Advanced Deep Learning Module
Nowadays, Artificial Intelligence, notably Advanced Machine Learning (ML) drives scientific and economic growth worldwide. They are essentially massive ‘learning by experience/examples’ systems. However, as our tasks and the world change, such systems should adapt to new domains/tasks and continue learning. Knowledge should be transferred from one DNN systems to other ones. Distributed DNN training should be performed though Federated Learning, e.g., for privacy protection. New Learning modes should be explored, by reward maximation, as it is done in Deep Reinforcement Learning and Imitation Learning.

This advanced ML module covers all the above-mentioned topics: Deep Reinforcement Learning, Imitation Learning, Explainable AI, Continual Learning, Domain Adaptation, Transfer Learning, Federated Learning. Their applications span and revolutionize many domains:
- Autonomous Systems (cars, drones),
- Social Media Analytics,
- Game development,
- Financial Engineering (forecasting and analytics), Big Data Analytics,
- Robotics/Control
- Intelligent Human-Machine Interaction, Anthropocentric (human-centered), Computing
- Smart Cities/Buildings and Assisted living.