The promise of AI is real, but so are the gaps. From disconnected data to siloed systems, marketing transformation stalls without unified measurement and real-time intelligence.
CMOs are on board with the promise of AI. A recent IBM study found that 81% of marketing leaders view AI as a game-changer. Yet 84% say rigid, fragmented operations limit their ability to harness it, and more than half admit they underestimated the complexity of turning strategy into results.
Legacy marketing infrastructure built on third-party data, siloed teams, and lagging insights no longer meets today’s demands.
AI transformation doesn’t have to be a painful reset, but it does require more than enthusiasm. It demands a new operating model built on connected systems, harmonized data, and a shared source of truth to turn AI’s promise into performance.
AI has two critical roles in marketing:
Here’s the catch: you can’t unlock the full power of one without the other. Analytical AI shapes the logic, data, and signals that guide GenAI outputs, but many organizations still deploy these technologies in isolation.
The result? New tools, same old siloed thinking. Unified measurement is the missing link.
Operationalizing AI isn’t just about adding new tools. It requires a redesigned marketing strategy. Teams must build integrated measurement strategies that connect attribution, mix modeling, and incrementality into a cohesive whole. They need intelligence that updates in real time, not weeks or quarters after decisions have already been made. And most importantly, they need systems that close the loop between insight and action, so they’re not just analyzing the past, but actively shaping outcomes.
That’s the missing operational step: helping marketers understand what’s working right now and guiding where to go next. This is the promise of predictive intelligence—not as a reporting layer, but as the core engine of modern marketing strategy.
Here are three ways modern measurement turns AI from a theoretical advantage into an operational one:
Traditional systems focus on observable behavior: clicks, conversions, CRM data. But modern measurement delivers broader visibility.
Population modeling simulates the entire market, not just known users. These models create virtual consumer universes, drawing from anonymized, privacy-resilient data sources like census and credit records to understand:
The benefit? Marketers can anticipate demand, tailor strategies to different segments, and optimize media investments based on a more accurate and inclusive view of the market vs. only those who happened to click.
Real-world data is never perfect. Privacy opt-outs, offline channels, and incomplete journeys introduce blind spots, not to mention subpar quality and messy inputs.
Platforms like Mevo use nested data augmentation AI to:
This creates a more complete, coherent data set without relying on exhaustive manual inputs. The result: faster insights, smarter models, and stronger signals for decision-making.
Attribution and incrementality have traditionally lived in separate silos. But when combined, they unlock far more actionable insight.
Through scenario simulation, marketers can understand:
Unlike MMMs that rely on 6–12 months of historical data, Mevo generates insights with as little as two months of input with updates at least monthly, so they can be leveraged for in-flight decisioning.
AI can’t fix bad data.
That’s why Mevo starts with the data: automating the ingestion, cleansing, and normalization of media, conversion, and external signals to ensure every model is built on a strong foundation.
By unifying attribution, mix modeling, incrementality, and scenario planning, Mevo turns data readiness into decision intelligence.