Leveraging GANs for Building Synthetic Data
Offered By: Data Science Festival via YouTube
Course Description
Overview
Explore the power of Generative Adversarial Networks (GANs) for creating synthetic data in this 17-minute technical talk from the Data Science Festival. Learn how Arjun Manjunatha from Sention tackled the challenge of working with modest-sized datasets by creatively leveraging GANs to build meaningful machine learning models. Discover the adversarial training mechanisms that enable GANs to produce artificial samples closely resembling real data distributions. Gain insights into how synthetic data generation can preserve statistical properties of original datasets, protect privacy, address data scarcity issues, and enhance model training across various domains. Suitable for technical practitioners, this presentation offers valuable knowledge for those looking to overcome data limitations and improve their machine learning workflows.
Syllabus
Leveraging GANs for Building Synthetic Data
Taught by
Data Science Festival
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