For years, the enterprise narrative around AI customer service has been built on a foundation of skepticism. Executives assumed customers hated bots and craved human empathy above all else. However, a landmark 2026 study from Ada and NewtonX has turned that script on its head.
The research, which surveyed 2,000 consumers and 500 enterprise decision-makers, reveals a startling truth: Consumers actually prefer AI agents. There is, however, one massive caveat—the AI must actually be able to solve the problem. In 2026, the “Agentic Customer Experience” (ACX) is no longer about being “always-on”; it’s about being “always-capable.”
The Preference for Speed Over Empathy
One of the most disruptive findings of the Ada study is the shift in consumer priorities. While traditional CX training has always prioritized human empathy, the modern consumer is significantly more pragmatic. According to the data, 59% of consumers now prefer an instant, 24/7 AI interaction over waiting for a human agent.
The hierarchy of needs in customer service has shifted. Accuracy and problem-solving ability now sit at the top, while empathy has fallen by the wayside. Consumers aren’t looking for a digital shoulder to cry on; they want their flight rebooked, their password reset, or their refund processed immediately. When an AI fails, it isn’t usually because it “felt” cold; it’s because of comprehension failures (74%) or capability gaps (56%). If the AI doesn’t understand the request or lacks the permissions to execute a solution, the “always-on” advantage disappears instantly.
Misaligned Priorities: Deflection vs. Resolution
The study highlights a significant “misalignment” between enterprise goals and consumer values. Currently, most businesses are optimizing their AI deployments for cost reduction, wait times, and ticket deflection. These are internal metrics designed to protect the bottom line.
Conversely, issue resolution—the single most important factor for the consumer—ranked a lowly seventh on the list of business priorities. This gap creates a dangerous friction point. While 92% of organizations plan to increase AI investment this year, many are essentially scaling a “broken” experience. If a business measures success by how many people didn’t talk to a human (deflection) rather than how many people actually got what they needed (resolution), they are building a faster way to erode brand trust.
Moving Toward the ACX Operating Model
To bridge this gap, Ada advocates for a shift toward the Agentic Customer Experience (ACX) Operating Model. This isn’t just a software update; it’s a structural redesign of how companies handle service. Unlike traditional “chatbots” that act as a bolt-on to existing support, an ACX model treats AI agents as a core part of the workforce—autonomous “digital employees” capable of reasoning, enforcing policy, and executing multi-step workflows.
The ACX model focuses on three pillars to ensure resolution:
- The Unified Reasoning Engine: Designing AI once and deploying it across voice, chat, and social ensures that the “brain” of the company remains consistent, regardless of the channel.
- Knowledge Mapping: Moving away from static FAQs and toward “AI-ready” content that the system can use to reason through complex problems.
- Continuous Coaching: Treating AI agents like human staff, where their performance is audited and improved systematically rather than left to “set and forget” automation.
The Visibility Crisis and the 2026 Talent Gap
Perhaps the most concerning statistic for CX leaders is that 55% of businesses currently lack the infrastructure to isolate AI performance. Most companies are still reporting on human and AI interactions in a single, tangled bucket. Without a clear separation of data, it is impossible to identify where the AI is breaking down or to establish a credible ROI baseline.
Furthermore, investment in technology is outpacing investment in people. The study found that 36% of CX leaders feel their internal teams are not adequately skilled to manage or “coach” AI agents. The transition to an agentic future requires a new set of emerging skills: agent dialogue design, integration engineering, and advanced knowledge management. Enterprises must scale their operational maturity in tandem with their financial investment if they hope to survive the “Resolution Gap.”
Final Verdict: The End of “Dabbling”
The 2026 landscape is a binary one: you are either a “Full Adopter” of agentic AI or you are falling behind. Research shows that satisfaction for companies stuck in “limited adoption” drops to just 36%, whereas those who move to full workflow integration report a 97% satisfaction rate.
The “always-on” era is over; the “always-resolved” era has begun. The enterprises that win won’t necessarily be those with the biggest AI budgets, but those with the most rigorous governance and a relentless focus on solving the customer’s problem the first time, every time.

