Advanced Machine Learning
This program is intended for professionals who are comfortable working with advanced mathematics, such as computer scientists, physicists, statisticians, engineers, and related profile.
- Understand how deep learning algorithms work
- Implement and train a deep neural network
- Visualise and explore data
- Use an existing neural network for new tasks
Day 19:00 – 12:00Theory: Introduction to Deep Learning, Convolutional Neural NetworksPractical Work: Segmentation and classification13:00 – 16:00T: Architectures and cost functionsPW: Regression and classificationDay 29:00 – 12:00T: Advanced training: augmentation and dropoutPW: Segmentation with augmentation13:00 – 16:00T: Transfer learning, pre-trained architecturesPW: Transfer Learning with Deep NeuralDay 39:00 – 12:00T: Dimension reduction and visualisationPW: Eigenfaces13:00 – 16:00T: Stacked, sparse and denoising autoencodersPW: Representation learningDay 1
9:00 – 12:00Theory: Introduction to Deep Learning, Convolutional Neural NetworksPractical Work: Segmentation and classification13:00 – 16:00T: Architectures and cost functionsPW: Regression and classification
Day 2
9:00 – 12:00T: Advanced training: augmentation and dropoutPW: Segmentation with augmentation13:00 – 16:00T: Transfer learning, pre-trained architecturesPW: Transfer Learning with Deep Neural
Day 3
9:00 – 12:00T: Dimension reduction and visualisationPW: Eigenfaces13:00 – 16:00T: Stacked, sparse and denoising autoencodersPW: Representation learning
Introductory course to Machine Learning or equivalent knowledge: experience in machine learning/data science, programming experience, Python.
If applicable, a telephone interview with the academic director will be conducted to verify that the prerequisites are met.
To know more about the Introductory course, follow this link: https://www.h-ka.de/iww/machine-learning/ueberblick-inhalte.
To register to the Introductory course, you can contact Romina Kolb, director of the Continuing Education Institute of Karlsruhe University of Applied Sciences: romina.kolb@h-ka.de.
Theoretical input – Practical work, hands-on activities – Slideshows and other course materials – Practical sheets
Prof Thomas Lampert, Professor of Computer Science, University of Strasbourg – lampert@unistra.fr
This training constitutes a skills adaptation and development program.
It leads to the issuance of a certificate of attendance.
An evaluation conducted at the end of the training measures participants’ satisfaction as well as the achievement of the training objectives (knowledge, skills, engagement, and confidence), in accordance with Levels 1 and 2 of the evaluation model developed by Donald Kirkpatrick.
