In the ever-evolving world of AI, Deep Generative Models (DGMs) stand out as a fascinating subset. Let’s understand their capabilities, unique characteristics, and potential vulnerabilities. Introduction to AI Models The Magic Behind DGMs: Latent Codes Imagine condensing an entire book into a short summary. This summary, which captures the essence of the book, is analogous to a latent code in DGMs. It’s a richer, more nuanced representation of data, allowing DGMs to generate new, similar content. DGM vs. DDM: A Comparative Analysis Unique Vulnerabilities of DGMs Countermeasures to Protect DGMs DGMs, with their ability to generate new data and understand […]
Generative Adversarial Networks (GAN): The Devil’s Advocate
AI is fueled with abundant and qualitative data. But deriving such vast amount from real resources can be quite challenging. Not only because resources are limited, but also the privacy factor which at present is a major security requirement to be complied with, by AI powered systems. In this trade-off of providing accuracy and privacy, AI applications cannot serve to the best of their potential. Luckily, the Generator in Generative Adversarial Networks (GAN), has the potential to solve this challenge by generating synthetic data. But can synthetic data serve the purpose of accuracy? No. The accuracy will be heavily faltered […]