In 2022, over 422 million people were impacted by data breaches in the USA, alone. Phishing, ransomware, and denial of service (DOS) attacks are some of the common ways cybercriminals lure and attack their victims, and are all top concerns for IT executives. Data masking can help protect you and your customers against cybersecurity threats. Let’s find out how.
What is data masking?
Data masking is a process that modifies sensitive data and renders it useless to potential intruders. Your data remains usable to you and your company and can be transmitted between systems and used inside and outside your production environments. It keeps confidential information safe and gives you a way to share information with your partners and others outside your organization without compromising sensitive information.
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Keep all of your information in one place, and choose how to mask the data you need secured.
What types of data should be masked?
Whether you’re just starting out or evaluating your data, consider the following types of data. Some are obvious, such as health information and credit card numbers, while others, such as inventions, are less so. Here are four top candidates for data masking:
- Personally identifiable information, such as addresses and social security numbers.
- Protected health information, such as insurance data, lab results, health conditions, and medical histories.
- Financial information, such as credit card details, bank account information, and passwords
- Intellectual property, which includes patents, copyrighted materials, designs, and specifications.
3 types of data masking
Once you’ve identified the data across your organization that needs to be masked, consider which of these data masking approaches to use.
- Static data masking creates a duplicate copy of a production database with masked data. You can then use the masked database copy for software development, testing or to train others outside your organization without risking data breaches.
- Dynamic data masking changes information coming from the source database as a user accesses it. The masking happens in real time, but only as the data is delivered to the user (e.g. while viewing medical records). When using this approach, masked data is never stored in a new database, and the original data is unchanged.
- On-the-fly data masking modifies source data in real time as the data is moved to a new location, such as a testing or development system. This enables companies to mask data that is continuously streamed from a production environment to a secondary environment. This type of data masking is ideal if your business continuously deploys new software and has heavy integrations.
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Top data masking techniques
The next step in masking your data is deciding which technique you’ll use to obscure sensitive data. For example, you may want to replace identifiable details with symbols or characters, reorder or randomize sensitive data, scramble data, or delete sensitive values.
Because masked data is typically used for testing or sharing, it doesn’t matter that the original data is obscured or changed. Data masking is typically a one-way process. Masked data has no value to hackers, and unlike encrypted data, which needs to be decrypted, doesn’t need to return to its original form.
There are a variety of algorithms for data masking. Here are some of the most common:
- Anonymization, which scrambles a field’s contents into unreadable results,
- Data substitution, in which new values are substituted for the actual ones, and
- Scrambling, in which random characters obscure the original content.
Data masking best practices
Data masking is an ongoing process that requires careful planning, analysis, and refining. Let’s take a look at these data masking best practices.
1. Determine your project scope
Start by deciding what data needs to be masked: credit card information, health information, intellectual property, or personally identifiable information. Identify the fields in your database or system that need to be masked.
2. Choose your preferred techniques
Decide on data masking techniques for each type of data by considering where it’s stored, how it’s used, and how sensitive it is. A large organization will need various masking tools for different data types. Don’t forget to make sure you understand how this data is used, what it’s linked to, and who has access to it.
3. Run data masking and test your results
Test the result of data masking to ensure you’re achieving the expected outcome. Then examine your masked data to make sure it can’t be reverse-engineered. Start with smaller test datasets to verify your processes.
4. Create an ongoing data governance strategy
Once you have a data masking process in place, create an audit process to make sure data masking continues to function as expected. You’ll also want to develop a policy that defines how data masking should be used, where it should be applied, and who has access to your algorithms. Lastly, train your employees on the importance of data masking and the importance of protecting your company’s and your customers’ data.
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Data masking considerations
Data masking is a balance between altering data enough so that it’s secure while retaining its characteristics so it’s useful. It shouldn’t be daunting, but you may come up against constraints when you try to create a usable masked copy of your production data. This is why it’s important to understand the source data and how the masked data will be used.
To decide the appropriate level of data masking, consider these data masking constraints:
- Preserving the format: It may be important to maintain the format of some data fields, such as dates or other fields with specific structures.
- Gender identification: If the dataset to be masked includes gender information, you may want to consider identifying and classifying male, female, and non-binary names, so you can replace them with alternatives that preserve the original gender distribution.
- Semantic integrity: When masking data, it’s important that the masked data always falls into the range of permitted values. For example, you want to make sure that phone number fields only contain numbers.
- Uniqueness: Data is unique and should stay that way after masking. Depending on how it will be used, make sure the masked data keeps the same average value as the original data, or that the distribution of the data values is similar to that of the original.
Choosing the best data masking solution
The right data masking solution will help you easily secure your data against theft and uphold any corporate or regulatory requirements for data privacy. When selecting a data masking solution, look for one that:
- Provides consistency across databases and data environments. Support for referential integrity is important when working with multiple databases. For example, if you’re masking a social security number that is linked across multiple datasets, the original SSN will need to be changed to the same masked number in each dataset.
- Generates invented (not real), but realistic data. This ensures that data is usable in testing but is of no value to thieves.
- Secures your data by using irreversible data masking techniques and keeping those techniques separate from the masked data.
- Is flexible, scalable, and repeatable. In many cases, data masking is done repeatedly, over time, as corporate data changes and new sets of updated masked data are needed.
Data masking is ideal when you need to use or share data but must protect it for privacy and security reasons. It can reduce risk in both on-premises and cloud environments, and it is one of the most important tools that helps keep your data secure — building trust with your customers and partners.