Affiliation:
1. Max Planck Institute for the Science of Light
2. University of Erlangen-Nuremberg
Abstract
These brief lecture notes cover the basics of neural networks
and deep learning as well as their applications in the quantum domain,
for physicists without prior knowledge. In the first part, we describe
training using backpropagation, image classification, convolutional
networks and autoencoders. The second part is about advanced techniques
like reinforce-ment learning (for discovering control strategies),
recurrent neural networks (for analyz-ing time traces), and Boltzmann
machines (for learning probability distributions). In the third lecture,
we discuss first recent applications to quantum physics, with an emphasis
on quantum information processing machines. Finally, the fourth lecture
is devoted to the promise of using quantum effects to accelerate machine
learning.
Cited by
15 articles.
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