connected devices capture and collate data on customer use and product performance.

Big data has three key properties: volume, variety, and velocity.

What Are the Different Types of Data? (2)

Each of these three presents unique challenges.

  1. Volume: Data sets contain vast quantities of information that put high demands on systems used for storing, manipulating, and processing the information.
  2. Variety: Until recently, spreadsheets, text files, and databases were the main sources of data for most applications. The increase in big data has brought about a diversity in the type and structure of data being analysed. It’s common for systems to process data from many sources, including emails, images, video, audio, readings from IoT devices, and even scanned PDF documents. This variety can pose issues when storing data, extracting information (‘mining’), and for analysis.
  3. Velocity: Vast quantities of data are being generated faster than ever, presenting challenges for analysts as more industries use this information. The ability to make instant decisions based on up-to-date information can make or break a business.
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What Are the Different Types of Data? (2024)

FAQs

What are the different types of data in Algebra 1? ›

Quantitative data is numerical data. Qualitative data is non-numerical data. Discrete data is data represented by a specific set of numbers that are typically whole numbers. Continuous data is data that can be measured.

What are the different types of data used in a research study? ›

Research data can take many forms. One person's work can be another person's research data. Data can include moving images, numerical data, pictures, music scores, sound recordings, interview transcripts, experimental results, programming code and much more.

What are the different types of data sources and explain them? ›

Data can be gathered from two places: internal and external sources. The information collected from internal sources is called “primary data,” while the information gathered from outside references is called “secondary data.”

Which are the 3 main types of data? ›

In this article, we explore the different types of data, including structured data, unstructured data and big data. Data is information of any kind. In the context of business and computing, we'll deal (mostly) with information that's in a machine-readable format.

What are the 4 types of data types? ›

4 Types Of Data- Nominal, Ordinal, Discrete And Continuous.

What is a data type in math? ›

A data type is characterized in mathematical terms by: A domain, i.e., a set of possible values (e.g., integer numbers, real numbers, etc.); A set of operations on the elements of the domain (e.g., sum, multiplications, etc.); A set of literals, denoting mathematical constants (e.g., 23).

What are the two main types of data? ›

There are two general types of data – quantitative and qualitative and both are equally important.

What are the two main types of data in math? ›

Quantitative and qualitative data both provide valuable insights, and they don't conflict with each other. Using both types of data provides a more complete picture.

Are the basic building blocks of qualitative data? ›

Answer: The fundamental building elements of qualitative data are categories.

What are the core elements of a dissertation? ›

These include: Abstract, Table of Contents, Acknowledgements, Introduction, the Literature Review, Methodology, Data Presentation and Analysis, Conclusion and Suggestion. ...

What are the four data collection procedures? ›

The main techniques for gathering data are observation, interviews, questionnaires, schedules, and surveys.

What are the five methods of data collection? ›

The 5 most common methods for data gathering are, (a) Document reviews (b) Interviews (c) Focus groups (d) Surveys (e) Observation or testing. While each has many possible variations, we will discuss their typical use here. Here are some basic principles to keep in mind when selecting methods.

How to do a data gathering procedure? ›

6. What is involved in collecting data – six steps to success
  1. Step 1: Identify issues and/or opportunities for collecting data. ...
  2. Step 2: Select issue(s) and/or opportunity(ies) and set goals. ...
  3. Step 3: Plan an approach and methods. ...
  4. Step 4: Collect data. ...
  5. Step 5: Analyze and interpret data. ...
  6. Step 6: Act on results.

What are the 5 types of data in data structure? ›

The data elements are linked to several items. A linear data structure can be an array, a stack, a linked list, or a queue. Non-linear data structures include trees and graphs. The linear data structure consists of a single level.

What are the 4 types of data in statistics with examples? ›

It is also known as numerical data and includes statistical data analysis. Examples: height, water, distance, and so on. We can further subdivide quantitative data and qualitative data into 4 subtypes as follows: nominal data, ordinal data, interval data, and ratio data.

How many data types are? ›

Most modern computer languages recognize five basic categories of data types: Integral, Floating Point, Character, Character String, and composite types, with various specific subtypes defined within each broad category.

What are the two major types of data? ›

There are two general types of data – quantitative and qualitative and both are equally important. You use both types to demonstrate effectiveness, importance or value.

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