Hello all!
Here's a little peek at the current draft for the second neural networks video. Please let me know any suggestions you have, or errors you catch.
You know, it's funny, I originally intended for this all to be one video, covering the basics of what a neural network is and what we mean by "learning". Then, of course, I decided to divide those into two different parts. In naming them, I thought to myself, hey, I'll probably try to cover convolutional neural networks some day down the road, so I'll title these so as to indicate the intent of a series, "Deep learning, part 1" and all that.
Then while I was working on part 2, I had another moment of thinking "you know, if I _really_ wanted to do this right, I'd split it up further...". Namely, this one talks about gradient descent (among other things), and I pulled out the material on back propagation to expand on it and make it a dedicated video, part 3 of what has now come to be a series.
Right now my plan is to carry on with the moment and just put together part 3 next, since much of the material is just sitting here, and then I'll turn back to some other things on the queue, like probability and several more pure math topics, and add more to this particular series a few months down the road.
Anyway, I hope you enjoy!
-Grant
Max Goldstein
2017-10-15 23:57:14 +0000 UTCSanjeevan Ahilan
2017-10-15 22:29:40 +0000 UTCJanik
2017-10-15 21:04:10 +0000 UTCBill Russell
2017-10-15 20:39:51 +0000 UTC3blue1brown
2017-10-15 20:37:21 +0000 UTCBill Russell
2017-10-15 20:35:52 +0000 UTC