April 2026
461 pages
17h 56m
English
This chapter contains a lot of history, and we’ve also shown you some alternative models for neural networks. We wanted to inspire you and present the diversity of neural networks, which can’t be reduced to individual approaches. Furthermore, you’ve seen that the area is far from exhausted and still allows for many variations. Deep networks, RNNs, and generative approaches are at the cutting edge and are waiting to be implemented and further developed by you. You should start right away with a Hopfield network!
Read now
Unlock full access