Konstantinos Tsoumas
Konstantinos is a data scientist currently working at Mars with over 3,5 years of experience in the Data Science industry. Notably, is trying to prove and speak loud about model uncalibrated results.
Session
There are a lot of models working in production as you're reading this. Lots of them are giving uncalibrated outputs without being explicit on how much one can trust the result. Especially when it comes to imbalanced datasets.
More so, relying on biased estimates can lead to overly aggressive decisions. In this hands‑on talk, we’ll demystify conformal methods using MNIST—the world’s favorite handwritten‑digit playground (to make the talk more fun & interactive)- with two goals in mind: explain & prove what an unbiased guarantee is and how it can be calculated but also why should you care and why does it matter so much. Attendees may leave equipped with: uncertainty guarantee understanding in classification, identify common pitfalls that lead to biased uncertainty estimates, how to apply it (even in difficult contexts like imbalanced datasets - an example will be given).