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← All ArticlesWeb Development

E-Commerce Personalisation in 2019: Strategies and Technology for Tailored Shopping Experiences

By GRDJ Technology5 September 2019 10 min read

The Expectation of Personalisation

Online shoppers in 2019 expect experiences that are relevant to them. The days of one-size-fits-all e-commerce are fading rapidly. Consumers have grown accustomed to product recommendations, personalised emails, and tailored content across the digital experiences they use daily, and they increasingly gravitate towards retailers that demonstrate an understanding of their preferences and needs. For e-commerce businesses, personalisation is no longer a nice-to-have — it is a competitive necessity that directly impacts revenue.

The shift towards personalisation is driven by a simple reality: consumers are overwhelmed with choice. An online retailer may stock thousands or tens of thousands of products. Without intelligent curation — surfacing the right products to the right customers at the right time — shoppers can become frustrated, disengaged, or simply leave for a competitor that does a better job of understanding what they want.

What E-Commerce Personalisation Looks Like

Personalisation in e-commerce takes many forms, and the most effective strategies combine several approaches to create a cohesive, tailored experience across every touchpoint.

Product Recommendations

Product recommendations are perhaps the most visible and impactful form of personalisation. By analysing a customer's browsing history, purchase history, and behaviour patterns, algorithms can suggest products that are likely to be of interest.

Effective recommendation strategies include:

  • "Customers who bought this also bought" — collaborative filtering based on the behaviour of similar customers
  • "Recently viewed" and "pick up where you left off" — helping returning customers quickly find products they have previously shown interest in
  • "You might also like" — content-based recommendations using product attributes to suggest similar items
  • Cross-selling and up-selling — recommending complementary products or premium alternatives at key points in the shopping journey
  • Trending and popular items — social proof recommendations showing what is currently popular in categories the customer has browsed

These recommendations can appear on product pages, in the shopping basket, on the homepage, and in follow-up emails. When done well, they feel helpful rather than intrusive — like the attentive service of a knowledgeable shop assistant.

Dynamic Content

Dynamic content adapts the pages a user sees based on their profile and behaviour:

  • A returning customer might see different homepage banners, featuring products or categories aligned with their demonstrated interests
  • A first-time visitor might see introductory content, trust signals, and best-selling products
  • Geographic location can influence displayed shipping options, pricing in local currency, and locally relevant promotions
  • Device type can determine which products or promotions are featured — mobile users might see impulse-friendly items, whilst desktop users might be presented with products that benefit from larger imagery

Personalised Email Marketing

Effective personalised email marketing goes far beyond simply inserting a customer's name into a template. The most successful e-commerce email programmes are:

  1. Behaviourally triggered — sent in response to specific actions such as browsing a particular category, abandoning a basket, completing a purchase, or not visiting for a defined period
  2. Content-personalised — featuring products and offers tailored to the recipient's demonstrated preferences and purchase history
  3. Timing-optimised — sent at times when the individual recipient is most likely to engage
  4. Segmented intelligently — grouping customers by behaviour, value, lifecycle stage, and preferences for targeted campaigns that resonate more strongly than generic broadcasts

Search Personalisation

Search personalisation tailors search results based on a user's previous interactions. If a customer frequently purchases items in a particular category or price range, the search algorithm can prioritise results that align with those preferences. This can dramatically improve the relevance of search results and reduce the time customers spend finding what they want.

The Technology Behind Personalisation

Effective personalisation relies on the collection, analysis, and application of data. Several technology components work together to make this possible.

Customer Data Platforms

Customer data platforms (CDPs) aggregate data from multiple sources — website analytics, purchase history, email interactions, customer service records, and increasingly, offline interactions — into unified customer profiles. These profiles provide the single source of truth for personalisation decisions.

A well-implemented CDP enables:

  • A complete view of each customer's interactions across all channels
  • Real-time data availability for personalisation engines
  • Segmentation based on complex combinations of attributes and behaviours
  • Integration with marketing automation, email, and on-site personalisation tools

Machine Learning Algorithms

Machine learning algorithms analyse customer data to identify patterns, predict preferences, and generate recommendations. Common approaches include:

  • Collaborative filtering — finding customers with similar behaviour patterns and recommending items that one has purchased but the other has not
  • Content-based filtering — recommending items similar to those a customer has previously engaged with, based on product attributes
  • Hybrid approaches — combining collaborative and content-based methods for more robust recommendations
  • Predictive models — anticipating what a customer might want next based on their lifecycle stage and behaviour trajectory

In 2019, machine learning-powered personalisation is accessible to businesses of all sizes, with a range of platforms and services available at various price points. You do not need to build algorithms from scratch — robust, well-tested solutions exist that can be integrated into existing e-commerce platforms.

A/B Testing and Experimentation

A/B testing and experimentation are essential for validating personalisation strategies. Not every personalisation tactic will deliver the expected results, and rigorous testing ensures that you invest in approaches that genuinely improve key metrics such as:

  • Conversion rate
  • Average order value
  • Customer lifetime value
  • Repeat purchase rate
  • Email engagement rates

Testing should be systematic and ongoing. Personalisation is not a set-and-forget capability — it requires continuous refinement based on data.

Balancing Personalisation with Privacy

With the GDPR now firmly in effect and consumer awareness of data privacy at an all-time high, businesses must ensure that their personalisation practices comply with data protection regulations. This is not merely a legal obligation — it is a matter of customer trust.

Practical Privacy Considerations

  • Transparency is crucial. Customers should understand what data is being collected and how it is being used. Your privacy notice should clearly explain your personalisation practices.
  • Consent mechanisms must be genuine. Where consent is the lawful basis for processing data for personalisation, ensure it is freely given, specific, and easy to withdraw.
  • Data minimisation matters. Collect only the data you genuinely need for personalisation. Hoarding data "just in case" increases your risk and your regulatory burden without delivering proportionate value.
  • Provide meaningful control. Give customers straightforward means of opting out of personalisation or adjusting their preferences. Some customers will appreciate personalisation; others will find it uncomfortable. Respecting that choice builds trust.

Interestingly, research suggests that many consumers are willing to share personal data in exchange for more relevant experiences, provided they trust the business to handle their information responsibly. Building and maintaining that trust should be a central consideration in any personalisation strategy.

Getting Personalisation Right

The most effective personalisation feels natural and helpful, not intrusive or unsettling. There is a line between "this retailer understands my preferences" and "this retailer is watching my every move," and crossing it can alienate the very customers you are trying to serve.

A Practical Approach to Implementation

A sound implementation strategy progresses through stages:

  1. Start with the fundamentals — implement product recommendations and personalised email triggers, which deliver significant value with relatively straightforward technology
  2. Build your data foundation — invest in collecting, unifying, and maintaining clean customer data
  3. Introduce on-site personalisation — dynamic content, personalised search, and tailored navigation based on demonstrated preferences
  4. Layer in sophistication — predictive recommendations, real-time personalisation, and cross-channel consistency
  5. Test and refine continuously — use A/B testing to validate every personalisation strategy and iterate based on results

At GRDJ Technology, we help e-commerce businesses implement personalisation solutions that are technically robust, respectful of user privacy, and demonstrably effective. Whether you are taking your first steps towards personalisation or looking to enhance an existing strategy, we bring the expertise to help you deliver experiences that your customers will genuinely value.

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