GCP AI Fundamentals - AIML Series 9 - Recommendation Systems
Welcome to AIML Series 9, where we delve into the fascinating world of recommendation systems. In this detailed guide, we will explore the different types of recommendation systems, how they work, and their applications. From content-based to collaborative systems, and from neural networks to reinforcement learning, you'll gain a comprehensive understanding of the mechanisms behind some of the most effective AI-driven tools. Let's get started! 1. Types of Recommendation Systems Overview: Recommendation systems are designed to suggest products, services, or content to users based on various data inputs. They play a crucial role in personalizing user experiences. Let's break down the primary types: Content-Based Systems: Definition: Focus on the attributes of items and recommend items similar to those the user has liked before. How It Works: Uses item features (e.g., genre, actors, director for movies) to recommend similar items. Example: A movie recommendation syste...