Your customer data is scattered across multiple martech systems and point solutions. Your team spends most of their time manually preparing data instead of generating insights. Your IT department has a backlog for analytics requests that stretches for months.
Meanwhile, your competitors are deploying AI-powered recommendation engines that drive customer satisfaction, growth, and revenue increases.
Sound familiar? If you're nodding along, you're not alone.
Marketing analytics leaders across every industry are struggling to manage disconnected tools and fragmented data. Every new solution promises better return on ad spend (ROAS), improved ROI, and enhanced campaign performance. But instead of simplification, these tools lead to more silos, longer technical delays, and an inability to prove true marketing impact.
Here's what changes everything: You don't have to stay stuck in this cycle. Dataiku, The Universal AI Platform™, lets marketing analytics teams connect all their data sources, build AI recommendation engines, and deploy personalized experiences while empowering both business and technical teams to collaborate seamlessly.
They don't start with massive platform overhauls. They don't wait for perfect data. Instead, they start with one proven AI use case that delivers immediate business value while building the foundation for a full AI makeover.
If you're not sure which use case to start with, we're here to guide you. The most successful teams start with hyper-personalization through AI recommendation engines. Here's why this works:
AI-powered recommendation engines are fundamentally the same use case across all industries, but it manifests differently depending on what you sell and who you sell to.
A bank recommends financial products to existing customers. A retailer suggests items that complement what's in a customer’s cart. A pharmaceutical company identifies the most relevant clinical information for each physician.
The core AI remains the same: analyzing customer behavior, predicting preferences, and delivering personalized recommendations. But the data sources, compliance requirements, and business metrics vary.
No matter what you sell, today's market demands AI to improve customer experience and to generate real insights from AI-powered marketing analytics. Here's how AI recommendation engines adapt to different industries:
Banks struggle with customer data spread across core banking systems, CRM platforms, transaction processors, and digital channels. Marketing teams can't see the complete customer relationship, making it difficult to identify cross-selling opportunities and deliver relevant offers at the right moment.
Banks face siloed data across martech systems, AI teams that deliver black-box solutions without understanding business needs, one-off campaigns that can't scale across regions or business lines, and the challenge of choosing which use case to prioritize when customer lifetime value (CLV), churn, and NBO all compete for resources.
The AI Solution
NBO uses machine learning (ML) to study customer behavior, transaction history, product usage, and life events. It identifies the perfect financial product for each customer at exactly the right moment.
How it works:
→ Learn More About NBO for Banking
Retail marketers feel massive pressure to personalize customer experiences across e-commerce sites, mobile apps, email campaigns, and in brick and mortar stores. This gets incredibly complex when managing thousands of products, seasonal inventory, and different customer segments.
Retailers face fragmented customer journey data across e-commerce platforms and POS systems, manual processes that consume analysts' time, difficulty scaling personalized experiences beyond basic demographics, and the challenge of connecting online and in-store customer behavior for a complete view.
The AI Solution
Product recommendation engines use ML to analyze customer behavior, purchase history, browsing patterns, and product features. They recommend the most relevant products for each customer and help guide merchandising and assortment decisions to deliver a personalized experience.
How it works:
Healthcare and pharmaceutical marketing teams work in a heavily regulated environment while trying to deliver personalized experiences to healthcare professionals (HCPs) and patients. They need to optimize outreach timing, select the right channels, and tailor messaging based on complex clinical workflows and regulatory requirements.
Healthcare companies face strict compliance rules limiting traditional marketing approaches, complex HCP engagement patterns across multiple touchpoints and specialties, difficulty measuring marketing impact in long sales cycles, and the need for evidence-based recommendations that support clinical decision-making.
The AI Solution
Next Best Action leverages data and AI to recommend the most effective course of action for engaging with healthcare professionals. This includes optimizing outreach timing and channel selection, personalizing clinical content, and tailoring messaging to each HCP's specific needs and patient population.
How it works:
→ Learn More About NBO for Healthcare & Life Sciences
Your AI recommendation engine success is just the beginning. The teams that truly transform understand this isn't a one-and-done project, it's the foundation for something much bigger.
Here's where it gets interesting. When your NBO engine starts feeding insights to churn prediction models, you're not just recommending products anymore. You're identifying at-risk customers and proactively engaging them with personalized retention offers. Layer in CLV modeling, and those recommendations become strategic investments in your most valuable relationships.
Building these connections requires all your use cases to live in the same regulated, governed environment. When customer data, transaction histories, campaign results, and behavioral insights flow through a unified platform, each new use case becomes easier to build, not harder.
Think about the alternative: managing recommendation engines in one system, churn models in another, attribution analysis in spreadsheets, and segmentation through your marketing automation platform. Every connection requires custom integration. Every insight demands manual exports. Every compliance audit becomes a scattered documentation nightmare.
Dataiku, The Universal AI Platform™, changes this equation. Your CLV models share the same data pipeline as your recommendations. Your marketing mix modeling leverages the same behavioral insights that power your personalization engines. When you're ready to deploy AI agents that autonomously optimize campaigns across multiple channels, everything is already connected.
This isn't just operational efficiency (though marketing teams report being dramatically more productive when everything connects seamlessly). It's a competitive advantage. While competitors struggle to connect their first two AI marketing use cases, you're deploying sophisticated workflows that optimize everything from content generation to channel selection.
The companies winning in AI for marketing aren't just implementing individual use cases. They're building comprehensive ecosystems where every customer interaction becomes smarter.
Dataiku provides everything needed for successful marketing analytics transformation:
No technical barriers: Visual, no-code tools enable marketing teams to collaborate with builders and analytics teams to design, iterate, and leverage technology. This empowers even non-technical marketers to contribute directly to technical solutions.
Complete data integration: Connect all marketing touchpoints, from CRM to advertising platforms to customer service tools
Proven enterprise AI marketing solutions: Pre-built templates for NBO, Product Recommendation, Next Best Action, and other use cases that can be customized for any industry
Enterprise scalability: Deploy across regions, business units, and use cases with centralized governance
AI agent capabilities: Evolve from predictive models to AI agents that optimize every marketing process
The window for competitive advantage through AI for marketing is still wide open. But it's closing fast as more organizations implement sophisticated personalization engines and optimization platforms.
The question isn't whether your organization should implement AI marketing use cases. It's whether you'll be leading the transformation or trying to catch up. Ready to turn your fragmented marketing data into a competitive advantage?