Generalized Linear Models in Python

Starting at USD 39.00
5 hours duration

Extend your regression toolbox with the logistic and Poisson models and learn to train, understand, and validate them, as well as to make predictions.

The Generalized Linear Models in Python course offers a comprehensive framework for handling data with binary, count, or approximately normal response variables. This course equips you with the necessary skills to extend your regression toolbox by incorporating logistic and Poisson models. By enrolling in this course, you will gain the ability to fit, comprehend, evaluate model performance, and utilize these models for making predictions on new data. Throughout the course, you will have the opportunity to work with real-world datasets, including the largest population poisoning incident in history, the nesting behavior of horseshoe crabs, and the counting of bike crossings on bridges in New York City. By engaging with these diverse case studies, you will develop practical experience in applying the concepts and techniques taught in the course. By the end of the Generalized Linear Models in Python course, you will have a solid understanding of how to effectively handle various types of response variables within a unified framework. This knowledge will enhance your data analysis capabilities and enable you to make informed decisions based on the insights derived from these models.

About Provider

DataCamp
DataCamp
Online Education Provider ยท 410 courses
Description
DataCamp is an online learning platform that offers interactive courses and tutorials for data science and analytics. It provides a wide range of courses covering topics such as Python, R, SQL, machine learning, data visualization, and more. The platform offers a hands-on learning experience through coding exercises and projects, allowing users to practice and apply their skills in real-world scenarios. DataCamp also offers a personalized learning experience with adaptive learning technology that adjusts the course content based on the user's skill level and progress. It is widely used by individuals, professionals, and organizations to enhance their data science skills and stay up-to-date with the latest trends and technologies in the field.
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