Students who take part in online learning have access to course materials through the internet and work with their teacher and other students to learn. Over the past few years, researchers have looked into many different parts of e- learning. They have paid special attention to the development of new techniques, the way information is presented, and the creation of new ways to get both students and teachers more involved and working together. E-learning has made it possible to re-skill, up-skill, and add to the traditional education system. Without e-learning, none of these chances would have been possible. Because of how the internet works, e-learning lets anyone, anywhere, and at any time have access to a well-organized, learner-focused, interactive, and supported learning environment. A good e-learning platform will have some way for it to change based on how people use it. This article presents a machine learning based e-learning framework.

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