Editor’s note: The following is a guest post from Gabriela Vogel, VP analyst at Gartner.
Organizations are racing to unlock AI’s transformative potential, but the real bottleneck isn’t technical — it’s human readiness.
Technology surges ahead, but most leaders still underestimate the human cost, leaving their workforce searching for relevance in the future of work. If employees can’t envision themselves in tomorrow’s workplace, transformation stalls, regardless of how advanced technology is.
The scale of the challenge is clear: Recent Gartner research shows 56% of CEOs plan to delayer management in the next five years, yet 91% of CIOs aren’t tracking the skill shifts AI triggers.
More than 4 in 5 leaders don’t measure AI accuracy at all, while the “human in the loop” equation is collapsing in on itself. These numbers aren’t just statistics. They are evidence of strategic blindness.
AI value depends on people’s ability to adapt and thrive alongside intelligent machines. At the core is anthropomorphism — the instinct to see AI as almost human. Managed well, this approach drives adoption and innovation. Ignored, it sparks rivalry, replacement fears and disengagement.
Treating these dynamics as secondary isn’t just an oversight, it’s a strategic failure.
CIOs must confront five critical human barriers, which are deeply rooted behavioral reflexes and organizational dynamics. If left unaddressed, they will stall transformation, inflate costs and erode competitive advantage.
1. The AI dropout effect: Identity, anxiety and disengagement
When employees perceive AI as a threat to their value or identity, anxiety and withdrawal often follow.
This “AI dropout effect” is not mere resistance; it’s a rational reaction to uncertainty and perceived loss of status or fairness. Employees who feel at risk might disengage, burn out or leave, stalling transformation and undermining the value of AI initiatives.
CIOs must address these fears head-on: build empathy maps, hold open career conversations and track patterns of disengagement. Opting out is a signal leadership cannot afford to ignore. Future-fit role conversations should be explicit and those ready to adapt must be championed.
Sustained change requires that human, business and technology KPIs all show positive results for at least three to six months post-adoption.
2. Middle management meltdown: The disappearing middle
AI is reshaping the management landscape. Middle managers, long the brokers of knowledge and culture, now see their agency shrinking and their value questioned. The pressure to demonstrate clear outcomes from AI is rising.
To navigate this shift, CIOs and executive leaders must double down on what won’t change, providing clarity about enduring role expectations. Resistance should be acknowledged and used as a springboard for dialogue and support.
Involving managers in redesigning roles helps them craft relevance in their work. Redefining managerial heroism and celebrating those who shift from “gatekeeper” to “guide” is essential for building a culture where adaptation to AI is seen as a new form of leadership.
Failing to actively support managers as they build experience and new identities through this transition guarantees cultural erosion and lost institutional knowledge.
3. Behavioral blind spot: Skills, agency and the hidden cost of automation
As machines automate more tasks and mimic human abilities, the qualities we consider uniquely ours shift and sometimes fade. If organizations fail to monitor these changes, they risk losing critical capabilities without even noticing.
Behavioral byproducts of AI adoption — including skills atrophy, experience compression, emotional impacts, isolation and overdependence — are often invisible and untracked. Gartner finds that 91% of CIOs do not monitor these hidden shifts.
CIOs must assign real ownership for detecting and addressing behavioral impacts, creating cross-functional forums to identify and act on emerging risks. For every gain, they must track a behavioral change, making the invisible visible before blind spots become barriers.
If CIOs are not making these invisible impacts visible, they’re gambling with their organization’s future capability.
4. The perfection paradox: Unrealistic demands and stalled progress
A common trap is holding AI to superhuman standards while excusing human mistakes. Generative AI error rates are currently around 25%, yet 84% of CIOs are not tracking AI’s accuracy. The paradox: Perfection is demanded from AI, often without measuring or even understanding how human performance compares.
CIOs must determine baseline human accuracy for key tasks and use standardized data to set realistic expectations. AI accuracy should be tracked relentlessly, with context-specific metrics and error breakdowns.
Leadership must also challenge the myth that human-AI teams are always better. Sometimes, the best results come from one or the other, not both. Risk tolerance and red lines must be clear and collaboration pitfalls addressed through training and trust-building.
If CIOs are not measuring and comparing all options, they’re not making data-driven decisions. CIOs could also be leaving value, efficiency and competitive advantage on the table. Worse yet, they won’t even know where they’re losing.
5. Shadow AI: The risks and rewards of unsanctioned innovation
Employees turn to unsanctioned AI when official solutions are slow, unavailable or inadequate. This echoes previous waves of consumer technology, but with heightened risk: AI’s knowledge-based nature can expose sensitive intellectual property.
The deeper risk emerges when shadow AI persists out of fear of replacement. Employees enhance their capabilities in silence, signaling anxiety and resistance, not just ingenuity.
Rather than cracking down, CIOs should treat every instance of shadow AI as a data point on organizational trust. Make shadow AI visible and then valuable.
Leaders must create spaces for employees to share unsanctioned solutions and reward those who turn hidden hacks into best practices. Shadow users can become AI champions, helping to create official solutions and making their ingenuity visible and valued.