Hyperparameter Search Insights
Adrien and Lukas discuss the iterative nature of hyperparameter search, emphasizing the importance of intuition and experimentation in setting hyperparameter ranges. They explore differing perspectives on the role of hyperparameter search in machine learning, highlighting the complexities involved in optimizing hyperparameters effectively.In this clip
From this podcast

Gradient Dissent - A Machine Learning Podcast
Adrien Gaidon — Advancing ML Research in Autonomous Vehicles
Related Questions
How do complex search problems arise in the episode Bayesian Optimization for Hyperparameter Tuning with Scott Clark - #50 and the clip Hyperparameter Optimization?
Why does Ilya Sutskever believe that asking if a problem is hard is slightly wrong in the episode Ilya Sutskever: Deep Learning | Lex Fridman Podcast #94 and the clip Neural Network Self-Awareness?