Personalization is on the mind of every CMO. Users are expecting a personalized experience before landing pages are even loaded or mobile apps are even opened. Marketing teams are scrambling to not only define personalization, but also to devise a personalization strategy that optimizes the user experience for their most valued customers in order to boost brand loyalty.
Brands that aren’t investing heavily into personalizing the customer experience are poised to fall behind those that are. One of the ways to ensure you can make sure this doesn’t happen is to build a personalization engine, whether on your own or with an end-to-end solution.
What is a personalization engine?
A personalization engine is an interconnected set of solutions that identify, build, deliver, and measure personalized experiences in real-time. Modern personalization engines leverage rules-based, machine learning, and AI (artificial intelligence)-based systems to create dynamic, context-aware experiences that evolve with user behavior.
How you build your personalization engine will depend heavily on who your customers are, what type of experiences they expect, and the desired business outcomes.
How does a personalization engine work?
A personalization engine works by continuously analyzing historical and real-time data such as purchase history or human behavior in order to optimize the customer experience. Depending on how you choose to set up your personalization solution, you can either rely on an AI-powered solution to that leverages predictive analytics, or rely on rules-based personalization to automatically route users to a predetermined location on your site or app.
For example, AI can create algorithms that analyze patterns in content consumption and customer behavior to surface more relevant content and product recommendations. Rules-based personalization can trigger actions and dynamically adjust the experience based on specific actions the user takes, such as visiting a pricing page or abandoning a cart. The most powerful personalization engines will leverage both models, depending on the use case.
To execute these functions, you’ll need a multi-layered approach that often includes a bunch of software solutions all working together, such as a customer data platform (CDP), a content marketing platform, an experimentation solution, a dedicated personalization solution, and analytics suite.
What are the components of a personalization engine?
A personalization engine should be comprised of components that encompass the entire lifecycle of the customer journey; from market segmentation to customer engagement to customer retention.
Each of these components can be broken down into 4 layers:
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Planning: a solution to bring teams together to collaborate and plan personalization strategies, align with broader marketing strategies, and devise marketing campaigns
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Creating: a solution that allows you to create individual customer segments, personalized customer experiences, and the content they want to see
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Delivering: an omnichannel solution that decides exactly when, where, and how content and experiences are delivered
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Measuring: a solution to analyze, measure and refine results
A powerful personalization platform will allow marketing teams to unify each of these layers from a single dashboard (you knew we were going to plug our personalization solution).
Let’s start with the planning layer.
Planning personalization
While not unique to personalization, no campaign will ever be effective without a planning apparatus to drive the strategy.
When it comes to personalization, the planning phase should include 4 key pillars:
Collaboration
Personalization often brings together individuals from many different teams; from digital marketing to sales to product to engineering and everything in between. That also means all it takes is one team member to derail an entire operation.
Collaborating between team members who are all accustomed to different workflows seems like it should be challenging, but it really isn’t. When you have the right planning tool that brings collaboration together in a transparent fashion, collaboration becomes frictionless instead of one giant headache.
Visualization
Cross-functional teams don’t always speak the same language; engineers and developers are accustomed to sprints whereas marketers and salespeople are accustomed to campaigns. Product teams might be looking at gantt charts and timelines while marketers are looking at calendars.
Visual agility is a key component when it comes to planning your personalization campaigns. Ensure everyone on your personalization team is working within a framework and workflow that’s best-suited for them.
Ideation
Alright, now that everyone’s in the same place and knows what they’re doing, what happens next? It’s time to create workflows that keep everything moving.
What’s more, your planning apparatus should make it easy to track concepts, store assets, and communicate efficiently and in a timely manner.
Visibility
Ultimately, if you can’t take all the work you’re doing within the confines of your planning software to outside stakeholders, then what’s it all for?
Not everyone needs to see every step of the process, but oftentimes, decision makers will need to step in to offer helpful insight, especially in the event of workflow bottlenecks.
Read our guide in how to build a BADA$$ personalization strategy here
Creating personalized experiences
Without a means of planning, your personalization will stall before it even hits the road, but data is truly the foundation of creating a meaningful personalized experience.
Data integration and segmentation
Bringing your data together sounds about as easy as scaling Mt. Everest while doing a handstand and singing the entire Hamilton soundtrack backwards.
We’re all familiar with the neverending struggle of trying to piece together customer profiles using data from multiple sources. Data in Salesforce isn’t lining up with your own in-house, first-party solution, which also doesn’t match
How you collect data, and what data you’re collecting will be the backbone of building your audiences and segmenting your users. Let’s break down the different types of data and what they can potentially tell you about who your users are.
For a deep dive into specific market segmentation data, check out our complete guide to market segmentation.
Early-stage interest
These are signals that show that users are minimally engaged or in an exploratory phase:
- Whitepaper downloads
- Visiting event pages
- Reading blog posts
- Clicking though case studies
- Internal search history
Middle-stage interest
This stage is where you can start to understand user behaviors and really decipher intent:
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Product overview pages
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Technical documents
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Reference videos
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Product demos
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Reading customer reviews
It’s at this stage where users are demonstrating a deliberate intent to learn more about your products or services. It’s also the stage where you can start to visualize specific personas.
Late-stage interest
Finally, this is the stage where it’s clear that users are considering making a purchase. Some signals may include:
- Repeat page visits
- Pricing information
- Feature comparisons
- Demo information
- Previous purchase history
- Searching by size, color, or other attributes
Once you begin to factor in market segment data points like demographic, geographic, and psychographic signals, you can see how complex customer profiles can become and why having a personalization engine operating underneath it all is so crucial to delivering the experiences that will make a difference.
Understanding the psychographic behaviors that underlie how users interact with these assets should guide your content strategy.
For example, if you have no problem with organic traffic, but you’re noticing customers fall off right before they make a purchase, you’ll want to optimize and build your strategy around what happens during the “late-stage interest” phase.
Check out our big book of personalization, loaded with customer stories of how Optimizely Personalization was able to steer them towards massive goals
Delivering personalization
Once you have your planning strategy, content strategy, and data in place, it’s time to actually deliver those personalized experiences to your users.
Who are you delivering personalized experiences to?
Who you deliver to is primarily dependent on how you’ve constructed your customer segments.
Some experiences are pretty simple; geolocation and repeat purchases are very clear indicators of what you should be serving to those users to deliver a personalized experience.
Once segments become more robust, the process can get complicated.
Many personalization engines will either need to rely on a robust amount of historical data or real-time segmentation to get as granular as possible.
For example, a customer who’s only purchased white or black sneakers might be greeted with ads or recommendations for similar sneakers. But what if they’re searching for brown sneakers? Real-time segmentation that’s lightning fast will pick up on these evolving user behaviors before it’s too late.
What are you delivering to your users?
Personalization is a dynamic journey that requires a scaled content solution. Whether that content exists in the form of written or visual content, or in the form of dynamic layouts or product recommendations, a library of tailored content will increase your chances of success when it comes to customer retention.
Measuring personalization success
Forget all the analytics; the number one success metric of personalization is customer satisfaction.
When you deliver hyper-personalized experiences, customers will be more likely to purchase, purchase again, and keep coming back.
Depending on your KPIs and desired outcomes, measuring personalization comes down to how you’re tracking customer journeys and what tools you’re using to stay organized.
And yea, we know. Bringing more tools into the equation sounds about as fun as chewing cardboard.
But an effective personalization engine will allow you to measure success by:
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Tracking user engagement across multiple channels via symmetric experiences
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Surfacing results that allow you to iterate through a/b testing or other methods of experimentation
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Executing statistical significance and confidence via holdbacks (a designated amount of traffic that is held back in order to establish a control in your personalization campaign)
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Demonstrating ROI by analyzing purchase history and real-time behavior
What are the use cases of personalization engines?
E-commerce site personalization
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Product recommendations: Suggesting relevant items based on browsing and purchase history
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Dynamic pricing: Adjusting prices based on user segments and shopper behavior
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Custom category pages: Reorganizing product categories based on user interests
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Personalized search results: Prioritizing products based on user preferences
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Automated customer support: i.e. chatbots
Content personalization
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Article recommendations: Suggesting relevant content based on reading history
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Dynamic homepage layout: Adjusting content placement based on user interests
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Custom navigation: Modifying site structure based on user behavior
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Personalized email content: Tailoring newsletter content to individual preferences
Marketing Automation
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Campaign targeting: Selecting appropriate audiences for marketing messages
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Dynamic ad content: Adjusting ad creative based on user characteristics
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Email personalization: Customizing email content and timing via connected CRMs
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Cross-channel coordination: Maintaining consistent personalization across touchpoints
Benefits of Implementing a Personalization Engine
The goal of personalization is to provide a more memorable customer experience.
Increased conversion rates: Personalization leads to higher click-through rates (CTR, improved purchase completion, and overall better engagement metrics since customers and users are being served content in real-time that is more relevant.
Enhanced customer loyalty: Customers react more favorably to brands that create a personalized experience, which leads to stronger customer relationships, increased repeat purchases, and a higher customer lifetime value (CLV).
Operational efficiency: A powerful personalization engine eliminates a lot of the manual work that is required to deliver a targeted experience, which automates content delivery, reduces manual intervention, and creates a roadmap to scale.
Conclusion
Personalization engines are in the early stages of maturity, and yet they’re evolving more quickly than ever.
Understanding which personalization engine you choose to implement or how you choose to build it yourself will have massive implications on the overall customer experience.
As technology continues to evolve, personalization engines will become increasingly sophisticated, offering even more opportunities for meaningful customer interactions. Organizations that are able to harness these changes are poised to win out against those that don’t.