Sitecore Search

Sitecore Search is an AI-driven, headless content and product discovery platform designed to create predictive and personalized search experiences.

Users can configure their search domain, manage content sources, optimize search results, and access rich analytic reports. The platform uses anonymous visitor interaction tracking to deliver personalized search and recommendations, enhancing customer engagement with real-time business rule analysis and omnichannel personalization.

Sitecore Search aims to improve conversion rates and provide deep insights into customer behavior and business value, for solutions with content or commerce, by utilizing our robust AI and machine learning (ML) engine to deliver individualized experiences.

The AI and ML engine at the core of Sitecore Search

Sitecore Search is composed of sophisticated AI and ML algorithms that analyze large datasets, including visitor location, preferences, interactions, and purchase history. These algorithms work closely with the visitor and document data to deliver intent-driven, personalized experiences through our headless model.

Search and recommendation experiences

All search and recommendation experiences are designed for speed and responsiveness. The system continuously learns and adapts, identifying and responding to user intent in real time.

A preview search experience displays results in an overlay that does not disrupt your brand's other experiences. It also offers keyword auto-complete to reduce search errors and time.

Using the preview search experience on the sitecore.com homepage.

Complete control

Search offers marketers, managers, and merchandisers complete control over their implementation, be it a standalone application or on a DXP platform, to extend searches across content and commerce. They can define how to crawl, pull, or push searchable items and index them, create engaging and personalized experiences, and monitor performance to increase conversions with relevant results.

Do you have some feedback for us?

If you have suggestions for improving this article,