Introduction to Deep Learning
Would you like to learn the theoretical and practical basics about Deep Learning?
- Amsterdam Science Park, UvA campus, Building G, Room G2.10
In the course, you'll learn how deep neural networks work and how they are optimized. During our hands-on sessions you will have the opportunity to work on our high-performance systems and train neural networks to solve an image classification problem. We cover various neural network architectures: from a basic fully connected network, to a convolutional neural network and variational auto-encoders (time permitting).
What you will learn
In this course you will learn to
- Understand how a neuron and neural network works
- Understand how a neural network is trained
- Explore the effect of hyperparameters on neural network performance
- Work with a high-level machine learning API (Keras)
For whom
Everyone interested in deep learning, but with no (or little) current experience & knowledge.
Topics
- Neural network: basics
- How does a neuron work?
- Fully connected networks
- Training/optimizing a neural network
- Convolutional neural networks (CNNs)
- (Variational) Auto-Encoders
Prerequisites
- Python
- Basics of linear algebra
- Basic statistics
Sign up now Introduction to Deep Learning
- Amsterdam Science Park, UvA campus, Building G, Room G2.10