User personalization predicts the items that a user will interact with based on their historical interactions with your catalog items. The user personalization recipe can be trained on up to 3 billion interactions and 5 million unique items. When recommending items, user personalization improves discovery and engagement with automatic item exploration, and updates every 2 hours to consider new items (when automatic updates are enabled).