Hyperparameter Optimization for Machine Learning



Hyperparameter Optimization for Machine Learning

Rating 4.53 out of 5 (330 ratings in Udemy)


What you'll learn
  • Hyperparameter tunning and why it matters
  • Cross-validation and nested cross-validation
  • Hyperparameter tunning with Grid and Random search
  • Bayesian Optimisation
  • Tree-Structured Parzen Estimators, Population Based Training and SMAC
  • Hyperparameter tunning tools, i.e., Hyperopt, Optuna, Scikit-optimize, Keras Turner and others

Description

Welcome to Hyperparameter Optimization for Machine Learning. In this course, you will …

Duration 9 Hours 58 Minutes
Paid

Self paced

Intermediate Level

English (US)

5023

Rating 4.53 out of 5 (330 ratings in Udemy)

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