UBS Hainer’s Masking Tool
for BCV5 (their test data management solution) offers robust masking of Db2 for
z/OS data. I wrote about this capability previously on the blog last year (see Data
Masking: An Imperative for Compliance and Governance, November 12, 2018), and
if you are looking for a concise, yet thorough overview of the product’s data
masking capabilities I point you to that blog post.
So why am I talking
about data masking again? Well, it is a thorny problem that many organizations
are still struggling with. As much as 80% of sensitive data resides in environments
used for development, testing, and reporting. That is a lot of data that is
ripe for exposure.
Click to watch the video |
Data masking is not a simple task, and as the video helps to explain, there is much to consider. To effectively mask your data requires a well-thought-out process and method for implementation to achieve success. As such, a tool like BCV5 Masking Tool can simplify how you address your Db2 data protection requirements. It provides dozens of easy to use masking algorithms implemented using Db2 user-defined functions. It ensures that the same actual value is translated to the same masked value every time. And the value will be a plausible value that works the same as the data it is masking. The tool understands thing like referential integrity, unique constraints, related data, and so on.
Data masking effectively provides a solution to five key issues surrounding data – data breach, data loss, data hijacking, insecure data interface, and unauthorized data use by insiders in an organization.
ReplyDeleteIt reduces risks involved in data usage in a cloud environment.