Valentin Laurent
Senior Data Scientist @ Capgemini Invent
Getting onboard to lead the team behind MAPIE, an open-source library within the sklearn-contrib ecosystem, focused on conformal predictions.
After earning a MSc in Computer Science from École Centrale, I spent a few years in product management before returning to more technical roles.
Let’s connect!
Session
MAPIE (Model Agnostic Prediction Interval Estimator) is your go-to solution for managing uncertainties and risks in machine learning models. This Python library, nestled within scikit-learn-contrib, offers a way to calculate prediction intervals with controlled coverage rates for regression, classification, and even time series analysis. But it doesn't stop there - MAPIE can also be used to handle more complex tasks like multi-label classification and semantic segmentation in computer vision, ensuring probabilistic guarantees on crucial metrics like recall and precision. MAPIE can be integrated with any model - whether it's scikit-learn, TensorFlow, or PyTorch. Join us as we delve into the world of conformal predictions and how to quickly manage your uncertainties using MAPIE.
Link to Github: https://github.com/scikit-learn-contrib/MAPIE