Random Forest Algorithm Explained with Python and scikit-learn

Описание к видео Random Forest Algorithm Explained with Python and scikit-learn

In this comprehensive tutorial, we'll guide you through the process of creating a powerful machine learning model – the Random Forest Classifier – using the popular Python library, Scikit-Learn. Let's embark on this exciting journey to enhance your machine learning prowess!

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WHO AM I?
As a full-time data analyst/scientist at a fintech company specializing in combating fraud within underwriting and risk, I've transitioned from my background in Electrical Engineering to pursue my true passion: data. In this dynamic field, I've discovered a profound interest in leveraging data analytics to address complex challenges in the financial sector.

This YouTube channel serves as both a platform for sharing knowledge and a personal journey of continuous learning. With a commitment to growth, I aim to expand my skill set by publishing 2 to 3 new videos each week, delving into various aspects of data analytics/science and Artificial Intelligence. Join me on this exciting journey as we explore the endless possibilities of data together.

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