Using generative models, well, to generate data
Distributions of the real vs. synthetic data for selected variables tl;dr (never ai;dr) One underappreciated use case of generative models is effectively creating realistic tabular datasets that preserve the underlying statistical properties of the original data. Leading libraries for data synthesis include Synthetic Data Vault, YData-Synthetic, and Synthcity. Practical applications include navigating the bottlenecks of sharing sensitive data with vendors or augmenting datasets for rare events, such as product recalls. Ultimately, this approach enables a data-centric workflow even when data is scarce or biased, ensuring models are trained on a high-fidelity representation of reality. Podcast-style summary by NotebookLM Introduction How can we use generative models beyond large language model...