
#98 Interpretable Machine Learning
DataFramed
Intro
This chapter delves into the vital issue of model interpretability and explainability in machine learning, addressing the challenges posed by opaque systems. It highlights the real-world repercussions of data bias and presents techniques aimed at improving the clarity and fairness of machine learning models.
00:00
Transcript
Play full episode
Remember Everything You Learn from Podcasts
Save insights instantly, chat with episodes, and build lasting knowledge - all powered by AI.