Dev Docs
Contact Us
  • Introduction
    • About Lucid
    • Lucid Platform
  • Products
    • Video Personalization
      • Overview
      • Playback Integration
        • HTML5 Integration
        • Android/Fire TV Integration
        • Android Mobile Integration
      • API Reference
    • Recommendation
      • Overview
      • How To Guide
        • Import Data
        • Train the Model
        • Get Recommendations
      • Sample Workflows
        • NFT Recommendations
        • Video Recommendations
      • API Reference
    • Moderation
      • Overview
  • API Reference
    • Getting Started
      • Create an Account
      • API Keys
    • API Reference
      • Recommender API
      • Video Summarization API
  • Contact Us
    • Lucid Home
Powered by GitBook
On this page
  • Retain viewers with personalized content
  • Gain insights to your audience
  • Understand user profiles
  1. Products

Recommendation

Lucid's Recommender adds content recommendations for your product lines to keep your customers engaged and connected.

Retain viewers with personalized content

Lucid’s powerful content recommendation module intelligently selects and displays relevant items from your library based on each viewer’s individual behavior, enticing them to stay on your site longer and consume more of your content.

Gain insights to your audience

Spend less time analyzing traffic and more time producing great content! Lucid’s AI assistant crunches the numbers for you and even applies insights into the short-video-making process. No longer will you have to manually create rules and seed suggestions, we do it all for you, automatically!

Understand user profiles

The recommendations and trends made by our AI recommender are tracked for clicks, views, and time spent engaged. Additionally, we can profile your users with tags and preference indicators. Over time, this information forms a unique user genome that allows you to understand your audience better and us to serve them the right content at the right time. There’s no need to “like” content for us to capture user interests -- it simply happens in real-time, behind-the-scenes.

PreviousAPI ReferenceNextOverview

Last updated 2 years ago