Yi Ma
On the Principles of Parsimony and Self-Consistency: Structured Compressive Closed-Loop Transcription
Daphna Weinshall
Curriculum Learning in Deep Networks
Eric P. Xing
It Is Time for Deep Learning to Understand Its Expense Bills [virtual]
Lecturers
Matias Carrasco Kind
[intermediate] Anomaly Detection
Nitesh Chawla
[introductory/intermediate] Graph Representation Learning
Sumit Chopra
[intermediate] Deep Learning for Healthcare
Luc De Raedt
[introductory/intermediate] From Statistical Relational to Neuro-Symbolic Artificial Intelligence
Marco Duarte
[introductory/intermediate] Explainable Machine Learning
João Gama
[introductory] Learning from Data Streams: Challenges, Issues, and Opportunities
Claus Horn
[intermediate] Deep Learning for Biotechnology
Zhiting Hu & Eric P. Xing
A “Standard Model” for Machine Learning with All Experiences [virtual]
Nathalie Japkowicz
[intermediate/advanced] Learning from Class Imbalances
Gregor Kasieczka
[introductory/intermediate] Deep Learning Fundamental Physics: Rare Signals, Unsupervised Anomaly Detection, and Generative Models
Karen Livescu
[intermediate/advanced] Speech Processing: Automatic Speech Recognition and beyond
David McAllester
[intermediate/advanced] Information Theory for Deep Learning
Dhabaleswar K. Panda
[intermediate] Exploiting High-performance Computing for Deep Learning: Why and How?
Fabio Roli
[introductory/intermediate] Adversarial Machine Learning
Bracha Shapira
[introductory/intermediate] Recommender Systems
Kunal Talwar
[introductory/intermediate] Foundations of Differentially Private Learning
Tinne Tuytelaars
[introductory/intermediate] Continual Learning in Deep Neural Networks
Lyle Ungar
[intermediate] Natural Language Processing using Deep Learning
Bram van Ginneken
[introductory/intermediate] Deep Learning for Medical Image Analysis
Yu-Dong Zhang
[introductory/intermediate] Convolutional Neural Networks and Their Applications to COVID-19 Diagnosis