"My CEO just came back from another CEO event and he's on a rampage about return-to-office."
"Our CEO is pressuring us to show AI productivity gains, but half our employees say the tools make them less productive."
Sound familiar? If you're a senior leader navigating workplace transformation, you've probably had both conversations in recent months. What you might not realize is that these challenges—making flexibility work and driving productive AI adoption—require remarkably similar solutions.
Here's the smoking gun: Only 25% of managers have been trained to lead distributed teams. Only 22% of firms have communicated a clear plan for adopting gen AI — even though 97% of executives say it's urgent. We're literally making the same mistake twice.
After working with dozens of organizations on both fronts, from Airbnb to Zillow, I've observed that the companies getting both right follow an identical four-part framework. Those struggling with one tend to struggle with both, often for the same underlying reasons.
The bottom line: Organizations succeeding at both flexibility and AI follow identical change management principles. Stop thinking about these as separate technology or policy challenges: they're both about building cultures that can adapt continuously.
The Same Problems, Different Symptoms
Here's what I'm hearing in recent conversations with senior leaders: "We've got teams distributed across three time zones, but our CEO wants everyone back four days a week because that worked for him — and maybe he'll get three. Meanwhile, he's saying people have to adopt AI or get left behind, which is just causing people to hide what they're doing out of fear or because it feels like internal competition."
Two different challenges, but notice the pattern. In both cases, leadership is defaulting to command-and-control approaches that ignore the reality of how work actually gets done today. The RTO mandate assumes that proximity equals outcomes. The messaging about gen AI assumes that threats will drive efficiency gains.
Both approaches miss a fundamental truth: successful workplace transformation happens at the intersection of clear strategy, outcome-focused management, team-level empowerment, and continuous learning.
In both cases, we're expecting people to succeed without giving them the skills or support they need. The result? Mandates that drive down engagement, tools that create more work than they save, and organizations stuck in a cycle of policy announcements followed by employee resistance.
A Better Way Forward: The Four-Pillar Framework
The most successful organizations I've worked with—whether they're mastering hybrid work or seeing real AI productivity gains—follow the same playbook. They build their approach on four foundational pillars.
1. Talent Strategy: Know Your "Why" and Your "Who"
Before you mandate three days in the office or roll out the latest AI adoption missive, ask two critical questions: What problem are you trying to solve, and who are you solving it for?
For flexibility: Are your teams actually co-located, or are they distributed across multiple cities? If the projects key to your success are driven by cross-functional teams spread across time zones, forcing everyone into offices won't create the collaboration you're hoping for—it'll just breed resentment.
For AI: Are you re-skilling your existing workforce or replacing them? The employee value proposition matters enormously here. Organizations that invest in helping people learn new skills build loyalty and engagement. Those that pursue "rip and replace" strategies—laying off a thousand employees while hiring 500 others with AI skills—signal that people are disposable.
Airbnb understood this when they launched "Live Anywhere, Work Anywhere." It wasn't just about flexibility—it was a talent strategy that let them recruit top designers from Apple and other companies with stricter policies. Similarly, Udemy's approach to AI training treats skill development as an investment in people's careers, whether they stay at the company or not.
The most important element of your talent strategy is clarity about your employee value proposition. In a world where data scientists can find flexible work anywhere, and where AI skills are increasingly valuable, what's your competitive advantage in attracting and retaining talent?
2. Outcomes-Based Management: Measure What Matters
The shift from monitoring activity to measuring outcomes is the foundation that makes everything else possible. It's also the hardest part for most organizations because it requires genuine culture change at the leadership level.
For flexibility: Stop counting badge swipes and start tracking results. As one CEO told his team, "Many of you want me to declare that three days a week is the answer. We're a global firm with five business units and hundreds of functions. I'm not the one to make that decision—that's why you all have jobs."
For AI: Stop talking about "efficiency" and start talking about objectives. When employees hear "we're adopting AI for efficiency gains," they translate that to "layoffs." Instead, focus on outcomes: growing your customer base, improving product quality, or expanding into new markets.
Atlassian provides a great case study for goal systems that work: 3 to 5 quarterly goals per team, aligned up and down the organization, where updates are tweet-sized and shared transparently. Clear goals and honest assessments of status drive alignment and build trust.
“But Brian, we tried OKRs and it failed.” I’ve been there! Plenty of causes from a lack of training, to picking the wrong system (OKRs, KPIs, MBOs, oh my…) to lack of honesty in assessments. The level of investment required can be substantial. That includes hard work in the C-suite: aligning on what’s most important – and what we can let go (for now). Those that make the investment will go further, faster.
The key insight: when people understand what success looks like and have autonomy in how to achieve it, they perform better whether they're working from home or using AI tools.
3. Team-Centered Approach: Where the Real Work Happens
The biggest mistake leaders make is thinking transformation happens at the individual level or through top-down mandates. In reality, teams are where both flexibility and AI adoption succeed or fail.
For flexibility: Junior salespeople who are co-located probably should be in the office three days a week—they'll learn from each other as much as from their manager. But distributed product teams need intentional gatherings: project kickoffs, milestone reviews, and launches. One size doesn't fit all.
For AI: Having a company-wide "acceptable use" policy matters less than teams having conversations about norms. When 48% of employees are afraid to tell their manager they're using AI tools because they might be seen as cheating, you have a team communication problem, not a policy problem.
In either case, the answers don't lie in CEO mandates or individual free-for-alls—it's all about managers being involved in finding solutions with their teams. BCG's work showed that teams who co-create their working norms with managers were 2.4X less likely to leave. Similarly, GenAI adoption increased 89% when managers were engaged with their teams in training.
The most effective approach I've seen involves three-week team-based learning programs. Teams spend 5-10 minutes daily doing hands-on exercises together—not starting with work projects, but with fun, low-stakes activities that build comfort and open conversations about what's acceptable and what works.
This team-centered approach recognizes that sustainable change happens through peer influence and shared problem-solving, not executive proclamations.
4. Learning-Based Culture: Investment Over Mandates
Both successful flexibility programs and productive AI adoption require sustained investment in capability building. Organizations that treat these as one-time policy changes consistently underperform those that commit to continuous learning.
For flexibility: Companies like Allstate, Atlassian, Dropbox, Pagerduty and Zillow didn't announce policies—they invested in three areas. They redesigned office spaces for collaboration rather than individual work. They funded travel for distributed teams to gather intentionally. And they created small teams (4-5 people in organizations of 50,000+) dedicated to helping leaders build better working patterns.
For AI: The J-curve is real. Every major technology requires upfront investment to see backend productivity gains. If your answer is "we don't have time this quarter because our goals are too important," you'll never make the transition.
Lauren Franklin, Head of Support at Zapier, showed the way with her team. She made it clear that scaling support required adopting automation and new ways of working, but that "there's a seat on the bus for everyone" if they adopted. But she didn't just say the words: she got into the support queues with her team, every week. The result? Scalability for Zapier, and new skills and higher pay for employees.
All of this requires a learning mindset at the organizational level. As I learned years back, there are three magic words that transformed whether my team engaged in the extra effort required for change: "I don't know."
It wasn’t something that came naturally to me. Like many, I grew up in business cultures where you were expected to have all the answers. But I learned through feedback (and hard experience) that a leader willing to admit uncertainty and invite their team to figure things out together increases commitment, engagement and willingness to experiment. All essential ingredients in today’s world.
Why the Framework Works
This four-pillar approach works because it addresses the fundamental reality of how humans adopt change. Leaders need to understand the purpose (talent strategy), people need to feel trusted and accountable (outcomes-based management), teams need autonomy within clear boundaries (team-centered), and everyone needs to feel supported through the learning process (investment in capability).
Whether you're asking someone to work effectively from home or use AI to transform their workflow, you're asking them to develop new capabilities while maintaining performance. That's inherently challenging and requires organizational support.
The companies succeeding at both flexibility and AI adoption recognize that these aren't technology problems or policy problems—they're change management challenges that require sustained leadership attention and investment.
Where Does Your Organization Stand?
Before diving into implementation, take a quick diagnostic. Rate your organization on each pillar (1 = nonexistent, 4 = fully developed):
Talent Strategy: Do you know if your teams are distributed or co-located? Is your employee value proposition clear? ___/4
Outcomes-Based Management: Do you measure results over activity? Can teams explain their quarterly goals? ___/4
Team-Centered Approach: Do managers co-create working norms with their teams? Are team conversations happening about AI use? ___/4
Learning Culture: Are you investing in capability building? Do leaders admit uncertainty and invite experimentation? ___/4
Total: ___/16
If you scored below 10, start with pillar 1. If you're above 12, you're ahead of most organizations—focus on the pillar where you scored lowest.
Getting Started Today
You don't need to perfect this framework before beginning. In fact, the organizations using it most effectively started with pilots and experiments, learning what worked for their specific context.
Start with your talent strategy. What's the real problem you're trying to solve? Are your teams distributed or co-located? What's your actual employee value proposition in a competitive talent market? What gives you better odds of success: investing in the short-term costs of training and support, or hoping fear drives adoption?
Then commit to outcomes-based management, even imperfectly. As I wrote recently, even questionably executed OKR tracking is 100 times better than assuming that because someone's behind is in a chair, they're working, or that because they're using a tool, it's creating results that matter.
Remember: the goal isn't to get this perfect immediately. The goal is to build organizational muscle for continuous adaptation.
The window for building these capabilities is narrowing. While your competitors debate policies, the companies implementing this framework are already pulling ahead in talent acquisition and retention. The companies thriving five years from now won't be those that figured out the "right" hybrid policy or bought the "best" AI tools. They'll be the ones that built cultures capable of evolving with whatever changes come next.
The future of work isn't about where we work or what tools we use—it's about how we work together to drive results, build trust, and create value. And if your leadership isn't ready for that conversation, maybe it's time to find one that is.
What resonates for you, and what’s missing?
The changes coming at us are massive — the more we share, the better off we’ll all be! What’s working in your organization? What change effort failed, and what’s your take on why it didn’t work?
You can comment here or drop me a line at brian@workforward.com
Rather digest this in video?
I’ve talked about this a few times over the last few months, including a keynote at Institute for Corporate Productivity and Running Remote.
Once again, with implementing AI, I'm sure they're not talking to the people they need to be talking to, to find out how to actually use this in the most effective way.
Rather than making things more efficient, it's causing problems because you're trying to use it with a system that's not working anyway.
Some of these companies implementing AI, it's going to be a disaster for them. The poor employees who are stuck doing twice the amount of work to fix it all.