How to Turn AI From Threat to Teammate
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Key Takeaways
- Executives can declare AI mandatory, but without middle managers translating that mandate into actionable guidance, adoption often stalls.
- The gap between what AI could do and what it actually does often comes down to a disconnect between available data and employee comfort using it.
- Fear and ambiguity are slowing AI adoption. It’s on leaders to clarify how they plan to use AI in their business and reassure employees they’re not being replaced.
Word on the street right now is that the executives who see AI as just another tool are already behind. In an effort to stay ahead of the game, many are jump-starting wider company AI programs, embedding it into strategic decision-making and embracing the idea of a “digital teammate” that works alongside their employees. The problem is, while AI may be positioned at the center of boardroom conversations, that mindset isn’t consistently reaching the rest of the organization.
According to Slingshot’s Digital Work Trends Report, 86% of C-suite executives believe AI usage is required in their company operations, yet fewer than half (49%) of middle managers are reinforcing that expectation with their teams. This gap reveals a broader disconnect between executive ambition and day-to-day execution. AI may be a part of workplace strategy, but for many employees, it still feels optional and disconnected from how their performance is actually measured.
As CEO of Infragistics, I’ve seen firsthand how a strategy that is agreed upon by the executive board can lose weight when passed down the line if goals aren’t communicated to teams properly. Leaders invest in technology and have an image of how it will completely transform their company. But if those priorities aren’t transparently shared or woven into how teams actually work, the dream will never become reality.
Here are three reasons the AI mandate isn’t sticking — and what organizations can do to close the gap.
AI strategy is top-down, but adoption is bottom-up
Executives can declare AI mandatory, but without middle managers translating that mandate into actionable guidance, adoption often stalls.
For managers who already have so much on their plates, learning a new tool and then not only teaching others how to leverage it but also monitoring them to make sure they are using it correctly may feel like more trouble than it’s worth. Especially if they aren’t seeing immediate results. Similarly, many employees feel comfortable in their ways and, as a result, aren’t leaning into AI use despite its potential.
What managers and employees alike don’t necessarily understand is that AI won’t show productivity gains overnight. Slingshot’s report found that only 2% of employees believe they can’t do their job without AI. And executives don’t want them to. The reality is that AI needs to be combined with human intelligence — and training the AI on industry expertise takes some time. The 54% of employees who believe AI is helpful but not critical can see its potential; they just need the education to understand how to take it a step further.
That’s where higher executives come in. Before full AI adoption can be trickled down to the entire organization, middle managers need to be equipped with tailored AI training, like role- or team-specific examples, and clear performance expectations. Managers should understand how to use AI themselves and also how to coach their teams on integrating the tools into daily routines. This includes clarifying which tasks AI should support, how to train AI for optimal results — going beyond generic prompts — and how AI fits into performance metrics. When that happens, they’ll be able to properly educate and help employees. From there, teams will gain confidence and adoption will spread more organically.
Companies talk about AI, but not about data behind it
The gap between what AI could do and what it actually does often comes down to a disconnect between available data and employee comfort using it. AI can only be as effective as the information it’s trained on, yet many employees don’t feel confident using data in their day-to-day work. A total of 70% of executives believe employees are constantly relying on data to make decisions, but only 31% of employees say they actually do. Many still lean on personal experience (29%) or wait for a data analyst (27%) to provide insights.
Data readiness challenges also go beyond skills. In some organizations, data is unstructured, spread across multiple systems or poorly documented. Employees may also not even know what data exists, let alone how to apply it to their workflows.
To fix this, organizations should start by making data literacy a core part of AI adoption. Employees need practical guidance on what data is available, where it live