Geospatial data quality and uncertainty are crucial aspects of working with location-based information. Understanding these concepts helps ensure that geospatial data is fit for its intended purpose and that users are aware of its limitations and potential errors. From data sources to quality assessment methods, this topic covers the various factors that influence geospatial data reliability. It also explores techniques for visualizing uncertainty and practical applications across different fields, emphasizing the importance of considering data quality in decision-making processes.