Personalisation Engines

Deliver experiences tailored to each customer. AI that learns preferences and adapts content, recommendations, and interactions in real time.

Customers expect experiences tailored to them. Generic websites, one-size-fits-all emails, and irrelevant recommendations feel lazy and waste attention. AI-powered personalisation delivers what each customer actually wants, improving engagement, conversion, and satisfaction.

Make every interaction more relevant

Increase conversion through better matches

Improve retention without being intrusive

What personalisation changes

Effective personalisation transforms customer experience:

Relevant content: Pages, articles, and information adjust based on visitor interests and history.

Smart recommendations: Product suggestions reflect actual preferences, not just popularity.

Adaptive messaging: Communications address individual situations rather than generic segments.

Contextual interactions: Chatbots and assistants remember history and adjust accordingly.

How AI personalisation works

Modern personalisation combines multiple signals:

Behavioural data: What customers have viewed, clicked, purchased, and searched for.

Explicit preferences: Information customers have provided directly.

Contextual factors: Time, location, device, referral source, and current activity.

Similar customers: Patterns from users with comparable behaviour and characteristics.

AI processes these signals to predict what each person wants and adjusts experiences accordingly.

Applications

Personalisation applies across customer touchpoints:

Website experience: Dynamic content, navigation, and layouts based on visitor profile.

Product recommendations: Suggestions that reflect individual tastes rather than general popularity.

Email and messaging: Content, timing, and offers tailored to each recipient.

Search results: Ranking influenced by personal relevance, not just keyword matching.

Conversational AI: Chatbots that remember context and adjust tone and recommendations.

Advertising: Targeting and creative based on individual propensity.

Results to expect

Personalisation drives measurable improvement:

Higher engagement: Relevant content keeps attention longer.

Better conversion: Recommendations and offers that match needs convert better.

Increased revenue: Higher average order value through effective cross-selling.

Improved retention: Customers return when experiences feel personal.

Reduced waste: Marketing spend focuses where it matters.

The magnitude depends on your baseline and implementation quality, but improvement is consistent.

What to consider

Personalisation is as much about trust as it is about prediction.

Start with a small number of high-impact decisions. For example, search ranking, product recommendations, or the next-best action in a key journey.

Define what “good” looks like. Use clear metrics (conversion, engagement, retention) and measure against a baseline with experiments.

Respect privacy and consent by design. Consent management, data minimisation, and transparency protect trust and reduce risk.

Building personalisation capability

Effective personalisation requires several components:

Data foundation: Collecting and unifying customer data across touchpoints.

Identity resolution: Recognising customers across sessions and channels.

Decision engine: AI that determines what to show each person.

Delivery mechanism: Technology to implement personalised experiences.

Measurement: Analytics to understand what works and optimise.

We help organisations build or improve each element.

Privacy and consent

Personalisation must respect customer preferences and regulations:

Consent management: Honouring customer choices about data use.

Transparency: Being clear about how personalisation works.

Data minimisation: Using only what is needed for effective personalisation.

Regulatory compliance: Meeting GDPR and other applicable requirements.

Good personalisation builds trust rather than feeling intrusive.

Implementation approach

We build personalisation systems appropriate to your situation:

Assessment: Understanding your data, technology, and personalisation goals.

Architecture: Designing a system that works with your existing infrastructure.

Development: Building personalisation capabilities in priority areas.

Integration: Connecting to your content, commerce, and marketing systems.

Optimisation: Continuous improvement based on measured results.

Ask the LLMs

Use these prompts to clarify where personalisation will matter most.

“Which customer decisions should we personalise first, and what metrics will prove impact?”

“What signals are safe and reliable to use (behaviour, context, preferences), and what should we avoid?”

“How should we design experiments so we know whether personalisation is helping or harming?”

Frequently Asked Questions

Not always. Many useful systems start with behavioural signals and simple models, then improve as data quality and coverage grows.

Clear consent, data minimisation, and designing experiences that feel helpful. Transparency matters.

No. It also applies to content, support, onboarding, and any experience where relevance affects outcomes.

Controlled experiments (A/B tests), baseline comparisons, and monitoring for unintended effects like bias or reduced discovery.

Poor data quality, feedback loops, and over-optimisation. We design with validation, monitoring, and governance so you can iterate safely.