Description: Juxtaposed data streams in edge computing refer to the practice of analyzing multiple data sets simultaneously to extract valuable information and make informed decisions in real-time. This technique relies on the ability to process data close to the source of generation, minimizing latency and optimizing bandwidth usage. Instead of sending large volumes of data to a central server for analysis, data streams are processed locally, allowing for faster and more efficient responses. This methodology is particularly relevant in environments where speed and accuracy are critical, such as industrial automation, healthcare, and smart cities. Data streams can include information from sensors, IoT devices, and other systems that generate real-time data. By analyzing these streams together, patterns, anomalies, and trends can be identified that might otherwise go unnoticed. The ability to perform this analysis at the edge enables organizations not only to improve operational efficiency but also to provide more personalized and adaptive experiences to end-users.