JOIN NOW!
The ability to apply machine learning algorithms is an important part of
a data scientist’s skill set. scikit-learn is a popular open-source
Python library that offers user-friendly and efficient versions of
common machine learning algorithms. In this course, data scientist
Michael Galarnyk explains how to use scikit-learn for supervised and
unsupervised machine learning. Michael reviews the benefits of this
easy-to-use API and then quickly segues to practical techniques,
starting with linear and logistic regression, decision trees, and random
forest models. In chapter three, he covers unsupervised learning
techniques such as K-means clustering and principal component analysis
(PCA). Plus, learn how to create scikit-learn pipelines to make your
code cleaner and more resilient to bugs. By the end of the course,
you’ll be able to understand the strengths and weaknesses of each
scikit-learn algorithm and build better, more efficient machine learning
models.


0 Comments:
Enregistrer un commentaire