Gradient descent, how neural networks learn | Chapter 2, Deep learning
Enjoy these videos? Consider sharing one or two.
Help fund future projects:
Special thanks to these supporters:
Written/interactive form of this series:
This video was supported by Amplify Partners.
For any early-stage ML startup founders, Amplify Partners would love to hear from you via 3blue1brown@
To learn more, I highly recommend the book by Michael Nielsen
The book walks through the code behind the example in these videos, which you can find here:
MNIST database:
Also check out Chris Olah’s blog:
His post on Neural networks and topology is particular beautiful, but honestly all of the stuff there is great.
And if you like that, you’ll *love* the publications at distill:
For more videos, Welch Labs also has some great series on machine learning:
“But I’ve already voraciously consumed Nielsen’s, Olah’s and Welch’s works“, I hear you say. Well well, look at you then. That being the case, I might recommend that you continue on with the book “Deep Learning“ by Goodfellow, Bengio, and Courville.
Thanks to Lisha Li (@lishali88) for her contributions at the end, and for letting me pick her brain so much about the material. Here are the articles she referenced at the end:
Music by Vincent Rubinetti:
-------------------
Video timeline
0:00 - Introduction
0:30 - Recap
1:49 - Using training data
3:01 - Cost functions
6:55 - Gradient descent
11:18 - More on gradient vectors
12:19 - Gradient descent recap
13:01 - Analyzing the network
16:37 - Learning more
17:38 - Lisha Li interview
19:58 - Closing thoughts
------------------
3blue1brown is a channel about animating math, in all senses of the word animate. And you know the drill with YouTube, if you want to stay posted on new videos, subscribe, and click the bell to receive notifications (if you’re into that).
If you are new to this channel and want to see more, a good place to start is this playlist:
Various social media stuffs:
Website:
Twitter:
Patreon:
Facebook:
Reddit:
2 views
266
50
1 year ago 00:56:17 1
Cab Ride PILATUS the steepest cogwheel railway in the world (Switzerland) Train driver’s view in 4K
1 year ago 00:03:07 1
Neural Networks Demystified [Part 1: Data and Architecture]
1 year ago 00:06:18 2
17 3 Mini Batch Gradient Descent 6 min
1 year ago 00:34:50 1
Dive Into Deep Learning, Lecture 2: PyTorch Automatic Differentiation ( and backward)
1 year ago 01:00:02 1
★ 🇨🇭Cab Ride Arosa - Chur, Switzerland
1 year ago 00:13:53 1
Gelmerbahn / Mountain Roller Coaster🎢 Funicular / Blue lake / Switzerland
1 year ago 00:22:44 1
A friendly introduction to Recurrent Neural Networks
1 year ago 01:31:37 1
Оптимизаторы для глубокого обучения: SGD, Adam, AdamW и Lion - немного математики для практиков
1 year ago 00:02:10 1
La Vuelta 2023, Stage 20 (Manzanares El Real - Guadarrama), course, route, profile, animation
1 year ago 00:02:10 1
La Vuelta 2023, Stage 18 (Pola de Allande - La Cruz de Linares), course, route, profile, animation
1 year ago 00:03:48 1
Fear The Deer
1 year ago 00:01:51 2
La Vuelta 2023, Stage 17 (Ribadesella/Ribeseya - Altu de L’Angliru), course, route,profile,animation