![]() Limited usage: Data with a predefined structure can only be used for its intended purpose, which limits its flexibility and usability.Accessible by more tools: Since structured data predates unstructured data, there are more tools available for using and analyzing structured data.With a basic understanding of the topic relative to the data, users can easily access and interpret the data. Easily used by business users: Structured data does not require an in-depth understanding of different types of data and how they function. ![]() Easily used by machine learning (ML) algorithms: The specific and organized architecture of structured data eases manipulation and querying of ML data.Their benefits are tied to ease of use and access, while liabilities revolve around data inflexibility: Pros Pros and cons of structured dataĮxamples of structured data include dates, names, addresses, credit card numbers, etc. By using a relational (SQL) database, business users can quickly input, search and manipulate structured data. Developed by IBM in 1974, structured query language (SQL) is the programming language used to manage structured data. Structured data - typically categorized as quantitative data - is highly organized and easily decipherable by machine learning algorithms. In this article, we’ll take a deep dive into both types so that you can get the most out of your data. Structured and unstructured data is sourced, collected and scaled in different ways, and each one resides in a different type of database. Some data is structured, but most of it is unstructured. A look into structured and unstructured data, their key differences and which form best meets your business needs.Īll data is not created equal. ![]()
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