2025-05-27 –, Sala 8
As AI floods the digital landscape with content, what happens when it starts repeating itself?
This talk explores model collapse, a progressive erosion where LLMs and image generators loop on their own results, hindering the creation of novel output.
We will show how self-training leads to bias and loss of diversity, examine the causes of this degradation, and quantify its impact on model creativity.
Finally, we will also present concrete strategies to safeguard the future of generative AI, emphasizing the critical need to preserve innovation and originality.
By the end of this talk, attendees will gain insights into the practical implications of model collapse, understanding its impact on content diversity and the long-term viability of AI.
Statistician by education, Valeria is an AI Scientist with a genuine passion for computer vision specializing in video surveillance.
Today she develops real-time AI models for people and object detection, designed to prevent intrusions and enable immediate security responses. Her work tackles challenges like latency optimization and performance in dynamic settings.