marketing
rapport
Season 3 Episode 14
Personalization Lessons from Wendy’s David Galinsky
RESOURCES ❯ The Marketing Rapport Podcast
Episode Summary
How do you build loyalty in a category with high-frequency visits and low brand attachment? In this episode of The Marketing Rapport, host Tim Finnigan sits down with David Galinsky, Senior Director of Omnichannel Analytics at The Wendy’s Company, to explore that question.
David walks through three foundational models for understanding and engaging customers: loyalty segmentation, behavioral patterns in product purchases, and churn propensity. He explains why first-party data outperforms third-party sources—especially in quick service restaurants where visit volume and purchase frequency offer rich behavioral signals.
The conversation also touches on evolving customer habits, like the younger generation’s shifting preferences around sustainability, health, and digital engagement. David shares why data alone isn’t enough—and how brands can act on it through timely, relevant messaging. Whether you’re in QSR or retail, this episode offers a clear framework for using data to drive smarter marketing.
Guest-at-a-Glance

- Name: David Galinsky
- What they do: Senior Director of Omnichannel Analytics
- Company: The Wendy’s Company
- Noteworthy:Specializes in customer segmentation, loyalty models, and data-driven personalization
- Where to find them: LinkedIn
Key Insights
- First-Party Data Is Still Your Strongest Signal
In a landscape crowded with third-party tools and fleeting behavioral signals, first-party data remains the most reliable asset for marketers—especially in high-frequency industries like QSR. Unlike third-party datasets, which often suffer from outdated or inaccurate information, first-party data comes directly from the customer and is tied to real transactions and behavior. This gives brands the power to build more accurate models and personalize communication with greater confidence. The insight isn’t just about data ownership—it’s about trust, relevancy, and the ability to act quickly. When customers opt in, and brands use that data responsibly, the result is stronger engagement and better returns. For marketers working in any space, the takeaway is clear: collecting and activating high-quality first-party data is no longer a “nice-to-have”—it’s foundational to modern strategy.
- Loyalty Isn’t a Feeling—It’s a Measurable Behavior
Many brands treat loyalty as an abstract goal, but David outlines a clear way to measure and influence it using data. By segmenting customers through models like RFM (recency, frequency, monetary), marketers can pinpoint their most valuable audiences and tailor outreach accordingly. Rather than spreading budget thin across everyone, smart brands focus on nudging high-frequency customers toward just one or two more visits a year. In quick-serve restaurants, that’s often worth millions in added revenue. Loyalty, then, becomes a behavior to be observed and encouraged—not just a brand sentiment. This shift helps teams align around measurable goals, testable campaigns, and a clearer ROI. For marketers in any sector, treating loyalty as a data-driven outcome creates better strategy and smarter personalization.
- Personalization Starts with Patterns—Not Gut Instincts
Effective personalization isn’t about guessing what customers want—it’s about spotting behavioral patterns and acting on them at scale. David explains how marketers can build segmentation around product preferences, visit times, and churn signals to craft relevant messages. A customer who always orders a burger combo on Thursdays? That’s a signal worth reinforcing. Someone whose visits are tapering off? Time for a reactivation offer. Personalization becomes less about flashy campaigns and more about consistent, data-backed communication that meets real needs. This framework also removes bias: marketers don’t have to assume what matters to the customer—they can see it in the data. And when messaging aligns with patterns, response rates improve, costs drop, and retention goes up. No matter your industry, personalization rooted in behavior will always outperform intuition.
Episode Highlights
The Shift from Third-Party to First-Party Data
[00:03:52]
David Galinsky explains the industry-wide shift from third-party to first-party data strategies. He discusses how owning customer data allows for more accurate targeting and higher ROI, especially in marketing campaigns.
“There was a DMP back in the day that stored a bunch of third-party data called Blue Kai. It was bought by Oracle and you had the ability to type in your email address. It would populate all the information it had on you. And I’ll just never forget how wrong it was. It said I lived in Washington, DC, and I hadn’t lived in Washington, DC in like 10 years.”
The Data Collection Challenge in QSR vs. Retail
[00:06:47]
David compares how customers are more willing to share information with retailers than with restaurants. He highlights the behavioral and contextual barriers QSR brands face when gathering data, and how this impacts loyalty strategies.
“You walked into a brick-and-mortar store to buy something and handed over your phone number or email address to sign up for their email list or loyalty program. It was very natural. You go to CVS or Walgreens, and they ask for your phone number. It’s instinctive—you don’t even question it. But when you’re purchasing a cheeseburger, it’s typically not the venue where people are traditionally used to providing their information.”
Behavioral Modeling for Smarter Messaging
[00:17:47]
David describes how Wendy’s leverages behavioral models to personalize outreach and retain customers. He outlines how product preferences and purchase timing inform both frequency and content of marketing communications.
“And then we also know what types of products you purchase. You buy burgers—maybe you always get a side of fries and a drink, or perhaps a combo meal. That helps me understand the frequency at which I should communicate with you, which is regularly, since you’re a frequent customer. It also influences the type of content and messaging I provide, knowing your purchasing habits.”
Why Gen Z is Forcing Brands to Rethink Everything
[00:28:12]
David reflects on the unpredictability and evolving values of younger consumers. He explains how shifts in eating habits, sustainability concerns, and digital behavior are transforming marketing strategies in the restaurant industry.
“The biggest challenge facing the restaurant industry is the changing habits of the younger consumer demographic. They are digitally native, and while there’s likely the most data available about them, all research suggests they’re the least predictable in terms of where they’ll dine or what the latest trend will be. Regarding eating preferences, studies show they don’t consume as much meat as older generations. They’re far more focused on companies that share their values.”
Top Quotes
[~00:00:00] David Galinsky: “I would say foundational models of customer understanding help us A) Identify our most valuable customers, B) Recognize what types of products you typically purchase so we can tailor content to you, and C) Determine whether you’re active or approaching a lapsed state. This helps me understand how aggressively we need to communicate with you.”
[~00:16:07] David Galinsky: “There is a method that is universal: the first step you always want to take is conducting some sort of loyalty segmentation, or brand loyalty segmentation. There are very traditional ways companies have built models for a long time, based on recency, frequency, and spend. Right off the bat, you take a model like RFM—or the more formal name being loyalty segmentation—and immediately you’re able to understand who your most valuable customers are.”
[~00:16:45] David Galinsky: “Typically, you’ll find something like this: 10% of customers account for 50 to 60% of sales. At some point, you’ll likely see something similar to the 80/20 rule—where 20% of customers make up 80% of sales. What that does is help you narrow in and focus on who you have the most ability to influence.”
[~00:18:50] David Galinsky: “The third model I typically recommend focuses on better understanding churn. This could be a predictive model—like churn propensity—to determine your likelihood of churning over the next two to three months. If we see patterns in the data indicating a deviation from your normal behavior, that’s an opportunity to be more proactive in our communications to win you back.”
[~00:20:51] David Galinsky: “My bias on this one is that it works better in an industry with more SKUs. It works better in apparel, or in retailers like Walmart or Home Depot where there’s practically an infinite number of products they carry—products they can use to cross-sell and upsell to you.”
[~00:24:04] David Galinsky: “In a high-frequency business like QSR, what’s most predictive of what you’ll do next—or what types of items you’re most likely to purchase—is your historical behavior. And since QSR is so high-frequency and data-rich, first-party data will always be the de facto standard”
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