November 19, 2024
Structured and Unstructured Data: A Simple Guide for Data Security
Marketing
November 19, 2024
Marketing

Organizations generate more data than ever before while introducing a new world of data-related challenges. Now, businesses across all industries must have a strong security posture to prevent data from falling into the wrong hands. However, navigating the difference between structured and unstructured data in the context of security remains a challenge. One study found that between 80-90% of data is unstructured information, which means most companies have a wealth of information that may be unprotected or inadequately protected.Structured data is relational and easier to understand, while unstructured data is non-relational and can struggle to accurately identify, classify, and protect. To further complicate the matter, semi-structured data and mainframe data must also be protected.So, how can organizations gain better control of their entire data estate to protect it adequately? We’ll be diving into these two primary data types, how they vary, and how they relate to data security.
Structured data is highly organized and easily made sense of by machine learning algorithms and humans alike. Structured data emerged from the creation of structured query language (SQL), a programming language used for managing structured data.As such, an easy way to determine structured vs. unstructured data is to think about if it can easily fit in a table. Users can quickly input, search, and change structured data with ease, which has made it the go-to data type for decades.
Structured data has been the cornerstone of computing for decades, which means it has plenty of benefits and utility that are firmly established, including:
What are the drawbacks of structured data? While it has plenty of benefits, it’s not perfect, with drawbacks such as:
Unstructured data, which you can consider qualitative data, cannot be processed and analyzed with conventional data analysis methodologies. Structured data does not have a predefined data model, which makes it harder to work with traditional tools.The importance and prevalence of unstructured data is changing rapidly. Discovering, classifying, and protecting unstructured data is necessary to prevent breaches and maintain compliance.
Unstructured data can be text, social media posts, and other mobile activity that can’t be easily represented in a table. There are several benefits to this type of data, including:
We’ve touched on some of the drawbacks of unstructured data. So, let’s dive deeper into some of these drawbacks, such as:
We’re focusing on structured and unstructured data, but it’s important to note that there are other types of data that don’t fit in these two overarching categories — and they still need to be protected.Semi-structured data is a bridge of sorts between structured and unstructured data. Semi-structured data uses metadata to identify specific data characteristics and often comes in JSON or CSV files. Semi-structured data can be used with both structured and unstructured data to introduce the additional metadata functionality to data storage.Mainframe data presents an even greater challenge as its native format, VSAM, isn’t easily accessed by most tools and can often be left out of data security. Having security tools capable of accessing, discovering, and classifying VSAM data sets is mission-critical. Similarly, mainframe data is a treasure trove of insights that has generally held sensitive customer information for many years, which would be critical to data/AI projects.
Data security isn’t optional — a single breach is costly and can cause permanent damage to your company’s reputation. Structured and unstructured data must be included in your data security posture management (DSPM) program; otherwise, your entire operating ability may be at risk. So, we’ll be breaking down key data security challenges and how you can address them to help protect the entire data estate, which are:
Structured and unstructured data both need to be discovered, classified, and protected to avoid a devastating data breach or cyber-attack. Alongside semi-structured and mainframe data, you can’t afford to leave any corner of your data estate in the dark.Inventa by 1touch is an industry-leading data management tool that simplifies everything from discovery to classification. Our platform is ready to play a foundational role in your overarching security program. Inventa discovers new data throughout your IT ecosystem so every byte can be discovered and protected.Looking for an effective data management and intelligence solution to protect your most valuable assets? Book a demo today to learn more about how Inventa can enhance your security and compliance initiatives.
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