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The AI Readiness Gap Series: Why Normalization Is the Most Skipped, and Most Essential, Phase of AI Adoption

April 30, 2026
By Zack Kavanaugh

This is the second installment in a series on what it takes to close the gap between AI investment and tangible business impact.

In the first piece, I argued that the real barrier to AI adoption is not the technology itself. It is the human side of change. You can have the tools, investment and strategic urgency — and still fall short if your people are not ready to come with you.

A new data point from Harvard Business Review reinforces just how widespread this challenge has become. In its annual AI & Data Leadership Executive Benchmark Survey, 99% of respondents said investments in data and AI are a top organizational priority.

And yet, 93% identified human issues — culture and change management — as the key challenge to AI adoption, the highest percentage in the survey’s 15-year history.

That is the paradox organizations are facing right now. We have never been more aligned on the importance of AI, and we have never been clearer about what is standing in the way.

So, what do we do about it?

That is what this series is for. In forthcoming posts, I will go deeper into each phase of the AI adoption continuum I introduced in the first piece, starting with the one most organizations rush past: normalization.

What Normalization Means

Normalization is not a communications campaign. It is not a CEO video about the future of work. And it is not a training session scheduled before a platform goes live.

It is the deliberate, ongoing work of helping people feel safe, supported and included as they begin to make sense of AI and what it may mean for their work. It is how organizations “de-weird” the technology, create space for honest questions and begin making AI feel like something that belongs in everyday work rather than something being imposed from above.

Why Normalization Matters

Psychological safety is a critical condition for learning, experimentation and collaboration. When people don’t feel safe, they don’t ask questions, test ideas or admit what they don’t know. They comply quietly, or they quietly disengage. Neither is adoption.

The goal of normalization is to close the distance between where people are emotionally and where the organization needs them to be. Some employees will move quickly and begin experimenting right away with the tools they now have at their disposal.

Others will be unfamiliar, skeptical or unsure what this shift means for their role, their value or their future. For those employees especially, adoption does not begin with training. It begins with the feeling that engaging with AI will not make them look foolish, irrelevant or behind.

And creating that kind of readiness requires three things done well.

Three Things That Actually Work in the Normalization Phase

1. Create space – and systems – for listening.

The biggest mistake organizations make in this phase is starting with all the answers. They launch the platform, send the announcement, schedule the training – and assume those things alone will shift mindsets and change behavior.

They won’t.

What creates the conditions for readiness is being heard first. At its core, this means building an ongoing conversation about AI across the organization – one that gives employees regular, low-pressure spaces to surface questions and ideas, voice concerns and get honest responses.

That can take several forms: Office hours. Small-group sessions. Open Q&A. Pulse surveys and live polls. Not as symbolic gestures, but as mechanisms for shaping how AI gets introduced into the work people actually do.

And if you’re going to ask people to take the time to engage, you must show that what they share matters. The only thing worse than not asking employees for feedback is asking and then ignoring what you hear.

That’s why listening cannot be treated as a singular event. It has to be built into the rollout itself.

One all-hands meeting is not an AI listening strategy. Listening has to be structured, recurring and visibly tied to action. When people see their input reflected in how your AI transformation evolves, trust grows. When they don’t, skepticism hardens.

2. Coach leaders to show curiosity.

This may be the most uncomfortable shift for many leaders — and one of the most important.

We often expect leaders to project confidence during change: Here’s where we’re going. Here’s why it’s the right call. Here’s what I need you to do. In many transformations, that kind of clarity is reassuring. But AI introduces a level of uncertainty that makes a different posture more effective.

Much of this is still unfolding, and employees know that. When leaders over-index on certainty, it can unintentionally create distance. What tends to build trust instead is transparency – a willingness to share what is clear, what is still emerging and what they themselves are learning along the way.

Leaders who say, Here’s what I tried last week. Here’s where it didn’t go as expected. Here’s what I’m still figuring out, give their teams permission to approach AI the same way: openly, curiously and without needing to have everything resolved upfront. In doing so, they model the kind of learning culture this moment requires.

And this does not have to be overly formal. It can be as simple as a leader taking a few minutes in a team meeting or a 1:1 to share how they have been using AI, where it has helped, where it has fallen short and then asking whether others are seeing similar use cases or running into similar issues. Moments like that make AI feel less abstract and more like part of how the team solves problems and gets work done.

A little humility goes a long way here. Saying, We don’t have all the answers yet, but we want to understand what you’re seeing and what you need, helps build the trust and reciprocity that make people more willing to engage over time.

3. Engage both champions and skeptics.

Most AI rollouts activate champions. Fewer engage skeptics.

That’s a missed opportunity – and often a source of quiet resistance that never gets addressed.

Champions build belief. They carry peer influence, spread early momentum and make it socially safe to try.

But skeptics matter too. They ask the questions others are hesitant to raise, stress-test the strategy and identify blind spots the optimists have not yet considered.

And both groups need to be identified across the organization. The concerns people have, the language that resonates, and the use cases that feel relevant will differ by role, function, team and location. A centralized group of AI-forward employees alone will not catch those nuances.

Bring both into the process. Involve them in reviewing messaging before it goes out. Ask them to serve as ears on the ground within their teams, surfacing the quiet hesitations people may not yet be voicing openly. Invite them to curate real-world examples, flag what feels off and help co-create the evolving story – not just receive it.

When the people most likely to champion the change and the people most likely to question it both have a hand in shaping the narrative, two things happen: the strategy gets sharper, and trust grows. That makes the rollout more credible, because it starts to reflect the reality of how different parts of the organization will actually experience it.

How You Know It’s Working

Normalization isn’t a box you check. It’s a condition you build. Here are three signals that tell you the work is landing:

  • Safety and trust are growing. Survey data and anecdotal feedback show people feel comfortable asking questions about AI – even uncomfortable ones.
  • Ownership is being distributed. Champions and skeptics are in the room, giving honest input, not just nodding along.
  • Early participation is building. Attendance at office hours, demos and opt-in sessions is growing – not because it’s mandatory, but because people are curious and finding value from what you’re sharing.

These signals matter because they show people are getting more comfortable – asking questions, engaging more openly, and beginning to see where AI might fit into their work.

But that does not mean everyone is in the same place. In most organizations, some people will already be experimenting or integrating AI into parts of their workflow, while others are still making sense of what this technology means for their role, their value and their day-to-day work.

That is why normalization matters. It is not something you complete before moving on. It is the ongoing foundation that helps leaders understand where people are, how they are experiencing the change and what they need next as the work continues.

Organizations should be moving. But they need to keep listening as they do. That is what makes adoption more coherent, more durable and more likely to spread beyond the early adopters.

Article

Closing the Innovation Gap With FH Fusion, Our Data and AI-Powered Solutions Suite

July 14, 2025

Our new solutions suite designed by and for communications professionals builds on Omnicom’s agentic AI platform, Omni, by integrating institutional communications knowledge with advanced audience data and technology capabilities. FH Fusion gives every FleishmanHillard counselor and team the ability to create real-time, agentic AI solutions that deliver sharper insights, more precise activations and stronger business outcomes—no engineers required.

FleishmanHillard today launched FH Fusion, a first-of-its-kind communications solution suite that puts the full range of AI models, institutional knowledge and a proprietary data toolset directly into the hands of communications professionals. Unlike tech-first applications built by developers, FH Fusion was created by—and for—counselors, enabling them to design and deploy real-time solutions backed by Omnicom’s secure, scalable intelligence layer.

Already in use by more than 1,000 FleishmanHillard strategists, FH Fusion reduces ramp-up time, accelerates delivery and improves outcomes across crisis, stakeholder messaging, media intelligence and brand strategy.

“FH Fusion closes the innovation gap—the distance between what communicators envision and what most tools actually enable,” said Ephraim Cohen, global head of data and digital. “It gives every strategist the power to turn expertise into action, combining insight, data and AI to build exactly the solution they need. We designed it so communicators can move at the speed of their ideas, with technology that’s trained to think the way they do about how people react, how issues evolve and how strategy needs to shift in real time.”


A Peek Inside: How FH Fusion Works

Today’s communicators don’t just need insights. They need infrastructure. FH Fusion leverages Omnicom’s industry-leading investments in AI and data to bring together four critical components – data, generative AI, knowledge bases and subject matter expertise in building custom agentic solutions for each client. FH Fusion combines:

  • 🔗 A full range of AI models and agentic AI technology – Omni’s AI layer enables users to create custom, multi-agent workflows from a full range of generative AI modes.
  • 📊 Industry leading data stack – The data layer of FH Fusion combines Omnicom’s collective data-driven intelligence across audience and commerce inputs from Omni and Flywheel, with corporate and consumer media, influencer, and other critical communications data from OPRG and FleishmanHillard.
  • 📚 FleishmanHillard’s institutional knowledge – FleishmanHillard’s considerable institutional knowledge and collection of proven, proprietary methodologies are being organized into a growing library of knowledge bases accessible to any agent.
  • 🧠 Subject matter experts trained in developing agentic AI solutions – Solutions are built not by engineers, but by FH counselors trained in creating AI agents, resulting in agentic solutions with communications expertise at the core.


A Smarter Model for the Future of Communications

FH Fusion is already being used by FleishmanHillard subject matter experts to build client solutions across three capability areas—each one modular, extensible and designed to integrate seamlessly with existing client workflows. The tools below are just a few of the expert-built components being combined to create end-to-end, outcome-driven solutions.

1. Predictive Audience Intelligence with Synthetic Audiences

Solutions include SAGE (Strategic Audience Generation Engine) that simulates how key stakeholder groups—from policymakers to employees—respond to messaging, content or positioning. Using AI-modeled virtual audiences built on deidentified and aggregated behavioral and attitudinal data, teams can test multiple approaches, identify what resonates and refine strategy before going live.

As AI becomes the new filter for information, SAGE helps communicators shape how messages are interpreted before they’re summarized, surfaced or amplified by algorithms. In a recent pilot, SAGE uncovered shifts around trust and transformation, informing a Fortune 100 client’s rollout across six markets.

2.  Storytelling and Strategic Alignment

Solutions include the Connectivity Diagnostic Agent that analyzes how a brand’s story aligns with shifting cultural, regulatory and reputational forces. Trained by messaging experts, it goes beyond keyword scans to reveal strategic misalignment—helping teams fine-tune positioning before small gaps become larger problems. The Communications Function Builder helps leaders optimize team structure and workflows using benchmarking and best practices—turning institutional knowledge into scalable systems.

3. Crisis Management and Corporate Communications

Solutions include Risk Radar that flags reputational, legal and operational vulnerabilities using AI trained by FleishmanHillard’s crisis experts. It filters out noise and false positives, helping teams identify and respond to meaningful risks early, serving as a calibrated early warning system built for decision-making rather than a cry-wolf dashboard.

These solutions build on FleishmanHillard’s long-standing commitment to democratizing access to data—now extended through new forms of intelligence, including curated knowledge bases (KBs), scenario-trained agents and secure, segmented workspaces that adapt to each client’s needs. FH Fusion is powered by a flexible intelligence layer that enables any employee to build multi-agent workflows tailored to real-world communications challenges, drawing from a full range of top-performing AI models. FH Fusion also taps into the depth of Omnicom’s data ecosystem, combining audience and cultural intelligence from Omni, commerce insights from Flywheel, and integrated streams of media, social, influence, and business signals—calibrated for strategic communications.

“Too many tools treat communications like an engineering problem. FH Fusion starts from a different premise: strategy is a human discipline,” said Cohen, who will host the FH Fusion Summit in September featuring live builds, cross-functional demos and client use cases. “We’ve spent years expanding data fluency across the agency—and now we’re applying that same model to AI. We’re training every FHer to be a builder, not just a user. Communications expertise alone isn’t enough anymore. What we need is that expertise plus deep data fluency—and the ability to train AI agents just like we train people. That’s the real shift with FH Fusion.”

Disclosure: This post was developed in collaboration with a custom agent trained for the communications industry—guided by FleishmanHillard counselors and built using Claude 3.5 Sonnet, one of seven major models FH Fusion can switch between on the fly. It drew from a curated knowledge base of communications research to focus on the capabilities clients care most about right now. Want to see what else it can do? Let’s talk.

How FUSION WORKS
Article

AI Is a Business Imperative, But It’s a People Challenge First

June 12, 2025

As AI continues to reshape industries, organizations must take proactive steps to engage their workforce in these emerging technologies or risk falling behind. In this series, we will share insights to help leaders ask the right questions, engage and empower their teams, and position their organizations for long-term success in an AI-driven world.

Driving a People-First Adoption Strategy

Whether you work in IT, finance, healthcare, manufacturing, retail, agriculture or any other space—you can no longer afford to view AI as a future consideration. The time to prioritize AI was yesterday. As we enter the second half of a century-defining decade, the gap between companies that empower their workforce for AI-driven change and those that resist it will only continue to widen.

Yet many face real tension—move too quickly, and risk confusion, backlash or missteps that expose the business to unnecessary risk; move too slowly and fall behind competitors or miss out on transformational opportunities. The right path isn’t at either extreme. It’s a disciplined, step-by-step journey rooted in clear communication and a people-first strategy that helps employees navigate disruption with clarity, support and agency. The more planful your organization is, the more equipped you will be to ride the tidal wave of AI innovation coming your way.

A multidimensional approach requires effective communication, cultural readiness, engaged leaders, a skilled workforce, robust infrastructure, and organization-wide AI alignment.

Embracing the Four Pillars of AI Readiness

Future-focused leaders must think critically about how their people, at every level, are thinking, feeling and acting in response to AI-driven change. True readiness goes beyond systems and strategies and is rooted in your people.

Culture

Cultural readiness is about how employees feel—whether they are curious, confident or concerned about AI’s impact on their work. Organizations should create space for conversations about the future of work, and how roles may change in the age of AI. Communication and training must address hesitations directly and intentionally to build belief, trust and understanding around AI’s potential.

Leadership

Leaders need to model behaviors that build trust, safety and resilience during AI transformation. Visible champions of change will reinforce the connection between AI initiatives and the broader business strategy, and create an environment where employees feel supported, empowered and motivated to engage with new technologies.

Knowledge

Bridging knowledge gaps calls for a focus on both skillsets and mindsets. Organizations must explain why AI matters, how it impacts roles and how employees can use it to thrive.

Infrastructure

While infrastructure decisions may reside within IT, communications play a critical role in translating what system changes mean for employees. Communicators are essential to clarify how tools and changes will support safer, better ways of working.

Building this foundation across culture, leadership, knowledge and infrastructure is essential, but understanding your organization’s starting point is just as critical. By asking the right questions, you can identify strengths to build on, vulnerabilities to address and opportunities to align your teams around a clear, honest path forward.

Assessing Your Employees’ AI Readiness

AI transformation is a cross-functional effort, requiring coordination across the executive team, operations, technology — and critically, communications. Communications teams play a pivotal role in assessing organizational readiness, shaping a corresponding narrative around AI adoption and building trust across the organization. Asking yourself these questions can help clarify where your organization stands and where to go next:

Culture

  • Are leaders and employees open to AI adoption?
  • Do employees perceive AI as a threat or an opportunity?
  • Is there a clear understanding of how AI can benefit the company?
  • Does our culture support innovation and experimentation?
  • Do employees feel safe raising concerns, questions or ideas about AI without fear of judgment?

Leadership

  • Is AI a strategic priority for company leaders?
  • Are leaders visibly modeling openness, curiosity and resilience around AI change?
  • Are leaders connecting AI initiatives to the company’s broader mission and purpose in a clear, human-centered way?
  • Are leaders actively listening to employees’ concerns and ideas about AI and incorporating that feedback into decision-making?
  • Are AI investments aligned with business strategy and long-term goals?
  • Do executives understand the risks and opportunities of AI?

Knowledge

  • Are employees clearly informed about how AI systems will impact their work?
  • Do employees have AI-related technical skills?
  • Are there AI literacy programs for nontechnical staff?
  • Is there a talent acquisition strategy for AI expertise?
  • Are employees given clear examples of how AI will make their jobs easier, more impactful or more strategic?

Infrastructure

  • Are AI policies, governance, ethics and security protocols communicated clearly to employees?
  • Are concerns about AI openly acknowledged and addressed in communications?
  • Does our organization have a dedicated function/team or clear points of contact for our AI efforts?
  • Are new AI tools introduced with practical training and ongoing support?

What’s Next?

Start with what you know. If your people seem unsure or skeptical, focus on building trust and curiosity. If your leaders lack engagement, explain why AI matters and provide a framework they can use to model the mindset you want to see. AI readiness is about steady, people-first progress — not perfection. Steps forward could look like any or all of the following:

  • Live AI demo during an upcoming meeting
  • Fireside chat with a leader exploring the why and how of your company’s AI strategy
  • AI checklist outlining ways your organization can use AI to increase efficiency and drive business outcomes

There is no one-size-fits-all path to making an organization AI-ready, but leaders who critically examine their current state and take decisive action will be better positioned to thrive. The success of any AI initiative hinges on how well people understand and adopt it. Clear communication and strategic alignment are essential, and that’s where we can assist — helping you navigate change, engage and align your workforce and ensure a smooth transition.

Elana Sindelar Elana Sindelar works in FleishmanHillard’s Talent + Transformation practice with experience in change management, employee experience and internal communications. She has supported clients through major IT transformations, corporate rebrands and M&A activity. Elana currently focuses on exploring AI’s effect on the future of work, including how the emerging technology is reshaping the employee experience.