On a recent Friday afternoon, a pharma company’s board sent a directive to their CIO: “We need to start using Claude. Another company in our portfolio is getting incredible value from it. Turn it on.”
By Monday, the CIO was expected to figure out how Claude worked, enable it, and show early progress. No governance, no policy updates, no enablement plan. Just: make AI happen.
If you work in security or IT, you can probably feel the pit in that person’s stomach.
This is how AI adoption is happening in a lot of organizations today: fast, reactive, and driven by top-down pressure.
And it exposes a problem many leaders have quietly lived with for years: we don’t have a simple, shared way to talk about the sensitivity of our data.
Without that, you cannot have a meaningful conversation about what is safe—or unsafe—to put into AI.
In this particular pharma company, information classification had a history.
A previous CIO tried to roll out an InfoClass program about a decade ago. It was painful and bureaucratic, with too many labels, too much theory, and not enough visible value. The verdict at the time: “This doesn’t help us. Shut it down.”
That opinion stuck. For years, the organization deprioritized information classification. It was treated as a failed experiment and, at best, a low-value compliance exercise.
But that decision had real consequences:
When the board decided AI needed to be “turned on,” the guidance to employees was supposed to be simple:
“You can put X types of data into Claude, but not Y types of data.”
That’s a reasonable goal. It’s how leaders think about risk: define the allowed and the prohibited, then educate the workforce.
But this organization had no common language to define X and Y. No practical classification scheme. No agreed-upon levels of sensitivity that mapped to real data examples in R&D, clinical, finance, or legal.
None of those options is a strategy. They’re just different flavors of risk-by-accident.
This is where information classification suddenly has newfound value. Not as a dusty compliance policy, but as the shared language that lets you operationalize AI safely.
The good news is that “information classification” does not have to mean a clunky, hierarchical, ex-government model with 10 labels, obscure codes, and TPS cover sheets (IYKYK)attached to everything.
That’s the version many leaders remember, and rightly, rejected.
A modern, AI-aware information classification program looks very different:
InfoClass might not be a “sexy” cybersecurity program but it has the potential to be a truly foundational one.
It’s helpful to zoom out for a moment. Information classification is not the whole story. It’s one pillar of a broader, modern data management layer that your cybersecurity program desperately needs.
When you do this right, classification becomes the organizing principle that ties together:
In other words, modern information classification is the semantic layer that lets you say: “These data classes can participate in AI; these cannot; and here is how our controls enforce that.”
If your data management program hasn’t been updated in years, AI is the forcing function that will expose all the cracks. It’s no longer enough to know you have “sensitive data somewhere.” You need to be able to express that sensitivity in a way humans and machines can both act on.
So how do you move from a half-remembered, failed InfoClass initiative to something modern and AI-ready?
Here’s a pragmatic approach:
Boards and executives are right to push for AI. The upside is real: better insights, faster decisions, more efficient operations.
But when that pressure lands on a CIO or CISO with no modern data management foundation: no simple information classification, no clear picture of where sensitive data lives, no linkage to DLP or access controls... the organization is essentially flying blind.
You shouldn’t have to choose between innovation and protection. A modern information classification program, embedded in a broader data management strategy, is how you get both.
It gives you the language to answer the board’s next AI question with confidence:
“Yes, we can turn it on. And here’s exactly what data can go into it, what can’t, and how we’re going to make sure our people and our technology respect that line.”
Modernize your Information Classification program and build a flexible data management system.