Thank you so much for helping teach others about this amazing technology. I'm not even in the same state as you but your videos and your GitHub walk-through have been amazing so far. I eagerly look forward to the rest of this material and hope others can find these videos.
@BiancaAguglia5 жыл бұрын
I like how you take the time to include useful diagrams and other visuals. They make it much easier to understand the lecture. Well done again. 😊
@sandipprabhu4 жыл бұрын
Great, great great explanation, thanks
@abdelwahidbenzerrouk82715 жыл бұрын
Great course ! Questions : what is the meaning of layer ? or what adding layers will provide to the network ?!
@aleksandrkanygin26724 жыл бұрын
Amazing, thank you.
@mdsifath77414 жыл бұрын
in y=mx+c there is no weight in c(y intercept).But in the video there is weight multiplying with the bias. Please help me understand.
@stevedevney73223 жыл бұрын
I believe the values are m, and c in your model that are being influenced by the NN. That is why it doesn’t need an extra weight.
@godos224 жыл бұрын
I don't know if I'm the only one who can see it, but on page www.heatonresearch.com/aifh/vol3/deriv_sigmoid.html , the LaTeX code does not display correctly.
@Diamond_Hanz5 жыл бұрын
:)
@AmeerulIslam5 жыл бұрын
Too fast even for someone like me who have some idea about these.