Machine Learning - Power of Ensembles
Offered By: EuroPython Conference via YouTube
Course Description
Overview
Explore the power of ensemble models in machine learning through this informative EuroPython conference talk. Discover why combining multiple models often yields superior results compared to single models, and learn how to implement ensemble techniques effectively. Examine the impact of data scaling on ensemble methods and consider the trade-offs involved. Investigate whether ensemble models can replace expert domain knowledge. Gain insights into building robust machine learning models using ensemble strategies such as bagging, boosting, and stacking. Learn to leverage third-party Python libraries and scikit-learn to create powerful ensemble models. Analyze real-life enterprise examples showcasing the consistent superiority of ensemble models over single best-performing models. Delve into crucial aspects of model development, including feature engineering, model selection, and the importance of bias-variance trade-off and generalization.
Syllabus
Bargava Subramanian - Machine Learning: Power of Ensembles
Taught by
EuroPython Conference
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