Guide
Without access to data—critical digital initiatives, such as innovative fintech applications enhancing customer experiences and AI/ML projects pinpointing complex fraud are at a standstill. Organizations face a set of acute challenges when trying to operationalize data including data privacy, data quality, and data quantity.
Synthetic data helps financial services companies make the most of their data, while safeguarding sensitive information. It is generated by computer simulations or algorithms to resemble the patterns, distributions, and insights held in real-world data without exposing any of the private or sensitive information present in the original dataset.
In this guide, we explore: