What would an intelligent data platform look like?

Information that can understand itself and actively help developers could be in your future. Make sure your infrastructure is ready.


“With an intelligent data platform, you will prepare, manage, and provision more data, from more systems, in less time than with any other method.”

We live in a world that’s experiencing an exponential growth of new data sources and data types. So much so that the term “big data singularity” has emerged. This is the hypothetical point at which data enables machines to become more intelligent than their human handlers.

But to unlock the potential of this data, our information infrastructure must undergo a drastic redesign. An intelligent data platform is required to provide a limitless supply of clean, safe, secure, and reliable data. Otherwise, the typical lifecycle for a change request—the building, testing, and deployment—will be error prone, slow, and expensive.

There are two sides to this equation. One is the data itself, the other is the platform. Let’s start with the data itself.

How will we know when data is truly intelligent? For a start, it would have these attributes:

  • Trusted. The data is clean, safe, and connected. In other words, it is useful immediately.
  • Contextual. The data is rich in metadata and context that’s instantly accessible.
  • Helpful. The data will not only tell you about itself, it will help you find additional pieces of information that are related to it. Or recommend actions to enrich the data. Imagine the contextual shopping experience of Amazon.com, and then imagine your data as helpful as its recommendation engine.

It’s important to note that these attributes for smart data are part of a vision of the future. For data to be truly intelligent, there would have to be a new universal standard. This standard would ensure that the “trusted, contextual, secure, and helpful” metadata would be passed in a data container between users. In other words, no matter what ecosystem the data resides in, when it’s introduced into a new ecosystem, it will still live in its data container. It will stay “smart” regardless of where it lives.

Now, on to platform. Intelligent “data platforms”—where the data is not necessarily intelligent but the processes around it are—already exist in some form today.

To distinguish whether a data platform is intelligent, take data masking as an example. If an administrator has to decide what fields to mask and set up dynamic masking for those fields, then the platform is not intelligent. If, however, the platform highlights the fields that look like credit card numbers and suggests that those fields become masked, then the platform is intelligent.

In other words, an intelligent data platform relies on automation for tasks both mundane and complicated, and will free up the developer’s time. This way, developers can think more holistically about their project.

With an intelligent data platform, you will prepare, manage, and provision more data, from more systems, in less time than with any other method. You’ll get data that is freely yet securely shared and integrated, cleansed at will, and matched and correlated in real-time. The end result: more agile development and more effective business intelligence.


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