Deep Learning (englisch) - Interactive curriculae of TU Ilmenau
The interactive curriculae provide information on the degree programmes offered by the TU Ilmenau.
Please refer to the respective study and examination rules and regulations for the legally binding curricula (Annex Curriculum).
You can find all details on planned lectures and classes in the course catalogue.
Please note that this page is no longer updated. All modules and study plans from PO version 2021 onwards (Bachelor and Master study programs) are now available on the Campus Portal.
| module properties module number 101969 - common information | |
|---|---|
| module number | 101969 |
| department | Department of Computer Science and Automation |
| ID of group | 2234 (Software Engineering for safety-critical Systems) |
| module leader | Prof. Dr. Patrick Mäder |
| language | Englisch |
| term | unbekannt |
| previous knowledge and experience | <p> </p><div class="ms-rtestate-field"><div dir=""><div class="ExternalClassCC86C7FDE06B45DD871608405DB642AD"><p><span style="font-size: 11pt; font-family: 'calibri', sans-serif;">Basic programming skills in Python3</span></p></div></div></div><p> </p> |
| learning outcome | Theory: (evaluation by written exam)
Practice: (evaluation by practical assignments)
|
| content | Deep learning has recently revolutionized a variety of application like speech recognition, image classification, and language translation mostly driven by large tech companies, but increasingly also small and medium-sized companies aim to apply deep learning techniques for solving an ever increasing variety of problems. This course will give you detailed insight into deep learning, introducing you to the fundamentals as well as to the latest tools and methods in this rapidly emerging field. Deep learning thereby refers to a subset of machine learning algorithms that analyze data in succeeding stages, each operating on a different representation of the analyzed data. Specific to deep learning is the ability to automatically learn these representations rather than relying on domain expert for defining them manually. The course will teach you the theoretical foundations of deep neural networks, which will provide you with the understanding necessary for adapting and successfully applying deep learning in your own applications. Additionally, by completing the course, you will be able to implement, parametrize and apply a variety of deep learning algorithms. You will learn how to use deep convolutional neural networks (CNNs) as well as recurrent neural networks (RNNs) for image, text, and time series analysis. You will further become familiar with advanced data science tools and in using computational resources to train and apply deep learning models. |
| media of instruction and technical requirements for education and examination in case of online participation | - Projector presentation - Slide decks available - Assignment management through Moodle - Cloud services (personal computer required) |
| literature / references | - Deep Learning: Ian Goodfellow, Yoshua Bengio, and Aaron Courville, MIT Press (2016) - Pattern Recognition and Machine Learning: Christoper M. Bishop, Springer (2006) - Hands-On Machine Learning with Scikit-Learn and TensorFlow: Aurélien Géron, O'Reilly Media (2017) |
| evaluation of teaching | |
| Details reference subject | |
|---|---|
| module name | Deep Learning (englisch) |
| examination number | 91306 |
| credit points | 5 |
| SWS | 0 |
| on-campus program (h) | 0 |
| self-study (h) | 150 |
| obligation | elective module |
| exam | multiple performances |
| details of the certificate | |
| link to Moodle course | |
| teacher | |
| signup details for alternative examinations | |
| maximum number of participants | |
| Details in degree program Master Informatik 2013 | |
|---|---|
| module name | Deep Learning (englisch) |
| examination number | 91306 |
| credit points | 5 |
| on-campus program (h) | 45 |
| self-study (h) | 105 |
| obligation | elective module |
| exam | multiple performances |
| details of the certificate | |
| link to Moodle course | |
| signup details for alternative examinations | |
| maximum number of participants | |

