Traditional email marketing operates on static rules that treat every customer identically, relying on predetermined timing sequences and uniform messaging approaches. At Wunderkind, we have developed adaptive AI systems for abandonment and catalog campaigns that learn from individual customer behaviors and optimize communications in real-time.
Traditional email programs use rigid steps: wait X hours after cart abandonment, send email A, then wait Y hours and send email B if no conversion happens. That logic treats everyone the same and ignores real intent signals. Our AI decisioning for abandonment journeys adjusts send time and channel, and for catalog, it also adjusts the product affinity per person based on live behavior. It looks at interaction recency and frequency, product preferences, and past conversion patterns to decide the next best action.
We ran A/B tests that compared AI-triggered emails to traditional rule-based campaigns on randomly selected audiences to avoid bias. We kept audience segments stable to ensure clean data and controlled for external variables. Meanwhile, the system processed over millions of email sends and held performance gains across key metrics, including click rates, conversion rates, revenue lift, and retention.
Our AI adapts in real time as shoppers browse and buy. For example, if someone abandons on mobile but converts on desktop, the system learns to adjust timing and channel for that pattern. If a shopper opens emails at lunch or in the evening, send times shift to match their habit. Consequently, visibility and engagement improve because messages land when the shopper is most receptive.
Together, these gains show how adaptive logic can outperform fixed schedules and canned content.
Real shoppers do not act the same across devices, times of day, or product categories. Therefore, our AI learns from each signal and updates decisions on timing, channel, and product selection. It favors fewer, better-timed messages that meet the shopper in their moment, not an arbitrary cadence. This learner approach contrasts with one-and-done rules that go stale fast.
Clients using WunderkindAI report conversion rate increases between 20-30% compared to rules-based programs. Moreover, brands that move from static rules to learning systems see stronger engagement and business results because the experience adapts to each person in real time. "We're excited to be beta testing Wunderkind's AI Abandonment capabilities at SMCP," said Erin Pepe, VP of Digital and Customer Experience at SMCP. "It takes the guesswork out of when and how to reach shoppers-optimizing both the timing and the channel automatically-driving more clicks and conversions than classic journeys."
Designing AI That Learns means listening to shopper behavior and updating decisions with every signal. Our tests show that adaptive logic improves conversion, reach, and revenue while reducing unsubscribes. The system learns the right time, channel, and product for each person-then gets better with use. In short, this is how you leave rules-based journeys behind and build durable growth. The future of performance marketing is here, and it's designed to learn. Contact us to get started today.