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Contains Solutions and Notes for the Machine Learning Specialization By Stanford University and Deeplearning.ai - Coursera (2022) by Prof. Andrew NG

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Machine Learning Specialization Coursera

Contains Solutions and Notes for the Machine Learning Specialization by Andrew NG on Coursera













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Course Review :

This Course is a best place towards becoming a Machine Learning Engineer. Even if you're an expert, many algorithms are covered in depth such as decision trees which may help in further improvement of skills.

Special thanks to Professor Andrew Ng for structuring and tailoring this Course.



An insight of what you might be able to accomplish at the end of this specialization :

  • Write an unsupervised learning algorithm to Land the Lunar Lander Using Deep Q-Learning

    • The Rover was trained to land correctly on the surface, correctly between the flags as indicators after many unsuccessful attempts in learning how to do it.
    • The final landing after training the agent using appropriate parameters :
lunar_lander.mp4
  • Write an algorithm for a Movie Recommender System

    • A movie database is collected based on its genre.
    • A content based filtering and collaborative filtering algorithm is trained and the movie recommender system is implemented.
    • It gives movie recommendentations based on the movie genre.

movie_recommendation

  • And Much More !!

Concluding, this is a course which I would recommend everyone to take. Not just because you learn many new stuffs, but also the assignments are real life examples which are exciting to complete.


Happy Learning :))

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Contains Solutions and Notes for the Machine Learning Specialization By Stanford University and Deeplearning.ai - Coursera (2022) by Prof. Andrew NG

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