In recent years, the landscape of scientific research has been dramatically reshaped by advancements in AI and machine learning (ML). These tools have enabled us to process vast amounts of data and uncover complex patterns with unprecedented efficiency. However, as we delve deeper into these realms, the importance of understanding and quantifying uncertainty in our computations has become increasingly apparent.
Uncertainty Quantification (UQ) is not just about acknowledging the limitations of our models and data, but also about harnessing this understanding to make our predictions more robust and our conclusions more reliable. It is a vital component of scientific rigour, enabling us to navigate the complexities of real-world systems with confidence.
In this meeting, we aim to foster a cross-disciplinary dialogue on the challenges and opportunities presented by UQ. We will discuss how it can enhance our understanding in particle physics, improve the reliability of mathematical models, and inform the development of AI and ML tools.