Published Jan 31, 2023
649: Introduction to Machine Learning — with Kirill Eremenko and Hadelin de Ponteves
Jon Krohn, Kirill Eremenko, and Hadelin de Ponteves delve into the intricacies of machine learning, discussing the evolution of online education, the nuances of feature scaling, and the fundamental differences between supervised and unsupervised learning, while highlighting essential model evaluation techniques and the importance of adapting to real-world changes.

Topics covered
Popular Clips
Episode Highlights
Related Episodes


671: Cloud Machine Learning — with Kirill Eremenko and Hadelin de Ponteves
Answers 383 questions

661: Designing Machine Learning Systems — with Chip Huyen
Answers 383 questions

786: The Six Keys to Data Scientists' Success — with Kirill Eremenko
Answers 383 questions

747: Technical Intro to Transformers and LLMs — with Kirill Eremenko
Answers 383 questions
SDS 556: @JonKrohnLearns's Machine Learning Courses
Answers 383 questions

721: Quantum Machine Learning — with Dr. Amira Abbas
Answers 383 questions

SDS 599: MLOps: Machine Learning Operations — with @Miki_ML
Answers 383 questions

SDS 613: Causal Machine Learning — with Emre Kiciman
Answers 383 questions
SDS 446: Getting Started in Machine Learning — with Jon Krohn
Answers 383 questions

SDS 435: Scaling Up Machine Learning — with Erica Greene
Answers 383 questions
SDS 506: Supervised vs Unsupervised Learning — with Jon Krohn
Answers 383 questions

SDS 605: Upskilling in Data Science and Machine Learning — with Kian Katanforoosh
Answers 383 questions
SDS 558: @JonKrohnLearns's Answers to Questions on Machine Learning
Answers 383 questions

771: Gradient Boosting: XGBoost, LightGBM and CatBoost — with Kirill Eremenko
Answers 383 questions

853: Generative AI for Business — with Kirill Eremenko and Hadelin de Ponteves
Answers 383 questions













