Recommends products based on past purchases, browsing history, and popular trends.
Recommends friends, posts, or ads based on user activity, followers, and interactions.
Uses viewing and listening habits to suggest content and keep users engaged.
Personalizes article recommendations to match user interests, keeping them engaged longer.
Recommends lifestyle changes or treatments based on health data and user history.
Recommends destinations, accommodations, or attractions based on previous bookings and preferences.
Algorithms Matrix factorization, clustering, and deep learning models.
Programming Languages Primarily Python and R, with libraries like TensorFlow, PyTorch, and Scikit-Learn.
Platforms Google Cloud AI, Amazon Personalize, and Microsoft Azure AI provide recommendation systems as part of their services.
At Quick Speak AI, we understand that every business may have unique needs and questions. Below, we’ve compiled some of the most common inquiries to help you explore how our plans and services might fit your business requirements.