Cargando…
No se encontraron resultados.

06

The Nuts and Bolts of Machine Learning

06

The Nuts and Bolts of Machine Learning

34 horas Avanzado

Learn how machine learning uses algorithms and statistics to find patterns in data, helping professionals solve complex problems and make accurate predictions. Learn about supervised and unsupervised machine learning, and apply models like Naive Bayes, decision tree, and random forest. This is the sixth course in the Google Advanced Data Analytics Certificate, a series designed to prepare you for an advanced data analytics role.

info
Información del curso
Objetivos

By the end of this course, you will:

  • Apply feature engineering techniques using Python
  • Construct a Naive Bayes model
  • Describe how unsupervised learning differs from supervised learning
  • Code a K-means algorithm in Python
  • Evaluate and optimize the results of K-means model
  • Explore decision tree models, how they work, and their advantages over other types of supervised machine learning
  • Characterize bagging in machine learning, specifically for random forest models
  • Distinguish boosting in machine learning, specifically for XGBoost models
  • Explain tuning model parameters and how they affect performance and evaluation metrics
Requisitos previos
Prior knowledge of foundational analytical principles, skills, and tools.
Público
Advanced
Idiomas disponibles
English

El poder de los labs de desafío

Ahora puedes obtener una insignia de habilidad sin tener que realizar el curso completo. Si tienes confianza en tus habilidades, ve directamente al Lab de desafío.

Vista previa