In this article, the author discusses the importance of using synthetic data in data analytics projects, especially in financial institutions, to solve the problems of data scarcity and more importantly data privacy.
In this article, the author discusses the importance of using synthetic data in data analytics projects, especially in financial institutions, to solve the problems of data scarcity and data privacy.
A Federated Classification Approach of Waste Lubricant Oils in Geographically Distributed Laboratories
Overcoming Challenges: Implementing a Successful Digital Factory Strategy
The 8 Most Challenging Data Privacy Issues (and How to Solve Them)
Applied Sciences, Free Full-Text
Overcoming Data Scarcity and Privacy Challenges with Synthetic Data - InfoQ
Overcoming Data Scarcity and Privacy Challenges with Synthetic Data - InfoQ
Overcoming Challenges in Implementing Data - FasterCapital
A Copy Worth More Than the Original?
Rise of synthetic data: The great irony of scarcity in the age of Big Data