Listen now | You might remember the Substack post from week 57 titled, “How would I compose an ML syllabus?” We have now reached the point in the program where you are going to receive 8 straight Substack posts that would combine together to compose what I would provide somebody as an introduction to machine learning syllabus. We are going to begin to address the breadth and depth of the field of machine learning. Please do consider that machine learning is widely considered just a small slice of the totality of artificial intelligence research. As a spoken analogy, you could say that machine learning is just one slice of bread in the loaf that is artificial intelligence. I did seriously entertain the idea of organizing the previous 79 posts into a syllabus based format for maximum delivery efficiency.
Share this post
Bayesian optimization (ML syllabus edition…
Share this post
Listen now | You might remember the Substack post from week 57 titled, “How would I compose an ML syllabus?” We have now reached the point in the program where you are going to receive 8 straight Substack posts that would combine together to compose what I would provide somebody as an introduction to machine learning syllabus. We are going to begin to address the breadth and depth of the field of machine learning. Please do consider that machine learning is widely considered just a small slice of the totality of artificial intelligence research. As a spoken analogy, you could say that machine learning is just one slice of bread in the loaf that is artificial intelligence. I did seriously entertain the idea of organizing the previous 79 posts into a syllabus based format for maximum delivery efficiency.