IDEs for Machine Learning
Offered By: Great Learning via YouTube
Course Description
Overview
Explore various Integrated Development Environments (IDEs) for Machine Learning in this comprehensive video tutorial. Discover the features and interfaces of efficient open-source IDEs, including Jupyter Notebook, Google Colab, Spyder, and RStudio, with a focus on Python programming. Learn how to structure and optimize your code for machine learning projects through practical examples and interface walkthroughs. Gain insights into each IDE's unique capabilities and how they can enhance your productivity in the machine learning domain. By the end of this 2-hour tutorial, you'll be equipped with the knowledge to choose the most suitable IDE for your machine learning workflows and improve your coding efficiency.
Syllabus
Course Introduction.
Agenda.
Jupyter Notebook.
Google Colab Python.
Spyder Python.
R studio.
Summary.
Taught by
Great Learning
Related Courses
Introduction to Data Science in PythonUniversity of Michigan via Coursera Julia Scientific Programming
University of Cape Town via Coursera Python for Data Science
University of California, San Diego via edX Probability and Statistics in Data Science using Python
University of California, San Diego via edX Introduction to Python: Fundamentals
Microsoft via edX