Description: Peer Learning is an innovative method in the field of artificial intelligence (AI) that allows devices to learn from each other to improve their performance. This approach is based on the idea that by sharing information and experiences, devices can optimize their algorithms and learning models. Through collaboration, devices can identify patterns, adjust their responses, and improve the accuracy of their predictions. This process occurs without the need to centralize data on a server, which not only reduces the load on network infrastructure but also enhances user privacy by keeping data locally. Peer learning relies on techniques such as federated learning, where models are trained in a decentralized manner, allowing each device to contribute to the global model without sharing sensitive data. This approach is particularly relevant in a world where personalization and efficiency are crucial, as it enables devices to adapt to individual user preferences and behaviors. In summary, peer learning represents a significant evolution in how devices can collaborate and learn, offering a pathway to more efficient and privacy-respecting artificial intelligence.