Home Insights Case Studies Personalized session-based recommendations for a Fortune 500 retailer

Personalized session-based recommendations for a Fortune 500 retailer

Personalized session-based recommendations for a fortune 500 retailer

In an era where customer experience and product discovery innovations are a top priority for businesses, we are witnessing a shift from traditional recommendation systems towards session-based recommendation systems in the digital commerce sector.

Read this case study to see how we designed and implemented a STAMP session-based recommender for one of our Fortune 500 clients.

Tags

You might also like

Transparent car design with teal and orange background. White text box shows
Case Study
Retooling for the future: A composable commerce overhaul for an automotive tools giant
A male basketball player with ASICS shoes jumping in the air with a basketball in his hand
Case Study
How an iconic sports brand won gold in CMS modernization
e-commerce transformation at Clarks shoe retailer
Case Study
The e-commerce digital transformation journey at Clarks: Legacy to leader in under a year
Tire parameter recognition
Case Study
Revolutionizing tire parameter recognition for a leading automotive manufacturer
SAP CC modernization with Alokai
Case Study
How to modernize your SAP Commerce Cloud storefront with headless frontend
Enhancing product discovery with computer vision
Case Study
Enhancing product discovery with computer vision for a leading on-demand digital printing marketplace
GD Case Study Transforming digital customer experience Cover
Case Study
Transforming digital customer experience: A design thinking approach for modernizing a tools distribution franchise

Get in touch

Let's connect! How can we reach you?

    Invalid phone format
    Submitting
    Personalized session-based recommendations for a Fortune 500 retailer

    Thank you!

    It is very important to be in touch with you.
    We will get back to you soon. Have a great day!

    check

    Something went wrong...

    There are possible difficulties with connection or other issues.
    Please try again after some time.

    Retry