The morning the retail team first showed me the heat map was one of those days that stick in your memory. A sprawling mesh of colours — deep reds where people clustered, pale blues where they barely registered — it felt less like a spreadsheet and more like a living, breathing map of human desire. It was a reminder that behind every decision to open a new store or launch a product, there are real people making choices, and companies are listening more closely than ever.
In recent years, boardrooms have grown more accustomed to arguments grounded not in gut instinct or legacy wisdom, but in terabytes of terabytes of data. The old debate — “Should we go to City X?” — now unfolds with dashboards, elastic curves and predictive models. No one dismisses intuition anymore, but intuition without evidence feels, at best, quaint.
This shift hasn’t happened overnight. Stores once expanded simply because a competitor had a presence nearby, or because a regional sales manager knew someone on the ground. Now, executives pore over demographic data, purchasing patterns and even social chatter before committing millions. Starbucks, for example, uses geospatial analytics that integrates traffic density, income levels and competitive overlap to choose new locations — and its success rate for profitable openings reportedly exceeds 90%. Companies like Airbnb and Uber similarly scrutinize user behavior and demand curves to predict where expansion won’t just land, but thrive.
But it’s not just big multinational names. Startups in Jakarta or Berlin can sense where to focus their limited resources by watching which markets light up with engagement. I remember talking with a product manager who described a late-night epiphany after watching cohort data show unusually high conversions from a small Southeast Asian city. That insight redirected the company’s marketing budget, and within a year they had twice the user base they projected.
None of this is simply about collecting data; the real work — and the real art — lies in asking the right questions of that data. Businesses blend internal sales figures with external market data, often pulling in hundreds of distinct sources to create a holistic picture. This process, known in analytics circles as data blending, acknowledges that no single dataset tells the full story. It’s like listening to an orchestra rather than a soloist. Only when patterns begin to echo across multiple data sets do leaders feel confident taking the leap.
Yet even the best analytics toolkit doesn’t replace strategic thinking — it sharpens it. Tools like marketing decision support systems allow executives to run hypothetical scenarios: what if we lower prices here? What if we target millennials in this neighborhood? These simulations don’t predict the future perfectly, but they highlight potential payoffs and pitfalls in ways that human intuition alone could never do.
One CEO I spoke with described a moment of unease when his team’s analytics suggested entering a market he had always personally dismissed as too difficult. “It was humbling,” he said. Data revealed demographic trends his decades of experience hadn’t flagged, and the company ultimately saw stronger growth than in several of their existing regions.
Customer data — the footprints people leave through purchases, clicks and engagements — has become central to these decisions. Netflix, famously, uses viewing histories and interaction patterns not only to recommend shows but to decide which content to produce and in which markets to double down. And smaller tech companies today often start thinking about expansion from day one by tracking product metrics that show where their offerings resonate most deeply. CakeResume, a career platform, discovered higher conversion rates in Indonesia through product analytics, guiding a targeted push that paid off in market share gains.
But there’s a curious emotional tension here. On one hand, data feels objective; on the other, it requires interpretation, judgment and sometimes a leap of faith. I recall sitting with a regional manager who said data gave her confidence she never had before. “I used to worry whether my instincts were right,” she admitted. “Now, I can at least show why I believe we should invest here.” That kind of confidence — rooted in numbers but expressed in human voice — seems to be the real engine of growth.
In retail and beyond, operational data has reshaped expansion logic too. Walmart, for instance, uses real-time analytics to refine inventory and supply chain decisions across regions, ensuring that expanding into a new area doesn’t just mean opening stores but stocking them wisely and keeping them profitable. These operational insights reduce risk and help companies manage the messy reality of scale.
All of which brings us to an important truth: data doesn’t make decisions. People do, using data to inform intuition, sharpen strategies and challenge assumptions. When metrics suggest something counterintuitive — like a lesser-known city outperforming expectations — leaders still weigh those insights against cultural, logistical and financial realities. Sometimes, they hold off. Other times, they push forward with surprising boldness.
At its best, data expands not just markets but imagination.
It reveals customers as nuanced individuals, markets as dynamic ecosystems, and opportunities where once there was only uncertainty. The companies that succeed today don’t just collect data; they listen to it, argue with it, and let it shift their thinking. In the end, expansion becomes less about conquest and more about understanding where needs and potential truly intersect.
And if that sounds like a human story hidden inside algorithms and dashboards, it is — because every growth decision, ultimately, rests on people.

