Taylor Scott Amarel

Experienced developer and technologist with over a decade of expertise in diverse technical roles. Skilled in data engineering, analytics, automation, data integration, and machine learning to drive innovative solutions.

Categories

Practical Model Selection and Hyperparameter Tuning for Machine Learning: A Hands-On Approach

Introduction: The Importance of Model Selection and Hyperparameter Tuning In the realm of machine learning, achieving optimal model performance is paramount. This hinges on two critical processes: model selection and hyperparameter tuning. Selecting the right machine learning model, analogous to choosing the right tool for a job, sets the foundation for success. A naive Bayes