Privacy in data analysis
Privacy in data analysis is a crucial aspect that ensures sensitive information about individuals is not disclosed or misused. It involves implementing measures such as data anonymization and encryption to protect the identity and personal details of individuals while still allowing for meaningful data analysis.
The need for privacy in data analysis
Many enterprises, social networking companies, e-commerce platforms, networking companies, taxi/cab aggregators, food delivery services, and government organizations, among others, gather and process vast amounts of data – both personal and non-personal – to derive insights using machine learning and AI techniques. The data collected by these entities encompasses a wide range of information, such as browsing history, purchase records, social network interactions, health data, location data, content consumption patterns, device information, and more. It is important to note that this data often...