Exploring Lecture 5 Function Approximation And Gradient Descent

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The presented slides are from the CS771A course by Dr. Piyush Rai, IIT Kanpur. All credits and copyrights are reserved by him. Visual and intuitive overview of the The machine learning consultancy: https://truetheta.io Join my email list to get educational and useful articles (and nothing else!) Gradient descent

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